Everyday AI Podcast – An AI and ChatGPT Podcast - How Brands Can Prepare for the Post-Human Web
Episode Date: November 13, 2025What happens when the web is all bots and AI? 🤖And more importantly, what happens to your company's online presence when AI search completely takes over? Big questions. So we're bringing ...in the big gun for the answers. Michael Walrath is the Chairman and CEO Yext Inc, a global leader in brand management and search experience. Michael will dish the essentials on how brands can not just stay relevant in the post-human web, but how they can thrive and get ahead. Don't miss this one. Newsletter: Sign up for our free daily newsletterMore on this Episode: Episode PageJoin the discussion: Thoughts on this? Join the convo and connect with other AI leaders on LinkedIn.Upcoming Episodes: Check out the upcoming Everyday AI Livestream lineupWebsite: YourEverydayAI.comEmail The Show: info@youreverydayai.comConnect with Jordan on LinkedInTopics Covered in This Episode:Post-Human Web SEO StrategiesStructured Data for AI DiscoverabilityLarge Language Models Disrupting SearchAnswer Engine vs Traditional Search SEOIntent-Based Search and Brand VisibilityMemory in AI Answers Engines ExplainedGranular Content Optimization for AIBlocking AI Crawlers: Brand Strategy DebateAI-Generated Ads Impact on SEM & SEOAuthoritative Brand Data for VisibilityTimestamps:00:00 "Brands in the AI Era"05:42 "Future of Search Engines"08:19 "Generative AI vs SEO Strategy"09:37 AI Personalization for Better Answers12:41 "AI-Friendly Data for Brands"15:56 "Empowering SEO with Seamless Tools"20:29 "Future of AI-Powered Advertising"24:48 "AI Knowledge: Useful but Creepy"26:08 AI Impact on Ad-Supported Content29:32 "Reddit Strategy Isn't Necessary"Keywords:Post-human web, brand visibility, generative AI, large language models, answer engines, structured data, organic SEO, search engine optimization, content creation, reputation management, social media management, digital transformation, data distribution, authoritative business data, machine learning, AI-powered search, fragmented discovery, natural language processing, context and memory, answer engine optimization, AI visibility, SEO strategy, Send Everyday AI and Jordan a text message. (We can't reply back unless you leave contact info)
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This is the Everyday AI Show, the everyday podcast where we simplify AI and bring its power to your fingertips.
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For the last few decades, you've had great control over how others view you and perceive you on the web, right?
You put some information out on your website.
Hopefully over time, if you're investing in this search engine optimization thing,
brands are going to see you exactly how you want to be perceived.
But that was pre-generative AI.
And pre, what we're really experiencing now is large language models turning into answers engines.
And it seems like brands are maybe starting to lose a little bit of that control over exactly how their potential clients or customers are going to discover them online.
So how can brands prepare for the post-human web, right?
Maybe in the future when a lot of content is maybe written or created by AI and scraped by AI and presented by.
AI. How can brands still have a little bit of control over how they show up, if they show up,
and how that may ultimately influence their potential customers or clients? It's a topic I'm excited
about, but I have an actual expert on the show today to help walk us through it, and I'm excited
to get to it. Welcome to Everyday AI. If you're new here, what's going on? My name's Jordan,
and this is your daily live stream podcast and free daily newsletter, helping everyday business
leaders like you and me, not just keep up with everything that's new in AI, but how
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We're going to be recapping the highlights from today's conversation, as well as keeping
you up to date with all of the other AI news.
Well, let's just get straight into it and help me welcome my guest to the show.
This is going to be a good one because I've actually used the product before in the past,
and it's really good. So help me welcome to the show, Michael Walrath, the chairman and CEO of Yext, Inc.
Michael, thank you so much for joining the Everyday AI show.
Hey, Jordan. Thanks for having me. Great to be here.
All right. So for those that aren't familiar, can you explain a little bit what Yext is and what you all do?
Sure. So Yext is the leading brand visibility platform. We have a set of products and services that help brands to make sure that there are products and services and offerings, particularly with a localized bent.
are constantly discoverable and available.
