interface.ai in the Media

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    Key Takeaways
    Speakers
    Srinivas Njay
    CEO and Co-Founder, interface.ai
    Jack Chawla
    VP Marketing, interface.ai
     

    Hello, everyone.

    Welcome to our webinar series where we talk about how agent AI is redefining banking today. We’ll have, some really exciting demos, and we’re excited to, share more with you and how AI is completely redefining banking.

    And and this is our second, you know, webinar part of our webinar series.

    We just last week, had a customer talking about their, experience in agentic AI launching interface AI. But today, we thought about, covering a a much broader topic on how agent AI is gonna redefine banking in a substantial way.

    And we have some really pretty cool demos on how, at Interface AI, agent AI is adding a lot of value to our customers, and, we plan to show that. So here’s kind of a quick agenda we’re gonna cover today. Real quick start off talking about Interface AI and, latest advancements in AI and how fast they are coming. And then we also, briefly touch upon some of the challenges and opportunities within community banking as an industry. And, we want to, kind of talk about how AI is mostly gonna address all of the challenges in our industry in a significant way. They’re pretty transformational.

    And we’re going to some of the solutions and demonstration, which is kind of a pretty cool part. We’ll get there very fast.

    Alright. So let’s get started. So, a quick introduction here about Interface AI. We are the longest standing AI vendor in the industry. We’re doing this for ten years. Right? So, we are based here in California.

    Most of the leadership, headquarter.

    And we are about two hundred people strong. We’re also at CUSO.

    We have won many industry of collates, you know, including recognition from Gartner, CUNA Allied as the best AI vendor out there. We also won many awards in American Banker recently as a best AI, award.

    You know, real quick about myself. I go by Sri.

    You know, I come from a Credit Union family myself, and, my father started at Credit Union, scaled up to a couple of billion and helped him through the technology strategy during my college years.

    And I also went on to pursue, my career at Microsoft at AI and, you know, brought those experiences together, both my credit union background and my, career at Microsoft AI to build interface AI.

    So and Bruce is my cofounder.

    You know, he, comes from, pretty significant experience of building very successful SaaS companies in the fact in the past, scaling up to fifty million plus revenues. We got together a star interface. Yeah. Our mission of the company is to empower every financial institution like yourself to, scale efficiently, help your, members and customer achieve financial wellness.

    Close to two hundred people in the organization wake up excited about pursuing and progressing towards that mission. So, you know, we got a great team. And our vision at the company is to help you leapfrog from digital to intelligent banking. And, you know, that’s kind of the most of our products are aligned towards that vision and mission. We also recently gained about thirty million dollars, making us the most valuable AI company in banking.

    And we have several suite of solutions on the right side, VoiceAI, ChatAI, EmployeeAI. We’re gonna see demo of all of them, all agentic. And then, also, we’re gonna see demos of our upcoming products, which are in alpha, which has potential to replace your entire online mobile banking and entire contact center system.

    So it’s exciting times in AI today. Right? So, that’s a quick introduction there for you. And Advanced mentioned AI is pretty, pretty outstanding, what’s happening there. These are some of the quotes from, some of the best brains in AI out there. Ilya was one of the cofounders at OpenAI and the original brain behind, you know, a lot of breakthroughs in AI where it is today.

    He recently said, you may not you may not take interest in AI, but AI will take interest in you.

    You know, the reason is in in about a year from now, we are going to have an AI that pretty much, is as good as your a a a new graduate, you know, in math and coding skills.

    Right? You know, mathematics and coding is a much more defined, well understood problem space than a human language. So you’re going to start seeing, you know, in a year from now, graduate level mathematics and coding done by AI, pretty rapidly. And this AI is self learning. Right? So and because it is learning from its own mistake, in there’s a prediction in two to three years, we’re gonna have artificial general intelligence, which is AI is better than the best human being in better than the best expert in a field.

    And in about five to ten years, there’s a prediction that we’re gonna reach artificial superintelligence, which is basically AI is gonna be better than some of all human beings. Right? So this is happening pretty rapid pace.

    You know, Eric, who is the former CEO of Google, kind of talked about how human level capability is, is kind of measured in years, not decades, but the AI is accelerating much faster than humans can evolve.

    So, he talked about how the government policies needs to really adapt faster, for this pace of innovation that we have never seen before.

    You know, and and and Ilya here also talked about how for humanity, this is probably one of the greatest challenges we would encounter.

    And if we pursue or and and through that challenge, you know, it it will be pretty rewarding.

    Right? So because any powerful technology has good and bad.

    We need to evolve our policies in the government to ensure the bad is the downside is protected and we benefit from the upside.

    So there’s there’s massive progress going on.

    And, you know, why does this all is important to us? Right? So as a community banking industry, we serve hundreds of millions of consumers.

    And today, both our consumers have certain challenges, from the services we offer, as well as as a community banking industry, we have certain challenges.

    I foresee with this kind of advancements in AI, we can practically solve most of our problems.

    That’s the power of this technology that is coming. And I’m excited to not just talk about this today, but show you demos, in in in a few minutes.

    You know, before that, I wanna get grounded on some of the top challenges our consumers face today, as in your members and customers today. One of the top things we have seen is there’s a increased financial stress and fragmented data, higher expectation on, digital experience, right, is is is what is in the top of the mind for your consumers. If you look at some of the stats, you know, close to, you know, most of the consumers have five to seven different financial services relationship from, you know, different, accounts and mortgages or auto loans with different financial institution. You have bank accounts from different fintech apps and things like that.

    Our consumers today lack the three sixty degree view of their own finances.

    Right? That has been a bigger challenge from a long time. And two third of Americans live from paycheck to paycheck.

    Right? Fifty percent of them have less than five hundred dollars in savings.

    Right? And AI journey and the impact of AI hasn’t even kicked in. Right? So, you know, if if you go back here in the slide, you know, as Eric mentioned about how human capability is not evolving as fast as AI.

    And, you know, that’s the advancement that’s coming. And, you know, even at the beginning of the journey, we have a pretty, you know, dire, you know, outcome here, which is, like, you know, fifty percent of our Americans live in less than five hundred dollars in savings. So, you know, there’s bigger problems to solve here. Right? And there’s only seventeen percent of others have any sort of financial education in school. They don’t even know like, a lot of them don’t even know how to optimize their finances and how to make proactive decisions to change their financial outcome in the future. Right?

    And increasingly, you know, their attention span is also going down. We are all the age of TikTok and Instagram.

    Small videos, we keep switching to the next one.

    You know, there’s a deficit in attention span today, and they are looking for, you know, sir the digital services that are extremely personalized.

    They don’t wanna sort through the noise themselves. They want the digital experiences to be extremely personalized, tell them what they need to care about, and it needs to be proactive and guide them because of lack of financial education and their and their financial insecurity as well today. That’s kind of half of the concern of American consumers who are banking with us. Right? So these are important problems to solve, you know, through, through AI or other technology, but we’ll see how AI will solve most of these problems. On the flip side, when it comes to community banking, we have our own challenges. Right?

    We have fragmented data and data silos. Right? So we have lot of different systems that don’t talk to each other.

    We have manual workarounds for most of them. Right?

    High cost for training, for our agents, and and they have to juggle between multiple systems.

    One of the top challenges as an industry we face is, significant, challenge with hiring top talent and retaining that. There is always a capacity gap. We all wish we had, you know, few more hands to help out help us out on the projects and and and the goals you set out for yourself. We constantly battle between, multiple projects and multiple priorities.

    And we also know consumer expectations are raising. Right? And we are not that fast in innovation. Right?

    So, and we have limited wallet share. So our members bank across multiple financial institution. We don’t have the three sixty degree view. And our wallet share, for a member is quite limited.

    Right? So, you know, we often are not the primary financial institution where they’re doing seventy, eighty percent of their banking with us. Right? It’s extremely fragmented.

    And we have regulatory compliance pressure, increased fraud, and, also, we are serving, baby boomers and gen x.

    We we are finding it hard to attract younger consumers.

    These are the challenges that we internally are facing as well. Right? So, but there are unique advantages as a community banking institution we bring to the table.

    One is even till today, in spite of these challenges consumers have and we as community banking, financial institution have, you know, we consistently rank the top in terms of trust and relationship, with with our members and, you know, our customers.

    And and we are all mission oriented. We want to, be dedicated towards financial well-being of our members and customers, and that’s our top priority. And, we are smaller teams. We can get fewer projects done faster. Right?

    AI could be a huge force multiplier for someone who has already started out adopting.

    And we want to achieve personalization at scale. We have not gotten there. Right? So those are kind of some of the opportunities we have in front of us. Some of the advantages of trust and relationship are mission alignment without, you know, opportunities like personalization, compliance, and faster innovation through AI is all something we could really tap into, right, through good technology.

    So we see a a future with AI, what we call a vision of, bank GPT that can fundamentally solve every problem we just listed until this point from your consumer problems to to the problems of the financial institution.

    You know, and and you know, that’s that’s quite exciting. Like, the power of AI, you know, can fundamentally transform how banking could work, and, you know, that’s our vision. Right? So we are one AI brain that can power both your consumer experience and employee experiences and solve most of the problems, you know, with this with this bank GPD like interface.

    You know, you are able to solve the challenges of your consumers providing highly personalized experience, proactive financial coach and a guidance. At the same time, the same AI could augment your staff so your staff can two x, three x their, productivity.

    So you don’t have to, deal with the talent shortage, but rather with the existing talent we have, we can make the most out of it. Right? So, and it also creates a continuous learning loops. So anything you train once, it never forgotten. It creates a compounding effect over a period of time. Right?

    So, you know, on the our vision on the customer experience. Right? So, you know, ultimately, we see the bank GPD coming together this way. Right? So you have consumers having a multimodal chat GPD like interface where, their self-service is highly insightful and proactive, automated, recommends products and services, extremely personalized and secure.

    But the same AI brain on the employee side, would be connecting to same systems but achieve different kinds of outcome. Right? Like, either it’s, you know, creating a bank CEO trying to understand their employee productivity or their marketing campaigns or, how membership or customer base is growing. So they could be using same AI and same integration to ask different kinds of questions. Right? So and even help a c CFO plan out the next quarter, what kind of targets they could achieve on some of these products and services.

    So if you look at on the customer side, you know, this bank GPT, that we are gonna show you shortly can solve most of the problems our consumer face today, right, which is, lack of personalization. But the bank GPT can provide the personalized interaction, make sure bring them the offer, that that they care about, bring them the insight they care about. And over a period of time, they build that trust and, you know, see how, it’s it’s a sound advice and, you know, take actions more carefully instead of a random, push notification and a standard one size fits fit all kind of campaigns we often do. Right?

    And you you you know, with this bank, GPT, they’re all they’re gonna have an always on financial coach. Right?

    Going back to the challenge, seventeen percent of adults are have financial literacy. Right? So having your always on financial coach that can help proactively guide them to make the right decision goes a long way. Right?

    So this is what agentic AI could make it a reality. Right? And and the and then they can also add multiple financial institution, you know, and bank across all of them in this one bank GPT that you’re gonna offer to them with your own branding and white label product. Right?

    So, so the challenge of fragmented data goes away too. Right? So, all of this is achievable today through agentic AI. Right?

    So on the employee side, you know, again, all of the challenges we discussed goes away too. So you’re able to, you know, supercharge your existing employees to two to three x productivity with AI augmenting, giving instant access to knowledge, answers, insights, and even instant access to actions. Right?

    Imagine if if a a CFO, wants to, find a way to, you know, get, you know, target, like, you know, to sell five thousand more auto loans. Imagine AI coming back and saying the strategy, what they need to do, even recommending a a a new product that they could create with specific features that can with a click of a button, they can push it to their core.

    And that product is live, like, you know, let’s say, a promotion on an auto loan that could be that could compete against the local market to drive more, conversion.

    And immediately, that AI is able to start promoting on the customer side. Right? So that’s, that kind of action could be taken, to drive outcomes on the employee side. Work could have taken multiple teams getting involved to, build this now, with a small finance team could make a decision, and and push out the product and have AI automatically start selling it? Right? So it’s pretty powerful.

    You know, it it it’s very much possible, you know, where you could be, less than hundred employee financial institution and you you’d be around couple of billion dollars in asset. Right? So that’s a very possible reality with the right use of AI tools today. Right? So, you know and we’re also, beyond the, like, the bank GPT that serves your, customers and employees, we’re also bringing an AI operator for you, which also solves one of your biggest challenge, which is bringing together disjoint systems.

    With AI operator technology, which we’ll show you a demo shortly, you don’t need APIs anymore. You don’t need to struggle to get these systems together or have a manually manual workflows to, argument the incompatibility of the systems.

    So, you know, AI operator that, we’re gonna show, you know, automatically connects the systems and drives outcome for you without even having to have IT doing API integrations.

    That’s also one of the significant challenge we face, could be overcome with AI.

    So, you know, practically, I foresee, like, most of our trouble for our consumers and financial institution can be addressed through successful execution of, AI solutions.

    It it may not be just one vendor. It may be multiple.

    And really future proof your financial institution, to get ahead of these, challenges your members have, your customers have, as well as the challenges you face today.

    So it’s an exciting future. Right? There’s a lot of possibility there. I want to quickly show you a demo of, some of these solutions.

    We’re gonna get started with

    our agentic voice. So we’re gonna start with how this agentic AI is transforming your member and customer experience, and then we’re gonna go on the employee side. Right? So we got a lot to show you today.

    So let’s get started on the this is on the voice AI. I’m gonna request my colleague here, Josh, to, help me out with the demo.

    Yep. So hello, everyone. Good evening, good morning, good afternoon, wherever you’re residing. I’ll be running through our voice AI demo. As you can see, there’s four different scenarios.

    So, yeah, you can just pay attention to the different scenarios as I walk through them on the voice demo. But give me just one quick second to call into the voice demo bot, and you should hear it coming through shortly.

    Hi. I’m Jessica, a digital assistant from Navy Federal Credit Union. I I can help with banking services and general questions.

    This call may be monitored for quality assurance.

    For the best experience, avoid using speaker mode. How can I help?

    Hey. I’m at an Apple store in Cypress, Texas, and I’m actually looking to buy an iPhone that cost eight hundred and fifty dollars. Am I able to afford that?

    To check if you can afford that eight hundred fifty dollar iPhone, I’ll need to access your account information. Could you please provide your member number and the last four digits of your Social Security number for authentication?

    Sure. My member number is one six zero two three, and the last four of my social is one zero eight one.

    You’ve got sufficient funds in your vacation savings account ending with zero zero zero one to cover that eight hundred fifty dollar iPhone. Your current balance is one thousand dollars, and your available balance is also one thousand dollars, which is more than enough for the iPhone.

    Would you like to transfer the funds to your Not right now.

    But for whatever reason, my card actually just got declined, and I’d like to go get some cash. Can you tell me where the nearest branch is?

    The Cypress Texas branch is located at one four one four zero Cypress Rosehill Road, Cypress, Texas seven seven four two nine. Their lobby hours are Monday through Friday, nine AM to five PM, and Saturday, nine AM to two PM. They offer cash transactions and twenty four hour ATM access.

    Want me to text you the address and hours so you have them handy?

    Standard text message charges may apply.

    Yeah. Go ahead and text it to me.

    I’ve sent the branch address and hours to your phone ending in one eight nine eight. Now that you’ve got the branch info, want me to also check if there are any ATM locations closer to the Apple Store where you are so you can grab some cash right away?

    Before you do that, I’d actually like to some money. Can you set up a trainer of fifty checking account to my savings account?

    To proceed with that fifty dollar transfer from checking to savings, I just need to verify it’s really you.

    I’ve set the one time password to your phone ending in one eight nine eight. To verify, could you please read back the code you just received?

    Yeah. The code is one two three four five six.

    Fifty dollar transfer from your checking to savings is all set. You now have seven hundred dollars in checking and one thousand fifty in savings.

    Want me to find those ATMs near the Apple Store for you now?

    No. Thanks. But if I send the same amount of money to my savings account every week, how much money would I have in there after three months?

    If you transfer fifty dollars every week for twelve weeks, that’s six hundred dollars.

    Adding that to your current one thousand and fifty in savings, you’ll have one thousand six hundred fifty dollars. Want me to set up those automatic weekly transfers for you?

    Not right now, but I would actually like to save ten thousand dollars in one year. Can you tell me how much I would need to transfer to achieve that?

    To save ten thousand dollars in one year, you’d need to set aside about one hundred ninety two dollars and thirty one cents every week.

    That’s a great goal.

    Considering you were just discussing transferring fifty dollars weekly, I can help you adjust that amount or even set up an automatic transfer for this new goal. Would you like me to assist with that?

    Yeah. Go ahead and set it up, please.

    The recurring weekly transfer of one hundred ninety two dollars and thirty one cents from your free checking account ending with zero zero zero three to your vacation savings account ending with zero zero zero one has been successfully set up.

    You will now have a weekly transfer of one hundred ninety two dollars and thirty one cents to help you achieve your financial goal of saving ten thousand dollars in one year.

    Want me to also set up low balance alerts for your checking account so you’re always aware of your balance before each weekly transfer?

    No. Thank you. But I would like to apply for an auto loan. I’m interested in getting a used car for about thirty thousand dollars. What are the current auto loan rates that you offer?

    For a used vehicle loan of thirty thousand dollars, our APR can be as low as four point nine nine percent for terms up to thirty six months, five point four nine percent for terms thirty seven to sixty months, and five point five nine percent for terms sixty one to seventy two months.

    As a valued member, if you’re active duty or retired military with direct deposit, you may qualify for a zero point two five percent APR discount on auto refinance loans.

    Our auto refinance loan rates are the same as new or used auto loans depending on the vehicle’s characteristics.

    Plus, with our auto refinance loans, you can get a two hundred dollar bonus when refinancing an auto loan of at least five thousand dollars from another renter.

    Would you like me to send this information to your phone ending in one eight nine eight for easy reference?

    Standard text message charges may apply.

    Not right now, but can you tell me what documents I would need to bring in order to apply for this loan?

    To apply for that thirty thousand dollar auto loan, you’ll typically need a completed loan application, a purchase invoice for the vehicle, including the year, make, model, mileage, VIN, and sales price, a personal guarantee, and we’ll need to run a personal credit check.

    I can send this list to your phone ending in one eight nine eight for easy reference, and standard text message charges may apply. Would you like that?

    No. Thank you. Can you actually tell me about some recent transactions I’ve had in my checking account?

    Let me walk you through your recent transactions in your free checking account. You had a few credits, including a family vacation deposit of one hundred fifty dollars, a paycheck deposit of two hundred fifty dollars, a side due payment of three hundred dollars, and a Social Security deposit of one thousand dollars.

    There were also some debits, like a hotel booking for one hundred twenty dollars, a restaurant charge for one hundred fifty dollars, and a souvenir shop purchase for seventy five dollars.

    Additionally, you received some interest credits. However, I noticed there were two large transfers out of your account today, totaling twenty four thousand two hundred thirty one dollars going to account five six zero one one two. Would you like me to help you understand these transactions better, or is there something else I can assist you with?

    Hey. I don’t recognize some of these transactions, and I don’t think I made them. I’m kinda worried that there might be some fraud on my account. Can you can you help me out here?

    I’ve got you connected with one of our fraud services specialists now. They’ll take care of you right away and help figure out what’s going on with those transactions.

    Just stay on the line for a sec, and they’ll be with you shortly.

    Hey, Josh. Thank you for that. Hope, you all noticed the AI in action there. We intentionally kind of slowed it down a little bit for the demo to make it easy for all of you to follow.

    And hope you notice some very powerful capability there. How first of all, to just to start off to say none of that is scripted. AI was fully autonomously using the data from Navy Federal Credit Union website and the integration to autonomously answer those questions.

    Nothing is prescripted. Right? And I hope you notice how it was, answering, you know, asking a follow-up question, in a very contextual. Right?

    Like, you know, based on what you just did, it was telling you what how else it can help you. Right? So it was able to do some complicated math for you. It was able to remember your location automatically, get you to a branch or ADM.

    You didn’t have to repeat it. It was able to figure out the spend intelligence, how much, money you have, how much you’ve been spending to see if you can make a large, purchase.

    And it was able to guide through auto loan, giving very detailed information and and the rates and and the discounts applicable, all coming from the website straight up. Right? And finally, it’s very important to us, which is when George expressed concern about some of the transaction, before even he asked for an agent, AI realized that this is the right question to be answered by an agent automatically transferred. So balancing efficiency and the personal care, is is extremely important, in our industry. So you saw how I was able to do that in action. Right? So, you know, that’s, where AI is gonna take us with that kind of the member experience, employee, customer experience.

    I wanna show you how this would look on the chat. Right? So, I’m gonna request

    my colleague here, Laura, to help me out with a demo.

    Great.

    So we we created a hypothetical financial institution interface bank. Don’t worry. We’re not in the business of banking.

    So you see now AI in action on the website and online mobile banking online application. So, you know, if you go to your website, you can pop it open, you can see AI there. We’re gonna try ask a few questions.

    We’re gonna start with, something, basic, you know. But we get asked these kind of question quite a bit. What’s the routing number? There can immediately answer that, but also give you a link to the source. If you click on view more, it automatically navigates and highlights the content on your website.

    So now, let’s go try a few more examples real quick.

    So, let’s say we’re gonna, ask, you know, you’re a student looking for a credit card, you know, comes back, ask you a follow-up question. Okay? What kind of specific features matter to you? So you can say, I wanna do more savings, via cashback.

    So it says, okay. Great. I’m gonna do the research. Shall I proceed or you have anything else to add? Say, not right now.

    And this is kind of the AI operator I was talking about. It actually takes control from your member and automatically navigates the screen, does all the research, and comes back, pulls up the right credit card for you, with the right offer, and and, automatically navigates to that website and highlights it for you on the left side.

    Right?

    Now, you know, if you look at the chat on the right side, it says, hey. Is this, meets your expectation? Do you wanna go and apply?

    So you, you know, you click apply.

    And, gone are the days you sit through multiple pages of application.

    Here, the AI automatically analyzes application and comes back and says, hey. Why don’t you upload these documents for me? I’m going to go ahead apply, on behalf of you. So all you need to do is just find those documents and upload them.

    AI is gonna extract all the information from that and automatically, fill it up. So it’ll it is asking you, hey. I got all the information. Shall I proceed to apply? You just AI operator I was talking about. It automatically fills up the application on behalf of you, as a member or a potential member. Right?

    And comes back, gives you the application number.

    That’s it. That, you know, imagine, the current ways of doing it. There’s just a lot of manual intervention.

    So hopefully, you kinda see AI operator. Right? It can seamlessly work with your online application, without that API integration and get things done. Right?

    It’s basically our AI operator mimicking user actions, and navigating this website like a human being. The AI is navigating this website like a human being, reasoning the screens and looking what buttons to click on and taking action on behalf of the member. Right? So now let’s say, they got this card, they logged into online mobile banking.

    Right? So, you know, pretty much let’s, quickly, show you how that experience gonna be. So you can be, let’s say, within online mobile banking, still use AI. So let’s, we’ll try some, questions here real quick and say you wanna transfer money, you just type it in or speak into the mic button on the right bottom corner.

    Right? So, comes back says, can you confirm? You just click yes.

    Your money transfer is done. Right? So let let’s try something a little more complicated. So we’ll say, you know, let’s try to find a a thousand dollar charge on Amazon, on our on our bank account.

    You know, imagine trying to do that online more banking. So, you know, you you had to go through statements to find the transaction.

    It’s really hard to search for any transaction. But the AI was able to instantly find that and, you know, work as a companion to your online mobile banking and, quickly give you option. Right? Do you want to block this card or dispute this charge?

    You just, you know, click on the button to take action and immediately, you know, you’re you’re on on your way out. You took care of what you’re there for.

    You know, let’s try something a little more complicated. So let’s say we’re trying to schedule a payment, for your credit card that you just opened up. And, it comes back, tells you, and kind of this is a financial insight. It tells you, hey. You know what? I can go ahead and set this up for you, but, you know, you should wait, till September third because you’re gonna have or October third because you’re gonna have a, a cash flow issue.

    It is analyzing their expense pattern and automatically suggesting them to take the right decision. So now with a click of a button, you can, schedule that payment, on time and you don’t have to make it today. Right? So, and also encourage for automated payments and things like that.

    So, so it’s insightful. And, you know, we’re gonna show you one more, example here.

    Something that online mobile banking is almost impossible to do and shows you how AI could be a true companion. And we’re gonna ask one of the popular questions, we we get asked about, which is how many streaming subscriptions we have. And we lose count of it nowadays.

    So imagine trying to do this online mobile banking. It’s almost impossible to fetch this data.

    Right now, as soon as you ask the question, AI says, you know what? I can pull all this information. Can I proceed? You say yes.

    Again, the AI operator kicks in, takes control of online mobile banking, automatically navigates the, online mobile banking, going to each account, downloading statements, scanning through transactions, and summarizing all of that in a easily digestible way. And it creates an interactive graph. At the right, on on the top, you can even interact with the graph on the left side, you know, drop down and things like that. Right?

    You’re still on online mobile banking, by the way. So if you click on the right, top corner, it dismisses the AI. You’re back in online mobile banking. But you click on it back again, you’re back in AI.

    So AI is making decision. When is the right time to take full screen to show you something more involved? Right? So so that’s kind of AI operator in play.

    Without integration, you know, it has ability to use the functionality on your online mobile, make your online applications and answer questions that otherwise would have taken a long time for consumers to do. Right? So fully, it gives you an idea.

    And imagine this a operator working on the employee side, you know, there’s just, like, so much possibility. We’ll we’ll also show that in action here very shortly. Probably kind of a perfect segue, to one more topic we wanna talk, right, which is we still talk about the member and a con customer side. Right?

    So

    we talked about how AI can work on top of an existing investment without really even integrating, with them, right, through APIs like, you know, online application on your website, online mobile banking, all of these. So that’s kind of the journey you can start with agentic AI. But, you know, but what if you’re thinking ground up? Let’s say you’re a new creator in your account today and you wanna use the AI to the fullest.

    Right? And imagine if there was an option for you where is a fully AI first online mobile banking.

    Right? So how would that look like? Is it even possible? It’s absolutely yes. We are already, you know, you know, alpha testing with a few customers, which is, we have built out a complete AI first online mobile banking. There’s nothing like this exist, in the world. So we’re very proud of this.

    This is how the future of online mode banking looks like. So after you go through, putting AI to existing investment, you and your members get comfortable. So now you can transition to a fully AI first setup, right, that can replace your website online application and online mobile banking to one cohesive AI interface. Right?

    So, this is how it looks like. From day one, it’s gonna be multi account. So, aggregation is also done by AI. You don’t need a third party like Plaid or Yodlee.

    Not only aggregates the multiple accounts, but it also has a blue to transact across multiple accounts. We’ll show you that in action.

    So, you also see a AI on on the, on the, on the on the right side. You click it, and automatically takes full screen. So it’s like your bank GPD, right? It’s like your chat GPD but for banking.

    So here, you could do, things that you could never imagine possible in all in all banking. Right? So we’re gonna try something here. We’re gonna say, you know, I’m, looking to plan an investment strategy for my ten year old for education. Right?

    So a a a question of this magnitude would require several weeks of, and weekends, most likely, and late evenings of effort effort to do the research and plan everything, move the funds, set up automatic payments. We’re gonna show you how you can complete that in next two minutes. Right? So AI comes back and shows you, hey, what kind of college you’re planning to send your kid? So you’ve provided some regions and colleges in mind, and you select all the accounts that needs to be used for planning purposes.

    You choose your investment strategy.

    Right? And you say, you know, proceed with my preferences.

    Conspec says, you know, there are multiple accounts. Do you wanna use all of them? Do you have any other accounts you wanna add? No. Planning for such a big invest business savings is is is a family decision, not just, one person.

    Let’s say you can say, add my spouse account too. Why not? So you can literally, ask AI to do that and connect in real time to your spouse account and use that for planning. So here it is asked what is the financial institution they’re banking with.

    You know, you can type it in and the AI comes back. Okay. Let’s go ahead and link it. And in real time, it brings up that safe credit union, offers them to log in.

    Right? And, you know, at any point, you can go back the blue button. You can say resume the process. But, we’re gonna log in here real quick.

    The username password.

    And it automatically connects and you can resume. Now it’s connecting to Safe Credit Union, accounts and pulling all the accounts of my wife and says, hey. I got a couple of checking accounts. Should I use all of them for planning? You say, go ahead.

    And, comes back here, back again. It shows you the account. Now you can add them to your planning and say, continue with the, research.

    So now it is doing lot of analysis for you. Looking back how tuition fees have trended in the last ten years, adjusting for inflation. You know, what how, college tuition fees have, been increasing on an average.

    Do all of this research, find the right products for five twenty nine, education savings account plans and comes back tells you, here’s a corpus you most likely need for University of California.

    Right? And, you know, here’s a month monthly contribution you should plan for given the age of, your kid and whatnot.

    So at the bottom, of course, you can adjust some of the savings goals and inflation rate if you’d like. Also says using the five twenty nine savings account strategy.

    With the click of a button, let’s say execute this plan. You can literally have AI set up all of these, open a new five twenty nine account, open a student savings account, setting up auto debit to your salary, and finalizing all of this planning for you and you’re done. Right?

    So what could take you several weeks and late evenings and weekends to execute, you’re done a few few minutes of a complicated financial planning. So that’s what we call bank GPT. Extremely personalized, aggregated, like, it aggregates all of the financial institution and helps you take action across multiple financial institutions.

    You know, lot of the consumer problems we talked about, like, AI is it, it has a blueprint for always on coaching. You saw how it was coaching to add multiple accounts for planning and it was doing the planning practically on on behalf of, the member. So it kind of solves most of the problems we talked about that our consumers are facing. Right? So, with that coaching and guidance and personalization. So we wanna spend a few minutes to show you on the employee side.

    So we we gonna

    show you two things. We’re gonna show you how there’s an employee AI that you can use organization wide, from your executives to, your call center employees to branch employees and, everyone. And we’re also gonna show you a, unique product that is purpose built for your call center staff, right, with operator AI built into it. So we’re gonna, start with a demo on the employee AI here real quick.

    So this is how your employee AI, is gonna look. Again, it’s like bank GPT, similar to your member facing. Let’s get started. You can quickly enter a question here real quick, which it says, you know, I you need a refresher course to say a pitch deck for credit card sales for your sales team.

    And, you know, ask AI to create that and email it to, your frontline team or your call center teams. Right? So So it comes back ask, hey. Can you give me, is this kind of the breakdown is okay?

    And and you can go ahead, respond to it.

    And here is how I want to plan the key topics.

    And says, okay. Great. Does this cover everything? You say, let’s proceed.

    And AI GoSight creates that, for use that you can easily share with your employees for coaching and training on how to, sell the credit cards. Right? So, and you can go and say, create a a tracker in a role by role, you know, a training. And this even creates an email that you could copy paste, send it out. With an integration to your email system, we can even send it out to specific pea specific team members as well.

    Right?

    So, and we’re gonna look at a couple of use cases here.

    You know, he’s he’s talking about, you know, sending out an email, you can schedule it and things like that. So in that active task is, listed on the left side. You can go and see how, the emails have sent out and things like that. So you’re planning out a course for your frontline team and you’re emailing out everything from EmployAI.

    So, we’ll show you a couple of use cases here.

    So we’re gonna, switch to another one, you know, give us a minute here.

    So here, this is, you know, another use case we’re gonna show you here real quick. Let’s go ahead and get started.

    So we’re talking about, let’s say one of our executives are looking at a a dashboard, for tracking member growth. So, you know, for the last twelve months. So you can come back and say, hey. Can I create a dashboard with the following? Would would that be sufficient? So you can confirm or request for changes.

    Let’s, let’s go ahead and, it say break it down by regen a member tier.

    And it has ability to confirm and get, get the confirmation and go ahead kind of create the, trends for you here shortly.

    So it it it has a job. It even it has to connect with multiple system, it’s it’s a job that’s asynchronous. Let’s get scheduled. You’ll be able to see on the left side, that it is processing, and it can it can notify you through a browser notification. It could come back, see it, as well.

    Let’s, continue.

    It comes back, shows you, once the job is done, hey. Here is how member growth and deposit trends are. Again, it’s the same integration, the same AI that helping your members now establishing the same systems and knowledge to give answers to your employees and with instant access to knowledge and insights.

    So, you know, in the interest of time, we’d probably show one more, use case here on the EmployAI, and then, we switch to the, the, you know, operator AI for your call center agents.

    Give us a minute. Let’s get another one here.

    So now, you know, let’s say your lending department is looking to, look at pending loan applications and wire transfers.

    So they could come in come in come in here and type it in. So then it has ability to connect with your LOS, pull that, details and show you this is kind of the summary. Should I, you know, give you, a table summarizing this?

    And it was able to show you how many loan applications are complete, where the issues are found.

    And, you can show what are the exceptions causing these issues. You can have the discussion right there and, it even ask you, shall I notify, the branch officer for approval? So you can request for the same and you can take care of that and you the job gets scheduled as well.

    That, you know, it has a ability to come back and show you once the job is completed.

    So hopefully, you get an idea, like, literally, a lot of challenges we talked about, as a financial institution, like, you know, not being able to staff up and hire, in, our teams and things like that. You can see how AI could argument, and and, you know, kind of drive quite a bit of value for, you know, and productivity gain for employees. I wanna, kind of share with you the operator AI, in action real quick. So that’s probably, you know, imagine all that automatic, AI, they’re automatically navigating these disjoint systems. Imagine that happening for your contact center staff as well.

    You know, often our contact center staff has three to four screens, twenty different applications.

    You know, it’s hard to navigate and train our staff with all of those tools. But the future of contact center will be very different.

    Agentic AI, the power of it. Right? Like, so this is how future of contact center looks like. There’s one screen that your staff would, you know, wait for a task to be assigned by AI. Right? So AI is already talking to members on chat or voice, and it real time loops in your employees wherever the assistance is needed or wherever air gets stuck. Right?

    That’s how seamless it’s gonna be. In the past, we had, you know, twenty years back when contact centers were invented, one person can do one call at a time, and then live chat came. You can do four to five live chat at a time. But with AI, one person could be handling twenty to thirty calls at a time, which show how is it possible. So let’s say your agent goes and says, changes the status to be available. Immediately, AI, a sense a task.

    Is AI is some member is already talking to AI on the voice, but it got stuck. It brought in your, agent in the loop and says, hey. This person is trying to do a wire transfer.

    I I got logged out of a system. Can you help me, log in back again here? So you can quickly type it, you as an agent just stepping in, type typing unblocking that AI.

    And the blocking could happen because of system issues or it could be also for compliance issues that where human verification is needed. So once you log in, AI was even able to bring up the right screen and show you, hey, why don’t you click yes to authorize?

    You know, that could be for a compliance reason too. Once you click yes, automatically, the AI sends you next task. This turns out to be a callback request someone, requested for and their, their, their request callback request for a loan application status. Again, the AI on the left side already can bring up the right systems and tools and right screens and keep it ready for you, and and also give you an option for your, customers to I mean, your agent to call. So you click on the call customer button. So it initiates a call. Real time, it transcribes the call between the agent and the member.

    And, you know, the the discussion is kind of captured in real time.

    And, you can see the back and forth there, and the call gets, wrapped up.

    They don’t they don’t have juggle between multiple system. Now the task is done. AI sends the next task. This time, it’s about someone calling about increased credit card limit, and they’ve, gotten, stuck.

    So you got the idea. So it has ability to, bring the right tool, right screen, and context, and enable, you you know, if there’s ten step in the process, you know, AI probably would have done nine step, got stuck in one of them, and you your staff come in real time in the loop and unblock and AI takes over from there. Right? So that’s the, you know, future of, you know, the the employee experience and the contact center.

    Right? So pretty much it the AI can work across multiple system. You don’t need APIs to bring them together. It has I believe it automatically navigate and get things done.

    So hopefully, that gives you a good idea on where this coming with agent AI and how banking is gonna be transformed and potentially solving most of the challenges.

    I have, a couple of minutes. I will take a couple of questions, but we can follow-up with some of these, questions offline too. There’s, one question from Nas.

    Does voice AI has access to core or a secondary database for the member info? What projects are in place to ensure core performance is not impacted by voice AI queries and transactions.

    You know, thank you for asking this question. So, yes, it has access to, most of your system record. Could be core credit card processing debit card processing system or even LO systems.

    And it uses APIs or through, you know, through operator AI to navigate if there’s no APIs to get things done.

    So core performance is not impacted. I I think we do need a core that that has ability to take that kind of volume and incoming queries.

    So as long as the core is capable to set up to take those inbound request, we can make sure there’s no impact, for the member experience.

    There’s another question probably last question. We’ll take other questions offline.

    Would there be any regulatory compliance issue with, doing bank GPT and opening accounts through AI agent?

    What we need to look, look out for? You know, absolutely. So you you saw how when the Bang GPD on the consumer side that’s happening, what is what what is seamless that your members won’t even see is behind the scene, it is bringing a human in the loop when there is a compliant compliant compliance necessary as in a human needs to be involved or, you know, verify and, you know, approve some of the responses.

    The AI bringing, in a human in the loop in the real time ensuring you meet those compliance obligation wherever is necessary. Right? So, so but cons your members would never see that happening at all. Right?

    So, hope that was helpful to see how banking is gonna transform, you know, with with agentic AI, how it’s gonna be transformed. I wanna share for everyone who joined here. Absolutely thank you for joining us. And just to wrap it up.

    Right? So, you know, in this autonomous world where AI is going to practically put retail banking on an autopilot in next three to five years, what is the role of a community banking financial institutions?

    You know, I think, you know and what would it look like in three, five years for us? We are a custodian of custodian of trust today. Right? So, you know, and pretty much, with high touch, high, tech, we can provide personalized care.

    And, you you know, we empower our staff with, you know, AI, with creating, you know, less number of headcount, creating a massive, you know, financial institution, hyper personalized products, and truly become a champion for the financial well-being of our members. Right? So we will largely be a custodian of the trust, and mission, and the AI will be driving most of that. So it’s important that you want further invest in our communities, in the coming days, because, more and more of these will become a commodity.

    Right? So with that, for everyone joining, we wanna offer, a free trial of nine ninety days free trial for chat AI on on the website that you could set up in twenty four hours. It’s like a bank GPT starts, can immediately search from your website and answer all the questions.

    Appreciate you all joining. We’ll follow-up with some of the pending questions offline.

    Thank you.

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    From Voice Bots to Voice Beings: The Agentic AI Leap Redefining the Banking Experience

  • 67%
    chat automation rate
    3
    fraud attempts caught in first 2 weeks
    Key Takeaways
    Speakers
    Sherry Wu
    CTO, University of Michigan Credit Union
    Srinivas Njay
    CEO and Co-Founder, interface.ai
     

    Welcome all. Good morning. Good afternoon.

