Everyday AI Podcast – An AI and ChatGPT Podcast - EP 298: Going from Everyday AI to Game-Changing AI

Episode Date: June 20, 2024

Enter to win a FREE Custom Avatar from Hour One as part of their #HourOneChallenge - Go find out more hereHow does AI go from 'cool business tool' to changing everything? It's not an ov...ernight process. It takes intentional steps. Rehgan Bleile, CEO of AlignAI, walks us through those steps.Newsletter: Sign up for our free daily newsletterMore on this Episode: Episode PageJoin the discussion: Ask Jordan and Rehgan questions on AIRelated Episodes: Ep 238: WWT’s Jim Kavanaugh Gives GenAI Blueprint for BusinessesEp 232: Creating and Capturing Business Value with GenAI – Insights From HPEUpcoming Episodes: Check out the upcoming Everyday AI Livestream lineupWebsite: YourEverydayAI.comEmail The Show: info@youreverydayai.comConnect with Jordan on LinkedInTopics Covered in This Episode:1. Current AI Trends 2. AI Implementation and Barriers3. Security Concerns of AI Implementation4. Applications of Generative AITimestamps:01:35 Daily AI news04:15 About Rehgan and AlignAI08:33 Enhancing customer service with AI for industries.12:48 Identifying core problems and solutions in industries.15:14 Leveraging AI across company operations to improve.18:52 AI governance and training critical for user adoption.20:59 Reliance on systems requires comfort and oversight.26:33 Create AI policies, buy point solutions. Ask vendors.27:20 Implement AI strategy methodically and educate employees.Keywords:small AI models, open-source AI, AI policies, steering committee, AI implementation timeline, workforce transformation, risk mitigation, Jordan Wilson, generative AI, AI dependency, digital literacy, AI literacy, data privacy, data ownership, copyright IP protection, data storage, emerging AI trends, generative AI impact, AI measurement, AI internal usage, sales, marketing, Ilya Sutskever, Safe Superintelligence Inc, Accenture, cloud migration, Align AI, regulated environments, AI in customer service.Send Everyday AI and Jordan a text message. (We can't reply back unless you leave contact info) Start Here ▶️Not sure where to start when it comes to AI? Start with our Start Here Series. You can listen to the first drop -- Episode 691 -- or get free access to our Inner Cricle community and all episodes: StartHereSeries.com Also, here's a link to the entire series on a Spotify playlist. 

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Starting point is 00:00:00 This is the Everyday AI Show, the Everyday Podcast where we simplify AI and bring its power to your fingertips. Listen daily for practical advice to boost your career, business, and everyday life. Meet Firefly AI Assistant, now live in Adobe Firefly, the All In One Creative AI Studio. Just describe what you want to create and the assistant handles the rest, orchestrating multi-step workflows across Photoshop, Premiere Express, and more in one conversational interface. You direct the outcome. The assistant accelerates execution. Yeah, we get it.
Starting point is 00:00:46 AI is great and it's here to stay. I think businesses everywhere have kind of embraced this concept of everyday AI. Not us, but using AI every day because they understand the business productivity. But why is it not more than that, right? Why does AI still seem sometimes that it's just this nice productivity feature that sometimes just sits on the shelf but doesn't get fully implemented. We're going to be addressing that and talking about some of the reasons why and what your company can do to fix that and move on to game-changing AI.
Starting point is 00:01:23 I'm excited for today's conversation. I hope you are too. So thank you for joining us. My name's Jordan Wilson and I'm the host of Everyday AI. And this whole thing, it's for you. It's for me. It's for us. It's for everyday people so we can learn to leverage generative AI to grow our companies
Starting point is 00:01:39 and grow our career. So if you're listening on the podcast, thank you for joining us. As always, make sure to check out the show notes for a lot more. If you're on the live stream, thanks for joining us as well. Get your questions in and we can take them. But before we dive in, let's just start as we do with the AI News. And if you haven't already, make sure to go to your everyday AI.com to sign up for the newsletter for more on today's news, a lot more, and recapping our show. All right, let's get into the AI News. for today. Couple things to look at, look at one pretty big.