That's, you know, often we talk about this in terms of SEO,
content creation, reputation management, and social media management.
Four major categories that we've been in a singular data-led platform
to manage your, optimize your organic brand visibility.
Yeah.
And I'm sure we're going to uncover a lot of that here throughout the rest of the conversation,
but I'm going to skip straight to the end.
Michael, what is the right?
answer. How can brands prepare for the post-human web?
Get your data right. I mean, you know, the problem the brands are going to have with this is that,
you know, much of what we've done to create content is, is in ways that human beings appreciate
and machines don't. And what machines like is really solid structured data. You know,
they're not big on heavy images. They're not big on drop-down navigation boxes. They're not big
on a lot of the things that make the human web usable for human beings. And so we need to,
we need to go through a second wave digital transformation that starts with, you know,
all of your authoritative business data has to be structured and prepared to be distributed
so that your brand can be discoverable, full stop. And, you know, you've been leading
YEX for a decade and a half, a little more than that. Walk us through, you know, kind of
what was going on in your head, right? We had the chat GPT moment.
of November 2020, but obviously at that time, it wasn't connected to the web.
You know, we saw perplexity and probably over the last year or so,
every single large language model has essentially turned into an answer engine.
So walkers through from your perspective, how that's kind of unfolded in terms of your work.
Yeah.
Well, so I've been here for 17 years.
I was chairman of the company for 12.
I've been CEO for about the last four.
So those numbers don't add exactly, but it's sort of great.
I'm as an English major, not a math major.
I, you know, we've seen a really interesting shift.
And I actually ran the search business at Yahoo before I invested in YECs.
So we, we saw Google rise up and basically consolidate the entire discovery market into a single monolithic platform.
Right.
And by the way, this made the world really easy for brands, relatively speaking, because, hey, if I'm discoverable on Google, I'm winning 92% of the time.
Right.
But we started talking about this a couple of years ago, and I think people thought we were crazy at first.
We said, look, Google's going to be disrupted when it comes to answer engines.
There's a better mouse trap, and that better mouse trap is going to be the combination of a natural language engine with context and memory.
And what we've seen over the last two years is an unprecedented rise of obviously chat GPT is leading away here, but there are so many of these and there are going to be so many more now.
And they might use overlapping technology, but the consumers are going to choose answer engines that make the most sense for them.
And I think we're just at the very beginning of what's going to be a very rapid, very broad fragmentation cycle of how consumers find information.
And, you know, ultimately, kind of like how I opened up the show, organic SEO, right, even though it's always been like, oh, there's these 200 factors from Google and everyone's always trying to fight against the algorithm.
them, but for the most part, it's been a little bit more understandable, right? How are you seeing
brands tackle now this, you know, this, this big gray box of generative AI? What's working? What's not?
Yeah. So right now, actually, it turns out, you know, a lot of the same stuff is working, right? So a lot of
what we were doing, what brands have been doing for SEO for the last 15, 20 years is very much working.
of reasons that's because behind the sort of grounding of a lot of these AI experiences are the same
search indexes, right? So, so, you know, it's tempting to say, hey, SEO is now just answer engine
optimization, right? And we've seen this huge crop of startups going after like basically saying
this is something totally different, right? And look, I think there's value there. I think, you know,
measuring the visibility across these AI engines specifically, we have a product that does this.
you know, there's lots of startup products out there.
You know, we refer to it internally as it's admiring problem, right?
And this problem is going to get harder and harder to solve.
And so what we anticipate is that the ultimately for brands, the most valuable thing
is going to be, okay, let's admire the problem.
Let's understand what is it that's causing us to be not as visible as we want to be,
you say answer engines, but then you have to be able to take action.
You have to be able to do something about it.
And it turns out that a lot of the same tools that you use for SEO can be applied in addressing the opportunities when it comes to AI visibility.
So I want to get slightly dorky, but not too much because one thing I'm, you know, always talking about is kind of the concept of how obviously large language models slash answers engines are very different, right?
