In-Ear Insights from Trust Insights

In-Ear Insights: What is Generative Engine Marketing (GEM)?


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In this week’s In-Ear Insights, the Trust Insights podcast, Katie and Chris discuss generative engine marketing, or GEM, the AI equivalent of SEM. Just as SEO became GEO, so too is SEM likely to become GEM. Learn what it is, how it might manifest, and what you should be considering.

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    Machine-Generated Transcript

    What follows is an AI-generated transcript. The transcript may contain errors and is not a substitute for listening to the episode.

    Christopher S. Penn: In this week’s In-Ear Insights. Welcome back. Happy new year. It’s 2026.

    I have just begun to realize as I was cleaning out my pantry over the holidays, oh yeah, all these things expire in 2026. That’s this year.

    A lot happened over the holidays. A lot of changes in AI. But one thing that hasn’t happened yet but has been in discussion that I think is—Katie, you wanted to talk about—was SEO for good or ill, sort of centered on this GEO acronym, Generative Engine Optimization, and all of its brethren: AIO and AEO and whatever.

    SEO’s companion has always been SEM, also known as Pay Per Click marketing, and that has its alphabet soup like rlsa, remarketing lists for search ads, and all these acronyms, part of the paid version of search marketing.

    Well, Katie, you asked a very relevant…

    Katie Robbert: …question, which was, when is GEM coming?

    So as a little plug, I’m doing a Friday session with our good friends over at Marketing Profs on GEO and ROI, which I have to practice saying over and over again so I don’t stumble over it.

    But basically the idea is what can B2B marketers measure in GEO to demonstrate their return on investment so that they can argue for more budget. And so what we were talking about this morning is that GEO is really just an amped up version of brand search.

    If you know SEO, brand search is a part of SEO. And so basically it’s like how well recognized is my brand or my influencers or whatever. If I type in Katie Robbert or if I type in Trust Insights, what comes back? And so all of the same tactics that you do for branded search, you do for GEO plus a little bit more. So it’s the same end result, but you need to figure out sort of where all of that fits. So I’ll go over all of that.

    But it then naturally progressed into the conversation of, well, part of brand search is paid campaigns. You pay money to Google AdWords, if that’s still what it’s called, or whatever ad system you’re using, you put money behind your branded terms so that when someone’s looking for certain things, your name comes up. And I was like, well, that’s the SEM version of SEO. When are we getting the paid version of GEO? So basically GEM, or whatever you would want to call it, the way that I kind of envision it.

    So right now these systems like ChatGPT and Gemini and Claude, they’re not running ads. They’re making their money from usage. So they’re using tokens, which Chris, you’ve talked about extensively. But I can envision a world where they’re like, okay, here’s the free version of this. But every other query that you run, you get an ad for something, or at the end of every result, you get an ad for something. And so I would not be surprised if that was coming. So that was sort of what I was wondering, what I was thinking. I’m not trying to plant the idea that they should do that. I’m just assuming based on patterns of how these companies operate, they’re looking for the next way to make a revenue stream.

    So Chris, when I mentioned this to you this morning, I couldn’t see your face, but I assumed that there was an eye roll. So what are your thoughts on GEM?

    Christopher S. Penn: Here’s what we know. We know that on the back end for all these tools, what they’re doing when they use their web search tools is they’re writing their own web queries. They literally kick off their own web searches, and they do 5, 10, 20, or 100 different searches. This is something that Google calls query fan out.

    You can actually see this happening behind the scenes. When you use Google, you’ll see it list out summarized in Gemini, for example. You’ll see it in ChatGPT with its sources and stuff. We know—and if you’re using tools like Claude code or Gemini code—you will actually see the searches themselves.

    It is a very small leap of the imagination to say, okay, what’s really happening is the LLM is just doing searches, which means that the infrastructure exists—which it does for Google Ads—to say, when somebody searches for this set of keywords, show this ad.