Starting point is 00:02:14 So former Open AI co-founder has started a new AI company. So former Open AI co-founder, Ilya Sotskiver, has launched a new company called Safe Superintelligence, Inc, with a focus on advancing AI capabilities while also ensuring safety measures are in place to prevent potential harm from super intelligent AI systems. So this company is founded by Ilya and then former Y Combinator partner, Daniel Gross, and X Open AI engineer Daniel Levy. As one of the more notable names in AI, Ilya's new company is one worth keeping an eye on in a pretty big move for AI in safety space.
Starting point is 00:02:57 So a lot of people, you know, it's been a very public kind of thing in the AI world since, since Elia left Open AI. Everyone's been wondering, what is he working on? because he's widely regarded as one of the most brilliant people in AI. So pretty big news there with this new company, SSI. It seems like they're just, oh, skipping AGI and going straight to focus on superintelligence. So a pretty interesting move there.
Starting point is 00:03:25 All right. Next piece of AI news, Accenture is forecasting a huge growth in revenue thanks to AI. So Accenture, a leading global consultancy, has projected annual revenue growth above estimates due to growing adoption of artificial intelligence. So despite economic uncertainty, the company has seen an increase in new bookings and expects a 1.5 to 2.5% in revenue growth for the fiscal year. So Accenture's annual revenue growth is expected to be much higher than normal and expected to grow because of that demand in AI technologies and cloud migration surfaces.
Starting point is 00:04:02 So despite a strong dollar in economic uncertainty, the company has seen growth in new bookings and a consistent demands for its services, including a lot of work in and around generative AI. So it's pretty interesting, my take on this is, you know, very early on, you had a lot of these big consulting companies writing off AI. I said at the time, that's not going to last long. And, you know, sure enough, they finally got it together and are embracing AI.
Starting point is 00:04:28 All right. So for more news, as always, go to your everyday AI.com. We'll be recapping today's show and more. But we're not here to talk about AI news, although we always do a little bit. But today we're here to talk about how we can go from everyday AI to game-changing AI. That's what we're all trying to figure out. I think we all understand the power of generative AI. So how can you take it past that and really have it be a transforming force for your business?
Starting point is 00:04:57 So I'm excited today to have on the show. Let's go ahead. Bring her on. There we go. Thank you. So we have Reagan Bly the CEO at Align AI. Reagan, thank you so much for joining the Everyday AI show. Thanks so much for having me.
Starting point is 00:05:11 I'm excited. All right. So can you tell us just a little bit about what you do at Align AI? Absolutely. So we work with enterprises to help them responsibly adopt AI quickly. And we do that by helping them identify the areas where value is going to be amplified and multiplied by inserting AI. to that process while also helping them think about the risks associated with it.
Starting point is 00:05:38 This is kind of like a major identity crisis that a lot of companies are having on inserting AI into their organization safely and making sure that they don't have any reputational damage, financial damage, especially in the regulated environments, making sure that they're not going to get fined. So that's what we help organizations do all the time. Yeah. And hey, if you are joining us live like Douglas or Jason, Kobe, Woozy, Tara, Jennifer, whoever, make sure to get your question is now. Like, I'd love to hear from our audience
Starting point is 00:06:10 and to get you some answers live. So, Reagan, you know, I'm curious. So, you know, in your work at Align AI, you know, it seems like a big goal, right, for probably yourselves and just about everyone out there is, you know, not turning AI from kind of this novelty or productivity tool, but to really have it be transformative. What are some of the reasons that you would say that, you know, we are still in this phase, right?
Starting point is 00:06:37 Like large language models have been out for, you know, years, yet, you know, so many people are still trying to make this into a game-changing technology. What are some of the reasons that you're saying that maybe this hasn't happened in most businesses? This is not going to be the most exciting answer, but it is honest and it's what we're observing. And it has to do with how companies think about risk. So number one, people are afraid of what they don't know. So you've got all of your risk teams, your cyber teams. They're really uncertain about how this is going to make an impact.