You know, Google or search engines, for the most part, aside from personalization and localization are large.
deterministic, right? Large language models, well, they're generative, right? You can ask the same
question or query 10 times. You might get nine different answers. You might get one or two, right? With that in
mind, how should, right, if I'm the CEO of a small or medium business that's traditionally just been
writing blank checks because of good SEO, but now you get this, this generative nature. How can they
tackle that and even understand it? Yeah. Well, I think it's really interesting, right, because I think it
depends on the question you're asking, right? So if you're saying, you know, what's,
what's the best sort of off-the-shelf artwork for me to hang in my new apartment, right? That's not
too expensive and looks nice, right? That's a very subjective question. And like, there's probably
lots and lots of answers. And so if you, if you ask an AI engine, that question, then you're going
to get, and you do it 10 times row, you're going to get very different answers, right? If the question is,
and actually, I think that's value, right? That's the probabilistic nature of it. It's valuable.
Right. I think where it gets frustrating sometimes with answer engines and this is getting better is when you say, look, I'm really just want the best burger that's closest to me right now that also has a milkshake. Right. And if you keep asking the question, it will keep delivering you often different answers, but those answers rarely get better. Right. And so I think I think that when it comes to facts base, when it comes to, you know, what we would call structured database queries, the more localized it is and the more specific it is.
the more important the memory element of the AI engine becomes.
Because it's what is, how can this answer be delivered better because of what the answer
engine knows about?
And why is it, it's a really valuable assistant if I don't have to tell it that I want
gluten free or I want vegan or I want carnivore or I want, you know, I want electric carzal.
I want gas carzle, whatever your sort of your preferences are.
And so I think that's the huge hurdle for marketers is they are.
are going to have to understand that like every question asked of an AI is not a question,
right?
It's much more than the words that are there.
It's the words that are there, which can be much longer than a search query,
combined with everything that that AI already knows about me.
So it's the words that aren't there that makes this such an interesting marketing.
It's such a great point.
And it's something, you know, that I think makes it a hard target to lock down for, you know,
marketers, content creators, business owners.
et cetera, right, especially when it's changing, right?
Like as an example, you know, Claude just rolled out memory last week, right?
So, you know, probably the level and the depth in the context of what is now being,
you know, kind of risen up by Claude, just as one example, is much different.
How can, you know, business owners, marketers, SEOs, et cetera,
start to learn more about their demographics, right?
because it used to just be, all right, well, you know, we're going to use these tools and, you know,
we're going to optimize for search engines, but now these answers engines know everything about
us. So how can they go about learning more about who their customers or clients are?
Yeah. And, you know, I think that's an, it's a really interesting question, right? Because
marketers have so much data now about who they're customers. Right. And what, and what we, you know,
the world we've been living in with SEO is one where you have to hope that that data is being
transferred in some way through the query, right?
So the near me query establishes location and it makes the query much more targetable, right?
And advertisers, marketers who are trying to be visible, they will either really care about being part of the answer or not, depending on whether or not they have a store nearby or they sell insurance products in that area or they have, you know, a medical office nearby.
But I think, I think, you know, in a lot of ways, so much of that data is going to become harder for marketers to,
target specifically. And so what they're going to need to do is they're going to need to inform,
right? And the way that they're going to, so it's like, how do you talk to an answer engine if you're a
brand, right? And the answer is you talk to it through data, right? And everything you tell it has to be in
the form of here's structured information about my product so that when when you know more about,
because you the answer engine, you the AI agent are going to know more about the consumer, then I'm going to be
able to target. So what I can do is I can tell you, hey, I have a, I'll give you a silly example,
right. It's not enough to have a menu anymore. You have to have different versions of that menu
that make it really easy for the AI to understand, okay, like, I know my human is a, is a, if I'm
thinking as the AI, I know my human is a vegan, right? So when they ask me, where's the best
place for me to go for lunch for me? They're not saying vegan, but I know they're vegan, right? So I'm
going to look for places that have that have delivered me structured information that says,
hey, we have a vegan menu, right? Here it is. And that's like a really simple example of how
you feed structured data into the AI engines so that they surface your brand more often. And we could
do that for any, any industry, any company. You know, I'm curious, right? Because even though you are
ultimately providing these types of services, you know,
for clients around the world with Yaxed.
How are you even, you know, your company?