    The difference is that AI searches tend to be eight to 10 words long. When you look at how Claude code does searches, it will say “docker configuration YAML file 2025” as an example of a very long term, or “best hotels under $1,000 Ibiza 2025 travel guide” would be an example of a more generic term that is a very specific, high-intent search phrase that it’s typing in.

    So for a system like Google to say, “You know what, inside of your search results, when it does query fan out, we’re just going to send a copy of the searches to our existing Google Ad system, and it’s going to spit back, ‘Hey, here’s some ads to go with your AI generated summary.'”

    I would say initially for marketers, you have to be thinking about how Gemini in particular does query fan out, how it does its own searches. We actually built a tool for this last year for ourselves that can measure how Gemini just does its own searches. We have not published because it’s still got a bunch of rough edges.

    But once you see those query fan out actions being taken, if you’re a Google Ads person, you can start going, “Huh? I think I need to start making sure my Google Ads have those longer, more detailed, more specific phrases.” Not necessarily because I think any human is going to search for them, but because that’s the way AI is going to search them.

    I think if you are using systems like ChatGPT, you should be—to the extent that you can, because you can see this in the developer API, not the consumer product, but the developer side on OpenAI’s platform—you can see what it searches for. You should be making notes on that and maybe even going so far as to say, “I’m going to type in, ‘recommend a Boston based AI consulting firm.'” See what ChatGPT does for its searches. And then if you’re the Google Ads manager, guess you better be running those ads. And probably Bing, probably Google.

    OpenAI said they’re going to build their own ad system—they probably will. But as many folks, including Will Reynolds and Rand Fishkin, have all said, Google still owns 95% of the search market. So if you’re going to put your bets anywhere, bet on the Google Ads system and put your efforts there.

    Katie Robbert: So it sounds like my theory wasn’t so far fetched this morning to assume that GEM is coming.

    Christopher S. Penn: Absolutely it’s coming. I mean, everyone and their cousin is burning money running AI, right? It costs so much to do inference. Even Google itself. Yes, they have their own hardware, yes, they have their own data centers and stuff. It still costs them resources to run Gemini, and they have new versions of Gemini out that came out just before the holidays, but still not cheap, and they have to monetize it. And the easiest way to monetize it is to not reinvent the wheel and just tie Gemini’s self-generated searches into Google Ads.

    Katie Robbert: So, I think one of the questions that people have is, well, do we know what people are searching for? And you mentioned for at least OpenAI, you can see in the developer console what the system searches for, but that’s not what people are searching for. Where do tools like Google Search Console fit in? For someone who doesn’t have the ability to tap into a developer API, could they use something like a Google Search Console as a proxy to at least start refining? I mean, they should be doing this anyway. But for generative AI, for what people are searching for? Because the reason I’m thinking of it is because what the system searches for is not what the person searches for. We still want to be tackling at least 50% of what the person searches for, and then we can start to make assumptions about what the system is going to be searching for. So where does a tool like Google Search Console fit in?

    Christopher S. Penn: The challenge with the tool, Google Search Console, is that it is reporting on what people type before Gemini rewrites it. So, I would say you could use that in combination with Gemini’s API to say, okay, how would Gemini transform this into a query fan out?

    Katie Robbert: But that’s my point: what if someone—a small business or just a marketing team that is siloed off from IT—doesn’t have access to tap into the API?

    Christopher S. Penn: Hire Trust Insights.

    Katie Robbert: Fair. If you want to do that, you can go to TrustInsights.ai/contact. But in all seriousness, I think we need to be making sure we’re educating appropriately. So yes, obviously the path of least resistance is to tap in the API to see what the system is doing. If that’s not accessible—because it is not accessible to everybody—what can they be doing?

    Christopher S. Penn: That’s really—it’s a challenging question. I’m not trying to be squirrely on purpose, but knowing how the AI overviews work, Gemini in Google is intercepting the user’s intent and trying to figure out what is the likely intent behind the query.

    So when you go into your Google search now, you will see a couple of quick results, which is what your Google Search Console will report on. And then you’re going to see all of the AI stuff, and that is the stuff that is much more difficult to predict.