Starting point is 00:07:07 And then they kind of hear all of these horror stories or war stories about AI. And people are still trying to wrap their heads around it. How does it work? What do I think about? If I'm on a cybersecurity team, how do I think about the threat landscape for something like this? There's a lot of new processes that they need to put in place. And the second piece is around workforce transformation. So you've got a lot of users, non-technical.
Starting point is 00:07:30 users who are trying to adopt and leverage and use these tools. And they're still really struggling on how do I use it? What do I use it for? What are the game changing use cases that I can actually leverage AI for? Maybe let's go into a couple use cases because that's always what ultimately I think people care about, right? Because still, generative AI seems like a black box to many. And, you know, so I think we learn from hearing successful stories.
Starting point is 00:07:59 So, yeah, maybe could you give us a use case or two from your work that has shown, you know, kind of the path forward for how companies can, yeah, turn generative AI into something more than just this, you know, huge productivity boost. Yeah. And so there's a couple of lenses to that before I jump into a story. I think the one is specifically around the fact that generative AI is really good at providing tons of context. So in hyper-silode enterprises, this is actually really useful.
Starting point is 00:08:27 So, for example, for customer service, for routing complaints, you know, there's a lot of context that we can start to pull, things that we can start to understand, and we can start to smartly, you know, route the different complaints to different types of people who are available and who have that skill set to answer those types of questions. So when we start to think about, you know, if your game-changing element as a company is customer service, and that's what's going to help you penetrate the market and get more market share and acquire new customers, that's game-changing. Game changing for companies is when you can increase revenue or save costs on a really large scale. And so if we're inserting, you know, AI or generative AI into customer service use cases,
Starting point is 00:09:08 we need to think about not just customer service, but what specifically about customer service? What metric can we move to make it game changing? And so for some companies, it is that experience like routing complaints to the right person. In other industries like automotive, you're looking at a bunch of different types of use cases that's game changing for them. Number one, supply chain, huge, huge problem in automotive to be able to hit your production numbers. The second, customer service. So giving people visibility into the automotive process and where their vehicle is in that entire process. And the third being the telematics data that's coming off of those vehicles.
Starting point is 00:09:49 So how can we create hyper-person? personalized experiences inside of the vehicle and start getting people more comfortable with some of those autonomous functionality in a vehicle over time without just kind of plunging people into the deep end of an autonomous vehicle. So that's what automakers are thinking a lot about at the moment. You know, one thing I picked up on there is data, right? And it seems like in my personal experience, you know, we work with a lot of companies. And it seems like companies are having a hard time measuring what matters when it comes to generative AI. Because I think a lot of this is maybe it helps people think faster. It helps people process faster. It helps people, you know, kind of connect
Starting point is 00:10:34 the dots faster. And sometimes that's hard to measure. You know, so you gave an example of, you know, customer service. But, you know, really, what is that, you know, metric inside of customer service that you can actually measure? You know, from a data perspective, you know, what recommendations or where should companies be looking so they can actually, know, right, if they're getting a return on generative AI and if it is actually a game-changing feature for them. Adobe just introduced an entirely new way to create, bringing the power and precision of its creative suite into one conversational experience.
Starting point is 00:11:12 Meet Firefly AI Assistant now live in the Adobe Firefly app, the all-in-one creative AI studio. Powered by Adobe's Creative Agent, Firefly AI Assistant lets you start with your vision, just describe what you want, and shape the outcome as it. takes form with the assistant. The assistant orchestrates multi-step workflows, drawing on 60-plus pro-grade tools across Adobe Creative Cloud apps, including Photoshop, Illustrator, Premiere, Lightroom Express, and more to help bring your ideas to life.
Starting point is 00:11:42 You can also get started with creative skills, a growing library of pre-built workflows for common creative tasks, like batch editing photos, creating mood boards, portrait retouching, and creating social variations. Every step the assistant takes is visible so you can refine, redirect, or take over at any time. You stay in the driver's seat as the creative director. Adobe Firefly AI assistant now in public beta. See it today at firefly.adobie.com. Yeah, great question. This is the first place we start. It's what we call our baseline. So what are we doing today? What does normal look like today? You know, a lot of people define game changing as like kind of the sexy use case. Like the interesting one that's great on a news article, those are fine and great.