How are you, you know, going out there and kind of, you know, dog fooding it, so to speak, right?
Totally.
It's the same thing, right?
So that, you know, it's, you know, I think sometimes we're so focused on doing it for customers
that we actually forget to do it ourselves, but we have to do the same transformation.
We have to make sure that, you know, every piece of content that we've ever created
that's relevant to our products and our services and our team.
is distilled down to its most elemental structured data form
and is available for the AI answer engine.
Just as we've always attempted to make it,
you know, it's like, you know,
and this is why I say like a lot of it's still the same, right?
Like you got you got to have schema,
you got to have the page has to be structured right.
It's got to be rich.
You know, now it's all about snippets and chunks and things like that.
I don't think those practices change,
But I think the way we think about how granular we need to get and how real time we need to get is really important.
You know, this is maybe a question super specific, but I even know a lot of small business owners.
Because, you know, I used to kind of work in this field.
They know which pages, right, are bringing them in traffic, bringing them in clients, bringing them in customers.
You know, is there blanket advice that you can give to people?
So, like, should they just be looking at that one page and expanding it out for large language
models?
Should they be taking that page and, you know, making 20 different versions of it, you know,
spreading out, you know, the quote unquote link juice or SEO juice.
Like, is there a best recommendation for something like that yet?
Yeah, look, I mean, I would defer to, you know, sort of we have a lot of hundreds of
SEO partner agencies who are really, really good at that. What we do is we power them with the tools
to be able to, for example, you know, make pages around offers, make pages around intense.
You know, make all these menu pages seamlessly and easily. So part of what our platform does is
basically if you put any information into the knowledge graph, which is the data center, the data,
the data center of our platform, you can, you can then seamlessly create a page,
a publisher page using that, right?
So one, 10 menu pages with different, you know, carnivore, keto, vegan, you know,
whatever it is, you, you just, you publish those pages and now you, you, so I still think
high quality content wins.
And I think we're out of, you know, I think, I think AI will do a particularly good job of
figuring out that like, look, if you just republish the same article and you put, you know,
from 2019 and you put 2025 in it.
Like you might trick me today, but you won't trick me in the long run on that.
And so I think the game, you're going to, you know, everyone's going to have to elevate
their game a little bit in a world where these things are just going to keep getting
smarter and smarter about like, what's the right answer to the question?
Where's the good content?
Where's the good data to give me the answer to this question?
Yeah.
And the answer to the question, especially in large language models, is getting more and more
important, especially as we're going to eventually start seeing ads inside large language models,
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What a transition, right?
Yeah.
Ads, right?
So what's going to happen, right, when we look at how brands want to show
up, right? And you kind of said, you know, earlier in the conversation, a lot of it is still good,
old-fashioned, you know, SEO. But what about when ads come? How does that change that, Michael?
Well, so I think we've seen almost no advertising in the A experiences so far. So perplexity,
I think, is the one who's played around with this the most. And I think, not surprisingly,
you know, what they've done is kind of, I'd say, experimental, right? And so they really just kind of
put a panel of, of ads that are contextually targeted, presumably to the content that's being
created, right? This technology is not new. You know, GoTo was doing it in 2000, you know, 25 years ago.
You know, I think there's a couple really interesting things about what's going to happen when
advertising comes to AI experiences. So, you know, I'll sort of give you three that I think are
really interesting. One is that this will be the first medium where advertisers don't get to
create the copy.
And a lot of brands are going to be really uncomfortable with this idea of, you know,
what am I doing?
I'm buying ads, but I don't get to decide what the ad is, right?
That is going to be a very uncomfortable feeling.
But if you want to be able to buy ads in AI, I think you're going to have to come to terms
with that.
So that's thing number one.
I'll come back to it.
I think thing number two is what we're going to see is that the, there's always been a
pretty big difference between SEO and SCM.
How do I manage the organic visibility across search and how do I manage my paid marketing across search?
That will change because of, you know, I think the first thing.
And they're going to look a lot more alike.
So we're going to have this world where you're going to have to decide,
am I going to advertise on an AI?