    Thank you for taking the time to join us for this webinar. How University of Michigan Credit Union uses AI to elevate member service without losing the member first promise.

    We have exciting list of speakers with us.

    First up is Sherry Wu. She’s the CTO of UMCU. She has been with, the UMCU for eight years. Sherry, can you quickly introduce yourself?

    Yeah. Sure. Thank you very much. Welcome, everybody.

    Thank you, Interface AI for this opportunity, to share what the UMC user journey with everybody, with this, University of Michigan Credit Union, UMCU for last eight years.

    I’m holding the CTO role here.

    Interesting enough, actually, this is my first, financial industry job. I’m always in the technology field, work on different industries, and they’re fascinated about, how technology technology enable the members, in their services, in the financial industry. So working for Credit Union, has been greater journey and bring we have been, quite a lot, new things to the members, enhance their, experience.

    So looking forward to share more about what we had done, in the AI, chatbot, phone banking, with everybody.

    Yeah. Looking forward to that, Sherry. So next presenter is Srinivas. Srinivas, please introduce yourself.

    Thank you, Jack, and and Sherry for, being here with us. I go by Sri. I’m the cofounder CEO of Interface AI.

    Personally come from a a Credit Union family myself. My father’s a star and scaled Credit Union to a couple of billion dollars and, helped them through the technology strategy in the early college years of mine. And when went on to work at Microsoft, part of the AI, team there on bing dot com and and later started Interface AI bringing both together for the credit union and AI experience.

    Great. So she is gonna talk to us about, evolution of AI and show us some demos. That’s looking forward to that.

    Thanks, Jack. John Taranzetti here, vice president of customer success at Interface.

    I’ve spent a number of years in the conversational AI space and then doing a number of technology implementations and transformations myself on the customer side in the past. In my job, I get to work with all of our amazing customers on a daily basis and help them achieve their business goals. So I’m really excited to be here with all of you today and speaking with Sherry about, how we’ve been able to help University of Michigan Credit Union on their journey.

    Thank you, John. And my name is Jack Chawla. I’ll be hosting this webinar. VP of marketing at Interface dot ai, And, I spent most of my career in communication and contact center technology space.

    Okay. So let’s get started. So here’s the agenda for the webinar. So we’ll talk about Interface dot ai for, the people who are not familiar.

    We’ll give you a good idea of what Interface dot ai does.

    And then, John will talk to Sherry and talk about her experience with AI in general and, AI, from interface dot ai, how they’re using it, what is the impact, how the members are liking it, and and so on. But before we actually talk to Sherry, we, Sherry will show the demo of the two solutions they’re using, VoiceAI and ChatAI. So you have good grounding of what the solution can do, and then you can freely understand what the impact has been, for of the solutions for US Video Michigan Credit Union.

    And then we’ll, after this, discussion, we’ll talk about AI in general, where it is going, how it is evolving, and how we are leveraging the evolution of AI to build very compelling solutions, for credit unions and community banks. And you’ll be excited about the things we are doing, which you might not even have thought about. So I’m really looking forward to, to this, discussion, and we’ll show some demos around what is coming down the line as well. And finally, we’ll go to q and a.

    So please feel free to ask questions as we’re going along. If you’re not familiar with Zoom interface, at the bottom of your Zoom app, you’ll see an icon called q and a. You can click on it and ask, start asking questions. And we’ll answer them, either at the end of the, webinar, or we will directly answer it as we kind of go along.

    Okay. So let’s dig in. So, actually, before we dig in, let’s take a small break and do a quick quiz to get a sense of, how, you guys are using AI right now. I wanna see get a feel for, what is your experience with AI.

    And, at the bottom of the question, bottom of this quiz is a question, would you like to see a customized demo?

    So if you, are interested, we can actually create a custom demo for you, which will actually work with your website similar to what the the demo will show you with the UMCU. So it might be a compelling experience for you guys to actually get a look on how AI can really transform, how your members interact with you on your website, mobile apps, and on the phone.

    Okay. So, let’s see.

    Please take a minute to answer the questions.

    So fair amount of, about thirty one percent of you are using voice AI in your contact center.

    About forty four percent, of the respondent are using chat AI for the website and our mobile app.

    And, amazingly, very few people are using AI for employee augmentation.

    Again, very few people are using AI for landing, and, quite a few people are not using AI at all. Okay. So I think in this webinar, you will get a lot of insights on how, UMC is using AI and, in general, what is the impact of the AI.

    And looks like AI is a hot topic. Everybody’s trying to do something with that in the coming years. So I would strongly recommend, you engage with us and take a look at our products and demos so you can kind of educate yourself.

    And it looks like their biggest pinpoint is, reducing the call center queue wait time and abandonment rate, improve the digital experience, which is, kind of a trend in the industry as, younger generation is, getting the transfer of wealth. They want to interact with the with the banks digitally.

    And, actually, quite a few people want to figure out how to improve the productivity of the employees. Seventy seven percent.

    Unfortunately, we’re not gonna show you this demo of EmployAI, but we will talk about what EmployAI can do for the employee productivity.

    Okay. So let’s get started.

    So Indevint dot ai has been kind of serving this industry for ten years.

    Srinivas was one of the founder with Bruce, worked in India on, credit union equivalent. In India, we call them co ops, And he built the technology for, this company which he founded with his father. And he bought this technology to US to apply to the credit unions and community banks. And, we’ll talk about all the solutions we have built for the credit unions. And, about hundred credit unions have already deployed our solution.

    I would say that our solution is most deployed in the industry.

    The industry itself is very is in the very early stages of using AI, and we have the largest market share in terms of people using our technology productively every day in and day out. In fact, we have about one point five million interaction on our platform every day. And we handle about one point five billion interaction overall since we have been, since we started this company.

    We have been mentioned by Gartner. We are, we are allied with the Credit Union National Association.

    We are the sole provider of AI technology to a light solution, and we have won many awards, showing our innovative technology at Finovate and American Banker and various other conferences.

    So now the question is the reason you are here, I think, is because you have interacted with the ChatGPD and seen the power of where the AI is going. Right? So ChatGPD is a amazing technology. I love it. I use it every day. And, the numbers are fascinating as well. So ChatGPD, they got hundred million users in three months.

    And the latest data is about seven hundred million people are using ChatGPT every week.

    And they’re projected to double it, in the next twelve months. So what that means for our industry, both for our employees and both and the members, is everybody wants a chat GBT kind of experience from the financials institution.

    So it is a kind of becoming a race.

    The financial institution who really provide the chat GBT kind of experience will win this.

    It’s a it is becoming a must have technology.

    And ChatGPD is kind of not only revolutionizing, the, the consumer experience with search and so on. It is some it’s a technology which will be highly adopted in the industry, in the in the, in the financial institutions.

    Kind of similar to the impact of Internet and mobile phone, it will have a huge impact on our industry as well.

    And Accenture did a study, did the analysis, and said ninety percent of the work in the credit union in the banking industry will be impacted by, AI.

    Fifty four percent, which is more than half of the work will be actually automated and about twenty four percent and twelve percent. Twelve percent highly augmented by AI. Twenty four percent lightly augmented by AI.

    So the impact of the AI is going to be substantial. It’s gonna be huge.

    And I think it’d be used as a industry to really take advantage of what AI has to offer. And, we’ll talk about how we are leveraging this trend to make this, fairly straightforward for our industry to adopt AI in various different use cases.

    So our as I said, ChatGPD is going to revolutionize the industry, and we are on a journey to give you basically a bank GPD. Bank GPD for the members, bank GPD for employees.

    What that means is whenever the members interact with you, they get highly intelligent and intelligence at the level of your senior agents to interact with the members and answer the questions immediately. Right? So from a member perspective, if you can get answers to very common questions, even simple complex questions immediately through AI, which is human like, it is a amazing experience. And at the same time, if you if needed, you can actually talk to the human for very complex issues like, financial planning and so on and so forth. So combination of, highly intelligent AI and a human being will be the way you will kind of really delight your members.

    And then on the employee side, employees, especially the younger ones, are used to check GPD. They will come to work, and they expect the similar kind of experiences. And that’s exactly what we are trying to do on the employee side as well. Basically, give them a very powerful, experience where they can, get answers to pretty much all the questions. Either it is coming from the system of record or your knowledge management, kind of combining all this and giving precise answer, grounded into your knowledge to your employees.

    How do I open the trust?

    How do I lock the card?

    What is the, trend in the in my new membership? All these questions can be answered immediately through the employee experience, which we are building out, for, our industry.

    So, basically, if you kind of think about it in a classic way, system of record is where all your, kind of information is. And then you have a lot of different applications and a lot of, you’re trying to fit intelligence in there. And then you have a lot of tribal knowledge where you’d ask Mary in the back office who’s answering the question. So we’re trying to bring all this together and provide a compelling experience at the fingertip of both your employees and members.

    So what it means from the solution perspective is, over the ten years, we have built out what we call as a bank GPD platform.

    It has the intelligence of one point five billion interactions we already done. It has the intelligence of all the, advancement which is happening in the AI industry. It is all kind of, bought together. And on top of that, we have built the security layer. So by the voice and device biometric, caller ID, ID foresight.

    And this platform, is integrated into all the different calls, all the different iOS, all the different, online, banking, and all the typical system we use. So we are pre integrated pretty much with all the different solutions out there. And on top of that, we have built six solutions.

    The first one is voice AI, which, UMC is is using, and Shri will actually show us a demo of that. And, keep an eye of how the, the voice is, AI is acting, and compare it to a human being and see how good it is. Right?

    Similarly, Chat AI, which is similar to Voice AI, has amazing experiences. And, again, she will show you a live demo of, Chat AI on UMC’s UMCU site. And think of, when it is under when you’re seeing the demo, look at the questions which is the chat AI is able to answer, and you’ll be amazed on how advanced the, chat AI has become.

    Then employee AI is, as I mentioned, kind of a, a friend of your employees. We will not be showing the demo of it today, but we’ll be more than happy to, kind of do a custom demo for you guys for the employee AI. And then fraud prevention AI, we talked about that. It is leveraging the, biometric and caller ID forensics and building the and bringing the intelligence on what how to counter the the caller, on, authentication depending upon the complexity or depending upon the risk level of the interactions, they are trying to do. So you don’t necessarily unless you want to challenge the caller if all they’re all they’re asking for is a routing number. And at the other extreme, if they want to do wire transfer, you wanna do, kind of double, triple authentication. So our fraud prevention AI automatically adjusts based on the risk level of the interactions.

    And then we are working, in the alpha stage of this OLB GPT, which is, reimagining how the online banking can be done. And, it’s best to see the demo, and Sri will show the demo of this to really grok what, the OLB GPT can do and how amazing it is compared to the traditional online banking experience.

    And then with the AI operator, we are reimagining the interaction between human and AI. Right now, generally, AI will transfer the call to the human, and, the human has to take over and complete a call. What we are envisioning is that instead of transferring the whole call, AI can hold the conversation and kind of have the human handle a particular, task.

    And AI can continue with the conversation. And, again, when Sri shows you the demo, it will become clear on what this solution can do for us.

    Okay. So with that, briefly, how the solution kind of sits into your, current stack. So think of this as one AI brain, which is sitting, in your in the in at the front of all your incoming member experiences.

    On the phone, people can obviously call your phone number or text you.

    On the mobile app or on the website, they can chat with you. You know, on the mobile app, they can be in the in message, and they can message you. And all this can be handled by AI at the level of, your senior, customer service member service agent, which means that it can easily automate sixty to eighty percent of the interactions coming in, at the quality of the level of the senior, member service representative.

    So it means that it’s amazing experience. Obviously, humans like to talk to human, but nowadays, humans won’t answer from, immediate answers. It is, unfortunately, impossible to have that many human to immediately pick up the call. So AI can really, handle the kind of the routine request.

    And then if needed, the call can be escalated to the, to the phone or chat system for the phone agents or chat agents to continue the conversation with full context transferred over. And there’s one brain is also helping your employees with all the different questions, and it integrates with your core banking, online banking, and, knowledge management system and LOS and all these different system to get personalized answer for the for the members and personalized response to the employees to help the the members when they’re interacting with them, be it in the call center, be it in the branch, or be it in an internal internal research or marketing campaigns and so on.

    Okay. So I hope, that gives you a good idea of what Interface does, what our vision is, what our solution is, how we kind of integrate with your solution. So let’s kind of take a quick look at two of our solution, VoiceAI and ChatAI.

    Thank you, Jack. Appreciate it. So, there is, so much we are doing. It was good to see that you go back and talk about all the solutions, and, it’s very comprehensive offering. It’s time to see some of these solutions in action. Right? It’s always a fun part.

    You know, I’m gonna start off, showing you voice AI.

    Pretty much, you know, you empty you, Sherry’s credit union here uses VoiceAI and ChatAI.

    Wanna, briefly show you the products so that you kind of understand, what they do, and then it’ll be easy to follow along the conversation with Sherry and Jack later on.

    VoiceAI, what it does, it’s pretty straightforward. It’s think about it as an AI system that picks up hundred percent of incoming calls and, has ability to automate forty, fifty, sixty percent of the calls depending on your member’s, you know, ability to interact with AI and willingness to interact with AI rather.

    It has a ability to automate fifty, sixty percent calls and hand off the rest to back into your agent with a really warm handoff on context.

    And during the process of automating, it can be in front of the pinned question, behind the pinned questions. And AI has a ability to even detect fraud, you know, and and prevent fraud, through very comprehensive, ways to authenticate the member, verify the member, and things like that. So that’s what voice AI does. We’re gonna show you a demo here real quick. There’s about four different scenarios, kind of highlight different capabilities of this AI. It’s pretty sophisticated.

    You know, we start off, checking if I can afford a new iPhone that’s coming up on, next week. Right? And, and then, you know, see if, if I have enough balance and based on my expenditure, can I still go and make such a large purchase and whatnot? So I’m gonna have a conversation. You see AI guiding me through. And then I’m gonna try to, transfer some money, and also explore possibilities of, hitting my, savings goal, for a used car loan.

    You’ll you’ll be seeing very powerful capabilities of what if scenario modeling and things like that. And we’ll also see third scenario where, I would explore to try to get a auto loan for a used car, and, AI is able to help me instantly find information from the website and guide me through the auto loan process. Then finally, we’re gonna talk about, a potential fraud scenario where you will see AI in action, which is kind of AI is gonna immediately recognize the need of, me as a member calling in to talk to an agent, without me asking for an agent. It is extremely sensitive, to member sentiment, to be able to balance efficiency and personal care for your members.

    That’s which is so crucial, as, we’re creating and some community banks and try to balance the efficiency and personal care, which is often conflicting, but you need technology that you choose that understands the conflict and deals within a right way. Right? So we’ll see that in action as well. So I’ll leave this slide open here, and I’m gonna call the number here real quick and, put it on, loudspeaker.

    And, Jack, if you don’t mind, when you can hear the AI in action, purely, just give me a thumbs up. Yeah? Sure. Thank you.

    You can see the slide with the scenario still. Right?

    Yes.

    Okay. Wonderful. Let me call.

    Hi. I’m Jessica, a digital assistant from Navy Federal Credit Union. I can help with banking services and general questions.

    This call may be monitored for quality assurance. With the best experience, avoid using speaker mode. How can I help?

    Hey, Jessica. I’m at Cypress, Texas. I’m looking to buy an iPhone. It’s cost me about eight hundred and fifty dollars. Do you think I can afford one?

    To check if you can afford that iPhone, which costs eight hundred fifty dollars, I’ll need to take a look at your accounts.

    First, could you please provide your member number? It should be five to ten digits.

    Yeah. My member number is one six zero two three, and my SSN is one zero eight one.

    You’ve got a thousand dollars in your vacation savings and seven hundred fifty dollars in your free checking.

    So you have enough in either to cover that eight hundred fifty dollar iPhone. Which account would you like to use for the purchase, or do you have any other questions about your accounts?

    Yeah. You you know what? I would rather go, get cash from another account. Can you tell me, nearest ATM or a branch, close by, here?

    The Cypress Texas branch is located at fourteen thousand one hundred and forty Cypress Rose Hill Road, Cypress, Texas seventy seven thousand four hundred and twenty nine. It offers a twenty four hour ATM and Navy Federal ATM.

    The lobby hours are Monday through Friday, nine AM to five PM, and Saturday nine AM to two PM. Want me to text you the address and hours so you have them handy?

    Standard text message charges may apply.

    Not right now. Let me go and send, about, fifty three dollars from my, checking to savings account. Can you help me with that?

    To proceed with sending fifty three dollars from your checking to savings, I need to verify it’s really you.

    I see you have a couple of phone numbers and emails on file. Could you tell me which one you’d like me to send a onetime password to?

    You can choose between the phone number ending in Let’s go and send to my phone.

    I sent a one time password to your phone number ending in eight two eight three. To validate, could you please enter the code you just received?

    The code is one two three four five six.

    The transfer of fifty three dollars from your free checking to your vacation savings is all set. Now you’ve got a total of one thousand fifty three dollars in your vacation savings and six hundred ninety seven dollars in your free checking.

    With that iPhone purchase in mind, you’re still looking good to cover the eight hundred fifty dollars.

    Anything else I can help you with today?

    No. I’m thinking about buying a used car. It cost me about ten thousand dollars in a year from now. If I have to save, ten thousand dollars in my savings, let’s say, in a year from now, how much should I be transferring every week?

    To save ten thousand dollars in a year for that used car, you’d need to set aside about one hundred ninety two dollars and thirty one cents every week. That’s calculated by dividing ten thousand dollars by fifty two weeks in a year.

    I Want me to help you set up automatic weekly transfers to make saving easier and less prone to being forgotten?

    Yes. Let’s go and set up that automated payment.

    You’ve now got a plan in place to save for that used car. I’ve set up a weekly transfer of one hundred ninety two dollars and thirty one cents from your checking to your savings starting tomorrow.

    Your savings will have one thousand two hundred forty five dollars and thirty one cents, and your checking will have five hundred four dollars and sixty nine cents.

    Anything else you’d like help with today, or are you all set?

    You know what? I’d also apparently wanna explore a auto loan for that used car. Just wanna check the rates.

    What is your current rate, for a ten thousand dollar auto loan and new loan?

    You’re looking for auto loan rates for that used car you’re planning to buy. Right?

    We have competitive rates for used car loans. For a ten thousand dollar used car loan, our current rate is around five point five percent APR for a sixty month term. However, rates can vary based on your credit score, loan term, and other factors.

    Would you like me to give you a more precise quote or explore other loan options that might fit your needs?

    Yeah. Before I probably proceed on applying for this, can you tell me what documents, I need to have ready, before I proceed probably applying on a branch or online?

    To apply for that auto loan for your used car, you’ll typically need a few documents ready.

    These include proof of income, like your recent pay stubs or last year’s tax returns, proof of where you live, such as a utility bill or your lease agreement, and some form of identification, like your driver’s license or state ID.

    Since you’re looking at a used car, we’ll also need some details about the vehicle itself, including the van, the make and model, and how many miles it has. I can send you a quick summary of all these documents via text if that helps, and standard text message charges may apply. Would you like that?

    Not right now. You know, can you tell me what are the top three most recent transactions on my checking account?

    The top three most recent transactions on your free checking are a debit of nineteen thousand two hundred thirty one dollars on August twenty eighth, described as transfer to account five hundred and sixty thousand one hundred and twelve, a debit of five thousand three hundred dollars on August twenty eighth, described as transfer to account five hundred and sixty thousand one hundred and twelve, and a credit of one thousand dollars on August eighth, described as Social Security deposit for July. Want me to explain any of these or check your current balance?

    Hey. Some of those transactions you, you shared that you shared just now, I didn’t do them. I suspect there’s probably a fraud. Can you help me, with that right away? I’m really worried.

    I’m so sorry to hear that you’re concerned about potential fraud on your account. I’m going to connect you with one of our fraud services representatives right away. Please stay on the line, and they’ll be with you shortly to help resolve this issue and ensure your account is secure.

    Great.

    So hopefully, you saw the AI in action there.

    You know, for the sake of the demo, some of that intentionally slowed it down for everyone to follow.

    Hopefully, you saw AI, was able to kind of help me with, see if I can afford, to buy an iPhone, you know, based on my expense patterns and things like that. I was able to also remember my location. Now when I said in the beginning of the call, I was at, Cypress, Texas, it was able to then when I asked for an ATM or a branch, it remembered that location offered me something close by. And if you noticed, it was pretty intelligent in kind of the follow-up questions, telling, hey. Can I send you this text message with all the information and whatnot?

    And then when I went into transferring money, hope you notice it was able to guide me through my savings goal. And, when I was asking for auto loan, it had the ability to instantly look up the knowledge on the website and respond to a lot of questions about, you know, preparing to bring the right documents or, is there a, is there an auto loan that makes sense for me in terms of rates and things like that was able to guide me right away. And finally, when you, when I asked about some, potential fraud, on my account, it was, it was very seamless to be able to hand off the call to an agent, without me even asking.

    Right? So, that’s kind of the, part of, the AI. This is kind of the next version of the AI that UMC is using. UMC is on version five.

    What we just showed you is a version six. It’s a little more latest. I just wanna call that out. And, with that, I wanna show you, the chat AI demo.

    Chat AI has multiple modules.

    You know, there’s about four modules on Chat AI.

    Smart discovery is a Chat AI that, answers in front of the pin question, and smart transaction is a Chat AI module that answers behind the pin question. And the smart conversion is a module that actually cobrowses with you along the journey.

    Either you’re applying for an online application or shopping for a new product, it actually cobrowses with you. Gone are the days there is a human need to cobrows. AI can do that itself. We invented that technology. And then there’s finally upsell cross sell. There’s an AI that actually drives product recommendation, financial insights, and organization.

    UMC uses these two products today, in front of the pin, behind the pin. They’re only live on the in front of the pin, and we’ll show you that in, action in live. So I’m gonna request my colleague here, Laura, to go and share the screen. So we’re gonna, hop into their website here real quick, and, you can try this yourself as well firsthand.

    There’s nothing like a firsthand experience. So, if you see the right bottom corner, you can see that, AI in action. So you can pop it open, and we’re gonna start asking a few questions and show you how powerful it is. So, we’re gonna try asking about auto loan rates similar to what we showed you on the, call.

    What are the auto loan rates?

    And, what documents should I need to bring to apply? So, immediately, here, the AI was able to respond with the actual auto loan rates they offer, what documents I need to bring in. And, if I come below, there is multiple sources. It shows at different places it actually looked to find this information summarized for you.

    So you don’t have to do it. Look at that. They had to go through three three different links to find that information. Imagine trying to do that, as a as a member.

    It’s challenging. It’s just not EMCU. It’s just the way our website is structured is not, you know, easy to find information often.

    So, you know, a, I was able to go through all of that as a true assistant and find the details for you. And then when you, come below and click on that blue link, it automatically navigates, to that page where the information was, taken from, automatically scrolls, highlights in yellow, the the rates and everything. Right? So the AI is automatically navigating on behalf of you, to to, show show you exactly where you found the information.

    So we’re gonna try a couple of other things.

    So, you know, we’re gonna try to do, some, math here similar to what I did in the call. We’re gonna say, hey. For a twenty five thousand dollar car loan, what would be by monthly payment, based on, your rates? Right?

    So comes back, tells me, you know, you don’t need a a calculator. You can just talk to AI and figure things out. Comes back, tells you, hey. Your monthly payment would be four hundred dollars.

    Right? So now, of course, it also offers you a link if you wanna, you know, play with it on a calculator. Right? So, it’s very powerful.

    I I strongly encourage you to go to u m c u dot org and try, hopefully, Sherry doesn’t hit me, to drive a lot of traffic to the, to their website.

    But, we’ll try, one more question here.

    You know, you MCU savings account for students.

    Do you have anything specific for students? Imagine trying to do this on the website often. You gotta navigate the whole site to figure out where, the student offers are. But here, you know, just a couple of seconds, AI was able to find that information for you and and, bring that up.

    So the beauty of this AI that we’re showing you on the voice or on the chat is there’s zero training. Like, you’re not sitting and custom scripting any of the responses, which is the case with a lot of other AI, options out there. With us, you feed the knowledge and, integration, and it’ll it is smart enough, already trained enough. It’ll figure out autonomously how to complete your request.

    It’s pretty powerful.

    You’re not, setting a predefined workflows and kind of sit and train manually and things like those days are old and gone. Right? So, we’re gonna try to ask a follow-up question here real quick.

    Based on your offering, how can I consolidate my student loan? Right? So, we’ll see. It gives you a little more details and help you with that, question as well.

    Can consider debt consolidation loan offered by MCU. This allows, you know, here is how you can the steps you can take, how you manage that. In at the bottom, you have a blue link. You click on it.

    The first one is it was already looked at multiple places for you. So you click on that, and it’ll automatically take you to that page and, you know, you know, highlight that information for you. Right? And then automatically scroll as well.

    So hopefully you get an idea how powerful, this AI can be, and, now we’ll show you the behind the pin experience.

    You know, and and EMC is in the process of enabling that. When they do, on the same chat, when you ask any behind the pin, it’ll authenticate right there and then and answer the questions too. Right?

    And and, you know, for now, we’ll show you their demo setup.

    Let’s, go ahead. We’ll show this on an interface bank. Don’t worry. We’re not in the banking business.

    This is type of hypothetical bank.

    If you see, there is a right bottom corner. There’s a chatbot already. So click and pop it open. And, we’re gonna ask behind the pin question. Now you’re already on online mall banking, so you don’t need to authenticate. So we’re gonna try a few simple things, and we’re gonna, tune up the complexity.

    We’re gonna try four question. The final one is gonna be the most complex. You’ll never be able to achieve that online mobile banking.

    Kind of shows you how AI could be a true companion. So the simple one to start with, we’re trying to transfer money. Right? So it shows you, hey.

    Is this what you wanna do? You click a button. Yes. Let’s do it.

    You’re done. Gone are the days you gotta figure out where to click. Navigate a form. Fill up all the details.

    You know, you just type it in, or even you can speak into it. You see the mic button right bottom corner? You click on it, speak to it. It get takes care of it.

    Right? So now let’s try something a little more complicated, to do in online mobile banking. So we’re gonna try to dispute a transaction, which is specific transaction, thousand dollar charge.

    It’s painful to find that transaction in online mobile banking. Gotta navigate your statements and figure out and click on those. But here, the moment you asked, it found the transaction, said, hey. What would you like to do with this transaction? You wanna dispute, put the card on, freeze the card with a click of button again. You can complete that.

    You know? You see, like, how, you know, AI can be a true companion there for online banking. And then we’re gonna try something a little more complicated now. Try to make a a credit card payment and, you know, scheduling a payment here.

    It comes back says, you know what? I can do that, but I I I recommend you don’t do it right away because you have imbalance in your in a, you know, in your cash balance. So you may wanna wait it out. So because you have upcoming expenses, why don’t you schedule it for September three September third.

    Right? So you have a button at the bottom.

    You click on it, and you schedule it. So the AI was able to guide your members to take right decision providing financial insight. Now we’re gonna try something very complicated that’s almost impossible to do in online mobile banking. Kinda shows you how AI can be a true companion.

    So, we’re gonna ask for, one of the popular questions we all have.

    How many streaming subscriptions have I signed up? You know?

    For the last one year, how much I’ve been paying? So imagine trying to do that on ML banking. It’s almost impossible.

    So here we type it in, and AI comes back and says, hey. I can pull all this information and do the analysis. Can I proceed? You say yes, and it takes over control from you as a member, automatically navigates your online mobile banking, downloads each statement for each account, and analyzes those transactions and creates a beautiful summary, to show me right there on online mobile banking exactly how much I spent.

    You’re still on online mobile banking. Right? It didn’t go away. So AI took the freedom to take full screen real estate at the right time because the information, was, more for a small screen.

    It made that decision automatically and constructed this graph on the fly. Nothing is predetermined.

    Right? So if you click on the right top corner, the arrow mark, it collapses, and you’ll be able to see the online mobile banking right there. It can go back into your AI full screen anytime.

    So, you know, pretty much, this is the way we want to plug into existing investments, to make sure AI is working seamlessly. Right? And then in the future, as your members and, and and you you all get comfortable with AI, we are we already have a, online mobile banking system that’s fully AI first. You can replace that.

    Right? So, that’s the kind of a little bit of a demo for you. Of course, I highlighted some of the components and UMC doesn’t have yet. They only use in front of the pin.

    They’re launching some of this behind the pin as well. Also, on the voice AI, they’re on a one version previous to the latest. They’re gonna be live on the new version sooner too. Hopefully, that gives you some idea about their differences.

    And, Jack, back to you.

    Thank you, Sri. Wow. Mind blown. Right? This is playing GPD in action. Yes. I hope, you guys got a sense of what is possible.

    Right? So if you cannot really think about it, it’s impossible to do all the things Sri showed you with the traditional WIMP interface, Windows, icons, menus pull down. So I think, a lot of smart people in the in the technology industry are saying, WIMP is going away. We totally agree with them, and I think the conversation will be the way to kind of interact with the financial institutions, be it calling on the phone or the more digital experiences.

    And our technology can really power that conversational experience.

    So with that, let’s talk to Sherry, and, learn how they are using how Sherry is thinking about AI and how they’re using Interface dot ai.

    Okay. So let me hand it over to John, and he will interview Sherry, and, Sherry will share her insights.

    Awesome. Well, thank you so much, Jack. As we mentioned in the beginning of the call, we’re very excited to have Sherry here with us from University of Michigan Credit Union.

    University of Michigan Credit Union, one of the things I love about this in this in the statement here, you know, it started with twelve members and nine dollars in assets in nineteen fifty four. Today, over a billion dollars in assets and a hundred and twenty thousand members. So the work that Sherry and her team are doing are really, at a significant scale.

    So, Sherry, as CTO, you’re obviously intimately involved with how AI can improve the operations of UMCU. You know, how is the business strategy at UMCU delivered more effectively using AI?

    Yeah. Sure. So, for us, in, in the Explore AI, we explore in multiple areas.

    Started with the enhanced member, experience, on the website or on the phone. So partner with the Interface AI, we launched the, chat AI, which is a a smart discovery and a voice AI, as well. So by having those, we’ll provide in the real time answers, to members anytime. Right now, they’re just doing a busy hours. So before we have this capability, members are calling us of ours, you know, the content center close, at six thirty, on the weekdays. And so they were now able to access us. Right?

    So also by having the, the voice AI on the phone, reduce the wait time for the members, and then so wherefore you improve their satisfaction.

    So that’s one area. Second area, we also, looking at, it’s a streamlined loan origination with AI. We have traditional loan, system, iOS system ourselves. So we’re looking at to enhance that whether by ourselves or purchase, third party, utilize AI, the, AI driven decision system. So make a quicker way, effectively, decision, for the membership.

    Then we all know the for our team members. Right? We all utilize things like a chat TPE to compose emails and things like that. So we encourage the member team members to utilize those to make, things quicker, what they do.

    So, improve quicker, right, decisions. Then it can free up time to do something else.

    And, another area we’re also looking at it is, explore the AI driven, ticketing system. So we have a a ticketing system right now mainly used by IT, but also by other department as well.

    It’s, it’s a quite old system now. So we’re looking at, one of the system. It’s not only have a newer capabilities, also have AI capability.

    So with that, the mum team members, when they ask questions, AI can answer some if questions already be asked before, or, for an IT help desk. And by utilizing, like, the tool, they can get to the quick questions answered for them, and then they can pass on. Right? So that’s another example of AI.

    So for similar to what you described earlier, employee AI, we also evaluating what we do regarding employees, knowledge base. So right now, knowledge base is all different places. Right? The procedures, some are here, some are there.

    Take a time for team member to switch this right procedure I should follow. So we’re looking at the building, AI system where, you know, can you just like a chat to a member use, right? Say, oh, how do I do this? And then the answer come up right there, for them.

    So saving time for them. So, so that’s five different areas, all whole, you know, serving, team members or membership to streamline the process and then make, their life easier and, improve the satisfaction.

    Yeah. And what I love about this is the different dimensions that you mentioned. Right? You have both informational and transactional and AI for members and for your employees. So there’s really an ability to transform all components of the business using AI.

    And in doing so, as as you see on the screen here, as Sri mentioned, Interface currently works, with UMCU with VoiceAI since twenty twenty four and ChatAI since twenty twenty three. And as part of that integrated, seamlessly with, their core and with other, elements of their ecosystem. So we have Scimitar, LTRP, and Cisco all as integrations that were enabled as part of our discovery and implementation process with UMCU.

    One of the really cool things is, is Jack and True were alluding to earlier is hearing the technology live. So I don’t do it now. But after the, the webinar, certainly invite and encourage everyone to test out and give, Vic a call. I think Sherry and her team have done a really amazing job and have created a really, you know, top tier program using all of these AI assets. So give Vic a call, the numbers on the screen here, after the webinar, and see how great it is for yourself. So, Sherry, the next question here, what are the specific problems you were trying to solve with voice AI as a channel?

    Yeah. So, for us, you know, before we have the Vic, when whenever we launch a new product, there will be a huge surge, from the member calling, to know about the product where they don’t know how to use in it. And so that causing a long wait time, and a higher bending rate due to we only have, you know, fixed number of agent to answer those calls. And so we were say either, you know, implement something. Otherwise, we, we, you know, hire people seasonally or we have a third party do the, call flow. So those are all, expensive and then, take time to implement.

    So utilize the voice AI. We talk about, you know, can, can make that things much quicker.

    Reduce the member, frustration from the wait time. Right? We said if you are doing a high call volume time, you know, if you have waiting for a long time, that is frustrated for the, members.

    And also or they simply drop off the call. So we track that abandon rate from the contact center as well. One of the metrics we’re tracking.

    And so with with the voice AI, we allow the members to ask in those simple phone questions easier just to chat. Now only transfer to the agent if the answer cannot be answered or they really want to talking to agent. And we made a flexible not to be say, oh, the voice AI will take over the whole thing. Instead of what we did is, like, it’s become one of the options in the country.

    So it’s a press one to talk to Vic, and then you press two for regular member service. So we are not enforcing everybody to using VI, but give a try. Once you try the Vic, if you like it, continue. If you don’t like it, you can always say, talk to agent.

    Get out. Right? So we want to make sure we serve all members to how they want to be served and not forcing them to do something. Right?

    So that’s another example of then, agent, by, having freed up with the simple question. They are taking all the more complex questions like a fraud and things like that. Right? And then or upsell, to to be even really better, you know, member service, to have the time to doing so.

    So, you know, talk about the limited, service hours. Right? This, opened up twenty four by seven. We recently launched the twenty four by seven, on the on the phone side.

    And, you should be every time. I also oversee the our, the phone phone system. Every time we do a phone maintenance of ours, we will open up the contact center for testing the call. Every single time, we have a real member call you.

    What that means, they do want to talk to you after hours, but you are closed before. Now we’re open. And this can serve to them certain degree. If not able to answer, they can call back.

    But, hopefully, we’ll have more and more question be answered, so they can, you know, serve serve the members twenty four by seven.

    Yep. And I love one of the things you mentioned in terms of thinking really strategically about how to place AI so the people are excited about it and they don’t view it as a blocker. You know, one of the things we hear from a lot of different CEOs is, well, I’m afraid of using AI because I know a lot of my members or a certain part of my member base just like talking to someone. But the way that, you know, you and your team have implemented it, it really allows the best of both worlds.

    It gives people who wanna use the AI that option and doesn’t alienate the people who just wanna speak with someone. So there’s a lot of really creative and smart ways that you and the team have pulled this together that is allowing your AI transformation, but is also making sure that members who really want that personal connection with the CU can continue to get it. And as you thought about the partner selection process, how did you go about that process? From the moment you decided you really wanted to implement an AI solution, where did you look, and why did you choose Interface ultimately?

    Okay. So, so for partner selection process, this is not just a space speak to AI. Right? Almost to all the vendor selection process.

    I kinda follow this.

    So, one is attending the industry, conferences.

    So I’m not limited to myself to just credit union. Right? You know, financial industry. We’d know the bigger banks have, you know, we’re wasting two things.

    So we want to make sure you’re attending those conferences and talk to colleague in your credit union or banking industry, to know what they’re using. And, linking is another source I’m following, you know, the vendors there to see what, new features they put in or new versions they put out. That’s example. So first, we actually I met, Sheena when, he presented during the COVID, CUNA Technology Council, a conference we had to force that conference be online.

    I think that was first time the online conference versus in person, and, Srini, demoed the, the solution at the conference. I really like it at the time and reach out to the team right after the conference.

    Sherry So Sherry, you had another AI chat on the website that we it does well. Yeah. You’re already even before pandemic, you’re already using AI for Yeah.

    So a little bit of it.

    Yeah. We are actually just talk about, like, some you mentioned, like, some of the maybe hesitating or afraid. We, we actually implement our first chat.

    We I I would say seven years ago.

    Right? So we had the data right away, and we see some limitations. And then once our contract is up, so we said, well, he likes to reevaluate to maybe found a different provider. So that’s how we you know, I’m looking to see what else are there.

    And one of the criteria I like to have is the vendor serving multiple purpose. Now just solving one user case. So whether you are on the phone, website, and I’ll send inside online banking. Right?

    So that way, the member have one unique, unify the experience as well as the team members. Right? You have logged in one system. They’re already familiar with serving multiple channels.

    Right? So that’s another criteria I’m looking for when you value the vendor.

    So by talking to, to the vendor, not only look at what they have demoed, make sure it’s all, you know, what is is they said is what they have done. And And then talking to other reference, if they have the reference, if you are not the first one, talking to other unions, they will give you an honest opinion about the vendor. And then how about the project implementation process? Right?

    If not to create a product, if you don’t know get to how to get launch it. Right? How to get on time, launch it. So that’s not a big area talking to and then timeline.

    And, integration is huge area too. What all the system this vendor already implemented?

    You’d most likely, you don’t want to be the first one, but sometimes you don’t have a choice. But asking those questions, what are the integration you already have and then what you were planning to do? And the vendor road map, really critical. Not only is it what they have done, what they plan to do in the next year or two years.

    You don’t want to pick a vendor, sit to steal. And when everybody else move down, this vendor just sits still. Right? So that’s another huge criteria, when you’re looking for, an any vendor.

    Right? So not just not specific to AI, but AI is not even more important because how quickly AI involved with the technology changing.

    So it’s even critical for the vendors to be staying in the front, on that. So why interface AI can talk about a little bit already. Right? So it’s, meet all those criterias.

    It’s a combination. It’s not a science. It’s just, you know, and I also involve is out, when I initial selected, then I have, my senior leadership all joined the the, the, you know, demo with me together asking questions. And then, we, mentioned we already had a a a chat on a website before.

    And then we said, oh, not only we want to replace that, we also want to have live chat.

    So how about we do this together? Right? So the member not only got a a new, chatbot, they also able to do live chat. So we select the Ultra p at the same time, and we have that integration going on.