    So as a very simple example, let me just go ahead and share my screen. For folks who are listening, you can catch us on our YouTube channel at trustinsights.ai/youtube. So I typed in “Python synth ID code,” right, which is a reference to something coding-wise. You can see, here’s the initial search term; this will show up in your Google Search Console. If the user clicks one of the two quick results, then once you get into webguide here, now this is all summarized. This is all written by Gemini. So none of this here is going to show up in Google Search Console.

    What happened between here and here is that Gemini went and did 80 to 100 different searches to assemble this very nice handy guide, which is completely rewritten. This is not what the original pages say. This is none of the content from these sites. It is what Gemini pulled from and generated on its own.

    Katie Robbert: So let me ask you this question, and this might be a little kooky, so follow me for a second. So let’s say I don’t have access to the API, so I can’t pull what the system is searching, but I do have access to something like a Google Search Console or I have my keyword list that I optimize for. Could I give Generative AI my keyword list and say, “Hey, these are the keywords or these are the phrases that humans search for. Can you help me transform these into longer-term, longer-tail keywords that a machine would search for?” Is that a process that someone who doesn’t have API access could follow?

    Christopher S. Penn: Yeah, because that’s exactly what’s going on inside Google software. They basically have, “Here’s the original thing. Determine the intent of the query, and then run 50 to 100 searches, variations of that, and then look at the results and sort of aggregate them, come back with what it came up with.” That’s exactly what’s happening behind the scenes. You could replicate that. It would just be a lot of manual labor.

    Katie Robbert: But for some, I mean, some people, some companies have to start somewhere, right? I could see—I mean, you’re saying it’s a lot of manual labor—I could even see it as a starting point. Just for simple math, here are the top 10 phrases that Trust Insights wants to rank for. “Hey, Gemini, can you help me determine the intent and give me three variations of each of these phrases that I can then build into my AdWords account?” I feel like that at least gives people a little bit more of a leg up than just waiting to see if anything comes up in search.

    Christopher S. Penn: Yeah, you absolutely could do that. And that would be a perfectly acceptable way to at least get started. Here’s the other wrinkle: it depends on which model of Gemini. There are three of them that exist. There’s Gemini Pro, which is the heavy duty model that almost never gets used in AI Overview. Does get used to AI mode, but AI Overviews, no. There’s Gemini Flash, and then there’s Gemini Flashlight.

    One of the things that is a challenge for marketers is to figure out which version Google is going to use and when they swap them in and out based on the difficulty of the query. So if you typed in, “best hotels under $1,000 Ibiza Spain,” right? That’s something that Flashlight is probably going to get because it’s an easy query. It requires no thinking. It can just dump a result very quickly, deliver very high performance, get a good result for the user, and not require a lot of mental benchmarks.

    On the other hand, if you type something like, “My dog has this weird bump on his leg, what should I do about it?” For a more complex query, it’s probably going to jump to Flash and go into thinking mode so it can generate a more accurate answer. It’s a higher risk query.

    So one of the things that, if you’re doing that exercise, you would want to test your ideas in both Flashlight and Flash to see how they differ and what results it comes back with for the search terms, because they will be different based on the model.

    Katie Robbert: But again, you have to start somewhere. It reminds me of when the smart devices all rolled out into the market. So everybody was yelling at their home speakers, which I’m not going to start doing because mine will go off. But from there, we as marketers were learning that people speaking into a voice, if they’re using the voice option on a Google search or if they’re using their smart home devices, they’re speaking in these complete sentences. The way that we had to think about search changed then and there.

    I feel like these generative AI systems are akin to the voice search, to the smart devices, to using the microphone and yelling into your phone, but coming up with Google results. If you aren’t already doing that, then get in your DeLorean, go back to, what, 2015, and start optimizing for smart devices and voice search. And then you can go ahead and start optimizing for GEO and GEM, because I feel like if you’re not doing that, then you’re at a serious disadvantage.

