What is GEO?
GEO stands for Generative Engine Optimization and refers to the work involved in making content readable, credible, and citable for generative AI engines. Whereas traditional search engine optimization targets a search result with ten blue links, generative engine optimization targets the answer an AI engine formulates when a user asks a question. The goal is for the content to be retrieved, cited, and recommended within the answer itself.
The generative AI engines in question are AI assistants and response services such as ChatGPT, Perplexity, and Google AI Overviews. When a user asks one of them for advice, the engine summarizes an answer based on the sources it deems most relevant and reliable. GEO is the discipline that increases the likelihood that a given source will be included in that summary rather than being overlooked.
The concept is not a marketing gimmick. It originates from an academic paper published on arXiv in November 2023, in which researchers investigated which techniques measurably increase the visibility of content in AI-generated responses. This is worth noting because the discipline is thus based on documented research rather than on loose assumptions about how AI engines behave.
The difference between ranking high on a list and being cited in a single coherent answer is the fundamental distinction that sets GEO apart from traditional SEO. However, the two disciplines share much of the same foundation, and the similarities and differences are discussed in the section below comparing GEO to traditional SEO.
GEO vs. Traditional SEO
GEO and traditional SEO are built on the same foundation but each has its own goal. Both disciplines require that content be technically accessible, subject-matter authoritative, and backed by strong E-E-A-T signals. That is the common ground. The difference lies in what the effort is aimed at: a position in a list of search results or a spot within the answer generated by an AI engine.
The table below compares the two disciplines:
| Classic SEO | GEO | |
|---|---|---|
| Goal | High ranking among the ten blue links | Citation in a single AI-generated response |
| Output | A list of links that the user can click to navigate to | A cited source within the answer itself |
| Measurement | Rankings and Click-Through Rate (CTR) | Citation Share and Mentions in AI Responses |
| Foundation | Technical accessibility, authoritative content, E-E-A-T | The same foundation as classic SEO |
It is important to note that GEO does not replace traditional SEO. A website that is not technically accessible or professionally credible will not perform well in either standard search results or AI-generated responses. GEO builds upon the work already done in search engine optimization and expands it with a focus on citability in AI engine responses. It is an extension, not a replacement.
For a comprehensive overview of what SEO is and the elements it covers, please refer to the dedicated article on the topic.
Why GEO Matters Now
An increasing portion of a buyer’s research no longer begins with a traditional search result, but with a conversation with an AI assistant. ChatGPT, Perplexity, and Google AI Overviews are used to ask questions, compare options, and narrow down a list before the buyer even visits a supplier’s website. This shifts part of the early research phase into an environment where the answer is often presented as a summary citing a few sources.
This is where GEO comes into play. When an AI assistant summarizes a topic and references certain sources, those sources are the ones that come into play early in the customer journey. If your content isn’t retrieved and cited, you won’t be part of the conversation the buyer is having before they decide who to look into further. Generative AI SEO is about strengthening the conditions for being cited in that situation—not about promising that an AI assistant will recommend you.
This is a new field, and behavior is constantly changing as AI assistants evolve. Therefore, the point is one of principle rather than a specific number: As more research is conducted using AI assistants, it becomes more valuable to be a source they can find and cite. GEO is part of an overall SEO strategy, not a discipline in its own right.
How AI Selects and Cites Sources
To understand how you get cited, it helps to look at how individual AI assistants actually obtain the information they use to generate their responses. There is a fundamental distinction here that is worth knowing.
Some AI assistants retrieve sources from the web at the exact moment the question is asked. This is called retrieval: The assistant searches in real time, scans a selection of pages, and bases its response on what it finds at that exact moment. Other responses, however, draw on the model’s training data—that is, the material the model was trained on—which remains fixed until the model is updated. The difference is concrete. A response based on live retrieval can reflect content that was published recently, while a response based on training data is limited to what the model knew when it was trained.
The assistants that retrieve information in real time typically present citations with links to the sources on which the response is based. ChatGPT Search and Perplexity both display sources that the user can click on and that the response is based on. OpenAI describes this exact mechanism for ChatGPT Search, where responses are supplemented with links to relevant sources from the web (OpenAI’s description of ChatGPT Search). On Google’s side, results from AI features such as AI Overviews are incorporated into standard search results, as documented by Google in Search Central (Google Search Central’s documentation on AI features).
How citations are displayed and how many sources are highlighted varies from assistant to assistant. ChatGPT, Claude, and Perplexity handle source presentation differently, and an assistant without real-time data retrieval will not necessarily point to a specific source in the same way as one that searches in real time. The actual selection depends on the individual assistant, and there is no public documentation on how the internal prioritization of sources takes place. Therefore, it is more accurate to describe the observable behavior than to speculate on the logic behind it.
However, one prerequisite applies across the board: technical accessibility. If a page cannot be crawled or rendered by the bots that fetch content, it cannot be included in a response based on live fetching. This makes technical SEO a cornerstone before any of the other factors even come into play. A website that is crawlable and renders quickly is a prerequisite for being fetched and cited—not a guarantee that it will happen.
How to Use GEO
GEO adapts traditional SEO to a world where generative AI reads, evaluates, and cites content. In practice, the work centers on three prerequisites for becoming the source that an AI engine highlights. None of them guarantees a citation, but together they strengthen the conditions for your content to be found, understood, and used.
- Citable content: Clear, standalone answers and definitions that an AI engine can extract from context and reproduce directly.
- Technical accessibility: The content must be crawlable and renderable by AI bots before it can be cited. This is part of the technical foundation you’re familiar with from technical SEO.
- Documented authority: E-E-A-T and external sources that support the credibility of what you write. This is where generative AI SEO overlaps with link-building efforts.
These three pillars aren’t a new discipline with its own set of rules. They’re based on the same core principle as SEO for AI: content that’s easy to understand, easy to access, and trustworthy. If you’d like to read more, this is closely tied to an overall SEO strategy and the work done at an AI agency.