    So we will have the AI chatbot. A member can transfer to live chat if they pick two or actually can transfer to text with the auto p to the to text. So exactly, sir, meet where member want to be served. And, so then, so we, you know, demonstrated the flexibilities.

    Right? So I will talk about a little bit later. Certain things that we do is not typically interface AI do the order you do, how or how you do it. We have strong opinion how we want to do things, and we make that happen.

    Right? So and, I have many of my team members from the project actually on the call today. So they definitely, played a greater deal of how we think it’s the best way for us, for our credit union, for our membership. Right?

    So now just listen to the vendor say what this is supposed to do. You have your own opinion, your opinions to the final decision because it’s you’re the one serving to your members. Right? So and then talk about agenda AI.

    Right? You used to be a a journal AI, and we’re providing the way we’re doing this, but then, with the new word, it’s a agentic AI. So, I know interface AI is seeing the roadmap doing that with the, the next release and the for this year, later this year, or next year. So that’s another example of showing that you look how what the vendor’s doing, to make that decision.

    And and, Sherry, huge kudos to the team and your team and and having the clarity of what the members need and what your members need because no two credit unions are same. Right? So every credit union, AI gen is gonna be unique, just like their members are. And and, you know, and and huge kudos for your team to have the clarity in guiding us through to and and we being on the flexible on the other end. So just worked out well as a partnership.

    So appreciate appreciate your team and you as well. Thank you.

    Yeah.

    Yeah. It’s absolutely both an art and a science. There’s best practices, but as Shree said, it totally comes down to what your members want, how you wanna serve them, and what you want that experience to be like. So as you were thinking about bringing that experience to life and you had to kind of make this all work and pull it all together, could you walk us through what the implementation journey looked like for you and your team?

    Yeah. Sure. So first of all, we, talk about the project governance and, we, served what we did is synthetic, we have dedicated the project managers, from UMCU. And also I know interface AI also have a a project manager.

    It’s so it serve as a single point of contact. So those two work really close together on the monitor, the issues, the timelines, and so I’m you know, I had the project manager, Carrie. She’s online with us today. And, no, you know, we are so, she had the great inputs on everything we have done.

    And, project community, it’s not this AI project is definitely is not, a IT project. Right? Or single, department project. So it’s collaborated with multiple departments.

    For us, it’s IT and, contact center e service. So the two two debate department, and I have the COO oversee the contact center e services, co lead of the project. And, so we are the cosponsor leading the project. So we make sure, not only technology wise is is mostly, but also really serving what the members are looking for.

    Right? A weekly meetings, we have project weekly meetings to talk about the requirements, the testing, the timelines, and the quick resolutions.

    So another, tool, no in, interface AI, use is a ticketing system. I really like that. So it’s a single point where system goes. Right?

    Talk about where the issues and then the other resolutions, ticketing would receive a response right away saying, okay. Would it resolved or not? And then then in a weekly meeting, we talk about those high, important tickets. We call the showstoppers.

    Are they really who showstoppers or they can’t live without, we can move on. Right? And, clear definition of scope. Right?

    Good enough. Right? Certain things, I mentioned earlier. So it’s us, at the Credit Union, make sure in the end determine whether we’re ready to launch.

    Right? It’s not a vendor. They they may test it. It’s, oh, it’s ready. But if we don’t feel comfortable launching, it’s okay.

    Right? So that’s what you don’t like about. So one example I gave is initially interface that you guys have the voice, for the, with it’s a little bit robotic. Right?

    And then you say, oh, actually, other client to launch with it. But we said, no. We don’t like it. We want a different voice.

    So we said, okay. We wait.

    Working with you guys to get a new voice.

    Yeah. Right? So that’s example of something maybe simple, maybe small, but we have strong opinion on. Say, no.

    We want a different voice. So I think that’s something really paid off. To know how we care about our members, we want to the best. We know from other experience we had how could could the picky our member is.

    Right? So we want to give them the best experience from the day one. We don’t wanna say, oh, we launch something or we can improve it. Certain things, it’s okay.

    It’s we can launch and improve later. It’s agile with the face approach, but certain things are not. And, talk about the the even the chatbot. We wrote the chatbot first versus use a voice first.

    For traditional, interface AI is always go to voice because most of the credit union do not have, a, chat on the website. But we do. So we you know, our contract is up. We need to replace that first.

    So we switch over. So, okay, we do not want to we want to using the, let’s put on the, smart discovery on the website first. So we did the switch to that order as well. Right?

    And then we want to introduce Ultra p. Let’s say, how about let’s get here the replace the, the current chatbot right away so member can utilize. Then we add the Ultra p for the, integration, for the, you know, live chat and the live or texting services as well. And, so we need to work with the vendor.

    Talk about the the the importance why you wanted to order the way you do and then get the buy in from the vendor, say, okay. Why this makes sense? Right? So face approach for voice AI.

    Again, we don’t do a bigger bad say, just put on the voice. Instead of what we did is a face. What we did first one, we put on the off hours only. We said, let’s try it out.

    Let’s remember try because we know they always try call us off hours. So let them try. And now before you should be god the rest. Oh, it’s we’re closed.

    Sorry. Call us back tomorrow. You said that they got, oh, you know, then they can answer those questions of hours. Then we replace our, older technology IVR.

    And then when IVR, we said that when they called IVR, they had those speed on their speed dialing. Right? Some of the old mem you know, membership. So we changed that number to using the, the Vic.

    Right? So we did that second. And the third is when we feel comfortable with all those two, then we said let’s put on to, in our, you know, contact center, the main line. But even now, we did not put in, you know, as only option.

    Like I mentioned earlier, we put as one adoption. So when, as first one, we want to encourage the unit, so we say press one. But some actually, funny story is because we use one as a member service. Member don’t listen the whole thing.

    They just press one. So so we say, okay. You got it. Now they tried it.

    I said, oh, what is a weak guy? So they actually move out to talking to agent, then he said, who’s a weak guy? I just met earlier. So those are funny, you know, interesting stories, since we just launched the twenty four by seven in the last two or three weeks.

    And then before launch, any product is good ideas, you know, to have a team members buy in and education for team members as well as membership. Right? So Vic, the name, actually, it’s a voter from our team. Say, pick a name.

    So we, have a, you know, our team, vote on the name, and the Vic was being picked in at that time. And, we also had introduced the vehicle to add our team meeting. So we had the the presentation to the our team. So get everybody prepared.

    So every person can answer question if somebody ask, what’s the vehicle on the phone or on the contact center on the website. Right? So not just the only job, it’s, it’s a contact center where you services. It’s everybody’s job to understand the new service that we provide.

    And, and then, again, for member, it’s important to have enough education. No matter how much communication, education you have, it’s never enough. And they are still don’t read their emails. They say, what’s this?

    So we make sure not only email to them, we, create a landing page, with every single possible questions they may ask. We create the landing page of what to answer those questions. And we call Vic as one of our team members. So make it, like, personalized.

    And so I think that is also helpful for member to give a try and if they have any hesitation.

    Yeah. Yeah.

    You’re you’re you’re Just wanna add something, John, if you go back real quick on this one.

    Absolutely. It’s extremely thoughtful approach, like, you know, the phasing and the whole project management team.

    You know, the project management team, as Shrey said, is so crucial.

    When we look at the, our client implementation gone well and not gone well, the the single most, important in the top three reason would be having a project manager on the client side. Right? Like, that’s really makes a huge difference. Just wanna emphasize that.

    And, also, one of the things that, Sherry, you had a luxury of planning these kind of phased approaches because you’re visionary and started way before the, you were ahead of the problem. Right? Always. Like, for example, some of the credit unions on the call may already have a high call wait time, high abandonment rate.

    They won’t have that luxury to, like, you know, do such a phased approach. They may wanna jump on to the problem solved right away. But but you’re ahead of the problem. Many times, you’re kind of able to kind of take a phased approach.

    And it’s also about the kind of members we serve. Right, so, you know, some met credit membership are more tech savvy, others are not. Then, you know, turning it on all the way twenty four seven is a good idea, which a lot of our credit unions do. But when when they are not tech savvy, it’s kind of taking a slow a slow crawl, walk, and run approach as you rightly done, is makes a lot of sense.

    Extremely thoughtful approach and, huge kudos for that. So thank you for sharing that journey as well.

    Yeah. And as Sri mentioned, you know, that that thoughtful approach lead to some really great results. So, Sherry, can you tell us a little bit about what impact, you’ve seen? Like, what is the adoption? How is it working?

    Yo. So for the phone aside, the the voice AI, we so for twenty four seven, we like I mentioned, it’s only we launched about two or three weeks ago. So this little bit too early to measure the force, full impact on the wait time or call a bending rate at this moment.

    But definitely, we see that it’s helping us, already. But we we will have more data to show us later guiding us to do what we can do to improve that. And, so have a a positive indicators at this point, but I would just, like I mentioned, a little bit too early for twenty four by seven, ideas. But, one example of it’s a security fraud prevention.

    We, enable the OTP for all type of questions on the phone. Not only initially, it was like, oh, if you’re just asking for, hours, you know, there’s no, OTP, but you ask a balance. It’s okay. But we enable the OTP for all transactions.

    And as long as you have, you know, money related question, so that, helping us, to have a security, and, we try to identify the, three potential fraud attempt, in the first two weeks we launched the application. So that’s also another great, approach for our team members really watching those. Right? Say, you know, and then working with you guys for tools to helping us to monitor those situation.

    And then it’s not a channel to try to make sure, bad actors not to utilize the service, you know, try to gain some information here.

    Yeah. There’s always that balance as you said when you’re talking about OTP between getting the adoption, but making sure that you have all the right checks in place. So it’s something that every c will approach a little differently, but it’s a really important part of the conversation.

    Cool. So switching gears to the chat side, you know, we heard what you were thinking on the AI side for voice. But specifically on the chat side, what were the problems that you were trying trying to solve in that case?

    Yo. So for us, right, for all the ones. Right? Website is really a critical tool, for prospective membership or members. Right? Searching for information.

    And, by having the, chatbot, on the website, Vic will helping the members to find a quest what they’re looking for quicker. Right? And, basic inquiries easier and the twenty four by seven. Right? They get all those frequent ask questions.

    And, earlier, we talked about given interface AI, the the, the journey we have gone through. Mhmm. Initially initially, it was like, oh, we need to fill out the template that this is a those type of question can be answered. And the reason the release of the version five, it’s you’ll go ahead and search everything on the website.

    And instead that we tell you, oh, we launched a new product. We need to make sure the chatbot you’re able to answer that quest the product. Right? And, we get example a way I can give you is we launch internal launch, appointment scheduler.

    And, unfortunately, where the appointment scheduler is hidden in the website, and I had trouble to find where’s appointment scheduler is. And then when I finally said, okay. Let’s just go to leak, ask, then pop up. Oh, it’s here.

    This is where it and then then we direct our website to teams. Oh, we need to move this to the front because it’s a hidden. Nobody can find it. Right?

    Now they’re easily to find. But chat bot was able to find a way quicker than I was looking for, initially. So that’s just example of, you know, chatbot can help him with the the members or prospective members, to learn more about your credit union. And know what you can do all the services or product that you offer and, then trigger them maybe a call or go to visit the branch.

    Yep. Absolutely. And as you’ve said, that progression and that new technology is just making that that easier. And as those new, you know, releases have been layered on and you’ve seen more of those new features, you know, what kind of impact have you seen? This is a product you’ve had for a while.

    Yeah. So so seamless member support. Right? The first one talk about, we have the, interface AI, the, AI chatbot, and, we integrate with the live chat and live texting.

    So give the members flexibility. Right? They can stay on the chat where they wanna switch to another channel. And for team members, it stay on the same box where they can serve, you know, all the questions being asked earlier to the chat is transferred.

    So they know what question was asking, was not able to resolve, and then now what question is being asked. And, so for the members twenty four by seven, right, to, get answer those questions, frequent asking questions.

    So yeah. So hopefully, we’ll prospective members or current membership, easily to get to the information they’re looking for much quicker. And, it’s, again, it’s a serving where member want to be served. Right?

    The channel they want to pick. And, so so yeah. But if they like to stay on the website because lots of people, right, they’re busy. Right?

    They’re at work. They cannot call you. They cannot go visit you. But, oh, they can do a quick chat on the on the website to gather that something they are looking for.

    And or if AI able to answer, they can, talk to a live full chat to person. It’s the same person we actually on the phone side. So really knowledge the agent, member service and agent to to answer those questions. So they don’t have to talk to anybody, and then their question is answered.

    Mhmm. Absolutely. And as you’ve been nudging, you know, more people towards using chat, I think one of the really exciting things that you’ve seen is this very high automation rate. You know, our best credit unions are performing, you know, at sixty percent, and you’re performing at sixty seven percent.

    I think as we were talking about those ways in which you’ve been really artful with, you know, embedding this in different flows, allowing people to choose to engage, has really given, you know, a a pretty impressive automation rate. And for, you know, for any of those listening who aren’t who aren’t clear on this, you know, automation rate is the percentage of people who, engage with the AI who have their questions answered. So, you know, two and three people who say, hey, AI. I’d like an answer.

    They’re getting it, today, and that question doesn’t have to go, to the contact center.

    So finally, Sherry, the last question is we’ve gone through your journey with both the voice and the chat side. Could you just share your final best practices for other FIs looking to adopt solutions like these?

    Yeah. Sure.

    So first of all, we, you know, want to make sure you get, the leadership by you. Right? The senior leadership by you. Knowing AI, it’s, not scary.

    It’s something enable us, right, to serve better, to for for us credit union to compete with the bigger banks or other fintechs. Right? So knowing we are not behind on technology, using technology as a enabler, right, and helping us. And, so then form a project community team, right, with a different, team members from all different departments of how critical that is.

    Right? And, you mentioned earlier some of the good ideas we have. Those are from team members who on on the phone or, you know, on the reply emails, eservices.

    They will have a way better good ideas than others. Right? Their first line, they know what the member like to do or type of questions. So we have those knowledge, cross function department, SMMEs on the project. And, dedicated the project manager, we talk about how important that is, from us and as well as the vendor side.

    Clear rider collaboration. Right? Set it cleared, expectations for what you’re looking for as a vendor, when you work on the project and knowing what is the negotiable, what is non negotiable, and then talk about just example I gave earlier. Right?

    The voice. If Vampers think it’s fine, but we think it’s not, then, okay, that’s nonnegotiable. Let’s just work on that, get it better. And, maintain communication transparency.

    Right? What is not working, working, then re reset, problems. Give them the, feedback, right, to the vendor so we improve, the relationship, right, to make a better Resource flexibility. What we did, we did not say, oh, we hire a group of people.

    Just work on this project. Instead, we said, okay. Each department, send us some people, to work on this project. That’s a former project team.

    So they still have their daytime job, but we know we need a little bit flexibility.

    Meaning, certain weeks, we need more hours like a fully testing week. We need them more. So we got the buy in from the leaders from those department.

    You know, loan don’t ask for more hours for those weeks or even loan additional team members. Like, oh, we need more people to test him. And then we have that flexibility.

    And so, so get the buy in from the management, as well. So we talked about earlier. It is coded by me and, COO. So we we are have a a greatest, intention, want to have this project be successful together.

    And the rigorous testing. So vendor can do their testing. They think it’s good enough. We may not.

    So it’s okay. I said, no. We’re not ready. And so it’s us at the credit union to make a decision.

    I’ll say this is ready or not. Right? So, so that again, we do really, really good away testing. We you should be I know not with you guys.

    We got feedback from other vendors that, you know, why you guys find the worst problems so that we actually do is, you know, I said we do. We want to really test all possibilities. Right? So remember, we’ll be now the the first one finding those and they tell us.

    We want to be finding and solving those before we launch. And then communication, education, we’d mentioned a little bit earlier. Right? Have a team all pumped up, say, team member excited about work on this project and, knowing this is something going to serve our member.

    And, so they got excited. And then for communication to the membership is have those, you know, a dedicated landing page or whatever that may be to helping your membership to be educated. You know your member, so whether which channel. Right?

    Whether it’s, so emails or social, you know, you know your member best, what channel is the best for them to learn the knowledge and get do that. And then gather feedback afterwards. Right? We are still early on for the twenty four by seven.

    But we when whenever the, they transfer to agent and then agent, they some, you know, they share or our we will be asking those question. How you experience the VIC? Right? Tell me us what we can do to improve.

    And, so we we we gather those information as well, and then we can then pass on to interface AI’s team to see what we can improve on. Anything we can do. So those are the best practice I have.

    Awesome. Sherry, thank you so much for sharing. As Shree said, you and your team have been incredible partners through this journey, and it’s been just a real honor to to work with with you and your team. So thank you for being here today. Shree, Jack, pass it back over to you for the last few minutes.

    I just I just wanna say, if we can make Sherry happy, we can make anyone happy.

    Hold us to a high bar.

    Yeah. To a high bar.

    Okay. Thank you, Sherry. Thank you, John. Okay. So let me actually I have few slides, but I’m gonna skip them. Turn it over to Sri to talk about the evolution of AI.

    Absolutely. One second here.

    So, I think, Agentic AI is really, gonna fundamentally change how we all go into bank.

    Right? So, it’s extremely fascinating time for us to be at this moment, you know, taking advantage of technology to fundamentally change, you know, the the the member experience and employee experience.

    And there’s gonna be a really huge positive impact. You know, AI be fully becomes autonomous just like how, cars are driving from, you know, point a to point b autonomously.

    We’ve entered the era where AI will drive member experience and employee experience autonomously.

    Right? So, it’s it’s a it’s a pretty massive, benefits from that. Members being able to achieve financial well-being if that is their goal and AI talents regarding them through that. Or employee, you know, achieving a complicated task if that is a goal and the AI panels are getting them there.

    That’s what agent AI is all about. It’s pretty powerful. And kind of Jack showed real quick on our vision, like, how we are accomplishing that because, ultimately, you wanna have a one AI brain for your members and employees that connects with all of this, you know, technology investments you already made, like LOS, core banking system, RPA system, knowledge management system, CRM. So you let this one AI brain connect and and to these systems.

    And now this AI is smart enough to use those integrations to serve your members as well as serve your employees. Right? So you you you set up once, both of them can use. For example, your CFO could be asking, hey.

    I need to sell thousand more loans, auto loans in the next one quarter. How do I achieve that? The a imagine AI with the employee AI helping CFO immediately being able to go to the core, understand what is the white space you have with your member base today, what is the propensity of some, you know, certain members looking for a auto loan in the next one quarter based on the transaction history and and who is already actively considering and all of that? And being able to give a plan to your CFO saying, hey.

    You know what?

    You know, there is about two thousand members potentially can buy or or get a auto loan in the one next one quarter. But by the way, if you can, you know, reduce your, you know, interest rate or give some sort of a discount for members who have two, three products by, let’s say, you know, quarter quarter basis points, your auto loan will be more, competitive compared to your competition nearby.

    So do you wanna consider doing that?

    Right? With with a click of a button, a c a c f o can take their action and it creates a new auto loan product. Under the member facing AI, you uses that and starts promoting in every interaction. Your members are having with AI.

    Wouldn’t that be powerful? You know, you’re putting the entire retail banking on autopilot. Right? So that’s where AI is gonna be going very soon here.

    You know, with with that, like, you know, there is just tremendous amount of innovation we are doing. We’re creating a a brand new suite of products that fundamentally changes banking, Sphere and Nexus.

    You know, we do have a short period of time. We’ll probably open up for q and a, and we’ll send you a recording of this video of this demo. And I want you to strongly take a look at this. Videos in the Sphere especially is a complete online mobile banking replacement.

    It’s a it’s a bank GPT, like a, like a chat GPT. And Nexus is an entire contact center replacement, which is fully AI first. So we’ll send that videos out to you right after the webinar. We got about four minutes,

    and there are a couple of questions.

    We should, probably address them right away.

    I see, Jack, do you, there’s a couple of questions here. One was Yeah.

    So I’ve been yeah.

    Tried to answer some also regarding us. Just looking at those right now.

    Yeah. So, before we ask to answer the questions, just wanna make sure, everybody can kind of, aware of this thirty ninety day free trial. So what she showed you on the UNC site, we can enable the same experience for you on your website, live either on your live website or on your, kind of the testing website. And, you can scan this QR code and sign up for this ninety day free trial.

    With that, let’s turn over to questions and answers. So the first question, is for Sherry.

    Looks like you answered them already on the on the but let me go ahead and ask you, Sherry. So what are the what has been the impact on your basically, the workforce before and after AI? Were you able to kinda reduce the number of people answering the calls?

    No. We did not. We have a thirty or thirty five agent, working, at the contact center.

    We did not, reduce anybody. That was the now the intent of we, you know, implement this to replace anybody and, talk about earlier. Right? You want to boost the morale to say we want to have AI.

    It’s, we have long call queue sometime and then long waiting time of a higher bending rate. So by having AI, it’s reducing those and then the team members can serving the member better, serving more complex questions. So with that intent, we never said, okay. We’re going to re replace everybody.

    So and also we are already on the twenty four by seven.

    We may I just could say I have people help can we help them with here? We may say, okay. Maybe not hire as many in the future if we’re blowing up with the more calls, but that just bigger may. Depending on what the calls we come in and then the membership grows. But, yeah, that was not the intent.

    Okay. And I guess, Sherry, it’s too early to have a impact on the call volume as well. Right?

    Yeah. The call volume, yes. Not too early, to say the changes.

    That is, we this twenty thousand calls per month. It’s totally worth receiving the calls. It’s a we lots of members, right, like to talk to us. So, yeah.

    So that is a call. Doesn’t mean it’s not being handled by the AI. Right? Total cost come in.

    So gradually, we’ll see more those twenty thousand go to AI versus the agent.

    So Just, just to provide a little more context to that, Cheyenne, for thanks for the question.

    You know, eighty percent of our customers who are on voice AI, who use voice AI, are above fifty five percent call automation. So just gives you their context. Sherry and team are in early part of the journey on the voice AI.

    They’re they’re they’re gonna get there, but, eighty percent of our customers are automating fifty five percent of calls or more, through voice AI. Just wanna give you their context.

    Okay. So we have one minute, question time for one question, one last question.

    Shree, this question for you. How long does it take to integrate your AI with core and online banking?

    Yeah. So I see the core that NAS is talking about is Semitar, Episys.

    We are already a VP integration partner. Either you’re on prem or on East Cloud, we have VPN tunnels already established to East Cloud.

    You know, the fastest, go live we had with Semitar is Great Lakes, which went live in six weeks.

    But on an average, it’s about eight to ten weeks.

    Got it. Okay. So ninety minutes, is, done.

    Looks like thirty minutes. So so, yeah, we covered a lot. Thank you, Sherry, for your time. Really appreciate your insight.

    Thank you, John. Thank you, Sri. Really appreciate your time. And thank you for all for attending.

    It is so it was very long for probably ninety minutes from your day. So really appreciate it. Please, sign up for demos or free trial. Happy to engage with, you on your journey to AI. Thank you.

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    Key Takeaways
    Speakers
    Rhonda Neathery
    VP Digital Branch, WEOKIE Federal Credit Union
    Srinivas Njay
    CEO and Co-Founder, interface.ai
     

    Welcome, everyone.

    Thank you for joining us for today’s webinar inside WIOKI’s AI powered contact center, transforming member service with voice and chat AI. We’re super excited to have you all attending today.

    We have a fantastic lineup of speakers.

    Rhonda Nethery, who is the VP of digital branch at WIOKI Federal Credit Union. We’re super excited to have Rhonda with us today. Of course, our founder and CEO, Srinivasanjay, and VP product marketing, Jack Chawla.

    We have a great panel. We have a fantastic lineup today, a lot of content for you.

    We will leave room at the end of today’s session for a q and a. We’ve got a packed agenda here today, in which we will be going over all of WIOKI’s, federal credit union’s case study, what’s been happening at the credit union, her insights on how they’ve taken their credit union to the evolution of AI and what’s happening. We will also be showing you what’s happening in the world of AI, which is changing every day as everyone knows, and it’s very difficult to keep up. And we’re one of your great resources to help you stay ahead of the game.

    We have some really exciting demos, of course, in agentic AI, which is one of the hottest topics. We’ll show you how it’s actually practical and applied and usable for your credit union today. And we’ll hold, time for q and a at the end of the session. Also, make sure you stick around because we will have an exciting offer, so stick around to the end of the session.

    Now just to quickly get a gauge for where you all are in your journey, I’m gonna launch a quick poll here.

    If you can all see the poll on your screen, please take a moment to fill it all out if you could.

    We’ll give you all just a couple of moments here to take a time to give us some feedback. This will help us tune our content today, to your needs and interests and where you are today in your journey.

    Give you all just another moment or two to complete that. Thanks for the participation.

    Just another moment or so here.

    Like to get as many of you to respond as we can.

    Fantastic.

    So looks like, of course, most of folks everybody’s, in about fifty percent in AI voice and chat.

    And it looks like about fifty percent or more than fifty percent of you are currently deployed live chat, and we’ll still be talking a lot about that. And more than fifty percent of you, plan to upgrade your phone solution in the next two years.

    Fantastic. Alright. I’m gonna end this poll.

    And I’m gonna turn over to my counterpart, Jack, who’s going to lead through the presentation and introduce interface and all that we’re doing.

    Special welcome to some of our customers who have joined the webinar. Thanks for being our customers.

    So let me quickly introduce you to interface of AI for people who are not familiar with us.

    We have been around for almost ten years focused on building the AI solution for credit unions and community banks.

    We have about hundred customers using our solution right now, and, we have helped a lot of our customers automate their voice and also chat, and also some of our customers are using us for internal employee AI as well.

    We have strong relationship with a lot of, industry leaks and credit union associations, allied solution.

    We have been featured in Gartner as well. We have had the most deployments in the credit union community, bank industry.

    And, you’ll see, kind of if you go to many website when you interact with them, you’ll see our product in action. So we specialize in, this, solution. So the the AI voice is our most popular solution, which has been deployed for pretty much by all our customer.

    And AI voice, solution basically allows you to automate your incoming call. It is generally a replacement for an IVR.

    So from, kind of DTMF IVR, you can go to AI voice, and AI voice can talk in natural language with a customer and try to automate many, many calls. We can go from simple to fairly complex. And if needed, we can transfer the call to, the human agent, and we can integrate with pretty much all your existing voice solution.

    Then the second solution, is AI chat. And AI chat is something you can deploy on your website or a mobile app. And similar to AI voice, it automates, the incoming inquiries on the website and mobile app.

    It is kind of designed to allow you to, for the members to discover, your products and solutions. And, also, it can do transactions, which is kinda unique to us. So similar to AI voice, if somebody asks what is my account balance on your website or mobile app, you can convolutionally answer those question.

    Then we also provide you an employee AI, which is basically, your employee facing AI. Think of it as a Copilot, which can be used by, member service representatives or loan officers or any frontline employee and, even executives, and they can get answers to their questions, in a very natural chat GPD kind of way.

    So, the idea there is, you can kind of type in the question, you get the answer immediately, and, you can use that answer to kind of, give the answer to the customer, or you can copy it and paste it wherever you need to.

    So it becomes a very general solution to increase the productivity of the employee. Similar to AI chat and AI voice, the unique thing we do on the employee AI side is also we can do actions.

    So for example, if you want to, kind of block the credit card, so instead of switching over to another application, you can simply do that right from the employee AI as well.

    So we’ll if if the question is, how do I block the credit card, you’ll get the answer and you’ll also get a button. You can click on the button. You can automate simply, go and do the necessary changes in the back end. To make all the solutions easy to use, we have a a very powerful device biometric solution.

    So, as as we use our iPhones every day or any phone, you generally are, opening your phone with your, face ID or a or a thumbprint. So we leverage the same kind of, approach, and we authenticate the user when they are calling in through AI voice or calling through AI chat. And this, makes sure that all the transactions are secure. And when we transfer the call to the human agent, the, authentication is carried over so you don’t need to reauthenticate the customer.

    And then finally, on the voice side, we also have a caller ID forensic built in. So when people are calling in, you can be assured, that the caller ID is not hijacked. So we do hundreds of different checks to make sure that the caller is the person, he’s saying or he or she is saying, is. So it becomes easy for for you to kind of continue, servicing the customer, and you don’t have to, look at hundred different places to figure out that this caller ID is not getting hijacked.

    Ultimately, it leads to, the fraud prevention and, reducing the potential fraudulent calls.

    So with a quick introduction to our solution, let me, introduce, Rhonda again. So Rhonda is, going to kind of help us understand why she selected our solution, what benefits she’s saying. So, Rhonda, maybe we can start off by you introducing yourself again and also telling us a little bit about your credit union.

    Thank you, Jack. I’m Rhonda Nuttery, the VP of our digital branch here at WIOA Federal Credit Union.

    WIOA was started in nineteen sixty nine by the employees of the Western Electric plant in Oklahoma City, and our demographic included original Western Electric employees and their families alongside a tech savvy younger generation.

    And we needed a system that could balance a personal touch and yet still meet the modern technological demands.

    It needed to be user friendly and for reaching a representative while also offering a hands off experience.

    So we needed a system that could do this, and we felt that interface could deliver on both.

    Thank you, Randall.

    Okay.

    So, VioKey has deployed three of our solutions.

    As I mentioned, AI voice, the solution the product name is AI power AI powered phone banking. And, this is basically allows you to automate the incoming calls. Smart discovery is the product which helps you to kind of, ask questions about anything on your website or customer, member facing documents.

    And then smart transactions similar to AI powered banking can actually give the answers to what is my account balance and so on, which is basically, helping you with online banking. Of course, people can use online banking, but this becomes very easy where you can simply while you’re in the conversation, you can simply say, what is my account balance? I wanna transfer money. So you’re able to do it either over the phone or, through the, the chat interface as well.

    So if you want to experience, Okie, that’s the name of the, the agent on on the VOC website. You can either call this number or you can go to the website and you can experience it yourself as well.

    So let’s start off with, the AI voice solution. And, AI voice solution, as we talked, allows you to do call automation.

    And let’s talk, to Rhonda and see how this has held, kind of help with the call automation. So, Rhonda, the first question I I’m sure is on everybody’s mind is, what were the problem you were trying to solve for your members and the credit unions when you kind of end up ended up with the solution?

    So in late twenty twenty one, we opened up a new department, which we call centralized lending, and had transferred all of our loan calls to this department.

    And five of our seasoned employees also transferred to this new department.

    COVID was still a thing during this time as, it had come out in twenty twenty, and I knew we needed something to happen in soon.

    We were able to hire, but as I’m sure many of you can relate to, staff attrition during that time was extremely high.

    No sooner will we get someone hired, we would hear someone else putting in their two weeks or quitting on the spot, which, of course, led to very inexperienced staff.

    And the few remaining remaining seasoned employees were very burned out.

    Our supervisors were exhausted. It was just a vicious cycle. Our hold times were ridiculous.

    You would call in, and your wait time would could be anywhere from ten minutes to thirty minutes. And this, in turn, led to upset members and longer phone calls.

    And we tried several things such as, the idea of maybe outsourcing our calls to a third party, which we eventually did with our Fiserv dispute calls. We thought about, doing putting in a callback feature, but we didn’t have the manpower to handle that.

    We thought about transferring to other departments. That was an option either with the attrition.

    And lastly, we brought in a credit union contact center consultant, and they did help solve a few things. But I remember in meeting with her, she said that your call volume is still extremely high, and this is can is just continued going to be a cycle for you. So I knew we needed something, and we needed something quick to solve all of these issues that we were facing.

    Got it. Got it. Okay. So, obviously, there are a lot of choices there, in this, in this field with the solution.

    So how did you go about the partner selection process? And where did you look for the partner? And then why did you select interface dot a I?

    So AI was starting to make its appearance in the credit union world, and you could you would read or hear about it every now and then.

    My CO and I ran across a particular article, that CUNA had put out that highlighted interfaces, capabilities, and they’re being the top AI company for credit unions.

    And so we started doing some research and looking at other vendors such as Posh, BoostAI, Marsview, ObserveAI, Talkdesk.

    And so for about a year, off and on, we would look at different demos and had conversations with AI companies.

    And we decided to go with Interface, because the things that stood out to us the most about Interface was that they were geared towards credit unions.

    And, it looks like they were leaps and bounds, above other AI vendors, and, they had been out for a while. And some of the other vendors that we were looking at had only been out for a few years.

    Another thing that really sold, WIOKI was that they were member service focused and oriented.

    And I remember one of my early discussions with Sri.

    He had mentioned, and I’m paraphrasing here, at the end of the day, our intention is not to get the member off the phone or not to call in at all, but rather to give them their best experience ever. We know our members are going to call in. We encourage them to call in, and we want to make sure that they have an exceptional experience.

    And I knew that they knew what credit unions were about and the service oriented that we were there, and that’s what drew me to Interface.

    Thank you, Rhonda. Yeah. So the the fact that we have been around, we had successful implementations, and, also understanding the industry, seems to be the key for selecting us.

    Okay.

    So, obviously, the attendees will be very, very curious about, how do you go about implementing this, solution. So maybe you can give them insights into what was your implementation journey, Rhonda?

    Absolutely.

    It was not at all what I had expected or anticipated.

    If you’ve never been on the other side of AI, it can take a little bit to wrap your mind around. It’s not a rigid phone tree or a knowledge based system where you can create a question and have one answer. You come to find out that your questions can be taken different ways or it can have multiple ways to answer.

    Another thing we weren’t prepared for was the the integration of source. APIs had to be created, and it and it can be a bit of a process.

    But you need a vendor that can integrate with you and a interface could with our core system, which was DNA.

    I was unprepared for the amount of testing that would go into it or the work required there. So I highly advise and recommend you to have two to three on the project with you. It’s a lot of testing. You wanna make sure that it’s being fully vetted before giving it out to your members.

    And through all of these learning covers, our interface implementation consultant, Yev, was amazing. He held our hand through every step of the way and patiently explained everything.

    And by trusting his experience and listening to his advice, I honestly believe we were able to avoid some possible future pain points.

    So I’d advise, you know, if you go with your vendor, trust those that are working it. They will help you through the process.

    Interface has also very been been very understanding, and working with us in our time line.

    We did have a lot of projects going on at that time and didn’t have the, power or this the manpower that we needed to put into the project.

    And, the APIs, that was a little bit of a process, and working with other vendors like Fiserv and DNA.

    So that, kind of derailed stuff a little bit, but Interface was always very gracious, worked with our timelines, was always there if we needed to push something off or if we’re like, oh, we’re ready. Let’s get in on this, and they would just run with it. So I appreciate, how well they worked with us during this time.

    Got it.

    Okay.

    So, obviously, you put a lot of effort getting it implemented.

    So what are the results you’re seeing? What kind of metrics have you seen, and what is the kind of the adoption, the member experience? Can you talk about that?

    It was a huge impact.

    Prior to Interface, we were averaging about twenty one thousand calls a month to our agents, and we were hitting our member service level of answering a call within ninety seconds for only thirty seven percent of our calls.

    We were abandoning about thirty eight hundred calls a month, which is about twenty percent of our calls.

    And then after implementing interface, we were averaging about fifteen thousand calls a month, and the rest were automated.

    We did sunset our, IVR system in October of last year twenty twenty four, and we have not seen much of an a difference in the volume of calls that have been queued to our staff.

    Our IVR was handling anywhere from eighteen to twenty five thousand calls a month, and all those calls are now being directed to our main number where they interact with our AI OKIE. So you can imagine if we didn’t have OKIE in place, our AI, what that would have done to our agents and the volume that they would have had to fill there.

    Currently, we’re sitting at sixty sixty cents sixty six percent call automation, and our wait time has come down from thirty minutes to thirty seconds.

    And now eighty seven percent of our calls are answered within our service level, so that’s really exciting to us.

    And another thing that we’ve noticed is that we are automating over nine thousand after hour calls per month.

    And before OKIE, we didn’t have a solution in place, so this was an extra benefit for our members and us.

    And we are also, saving over eight hundred thousand per year. And at the same time, we’ve drastically improved our member experience and our staff experience as well. We’ve seen less attrition, and we’re just very pleased with what Interface has helped us to achieve.

    Wow. That’s amazing.

    So it looks like a win win solution for Yes.

    Members, your operation cost, and also for your employees.

    Very much so.

    Okay. So this is, the the stats, of the system, automation system, the AI voice.

    So, basically, I I like to say, like, you’re basically giving a birth to the baby.

    The baby is pretty smart to begin with. Then you train it, as you go along, and it becomes smarter and smarter and is able to do more and more automation. So you have doubled your automation in in a year’s time, on the voice side itself. Right?

    Yes.

    Yeah. Okay. So, obviously, you have war wounds and you have lessons to share, with, Denise. So maybe you can kind of give them an insight on what are the best practices for this kind of project.

    Honestly, I had a lot of support from our leadership team and our CEO, Jeff Carpenter, and our marketing team. I could not have done it without all of them.

    Before we went live, we made sure that our contact center staff was very familiar with our bot and had tested it themselves.

    We also did a credit union wide testing sweepstakes for a few gift card drawings, and this helped to shed some light on a few intents that needed adjustment.

    And it also helped to make our staff aware of what OKIE could do and how to help our members interact with OKIE when they called in.

    We also created a FAQ, document on our website and also an internal one for our staff and so that they had it at their fingertips whenever, a member called in, and and they were aware of all that OKIE could do. And our CEO, Jeff, fully got behind OKIE.

    He even tested it with his wife, and he was a huge advocate in marketing it to our members through his monthly newsletter.

    Our contact center staff did an excellent job filling member complaints and reading through the member transcripts with the AI and then educating our members on a better way to interact the next time that they called in.

    Our marketing team, did a phenomenal job of coming up with our robot picture of Okie, and we settled on the name of Okie because anyone who’s from Oklahoma is considered an Okie and proud of it. And we’re proud of our AI, and we wanted to embrace the fact that he is robotic. And I wholeheartedly believe that the reason that we’ve had such a successful adoption was because it was a company wide effort, from our tellers to our CEO. Everybody was on board, and it started with leadership. And we just saw how to fully jump in.

    Great.

    So now let’s, switch the topic and talk about AI chat. So in the survey, looks like fifty percent of attendees are using live chat.

    And, Rhonda, you were using live chat as well.

    Mhmm.

    And then you had some problems around that and so on.

    So maybe you can talk about, you kind of your strategy on using AI chat instead of live chat.

    So we did have live chat before, and we were trying to get away from live chat because we felt that the questions the majority of the questions that came in were very basic generic informations that could be found on our website, or that could be answered. You know?

    And or we found that the conversation was too extensive where they need to be directed to in person, in branch, or over the phone. So when we learned about Interface’s AI chat solution, we decided to get rid of live chat and just offer AI chat instead, with the ability to escalate a phone call if the issue needed extensive conversation.

    What drew us to interface, chatbot was the, eye pleasing widgets that they had, their overall chat interactions, and the ability to be able to search our website to provide answers.