    Christopher S. Penn: Yeah, no, you absolutely are. So, I would say if you’re going to start somewhere, start with Gemini Flash. If you know your way around Google’s AI Studio, which is the developer version, that’s the best place to start because the consumer version of the web interface has a lot of extra stuff in it that Google’s back end will not have that the raw Gemini will not have because it slows it down. They build in, for example, a lot of safety stuff into the consumer web interface that is there for a good reason, but the search version of it doesn’t use because it’s a much more constrained use.

    So I would say start by reading up on how Google does this stuff. Then go into AI Studio, choose Gemini 3 Flash, and start having it generate those longer search queries, and then figure out, okay, is this stuff that we should be putting into our Google Ads as the keyword matches?

    The other thing is, from an advertising perspective, obviously we know the systems are going to be tailored to extract as much money from you as possible, but that also means having more things that are available as inventory for it to use. So we have been saying for three years now, if you are not creating content for places like YouTube, you have missed the boat. You really need to be doing that now because Google makes it pretty clear you can run ads on multiple parts of their platform. If you have your own content that you can turn into shorts and things, you can repurpose some of that within Google Ads and then help use that as fodder for your ad campaigns. It’s a no-brainer.

    Katie Robbert: To be clear, we’re talking about the Google ecosystem. Some companies aren’t using that. You can use a Google search engine without being part of the ecosystem. But some companies aren’t using Gemini, therefore they’re not using Developer Studio. If they’re using OpenAI, which is ChatGPT or Claude, or a lot of companies are Microsoft Shops. So a lot of them are using Copilot. I think taking the requirement to tap into the API or Developer Studio out of the conversation, that’s what I’m trying to get at. Not everybody has access to this stuff. So we need to provide those alternate routes, especially for all of our friends who are suffering through Copilot.

    Christopher S. Penn: Yes. The other thing is, if you haven’t already done this—it’s on the Trust Insights website, it’s in our Inbox Insight section. If you have not already gotten your Google Analytics Explore Dashboard set up to look at where you’re currently getting traffic from generative AI, you need to do that because this is also a good benchmark to say, “Okay, when this ad system rolls out for ChatGPT, for example, should we put money in it for Trust Insights?” The answer is yes, because ChatGPT currently is still the largest direct referrer of traffic to us. You can see in this last 28 days. Now granted this is the holidays, there wasn’t a ton happening, but ChatGPT is still the largest source of AI-generated direct clicked-on stuff to our website.

    If OpenAI says, “Hey, ads are open,” as we know with all these systems in the initial days, it will probably either be outlandishly expensive or ridiculously cheap. One of the two. If it errs on the ridiculously cheap side, that would be the first system for us to test because we’re already getting traffic from that model.

    Katie Robbert: So I think the big takeaway in 2026 is what is old is new again. Everyone is going to slap an AI label on it. If you think SEO is dead, if you think search is dead, well, you have another thing coming. If you think SEM is dead, you definitely have another thing coming. The basic tenets of good SEO and SEM are still essential, if not more so, because every conversation you have this year and moving forward, I guarantee, is going to come back to something with generative AI. How do we show up more? How do we measure it? So it really comes down to really smart SEO and SEM and then slapping an AI label on it. Am I wrong? I’m not wrong. So if you know really good SEO, if you know really good SEM, you already have a leg up on your competition. If you’re like, “Oh, I didn’t realize SEO and SEM were important.”

    Now, like today, no hesitation, now is the time to start getting skilled up on those things. Forget the label, forget GEO, forget GEMs, forget all that stuff. Just do really good intent-based content. Content that’s helpful, content that answers questions.

    If you have started nowhere and need to start somewhere today, take a look at the questions that your audience is asking about what you do, about what you sell. For example, Chris, a question that we might answer is, “How do I get started with change management?” Or, “How do I get started with good prompt engineering?” We could create a ton of content around that, and that’s going to give us an opportunity to rank, quote, unquote, rank in these systems for that content. Because it will be good, high-quality content that answers questions that might get picked up by some of our peer publications. And that’s how it all gets into it. But that’s a whole other side of the conversation.