And by the way, I'm making things up here and I could look very stupid in the future and
you'll have a recording of it if so.
But like I fundamentally believe that every ad medium we've ever seen in the last
in the digital environment, the ad mimics the content that it's being inserted into.
This is why search ads look like search results.
This is why magazine ads look like magazine pages and TV ads look like television, right?
So what does a generative AI ad look like?
Well, it looks like a generated answer, right?
Now, you know, and this will create, and that, the third thing is this will create like
all sorts of really interesting conundrums for the answer engines who will have to get really
smart about, you know, where is the line where a consumer is going to feel really good about a
targeted ad? And where is the line where I might not be giving the best answer, but I'm giving
the one that pays me the most. And so when you combine all those three things together, we're going
to see it's just like massive disruption. And, you know, I think from our standpoint, one of the
most exciting things about that is that in order to influence through paid advertising AI answer
engines in the future, you're going to have to have really well structured and really detailed
authoritative data because that's how you're going to influence what they say about your brand.
So, you know, if I'm Land Rover, I use this example a lot, but I asked chat Chabot,
the other day, you know, what SUV should I consider buying?
I drive a Tesla model less.
I like it, but maybe I want an SUV.
And they say, you know, ask me as many questions as you need to and then give me a great
answer.
And so it does this thing.
It thinks for, ask me a bunch of questions.
Why do you want an SUV?
Are you going to be off-roading?
What do you like about the Tesla?
What don't you like about the Tesla?
That it thinks for seven minutes.
And then it delivers me five recommendations, right?
And what it says, and it always, like now, it always ends with a question.
Would you like me to get you some more information about any of these options, right?
And so you can go as far as you want with it.
Yeah, you know, tell me more about that Cadillac, right?
And at some point,
in the future what's going to happen is to say, hey, turns out I can have one of these Cadillacs
delivered to your house for a test drive at 3 o'clock today. Would you like me to do that?
Right. And there's a moment there where you're like, wow, that's an extraordinary consumer experience.
Like, I'm shopping for a car and this thing's literally going to schedule one to come to my house.
Right. And there's another moment that we're like, whoa, like, I'm being monetized.
Right. Cadillac is paying to have that car delivered to my house. Right. And I don't know.
Like, you know, sort of everyone's going to have different feelings about that.
But here's what I know.
If you're a brand and you want to participate in AI advertising that way,
the only way you're going to do that is you're going to give them structured information
about where are those cars, where are those test drive cars, where do I want them test driven,
what areas, what demographics, all those types of things, and how much is it worth to me?
That's all structured data.
And by the way, that's going to very much mirror the way that you manage your,
organic brand visibility today.
So, you know, Michael, you brought up something interesting on the consumer side, right?
Because traditionally when it comes to advertising, well, and even just traditional SEO, right?
It's, it's keywords.
Consumers type them in, brands bid on keywords or key keyword phrases, right?
Broad match, whatever.
But this is different, right?
Like the future, when we talk about AI answers engines, whether it's delivering
us organic things for certain brands or in the future ads. It's not keyword based, right? It's
intent based. It's memory based. How should consumers be thinking about this? Because like you said,
like, oh, is this helpful or is this just an ad? Yeah. And look, it's confusing, right? Because on the one
hand, it feels really, you know, it feels stalky, right? Like, you know, these things remembering everything
I tell it. Right. Like every time I ask it a question, I tell it like, you know, you know, hey, I need,
You know, my lips are chapped.
I need, I need, you know, what's the best chapstick?
Like, you know, it's remembering things about me, right?
And so on the one hand, it feels creepy, right?
And I, I sometimes, I've actually stopped doing this because it scares me.
But like, trying to explain this to people, I'll pop open chat chit or one of the other ones that I use because we play with all of them, you know, in front of people and say, hey, tell everybody what you know about me.
And like, I always wind up stopping it because it, like, it gets really personal, right?
And it's also a great test to make sure you're not sharing information from sharing.
But, but like I think that this this line between like, you know, I get way better answers the more it knows about me, but it can feel a little creepy is, is probably the, you know, sort of the thing that every consumer is going to need to decide for themselves.