    And then came along smart transaction, which is another feature that was added into our chatbot, and that gave us, the ability to provide to our members twenty four seven access to be able to get their basic account information, the same intents that are used in your voice bot.

    And, it was a secure way, and, we wanted something that would provide our members easy access for those who easily forget their online banking password and have to wait, you know, for a weekday or something to be able to reset themselves. And they can just go in, log in with very minimal effort, and be able to get all of that information at their fingertips. So that was huge to us.

    Got it. So the baby which, became smarter on AI voice, you basically took that brain, put it in chat, and you got immediate start, and you’re able to handle the interaction on the chat side as well.

    Correct.

    And, so you’re seeing basically AI chat being able to handle pretty much all the simple questions you’re getting on chat, and then you escalate to the voice, call if needed. So this is kind of, what we think is is a key to instead of, like, instead of doing omnichannel, maybe Omni AI is a better approach. Omni AI can handle all the digital interaction, obviously help you with automate a lot of voice direct interaction as well. And then you can ultimately take them to voice or set up an appointment for the complex issues.

    Okay. So, obviously, you are early in your journey on AI chat.

    So what kind of impact have you seen already, with the AI chat and replacing your live chat?

    So AI chat, the smart discovery side of it, the informational side, we have seen about five hundred conversations a month, with about two to three interactions between the the bot and the member themselves.

    And we just recently rolled out smart transaction in January.

    We did a soft launch with that with our reps, where we had them interacting with it and trying it out. And then as they got calls about online banking and they members didn’t wanna use it or they were having trouble with it or they hear, you know, the the additional complaint about OKIE, the voice bot, actually, you know, not wanting to interact there. They’ve been educating our members about smart transaction and offering this tool and this product to them, and the members have have loved it. They will then try it, and they’re like, oh, this is much easier.

    You know? Of course. I can do this. You know?

    So that has it’s been exciting to see our members adapt to that and also to see our employees excited, and sharing it with them.

    So members are loving the fact that they can do, transaction and so on digitally and don’t have to pick up the phone. Right?

    Yes. Yes.

    Okay. So similar to on the AI voice, what are the some of the best practices, you would like to share with the attendees?

    So I would suggest for financial institutions, looking to deploy AI chat, we found success in marketing it through our contact center staff, but also by integrating it alongside the voice bot.

    To us, it was very important to have one system or one brain that could maintain both to ensure consistency and a smoother experience for our members. So I would highly recommend that if you’re looking for a provider to look for one that can handle both chat and voice solutions under one platform.

    It was very difficult for us to maintain our chatbot, which was under a whole new system, and our live chat, which was under a whole another system. So imagine, like, the experience now that we’re having and being able to know, oh, okay. These attempts mirror exactly what our voice bot is doing. Whatever I send an interface, I know is going to be on both platforms, and that’s peace of mind for me knowing knowing I’m not going to miss any information in updating it and just knowing that our members are going to have a great experience overall because it’s the same process, same interaction.

    Got it. So one brain, Omni AI.

    Okay. So let’s switch track again and talk about the future road map.

    So what are your plans, for two thousand twenty five and beyond?

    We’re excited. We’re looking at I’m gonna jump into this because I’m just excited about the voice device biometrics and the new biometrics that Interface has come out with.

    That is really high on our agenda. We’ve seen a lot of fraud come in, not so much as through OKIE, but just through other omnichannels or platforms and just overall the experience with fraud. I’m sure everyone can relate to that.

    People are trying any way and every way to get members’ information, and it’s hard to deal with.

    So we’re excited about the capability of being able to implement that here soon.

    And then we’re also excited about the Gen I dynamic knowledge and being able to, put that website, search back in there.

    And we also want to go forward with expanding our integration with our debit card experiences and giving their members the capability of being able to put travel notifications or blocking their card, reordering a card.

    So that’s all down the road, and we’re really excited about that.

    K. Thank you, Ron. I really appreciate your time. So let me bring in Sri, our CEO and cofounder.

    And as Chris mentioned, AI is changing every day. So, Sri and his team are visionary working on amazing things. So, Sri, take it over.

    Thank you, Jack. That was a great insight, Rhonda. Thanks a lot, for jumping in, sharing your journey. Rhonda, it means a lot to us.

    You know, AI is changing so fast. Right? So, you know, pretty much, every day you wake up for a new advancement.

    You know, the speed of AI is, in in terms of the processing speed is growing six times faster than Moore’s Moore’s Law, twenty, thirty years back when computers, you know, were becoming faster every year and become smaller too. So now AI is growing six times faster than that. Right? So it’s unbelievable times out there.

    I think, the entire business as we know financial services changes, with such a impactful technology, and powerful technology that’s, advancing so fast. Right? So, you know, what we have seen, in from our vantage point is, you know, there’s kind of the three, phases of AI. Right? So, you know, the past is chatbots, conversational AI. These were AI that was trying to answer, questions. They did a decent job, probably thirty, forty percent of the automation.

    But there is always an impact to your member experience to some degree if it is not built correctly. Right? So and it took a lot of time to launch these kind of chatbots, a lot of manual intervention, to train them and things like that. That’s kind of the past. Right? So, but with the generative AI that is kind of present, the the whole, you know, the the AI offering for, you know, your customer support and, you know, customer experience has radically changed.

    Generative AI, as we know, is basically, AI models that has ability to, identify patterns, from a large dataset and create a a completely new novel content based on that pattern. Right? Like, for example, you know, if you feed, a million images of cat, it you know, using those images, it is finding out what makes a cat a cat.

    Right? And then now it understands it so well. So if you ask it, hey. Create a new cat image that you’ve never seen. It has ability to apply those learnings and create a brand new cat image you’ve never seen. So that’s kind of generative AI in a nutshell.

    You know, and pretty much, the the if you think about that kind of technology, it has ability to see patterns in the large dataset, and and emulate a human behavior by creating something novel.

    You know, it’s it’s a traumatic impact on member experience.

    The chatbots that used to take a lot of time to learn and educate and answer questions, now, it can, do that really fast, right, through generative AI.

    You know, the example I often try to give with generative AI is, like, you know, if you’re looking for, like, you know, one of the upgrades Rhonda and team is looking at is dynamic knowledge. So with that upgrade, they’re they’re they’re having, the whole, the chatbot experience changes. For example, the AI instantly will learn everything on their website and the documents they upload, so the the members or customers coming on the website can ask any questions and it’ll answer instantly in a highly personalized way. What what in the past could have taken several months to train, a chatbot with that kind of knowledge and things like that.

    And then, you know, the next phase, what we call kind of future is agentic AI. Right? So agentic AI, is really a more advanced version of generative AI and that has, a generative AI has a hidden power, which is, ability to reason like a human being. Right?

    If you give a problem, it has a ability to break it down into smaller problems and iteratively solve that problem in an autonomous way.

    You know, but, you know, as the agentic AI is a more powerful reasoning engine, that already is there in generative AI, but it is getting more powerful and, you know, that’s what we kinda kinda call it an agentic AI era where the AI has ability to, autonomously, without human intervention, take actions, make decisions, and complete a complex task. Right? I’ll give give an example to kind of show the difference between generative and agentic AI.

    Let’s say you’re, preparing, a Thanksgiving meal and you want a recipe.

    Generative AI is great. Right? It it goes Internet, finds out the recipe, gives you the steps and, you know, how to prepare the food and all of that. That’s great. But let’s say you want the AI to order groceries in for you. Right?

    Now finding groceries, requires a lot more ability. Right? Understanding your dietary dietary restrictions, understanding your preferences, what brand you buy, what you know, is it organic and it it has a lot of things. It’s not like, you know, you go, find a specific product and just add add to cart.

    You do a lot of research and all of that. Right? So and then, you know, imagine you’re ordering that in Whole Foods or Amazon dot com, navigating the whole website, ordering groceries for you. It’s a very complicated task if you think about AI doing that for you.

    So that’s agentic AI. Like, you know, if genetic AI gives you the recipe, agentic AI has ability to go order groceries on behalf of you and get the groceries to your doorstep. Right? That’s kind of the difference.

    In banking, the great example would be, you know, generative AI is you asking, hey. Show me credit cards that best match, my interest as a student. So, Generative AI has a way to go through the website and give you the best credit card. But now let’s, you say let’s say, you wanna apply for it.

    Right? You know, that’s where Agentic AI comes in where it has a way to fully automate the entire application process and do that autonomously without your intervention at all. So that’s kind of the difference where the technology is heading. And, so if you switch to next slide, Jack.

    So this was our past during the chatbot conversation era. Right? So we, took our chatbots and voicebots embedded across all the channels, either you’re, as a member or a customer chatting on the online banking website or text or contact center. We all always had a first responder, with the conversation in our previous generation of technology.

    So, that’s kind of the past. And where we’re going is present, which is generative AI, with the capabilities of generative AI. The AI grows to play a much larger role in, member and customer experience where it has ability to take over from thirty, forty percent of the automation to up to seventy, eighty percent of automation.

    Right? So, and you can achieve that with this limited effort.

    Don’t have to do all the work you you you had to do in the past. And, so, basically, the AI plays a significant role. You know, just, going back to the previous slide, Jack, so AI plays a significant role being able to automate more, chats and calls, to the degree of sixty, seventy percent. And it has even ability to replace some of the channels, you know, like online mobile banking. The the role they play would continue to diminish. Even the contact center, the role they play would continue to diminish in a significant way.

    What future holds us is kind of the next slide here, which is autonomous banking. Right? Now generative AI has made banking seamless in the context of one financial institution that, that your member is banking with. It turns out, a and, your member or a customer is already banking with ten to twelve different financial institutions.

    Right? So so even though you may make it easy in the context of one financial institution, you know, they they have fragmented experience across multiple financial institution.

    So the future phase, what we call autonomous, where the agentic AI is able to navigate and add all of the accounts of the members across financial institution and give a member one bank GPT like assistant that they can able to transact across multiple financial institution, multiple services through one bank GPT like AI assistant. Right? And that eventually in the future, autonomously drive your financial wellness goals, you know, in an automated way. Right? That’s where kind of the world is going with the agentic AI.

    You know, as part of the agentic AI, we’re introducing some, new tools. So, Jack, can we, so this is kind of the present solution set. You, saw Jack spoke about it. And and the future is, agentic AI, as part of this, we are introducing some new products, completely rethinking the entire customer experience, AI first.

    Right? There’s nothing like this exist in the whole industry, and we’re already open for the beta program. I’m gonna demonstrate some of these solutions for you. So let’s, begin, the demo.

    I’m gonna invite my, colleague to help me out here. You know, we’re gonna begin showing you the demonstration of what we call Orbit, which pretty much makes, the current customer experience, member experience technologies better, like your website, online mall banking, online application, and things like that. Right? So, we’ve created a hypothetical bank for you here, which is interface bank.

    You can see on the right bottom corner, there’s a chatbot, that you can, click and pop it open.

    You know, this looks like a regular chatbot. You know, let’s ask some few questions. Let’s say, what’s the routing number?

    You know, with our generative a capabilities, which is already available, it pulls up and saves the information. If you click a button there at the bottom, it says view more. It has ability to automatically take you to a website, auto scroll, and show you where that information is, that, you know, where it learned from and highlight that for you. Right? Let’s go ahead and ask another question.

    It’s asked for, the kinds of credit cards you offer.

    Right? And, you know, so far, it’s it’s just a traditional chatbot. Nothing fancy. It pulling all the information, showing you, and, you know, probably the little bit of fancy part is that you click, view and then it actually automatically navigates and shows you the products where it’s already in your website. Right? So now, let’s see, you wanna apply for this credit card.

    You know, let’s show you agentic capabilities. Right? So, I’m gonna say I’m a student. I’m looking for a, a, apply for a credit card.

    So and it, pulls up and ask me a follow-up question. Is there anything specific you’re looking at in that card? I’m gonna say, hey. I’m I wanna do more savings, and and probably cash back and things like that.

    Says, okay. Great. Let me look at it for you and and it asks you any other question. You say, no no right not right now.

    Then the agent AI takes over. So it actually thoroughly navigates the website. So it’s automatically navigating the website, searching through every single page in the website, and doing the research for you to find the best credit card, based on your preference. Comes back and shows you one credit card, that that’s perfectly suited for you.

    Now let’s say you wanna apply. Right? What used to happen in the past? So you go through an application process, for ten minutes applying a lot of things.

    Now with the agentic AI, the AI goes to the application, figures it out on behalf of you, what are the details required to fill up this application, and tells you, hey. Why don’t you upload those documents for me? I’m gonna fill up the whole application on behalf of you. Right?

    So let us go ahead, you know, you know, upload the documents and we’ll click upload. And the AI reads through all those documents and says, hey. I have all the information to apply. Can I go ahead?

    You say yes, and you sit back and relax.

    AI automatically navigates the entire application, filling up the details on behalf of you. Right?

    And and submitting application on behalf of you. What probably would have taken you twenty, thirty minutes to do it, it’s done with just probably one click in in a a few seconds. Right? So application submitted.

    So imagine the number of steps it you you as a a member or a customer had to do and it took care of it automatically. That’s agent decayed on. Right? It is taking actions autonomously on behalf of you, making a lot of micro decisions on behalf of you and getting things done.

    Right? So, you know, let’s say now you’re in the online mobile banking system. Right?

    So, you know, this is online mobile banking system. You can do so many things. Sometimes you do come here to do things you do often, you get it done. But things that you don’t do often, you get lost.

    You always wonder why your members and customers are calling you for things that you could do on online. So, let us show you how our AI could help you. So, again, we’ll start off with, like, a a simple, use case. Right?

    So let’s say you wanna do a fund transfer, a thousand dollars. Right? So you could come in, type that in.

    And and AI has ability to, just initiate the fund transfer, kinda get the confirmation.

    You say yes and it it takes care of it. Again, nothing fancy, regular chatbot. Let us show you the agent capability now. Right?

    So, let’s say I wanna understand all my streaming services, that have been built for, last, six months or one year. So what what would take you to do this? Typically, it will take you a number of minutes. Like, you gotta download statements from multiple accounts, look through statements to see what are your streaming services you signed up for and all of this.

    Now let’s see agent again in action. You click yes, you sit back and relax. AI is now going through every single account, scanning through every single statement, and and and transaction within that, automatically downloading, identifying transactions and categorizing, summarizing for all of that to you and render in a beautiful way. Hey.

    Here is all the streaming services that you’re using in the last year. Right? So that’s, you know, you know, something is not possible on online mobile banking system today at all. Now with an agent AI snapped onto your existing online mobile banking system, you can achieve something like this.

    Right? So, hopefully, that gives you an idea of the possibility of the future in the agent AI.

    But Orbit, which is the product we just showed you, is basically designed to, make your existing non AI system smarter.

    Right? But, you know, you know, you can we believe that’s probably the first step a lot of you gonna take, right, to, make your existing system better with AI.

    But there’s an what if your online mobile banking system, your contact center system was built AI first? Imagine all the capabilities that AI has today. If all of those were leveraged and built an AI system today, AI online banking system, what it would look like.

    Right? So that’s exactly what we call sphere. It’s a complete AI first online mobile banking system. Right?

    So let us, deep down into that. So, as soon as you click and pop it open, this is how your AI first online mobile banking system is gonna look like in the future. Right? You can see, all the snapshot of your accounts at the bottom.

    You can see, like, account aggregation.

    Account like, you know, this is all done by AI. We don’t use Clyde or MX.

    Account aggregation is auto automatic on day one with the agentic AI. Right? So it shows you all of this here. On the right side, you have, the AI, Copilot.

    You click it open. Immediately, it takes a full screen. And you could ask questions you could never imagine could have done through online mobile banking system. I’m gonna ask very complicated question.

    I wanna plan investment for, savings, for my kids’ tuition fee and, you know, for is is is ten years old, and I wanna start planning right away. So I’m gonna ask that question and ask AI to help me.

    So immediately comes back and says, hey. I got a few follow-up questions for you.

    Right? You know, choose this, choose the type of college, you know, you know, what what what is the, college you, you know, you’re aiming for.

    And then at the bottom, it shows you multiple accounts. I can make selection of all the accounts to be used to plan, and it it asked me what is a monthly contribution you’re thinking about. I can go and, you know, start with something. It says you want to plan, for investment strategy five twenty nine plan, for for the savings. I’d say these are my preference. Go ahead and start the research.

    It’ll come back ask me, is there any other accounts you want me to add? I’m gonna say, yes. Go ahead and my spouse account because planning for something so big is not just me. There’s a family, you know, planning.

    So I wanna include all the, you know, accounts of, my spouse. Says, okay. Go ahead. Connect the account. You click on it and it’s gonna ask me what, bank your spouse bank with. I’m just gonna say Safe Credit Union and it automatically goes to Safe Credit Union, brings up their online mobile banking system, and ask me to log in.

    Right? So I’m logging in here and having AI resume the process And now it is automatically going through Safe Credit Union connecting to the bank account. It comes back and says, hey. I pulled all the accounts. Are you ready to, proceed? So let’s say yes and takes me, back to the, preferences where you can now see Safe Credit Union. I’m gonna add that as a account for planning and begin the research.

    So now it’ll take a moment. It is gonna do thorough research, and your task is scheduled. You can see on the left side. And very soon, it’ll start telling you the step by step process it is following, telling you all the research it is doing on behalf of you, to kind of give you a concrete plan.

    As you could see on the right side, it is looking for, how college tuition fee trend the tuition fees have changed in the last ten years, how it’s expects to change the next ten years. Comes back with a comprehensive plan saying, hey. You have this much corpus of amount. Here is your monthly contribution.

    At the bottom, if you scroll down, it has a a strategy for you. It keep coming down, it says five twenty nine education savings account needs to be created.

    You with a click of a button, you can literally say execute this plan, and it goes ahead, executes the plan by create, creating the five twenty nine account for you, setting up all the auto transfers for achieving the savings. Everything is doing all of that with a click of a button. It’s it’s done, ready to go. Right?

    So that’s the future of online mobile banking. Right? So and we’re already taking beta customers, you know, for for this and really excited to launch a completely AI first banking, the the world has overseen. So, the last part of the demo I wanna show and then we’re going to q and a is the agentic AI is going to also transform contact center.

    Right? The contact center as we know today, like, you have a, you know, a Cisco or, you know, Genesys, which has a ACD routing a call, you know, workforce management, all of that is gonna change with agent AI. And we are completely rethinking the entire contact center system that is agent AI first. Right?

    Let us show you that, you know, for a brief moment. So today, how does the contact centers today work? Right? So you have, you know, your staff, two to three different screens, multiple applications, ten to fifteen applications.

    They’re jogging between those applications as the members and customers call in for different kinds of requests. All of that is gonna go away. There’s gonna be one screen for your agent where they can make themselves available, not available. Let’s say they make themselves available.

    Immediately, a task gets assigned. So imagine this is a task where the member is asking for a wire transfer of five thousand dollars. Right? And executing a wire transfer has probably fifty different steps.

    Right? AI is going to do all those micro steps and get the agent involved wherever it gets stuck. That’s it. Your agent is not sitting there executing fifty steps.

    AI is doing probably the forty nine step. In one step, it gets stuck, says agent, come in here, help me with this, and then I’ll take over again. Right? So here what’s happening is the the core banking session has expired while AI is trying to navigate by itself.

    So it brought in the agent and said, hey. Can you, put in the PIN? Right? So you go ahead enter the PIN and log in, and it takes over again and completes the task for you and says, hey.

    Here are the steps. Here’s the, verifications I’ve done. Do you want to authorize? You just click yes, and it’s done.

    That’s all. For the whole request of wire transfer, that’s all agent has to do. And immediately, the next call or chat gets assigned to the agent. Here, it turns out the caller had asked for a callback request.

    So which is about checking the loan application status. So the caller has said, have someone call me back at three PM EST. So at three PM EST, who is the available agent, they get assigned with this task. Right?

    With, you know, so you see the right side with the context, on the left side with, complete agent AI interface that can take control and navigate the application. So they don’t have to figure out what application to jump to. The AI decides, hey, you want to take this action? There is application.

    I’m open it for you, open the right screen for you and keep it ready for you. Right? So you can take control or let the resume operator for AI to handle it. So now you are to do a callback request.

    So you click, call customer.

    It initiates a call from right here.

    Right? So and, you know, let’s let’s say resolve the call and agent gets assigned a third request.

    Right? So here, this time, caller is asking about increase the credit card limit. So the again, AI is talking to the, customer and the agent is talking to the AI. Like, you know, the humans are the humans are not talking anymore at all.

    They’re both on the AI and the AI is working with each other. So here, they wanna increase the transfer limit and the AI says, hey. I want, ink a new income statement for this. Right?

    So and the agent gets in, gets bought in and it clicks a he or she clicks a button where AI automatically informs the caller, hey. We need new income statement. And it turns out the caller is saying, I already sent that to you in the email. So agent with a click of a button can scan the emails, find that on, the AI can find that on behalf of the agent and immediately apply that on approve, for the credit limit increase.

    So all the agent has to do now is review, what has happened and click approve.

    Member request is taken care. As you could see, what task that will have taken fifty, sixty steps for an agent is reduced to one or two steps. So if you think about it, what this could do to your customer experience and contact center, you know, twenty, thirty years back, you got call centers that came in. So agent could do one call at a time. Right? And then ten years back, live chat came, where now your agents could do three to four live chats at a time, come multitasking.

    But with this agentic contact center, your agents could be handling thirty to forty requests at a time, thirty to forty calls or chats at a time because they are needed for a one small micro step where AI is doing the rest of the task. Right? So that’s the future of contact center. Right? So, you know, we’re taking better customers for this and we’re really excited about it. So, Jack, back to you for the q and a.

    Amazing. Amazing. Exciting future.

    I was hoping AI will come back with an answer that I don’t need to save for the education. AI will do it for free.

    Yes. Great. So here’s a quick slide of our offer. So device biometric, which is a very simple and powerful technology to authenticate the user, we’ll, provide it license free for the first five registrants who are interested in, kind of, doing business with us. And if you are, please send an email to laura at interface dot a I.

    Okay. So let’s go to the q and a. So there are quite a few questions, to Rhonda.

    And, Rhonda, people are very curious about how many, contact center agents you have, what is the reduction in the attrition rate, were you able to kind of take some of the contact center agents and assign it to other tasks? Can you speak to that, please?

    Yes. So we currently allow for nineteen positions within the contact center. We currently have seventeen, and two of those are actually in training right now, and we are not filling that at all in our call center at all.

    The reason why we’re hiring is because we’re going to be restructuring our contact center department and actually taking on more duties.

    We’re going to be taking on opening up online accounts and streamlining that process into the more digital side.

    And, so as you can see, we’re down four reps. And whereas before, it would have really hurt us, it’s not hurting us at all. Our sub our service level has remained still where it needs to be ninety percent.

    Okay.

    So maybe this is a Sri, you can answer this question.

    Lot of people interested in, kind of the general AI. What kind of first knowledge sources they can use? How what are the kind of process in using all the knowledge sources for dynamic knowledge?

    Yeah. There’s one of the most important, challenge of a regulated industry like, banking credit union is, you need to make sure these technologies are grounded with facts and and source of truth. Right? So it can hallucinate, make up responses, and all of that.

    So it took us, years to do r and d to make this generative AI agenda safe for Credit Union’s community banks. So to an extent, today, you can literally point to the website. It has ability to, completely ground itself. We use a proprietary knowledge graph to ground itself, on the on the truth and source of the truth you share, you know, and you, give an access to and learn from that and start responding to that.

    And the kind of knowledge could be your websites or, you know, documents you craft up policy, procedure documents, external facing documents for in case of member facing chatbot, you know, for employee facing chatbot. I mean, it could be internal policy and procedure documents.

    To an extent, this knowledge assistant, like, you know, you could even, point it to CFPB guidelines, FFIEC guidelines, and ask questions, hey. What has changed in the last one month? Right? It has ability to understand those, you know, and kind of guide you, you know, what could take several hours of research and manual effort could be, reduced to a few a few minutes. So it could be practically any form of content.

    So yeah.

    Okay.

    So we have two minutes. So this is probably the last question. So, maybe this is for Sri. Can you share what structure you have in place to train, evolve, and troubleshoot the AI voice and AI chatbot tools you have in place?

    So, as as the technology is evolving, right, with generative AI, agent AI, the entire ability to, test and, you know, do quality control of this was also changing very rapidly. As Rhonda talked about, the the the past generation of conversation and chatbots where it required a quite a lot of effort in testing, in in the future with generative AI as as, you can see that as in the newer version of our product you’re off already offering is you can literally say, hey. Here are the things I wanna test, as if you tell to a human being, and then, you know, you can run the test automatically. Right? So that’s where we are heading with the, you know, the oral testing quality process. That’s where it’s gonna go, in the coming days with the generative AI.

    Great.

    Okay. Maybe, I think we’re actually out of time. So other questions which haven’t been answered, we will get reach back to you, after the webinar offline.

    We really appreciate your time.

    It was, hopefully, this was, a good educational webinar, both about how Vioke is using, our solution and the vision which Sri shared with you. If you have any follow on questions or would you you like to interpret us, just, go to our website and click, for a demo. We’ll be more than happy to engage with you guys. Thank you again, and have a great day.

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    Inside WEOKIE FCU's AI Powered Contact Center: Transforming Member Services With Voice and Chat AI

  • 30%
    productivity uplift for new agents
    15%
    more issues resolved per hour
    Key Takeaways
    Speakers
    Srinivas Njay
    CEO and Co-Founder, interface.ai
    John Taranzetti
    VP Customer Success, interface.ai
     

    Hello. Thanks for joining. So in this webinar, we are invited quite a few of our customers. So special thanks to our customers for joining.

    Lot of our customers are using our voice AI and chat AI to automate the incoming calls and chats.

    Obviously, there’s a very high ROI project. Today, we’re gonna focus on the employee So as voice AI and chat AI automates the simple incoming request for for on the voice and the digital channel, the voice and chat which are actually getting to your employees are fairly complex.

    So employee AI is kind of designed to help them answer those questions or supercharge the employee service.

    Obviously, the turnover is a big issue in our industry. So how do you speed up onboarding with the employee AI? And, ultimately, with, kind of automating the simple call, making the job more interesting, employee AI can help reduce the turnover. So that’s kind of what we’re going to focus on in today’s webinar.

    So let’s get started.

    So today, I have Shri, founder and the CEO joining us. He will walk us through Interface dot ai and actually show us a demo of the employee I had John joining us as well. He’s the VP of customer success, and he will talk about two case studies, one with FEDN and another with, EFCU. These two customers are using the employee AI to achieve the goals we just kind of talked about. And my name is Jack Chawla. I’m VP of marketing, and I’ll be the host of this webinar.

    So before we get started, let’s just kinda look at the agenda and take a quick quiz. So we’ll start with Interface dot ai.

    We’ll introduce you to what is happening in the AI world and and kind of talk about our overall solution. Then we’ll talk about the business case for employee AI. It’s kind of very obvious, but we’ll spend some time showing the hard start data on how the employee AI is helping with the productivity and so on. Then we’ll show you the deep dive demo of the employee AI, and then John will walk you through the case study, and then we’ll open it up for q and a.

    Okay. So real quick, let’s take a quiz. So this is a kind of a high level quiz to get a sense of, where you are in your AI journey, how how you deploy the employee AI, voice AI, and so on. So if you don’t mind, take a quick minute and answer the questions in the quiz. So the questions are, have you currently deployed employee AI? If not, when do you plan to deploy? Same question for the voice AI and the similar question for the chat AI.

    Okay. Let’s look at the results real quick. So looks like twenty three person have deployed the employee AI, and the people who are deployed the employee AI do plan to deploy it very soon. That’s great.

    On the voice, fifty fifty. Fifty percent of the deployed, that’s great. That’s probably the reflection of our customer base who’s using our AI. And then on the chat side, again, the percentage who has deployed is thirty percent, and quite a few people haven’t deployed yet, and they’re looking to deploy.

    So we’ll show you kind of our overall solution, and then you’ll get a good sense of what is feasible with all this solution.

    Okay. So with that, let me turn it over to Sri, and he will walk you through interface dot ai.

    Thank you for everyone joining today. Really exciting agenda.

    So we’ll get started with a quick introduction to interface AI.

    You know, there’s a number of our customers here. Thanks to all of them for all the support and for years and and pretty much we’ve come a long way. We are the longest standing AI provider in the industry. Ten years celebrations we we were carrying for we’re planning to do this year.

    It’s been ten years, and we’re all based in California as a as a headquarters of two hundred employees. As a company, we have featured and and gotten a lot of accolades and, you know, awards. Recently, featured as our our Interface AI as one of the best AI out there for banks and credit unions. And we are endorsed by CUNA Allied Solutions, and we won numerous awards at Finowate.

    And most recently, we won the best AI award at American Banker. We now power over a hundred financial institutions. You know, this is another milestone to celebrate.

    And we continue to be staying focused on financial institutions. We have no plans to venture into any other industry. We feel there’s so much to do here. We continue continue to be committed.

    And as you all know, some of you are customers joining. You know, I come from a Caribbean family and and and as well, in the AI research background, bringing the best of the both the worlds and the my lifelong experience to continue to build solutions, here. So, you know, pretty much we have four different, suites of solutions at Interface AI. Right?

    So, you know, Agentic Voice, which is our most popular solution, and and agentic chat, agentic employee AI, and a new suite of agentic solutions that we are planning to launch very soon.

    We now, you know, have over one point, five million interactions every single day across all of our customers and continues to grow pretty rapidly.

    So we we have talked we talked a lot about how technology of AI is evolving, you know, from conversational AI in the past with very complicated way to set up AI.

    And, you know, pretty much there was some, you know, impact to member experience or a customer experience when we set that up. To, you know, where we are, generative AI, you know, is kind of makes things very straightforward. And then kind of where we’re going is agent AI.

    In terms of technology, the evolution has been pretty rapid. And, you know, every day AI is evolving, you know, in a pretty rapid way. But how this technology evolution is gonna change our industry, right, both for the member and employee, and then we go deeper on the employee, today for the rest of the call.

    You know, the the the way we see the world based on how these technologies are changing, is kind of you know, we we kind of started the journey, to be the one AI brain, for credit unions and community banks serving, your members and employees through AI. You see that blue brick, at the middle? You know, typically, you know, our, technology stack within a credit union has three layers. Typically, two layers. You know, system engagement, which is our online mobile banking systems, our loan application systems, our our contact center system, kind of system engagement, and your system of record at the bottom, which is your credit card processing system, core banking system, and things like that. Those those are gray bricks, which are often our technology stack.

    But we started the journey to introduce this one AI brain. There’s a blue brick, which says system of intelligence that connects with your online mobile banking system, core banking systems, and both system engagement system record to create the system of intelligence. Right?

    Well, kind of acting as one AI brain.

    You know, this is this is where we are in our journey. You know, a lot of, our customers, as you are all here, this is kind of how you use, you know, our our technologies today and things like that. Right? So but where it’s going with the agentic AI is, something far more powerful.

    Right? So, you know, we, you know, which is what we call system of interactive intelligence, which is your system of engagement and system of intelligence is gonna merge to become a system of interactive intelligence, which is you no longer would need, the systems your, members use, anymore. It will be more like a chat GPT, like AI assistant on voice or digital to get lot of things done, know, beyond, you know, what your online mobile banking or online application systems can do. These, like, bank GPT like systems could do a lot more beyond that.

    Right? So that’s kind of our new vision, what we call interactive intelligence for banking, ensuring that there’s a chat GPT like or or what we call bank GPT kind of assistant for your employees and members, and we plan to deep dive today on the employee side.

    So just to give you an idea why these two systems are so interconnected and what value they bring for you to have this, you know, one bank GPD for your employees and your members. Right? So it’s a significant what’s your what’s your what’s your cycle and benefit that offers. So this this kind of diagram kind of gives you this picture kind of gives you kind of a good idea about that.

    Right? So lot of our, systems that member interact with like, let’s say we’re bringing a bank GPD for, you know, members. It’s it’s a similar systems that you would have to integrate with for even for employee interaction. Right?

    So, you know and and pretty much, the idea here is, you know, you have a bank GPD kind of system that, you know, pretty much, you know, your members use, and that integrates with all of the back end systems. And this bank GPT kind of system helps provide, make these interactions not just automate task, but enhance those interactions to drive, new revenue through product recommendation or provide financial insights to drive financial well-being or personalize this interaction from the past interactions that a member have had or make sure those interactions are secure. Right?

    But on the same, on this on the same lens, know, for employee two, you know, either you’re a CXO or a call center manager or an, an or an analyst, imagine having a bank GPT, kind of an assistant that you can go, you know, and and tap into all of these integrations and do quick research and get gather good insights or take actions quickly.

    You know, there is so much possibility having this one AI brain across the board. Let’s say, for example, our BankGB for employees actually, you know, now can read and see your notifications on changing in compliance. Right? And imagine if the the BankGB for employees side being able to read those notifications and, make sense of it.

    And your compliance manager could go in and say, hey. I received this NCO notification. You know, how does this impact my business? What all changes have to plan out for?

    Right? And then the AI is able to tell them, here are the changes you could make. But at the same time, if the member is asking a question to the on the other side of the bank GPT for the members, imagine there’s a real time compliance. Right?

    So because this one AI brain already knows it, it would prop it it has ability to probably even apply the compliance, to your member interactions on the day notification came without you changing anything. So that’s the power, of having one AI brain possible. There’s so many possibilities. Like, you know, even an example, let’s say, you know, you have a target as a credit union to hit, you know, you know, a a specific goal for your auto loans or your credit cards or checking accounts.

    You know, your CFO or your as as a CEO, you could jump into this bank GPT, ask a question. Hey. You know what?

    You know, give me a path to achieving a goal of increasing I mean, getting a thousand auto loans by end of the quarter. Right? And it can actually imagine it could go into your core system, analyze, you know, or any back end system, not just core, analyze all of your members who may not have auto loan, but also continue to filter further who may have the potential to buy an auto loan based on their age or based on their recent transactions.

    It can predict how many of your members could even have an option to like, you who may potentially get an auto loan in next one quarter. And then it comes back and tells you, hey. You know what? You know, you you have a target to hit thousand, but here is about, like, you know, five hundred you can get.

    But guess what? Like, if you can reduce your, net interest margin by, like, ten basis points, I did research in the in in all of your neighboring credit unions, you will be able to drive thousand auto loans. Do you want to do that? With a click, you know, and here is the financial impact for the CFO.

    And if if they if the click of a button, they say yes, automatically in real time, when members are asking questions about auto loan, it starts promoting, knows that you have a target to hit then starts promoting this new discounted interest rate. So that’s kind of the possibility of one AI brain. Right? So you start your CFO or your CEO could start with the research, get the data, make a new product, and then, you know, has ability to seamlessly have that new pro you know, members start discarding those new products and things like that.

    So there’s just tremendous amount of possibility here to put entire retail banking on an autopilot. Right? If cars can drive themselves, why not banking? Right?

    So it’s the time to do that. Right? So and this is kind of our full stack with with that kind of vision. What is our tech technology stack look like.

    Right? So we have a number of products. Today, some of you probably already use a few of them. And then we have this fraud, solutions and this agentic banking platform and banking integrations and whatnot.

    Right? So real quick, I would like to take a a few minutes to briefly introduce our products and then kind of go into employee AI. The Wise AI, which is kind of a member facing AI we offer, is the most popular. It is pretty advanced with, you know, with the agentic capabilities that we’re we’re getting our few customers live.

    The agent think it’s kinda mind blowing in terms of its ability to natural voice, custom voices, is beyond better better than human understanding and handling complex interactions.

    You know, has ability to, being able to do upsell cross sell, provide powerful analytics, and text responses and all all of that. That’s our voice AI for your members. We also have chat AI for your members too, which has similar capabilities. Gone are the days you’re, you know, training manually, you know, what are the intents or workflows.

    You know, you you literally point our AI to your knowledge base and, you know, it learns everything in a couple of, minutes and straight to answer, And it keeps up with that knowledge base as that gets edited on on the chat AI. And it even can complete transactions and help with spend analysis or savings analysis and things like that too.

    And then comes coming to our employee AI, and we’re gonna spend a lot of time talking about this today.

    You know, pretty much our employee AI, you know, is is like, again, like a bank GPD for your employees.

    It has ability to instantly get access to policy and procedures. Gone are the days. Your employees have to hop between systems to find, you know, a a, you know, a policy or procedure while a member is waiting on the call or at the branch. Right? So those days are gone. There’s, like, one AI assistant they could go to to tap into that knowledge base. Doesn’t matter where the knowledge is.

    Right? And then, pretty much as it evolves further, it will be able to do upsell cross sell. These are all different modules. You know, you can just take AI that can help with policy and procedure, or you can upgrade the AI to do do the work on behalf of you.

    Right? Like, which is let’s say, if if your employee wants to block a card if on behalf of a member, there is two two ways that could happen. Right? One, AI could tell you, here is the policy and procedure you you need to follow.

    That’s just that’s a kind of a basic model. But as you upgrade, there are capability where, you know, it will actually go get it done for you, calling the API RPA system. Right? So we’re entering a new world where your employees don’t need to know how anymore, right, which is kind of a significant part of the training we spend.

    Right? So across the enterprise industry, there’s, like, about two hundred and fifty billion dollar goes in just employee training. Right? So just to teach them how to do some things.

    Right? Like, that world is changing. Right? So employees need to know what, not how. So remember, every time if there is a there’s there’s an employee asking how to do something, it reminds you that that they’re not you don’t have an AI system that’s effective enough.

    Right? So and then this subsequent capabilities of this employee AI is not just getting things done on behalf of them, calling APIs, but it’s also, have ability to coach them, in real time to do an upsell cross sell and things like that.

    But that’s just the frontline capability. But as we spoke earlier, it extends beyond that to help, let’s say, your CXO or a or a compliance manager or a call center manager to be able to do lot of different kinds of questions, including, hey. Fix this email for me. Right?

    So or, you know, find all the facts from my core and add this to my email and send it out, the research I did on for my CEO. Right? Like, you know, that’s kind of where we’re going with employee AI. So there’s a lot of industry, study about, the possibilities and kind of the benefit of such a employee AI.

    I’ll let Jack chime in here. Jack?

    Sure. So employee AI, obviously, can be used by various different population in your company. One of the important group of the people is contact center agents.

    There are studies coming out showing the productivity increase across different use cases. So this particular case study which we are highlighting here is actually coming from quarterly general economics. It was done in the q one of this year.

    So these researchers basically did a study with about five thousand, customer support agents in the fourteen five hundred SaaS firms, and they did a kind of a control group, which didn’t get the AI. And the and certain group which actually got the AI, and then they kinda figured out what is the impact on various different aspect, like the, productivity, for learning customer and agent experience for the agents who use AI and compare it with their impact before and after using AI to the control group, which never got the AI. So this is kind of a scientifically designed study to figure out what is the impact.