Starting point is 00:12:31 And that can be one dimension that helps with your board or your, you know, C level. But the reality is, is it, you know, affecting the bottom line? Your CFO is going to care if it's increasing revenue drastically or cutting costs drastically and creates that differentiating element for you in the market. So when we think about it, we think about baseline. What are the things that we could move? What are the levers we could move? And how does AI enable that lever? And so if you don't have a baseline today, you're never going to be able to understand if it made a huge impact.
Starting point is 00:13:02 Now, if you look at generative AI versus traditional AI where you have more of a discrete way of looking at predictions and accuracy, it's a lot easier to calculate an ROI because you can look at a lift. But generative AI is a little more squishy. You're basically looking at like if you're a marketing person, how much of an influence did that thing have on the piece I created that actually made a difference on people converting. That's a really hard thing to track and measure and manage. And so I often think a lot about how Google Analytics did this for marketing. We started to create things like multi-touch attribution. We started to look at influence of different media that people were, you know, observing before they actually make a purchase. And so when we think about generative AI, it's going to have an influence on people so that they make different decisions. And so how do we
Starting point is 00:13:55 measure that influence, how do we measure the outcome? That's something we think about all the time. Yeah. And I like something you said there, Reagan, about, you know, the baseline and then measuring the levers that, you know, move or maybe don't move. You know, and I know you can't give blanket advice, right? Because it depends. There's so many industries, so many sectors, and generative AI is used all over the place, you know, from top to bottom. But what are some of those maybe more common levers that companies should be looking at or could be looking at to see if certain generative AI initiatives are actually moving that lever or not? Yeah, I think it comes down to the core service that they're actually providing. So a health care provider and, you know, an auto glass repair company
Starting point is 00:14:43 are going to have two different types of problems. For your health care providers, you're looking for patients that leave and come back that shouldn't be coming back. And how do we prevent? that from happening or even just kind of, you know, taking notes from the doctor and making sure they're accurate and and streamlining that entire process of getting patients through that experience in a hospital setting, right? Because they're resource constrained. You know, each industry is going to have a very specific problem. Things like the auto glass repair type of example would be, you know, people in the field who are dealing with a huge variety of different types of technology and these new vehicles that they need to be able to understand.
Starting point is 00:15:25 And so how do we give them that context while they're in the field, fixing those vehicles correctly, right? So there's a bunch of different things that we think about that impact customer service, that impact sales, that impact the ability for a service or product to be delivered to the customer. And so if we break those down and we look at the biggest areas of opportunity on each of them, depending on the industry, that's when we can start to find these game-changing use cases. I think email summarization and that kind of stuff is super helpful and really great. And actually, for me, it's a tool to help companies build the muscle around AI without having
Starting point is 00:16:04 tons of risk associated with it. But think about the things that if that part of your company goes down, it's a big problem. And how do we help augment some of those workflows with AI? You know, speaking of your company, I always love here. how, you know, companies that work in and around AI are actually leveraging AI internally, because I think that's very telling, right? So I think you just gave a great example of building that muscle because I think teams need to build the muscle, right?
Starting point is 00:16:38 And if it's a new workout, you know, and you can't just, you know, join at an expert level. You have to start somewhere. So, you know, even for you internally, your team, where did you all start to build that muscle? And then I guess how have your, you know, anecdotally speaking, you know, how has your strength grown in those areas, you know, since you did start? Yeah, we are trying our best to be an AI native company, meaning we use AI in every element of our company. And so when I think about how we're leveraging AI, we actually use our own platform internally, which is great because we can start to get value out of our own platform and understand how our customers are using it. But some of the areas that we use that are absolutely in sales and marketing around copy, around use case generation.
Starting point is 00:17:25 We've created custom GPs. We have our own kind of teams version of OpenAI that we're using. We use it in code development on our platform, of course. We're using it. I use it all the time for strategic brainstorming, creating company onsite agendas and ideas for activities, team building activities, ways to keep our remote team engaged with each other, you know, I use it all the time for things like that. Analying data before our quarterly onsites around metrics for the quarter.
