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The Next Frontier of Discovery: Why Generative Engine Optimization (GEO) Matters 

By Neej Gore Chief Data Officer
Published on

Imagine asking ChatGPT to recommend the best running shoes. Instead of a list of search results, you get a curated answer with three brand recommendations. If you sell running shoes, you want to be in the top three, otherwise you’re invisible.

For more than two decades, online discovery followed a familiar pattern. You typed a query into Google, scanned the results, and clicked through to a website. Now that pattern is changing. Large Language Models (LLMs) like ChatGPT, Claude, and Perplexity are reshaping how people search, evaluate, and decide.

Globally, about 60% of searches end without a click. This number has remained steady over the past few years, even as AI has become more ubiquitous, however, when you double click into specific categories, zero-click behavior is climbing. Users are finding answers directly inside AI-driven environments which removes the need for a website visit.

As AI generated answers become the norm brands need to rethink how they appear, communicate, and deliver value in these environments.

Introducing Generative Engine Optimization (GEO)

Search Engine Optimization (SEO) shaped the last twenty years of digital marketing. Generative Engine Optimization (GEO) will shape the next twenty.

SEO was about ranking higher in search results. GEO is about being discoverable, credible, and authoritative inside AI-generated answers. Here are a few basic underlying principles that shape GEO:

  • Fill knowledge gaps: It’s important to understand what LLMs “know” about your brand, industry, or products, and more importantly, what they don’t know.
  • Create the right content: When you have a baseline understanding of what AI knows you can publish new material or refine existing assets, so the models have accurate, structured information to pull from.
  • Adapt to each model: Each model handles sources differently so it’s important that your strategies are tuned to the way individual systems prioritize and present information.
  • Track performance over time: Visibility inside AI answers changes constantly so it’s important to monitor how responses change, understand what is being surfaced, and adjust accordingly.
  • Focus on context: LLMs are highly contextual and pull information from specific questions, audiences, and locations. They don’t focus on keywords. To be included in the conversations that matter, your content needs to be structured appropriately.

Why GEO matters now

SEO has always been a black box but LLMs are even more opaque. They generate answers without clear attribution which means brands have less direct control over how they appear.

This is why actively guiding the LLMs is critical. These systems surface the information that is most available, consistent, and credible in their training data. If a brand hasn’t invested in shaping that information through accurate content, structured data, and authoritative sources it may never be referenced.

GEO gives marketers a way to influence these signals, so their brand is included when it counts.

The shift to GEO also creates opportunity. Early data shows that when people click out of an AI environment, conversion rates are nearly twice as high as baseline traffic. Users seem to trust the information they get from LLMs which makes them high-intent and primed to act.

The customer experience is still critical

As discovery moves into AI systems, it’s even more important that brands own and curate the customer experience. GEO is only the bridge that brings high-intent audiences back to first-party assets like websites, apps, and loyalty programs. What users do when they get there still falls on the brand.

Regulations are also changing. The EU AI Act, the Digital Markets Act, and the FTC’s disclosure rules are pushing platforms to provide clearer attribution. As these regulations mature, brands will gain more say over how they appear in generative answers.

Combined with GEO, this creates a strong position. First-party assets build trust and capture demand, while visibility in AI systems drives more of the right traffic. And because those clicks convert more often, the result is not just more traffic, but better traffic.

A shift in thinking

The fundamentals of authority, relevance, and trust are still important, but the way that people access information is changing. AI systems deliver a single synthesized response drawn from data, context, and user profiles.

Marketers need to adapt their approach to reflect these changes. Here are a few examples:

  • Context-driven discovery: GEO focuses on the way people phrase questions and the situations they bring to AI systems. Queries are longer, more specific, and framed around intent. Marketers need to build content that directly addresses those questions and speaks to real use cases, not just broad category terms.
  • Personalized responses: Generative engines tailor answers to each user. Results vary based on history, preferences, and location. Marketers should expect variability and create content that stays relevant across many possible scenarios.
  • Authority within the answer: Success is measured by whether the brand is named or cited. Marketers need to strengthen their authority by publishing clear, reliable, and well-sourced information that models are more likely to use.
  • Blurring of education and conversion: Generative answers often handle awareness and evaluation in one step. Marketers should produce content that explains, compares, and validates—helping AI systems deliver a complete response while positioning the brand as the right choice.
  • Rapidly changing outputs: LLM responses evolve as models retrain or update. Marketers need to monitor answers over time and be ready to adjust strategies when visibility changes.
  • Competition beyond direct peers: AI-generated answers may surface alternatives from adjacent categories. Marketers need to broaden competitive analysis and make sure their positioning stands out against both direct and indirect rivals.

Marketers who take these steps will be better equipped to capture high-intent audiences and strengthen their role in AI-driven discovery.

Where marketers go from here

LLMs are quickly becoming the way people search for answers. Discovery now happens inside generated responses, and brands need to shape how they’re represented in those moments.

That means understanding and shaping what AI systems know, creating accurate and structured content, filling the gaps where competitors are being surfaced, and preparing first-party experiences that meet the expectations of high-intent visitors.

GEO gives marketers a way to influence this new environment. At Zeta, we’re actively building approaches that help brands guide how they appear in AI-driven discovery and prepare for the next era of digital marketing. Stay tuned for more updates.

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