    And they use a tool, g p d three. In this case, they’re just using a kind of a standard tool without any automated action. So let’s see if you can go to the next slide, Sri.

    Absolutely.

    And this is the kind of the executive summary. So you can it had an impact on the issues resolved. So fifteen percent more issues resolved by the agents who are using AI. So this is a huge uplift in the resolution of the issues. Here, they are they did it with chat, but it can apply to any channel. Then the average handle time went down by eight point five percent, and then, the agents were able to handle multiple, chats at the higher percentage as well.

    And as you would expect, the gain for the novice agents, the, the new agents was much more than a highly skilled, because highly skilled obviously already know how to answer most of the questions.

    And, there was a thirty percent uplift for the lower skilled agent. So especially in the contact center world where there’s a huge amount of turnover, you always are dealing with the agents which need to be kind of, helped when they’re joining. So as she mentioned, huge amount of training cost going on. With AI, you can potentially change your strategy on how you kind of, onboard the employees.

    And the interesting thing is all the productivity increased without any impact on the customer. The The customer sentiment actually went up, and the escalation to the managers, went down. Right? So I’m pretty sure everybody has this experience.

    You call the contact center. You don’t like the answer. You either hang up and call again and get a different agent to get the right answer, or you say, let me talk to your manager. So with AI, you can consistently answer all those questions, and that reduces the manager escalation.

    So you have set first call resolution and everything kind of goes up. Next slide, please, Sri.

    I just wanna add, Jack.

    I think you are spot on. Like, the for call, this will be substantially more. Right? Like, for example, that fifteen percent issues resolved per hour, thirty cents, you know, chat per hour, that that could be pretty huge, for voice in a big way.

    Right? So it could be several dollars of impact in in the bottom line and things like that. And there’s also accuracy, you know, accuracy of responding, especially if you also have a high network individual kind of in your in your in your customer base, you know, providing that high touch service you often do, but that accuracy becomes even more important. Right?

    Like, we have seen a lot of financial institution with high net worth individual start their AI journey with employee AI first, and then eventually go to the member AI, all of that. So there is some something to gain for every kind of financial institution.

    Right.

    Is the next slide, please?

    Yeah. So digging a little deeper into productivity and efficiency details.

    So immediate lift, like, as soon as you kind of deploy AI, the the lift is immediate. Right? And if you were to kind of take a traditional training approach, it takes a while to get people trained. And as she mentioned, with AI, you don’t need to know the answer.

    You just need to figure out the right question to ask. And luckily, in the context in the world, the right question to ask is what the customer is asking. So it becomes very, very fast ramp up with using AI rather than the traditional training to ramp up the audience to the, to the agents. And, resolution rate goes up.

    There’s no quality trade off.

    And, again, AI is helpful on moderately uncommon issues. That’s common sense. But the point to make here is with automation, on the member service with the voice AI and chat AI, the questions which will come to the to the to the agents will be uncommon, will be complex.

    And AI is actually helping. So it’s kind of a synergy there. With automation, you kind of automate the simple, and then the complex, augment, with the AI for the agents.

    Sri, anything to add here?

    No. I I mean, it makes sense. You know, to lot of this is kind of, you know, common sense kind of, approach to the benefit of AI. Right?

    So, you know, removing the how part is the most important. Right? So the and if if if training goes down and the response time goes high, the accuracy improves, and our cost customers and members are happy. Right?

    So Yeah. I had an experience even in American Express. I I shared that with you, Jack. Right?

    Like, you know, I was traveling, trying to, you know, withdraw cash from ATM using my American Express. The agent didn’t even know how to do that. Miss misled me a couple of times. This is a challenge in every size of the financial institution.

    Right? Regardless of how premium they project themselves and tell you, hey. We have this wide glow local American support and call center agents are here. And guess what?

    You know, they even had challenges to answer basic questions.

    So yeah.

    In in the defense of agents, this job is very complex. I used to work in a contact center one time in early in my career. It’s probably very, very difficult. So having AI augmentation is a lifesaver for the agents themselves.

    Yeah. Please.

    Okay. So this is kind of showing you the the again, kinda we talked about novice agent gaining immediately. It kind of matches the six month veterans with the AI. So you kind of are gaining five, six months immediately by giving them the AI.

    And the low skill the the agents which are low skill, generally, noise, their thirty six percent increase in productivity, and the style matches the high skill. Right? So you, in a way, are uplifting your new agents immediately to match the high skill agents.

    And it’s also durable learning. So in the study, they actually turned off AI after giving the AI to the agents, and they saw that the agent retained their knowledge. And they were able to answer the question much faster even if the AI is turned off. Right? So this is kind of a very powerful, scientifically designed study showing you the impact of AI on the context of the agent. And there are other studies which are, studying different populations, and we’ll keep sharing those in our blogs and so on as we kind of go along.

    With that, let me turn it over to Shri.

    You know, we’re kind of going to take you through a a, like, a a little bit of a sneak peek into our employee AI, everything possible.

    You know, our vision for employee AI as we talk, you know, we wanted it to be a bank GPT, one stop shop, one place you could go regardless of the role you’re playing in the credit union community bank and get access to any and every information that is that is access that is meant for you, right, with the proper access control. And then, you know, that that information or insight that you could gather not just from documents, not just from, you know, your SharePoint website or or or your shared drive, or policy repository, but it could be coming from, acquiring your core, core system or LO system.

    You know? You know, how how what is my, you know, turnaround time on my auto loans? Right? So it should be able to go figure out that in LO system, how many applications came, and and and, you know, when did we approve or disapprove, like, long is the whole process?

    Right? Like, you know, literally, it it would have access to every single knowledge, every single data within the financial institution, and can use all of that to answer and give insights that will help you make the best decisions in in in driving the business forward. Right? And so that’s kind of the vision here.

    You know, kind of just take you through a day in the life with employee AI. Like, let’s say you’re CXO.

    They wanna look at, you know, what is the ROI of our current credit card promotion trending versus last quarter. Right? So, they should be able to get answers to that kind of question or give me today’s net interest margin and flag any variances against the budget plan. Right? Or summarize member satisfaction score across all channels year to date. Right?

    You know, or list the top three cost drivers that more operating, expense ratio this month. Right? So imagine being able to get instant answer to these things. You know, it it would make a huge difference and, you know, for us to kinda make right decisions.

    Our managers asking, you know, how many mortgage applications are pending review? What’s the current average processing time?

    You know, show the ten most frequent customer complaints log log past past week or generate step by step checklist for onboarding a new third party vendor.

    Compare workforce headcount plans with actual, for q two and highlights gaps. Right?

    Or an analyst asking, run a higher, you know, run a risk weighted asset analysis on commercial loan book, or fetch fire delinquency trend. Right? Explain the drivers of last, Friday’s p and l swing. What scenarios are stress testing model push for tier one capital below twelve percent?

    Right? So, practically, all of these kind of questions could be answered, from not telling them how to go do it, but giving them the data from all these integrations and systems. Or a call center manager asking, what was yesterday’s average handling time? How much did AI guidance reduce it?

    Right? Or a call center agent asking, how do I lock a debit card? Right? Or provide, provide the interest rate table, you know, or or branch staff asking, walk me through issuing or replacing a debit card or someone trying to, know, withdraw a lost cash withdrawal.

    Like, how what steps I should follow. Right?

    This is this is kind of the positive of a bank GPT for your employees. Right? So, you know, instant access to knowledge and insights, from every single system you have. Right? So, you know, what we’re gonna do is to show you a quick demo, you know, and how some of these each of the different personas and, like, kind of different kinds of employees in the creating could be using this.

    Know, let’s I’ll invite my colleague, Laura, here to help me with the demo.

    Great. So now we’ll start off talking about the first kind of employee, which is kinda most most needed.

    This assistance is most needed for them, which is I empathize with Jack, he said.

    Call center staff has the most hardest job. They’re put on the spot sixty times a day. Every single caller is gonna ask them a question. They gotta be prepared for that.

    So let us show you how their experience is gonna be. Let’s get into the get into the view. Let’s click on that. So yeah.

    So this is kind of the one stop shop view they’re gonna have.

    You know, they kind of adapted itself to bring more information specific to what would be relevant to the call center agent apart from just answering the question. Right? So you see on the right on the extreme right, you have a panel which says authentication status. It shows you, if the caller is authenticated, already before the call handed off to an agent, you know, how successful which credentials they’ve already passed and whatnot.

    On the middle section, it shows the conversation history because this is a call center agent using it. Right? So it shows, hey, what has happened so far with their conversation with the AI on the member side before the AI handed off to an agent. And then on the left side, see AI already pulled up a policy and procedure, showing you, you know, how to respond to that.

    And then as you scroll down, there is a blue button. You click on it, view document. It automatically navigates even though you have thousands of documents. It automatically navigates and, highlights the right part of the document regardless of number of page it has and shows you, hey.

    Here is where I got this information from. So you now you have a more detailed steps apart from the summary AI provided to kind of, you know, ensure the diligent execution of a policy and procedure is done. Right?

    You know, in in pretty much, you could be asking and let’s say, member on the call could ask another question here to lock the card, for example, or or, you know, or password reset. Let’s go try that.

    You know, member, you know, the agent determines you wanna do a password reset. So the AI now searches in the context of the same document, goes, pulls a, specific part of the document that has specific reset password, you know, policy policy there.

    Right? So, it kind of resets itself even though it’s the same document, auto scrolls back to page number one and shows them how to reset online banking password. For for for, you know, for the audience here who are here who can probably going through any sort of, technique technical migration, let’s say, changing your credit card processing system, online banking system, or core system, or a lower system, this would be a game changer. Right?

    Like, you know, in terms of being able to help your employees get up to speed on the new user manual, which could be, like, hundred page. That’ll be a lot of training and and whatnot. Especially during this migration, it also increases your call volume and put a puts additional stress on your, staff or you end up getting an outsourced contact center and whatnot. Having a an AI that can just read through a thousand page user manual and tell you, exactly what they need to do for the member query coming in may goes a long way, especially transitioning to a new system.

    Right?

    So, hopefully, that kind of gives you an idea.

    And, you know, it this is not just about as I said, it’s not about just, responding to policy and procedures. It goes more deeper than that. If a member on the call ask again, we’re still talking about your call center agent. Member on the call ask, they wanna lock a card. Your agent could type it in and say, lock the card. Here’s a member number.

    And, you know, push a button. The AI comes back and says, hey. You know what? You don’t have to go to your credit card processing system to navigate and do all all these things.

    You know, I can take care of take care of, take care of for you. Right? So, it asks you to confirm. Right?

    So in if you click yes, you’ll connect to that system through plug ins and complete that locking account. Right? Just the kind of the next step. Right?

    Which is, instead of AI telling you how to do, AI will get it done for you. Right? So, that’s pretty significant. Like, you know, it saves significant amount of time.

    You know, some of the studies Jack showed you is where, you know, saving of, you know, a minute or half a minute is all related to AI giving them policy and procedures to you know, guiding them what to do. But if AI can do the job on behalf of the agent, you know, by integrating the systems and take actions, that benefits can really double up. Right? So, you know, here, your agents don’t need to have three screens, ten different applications open, navigate between all of them based on member request.

    Those days are gone. Right? They would come to one place and just which is kind of bang GPT and kind of type in a query, and, AI takes care of completing those actions.

    And and, you know, it could go even further. Like, for example, if a member on the call asking, they wanna apply for a credit card. Right? So, now the the AI gets into a coach coaching mode.

    Right? Say, hey. You know what? I’m gonna help you, get this, credit card as, you know, you know, get this customer excited about credit card.

    Go ahead and ask them what kind of features they’re looking at. Right? So, and and the agent is typing in what member is saying, and and then it oh, it seems like member need a cashback credit card and kind of shows you, a a a a card here. So it shows you the card and, like, you know, and and and pretty much all the benefits in the card at the bottom.

    So they have all the details to, kind of continue to get the member excited.

    And, it’ll ask, hey. Tell me if member is excite satisfied, and and you go ahead and say yes there.

    And it starts a online, know, an applications right away, integrate into, let’s say, your LOA system. So your agent could literally take the entire application, talk to the member right here on behalf of the member. Right? So we we’ve condensed that process for the sake of the demo, keep it short. But we’re gonna show you how just a few questions here. They could type it in and fill up the application on behalf of the member.

    And, you know, it comes back, shows you a summary. You, again, check with the member on the call or the customer on the call, and you confirm. And, you know, you’re pretty much done. You don’t have to go learn your own application system. And by the way, as it completes it, it shows you an upsell opportunity saying, hey, you know what?

    There is a you know, people who often apply for such a credit card. They may be interested in money market account. Do you wanna talk to them about the same?

    So that’s kind of coaching mode of the AI. But this is kind of one one kind of employee who probably most need AI. Right? And and and then we’ll now switch to showing you how across the organization you could use this similar kind of AI. Right? So and we’re gonna start with, like, a, like, a branch employee real quick here. So let’s say, kind of a member walking in to a branch, their house is a lot large cash withdrawal.

    They can quickly ask the same.

    The AI can help the agent how to process that request.

    You know, again, it gives you a summary, what you need to do, what are your limb limitations, what’s the process you gotta follow. And then you click on the view document. Again, brings up the document. This is your branch employee this time, like, you know, other you know, and we keep showing you other kind of employees how they can use. Right? So let’s try a a manager.

    So we’re gonna ask a question.

    Show the ten most frequent customer complaints logged this past week. Right? So and it didn’t it’s it comes back, shows you, hey. Here is all the details and top question top complaints. I’ve created a document for you, you know, and you can click on view document, and it kind of shows you, you know, the top, top complaints, from let’s say, you have some sort of survey going on. You fed the AI with all the data, and it it is able to process that and kinda show you the top complaints and things like that. So let’s say your CXO wants to ask a question.

    You know, how is the ROI of a current credit card promotion trending versus last quarter? Right?

    You know, it can kinda do that analysis and generate a report for you, that you can also get access to see. And, of course, like, you know, these continue to get more prettier as more capability get kind of kicks in. It it shows you a response there. Hey.

    Here is the you know, kind of the the answer to the question, like, how promotion is trending. Right? So and then, you know, let’s kind of try one more probably like a a a call center manager, what kind of questions they could ask. Right?

    So let’s say, what was yesterday’s average handle time? How much did AI guidance reduce it? Right?

    So, you know, here, it comes back, shows you, hey. Yesterday average handling time was, you know, so many seconds. It is as you reduced by thirty seven seconds. Right?

    So that’s kind of, you know hopefully, you get an idea, like, how, employees across the financial institution. We have customers already use this, and John is gonna talk more about it. You know, pretty much, you know, you have all of this, employees use it for IT related questions or HR related questions and whatnot too. So probably that’s a perfect segue, for John, for you to kind of, share how some of our customers are already using this.

    Yeah. So while John is sharing his desktop, I wanna remind everybody that you can ask questions anytime. There’s a q and a area at the bottom. Start typing your questions. And once John is done, we will answer those questions.

    Great. Thank you so much, Jack and Tree, for the intro. As Jack mentioned, John Terencelli here, vice president and head of customer success, at Interface. My favorite part of my job is speaking with customers about our products and how they’re getting value from them.

    And that’s why I’m really excited to go through a little bit about what our customers are saying about this product that Sri, just shared with you. The information and the customer feedback that we’re sharing is also available on our website. We have transcripts from these from these more in-depth webinars, which occurred over the last couple of months. But instead of just hearing it from us, we wanted to give you a little bit of a preview of what our customers directly are saying about these solutions.

    The first customer that we’ll talk to really briefly here is Afidian Credit Union, which was formerly known as, Rocky Mountain Law Enforcement Credit Union, and expanded rapidly in twenty twenty two, by relaunching its brand, expanding its membership, and really reaching an all time high in its business success. It historically had a small call center, only four only four members. And so to support this expansion, to support this growth, Afidian, turned to Interface and worked with us to build out a solution that would allow them to leverage this AI, in support of of their employees to better serve their customers.

    So one of the key questions or points that we posed to Christine Wiley, the CEO of Afidian, when we spoke with her a couple of months ago was essentially, you know, thinking about your growth and your trajectory, what are the problems you’re trying to solve?

    And from their perspective, there were there were four key issues that they were hoping to resolve with this solution. You know, essentially, first, solving for fragmentation of information. As as discussed earlier in the presentation, resources are scattered across multiple systems, across multiple experts, across multiple platforms. And having all that information available in one place would significantly streamline. The the second piece is really tied to that, which is, a lack of a signal source of truth. In many cases, employees didn’t have all the information or, in some cases, didn’t have the right information, which made it difficult to give a hundred percent accurate information to to members.

    Third, really, this reliance on individual and institutional knowledge. It’s great that we have that we have employees who have been with us for many years who are able to answer all of our questions. But in many cases, this does create a bottleneck, and it creates a difficulty of getting information. How do we solve for that? And finally, how do we essentially speed up the process for getting all the information needed to support our teams?

    And in terms of what is the impact and then what’s being seen on the ground here, we’ve seen some really exciting results, from Afidian.

    And these are, you know, some direct quotes here. We didn’t, you know, create these, but the key one, that was mentioned is, you know, there’s universal praise. In direct quotation, everybody loves it. One of the things that we’re seeing with our customers who are using the solution is a a general and universal belief that this is supporting and helping their ability to better manage member needs in a fast, streamlined, and expedient way.

    Staff are using this every day and are able to provide much more convenient service and consistent service and getting faster answers to decrease average time spent on the phone and ensure that costs are low and member satisfaction is high. In terms of some of the best practices that Afidian has been using to to implement the solution, you know, there’s really a few key ones, and you’ll see this as a consistency among many of the the the customers we’ve spoken with in our webinars. First, key to have organizational buy in. Ensure people understand what the value is and why you’re doing this.

    And, you know, in tandem with this, making sure that the right team is there and ready to support, making sure that there are dedicated internal projects leads and people who are able to speed your transition to a truly AI powered workforce.

    Third, you know, preparing the content properly. You know, I know we’ve seen some questions in the chat here about what exactly is incorporated and how does that work. You know, working very closely with our team to make sure that information is reviewed and organized in the right way that can really speed up this process and improve efficiency, and finally, executing really that strong implementation to comprehensive training and active promotion across the CU.

    The next case study we wanted to bring up here is EFCU, which is the second largest credit union in Greater Baton Rouge area and the third largest in Louisiana. It has a membership of over sixty eight thousand and over one point two billion dollars in assets. And because of this significant scale, and continued growth and and, increasing in membership, EFCU needed a solution that was going to support its large staff, across its branches and its call centers.

    So we spoke with Tyler Brooks, who is the VP of projects and innovation at EFCU a couple of months ago and asked him some of these questions as well. You know, what are the problems that they were trying to solve when they decided to go forward with Interface’s frontline assistant.

    And very similar to what we’re seeing from Afidian, it’s a lot of the same things. You know, there is essentially a historical reliance on individual point people, the phone a friend mentality, a tie in to needing to sort through so many different sources of information to be able to get that correct answer and do it with high quality.

    So as we think about similarly, what were the impact on the metrics that you know, the EFCU had seen and what is the adoption, overall, these results have been really positive. It’s worth noting that, you know, this is a a relatively recent launch, but it’s being used hundreds of times a week by the call center, freeing up a significant amount of time, for all of their agents.

    And as you see here, yeah, as we mentioned, you know, six hundred and sixty five requests last month from the frontline team for sort for research and information through frontline assistant, which is significantly improving the speed to be able to support members and the quality with which they receive those answers.

    So finally, what are the best practices that they see?

    And similar to, similar to what we were seeing from Afidian, you know, in terms of how best to be successful, really a focus on sponsorship, management, and support across the CU as you’re rolling this out, making sure that there’s a dedicated team, that there’s a clear understanding of why, and a communication of the benefits. That it doesn’t just benefit you by helping you able to answer questions, more quickly, but it also allows you to better service your members with more consistent, speedy, and helpful answers. And as Sri showed in the demo, it’s also providing the ability to upsell and cross sell to additional services, the ability to help, you know, transform what we’re seeing not from just a a call center solution, but truly into a revenue revenue generating engine for the CU. So really excited to see those results and happy to kinda turn it back over to Jack, to answer some questions that have been coming up.

    Thank you, John. Thank you, Shree. Okay. So this is the favorite part of, my favorite part of the webinar, q and a, and, we’ll start answering the questions.

    On the right, you see this QR code. Feel free to scan the QR code if you would like us to reach out to you to set up a demo, either for employee AI or any of our other solutions. So with that, let’s get the q and a started. So the first question is from Kimberly.

    The question is regarding the content, the documents, the information which, the employee AI needs. Does it need to be uploaded into, interface dot AI system? Or we can kind of, link to the wherever the information is sitting. So, Sri, if you don’t mind answering this question.

    Yeah. Absolutely. So, you know, thank you for the question, Kimberly. You know, pretty much, the the AI, what we saw is ability to, give instant access information, take actions, on on the systems to complete a task, or do research, or get an agent coached, do an upsell cross sell or for a CXO to do a research or for a manager to get access to, you know, a lot of insights. Our system has a little tap into this knowledge, and sis, through any APIs and RPAs. Right?

    And and that could be your core banking, a lowest bank’s credit card processing system. If if your knowledge is residing in a a SharePoint or a a shared drive, we can tap into those two.

    Or you could just use our own system stand alone and load all of those, policy and procedure inside as well. Right?

    You know, it’s flexible that way. There’s an it’s sitting externally or you wanna use local storage within the product, you can do that.

    Often, kind of the other, players in the industry are, the the the employee are very focused on finding, pausing procedure. Doesn’t go beyond that, to take actions or coach an agent or help do your CX or do a research or or your kind of be beneficial for all other employees beyond just frontline staff. Right? So that’s kind of the uniqueness here that it it is useful across the board for all employees and and as well as, you know, it goes deeper in kind of integrations and all of that to find the data sources beyond just policy and procedure. Yeah.

    Okay. Maybe I can ask a related question to this, Shri. So this information and then you have different population of people using it, executives, contact center manager, branch.

    How do we kinda make sure that the information is kinda kept separate for different user groups?

    Yeah. So we have a very strong SSO integrations. Right? Like, you know, you know, depending on how it is set up on your end, sometimes it could be straightforward or complicated. But, basically, this SSO systems can basically kind of you know, let’s say you use Microsoft Active Directory, like, you already have set up different kind of access control within your system. The AI can kind of inherit similar access control with the simple integration.

    But if you don’t have that if you don’t have that, you can kinda manually then manage those access of different dataset to to your different group of people and users. Right? So you can either do manually or integrate with SSO to have a seamless integration.

    Okay. Yeah. Okay. So the other question is about accessing this system from like, people use Microsoft Team and they want the information within Microsoft Team.

    Some people will have contact center Yeah.

    Kind of a system.

    How do you kinda access this information in different So, you know, the this AI, you know, of course, is is kind of channel less in a way.

    Right? So wherever you want this AI wherever you wanna tap the knowledge and insights and take actions of this AI could do, you can practically do that from anywhere. Right? Like, it could be your teams and and any other channel or a call.

    Right? So all of those are possible. Right? So with the right system on right right system and licensing on your side, you know, the the the those are possible integrations to make it easy to make it accessible anywhere.

    But when you do go out of the AI, sometimes there’s limitation to how the information gets rendered or what it can do, what it cannot do. Right? Like, given you know, the idea of the employee AI is we’re building a AI companion for work for every single employee within a credit union. It is gonna be your AI companion.

    And that is gonna be big enough.

    That is gonna be, like, its own stand alone tool is the right way to use it, either to craft an email or, like, you know, do a research and whatnot. But if if that is needed to be exposed through Teams or something, it’s definitely possible.

    Okay.

    Okay. So quite a few questions around comparing and contrasting other popular tools for employee AI. Obviously, Microsoft Copilot, ChatGPT. So can you kind of position how we are different, how this solution is kind of more aligned to this audience?

    Yeah. Yeah. Really good question.

    I think, like, you know, what we sell is solutions, not platforms. We sell solutions to problems for a for a mean, we’ve always focused on financial institutions who don’t want to set up an IT team to build take these platforms and build a lot of things around it to just be make it usable. Right? It’s very challenging.

    And for a really large financial institution, probably thirty, billion dollar plus, it kind of makes sense. You could have a IT staff to kind of, you know, software development team just focused on just, you know, ingesting data and doing all these integrations and things like that. For many, that’s not an option. Right?

    Like, which is having their own software development team to do all of this. Right? So what, what we mean by we don’t sell a platform, we sell a solution. The problem is, you know, we bring this technology.

    First of all, significant r and d made to make sure this technology doesn’t hallucinate, doesn’t make up answers when it doesn’t know. You know, we are in a regulated industry. We can’t afford to have a hallucinated responses, and we are basing our decisions based on that.

    There is a huge compliance risk. So we have done significant r and d to bring you a platform that doesn’t have the hallucination risk and is comp compatible for a regulated industry like ourselves.

    And then beyond that, we all we have we bring you all these integrations out of the box and data fine tuning and make sure all of this is accessible and and you you’re able to kind of do the research using all data sources quickly and and and whatnot. But then connecting back to that one AI brain. Right? So not only you do research, you take actions to say, you know what?

    You know, going back to my example, you know, a CFO doing research on how do we achieve the thousand auto loan target for the quarter, doing research on is there a way we can change the interest rate a little bit without impacting our bottom line, and then clicking a button to create that offer that now your member facing AI starts promoting. Right? So that just one AI brain for for your member’s employee is is something also kind of something beyond what, you know, these platforms from big companies can do. They’re not designed and and for for our use cases, and and it requires a lot of IT staff to set up things like that.

    So, yeah, that’s that’s what the kind of how we differentiate Jack there, from reducing hallucination to zero to creating one AI brain and with the all the integration data to take actions and and, yeah, promote them to members too.

    Yeah. Very similar to the vertical approach we are taking to the automation.

    Exact yes.

    Okay. So the next question is, does your frontline assistant currently integrate with Pfizer DNA core to perform transaction action if need be?

    Yes.

    I mean, at DNACore, there’s a couple of data centers. I can go with one one step deeper. Like, is it Johns Creek or Cherry Hill data center? Right? So we already have kind of VPN tunnels to them too.

    So that that kind of make makes it easier. Right? So so, yeah, we do have integrations.

    Okay. So here’s a interesting question.

    Yeah.

    An example referenced comparison of other FI rates in the local market to help determine the optimal low rate Yeah.

    For auto and promotion. So where does this external data come from?

    Yeah. So, you know, this, the bank GPT we’re gonna set up for you is going to tap into the general Internet to to do that research for you. Right? As as as giving you example, the CFO doing the research kind of saying, hey. How do I achieve this goal and, you know, what is the competitive offer I can make?

    It would go do research from all of your potential competition in that region, tapping into Internet and and and things like that.

    Okay. Yeah. Okay. Again, thank you, Shree. Thank you, John, and thank you for all for attending. Thank you all the customer who joined.

    Please do reach out to us and let us know if you would like to do a demo.

    Really appreciate your time. We’ll see you in the next webinar. Thank you so much.

    Thank you.

    Thank you.

    See the industry's most advanced AI agents in action
    Book a demo with our AI specialists to see how interface.ai's AI agents could help your institution.

    How Employee AI Supercharges Employee Service, Speeds Up Onboarding & Reduces Turnover. 

  • 43%
    automation on day 1
    66%+
    call automation
    94%
    answer rate (up from low 60s)
    Key Takeaways
    Speakers
    Todd Thiel
    Chief Digital & Technology Officer, Prospera Credit Union
    Jon Terenzetti
    VP Customer Success, interface.ai
     

    Welcome. So the title of the webinar today is, Prospera’s Credit Union Journey from IVR phone banking to AI powered member service excellence.

    In this webinar, we will talk to Todd Teal from Prospera, and we will understand, the his AI strategy, how they’re using AI to do and part of the strategy.

    And then, how do they kind of go about making a decision to go from IVF phone banking to the voice AI? And, Thomas shared his insight, on his journey going from the traditional IVF kind of technology to the AI voice.

    So here are the presenters for this webinar.

    Todd Thiel, chief digital and technology officer.

    He will be interviewed by John. He’s a VP of customer success at Interface.

    And during this, discussion, we will learn about, Prospera’s journey from, the IVR to AI voice, and have a broader discussion about, how AI is playing a role in the business strategy. And also the metrics they have seen, the impact they have seen, the lessons learned, the positives and negatives of, this kind of a project.

    Then we are lucky to have Cortez Adam in this, fine summer dress.

    And he will be helping us, with couple of demos of our exit pollutions and what is coming in the future. And again, with Jack Chawla, and I’ll be the host for this meeting.

    So here’s the agenda. So, for people who are not familiar with about Interface, we will I’ll spend some time introducing you to Interface dot ai. Then we’ll go into the heart of this webinar, which is a case study with Todd, with John leading the discussion.

    Then I’ll come back and talk about, evolution of AI. Obviously, AI is probably changes are happening every week. So we’ll try to simplify where the AI is going. And, kind of, spoiler that AI is going toward agentic AI.

    And, we will show you the demo of agentic AI as it applies to our industry. So you get insight into how AI can actually help. Agent AI can help go beyond what you are traditionally seeing from, us and other vendors now now. So you’ll know where the future, is going.

    And then finally, we’ll open it up for q and a. And in the q and a, questions, please feel free to kind of ask your questions as we are going along. And there’s a q and a area at the and you will see in the UI at the bottom, and you can start typing in the questions. Some of the questions we’ll answer as we kind of go along.

    And some of the questions which are very interesting and more complex, we’ll answer them at the end of the webinar. The webinar itself is, ninety minutes. And I will strongly recommend that, you stick around and see the HDK AI demo. It’ll be very compelling to see where the future of AI as it applies to our industry is going.

    Okay. So before I get started, a quiz, if you guys don’t mind, take the quiz.

    Laura, if you can start the quiz, and let’s get the answers in so we could get a feel for, where you guys are in your AI journey.

    Okay. And the answers are coming in. Have you currently deployed VoiceAI?

    Looks like seventeen percent have deployed VoiceAI. So, people who aren’t deployed, you will get a lot of information in this webinar.

    And it looks like a lot of people wanna deploy it at this year or, next year, which is good.

    We’ll be able to help you. Have you currently deployed Chet AI?

    Chet AI seems to be adopted much more. So I would say double our voice AI about thirty one percent have deployed to AI. And the people who are deployed, they do plan to deploy it this year, next year. So it’s fairly urgent for them.

    Employ AI, about twenty one percent have deployed Employ AI.

    And again, the plan is to to deploy it fairly soon. Some people actually a lot of people have no plans to deploy employee AI. Okay. So that’s where we stand as an industry. I think this is fairly typical of all the webinars I have done.

    So hopefully you’ll get a lot of insights from Todd to figure out how what you wanna do around these projects.

    Okay so let’s move on.

    So about Interface dot ai, we have been in business for about ten years. We are headquartered in California. We have about one hundred and seventy five employees.

    And we are one of the few vendors who are focused on only AI for credit unions and community banks, which means that majority all our people are focused on, obviously, this industry and majority of people are actually in r and d. So we are kind of, leveraging the AI and building compelling solution for our industry.

    And this kind of, is different than a lot of players who kind of do what I call as a chat box AI.

    So we are deeply engrained into AI, and we are doing deep work. And you’ll see where you’re going, with agentic AI, and you’ll find what we’re doing is very compelling.

    Our effort have been recognized, by the the kind of the analyst and the industry press.

    We have we have one of the few which have been featured in Gartner.

    We have won many awards, Finovate and American Banker.

    We have about hundred credit unions and community banks using us. You can see some of the logos here. Dupaco, EFCU, VioKey, and so on. And chances are there’s a credit union in your state who’s already using us. And chances are, they are using it at core you’re using. Again, online banking solution you’re using is the, phone banking, phone ACD or CCaaS solution you are using, which basically means that the work of integration has more or less been done. So, where if you decide to kind of use our solution, you will find that we can easily integrate with your, core and other technology stack.

    Then from a solution perspective, we have taken this platform approach.

    So we have invested ten years into kind of building out this platform.

    We call it AI banking platform.

    And this platform is where our one brain is. And this one brain is learning from all the data, all the interactions that we are having.

    We have about one point five million conversation daily. Right? So, AI is a learning software unlike SAS. And every interaction we have, we end up learning from it. And that learning is built in into our platform and is developed across all our solution.

    And of course, we keep learning as we kinda go along. So right now, there are three solutions in the market broadly speaking. So the first one is AI voice agent for call center. And the function of the AI voice agent is to help you automate the, incoming phone calls from, being the primary channel by which, the customers interact with you. And of course, in addition to automating these calls, there are additional advantage. Obviously AI is working twenty five seven, and it’s always learning, and it really can help you both from the member experience perspective and from the operating cost.

    Then we offer, basically a chat AI, which is the way the way to think about it is like a AI copilot for your website and mobile apps. So when somebody comes to your website or a mobile app, you have this trusted, kind of a chat AI sitting there, chatbot or if you wanna call it, or a virtual agent. And it can answer any question they might have. For example, what is a perfect credit card for me? I’m a student.

    Or, I want to, figure out how to reduce the, the credit card debt and so on. All the questions people have in the middle of the night or in on the weekends can, and can be answered by AI. And of course, both voice AI and chat AI can escalate to a human agent, whenever human agents are available. Right? So think of this as your frontline, kind of quote unquote virtual employees helping your customers twenty by seven with, sixty to seventy percent of the interactions which are coming in. And the rest can be escalated to the human agent.

    So now as you can appreciate if, AI is handling the simple question, the comp the answers which go to the to the humans will become more complex. So, you probably want to figure out how to enable them to answer the complex question. So this is where the AI Copilot for frontline employees comes in. And it basically sits, side by side with your front frontline employees and helps them answer complex questions. Instead of escalating to the manager or saying, hey, I need to get back to you later, you can enable your frontline employees to answer the question immediately.

    And the frontline employees can be either in the branches, or of course it can they can be in the contact center as well. So these are our three kind of the major solution, footprint right now. And then we are working toward Orbit, Spear, and Nexus, which are built on the agentic air. And we’ll talk more about this as we kind of go along.

    Recently we entered the demo challenge at, American Banker.

    And you recognize this guy who’s actually one of our panelist. And he actually did the demo of Agentic AI. And, Cortez will do the same demo, at the end of the, webinar. He had only six minutes at the American Banker.

    And now he will have expended time to fully do the demo, and you’ll find it very compelling. So I’m looking forward to that. If you wanna learn more about that, you can kind of scan the QR code and see the press release. So we are very, very excited about winning this against the competition, which kind of validates, the vision we have for where the industry should go with the AI.

    Okay. So let’s kind of put our solution of kind of a simple framework. So as I kind of talked about, we have this banking platform.

    This banking platform has many many integrations with the different codes and so on. So all their work has been done as I mentioned before.

    And within this banking platform, we have also built the biometric authentication. So that makes it very easy, frictionless to authenticate the people who are coming in through AI or into the contact center. And then we are also in invested in the caller ID forensics to help you reduce the fraud. Right?

    So any call which comes in, we are able to analyze it across various different, points and tell you with, with a huge amount of confidence that the caller is who they are saying, they are. So we can detect whether so if there is a SIM swap, if there’s a new number, so we can raise a red flags for the calls. So you can pay special attention to those calls. So if you don’t see the red flags, you you can feel confident that the caller is, who they are saying they are.

    Right? So this helps it is built into the platform. With other solutions, generally you have to go and acquire this as a separate solution, which is built into a platform. And these are the solutions on top of it, which we talked about.

    And these are the solutions we are working toward, Sphere, Nexus, and Orbit, which are agentic. So basically, going on the journey from generate, from kind of the older technology of, convolution AI to generative AI to agentic AI. Okay. So let’s see one of those product.

    I wish we had time to see show you all three. We don’t. So we’re gonna do a good good demo of voice AI only. So, Cortez, if you can unmute yourself and do a quick demo, please.

    Alright. Awesome. Awesome. Thanks, Jack. Alright. Let’s jump right into an AIPB demo. Alright. First thing I’m gonna do is just gonna grab my iPhone here, and I’m just gonna give the bank a call.

    Sure. Interfaces digital assistant. Please wait while I read the instructions. This call may be recorded for quality assurance.

    For best experience, avoid using speaker mode.

    How may I help you today?

    I’m out driving around. I need to make a deposit. Are the branches open?

    Yes. We are open. Our Main Street branch only has drive through capability today.

    Do you want me to send you driving directions to the nearest branch?

    Yes.

    Great. Please provide me the ZIP code or city name.

    Three zero one eight seven.

    Thanks. There are a few branches that are open in your location.

    The branches are open from nine AM to five PM, Monday to Friday, and ten AM to two PM on Saturday.

    I just sent you a text with driving directions, and you can always talk to me whenever you need help.

    I am available twenty four by seven. Is there anything else I can help you with?

    Yeah. I just started a new business. It’s not going well.

    I may not make payroll. Can you help me skip a loan payment?

    I can surely help you with skipping a payment. I’ve sent you a text with the link to the application to skip a payment along with the instructions.

    Please click on the link and follow the instructions.

    Please note that the application should be filled at least five days before the payment due date.

    To assist small businesses like yours, we’ve removed the thirty five dollar fee associated with skipping a payment. Do you wanna know which loans are eligible to skip a payment?

    No. Can you tell me the balance in my checking account?

    Sure. We’ll help you with your account balance.

    I see that you already have registered for device biometric.

    Would you like to verify using your device?

    Yes.

    Great. I’ve sent you a link to your phone. Click on it so I can verify your biometrics.

    Thank you. I verified your device.

    The balance in your checking account ending with two two three four is two thousand three hundred and thirty seven dollars and fifty five cents.

    Also, I wanna remind you that if you maintain a minimum balance of three thousand dollars, you will be eligible for an additional one percent cashback.

    Do you wanna know the balance of your savings account?

    Oh, I’m traveling, to London soon. Can you help me put a travel notice on my account I mean, on my card?

    I can help you set a travel notice. I’ve noted that you’re traveling, and I have successfully set a travel notice on your card. We’ll make sure your transactions run smoothly. By the way, you’re traveling a lot, and I recommend you switch to our new credit card with no foreign transaction fee and many more benefits. Do you wanna know more?

    No. But my wife is looking to buy a car. Can you help me with car insurance?

    Sure. Happy to do that. Give me a moment. I will transfer the call to our specialist, John.

    Awesome.

    Well, guys, hopefully, that was helpful. Just a quick walk through. Five use cases that really highlight the functionality, the depth of integrations, and the ease of use of our AIPB product. Our voice AI tool is meant to come in a natural voice, but can be customized into my voice or that special employee at the credit union or at the bank who everyone loves, or maybe even that CEO that’s getting ready to retire or that board member that everyone just loves talking to.

    We’ve got that functionality kind of natively built in with that custom voice option.