Starting point is 00:17:58 You know, these types of things are really, really useful. I'm looking at, you know, market research. I use a bunch of different types of models to fact check on different market research numbers when we're thinking about the opportunities to go after, creating ideal customer personas. There's all sorts of different things that we use it for. and we use it every single day. Every single person at our company uses it every single day. And if someone asks me for an AI tool, it's almost a no-brainer.
Starting point is 00:18:26 We do a risk evaluation on it, of course, but I'm happy to pay for it for our employees. Yeah, I think that's great, right? And it's an ongoing conversation, right? Some of the most successful, you know, small and medium-sized companies that I've talked to who are implementing generative AI are doing it in an open fashion, kind of like what you said. You know, it's bringing ideas at the table, facing problems head on and, you know, finding a generative AI solution that can help there. You know, one thing that I always think about Reagan is, it's kind of this, this AI implementation paradox because, you know, studies show that I think it was 83% of companies say that AI is a top or the top priority, yet only 4% of companies have implemented it companywide. What? Well, I'll just leave it open-ended. Why? Yeah, it's risk. It's definitely risk. So the idea of this is if you, I used to think about this a lot. So if you create a pillar of your company that is now AI and that pillar falls down for some reason, that can be catastrophic. And so companies from a business continuity perspective are just fearful that these systems will be unpredictable and they will, will make mistakes that humans aren't used to making.
Starting point is 00:19:47 And so at least with people, when we hire people, we have this process of evaluating them and their skill sets, and we were really detailed about the types of jobs and tasks that they're supposed to do. We measure their success. We give them promotions. We don't have that kind of evaluation process for AI systems yet. And we don't have a really good way of monitoring those types of things. And so companies, because they don't have that structure in place,
Starting point is 00:20:10 are a little bit more hesitant to be reliant on an AI system, over a person to actually make that workflow or that function happen. And so we're often putting a lot of human in the loop in there to start just to gut check. Like, where is this thing going to be wrong? Right. So I think with people, we can anticipate where it goes wrong. In fact, there's entire security teams dedicated towards, you know, insider threats of companies. And we don't have systems like that for AI yet. We don't have AI systems that are checking other AI systems. on whether or not they're, you know, pulling a bunch of data and sending it out to somebody outside of the company, right? And so I think a lot of organizations are still trying to think about
Starting point is 00:20:53 what does that, quote, governance process look like. How do we red team these models and these systems to make sure that we can break them in all the ways that, you know, we can then anticipate in the future and we can monitor for in the future. And so that is the reason I can tell you hands down. The second one is just how do we get people to use this? You know, we do trainings all the time for AI, there are folks that legitimately don't know how to use Microsoft online. And so there's a sense of digital literacy that has to come before AI literacy for a lot of individuals that work at companies. And so if we're having them interface with AI systems, we have to make sure that they know how to use it appropriately, especially until these systems get good enough from a user experience
Starting point is 00:21:37 perspective where we don't have to put so much onus on the person. And hey, if you're joining us live, we have Reagan Blyley, the CEO at Align AI. Reagan, you said two very important things there when talking about this kind of implementation paradox, right? You know, risk independency. And I want to dive into both of those a little bit more. But the human in the loop is always, you know, a conversation you have to have is, you know, oh, can humans still drive this the right way?