And, you know, speaking of decisions, it seems like maybe if like maybe this is, like, maybe this is, you know,
is no longer a hot topic, but you know, you're the expert. I think earlier on, maybe in
2023, 2024, a lot of brands were just blocking right, AI bombers. And they're like,
oh, you're not going to take our traffic, right? But it doesn't seem like that's the case anymore,
or maybe it is. But can you just tell us maybe if there are still some brands out there,
they're like, yeah, we're blocking, you know, we're blocking big AI. Is that a good move? Is that a
bad thing? Yeah, no, obviously there's been a lot of heat around this topic.
And I think, you know, having worked in, you know, and run companies and built and run companies in advertising, like, you know, I have an acute sort of, you know, feeling of alignment with the publisher community who create all this amazing free content and it's all ad supported, right?
And so I think there's a tremendous amount of concern in that world about, hey, if I give the AI access to all my content and then what they're doing is repurposing it, you know, I lose my traffic and I lose my traffic and I lose.
my revenue stream and I can't afford to pay the great content creators who are creating that
stuff, right? It disrupts my whole business model. I believe that's true and I think that there
have to be ways to do that. I think what's happened and we see this occasionally with our customers
and, you know, our customers aren't publishers, right, in the sense of they don't typically,
they're not typically ad supported. They don't really care in most cases whether the product is bought
through a third-party service or directly.
They don't really actually care
if you visit their content
as long as you access the content.
And so it's a completely different strategy
for a brand who sells a product or a service.
And unfortunately, I think people are painting this
with a really broad brush and telling,
hey, you should block all the crawlers.
You should not.
If you sell a product, if you sell a service,
if you're a local business,
if you're a small business,
like the last thing you should be doing
is blocking AI crawlers.
You need them to crawl your
content and you have to be encouraging them by giving them more content to crawl. If you are
a ad-supported publisher, I think if I were an ad-supported publisher, I would be blocking
AI crawlers because I don't want my content being stolen and repurposed and trained and things
like that. And so I don't think it's a one-size-fits-all answer. But the first thing we tell
brands is like, if you're blocking anything, you have to stop. Yeah. So we've covered a ton on
today's show, Michael. I mean, we've gone from everything from, you know, SEO and
SM and how those lines are starting to blur, you know, talked about intent versus
keywords and even how, you know, AI large language models are changing and, you know, how
intent and memory impacts that. But as we wrap up, what's the one most important piece of
advice that you can give to brands that want to prepare for the post-human web?
Yeah, I mean, I kind of started with it. I'll end with it.
and expand on it. So if you don't have your data right, right, if you don't have access to your
data, if you don't have, you know, a singular distributable set of, you know, a set of authoritative
data around your business that's easily distributable out to old and new endpoints, Google and Bing,
and Yelp and also Open AI and Claude and perplexity and all these different endpoints,
then you're just not ready. And the pace of change here is going to increase, not decrease.
And so as Apple eventually comes online with a intelligent agent, and look, I think Reddit will build one.
I think lots of community-driven things will have some form or some version of their own consumer, you know, intelligence systems of AI agent or answer engine.
We're just at the beginning of a fragmentation period here.
And it starts with getting your data right.
And then you got to roll with it.
You've got to understand that like, you know,
You don't need a Reddit strategy today.
Everyone thinks you need a Reddit strategy today.
They're not being cited in detailed queries, right?
It's great training data.
It's not authoritative citations.
That will change if they build their own answer engine.
But today, it's a bad use of your resources to be able to, trying to build citations through Reddit.
And this is a highly controversial thing because at the highest level, people see that Reddit are showing up as citations, but they're not at localized queries.
They're not at specific queries.
That's your own content.
That's your listings information.
That's your review responses and things like that.
And so this is going to, I guess a long answer, get your data right and be ready for tons and tons of change.
And this is kind of what we wake up and help our partners do every day.
Getting ready for change.
It's all we can do every single day.
But Michael, you helped a lot of brands out there who are struggling with that question.
Be prepared for some of that change.
So thank you so much for taking time out of your day to join the Everyday AI show.
we really appreciate it.
Thanks for having me.
Great chat with you.
All right.
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