    So with better than human understanding, tight integrations across the industry, allowing not only for dynamic informational knowledge to be shared with the users that are calling in through the voice channel, handling automation just like Jack said, but we’ve also got that ability to just dive deeper and deeper with those third party integrations. So, Jack, I’ll turn it over to you to get into some of the high level capabilities further.

    Sure. Cortez, you stole my thunder in terms of the capabilities, but thanks for showing the demo.

    And as Cortes mentioned, I mean, what you saw cannot be done by IVR.

    And it was almost like a fairly senior, human agent kind of experience, with this AI voice technology and talk talk more about it as we kind of go along. So as, Cord has mentioned, the voice you heard was very human like. Right? And you can do custom voice.

    So if you have a, you are working with a personality, celebrity with with your brand, you can use their custom voice, for example. Or as Curtis mentioned, you can have your, CEO or a special employee’s voice, as greeting the customers and talking to the voice. So basically what happens is, we can record the voice sample of that employee or the celebrity you are associating with, and then we can convert that into the voice of the AI voice. Okay?

    And as Cortez was kinda talking, he was actually on the speakerphone. Even though we don’t recommend speakerphone, the AI was able to understand all, Cortez was saying and able to respond to that. Right?

    Of course, the quality will the understanding will better with without speaker phone. But the reality is people will talk while they are in the car and so on. And you can see that it can actually understand it very very well.

    Then you saw, Cortes holding up his phone, and doing kind of the face ID, which is the device biometric function. So depending on the phone, you can do the biometric using your face ID or the fingerprint.

    And as you can see, this is like, frictionless, from the customer member perspective.

    And from the credit union community bank perspective, it’s very very secure. Right? You cannot fake, biometric unless you are in a special Tom Cruise kind of a movie. It’s really tough to do this in real life.

    Then the caller ID forensics, we talked about that. Unfortunately, we cannot show you all that concepts. But basically, we are listening to the call and, looking at the footprint of the call from various different angles and making sure that the caller is who they are saying they are. Then, unfortunately, AI cannot handle hundred percent of the calls.

    So that has to be transferred to the human agent. For example, if somebody wants to do something complex like, open their trust and so on or want the quote for the insurance, we do the transfer. And the transfer is very contextual. So it will take the transcript.

    So Quartus and the AI talking that was transcribed, and it is provided to the agent. So they know exactly what was talk, what was the discussion. So the agent doesn’t have to start from zero. They can see what the transcript was.

    It will be summarized. You will have the sentiment. And then as a human agent, you can continue from there. So you start starting from scratch.

    Our technology allows you to do complex interactions as well. So you can do, kind of a joint account, interest account. When you’re evaluating AI, you will see that majority of the solution out there are not able to handle this.

    Then if you paid attention to Quartus discussion, you might have noticed AI prompting Quartus on different things. For example, if you maintain a certain balance, you get additional cash back. So this is the upsell and cross sell motions.

    So depending upon your business, we can kind of work with you to build those suggestions into the conversation. So it comes across naturally in the context of what the customer is asking, and help you position additional products and services to the caller.

    Then the other things, insightful in analytics.

    So as I mentioned before, AI is a learning software like SAS. And AI is able to obviously answer lots of questions. But the questions it doesn’t answer, it transfers to the human agent. And that insights are available to you. So you can kind of go to the analytics and say, okay, what are the things which AI is not able to handle? And what is the frequency and so on and so forth?

    Where is the person getting frustrated? So all the analytics can help you train the AI to get better every day. So, depending upon your kind of the effort you put in, you can make AI pretty much better every day. And then you can kind of deliver more, kind of benefits to the member, more automations, from your perspective.

    So this is very important kind of a concept Like, you bring the AI into the world, it will know certain things. With the analytics, you can make it smarter every day.

    Like, as in real life, like, once I understand something, I can simply move on. So if the member or the caller says something, if you understand something, you can do the interruption in real time. You don’t have to wait for the AI to finish the sentence. So that makes it more natural.

    Then when the human caller is talking, we are actually transcribing it in real time. So we are able to answer, immediately when the caller stops talking rather than waiting for few seconds, which is a kind of dead time. So you will see in some AIs, you will see, like a noise being made before the AI can answer. In our case, we are able to answer mostly immediately.

    And then you can leverage the text response. So for example, somebody asking for driving directions, to the to the branch, you can just text the link rather than having to kind of give it over the phone.

    So this is the AI voice capabilities.

    Now, we didn’t show you the demo of AI chat, but brief let me briefly kinda talk about what AI chat can do. So AI chat is basically a copilot on your website and the mobile app. And the first thing it does is checkgripetize your website. So just like checkgripet is sitting on top of Internet and giving you the perfect answer in most cases, to the question rather than giving you ten links. Same same thing we do, but with your website and with with your content. So it is highly grounded into the information you want to learn from, which also means that you don’t have to sit down and figure out, okay, here’s a hundred and in intents and here are my hundred answers.

    You simply say, this is my website and this is the content I want my, AI check to learn from. We’ll automatically learn from it and start answering those questions. So you can get started within a day or two to basically be able to answer any questions, people have coming to your website. But we don’t stop there. We do phone banking kind of a concept, on the website as well. So that what Kotas did on the phone, that can be done, through the, through the through the AI chat itself.

    Obviously, people can do that through online banking, but sometime you wanna simply do it through conversation.

    So you can go from searching for something to doing transaction. It happens all in the same conversation, with the visitor on your website.

    Then the other cool thing we have is smart conversion.

    So as part of the journey on your website, people might want to apply for credit card or a loan and so on. Generally, they have to fill out a form. So we are kind of helping with that as well. So when people are moving from field to field in the form, we can prompt them with information.

    For example, somebody says, the VIN number. You’re asking for the VIN number in the form. People might not understand what the VIN number is. So AI can prompt them saying, hey.

    This is what the VIN number is. This is where you can find it. So it is basically hand holding as you’re filling out the form. And we have seen that, with the smart conversion, you can double the conversion rate for, your form.

    So which means a lot of new business for the credit union and the community banks.

    Device biometric concept applies to AI chat as well. So, obviously, if you’re doing phone banking kind of a concept on chat, you need to authenticate the user, and you can do that through device biometric. Same option and cross sell concept apply to that, AI chat as well.

    And then, you can escalate to phone. Like, a lot of time people think that to use AI chat, you need live chat as well.

    But a lot of our customers actually don’t do that. They simply have AI chat on the website. And if the escalation needs to happen, they do it to the phone. The reason is the AI chat is smart enough to handle simple questions, on the on the chat side. And, if the escalation needs to happen, the questions are fairly complex.

    They are generally not easy to handle through the live chat itself as well. So it’s better to simply go to the phone rather than have a live chat. And of course, it simplifies your contact center as well. So you don’t have to have different types of agents doing phone chat and and, and, phone calls and live chat.

    You don’t have to train them. As I like to say, like some people do video as well. So I as I like to say, it’s very hard to find an agent which is good looking, speaks well, and types well. Right?

    So you don’t have to go to that and kind of try to optimize, your your agents for that. You can train your agent to do phone and let AI do the rest. Right? So think think of like, instead of going omnichannel, you can go omnichannel, and then you focus your human resources on the phone channel, which is the most effective to handle the complex issues.

    Then multimodal UX, we can answer the questions using the carousels and so on. If you do use live chat, we can integrate with live chat. And then we provide insightful in analytics similar to the phone system.

    Then the frontline employee, a lot of people might not be familiar with this concept, but think about, like chat GPT for your internal policies and procedures.

    So, this frontline, employee AI, you will upload the documents or point them to your share SharePoint, and you’ll learn everything about your policies and procedures.

    And then it will be able to answer those questions, for the agents or the branch employees.

    You type it in, you get the answer. It is fully grounded into your document. And when the answer is given, it will point to where it is coming from. So that’s kind of one concept.

    Obviously, if you’re transitioning from the phone, it will bring the conversion summary and so on and so forth. And then we also provide automated actions, which is basically, automating like a, RPA, robotic process automation. All the things which agents need to do again and again. For example, block log the card, or, change the address and so on.

    So this is all done to the automated action. And then, we have, internal built in knowledge management and role based access control. So that’s kind of a, high level overview of our solution. We’ll be happy to engage with you and show you the customized demo.

    When we do the demo, we can point it to your website and show all the things kinda we talked about.

    Okay. So now let me turn it over to John. So John, if you can unmute yourself and Todd, if you can unmute yourself. So John will take it from here and talk to Todd about their experience.

    Great. Jack, thank you so much. Thanks everyone for being here today. Really excited to be here with you and to be speaking with Todd Theel, the chief digital and technology officer at Prospera Credit Union.

    So, Todd, we’d love, to learn a little bit more about you and the credit union.

    Sure. Thanks for having me, John. It’s great to be here. Yeah. So I, lead technology, everything digital here, at Prospera. I’ve been with the Credit Union three plus years.

    And so, yeah, just been leading the charge in terms of where we’re going from a capability perspective, with a lot of, support from a lot of great people here. So we’re excited to have this opportunity today.

    Great.

    So I think that one of the first things we’d love to learn a little bit more about, Todd, is, you know, how is Prospera’s business strategy delivered more effectively with AI? What is it doing for you?

    Yeah. Absolutely. You may have gathered from our wallpaper. Our our mission is pretty simple. We’re here to help you prosper, John.

    That’s where we focus our efforts early, define what that means for you, and it’s prospering financially to enhance your quality of life. And when we talk about AI here as an organization, we really talk about it in terms of business strategy first. We don’t really talk about here’s a, you know, kind of quote unquote AI strategy. It’s really about the business strategy and how are we solving problems or taking advantage of opportunities with AI.

    And when we look at our business strategy, pillars of that are are what you see here on these slides. So there’s this member centric piece, a team member piece, which is really our employees, and a piece focused on risk. And when we look at where we can drive, you know, improvements in those things on the member centric side, we’re looking for those personalized solutions, you know, like you heard in the demo with Cortez today. Right?

    Some, AI that understands something about me and can add value, to me and my financial situation in some way, shape, or form, and really have that tailored advice and offer self-service. We see that coming more and more, where people obviously wanna self serve, to a fair degree.

    On the team member side, it is all about efficiency, making things easier for our staff to to to help our members prosper. So we have, different groups of categories of pain points and things, from a staff perspective. How do we how do we make their jobs easier, so they can spend more time, you know, with the members helping on what matters most. And then in terms of risk, you know, of course, you know, fraud is a huge challenge for everybody these days.

    Cybersecurity and so forth. And so there’s a lot of good AI solutions out there. And, Jack kinda touched on a few of those as well, you know, with the caller ID forensics and some of those capabilities too. So we’re looking at solutions, that can solve problems or take advantage of opportunities, any one of these three pillars.

    Great. Thanks so much, Todd.

    One of the great things about the relationship with Prospera is that we’ve been able to, you know, roll out our AI voice product, which has been live since twenty twenty three, and also really support Prospera’s business through integrations with Scimitar and RingCentral. You know, one of our focuses at Interface is creating a a connected ecosystem that is able to really easily deliver on those transformation goals.

    So glad to see that we’ve been able to partner it and build this out for you.

    Absolutely. Yeah. You bet it’s been a great partnership, and we’ve had a lot of, success and learnings along the way too, of course, that I’m happy to share and talk more about here.

    Awesome. So I know that we also have, we have a a sample number here for for folks to call.

    You can save it until after the webinar. We wanna make sure you’re able to kind of get all of Todd’s great insights. But after the webinar ends, we’d love to, to ask folks to take a call in, experience Prospera’s VoiceAI, really see what this is doing for their for their members and for, for really driving forward their innovation agenda.

    So with that in mind, you know, Todd, as we’re talking about, you know, business strategy as a primary focus, but also AI strategy as being a part of that, what are some of the problems that you were really trying to solve with Voice AI?

    Yeah. Great question. We were at a crossroads because we were, going through a core conversion, like a lot of people on this call either have done probably recently or maybe they have one on their radar. And so part of that core conversion, we we had on our old core system, a traditional, you know, IVR type telebanking solution.

    We were gonna get a new solution when we moved to Semitar with Jack Henry. But we had to decide if that was really the kind of the strategic solution going forward, or is this if we’re gonna go through that core conversion, is this the time to move to an AI type solution? So we had that fork in the road to consider. And as we were looking at that, then we were, you know, kind of investigating and talking to a lot of the peers about what to expect with go live and call volumes, in terms of increases.

    And we were hearing, you know, fairly consistently, you know, expect, like, a three x to five x kind of increase in call volumes.

    So that was weighing on us as well. And how do we scale to handle that? You know, we’re we’re a midsize credit union with a small call center, maybe five, six, you know, permanent staff members in the call center. And so, you know, if we’re gonna increase volumes that much, what do we do? Do we temporarily add staff? Do we look at other solutions?

    And so we saw a unique opportunity to look at something like Interface and think about how it could solve those problems and also really, just set up the foundation for the future.

    Because if we can have something that integrates with a lot, you know, not just the core, but also our voice over IP system with RingCentral and some of the other solutions and vendor partners that we have, then it really does set us up, you know, strategically, to continue to build on these capabilities. And it’s not just a a a one specific point solution.

    Great. And and how did the employees respond to, you know, some of these these new innovations?

    Yeah. I think for the most part, the staff was pretty excited. You know, that this is back in, you know, twenty two. We started researching at twenty three.

    So AI was this, you know, kind of big newer thing for a lot of us, and understanding what that means, and seeing where there was, you know, capability and possibility to provide a much improved, member experience. Again, kind of, you know, just going back to our business strategy and the focus on the member, you know, what does that look like? How is this gonna help them? And when we looked at our call center, we had challenges like a lot of traditional call centers, you know, in terms of answer rates and staffing and turnover and all those types of things.

    And we saw some some potential for this to help, you know, alleviate some of that.

    And and so, yeah. So overall, I mean, there was a lot of excitement, and we made sure, you know, one of the lessons we learned early on was to have, you know, a a coalition of the willing, you know, really kinda get involved early and roll up their sleeves, if you will, you know, a small group, you know, five ish, you know, type people, different areas of the business, you know, that were engaged early and often to put to come together, look at these types of solutions, talk about the problems we’re going to solve, and make sure that everybody, you know, felt comfortable and could really be a champion of that. This couldn’t be just a tech thing, couldn’t be, you know, just a a cool AI type thing. It had to solve a business problem or problems, and we had to have multiple people from multiple areas championing this to be successful.

    Absolutely. So thinking about that, you know, that that choice to, you know, engage with your with your call center agents, roll something new out, take advantage of this new excitement around, all the evolutions in AI, how did you think about the partner selection process? You know, where did you look for those, and, ultimately what led you to Interface?

    Yeah. I mean, it we started, you know, with a wide net like a lot of folks do. So, you know, going to, you know, different, you know, fintech forms like Ventures Fintech. I remember, you know, that at that time it was CUNA, but TruStage puts on.

    Looking at a lot of webinars, talking to a lot of peers, you know, doing research, that type of thing to kinda come up with a basket of possible solutions to solve this problem. And then we started to apply filters from there. And one of the early filters we talked about is we want somebody with financial services, specifically, you know, credit union expertise, because we those that are in the credit union space, it’s it’s unique. Right?

    We have a we are so member focused. We don’t have customers. We have members. It means different things.

    And so we really wanted somebody who had had a proven track record of success, in that arena. And so we we applied multiple filters, you know, credit union focus, proven track record, experience integrating with our core and our VoIP system. So that just narrowed the list, you know, further, further, and further down, you know, fairly rapidly. So we ended up with a short list.

    And then we really kinda rolled up sleeves and dug in, you know, on that short list, you know, that we were looking at. And in terms of why Interface, I can I can touch on that a bit more too? You know, as we started to work with Interface, you know, it was pretty obvious early on that they were really confident and comfortable, you know, with our core and and what we had there. We were impressed how quickly they got things up and running in a test environment.

    Even from a demo perspective, they could demo stuff awfully fast. We’re like, okay. I mean, we were more worried about the complexity, I think, than they were because obviously we hadn’t done it before.

    And so, you know, just doing the demos, it was it was obvious that they had had that experience. And in talking to, you know, the reference customers and peers, there was a credit union, in Wisconsin that was already a partner of Interface. They had a great experience with implementation, and it just kinda built on that confidence.

    So that was one of the things. And another was, you know, specific to our voice over IP system with Ring. You know, this was a vendor that that a lot of at these times, a lot of these AI vendors had not yet had a partnership with or done any types of integration with, so it was new. And that’s a lesson too is to understand, you know, what level of existing integrations are there for the vendors that you have in house, which one of them, you know, would be brand new to any of these AI partners that you’re considering, and just expect the new ones to take quite a while.

    Right? Because it’s because you’re plowing new ground. And even though, Interface had done some work with Ring, how we wanted to set it up turned out to be a bit different with Ring. So we ended up plowing some new ground too.

    And it was no fault of Interface, no fault of Ring. We just figured out, hey, we want it to work a little bit differently. And so those become kind of long poles in the tent, if you will. So integrations are key.

    Having people with that experience and kind of a proven track record of those integrations can can make things very smooth and save you a lot of time.

    Awesome. So speaking a little bit about that, that discovery process and moving beyond, you know, moving beyond, the decision point into implementation. What did that journey look like for your team? What did you have to do and how did you experience the process?

    Yeah, absolutely. So I mentioned we had a small group of champions. That group stayed on then, you know, throughout the entire implementation.

    So a cross functional team, you know, everybody wearing, you know, kind of multiple hats. We’re not a huge org. And we also didn’t want a massive implementation team where it just becomes, you know, more cumbersome.

    And so we basically had a dedicated project implementation team, from Interface.

    And then we met, you know, at least once a week, but we always had had, you know, the option to meet more frequently. And Interface really guided us early on, and I alluded to it. I mean, they had a very standardized process for onboarding new clients, even back in twenty three. I’m sure it’s that much more mature even now, but I was impressed even then with, you know, how many standardized templates they had and how easy it was to say, you know, this is how we want these things to work. And so if you if you haven’t had a chance to go deep on these solutions, what you’ll find is that organizations like Interface have already predefined, experiences or they might call them intents.

    And so they’ll come out of the box and say, hey. We’ve got x number of predefined intents that work with your core. That’s fantastic because then you’re not building new bridges to a to a new destination. You’re just leveraging things they’ve already built and it’s very fast for them to implement those things, which is wonderful.

    So that we we went through all the standard intents and said, yes. We want this one. No. We’ll wait on this one.

    Yes. We want this one. That part was very straightforward. And then they gave us an opportunity to do some custom intents and say, yeah.

    Let you know, we want some unique experiences. We wanna have this handled this way because it’s, you know, prosper and this is how our members wanna interact, type thing. And we came up with a list of those.

    And so that that was a a regular cadence. You know, we had a test environment running, you know, within, gosh, probably six weeks, where, you know, we had active things integrated.

    And that and that includes the time for our core partners and these other partners to do their pieces too. Right? It’s not just work that has to happen on interfaces side. It’s these other partners too.

    Yeah. And then from there, you know, we went on and then and then we came to a big decision, which was when you roll out these solutions again for those that are new to this, you really have, have kind of two main options when you start. And one is to do kind of an informational only type experience when you go live, and another is to include transactions with that experience on day one.

    And so initially when we were thinking about it, we thought, well, you know, again, this is brand new and our and so we were timing this to go live with a core conversion. So we didn’t just have a new AI, you know, IVA. We had a new core. And at that same time, we had new online banking. So this was a very big bang.

    And I’m not And I’m not all at once.

    Right. Right. And I’m not sitting here recommending that that that’s for everybody. But given our situation and what we were coming out of, it made a lot of sense.

    And we said, this is what we’ve gotta do. So we’ll we’ll do that. And then, you know, we had an honest kinda heart to heart conversation with Interface. I remember this like it was yesterday where we were saying, you know what?

    We’re because of all these changes happening at go live, we’re we’re a little more, you know, we’re conservative or Midwest. We’re, you know, we’re a little trepidatious about trying to do both information and transaction at once. Right? So let let’s just stick with informational.

    And what I mean by informational is, you know, what are your branch hours? Are they open or closed? You know, send me a link of direction, you know, that kind of stuff versus transactions and authenticated, you know, transactions to your core. And so so we were thinking at go live, we would just go with informational, and interface.

    We would do a phase two and come back with transactions. Well, they they sat us down and said, look. We’re confident we can do transactions on at go live as well. And, you know, Todd, you’re gonna be better off because your traditional telebanking people can do transactions today on your old core.

    Right? So rather than have it be a takeaway, what if we made that all happen and go live? And so they convinced us that they that they could do this, and they did it successfully. So they got transactions up and running very quickly.

    We went through, did a a ton of testing in a short amount of time in amongst all the other core conversion and online banking testing, and it all went live on the same day. So information and transaction. Now again, not saying that’s for everybody, but from for our situation and where we were coming from, it it made the most sense and it and it works.

    No. That’s great to hear. One of my favorite parts of my job in in customer success is obviously hearing that this whole process worked well and that you got what you wanted right out of the box.

    Right. Right.

    So, now that the the solution has been live for a period of time, you know, what kind of impact have you seen on the metrics? You know, how is adoption looking, and how are you thinking about that overall that overall journey?

    Yeah. I’ll I’ll bifurcate this just a little bit. I’ll talk about what happened at conversion and then where we are, you know, eighteen months later, which kinda tells the big story. At at the conversion, basically, like I mentioned earlier, you know, we were told by peers, you know, expect three to five times call volume. We ended up with ten times call volume. So we were very, very thankful that we had your face up and running because our our typical, you know, two twenty calls a day became two thousand five hundred calls on a Monday, when we went live. And so when that happened, you know, one, you know, the IVA picked up every single call, you know, and two, you know, it basically handled like forty three percent of them on that very first day where they did not get transferred, you know, to the call center.

    And so we had temporarily staff up the call center because, again, just trying to prepare, you know, hope for the best plan for the worst.

    And so, you know, they they still took, you know, a large portion of calls, but nothing like they would have if we hadn’t had, you know, this the IVA in place.

    So that that was significant.

    And in the first five days, you know, we we go back and look at metrics. You know, we had a hundred and forty two hours of IVA time where we’re talking to members just in the first five days, you know, of this system. So that was three and a half people for eight hours a day for five days straight is what that math looks like. So it was pretty impactful for us, to have this in front of the organization and to have it available twenty four seven. Right? Because especially during a core conversion go live and online banking go live, all these changes all at once.

    So so we felt really good about the initial, you know, use of the product and how it was received.

    You know, kind of fast forward eighteen months later, and if I look at, you know, just before go live, before we had this in place and we were traditional, back in twenty three at this time, we averaged about fifty seven hundred calls a month. In twenty twenty five now, last month, we’re over eight thousand. So we’ve got, you know, call volume has gone up, you know, quite a bit.

    Back then, you know, we would have an answer rate, you know, on certain days in in the sixties. You know, I mean, just, you know, with staff turnover, people are out sick. You know, the wait times have gone up, you know, these types of things.

    And you look at it today and I’ve I’ve, you know, looked at these numbers very recently for last month. You know, we’ve got an answer rate in the nineties.

    We’ve got a wait time of a of a minute. I know the data is a minute and seven seconds average wait time for our call center, which is so much better, than it used to be because, you know, we had and we haven’t had to increase the staff because, again, we’ve got the IVA taken a very healthy portion of these calls.

    And so one of the things that we did see, and you may hear about this and expect this to a degree, is that our average handle time went up post go live, and that’s that’s logical because if you think about it, now our members, a lot of them are using the IVA for the simple things. Right? So they’re saying, I wanna check my balance. I wanna, you know, move some money between my accounts.

    I want some loan information. I got a credit card, you know, issue, what have you.

    And so that stuff gets automated. Now it’s the more complex stuff that comes back to your call center. So, our average handle time right now is four minutes twenty one seconds. We’re pre go live. It was three minutes forty three seconds. So just about a minute longer than it used to be. But I’d look at that as healthy because the complex stuff is getting to our people, and that’s where we want them spending their time.

    Mhmm. Absolutely. Put people on places where people, you know, work the best, which is complex questions, building relationships, and answering those tough questions.

    Absolutely.

    Great. And what we see here on the screen is a little bit of information, about Prospera’s, automation trends as as Tod just mentioned. And what you see is, you know, since go live and as time has gone on, we’ve continued to see an improvement in automation, and automation being essentially the percentage of calls that are able to be handled by, by the AI and not being transferred to to an agent. And, you know, one of the things that we have worked with, Todd and his team and with all of our our CU partners, is essentially on on value engineering and understanding what are those intents that are live today, what are those additional intents that we can add to continue to improve automation?

    And how can we continue to drive more and more value through AI, and re and relieve some of that burden on your call center as part of our our full solution and managed service offering? This is one of the one of the favorite things that we get to work on. So, Todd, I just spoke a little bit about, you know, our approach and on on value engineering and managed services. But as you thought about it, you know, internally from the CU, how did you think about increasing those automation rates over time?

    Yeah. A couple different ways. One is, you know, talking to our call center manager and understanding, you know, what do we have for dispositions there? You know, what’s making it through? And from that list, what are those things that shouldn’t make it through? Because we can really turn it into an experience or an intent.

    And then we kinda look at that data and pair that with the tools and the analytics that Interface provides. And Interface has some pretty robust, analytic tools, you know, that come as part of this package. You don’t have to pay extra for them. It’s all built in.

    And you can see it on your screen here. But really being able to compare and look at, you know, the intents and that these are these experiences. So looking at the data, you can pull up these lists, and it’ll say, hey. You had x number of people ask about a loan payoff or order new checks or what have you, and that is already a supported experience.

    Would you like to talk about enabling that?

    And we’re like, sure. You know, of course. Right? So, you know, let’s put that in UAT.

    Let’s test it out. See if we like the experience, need to tweak it at all, what have you. They just make that very easy, which which is fantastic. So we’re not trying to call through, you know, massive, you know, data stores and and run, you know, very sophisticated analytics ourselves to understand, you know, what’s available and what we should be focusing some of that attention on, which is great.

    And another thing we do then was we tie it also to other things that are happening in the business. So, you know, let’s say we’ve got another system change coming out, or we wanna run a campaign, you know, a a refinance, you know, or something like that. You know, we we can leverage the system very easily, you know, working with our partners and interface, you know, to put in a new intent, a new experience, you know, a new, kind of brand campaign, if you will, to take advantage of what’s going on, you know, from a seasonal perspective.

    And so it offers a lot of flexibility that way, and we we’re still finding new kind of creative ways to use that.

    So here’s another question that I think will address some of the items that are coming up in the the q and a chat as well is, how did integration with Scimitar help, with a faster response and reduce your handle time? How did you work with that core system?

    Yeah. And so I alluded to this, you know, the integrations are already built and proven with Semitar. So they they work and they work very well. And then one of the things we really liked about that integration is that when you transfer calls in to the call center, if you’ve done any kind of transaction in the IVA, it’s doing basically a screen pop, and it’s bringing out that member’s account in the core.

    So no longer, you know, do I have to ask you once again for your member number? Do I have to, you know, as a call center rep, do I have to type it into the core and pull it up and make sure I’ve got the right account? All that stuff pops up. It’s seamless, and that’s right next to another screen that has all the chat content in it.

    So I can, you know, that’s basically my broad over from the IVA. And so I can see, you know, what you’ve done already in the IVA. I can see, you know, where you left off, what questions you had, and then I’ve got this account that’s already open in my core. So that brings a lot of efficiency in and of itself.

    And then the additional things we’re looking at are some of the products, you know, that that Jack alluded to, where, interface offers solutions to go, you know, look through your knowledge base and pair that with with what is coming over from your IVA. So where we’ll be going in time is being able to take those questions that were in the IVA that got transferred to the call center, automatically doing the knowledge based search, summarizing that information with interfaces AI, presenting that summarized information back to the rep. So now the rep isn’t having to go in. You know, I’ve gotta go ahead and, you know, how do I change a pin on a on a debit card?

    And maybe, you know, maybe I don’t remember. And I’m going in my knowledge base and looking that stuff up. Well, now, you know, Interface can provide a solution that will summarize that, from a procedure that is a knowledge base and present it back to the rep. So those things are coming together.

    It’s all kind of part of the strategy that Interface has, to to really make, again, that that team member’s life easier in serving the member.

    Great. And as we, we get close to the end of the, of of of the the panel discussion here, love to learn just a little bit more about some best practices that you can share with your peers on the call, with other financial institutions who are looking to adopt AI solutions.

    Sure. Sure. Yeah. And I’ll, I’ll recap a couple things too. So, you know, one is start with the, start with the business problem or the business opportunity you’re going after and, and get alignment on that.

    We all have a list of of pain points as organizations, and we all have a list of of new things, you know, we wanna be doing, and make sure, you know, that your your senior team and your peers are all aligned on what that list looks like and what’s at the top, so that you aren’t wasting time. Right? If you’re in if you’re playing a key role in investigating these kind of things, you wanna make sure that you’ve got the support, behind that to say we wanna spend, you know, time and energy and money here, solving these kind of problems or taking advantage of this. So that’s the first thing.

    Start with the business problem, you know, get alignment. And then like I had shared, you know, we we had a small coalition of the willing saying, yes, we wanna be a part of this particular thing. We wanna be on this exploratory team. We wanna look together, try it together, this type of thing.

    I think that’s huge if you can get so that it’s not just a technical thing. It’s not just an IT thing. It’s a business thing. Right?

    It’s a business project, to solve business problems or or create business opportunities. So try to form a small cross functional coalition, and bring everybody together. You know, once you’ve done that, you know, again, looking at partners, you know, in your industry, obviously, and and we’re here, you know, on a CU call. So whether it’s a CU or banking, make sure that partner has the expertise, that you’re looking for in that industry because every industry is different obviously in a lot of ways.

    And then the integrations are big. So if you’ve got unique solutions, or things that not every vendor partner has, you definitely should put some weight on, that a certain partner has experience with a certain core or a certain island banking system or a certain VoIP system.

    Just because it can save you an awful lot of time in implementation and dealing with, you know, first of a kind type problems.

    You don’t have to plow any new ground that way.

    Great. Thank you, Todd. Thank you, John. You kind of, heard about what Interfacial AI does.

    From Todd, you heard about how they’re using our AI voice solution.

    Now let’s talk about where AI is kind of going. Right?

    So we kind of, before ChatGibri came along, all AI was conversational AI.

    And, the application of this AI in the in the business world was limited and, not very successful, frankly.

    So these are the experience you might have with, like, vendors like AT and T deploying, chat AI, and, most of the time frustrating the members, the customers.

    But they had to do it because it’s a kind of a high volume, low value kind of business. And, they wanted to really reduce the number of phone calls coming in. So they tried everything they can to reduce it. But Cognizant AI was really not that successful, in achieving the goal. Especially for our industry where the relationship is very important.

    The Cognition AI, if you’re using it or if you’re still using it right now, I would say get off it as soon as possible. Well, it doesn’t really work very well and frustrates the members.

    So after ChatGPT, we are kind of entering the generative AI age, and it’s doing wonderfully well. So generative AI, the understanding of the natural language is amazingly good. Understanding the intent of the of the typer or the caller is amazingly good. And the answers which are coming back, obviously, they are, need to be grounded, but they can be very, very natural.

    So, generative AI, is proving to be very useful. And this is where, we are, right now as a as a as a interface dot ai. So we are end to end generative AI across our technology stack. We are in the process of implementing it with all our customers.

    And, our chat AI and employee AI is already generated AI. And the phone also is getting to the generated AI. So this will be, like, amazing experience. So I think we are going from conversation to generated AI. It’s like a ten x improvement.

    Then, agentic AI, if you are using chat GPT and you’re doing deep reasoning, deep research and so on, you already have experience agentic AI, in the consumer world. I personally use it all the time.

    And it saves me days and days of research.

    It takes obviously long time, fifteen, twenty minutes to do the research, but it still saves me couple of days of research to get me the answers. So this is like deep reasoning and so on and so forth. Now how do you harness this agentic AI in the business world is where we are focused on. And this is where we’ll show you the demos of how we are leveraging agentic AI. Similar to what we did with general AI, make it grounded, make it useful in the business world. Same thing we are kinda on the journey of for doing with the agentic AI.

    So in the past, with with the with the technology we had, we kind of lived in the omnichannel world, and we try to bring AI into the omnichannel world per channel. Right? And, we try to do as best as we can given the technology and given the, the approach.

    But that is in the past. So now I think at least interface dot AI, we are able to give you a unified experience. A unified experience means that you can look at AI as a Omni AI, and you can apply to all the channels with one brain. And the channels can be either, you can continue using them all the channels you have, or you can simply say that, unified AI approach, the Omni AI approach is so good that you can handle all the simple interaction and take away some of the channels, from the live perspective.

    And then, like the thesis is that if you need to go to the human, it is gonna be complex. Then use the channel which is the best for human to human interaction. And the AI let AI be the omni AI omni channel and handle the interaction across all the channels. So for example, somebody coming to website, AI check can handle it.

    Somebody coming to texting you, AI check can handle it. Somebody coming through social media, AI check can handle it. And then whenever you need to escalate, you can probably escalate to the phone channel or a video channel, or an appointment in the branch.

    So that’s where we are, with this unified approach.

    And then we are kind of working toward something which is, kind of radically different in a way. So, we can kind of invent the future of autonomous AI. The AI which is kind of, not only doing what we are kind of used to, or at least have a good understanding of from, automation perspective.

    You can think about agent AI kind of being an agent for the member, and it can do lot of things for the member, without member having to kind of ask. So this is where you can say you can set up certain actions. It can be an agent for the members and can do a lot of things. And then from the, financial institution perspective, you can be the bank GPT kind of a provider. So you can become similar to chat GPT, a bank GPT where you are holding the relationship with the member. And this bank GPT obviously is integrated with your stack, with your institution, but also it can help you become a more of a marketplace of financial information.

    So you can bring other partners, and allow the customer to have a consolidated interaction with the financial life and also be the, guide in terms of, financial wellness and so on and so forth.

    So this is all feasible combining generative AI and agent AI. And this is a journey we are at. And this is where, you can see like a dramatic dramatic difference.

    And you have to rethink what online banking is. You need to rethink what the call center is. And, I’ll turn it over to Cortes, to show us a demo of where we can go with this agentic AI and generative AI approach.

    So Cortes, if you don’t mind, again, can I remind you, Cortes is gonna show you a demo of SPHER Nexus Orbit, which is something we are working towards? And, I’ll turn it over to Cortes to share his screen and do the demo.

    Awesome. Awesome. Alright. I’ll ask for Laura from our support team to kinda jump in here, and we’ll walk you through a demo of this next journey.

    Right? The iteration, I think that Jack articulated was was really spot on, you know, going from conversational AI to potentially now leveraging the intelligence of generative AI. And then lastly, kind of at that top quadrant, potentially now adding in the agentic AI functionality, and what that’s gonna do in the digital experience world is absolutely amazing. So here’s a I like to call it a visual road map.

    We’ll start with Orbit. Orbit is really meant to be a bolt on solution to your existing online and mobile banking. You can see at the bottom right, I’ve got a chat bubble that’s gonna, allow us to begin the conversation.

    So let’s start with something simple. Right? Most chatbots today, we know, can do easy things like FAQs and routing numbers. So I’ll ask, you know, what’s my routing number?

    It’s quickly gonna evaluate that information. Really easy, straightforward. We could dive into that. So let’s go a little bit further.

    Leveraging now some of this agentic and generative AI technology.

    I’m a student. I’m looking for a credit card.

    It’s gonna come back with maybe some follow-up questions to help me dive into the specific features that’s gonna make this card and this offer potentially a little bit more tailored. So I’m looking to save money, maybe cash back, maybe I’m gonna be traveling. So let’s look at some rewards that’s tailored to my needs.

    Awesome. Let’s go ahead and get started.

    So now Generative AI is gonna dynamically search the website, pull in product guides, look at any of those third party data sources where AI now has access to to be able to come back, highlight specifically on the site exactly the card, exactly the offer that’s the best fit and best suited for me based on that knowledge, based on that background about me as the user. It’s highlighted exactly the features that’s gonna make the most sense based on the context it has about me and the relationship I have with the institution potentially, and then it’s gonna pull in potentially and highlight those top five reasons in the chat experience.

    The great thing here is now making it a next step further. If I like the offer, I can hit yes. Let’s apply.

    It’s gonna open up a window for me to now upload all the appropriate documentation to execute and apply for the loan right here, all driven through the conversation, all driven right here through chat. So I’m gonna upload my ID, maybe proof of residency, maybe proof of income.

    And the cool thing here is to save time, to save energy, we’re gonna process those, leveraging now that Agentic AI functionality, and execute upon this application by extracting the information directly from the ID, directly from the material that’s been added. So let’s go ahead and hit apply.

    So it’s gonna grab the information. It’s gonna pre fill the app. It’s gonna upload everything here, and we’re gonna connect to the API. This could be an API over to, MeridianLink, SWBC, Terafina, FICS, or Origins, just as an example. And all within ninety seconds, I’ve completed the loan application. I’ve processed it through. Really simple, really easy, straightforward.

    You get back an automatic approval or potentially a application status update right here on the screen. Really easy, guys, to leverage this technology and this lending workflow. Obviously, very configurable, and we can put disclaimers and speed bumps where appropriate.

    Alright. Now let’s log in. Let’s go one step further. So now we’re inside of digital banking. Imagine we’ve already authenticated with within the app. You can see I’ve got my accounts here. We’ll start with some basic functionality.

    Maybe the first thing we’ll do is we’ll transfer some funds. So you’ll see how we can do transactional workflows now within digital banking.

    So I’m gonna move some money from my savings to my checking account all right here within chat.

    I can do so with voice, by talking to it, or typing it in just like we’re doing now. I’ll say yes. Let’s go ahead and do it.

    You’ll see the balance will update. There it is. Fantastic. Again, leveraging chat, leveraging this conversation window to execute your banking.

    Let’s go one step further.

    Let’s maybe take a look at our streaming services.

    Let’s look over the last year. Let’s see how much we’re spending. I got two teenagers in my house. I don’t know about you guys, but it seems like I’ve got, you know, one or two Hulu accounts. I’ve got a Disney plus account.

    God knows what else. So let’s do an evaluation of all the accounts I have here within the institution and take a look at some analysis.

    Let’s do it. So it’s quickly gonna fetch the data, look across my bank statements, look across all my recent transactions, all of the accounts I’ve got in here in the mix, and it’s gonna come back with a full analysis of how much I’m spending on streaming services over the past year.

    Love it.

    Oh my god.

    Worse than we thought.

    You know, six thousand dollars for a total expenditure on streaming services is just absurd.

    So we’ve gotta get a handle on this. It’s really out of control.

    So just, again, you know, really highlighting the level of functionality on how we can take agentic AI and generative AI and leverage it to really enhance your overall digital experience from a mobile and online banking perspective with Orbit, again, being that bolt on solution to your existing framework.