Starting point is 00:22:09 Can they still have checkpoints on generative AI at the right times at the right checkpoints, but also becoming over reliance, potentially. How should business leaders, Reagan, be looking at this factor of dependency? Because I get it, right? Like some people might say, oh, we're giving generative AI too much control. We're giving it too much leeway to make business decisions when we don't fully understand it. So how can they, you know, find that sweet spot of, you know, kind of relying on generative
Starting point is 00:22:37 AI, but, you know, how do they deal with those fears of, you know, maybe not becoming too dependent on it. Yeah, I think this is from a paradigm perspective, not necessarily new, right? Like, we are very reliant on a lot of things like the electrical grid. You know, we don't think about the electrical grid very often. Some people do. But we don't usually, right? We just assume that it's up and running and it's going to work and our electricity is going to turn on and we're going to be able to do what we need to do. So there's maybe an example of an over-reliance. to an extent, right? So if that goes down, that could be pretty catastrophic, and there would be a lot of people kind of not prepared for that. And so when we think about kind of the spectrum of reliance on systems, not just AI, but systems in general, you know, what makes us comfortable being reliant on a system? Typically consistency and oversight, right? So consistency that it's going to perform the way that we anticipated to perform, which today these AI systems don't do that. And then the second is oversight. So, So we have trust in somebody somewhere who's overseeing the grid that there's oversight and they're going to be able to anticipate things that could go wrong and they're thinking about the things that can go wrong and they can prevent those from happening.
Starting point is 00:23:56 And so, you know, same thing with these AI systems. It's the oversight piece. And I can tell you not a lot of companies have the right structure in place for the appropriate oversight. So I think one, it's still like the systems are still a little shaky. They're still pretty unpredictable. Like we don't know where we're going to get out of. them some of the time and actually a lot of the time. And so, you know, that's a problem. And then the second piece is being able to anticipate and having comfortability that there's the right
Starting point is 00:24:24 monitoring components in place to be able to anticipate when it will go awry and try to prevent that from happening. So those are the two core reasons why companies are not, you know, going straight to this reliance, you know, mechanism for AI systems. And great, great answer. on the dependency side. So on the risk side, and maybe we'll just, you know, toss it to a question here from Douglas, kind of aligned with risk so we can, you know, kill two birds with one stone here. But Douglas asking, how do you handle generative AI for companies with security concerns? Do you recommend RAG or local large language models like, you know, Lama as an example? Great question. I talk about security all day long. In fact, I married somebody who is in security.
Starting point is 00:25:10 so we have fun conversations at home. But I would say from a security lens, the things that people are usually pretty nervous about. So one is you can go and look at the OWASP, you know, top 10 for LLMs for applications, which gives kind of the top 10 vulnerabilities that they see out in the field. So things like prompt injection, things like overreliance, things like, you know, excessive agency. these are types of things that you can think about from a design perspective. So regardless of whether you're building or buying your own system,
Starting point is 00:25:46 so using an API like OpenAI's API, or you're using something local like Lama and kind of building your own system around that, those are things that you should think about regardless. The second lens of that is really data privacy, data ownership, copyright IP protection. This is when you start to get security plus. risk plus legal, you know, plus these other kind of groups inside of the company that need to think about the implications of that. So where is the model running? Where is your data stored? Is it segmented from other customers? What environment is it stored in? So things like the Azure
Starting point is 00:26:23 OpenAI system is actually locally stored in the Azure environment. It's not going to open AI. So things like that, just knowing how it works and asking those specific questions of those systems, that'll help you do risk profiles on, you know, whatever you're building. Another great question here from our live stream audience. And, hey, if your podcast listener, you should come join us live, get your questions answered. But a great one here from Rolando. So asking what emerging AI trends are you most excited about and how might they impact enterprises? Yeah.
Starting point is 00:27:00 I'm most excited about small models. So going from these really large generalize. models down to these more kind of hyper-specific models and really the open source movement. When we looked at traditional machine learning and AI, there was this movement from these big platforms like SaaS over to open source and building out a technological ecosystem to support those open source components. So I'm very excited about the trend towards open source. I'm very excited about the trend towards these more niche specific models and the agent architecture that a lot of people are looking into to be able to kind of fact check and quality check and do multiple
Starting point is 00:27:43 subtasks inside of an AI system without just kind of using one giant model. And if you're a new listener here, Reagan just crush that question. I couldn't agree more. I've been saying like for a year, the future of large language models is small language models. So yes, like I'm totally on board with that. So many great questions today from our audience. So Liz asking for companies that are mid-sized and ready to adopt the use of AI, how soon can this be implemented?