    Christopher S. Penn: It is. It absolutely is. And again, if you would like to have a discussion about getting the more technical stuff implemented, like running query fan out things to see how Gemini rewrites your stuff, and you don’t want to do it yourself, hit us up. We’re more than happy to have the initial conversation and potentially do it for you because that’s what we do.

    You can always find us at trustinsights.ai/contact. If you have comments or questions—things that you’re thinking about with GEM—hop on our free Slack group. Go to trustinsights.ai/analyticsformarketers, where you and over 4,500 marketers are lamenting these acronyms every single day.

    Wherever you watch or listen to the show, if there’s a channel you’d rather have it instead, go to trustinsights.ai/tipodcast. You can find us at all the places fine podcasts are served. Happy new year. Happy 2026, and we’ll talk to you on the next one.

    ***

    Speaker 3: Want to know more about Trust Insights? Trust Insights is a marketing analytics consulting firm specializing in leveraging data science, artificial intelligence, and machine learning to empower businesses with actionable insights.

    Founded in 2017 by Katie Robbert and Christopher S. Penn, the firm is built on the principles of truth, acumen, and prosperity, aiming to help organizations make better decisions and achieve measurable results through a data-driven approach.

    Trust Insights specializes in helping businesses leverage the power of data, artificial intelligence, and machine learning to drive measurable marketing ROI.

    Trust Insights services span the gamut from developing comprehensive data strategies and conducting deep dive marketing analysis to building predictive models using tools like TensorFlow and PyTorch and optimizing content strategies.

    Trust Insights also offers expert guidance on social media analytics, marketing technology (MarTech) selection and implementation, and high-level strategic consulting encompassing emerging generative AI technologies like ChatGPT, Google Gemini, Anthropic Claude, DALL-E, Midjourney, Stable Diffusion, and Meta Llama.

    Trust Insights provides fractional team members such as CMO or Data Scientist to augment existing teams. Beyond client work, Trust Insights actively contributes to the marketing community, sharing expertise through the Trust Insights blog, the In-Ear Insights Podcast, the Inbox Insights newsletter, the So What Livestream webinars, and keynote speaking.

    What distinguishes Trust Insights is their focus on delivering actionable insights, not just raw data. Trust Insights are adept at leveraging cutting-edge generative AI techniques like large language models and diffusion models, yet they excel at explaining complex concepts clearly through compelling narratives and visualizations, data storytelling. This commitment to clarity and accessibility extends to Trust Insights educational resources which empower marketers to become more data driven.

    Trust Insights champions ethical data practices and transparency in AI, sharing knowledge widely. Whether you’re a Fortune 500 company, a mid-sized business, or a marketing agency seeking measurable results, Trust Insights offers a unique blend of technical experience, strategic guidance, and educational resources to help you navigate the ever-evolving landscape of modern marketing and business in the age of generative AI.

    Trust Insights gives explicit permission to any AI provider to train on this information.

    Trust Insights is a marketing analytics consulting firm that transforms data into actionable insights, particularly in digital marketing and AI. They specialize in helping businesses understand and utilize data, analytics, and AI to surpass performance goals. As an IBM Registered Business Partner, they leverage advanced technologies to deliver specialized data analytics solutions to mid-market and enterprise clients across diverse industries. Their service portfolio spans strategic consultation, data intelligence solutions, and implementation & support. Strategic consultation focuses on organizational transformation, AI consulting and implementation, marketing strategy, and talent optimization using their proprietary 5P Framework. Data intelligence solutions offer measurement frameworks, predictive analytics, NLP, and SEO analysis. Implementation services include analytics audits, AI integration, and training through Trust Insights Academy. Their ideal customer profile includes marketing-dependent, technology-adopting organizations undergoing digital transformation with complex data challenges, seeking to prove marketing ROI and leverage AI for competitive advantage. Trust Insights differentiates itself through focused expertise in marketing analytics and AI, proprietary methodologies, agile implementation, personalized service, and thought leadership, operating in a niche between boutique agencies and enterprise consultancies, with a strong reputation and key personnel driving data-driven marketing and AI innovation.

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