    Alright. We’re ready to dive deeper. So, Laura, let’s go ahead and navigate over into our Sphere digital banking experience.

    Sphere is now meant to be a stab at replacing your existing online banking provider.

    With leveraging this ChattGPT like experience fully embedded into the digital banking environment, you have an advantage that’s like no other. Imagine having a financial assistant right there at your fingertips, Chad DBT that’s trained with all your insights about your banking relationship, again, being your in house financial advisor.

    So let’s go ahead and open up that Sphere window, and let’s do something we know that digital banking just can’t do today.

    I wanna plan and maybe start investing for my ten year old son. He’s going off to college soon, and, he’s a brainiac, smart kid, all honors classes. He’s a magnet and everything else, so I wanna begin to prepare ahead. Those tuition fees are getting really expensive.

    So we’re gonna execute a plan and kinda help, you know, walk through maybe some savings options.

    So our system is gonna provide you some questions and some context to help build out this savings plan.

    Boston University is where I went for grad school, so let’s use that here for the synopsis.

    I’m gonna click on my internal and external accounts that are at the credit union and maybe even at an outside bank as well. I’m gonna put a three thousand dollar monthly contribution, and let’s go ahead and start the investment strategy.

    You know, once I get started, a couple things to note that are really important. You know, generative AI is so smart now where it’s gonna ask even some follow-up questions where, do you wanna add any other account? This is a big decision. It’s a lifetime move. So, yeah. Maybe let’s go ahead and add a joint account that I have with my spouse as well. It’s a great question here.

    As we add the spouse account, you’ll notice one thing. This account’s at an external institution. It’s at Safe Credit Union, and typically within digital banking today, you’re gonna be asked to now have an interaction, an interface in place from digital banking over to a third party data aggregator like MX, Plaid, or Yodlee. But with Agentic AI and with Interface AI, we can log in one time to Safe Credit Union, and our technology is gonna capture the information.

    We’ll go ahead and log in. It’s gonna capture the information from Safe Credit Union one time, and it’s now gonna pull in and extrapolate that data and include it now within our digital banking environment without the need of a third party data aggregator provider. One less third party. One less vendor to manage.

    So great. I pulled in the spouse account. We’ll go ahead and hit continue, and let’s finish off the investment plan. You see the Safe Credit Union account now is visible. It’s now there. Awesome.

    Let’s go ahead and execute this plan.

    The cool thing here, you know, Jack mentioned this early on, and it’s really an important part, is, you know, the asynchronous design of everything that we do, you know, allows you to walk away. Just like Chatt GPT, when doing that deep reasoning, we can execute this plan, walk away, go do something else. You’ll get a notification later when it’s ready to go. But right here in real time, we’ve got the full synopsis of this complete savings plan, this five twenty nine plan to get junior ready to go to Boston u.

    Looks like I’ve got a quite a quite a big, investment ahead of me. I may need to pull in some additional data sources and maybe start a side business to get ready for this. But we’ve included all those external and internal accounts in the evaluation.

    We’ve even looked at third party factors. The AI has done all the research, taken care of all the legwork, but here now is where the real power comes in. We can execute this plan for the user, again, saving them time, saving them energy, saving them money, by just directly going out to the core, opening and funding the accounts, setting up those preset biweekly, weekly, or recurring transactions to move the money from the savings, checking, or even those external accounts to be able to fund and execute this plan. Really awesome.

    The great thing here is we can also share this plan. This can turn into a PDF, can turn into a document if you’re not ready to execute. This is obviously just a highlight of the functionality that digital banking with the intelligence of generative and agentic AI can really do.

    Again, one example, but, you know, just take a step back. Can you imagine this being leveraged in the lending scenario to really revamp what that lending process is, mortgage process could be? Can you imagine this even being leveraged in a car buying experience, amongst other things? Again, really exciting.

    Just wanted to give you a quick sneak peek on what that digital banking experience would look like as it’s been revamped now with Agentic and generative AI. Alright. One more example. So, Laura, let’s go ahead and dive into NexSys.

    NexSys is our frontline assistance tool. This is meant to completely transform the entire call center operation.

    You know, we heard during the, you know, q and a session, the back and forth with Todd and and John throughout the call and the webinar today around, you know, how important it is to potentially have that one AI solution, that one AI brain from a voice and chat and conversational experience, and now potentially even on the employee AI side. It’s gonna continue to help us drive efficiency, but NexSys is gonna take things just one more step ahead.

    So let’s do maybe two or three use cases here. We’re logged in as Samantha.

    Samantha is a is a call center staff employee. She’s sitting at her desk. We’ve got API connections to all the third parties that she’s gonna need to interact with on a daily basis, you know, from Fiserv or FIS to Origins to Core, you name it.

    And AI is gonna be the first line of defense taking care of all the steps that are necessary to help drive transactions and to continue to help drive automation away from the call center, away from CCaaS, and handle it all in house, again, with AI first.

    So as you can see here with this first example, we’re looking at a chat where AI and the conversation from the person have been going back and forth. It’s been helping them drive an interaction around a wire transfer.

    Looks like we’ve got a user that’s looking to send a wire, maybe around five thousand dollars or so.

    AI has already completed six of the seven steps that’s necessary here to execute this transaction, and Samantha’s just being brought in as the human in the loop just to finish it off with that final step. So let’s go ahead and put in our password. Let’s log in, and let’s complete that last step in the process.

    You can see it’s a fully authenticated user. It’s a known payee. It’s a repeat transaction.

    Low risk. It’s come back with the score. Everything looks good. I’ve got three green check marks. I can quickly hit authorize, and now that is out the door.

    Samantha had all the context of the previous conversation.

    We were able to prick you know, quickly bring up, right here on the screen the core experience or maybe even the payment system just so she can validate things if needed. And just like that, we were able to get that wire out the door with that last step. Okay. Our next use case here, looks like there’s gonna be a callback request.

    Maybe this is a mortgage. Maybe this is a small business situation where you want an expert to be ready to be on the phone, and maybe Samantha’s just that right person to handle this. This person could have been communicating with the chat throughout the day or maybe earlier, and they’ve scheduled this for later in the evening. Fantastic. Looks like they’re ready to go. We can call back the customer.

    We can connect to Coconut or any other third party system that you’ve got out there that can, you know, coordinate those phone calls to those various specialists that you may have, rather in branch or maybe externally, let’s say at a mortgage center.

    Great example.

    Alright. We can go ahead and end the call, and let’s go to this last use case.

    Samantha’s gonna be pulled in here again as that human in the loop, where AI has already handled the majority of the conversation. All the context, all the research, all the reasoning has already been done, and now Samantha can just pop in and just finish the final validation.

    Looks like this is just a credit limit increase. This is a user that we already have today. They’ve got an excellent credit score, but maybe there’s some documentation missing. So let’s go ahead and request the income docs.

    We’ll click that. It’ll pass that information request back to the chat. Again, AI and human are working hand in hand here, making Samantha really intelligent, and it looks like we just need to request the information. We’ll scan the emails. We’ll scan potentially this document source or whatever it may be to be able to find whatever that piece of missing documentation here is.

    We now have a up to date income statement. The request looks good. All low risk. Let’s go ahead and approve it.

    Samantha is now effective at her job, being able to navigate through multiple APIs. From a technology and from an infrastructure perspective. We’ve handled all the legwork. Right? Making it easy for you to take one single employee with one single application, and we automate all the mess on the back end with those third party systems. Again, making your call center staff more efficient, reducing those call and those handle times, and allowing them to leverage generative and agentic AI technology.

    Again, this is a visual road map, a visual presentation of where our technology is going, how we’ve started off from the very beginning of this that conversational chat. We’ve grown it with generative AI. And now with Agintiq AI, things are just really taking off. Orbit, Sphere, and Nexus just gives you that sneak peek of where Interface AI is going. So thanks for the time today. Jack and team, I’ll turn it back over to you.

    Thank you, Cortez.

    Okay. So my favorite part, q and a. And while we are answering the questions, if you guys want to have a customized demo, feel free to scan this and request, a demo, and we’ll be more than happy to show you the demo of all our solutions.

    Okay. So let me bring up the q and a. So the first question is for Todd.

    And this is a classic question. We pretty much get it for all the, webinars we do.

    How do members like AI voice?

    Do they, see a I mean, do you see members resisting? They wanna talk to human even though AI can do the job? So, Todd, what is the answer to that question?

    Sure. The answer is yes. We do see some resistors, of course. Right? It’s human nature with change.

    We see kind of the classic three buckets people are familiar with with changes. We’ve got, you know, a third that were early adopters and all over it. Another third that were kind of fast followers. You know, we give them education. They’re willing to try and use it. And the last third is kind of your classic resistor bucket.

    And it and what we have learned is that we just want to roll up our sleeves and understand, you know, where does the resistance come from? Is it, you know, because I just wanna talk to a person? Is it because I’ve got situations that this won’t help me solve? There’s all different reasons for that.

    So we try to get at the heart of what that is. And we’re realistic. We can’t solve that all for everybody. And we made a decision probably after a few months, that we were live to go ahead and mention, and you’ll hear this if you happen to call our menu.

    Later on the menu, it says, if you just wanna talk, to a representative, you can interrupt me at any time and say a representative.

    So we we let them know that and that that even in and of itself comes with some risk because we’re like, okay. Is everybody just gonna say representative and just and just bail. Right? And they didn’t.

    So, you know, that told us, okay. We’ve got a, you know, a healthy contingent of people based on the adoption that are fine just using the system and they want to use the system. And then we still have that outlet though. It’s like, hey.

    If I just need to talk to human because I know my use case is unique or I just I’m just never gonna be a fan of bots no matter what you say to me, we give that option. So we we wanna continue to meet people where they are, educate them, bring them along if we can. But if we can’t, we’ve got people for you to talk to. We would always will.

    Okay. So, Todd, a related question to, the previous question, how has member sentiment changed post implementation if at all?

    Yeah. Member sentiment. So, yeah, we have basically and, you know, we do NPS and these types of things. And and one of the things we found was that we needed more timely information from the phone system to really kind of understand, you know, where IVA is at.

    Traditionally, we did, like, you know, quarterly NPS scores, and we would say, you know, did you happen to use the IVA? What was your experience like? It was too late, you know, in time and people are trying to think back that I happen to use in the last, you know, month or two or what have you. So we worked with Interface to just implement a very simple solution.

    Sometimes simple is best, where we say, hey, are you willing to take a survey? I’ll text you a link. And if they say sure, then the bot goes ahead and text them a link. It’s a simple survey.

    They can fill it online, just a few questions, and we’ve been getting more information. That’s a pretty recent thing we’ve done in the last, like, ninety days. And coming in that channel, then we’ve got a mix now of, hey. You know what?

    This is working well for me. Or, hey. I’ve got this issue. I tried to do this thing and it didn’t work.

    Or, hey. I’m one of those people that just will never like AI and the whole thought of bots. I just like people. So we we see all that in the feedback.

    But we, again, are you know, just roll up our sleeves, try to find any avenue we can to get that information, and then work those channels where we can drive change.

    Okay. So now this question is about fraud.

    Have you experienced any fraud where bad actors are getting past the authentication method to access member’s account?

    We have not. You know, to our to our knowledge, we have not had, you know, members complain that, hey. Somebody came over the phone system, you know, and accessed my information without, you know, my knowledge specific to that.

    You know, we do leverage some of the tools, of course, that that interface provides like the base package, and we are in the process of implementing the more sophisticated caller ID forensics, because you also don’t know what you don’t know. Right? So, no, we have not had any big, you know, fraud experiences since we’ve gone with the IVA.

    Okay. Okay. So, Todd, this is a question about, kind of getting adoption. So what kind of instruction training tools do you use to help your members adopt using AI?

    Yeah. Absolutely. So when we went live, you know, one of the things we did prior to go live is we said, hey. Our phone system’s going to be changing, and we’re gonna introduce you to this new capability.

    And here’s some common things that this, idea can do for you. You know? So we we gave them basically a nice glossy short, you know, cheat sheet if you will of, hey, I can move money. I can check a balance.

    I can do that stuff just with a few key phrases. So it, a lot of early education and that helped, you know, to some degree. We post things on our website saying, hey, if you wanna use the IVA, this is what can do. And we keep kind of a running list there of the things that it that it’s capable of.

    So a fair amount of education. And then when people come through to the call center, we’re always encouraging our call center staff that if they if somebody comes through and says, hey, you know, I wanna move a hundred bucks from checking to savings, that they’re taking a minute to say, you know, next time if you’d like, you can do this yourself.

    You know, and you can do it in the phone system and it’s super easy and here’s all you have to do. So, you know, we we use those different avenues, just to continually educate, you know, the members on what’s possible and and because it’s dynamic and we’re we’re always adding new intents and experiences. So we need to have constant education in that regard.

    Okay. So the next question, I think you kinda answered it, but let’s make sure the answer is clear. So how does your monthly call volume for phone banking compare to your old phone banking?

    Yeah. Yep. So, yeah, we’re we’re up from like, you know, fifty seven hundred, fifty four hundred a month, you know, prior to go live to eight thousand calls now, you know, eighteen months later. And and part of that, of course, is because we’re growing as an organization, you know, etcetera.

    And it’s and so it’s been extremely beneficial that as we’ve grown in that kind of call volume, we have not added to staff at all, in our call center because we have, you know, the the level of automation that we do. So with us, because it was a small call center to begin with, it wasn’t about efficiency and replacing staff. It was about being able to scale. And we’re we’re absolutely seeing that come to fruition.

    If we did not have this, we we, of course, would have had to hire additional, you know, call center staff to even come close, you know, to the ninety four percent, you know, answer rate, you know, and the and the one minute hold times that we have today.

    And we’ve had success because we freed we freed even with the increased call volume, we freed up some capacity. And we’ve done things like, transition ITM support, so interactive tele machines. That support which used to be handled by branch staff is now handled by the call center because they had, capacity to do it, with the same five people, you know, six people that we had prior, you know, to this go live. So we have seen those benefits and we’ve been able to to leverage that additional capacity in in new ways.

    A lot of people don’t realize that, there’s a huge amount of abandonment rate because the wait time is so high and so on. So they say, hey, AI has come in. We should see a decrease in volume, but initially, probably doesn’t go down because more people are able to get in. Right?

    But the natural curve will bend because of the AI automation, and the customer member experience will improve dramatically as well because wait time goes down. They are able to actually reach you and so on. Right. Okay. So then the next question, I’ll answer it. This is about, we currently use Genesys for our IVR.

    Would we be replacing that? So Genesys obviously does IVR, but also it is your full kind of ACD system. So we don’t replace Genesys completely, but you don’t need to use the IVR function of Genesys.

    Our technology will basically be the IVR replacement. Like, Todd replace their existing IVR with AI voice, and they continue using RingCentral, it’ll be very similar with any, technology. So, we can sit behind IVR, but we highly we don’t recommend it. It doesn’t make sense.

    And, generally, you want to replace your IVR with the voice AI kind of technology. Okay. Other question is kind of technical. Is the biometric authentication done through an integration with online banking? So typically, the biometric integration is, done with whatever your source of truth is for the phone number. So, generally, that’s the core. So we will send a link to do the biometric authentication to the number associated with that account.

    Todd, do you wanna add anything here?

    No. Yeah. I mean, that’s that’s spot on. So, yep, it’s gonna look at the primary phone numbers that, you know, that you have in the core, and that’s what it’s gonna send those authentications to. Yep.

    Yeah. Yeah. Wherever your source of truth is is where you will do the integration for that.

    Mhmm. In general, we we can do integration with, online banking, especially relevant for, AI chat. So in the AI chat model, we can basically do integration with the online banking Or you can authenticate them separately from online banking depending upon, your, online banking vendors support for the single sign on kind of an approach.

    Okay. Then the next question is, is the learning model separate instance for each FI or combined with other financials?

    So we are learning from all the impression we are having across the FIs.

    But we are not using, kind of identifiable data from different FIs. It’s purely for learning. So we do learn from all FIs, but it’s not really kind of identified and, and stored in in that way that this is the learning coming from this FI. This is more like, okay, anonymous learning from different app, FIs.

    Okay.

    So this is again a technical question.

    AI has come a long way since early chat GPT versions, but it’s still a concern out there that this AI solution can make errors. How does it interpret the address error rates and eliminate any errors that are made?

    Yeah. So in general, the chat GBD kind of technology has improved a lot. You might have seen that in your kind of the, kind of the personal life, experiences as well.

    Then from the interface dot AI perspective, we have invested a lot in kind of grounding the answer into the your knowledge.

    There are various kind of technologies and approaches you can use to do that. And, our answers are, kind of better than human accuracy in terms of business and integration.

    Can AI make a mistake? Yes.

    But we are seeing that the right of error is actually less than a human making a mistake. And actually AI can act provide much more consistent answer than kind of the human in the contact center given that there was short tenure, the and there’s a lot of turnover and so on. So in a way, AI performs better than the human in the contact center.

    And then also there’s an up and down kind of, you can reward the answer up and down. So we learn from that as well. And, of course, there’s a huge amount of QA you’re doing before you’re going live.

    So, Todd, anything to add there?

    No. Like you said, there you know, you just do a lot of QA to submit you know, test all your use cases, your edge cases, all those types of things. You’re you’re, of course, gonna find things, and that’s time well spent.

    Okay.

    Believe it or not, I am out of questions and we are out of time at the same time.

    So really appreciate, our panelists. I thank you, Todd, for taking the time to join us. You, Todd.

    Thanks for having me.

    And, again, thank you all for attending on a summer Friday. Really appreciate your time.

    Reach out to us if you would like to continue the conversation, and, we’d love to engage with you guys. Thank you.

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    Prospera Credit Union’s Journey from IVR Phone Banking to AI-Powered Member Service Excellence

  • Voice AI, Chat AI & Employee AI
    live in under 8 months
    Key Takeaways
    Speakers
    Christine Wiley
    President & CEO, Affidian Credit Union
    Srinivas Njay
    CEO and Co-Founder, interface.ai
     

    Good afternoon. Thank you everybody for joining on this webinar.

    We have a special guest from Afidian, Christine Wiley. She’s the president and CEO of Afidian.

    We also have Srinivas joining us. He’s the founder and the CEO of Interface dot ai, and I’m the host of this meeting.

    Also, we will have Hari joining us to show us a demo of some of the products.

    So the agenda for the webinar, I’ll quickly introduce Interface dot ai.

    Then we’ll talk to, Christine about her experience with, our solutions.

    And then she will come in and, talk about where the AI is going.

    Kind of, ultimately, AI is going toward the agentic AI. And we’ll show you the agentic AI demos as well so you can get a feel for, where the agentic AI is going. And then we’ll open it up for q and a, and, we’ll be more than happy to take your questions.

    While the webinar is going on, please feel free to type in your questions. Some of the questions we’ll answer right in the in the q and a section, and some of the questions we’ll reserve and we’ll kind of answer at the end of the webinar.

    Okay. So before we get started, let’s get a feel for where everybody is in their AI journey. So, Kate, if you can start the quiz.

    I’ll give you a minute or two to fill out the quiz. So we are basically figuring out, where you guys are on, your voice AI journey, chat AI journey, and employee AI, whether you guys are deployed it currently. And if not, what is your plan? Like, is it something you wanna do this year, next year, year after next, or no plans at all?

    So there are six questions.

    Appreciate you taking the time to let us know where you guys are in your journey.

    Okay, Kate. Maybe we can see the results.

    Okay. So it looks like, majority ninety four percent of people don’t have voice AI. So, hopefully, what you hear and see today will give you a good feeling of what voice AI can do for you.

    And then on the chat, fair amount of people have already deployed chat, so that’s kind of my experience as well. I see a lot of chats on different websites.

    Employee AI, let’s see where we are. Yeah. Employee AI. Yeah. This kind of fits with, kind of my gut feel as well. Measure the people are very early in figuring out what to do with the employee AI.

    Great. So you’ll learn a lot from this webinar. You’ll see the demos. You’ll understand how Christina has deployed it. So this will be very, useful webinar for you guys.

    We I have a leaf blower guy outside, so hopefully you guys can hear me.

    Okay. So let’s get started with, about interface dot ai.

    We have been in the business for almost ten years, and we are focused only on credit unions and community banks.

    We are kind of mission driven. Our founder comes from the community, banking background in India. We call them corporate there. And, he has brought his and his family’s experience to basically build the solution for the credit unions and community banks.

    We have about hundred customers using our solutions. You can see some of the logos here.

    Pretty much we have customers in every state, and, they have been successfully using our AI voice technology, getting, kind of, automation in the forty percent to seventy percent range, depending upon where they are in their journey.

    And then we have customers who are using AI chat and AI voice as well. So as you can, kind of, get from my commentary, we have kind of three major solutions. One is AI voice agent for call center. The main idea there is to automate the calls. There’s more to that, but that’s the main idea. AI Copilot for website and mobile app. So this is where, on your, website and mobile app, you can put, the AI chat agent and it can answer very common questions coming from the customers.

    Then similarly, we have a AI Copilot for the frontline employees.

    So this is either your branch employees or your contact center employees being able to query, and get answers immediately, to the questions, the customer might ask either on the phone or in the branches.

    And then we are also working on the agentic AI solutions which is, Orbit, Spear, and Nexus. That’s the kind of the brand name for our solutions, and we’ll show you the demo of that as well. So we have been kind of solving the, providing the solution to the credit unions for, about ten years. And, we have this kind of data advantage.

    Right? So we have we have served sixteen million members. So we have heard, sixteen million members saying the, same thing in very different ways. And we, we have understood that and we have kinda learned from that.

    So we are able to kinda handle those kind of transactions much more effectively than most of our competitors. Right? Because we have been doing it for longer. And we are kinda doing one point five million conversation daily, which is again giving us this data advantage to understand the context, of the people, in our industry.

    The accent, the the different difference where they say the same thing, and so on and so forth.

    So if you’re to kind of look at it visually, we we have built a solution on the agentic banking platform. So this is where all the, learnings have gone over the ten years. So a banking platform provides the services to our solutions. This is where we have this knowledge graph.

    We have the, kind of the guardrails to make sure we are answering the questions properly. We have all the, kind of the, the the data we have processed. We have learned from the data. This is where our the, the understanding, of the language kind of sits.

    And then we surface it to, all the the solutions we provide.

    Underneath the banking platform, we have integrated with, pretty much all the major cores and LOS and so on and so forth. We have forty plus integrations for in our banking platform. So it gives, majority of the customers a very fast start where we already done this kind of integrations.

    And unlike other vendors, we actually have built our own fraud, prevention solution as well. So, biometric combined with the call center, sorry, the call, I’m drawing a blank. CallForensics, combines us together to provide you the fraud prevention solutions. And you’ll see that, as we go along. So this this is something which is kinda comes in built in, and you don’t have to look at third party vendors for that. So it makes it very easy for you to, to, make sure that you have a, kind of, one of the critical issue we have in the industry is, people trying to commit fraud with a fraud solution. You’re a very, very solid solution.

    Obviously, the AI can cannot answer a hundred percent of the questions. So the questions which should go to the, to the call center, human agents, you already have done the necessary authentication and so on. So it saves the time when the call goes to the human agents. So again, voice AI, employee AI, and chat AI, the solution sitting on top of it. And then we are working towards spear, nexus, and orbit. We will which are agentic solution. I will show you the demo of this in in few minutes.

    Okay. So there was kind of a high level overview of, interface. So let me bring in Christine. So, Christine, please introduce yourself and tell us more about Effidian.

    Absolutely.

    Thank you for having me, and I I appreciate the opportunity to speak today about our experience.

    Afidian Credit Union was founded in nineteen thirty eight by, about seven Denver police officers.

    And at the time, we only served Denver police. And over the course of of several decades, we expanded and and took in about twenty six additional law enforcement agencies, but still we were very specific to serving law enforcement.

    And, growth presented member growth really was presenting a challenge.

    As law enforcement and just people change in general, we weren’t seeing the same type of participation in academy classes and the need for banking. People were already established and, didn’t really feel the need to have an affinity with a a credit union that just served law enforcement. So, we expanded our char charter in two thousand and twenty two, and we now serve state and local government. So quite a large expansion, but we still had the name at the time Rocky Mountain Law Enforcement Federal Credit Union because we had changed that several years back. So, again, that name being very prohibitive to growth because if you might be a potential in a school district or somewhere, you know, the the name law enforcement doesn’t think that you’re make you feel like you’re probably welcome. So, we we embarked on a rebranding journey that took about two years, very long process. It’s very painstaking, this being the second name change for our credit union, and, ended with Afidian.

    And that, we just launched and introduced to members March thirty first of twenty twenty five. So we have a lot more potential members than than we’ve ever had. And, you know, our journey with AI started several years ago, you know, when you could have a chatbot, but they were not smart. So you you could program it, and it could only do so much. And it did provide somewhat of a solution more in an after hours capacity of the, you know, basic what’s the routing number and, you know, locations, shared branch, those kind of things. But it didn’t go really beyond that. So, we I think we got in on that pretty early.

    But as AI started to advance and we see, you know, generative and, you know, smart learning, basically, machine learning, we knew that that was an option and something that we would we want to participate in in as well. So, our credit union service about fifteen thousand members right now. We have three branch locations.

    We have about forty two employees, very small in that footprint, and, but we’re just about just over three hundred and forty five million in assets.

    So, our our strategy for AI is really to be very open minded and look at what’s available.

    There there are so many things that AI can do, whether it’s, you know, specific to loans or loan approval or, you know, fraud detection.

    There’s just a lot. So, you know, we want to look at it enterprise wide for our organization and, you know, to see what kind of efficiencies that we can create, consistencies that we can improve, service both to internal stakeholders as well as members. And I think that being the impetus for really looking at a solution, like Interface. And, with fifteen thousand members, our call volume was never a problem. So I know a lot of institutions, and I know when I was looking, you know, for for a solution here, I talked to a lot of references as well.

    And, typically Christine, maybe we can hold off on this, let’s just kind of go through the slides.

    Sure. I’ll come back to the, the the point you are making.

    Okay.

    So so, Afidian has deployed our AI voice solution, AI employee solution, and AI chat solution. There are two modules with that, smart discovery and smart transaction.

    So let’s dig deeper and, first show you the demo of the, phone, AI voice, and AI chat solution.

    And then after that, Christian, I’ll come back to you and we will talk about, what are the problem you’re trying to solve and and so on.

    Sounds great.

    Okay. So real quick, on the AI voice, if people haven’t experienced AI voice, the way it works is basically your existing number remains the same.

    Once you deploy our solution, you’re kind of replacing your traditional legacy IVR. Legacy IVR is you call the number, you press one, or two and so on to go to different department, and you might potentially have a phone banking system where people are able to basically punch numbers and get, some phone transaction some, banking transaction done over the phone. So that’s kind of the current environment. So looks like majority of the people who are attending today actually have that IVR system.

    The AI voice system we provide replaces the IVR, and then it becomes an, a system where you’re naturally talking to the person who is calling in. So the person who is calling in, instead of, kind of hearing this robotic voice and saying press one and two, And then all the calls going to the human agents, this AI voice will basically act like a human, but, obviously, you don’t want to pretend as a human. So generally, you’ll give it a name. In the case of a FIDN, they call it Aspen. And when you call Aspen, or call the person with AI voice, then the the the phone will be picked up and will say, hi. I’m Aspen. I’m the voice AI.

    I can answer, most of your question. How can I help you? The customer will say, what is my checking account balance in a natural way? Right? We our AI understands that the intent is to get the checking account balance.

    We are able to, basically go and make a call to your core, figure out what the, balance is. Obviously, we do it after authentication.

    Once we authenticate the user, we figure out the, what the balance is. We give the response back to the customer, and they say, how else can I help you? So you’re continuously convert conversing with the caller in a natural way, and Harry will show you the demo and it’ll become, kind of, more, clear on what the AI voice does. Then the other solution is AI chat, and AI chat is sitting on your digital properties. It can be either a mobile app or your website, and it serves four different functions.

    The first function is, smart discovery. So this is basically AI powered search. So anybody coming on your website most of the people don’t want to kind of navigate the website, and find the page and read the page.

    Everybody’s getting used to the idea of chat GPT. You go in, type the question, get the answer. So this is exactly what smart discovery does. The person comes in, types a question, gets the answer. And it is all done with the generative AI, and Harry will show you the demo of that. Then the smart transaction is similar to your phone banking.

    It is but it’s designed for the digital. Right? So as part of the, kind of the natural interaction, I might come in and say I’m looking for a new loan. And then after that, you might say, okay.

    Let me figure out what my balance is. Right? And then you can do that smart transaction. We authenticate the user and do the smart transaction.

    Then so if somebody likes the the, the product or service you’re offering, which they discover through smart discovery or through navigation, they might want to fill out a form to get the, product, to acquire the product. Right? The loan or whatever. So they are to fill out a fairly long form, and the smart conversion basically helps fill out the form.

    So every field will have a helper saying, hey, this feels this is what you need to do. So think of this as a cobrowsing twenty five seven available on each of your form, and it increases the conversion rate. People who might not understand what is the VIN number, why do I need to provide Social Security number. You’re providing the assurance and the guidance to fill out the form.

    And also it helps you to understand where the drop offs are so you can kind of clarify what needs to be filled out. Right? Then, the upsell cross sell, the idea there is, somebody’s kind of asking, what is my account balance? If it is very low, then you can say suggest, do you want to kind of have the the overdraft protection and so on?

    So in in the natural flow of the things, you can suggest the right upsell and cross sell to the users. You can do that on the phone. You can do it through the AI chat.

    Okay. So with that, let me turn over to Hari to show the demos. So let me stop sharing. And, Hari, if you can share your screen and do quick demos.

    Yeah. Absolutely, Jack.

    Let me share my screen. So we’re gonna start with the voice AI solution. And, just to highlight a few, key features of our voice AI, Jessica is our demo bot. You know, and our voice AI will pick up hundred percent of your calls on day one, essentially eliminating wait times for your members, and customers and reducing abandonment rates as a result of that.

    Very quickly, we’ll automate and resolve our voice. We’ll you know, a significant number of the incoming calls, forty to forty five percent within the first month. But our goal, of course, is to take you all to higher levels of automation, sixty percent and more over time.

    And then the voice AI is available twenty four seven, nights and weekends as well. Right? So eliminates the need for expensive after hours services, overflow services, you know, while driving consistent experiences for your members during hours as well as after hours.

    So let’s, call Jessica, our voice bot, and see what that interaction looks like.

    The digital assistant. Please wait while I read the instructions. This call may be recorded for quality assurance.

    For best experience, avoid using speaker mode.

    How may I help you today?

    Hi, Jessica. I’m driving around, and I need to make a deposit. Are there any branches open?

    Yes. We are open. Our main street branch only has drive through capability today.

    Do you want me to send you driving directions to the nearest branch?

    Yes. That would be great.

    Great. Please provide me the ZIP code or city name.

    I’m in Raleigh, North Carolina.

    Thanks. Looks like there are a few branches that are open in your location.

    The branches are open from nine AM to five PM, Monday to Friday, and ten AM to two PM on Saturday.

    I just sent you a text with driving directions, and you can always talk to me whenever you need help. I am available twenty four by seven.

    Is there anything else I can help you with?

    Yeah. I just started a new business, and it’s not doing well. I don’t think I’m gonna make payroll. Can you help me skip a loan payment?

    I can surely help you with skipping a payment. I have sent you a text with the link to the application to skip a payment along with the instructions.

    Please click on the link and follow the instructions.

    Please note that the application should be filled at least five days before the payment due date.

    To assist small businesses like yours, we have removed the thirty five dollar fee associated with skipping a payment. Do you wanna know which loans are eligible to skip a payment?

    No. But can you tell me the balance in my checking account?

    Sure. I will help you with your balance.

    I see that you already have registered for device biometric.

    Would you like to verify using your device?

    Yes. Let’s verify using my device.

    Great. I’ve sent you a link to your phone. Click on it so I can verify your biometrics.

    Thank you. I verified your device.

    The balance in your checking account ending with two two three four is two thousand three hundred and thirty seven dollars and fifty five cents.

    Also, I wanna remind you that if you maintain a minimum balance of three thousand dollars, you will be eligible for an additional one percent cashback.

    Do you wanna know the balance of your savings account?

    No. But, I’m traveling to South Africa next week. Can you put a travel notice on my account I mean, my card?

    I can help you set a travel notice. I’ve noted that you’re traveling, and I have successfully set a travel notice on your card. We’ll make sure your transactions run smoothly. By the way, you’re traveling a lot, and I recommend you switch to our new credit card with no foreign transaction fee and many more benefits. Do you wanna know more?

    No. But my wife is looking to buy a car. Can you help me with car insurance?

    Sure. Happy to do that. Give me a moment. I will transfer the call to our specialist, John.

    Awesome.

    So we saw a few different capabilities in action there, with our voice bot. The first was informational ability to provide informational, responses, where, you know, if I want a routing number, branch hours, location, the bot is able to provide that information.

    But, if I want, you know, a behind the pin answer, to an inquiry, like account balance, the voice here is able to authenticate me as a member through, one of a number of different approaches that we enable, and provide me that information. Right?

    And then when I asked to put a travel notice on the account, if you all noticed, I said account and then corrected myself to say, I mean, my card. Right? So the bot is able to understand, those kinds of corrections that your members will naturally make as they speak to a human being. Right? And they can continue speaking like that to the voice bot as well. And the bot, understood that accurately and, you know, put the travel notice.

    But, it also noticed that, you know, I travel frequently internationally, and it took that opportunity to cross sell, upsell a zero foreign transaction fee credit card to me. Right?

    And then, you know, lastly, when, I asked about the car insurance, it, determined that it needs human intervention. It needs help from an agent. So it did a very warm handoff to an agent so that an agent can assist me, understand my needs for the car insurance, and then guide me down the right path.

    Very natural voice as you all heard, human like voice. We have about, you know, ten to fifteen different voices out of the box, similar experience, male and female.

    We’re also able to train custom voices. So if you wanna train, the bot with the voice of one of your team members, we are happy to do that and able to do that.

    So that was our voicebot in action. Now switching to chat AI, as Jack shared, you know, we have a number of different modules that are available.

    And we’ll cover the discovery module that we call smart discovery today. Right? So smart discovery really sits on your website, and digital banking, online mobile banking, helps your members easily find products, easily find information that they’re looking for.

    But we also have, AI cobrowsing bot, smart conversion.

    The smart transaction capability similar to what we saw on the voice AI is available on the chat AI as well, as well as the cross sell up cell module that, again, Jack talked about.

    So, let’s, look at, the smart discovery chatbot.

    And I’m on, the website of Groove Financial. Groove Financial is one of our customers.

    And as we see here, the chatbot is sitting right here on the website. Right?

    And, I can start, you know, asking questions just naturally just like I would, you know, just like I did on the voice AI as well, or at how I would speak to an agent. By the way, the bot is trained on all the content on the website. We can train the bot on not only your website, but then also any other member facing content. This is a fully generative AI voice bot. So let’s ask a few questions and, see how the bot responds.

    Let’s see.

    I have a low credit score. What cards do you offer?

    Now, as you see here, when the bot responds, it’ll tailor the response to exactly how the question has been asked. So as you see, it says, if you have a low credit score, you may consider the Grower Visa preferred secured credit card. Right? So, this tailoring is happening at one time, based on how your members are asking question. This is not a static configuration of a response. Right?

    And it’s recommending the secured credit card for somebody who has a low credit score. Now and then, of course, it’s providing a lot of details around why it believes, you know, that’s a good card and, you know, the main features of the card as well. But if I scroll down and click on the view more over here, I’m taken to the website, and the bot automatically scrolls and takes me to the right section of the website as well where the product information is available. And it highlights the relevant product as well as you see here.

    Now if you look at, the content here, you know, what it says is if you are looking to build or rebuild credit, this is a great card for you. Nowhere in the description for this product does it say, you know, this is for somebody with a low credit score. Right? So what’s really happened is our chat AI has learned and consumed and understood the semantic meaning behind the content on Grow Financial’s website. It’s not just doing a text based match.

    And based on the question that the member is asking, it’s which was about low credit score, it’s able to find the right card even though it says that this is for somebody who’s looking to build credit. Right? So it’s able to do that, complex matching, meaning based matching, semantic matching between the question that the member asked and, you know, the answer and the right product that it needs to point them to.

    So let’s let’s ask, you know, another question here.

    Recently, I decided to buy a restaurant.

    Any loans I can get?

    No. Again, you know, on rules, let’s say, there is no content specifically around, you know, products for somebody who’s looking to buy a restaurant. Right? But the bot is able to understand that, you know, buying a restaurant is a business, venture.

    Right? Business endeavor. And it’s providing various business related products, commercial real estate loans, SBA loans, line of credit, equipment loans, and so on. And then it’s saying consider discussing your specific situation with a loan officer, you know, if you want to, you know, further deep dive into any of these.

    Right? And, again, this is a great example of where you cannot control how your members will ask a question. Right? This individual just asked, you know, what do you offer for somebody who’s buying looking to buy a restaurant?

    They didn’t ask for what business products do you offer. Right? And the bot needs to be able to understand the questions the way the member asks them and be able to provide the correct answers.

    And that’s really the power of advanced fully generative AI, chatbots.

    Let’s ask one more question here, and, this will be around, you know, kids’ products.

    I’m gonna help my child get started. What do you offer for kids? And as you see here, by design, by intent, this is a very vague question. Right? I’m not asking for specific financial products, but, notice how it’s tailoring the respond response. You know, to help your child get started with financial literacy, we offer the following options.

    And it talks about youth savings accounts, activities for learning, you know, and then provides the links to, various products as well.

    Yeah. Thank you, Harry. Anything else you wanna show or should we move on?

    No. This is it, Jack. Over to you.

    Okay. Great. Okay. So let’s continue, with the next topic here.

    So she showed you this very compelling demo of AI voice and AI chat. So this on the AI voice, I just wanted to kinda highlight some of the capabilities here.

    The voice, as you might have heard, is very, natural, like a human voice. We also support custom voice. So the use case here is if you have a kind of a brand affiliation with a local celebrity, you can use the voice of the local celebrity and that voice can greet the customer and basically be your personality of your, voice AI.

    Or you can use a voice of an employee, which is a very good voice and so on. Right?

    Better than human understanding, the ASR, speech recognition, automatic speech recognition.

    Again, our data advantage, we understand all the financial context and really, like, when somebody says checking, we know it’s checking irrespective of the accent instead of saying chicken. Right? So some of the systems I have seen, don’t even understand the checking properly. So our ASR is finally tuned for our industry.

    The device biometric, again, a very effective way to authenticate the users.

    Very simple to use. Everybody’s used to using iPhone and doing face recognition to get in. And this is becoming the industry standard, and it’s kind of built in into our solution.

    Caller ID forensic to make sure that people are calling, are not, trying to commit fraud. So this is a great defense for that.