Starting point is 00:28:13 And what are or can be done to prepare users to adopt quickly? Estimate timelines. Yeah, we've done this a lot. So I'm happy to give you some discrete answers on this. So for mid-sized companies, I'd say, number one, first thing you should do is have AI policies internally and have at least a small steering committee of individuals that can think through the risks when you're looking at solutions because mid-sized companies are going to really struggle to get enough budget to be able to build your own kind of custom solutions internally,
Starting point is 00:28:44 at least for now. And so my suggestion often is to buy and to think about point solutions that solve very specific problems internally. And so as you're going through those point solutions, it's really important to understand how to ask the right security and risk questions to those vendors, because you don't get to control that. They do. So that would be my number one is just have that in place and be able to workshop and brainstorm and scope use cases appropriately, internally. Start with a quick win one, not a big one, and then identify a big one that's going to get your executive super exciting so you can get more budget. So that's what I would do and start with something maybe really low risk as well.
Starting point is 00:29:26 And then timeline-wise, I would say to set up a group like that probably takes about four to six weeks. And then use case ideation, scoping maybe another couple of weeks if you're dedicated to it. Prepping users for onboarding is super important. So education, just kind of giving people a general understanding of what is AI, how does it work, why will it benefit you, why should you care, what are the risks you should think about. That can be done depending on how big your company is. We've done, you know, rollouts of 600, 1,000, 1,500 people in the matter of, you know, three, four weeks and getting people kind of exposed to that and doing more of communications
Starting point is 00:30:05 campaign. And then finally, the evaluation process or proof of concept for a first one should take a couple of weeks max. And then getting something onboarded and rolled out probably another three to four weeks. So you're looking at maybe like three to four month timeline to get something. rigorously thought through a good plan in place for adoption, good plan in place for risk, and then identifying some of those use cases. So Reagan, we've talked about a lot in today's episode. We went over some of even your team's internal use cases, talked about risk and dependency,
Starting point is 00:30:44 AI governance, the rollout process. We've covered a lot. And I'm wondering, what is your one takeaway as we wrap up here that companies and business leaders should be looking toward, you know, especially those that have already realized the power and promise of generative AI, but they still haven't, you know, been able to roll it out company wide and they still haven't maybe found it to be a game changer yet. What's the one takeaway for companies and business leaders to do today? Yeah, I'd say number one, kind of my hot take is going to be that the dependency is going to happen. It's going to happen. So just get ready for that. Think about
Starting point is 00:31:21 how you're going to prepare for that. And the workforce transformation is going to be significant. So those are kind of my two things to think about. The takeaway there is try to identify, work with your risk teams to try to identify where you can be preventative and where you can keep these roadblocks from happening. I can tell you a lot of AI initiatives are getting stuck at security. They're getting stuck at legal.
Starting point is 00:31:46 They're getting stuck at risk. And if you can work with them, have everybody educated and on the same page and have a plan in place, risk mitigation plan in place, identify your risk area and surface and work constantly alongside them, you'll move much faster, much faster. So I think that is kind of my biggest takeaway. I know it's not fun sometimes to sit down and talk to the people that are going to block you, but I can guarantee you'll move much faster if you do.
Starting point is 00:32:16 So much good advice there. So Reagan, thank you so much for joining the Everyday AI show. You gave us a great blueprint forward on how we can turn everyday AI into generative AI. We appreciate your time. Thanks so much. This was fun. And hey, everyone, there was a lot there. Yeah, Reagan dropped just bullet point after bullet point of great advice on how you can leverage AI in your business.
Starting point is 00:32:43 We're going to be recapping it and a lot more in our newsletter. So if you haven't already, make sure to go to your everyday AI.com. Read today's newsletter. It's going to be a good one. If you're listening on the podcast and found this helpful, please leave us a review, share with your friends, and make sure to join us tomorrow and every day for more everyday AI. Thanks, y'all.
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Starting point is 00:33:38 See it today at firefly.adobie.com. And that's a wrap for today's edition of Everyday AI. Thanks for joining us. If you enjoyed this episode, please subscribe and leave us a rating. It helps keep us going. For a little more AI magic, visit Your EverydayAI.com. and sign up to our daily newsletter so you don't get left behind. Go break some barriers and we'll see you next time.

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