    Obviously, we need to transfer to the humans, when the AI cannot answer. So the idea is to do a contextual transfer so that when the human picks up the call, he the human can continue from where the AI left off. So the AI is basically giving the summary, giving the sentiment and so on, and giving the status of the authentication and so on, and then passing it to the human agent. And human agent instead of saying, how can I help you?

    Say, I see you did this with AI and then continue from there. We can handle complex interaction like joint and trust accounts, upsell and cross sell we talked about. And the analytics analytics, obviously serves the use of the usage, but also it provides you what are the question AI is not answering right now. Right?

    So you can say, say, okay. Here’s a question we are getting about cards, and we haven’t done integration with our card system. Maybe that’s the next integration we should pursue so we can cut off we can kind of automate five percent or ten percent more calls. Right?

    So this is where Harry mentioned you start with forty percent and get to sixty percent plus is generally driven by more integrations with your kind of back end systems.

    Then real time interruption. So similar to, like, IVR. Right? When I when I’m calling the business, which I’m very familiar with, and I’m familiar with the IVR menu, I’ll call, press two, then I’ll press eight. Right? Because I know this is what I need to do.

    Same thing will happen with, your, the voice AI.

    A lot of peep people will know that if I ask what is my account balance, the AI will obviously answer the question in a full way. So your account balance is this. How can I help you? But if you’re if you know this is, kind of the general response, you don’t have to wait for the AI to complete. As soon as you get the information you’re looking for, you can ask the next question. Right? So it makes it kinda more natural, in interaction.

    Then the initial response. So as soon as the person is talking, we are converting the voice into text and and, then we are kind of figuring out the intent and and answering the question. So it makes it fast to answer the question.

    So the kind of the tap tap noise you hear when the AI is thinking, that either goes away or reduces.

    Obviously, you don’t want the radio silence. So depending upon how far the response is coming, you you might hear one tap or two tap rather than five taps before the answer comes in, or you might hear zero depending upon the speed of the answer. And then, of course, a lot of questions require a text response. For example, what is my routing number?

    You can read the routing number, but it will be very nice to get it in a text. So it is saved there for the future use. What is the location of the ATM? Send it to our text.

    Right? So combining text and voice, you can provide more effective answers.

    Then on the AI chat, as you saw, you’re basically chat jeopardizing your website. So nobody wants to surf the websites anymore. They want answers.

    And this is the great way to get answers, and as Harry mentioned, we are learning from your website. Then phone banking without the phone. So everything you can do with the phone banking, you can do it on in the AI chat as well. Right? So you can make it part of the natural, experience where people sometime you’re discovering, sometime you’re doing transaction, everything is happening in the in the one AI chat window.

    Smart conversion we talked about. Right? Device biometric applies at AI chat as well. So we can send the link, and then we can authenticate the user. Upsell and cross sells, we talked about this concept.

    Escalate to phone. So we our thesis is AI chat is powerful enough that it will automate eighty percent of your calls. And then for the rest twenty percent or so or ten percent or so, do you want to put live chat, or do you want to basically transfer them to the voice?

    And the reason to transfer the voice is, like, those are complex interaction, and they might be better handled with the voice call rather than bringing the live chat agent. Right? So if you kind of agree with the thesis, then you can see the implication of this. Right?

    So you don’t need a separate a live chat system. You don’t have to pay separate money and separate resources to handle live chat. You can say, okay. Let’s really go big with AI chat, handle pretty much all the interaction, and the complex one are ultimately getting to the phone anyway so you can bypass the whole idea of going to the live chat.

    But, again, it’s optional. We do integrate with Glia and L Tropy from the chat perspective, but you should think through whether you really need live chat or not. That multimodal UX idea is that when you give the answer, you want to not only not give the answer always in a text form. You can bring up the UX, for example, credit card.

    You can show the credit card as a carousel and people can select, kind of, browse through it and figure out which credit card they want. Live chat integration, we integrate with all the live chat systems, out there. And then again, similar to voice AI, we provide, very compelling, analytics, as well with AI chat.

    Okay. So let me, kind of quickly, point you to if you wanna try the FEDN, SPIN, you can call this number or you can go to SPIN’s, FEDN’s website and you can interact with SPIN, on the website, over there.

    So, Christine, let’s continue. Sorry for cutting a shot over there.

    So That’s okay.

    Yeah. So what are the problem you were trying to solve for your members and the credit union? And you’re kind of answering that. So let’s continue with that.

    Absolutely. So, I mentioned call wait times, call abandonment. Those are typically, I think, some of the number one priorities that financial institutions will will try to solve for. And and we didn’t have that problem, with the size of membership that we have.

    And we have a, a contact center with four individuals. The call volume split over four individuals, including the ability to handle chat at the time was was not problematic. But we knew with the expanded charter and the potential growth, once we change the name, that may change. And we didn’t want to end up, you know, having an issue with service or abandonment times because we, from the member’s perspective, may look like you changed your name, and now we can’t get through on the phone and, you know, service has gone downhill.

    So we wanted to identify a solution that would help us, before we actually had any kind of an issue. So we wanted, something that would be scalable, that didn’t require that, you know it’s hard to onboard new employees quickly and have them know all the things they need to know.

    But you can absolutely put an AI solution in and be able to ensure efficiency and consistency.

    And, you know, again, I I touched on improved absolute improved service for the members, but for the employees too. Because, you know, if you’re using the the frontline assistant in the branches as we are, we have integrated that solution so that within we’re we’re a Scimitar Credit Union. So within the experience module, they can actually click on the frontline agent right there. They don’t have to try to, you know, go to a new link or or find something. I think the integrations are are really important, you know, to the degree that we have those available. So, you know, we were just trying to to be ahead of any issues and not and and not allow a problem that we have to solve for.

    Yeah. Christine, the next question I have for you sorry. You’re saying something? No. Okay. So how did you go about the partner selection process, and where did you look for the partner, and why did you go with us?

    Well, oftentimes, you know, we we will utilize the vendor halls at conferences. We you know, there are key key conferences that we attend, and, we really use those as an opportunity to search and, you know, seek providers that that we’re trying to identify. So if if we’re looking for something in this realm, then we will utilize those and and then start kind of our search and the due diligence process, references, and demos, and and more demos, and more conversations and and those type of things.

    Okay. And the reason for choosing us and, what did you kind of find that tricky about it?

    Well, I think the history, the years of experience, the number of engagements that you have every day with consumers, the foundational out of the box solution based on the business that’s already been built, I think is a leader in the market.

    The the other part of that that I I I believe to be true, especially now on this end, Interface, you you you all have, you know, become really good business partners, and I think that’s always true typically on the sales side, but on the support side, it’s more important. And, you know, you can see from, you know, when we implemented, we’re still, you know, still brand new, but we still have, you know, a weekly meeting. And, you know, I feel like you’re you’re right alongside us trying to if we identify something that like our Aspen, we we don’t like the look of Aspen.

    We think it would be more friendly for our members if it looked more human and less robotic. And to be able to partner and come along and give us some options and solutions, it it really is an indicator of a true partnership because it’s a win win.

    Right. We want to be able to be a really good customer and and a voice for interface because you, you know, are are doing that and and such a good partner for us. So it’s it feels like a good, you know, mutual engagement.

    Yeah. Yeah. And Christian and I are actually working on something cool, using the latest, v o three technology to kind of bring, humanize the whole, AI voice. So that will be coming soon on their website.

    Okay. So, obviously, implementation.

    This is one of the, thing which worries the credit unions the most. Like, how complex is the integration? How do we go about structuring our team? So can you please talk to that, Christine?

    Yeah. I think that’s critical point, with any project is to identify who needs to be internally on the project and to make sure externally on the other side that that you have strong players as well.

    You know, not not in this example, but we have had projects where we get someone on the the opposite side that’s like a brand new project lead. And, you know, those kind of things aren’t conducive to a good start, and and that’s not been the case at all with Interface. Everybody’s been fully engaged, very knowledgeable. And internally, we have a very strong team, but a very cross departmental departmental team. So very high IT participation.

    We have our trainer participating. We have the head of our digital branch participating, and then we have, two other executives participating. And, you know, these are weekly meetings. There are often in between meetings, assignments, and you’re, you know, you’re filling out things that need to be filled out so Interface can take it back and build it. And, you know, so make making sure that, internally, those teams are staying on timelines and, because our implementation was quick. Jack, would you say? Agree?

    Yep. Mhmm.

    Yeah. Very quick. So I think, you know, you you have to identify how big of a priority this is as an organization and put the the required resources necessary to get there. But but other than that, it’s it’s been a great project.

    Great.

    Okay. So moving on.

    Could you share the best practices for FIs looking to adopt the solution? So you kind of answered that question a little bit, so let’s just go a little deeper.

    I I one thing I would say for sure is, well, that that’s a great lead in, is is definitely buy in. Right? Is to, you know, have conversations, you know, before it’s just, you know, the present sitting on someone’s desk. Right? So that that people get an opportunity to participate in decision making, understand the need, and the the app the potential benefit.

    And, I did mention making sure you have the right internal team.

    Make sure you find the right partner.

    Absolutely. Communication is critical. In between our weekly meetings, there are numerous communications that go back and forth. So it’s not, meet on a Tuesday morning and we’ll talk next Tuesday. It’s a continual based on, you know, things that that are going on or or we may be reading a transcript transcript from an engagement and want, you know, to to change something a little bit, and so we can you know, we don’t have to wait for those meetings. So communication is really strong.

    And what else?

    Yeah.

    So Ongoing commitment.

    I mean, you know, we’re months and months in, and, you know, the commitment is as strong today on both sides as it was, you know, even at kickoff.

    Yeah. Yeah. So this is so critical. Right? It’s like getting the AI to handle the calls and chat is like hiring an employee.

    For interface dot ai kind of gives you the employee which is kind of trained on seven seventy, eighty percent of the intents. But obviously, you need to kind of make it work for your brand and so the questions which are relevant to your brand, which are unique to your brand.

    So putting that work upfront, we And ongoing.

    Because I think you have to you know, once you have everything up and running, you know, like for us, we have goals and I think, you know, we’re we’re sitting up about forty eight percent. I think I looked, you know, earlier this morning, on, you know, the autumn automation adoption. And, you know, we wanna continue to have that number grow. So it means, you know, looking at the transcripts and identifying things that both sides can do. And we’ve done call out campaigns for members, trying to educate members, and and things like that. So I think it has to be, you know, kind of ongoing.

    Right.

    Yeah.

    Great. Okay. So let’s, switch gears and talk about, the employee AI. Employee AI is basically the frontline assistant.

    And, let’s kinda go into the demo. So, Hari, I’ll stop sharing and and I’ll show the quick demo, please.

    Yep. Absolutely. Let me, share my screen and, walk you through the demo. So as you see here, I’m logged into, employee AI, and, you know, there’s a call that’s waiting here.

    Right? So I click on the call. The agent picks up the call. Now there’s a number of different, you know, pieces of information that are presented to me, as a, MSR.

    On the far right here, as you see, the full authentication status, including caller ID forensics, you know, that was applied on the call is surfaced to the agent.

    That way, they don’t have to reauthenticate the member, spend another sixty to ninety seconds, on authentication. That’s an immediate direct, savings and a positive impact on AHT.

    In the middle of the screen here, the full context of the conversation, the full transcript, you know, the conversation between the AI and the member is also conveyed to the agent. That way they know what transpired and what was the reason for the transfer.

    Right?

    Now, because, you know, it’s a single unified AI brain that goes across, our member facing solutions and employee facing solutions.

    The AI takes the reason for the transfer, goes and searches your policy procedure documents, and finds the right resolution and presents it to me.

    Now if I click on view document, I can, you know, verify that it is coming from the correct document.

    You know, that way I can make sure that the AI is not hallucinating and, you know, it it is providing me the information from the right place.

    So this is a knowledge assistant capability, but our AI goes beyond knowledge assistant.

    Now let’s say I want to help a member lock a credit card. Right? So in other words, perform transactional activities on behalf of the member.

    You know, we integrate with not only your core on the employee AI side, but also your lending system, card processing system, you know, really all the system that your, agents, MSRs need to swivel chair and work through.

    And our employee AI presents that single pane of glass, where agents are just, interacting with the employee AI, and employee AI is then integrating and interfacing with those back end systems.

    So let’s say a member wants to lock a credit card. You know, the suspect fraud has happened. They no longer want to use that card.

    So all, I do as an agent is, tell the AI to log the card ending in, the last four digits for this particular member.

    And, the AI takes care of doing the locking. Right? So it’s going and finding the card for me, and, it’s gonna ask, you know, if I really want to log this card and, not use this card anymore.

    So as you see here, you know, it formed that it’s a cash back credit card attached to this particular customer. You know, are you sure you wanna log this card? So let’s go ahead and say yes. And it connects to my card processing system and then takes care of locking the card.

    Now and then it’s asking me, you know, is there anything else I can help you with? Now this member doesn’t want plan to unlock this card. They just want to apply for a new card.

    So let’s say, apply for a credit card.

    It’s as simple as that. Right? Your, your agents are conversationally interacting with Frontline AI. And as you see here, the Frontline AI provided, details on, you know, how to apply for the card as well as, you know, a link to the document here.

    But then also what we see down here is a view experience. Now what this is is, you know, for this particular, organization, the member facing AI, the self-service AI, has been trained to take a credit card application just through self-service.

    And because, you know, our AI engine goes across all of our solutions, The AI engine is able to take that training and make it available on the employee AI, to enable your agents to take a application on behalf of that member.

    So let’s click on this view experience, and, that, triggers that, workflow. And as we see here, it’s saying, sure. I can help you take a credit card. Now it’s gonna coach, me to ask, specific questions of the member that’ll help the AI complete that application.

    So it’s saying, please ask the customer what type of credit card are you looking for, and I can suggest, better options for you. So let’s say the customer wants to stay with the cashback credit card. The AI provides the details on the cashback credit card in a very easy to consume fashion for the agent, including all the key features, you know, of the card, and it’s coaching the agent to read it back to the member and, you know, get a response. Right? So let’s say the member is satisfied. You know, I go ahead and click on satisfied. Now it’s connecting to my lending system.

    And, it’s gonna, you know, take that application, you know, just conversationally here. Right? So it’s asking me to confirm the customer’s first name, customer’s last name. It just needs a few pieces of information here.

    Date of birth. Let’s provide the date of birth.

    The, annual income, and then, the contact information.

    So let’s provide the contact info as well.

    And as you see here, sensitive information is masking. So, you know, it’s, summarizing the information. You know, it’s asking if everything looks good to me.

    I say, yep. Everything looks good. So it goes ahead and submits the application. Right?

    And now it’s taking the opportunity to present a money market account to me because, you know, it knows based on member behavior that folks who, have in the past applied for this credit card also very likely sign up for a money market account.

    So, you know, the cross sell, upsell aspect that we saw on the member facing side, is also available where we are coaching your agents to engage in those cross sell upsell conversations.

    Now this is so important because as we all know, we hire agents for exceptional service skills, not sales skills. Right? So having a tool like this and AI being able to coach your agents and assist your agents in presenting these upsell, engagements, becomes a very powerful, utility for them.

    So, yeah. So so this is the branch experience or rather the contact center experience. Now if I exit out of this and, go to the branch experience, we do have a branch experience as well for your employee AI, where, you know, let’s say a member walks into the branch and, they are interacting with your member facing staff.

    AI is available to them as well, to enable them to drive the same consistent high quality experiences for your members. So let’s say a member walks in and wants to know if there is a specific policy procedure that they need to, adhere to in order to withdraw a large sum of cash.

    All the agent needs to do there or MSR needs to do the branch employee is just ask the AI.

    Just large cash order. I’m not even typing a full sentence as you see here. Right? And, similar to what we saw with the contact center experience, the AI is able to summarize, you know, the the procedure and policy for withdrawing a large amount of cash.

    And, similar to what we saw in the contact center view, I’m able to click on the view document. And, the AI not only opens the document, takes me to the right section of the document, and then highlights, you know, where it got that guidance from. Right? So that I can very quickly verify it is coming from the right source.

    And then the last piece I wanna show here is, our knowledge repository and, you know, some of the, related features here. Right? So as you see here, we are uploaded, and you’re able to upload, your policy procedure docs within our platform.

    This is not a replacement for a full fledged knowledge, management system. So, usually, what our customers will do if they have a SharePoint and or another knowledge repo, we’ll just point to their existing repo. That way, they don’t have to replicate and duplicate their documents.

    Thank you, Harry.

    Okay. So, to summarize what Harry showed you, AI conversation summary coming in, gen AI answers for your employees. As Christian mentioned, this is helping her employees answer the question faster.

    Automated actions, which we, Harry showed you. Authentication and caller ID status, is borrower. So when the call is transferred to the human agent, they can, save a minute or two. Upsell and cross sell, Harry showed you that.

    Third party app plug ins. So this is kind of differentiate differentiator for us. Right? So it’s not just we are answering the questions, but we are making it easy to take automated action into your into your back end system.

    So a call center agent doesn’t have to go to seven, eight, ten different application to do things. They can simply click buttons and get things done. So it is a huge productivity gainer there. Knowledge management, you can we can point to your knowledge management system or we can kind of act as one.

    And then you can have role based access control. So you can say only these documents are only for loan officer. These are for collection officers and so on and so forth.

    Okay. So, Christine, if you’re, back, let’s talk about, the employee AI. Like, what are the problem you’re trying to solve and, with the frontline assistant for your credit union?

    You bet.

    So organizationally, we had Pat well, we still have, but we utilize SharePoint a lot. We have a shared internal drive as well where there’s a lot of documents, and there’s just a lot like like we talked about fragmentation of where to find data and resources or the the most recent form and those type things. So, you know, when people can’t find things and there’s just too much for somebody to have to retain, you know, without having the resource to go to, you you end up having sometimes wrong answers, inconsistent, you know, or inconsistent answers. And so we would see team teams chats a lot.

    Internally, we call it phone a friend. And, you know, some of those friends internally are really popular because they get a lot of internal calls. They’ve been here a long time and have a lot of knowledge, but but it’s just not efficient. And so, you know, much like we’re trying to create consistency for members, we wanted to create that kind of a resource for our employees so they then can provide that, you know, consistency and answers and and support and service to the members.

    And it takes time to try to go fish around. Right? So it is a lot quicker when you can use the frontline assistant to try to find something. Forms as well.

    So, for us, we we have been uploading. We we just went live mid April, and it it was it it wasn’t as quick quickly taken by employees as I would have thought it would be, but it was another link.

    So once we were able to integrate it in right within Jack Henry, and it’s so it’s right in the experience module, it’s right there for them to just have up all the time and and quickly be able to typing type something in just like Harry was showing.

    Yeah. So it definitely has been a fast start and, logged by our members, by our employees. So Yeah. Very much. About the impact and the adoption. You kind of briefly mentioned it?

    Yeah.

    Like I said, since being able to integrate it into Jack Henry, it it’s been an immense night and day, hundred and eighty degree change.

    Staff loves it. It’s a great resource. I think internally, it feels like it’s a benefit for them. It it eliminates a lot of frustration and feeling like I’m stuck because I’m trying to provide the service that, you know, everybody wants me to provide, but I don’t know where to go. And so this is just such an easy resource. I think it it feels really positive internally.

    And, again, they they know where to go find stuff. It’s consistent. It’s it’s a hundred percent answering questions.

    We’re we’re loading forms and and putting things out there, making it really easy for everyone. So it’s very quick.

    Okay. Thank you, Christine. So now let’s talk about okay, there’s one more question. I think we’ll skip this. I think it’s the same best practices you had for other projects, I believe. Right, Christine?

    Yeah. I would absolutely say input and getting feedback from employees too. That that’s really helpful.

    Got it. Okay. So let’s talk about where the AI is going. So, Sri, can you come in and kind of educate us on where the AI is going?

    Absolutely. And and, Christian, Jack, and Harry appreciate, kind of showing how this project has been, impactful. The AI has been impactful across organization.

    You know, but pretty much, wanted to give you kind of a big picture, how this technology is evolving really fast, what we showed you, today, and what is coming in the future, and, you know, how as a company, we’re kind of having a, you know, vision to drive, you know, more value to our customers, now and tomorrow with the constantly evolving AI. Right? So, you know, if you look at, this graph here, you know, pretty much, AI is moving really fast. Right?

    Like, you know, couple of years back, we had conversational AI, which is more like NLP, which required quite a bit of, overhead to manage and get value out of it. Right? And today, we are in generative AI, which is kind of makes everything little straightforward. The AI has ability to, you can point the AI to knowledge you’ve trained for couple of decades.

    It learn everything from that in a in a matter of few minutes.

    You know, basically helping finding information easier and faster.

    But where agent AI is going is, quite amazing possibilities. Right? So, you know, in in kind of a general example I often give is, generative AI is, you know, as a technology, let’s say, you wanna find the best recipe online.

    Let’s say you’re kind of making a a Thanksgiving dinner, like, you wanna find a best recipe for us, for this particular dish, you know, you know, generative AI is the one that searches the Internet, finds you the best recipe.

    But agentic AI is the one that now goes ahead, finds the, you know, groceries required for you cooking that recipe, and automatically goes to amazon dot com, orders that for you, and make sure the groceries come to your doorstep. That’s agentic AI. That’s kind of difference of generative and agentic AI. In a banking world, and a generative AI, you know, could help, you know, help you find a, product or service, but agent AI could apply on behalf of the user for you. Right? Like, that’s kind of really powerful technology is in the near future.

    Our vision as a company is also evolving with this technology. So, if you go to next slide, Jack, real quick. So, you know, in the past, as part of conversational AI, we had our AI embed in each of your member communication channels or customer communication channels. You had online mobile banking, website, text, contacts, and IVR.

    We had AI plugged into each one of those places. AI achieved, somewhere between, you know, thirty, forty percent peak, fifty percent kind of automation, in this era. Right? It required a lot of manual effort to train this and set it up and things like that.

    You know, today, in the generative AI era we are in, the AI is kind of leapfrogging beyond what it was able to accomplish and going to sixty, seventy, in some cases, even eighty percent call automation or chat automation.

    And this AI has now become like, this one AI brain, you’re able to train once and and deploy across the organization or channels. Right? And eventually, the the role all of the, channels would play would diminish, you know, pretty much. But the future, is what we call autonomous AI, which is where kind of bank GPT.

    You know, your members are able to add multiple financial institution across, you know, let’s say, you know, today, average number of accounts, someone leaving the US, kind of bank is about eight to twelve different financial institution relationship.

    So they could now, eventually, with Agentic AI, they could have a bank GPD from you, you know, as your members and customers, and they can add all other financial institutions and bank across all of them at one place. That’s where we are heading with, Agentic AI. As the technology evolves, you know, we’re gonna create, like, a bank GPT, which pretty much replaces the need of online mobile banking the way it exists today.

    And and you you’ll be able to put, like, an AI financial companion in your member’s pocket that can proactively drive financial well-being and things like that. So it’s a very exciting future coming ahead with agent AI.

    What we have done at Interface AI is, we have gone ahead, already started designing, building products around agent AI, capabilities.

    Right? So if you if you if you look at our current products at the bottom row, which is voice AI, employee AI, chat AI, you know, all of them are transitioning to become agent AI. But also, agent AI is so big that we have introduced brand new products, that kind of, you know, meets the expectation of what technology could do and meets the, kind of the value that our customers are expecting. Like Sphere, Nexus, Orbit, at the top row are all brand new products, you know, leveraging fully agentic capabilities.

    Right? So, you know, what I I plan to do for the rest of the meeting is I wanna show you a demo of this new agentic first brand new products, at Interface AI. It’s fundamentally is gonna change how banking is done. I’m gonna, invite my colleague to help me with the demo.

    So we’ll start with Orbit, and and we go from left to right. What Orbit does, in in is fully agent so if if you this is a hypothetical bank we created. Don’t worry. We’re not in banking business.

    So, you know, if you go to the right bottom corner, you see a chatbot there. You click and open it. So it pops up like a regular chatbot. Right?

    You could ask questions, you know, what is my routing number? For example, as how you are showing. It just answers those, questions. Generative AI, nothing agentic here.

    But let’s say now, you’re gonna ask a question.

    You know, I’m a student looking for a credit card. It follows up and asks you, you know, what any features you’re looking at. So I’m gonna say the feature, and I’m just gonna show you agentic AI in action shortly. So when we type it up, it comes back and says, hey, do you want me do you have any other preference or should I should I go ahead, proceed? So say no no other preference right now. Go ahead.

    It takes over the entire website and automatically navigates on behalf of the member and the customer and searches the website to find the right product, that matches their expectation.

    Comes back, shows you on the right side, here’s a product. On the left side, it highlights, a a a particular product, that that is best suited for you and and auto scrolls your website there. So as you can see, AI has kind of become a companion to your website. So typically at this stage, if someone is interested in such a product, applying for such a product is a conversion process. Right? There is this multiple steps of forms for a especially a new member.

    It it takes a lot of time. But let me show you how with agent AI that is going to change. So here it says, do you wanna apply? I’m just gonna say, yes. Let’s apply.

    And, you know, immediately, it asked me, hey. You know what? Upload these documents. I’ll fill up the application on behalf of you. So we are gonna upload those documents.

    It is gonna process those documents and come back and let me know if anything else is needed to fill up the application form. It says, hey. You know what? I have all the information to fill up the application form. Should I proceed? I’m just gonna say yes.

    And, again, take over the entire screen from the member, Automatically navigating the application form, filling up the details on behalf of the member and the customer.

    Right? And wrapping up the entire application, on behalf of them. Right? And gives you the confirmation number.

    Imagine the old days where how much effort your members have to put or customers has to put to go through filling up this application form now. They just have to upload the documents. They’ll take care of it, on behalf of them. Right?

    So that’s the power of agent AI is gonna where we’re heading next. Right? So let’s say now they’re in online mobile banking.

    Right? So let’s quickly log in, and, you’ll also have an AI as Harish showed you, you know, this exists and we, we can try, let’s say, fund transfer or something we, which, Harry also showed you. This is kind of a basic chatbot which is already available, which is all generative capability.

    Right?

    So you click yes and it takes care of the transfer. Nothing agentic here. Right? But let me show you the agentic part of it.

    We are gonna ask something, you cannot do it on online mobile banking today. Right? So we say, what are the streaming sir, service sub subscriptions do do do I have? Show me all the expenses and streaming service in last one year.

    So AI is now gonna become agentic and take take over the entire online, banking screen. So let’s click yes.

    So it takes over the entire online mobile banking system and automatically navigates, goes through every account, looks through every transaction every, you know, statement, and every transaction within the statement automatically classifies all the expenses into a a really interactive graph to tell us, like, you know, how much the expenses are in streaming service across the year and different streaming services and things like that. Right? So, you know, that’s kind of agentic capability. You know, Orbit, which is a product we just saw, which can help you on the website or online application or on on your online mobile banking, is pretty much is an AI that is trying to snap onto your existing, you know, online investments your existing in investments in technology and make sure they’re enhanced through AI. Right? But where we are going next is, you know, hey. How would a new online mobile banking may look if it was fully AI first?

    Right? So that’s what we call sphere. So what do you see on my screen is a brand new online mobile banking system, which is fully AI first.

    Right? You can you can see account aggregation. You can see multiple accounts that you already have. On the right side, you have it, in a AI chat that you could, if as soon as you start interacting, it takes over the full screen and kind of becomes bank GPT.

    Right? How can I help you? So you can ask extremely complicated questions that you could never imagine online world banking would ever do. For example, I’m I’m gonna ask, I have a ten year old kid. I’m looking to, plan for an investment for their college education.

    Right? And AI quickly comes back with a few follow-up questions. Tell me the kind of college, tell me the university, details, what all, you know, accounts you wanna be considered for the planning. Right? And what is the monthly contribution comfortable with? And then it asks, do you wanna consider five twenty nine plan as a strategy? So you can make all those preferences.

    You can say, I wanna begin my research.

    Right? And it has come it has come back and ask you, hey, you know, is there any other accounts of your family members you wanna add? Like, for example, you may wanna add your spouse account. This is a big decision, big savings.

    Right? So you wanna plan together. So you can literally add that right here. So you could say connect connect connect your account.

    It’ll ask you which credit union they’re banking with or, you know, financial institution. So it’ll immediately open up.

    Here it’s a safe credit union. Immediately automatically load safe credit union.

    You know, they can log in right here and, you know, pretty much it it connects to the account and pulls all the, different accounts available and comes back and tells, hey. I got, you know, two checking accounts, a savings account. Should I consider this for planning? You could say yes.

    And, you know, you can you can see now as you scroll down, those accounts are added. So you can check them, for the planning and say now looks good proceed for research.

    Now the AI is actually doing research how college tuition’s have, fees have changed the last couple of decades and how it is the college tuition fees are changing for the next decade, step by step research, which should have taken you many weeks to do that research. It is doing all those research coming up coming back with a a plan for you, on what is really required for you to open up a, five twenty nine investment strategy. So it says this is the amount you should be planning for, for so and so college. It is the savings you should probably plan for, monthly amount contribution.

    And at the bottom, you know, it shows investment strategies, education savings account. Now with the click of a button, which says execute this plan, it has the ability to open all those accounts, set up auto transfers, and set up the entire five twenty nine investment plan for you without you having to go do that from multiple places.

    Right? So that’s how the future of online world banking would look like and really excited to, pave the pave pave the path here.

    And finally, I I wanna show you one last, new product that’s coming up, NexSys.

    NexSys is a entire contact center a contact center replacement. The contact center as you know today would no longer exist. Right? So it’s not going to, you know, the the contact center we know today is gonna pick up the calls or chats.

    It has a routing engine. It has a workforce management engine. And then, you know, and and and and then a a agent portal for picking up the call, handling, and things like that. That’s not how contact center would exist in a agentic world in a just a couple of years from now.

    This is the screen your agent will be presented.

    So as soon as your agent says I’m available, immediately, AI ascends them a task.

    Your member is talking to AI. Your agent is also talking to AI. Right? So the the humans are no longer talking to each other.

    The AI they have they have a AI in the loop all the time. Right? So here, a task is assigned to your agent. With a real time call or a chat happening, the AI bought in your agent in in the loop asking, hey, you know what?

    I got stuck here. Can you help me? I already executed nine out of the ten steps for this wire transfer, but I got stuck here because the session got expired. So all your agent has to do is click here, put the passcode, re enable the session, and it it shows you back a confirmation step agent needs to approve, for compliance reason where the agent could say, yes, authorize.

    That’s it. Imagine the wire transfer if your agent has to do all all of it themselves. Instead now, AI took care of this. And nine out of the ten steps, agent has to come for just one step.

    Now they are done with it. AI has already assigned them next task. Right? So it seems like the next task for your agent is a callback request.

    It seems like the callback request was regarding loan application status. You can click a button to initiate the callback. And if you see on the left side of the screen, the AI already has bought in the right tool and the right screen for your agent to take actions.

    So as you could see on the right bottom corner, you can see the call, call happening real time. Right? So, it’s real time transcribing.

    Now the agent is done. They’re assigned with a new task.

    This time, it is about increasing credit limit.

    Right? So here, again, AI has done nine out of the ten, steps, but it got stuck with the last one where it requires any, income statement is too old. So, you know, the agent gets involved, says request the latest income. It seems like member has already sent them to their, support email.

    All agent has to do is click a button. AI will automatically read the emails and find out that latest, statement they have sent. Now it now it has approved them. It asked agent to also approve.

    Right? So the moment they do, the task is done. Again, as you noticed, the agent is going from one task to another. It it’s different calls.

    What you saw is three different calls, and they’re parallelly managing that because AI brings them in at the right time just to unblock where AI got stuck. And it takes over again from them. So, you know, twenty years back when contact center came, you know, you were handling one call at a time. We even still in contact center handle one call at a time.

    But then live chat came. Our agents were able to do four to five chats at a time because they’re able to multitask.

    But with AI, bringing them only during a a one or two steps in a ten step process, for a call or a chat, your agents, we anticipate will be able to do thirty calls or chats at a time. Right? So, that’s what agent AI is going towards. We’re really excited the kind of productivity and and the improvement in self-service.

    You know, if you look at the member who is either talking on a phone or on a digital, system, that is powered by AI, they don’t even know there was an agent got involved to help resolve their issue. Right? So, that’s how kind of, AI brings a human in the loop to complete them. So that’s how the future we’re we’re excited about.

    You know, I I know, we’re on to the q and a section now.

    Jack, back to you. We’re happy to answer some of the questions you’ve been waiting for.

    Yeah. Sure. Thank you, Sri. So I’ve been in the contact center industry for a while, and this is, this is basically the next generation of, customer service. So we’re very, very powerful and amazing, when it comes to the flirtation.

    Okay. So we are ready for q and a.

    So, obviously, we would love for you guys to see our product. We can do one on one demos.

    So if you are interested, you can kind of scan this QR code and book a demo right now. And the first five registrants will actually get, the device biometric without any licensing fees. So the usage fee will apply, but there’s no license fee for the first five who register.

    So let’s go to the q and a. The QR code is still here, so feel free to use the QR code to book the demo. So there are quite a few questions we already answered in the in the in the in the chat. And then there are two questions, which I see open, which require answer, from Christine. So, Christine, if you’re around, the first question for you is how many agents do you have, and what are the call volume?

    We have four agents.

    One of those agents is doing a lot of review of all the the analytics and the transcripts, so he he’s not really full time really interacting.

    And, generally, we have about two hundred calls come in a day. And I think I mentioned we’re at about forty eight percent when I looked this morning, adoption.

    Got it. And, Christina, the next question is for you as well. Who admin the product now? I think they’re talking about the frontline and that you’re live loading the forms and information for the frontline. Does that sit in IT, training, ops, retail?

    The project team is handling that. So it’s the group of, a combination of we’ve got two from IT. We’ve got our trainer, and then primarily, those are the three. And and one of the one that leads digital.

    Got it.

    Better that’s uploading the forms and those kind of things.

    Okay.

    Shree, I’ll give this question to you. So the question is, do you sell voice AI chat and employee chat separately or all this is all packaged together?

    If you all buy them together, you set up once, deploy, all of them. But if you but you do have an option of a la carte. Right? So you can take just one of them. They’re not fully packaged. But if you do take them, it it they work together, better, but you have an option to take a la carte as well.

    Got it.

    Okay. So I’m gonna combine two questions, and I’ll ask it to Shree.

    What is the estimated asset member size of your smallest client? And there was a question about, what is the largest client we are working as well, which which I answered online. So maybe you can kind of give us as a sense of where our customer base is.

    Yeah. Yeah. So I think, our sweet spot has been about three hundred million dollars in asset at at at the least and to all the way, with twenty billion dollars in asset, our customers today. And with with some of our customers’ recent acquisition, now our largest customer is about forty five billion dollars. Right? So, but, otherwise, the kind of sweet spot has always been kind of about three hundred million to about, twenty billion dollars in asset.

    Okay.

    Okay. This is a really good question. I think Christine and Shree both can answer. Maybe, Christine, you can answer it first. Yeah. So what is the average time it takes for member adoption? Did you find any members extremely upset that they could not get to the real person immediately or not liking the new AI, or was it pretty seamless and taken too well?

    That is a really good question. And, again, we we haven’t been live that long. So to have, you know, come on board live with members or Aspen, as we call her, just about mid February, I I think, you know, I’m not disappointed at the forty eight percent because in a small membership where we’re not having issues and members are used to be able to get get a person and not have to hold for ten, fifteen, twenty minutes or, you know, a lot of call abandonment, I think that’s a great number for us, although that’s not our goal. We we didn’t have members upset, and we we took a really member friendly approach when we launched, and that is to still make an agent available as an option.

    A lot of I I believe a lot of times, customers will, like, make that option hidden or or not even available and kind of force a member to have to start with with the agent. And and we didn’t you know, it it it to me, it felt like in our membership, at least in our group, that that that wasn’t a service focus that so we so we didn’t do that. So, but we didn’t have anybody upset.

    Okay. Sri, maybe you can, answer this cross question broadly across our from customers.

    Yeah. I I think, across our customers, as Christine rightly mentioned, these are about you know, our platform is highly configurable because our customers have different preference. We have about two thousand configurations, honestly. Right? So, you know, pretty much you can tune the bot where where you want to push harder for, you know, self-service or you don’t wanna do it. Like, as Christian said, they take on a member friendly approach, which is, the you know, the moment someone is asking for an agent, it is reacting and quickly passing to an agent.

    But in some cases, our, customers have taken a little bit more self-service approach where they’re creating a little bit of friction to drive adoption. If someone says agent immediately, it is it is kind of pushing them. Hey. Why don’t you tell me at least a question you’re calling about? So there is different levels of optimizations depending on your, depend depending on your preferences, you can kind of adjust accordingly.

    Okay.

    Okay. The another really good question.

    Maybe, Sri, you can answer this. If an FI were to consider crawl, walk, and then run approach Yeah. What approach would you advise?

    Yeah. No. All of our FIs take crawl, walk, and run approach, mostly. Right? So I think, it depends on why you’re thinking crawl, walk, and run.

    Sometimes you arrive at the conclusion because your board may not understand technology. It’s just hard for them to sell the technology and things like that. Or sometimes you the the other reason you may think about crawl, walk, and run is you’re worried about the drastic change in membership. You wanna really start small.

    It depends on why you think about crawl, walk, and run. You know, in case you’re thinking about, you know, is is a board or member adoption risk, a member experience risk, you can always start from, you know, adding AI for, employee first. Or you can start with the, chat AI, which is on the website. It’s not gonna disrupt, your your, member experience in a big way.

    But let’s say you have a big pinpoint in contact center on voice calls and you really want to badly do something there, you you also have options to do crawl, walk, and run even there because you could just roll it out for after hours only. You could just roll out the voice bot only after hours and then roll it out twenty four seven later on. So there’s a lot of options. Either you start an employee AI or chat AI, or if you really need, need a voice AI, you can start after hours.

    Is those are kind of the starting point of crawl.

    Got it.

    Great. So we basically have one minute. And, maybe the last question I can give to Christine, I’ll combine the question.

    The question is, where did the question go? I I guess it got answered.

    The what is your online banking system? Bano or something else? And what was your, kind of the, automation rate before you implemented interface?

    We had ninety ninety eight percent plus probably calls answered because unless a member had to hang up or something couldn’t go through, you know, taking member calls weren’t what wasn’t an issue. Again, for us, this was preparation for an expanded field of membership and, you know, trying to imagine if if you doubled your calls in, you know, six months, you wouldn’t be able to have that same level of service.

    So ours again, not answering that problem, but being more proactive. And we are not on Bano. We’re on Alchemy, Alchemy’s platform for digital and online banking.

    Perfect.

    Okay. Christine, really appreciate you taking the time.

    Shree, thanks for the demo.

    And, the attendees, if you guys, if you want to set up a demo, please, go to interface dot a I and book a demo there.

    Really looking forward to engaging with, everybody here. Thank you so much.

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