AI tools are exploding in popularity — for example, 800M people use ChatGPT every week — and this adoption is reshaping how customers discover and buy products:
ChatGPT users can now buy recommended products within their chats.
The field of AI search is dynamic, but marketing leaders face a clear choice: Begin developing GEO capabilities now or watch competitors establish positions while the rules are still forming.
Understanding the new digital discovery landscape requires recognizing four fundamental shifts in how customers find and evaluate products with AI. These shifts represent the future of search, where AI mediates discovery rather than just organizing links.
From keywords to conversations
For years, customers typed fragmented keywords into search boxes: "best budget laptop" or "winter tires chicago." They learned to speak Google's language of short phrases optimized for algorithmic matching versus natural communication.
AI search inverts this dynamic with semantic search capabilities. Customers now ask complete questions the way they'd speak to a knowledgeable friend: "What's the best laptop under $500 for a college student who needs good battery life and portability?" or "Which winter tires perform best in heavy snow for a 2019 Honda CR-V?"
From click-through to zero-click
Traditional search success meant ranking on page one and generating clicks to your website. The entire SEO industry optimized around this funnel: visibility drives traffic, traffic enables conversion.
AI search operates differently. According to SparkToro, 60% of AI searches now end without any click to external websites. AI provides answers directly within the interface. Users get product recommendations, comparison data, and purchase guidance without visiting brand sites or even seeing traditional search results.
From ranking positions to recommendation slots
Google's first page offers ten organic results. SEO success means securing one of those spots. The difference between ranking #1 and #8 in traditional search engine page (SERP) results is significant, but everyone on page one gains some visibility.
AI search presents three to five recommendations in response to queries. That's the entire competitive set. If you're not in that handful of citations, you effectively don't exist for that customer's AI-supported decision process.
From one gatekeeper to many
SEO essentially means optimizing for Google. GEO means optimizing for multiple agentic AI platforms including ChatGPT, Google AI Overviews, Perplexity, Amazon Rufus, and Walmart Sparky. Each platform serves different use cases in the digital customer journey.
SEO fundamentals still matter, but the digital discovery landscape now extends far beyond Google search results. Traditional SEO focuses on getting your pages ranked highly. GEO focuses on getting your products cited and recommended.
But a strong SEO strategy doesn’t directly translate to AI search visibility. The factors involved are fundamentally different.
SEO vs. GEO
| Factor | SEO (Search Engine Optimisation) |
GEO (Generative Engine Optimization) |
| User Input Style | Keywords and short phrases | Natural language questions and conversations |
| Discovery Mechanism | Ranked links to websites | Direct, AI-generated answers with selective citations |
| Traffic Flow | Click-through to websites | Zero-click experiences within AI interfaces |
| Key Ranking Criteria | Page rank, backlinks, domain authority | Authority signals, structured data, third-party validation |
| Platform Focus | Primarily Google | ChatGPT, Perplexity, Amazon Rufus, Google AI Overviews, etc. |
| Content Optimization | Long-form, keyword-optimised pages | Structured, scannable formats (lists, tables, Q&A, etc.) |
| Measurement | SERP position, organic traffic | Citation frequency, recommendation slots, AI referral conversion |
To illustrate, try searching for the “best budget laptop under $500” on ChatGPT and Google. You’ll likely get completely different results.
The laptop brands recommended by ChatGPT don't appear on Google's first page:
Google Search: First Page Results
ChatGPT: Top 3 Recommendations
In the above example, none of the brands ChatGPT recommended appeared on Google’s first page. This case is not isolated: An estimated 90% of ChatGPT citations come from pages ranked 21 or lower on Google — deep into the “page 3 and beyond” SEO failure zone. Instead of prioritizing Google’s top results, ChatGPT tends to weight Wikipedia, academic sources, and established publications more heavily.
And each AI platform prioritizes different sources. Perplexity pulls significantly from Reddit discussions and community-generated content. Amazon Rufus emphasizes product detail pages, customer reviews, and retail-specific data. Google AI Overviews prioritize featured snippet content and schema-marked information.
Effective GEO requires you to:
1. Know which AI models your customers use.
Understanding which platforms your specific customers rely on determines where to focus optimization efforts. Trying to optimize for every platform spreads resources too thin.
2. Structure your content for AI consumption.
To answer natural language questions, AI models look for structured content that's easy to parse and extract: e.g., bulleted lists, clear headings, tables, Q&As, and declarative statements.
3. Build the right authority signals.
AI models evaluate authority differently than Google's search algorithms. Where Google emphasizes backlinks from high-domain-authority sites and user engagement signals, AI models prioritize original perspectives backed by subject matter expertise, structured data that makes claims verifiable, third-party validation from trusted sources, and entity recognition.
Understanding what makes for effective GEO execution is one thing. Executing it is another. Here’s what the actual work looks like and why it’s often more complex than it initially appears.
1. Mapping AI platform usage to customer journey.
AI-supported purchase decisions now span multiple platforms. ChatGPT and Perplexity handle research questions. Reddit provides peer reviews. Amazon Rufus guides product selection. Each platform serves different needs in the discovery process, and each uses different sources to generate recommendations. The practical work involves analyzing referral sources and testing target queries across platforms to see where you appear — or don't.
2. Restructuring content for AI readability.
This step is not just about adding bullet points. It’s a content architecture transformation affecting how information is organized across all owned properties. Your organization likely has thousands of existing content pieces. Content audits will be necessary to assess AI-readiness and identify high-priority pages for systematic rewriting. Training teams to create AI content that models can easily parse will be required as the space evolves.
3. Building authority beyond your own website.
AI models often weight external sources more heavily than your own claims about yourself. Building external authority means establishing presence on platforms AI models trust: Wikipedia pages, industry review sites, trade publications, and business directories. Brand consistency across all these touchpoints matters significantly. Inconsistent company descriptions, varying product specifications, or conflicting positioning messages create ambiguity that reduces AI citation confidence.
Organizationally, achieving these goals will involve more than the marketing team. PR must manage media relations. Legal must review entity claims and brand representation. Product teams must ensure technical specifications are accurate and consistent.
4. Coordinating across functions.
Traditional SEO lived primarily within marketing or a specialized SEO team managing on-page optimization, technical implementations, and content strategy. GEO requires coordination across functions and martech systems that have traditionally operated independently: SEO, PR, content, product, and legal teams. This cross-functional requirement represents a broader digital transformation challenge beyond marketing alone.
Most organizations haven't built these workflows. The coordination requirements alone create implementation challenges independent of technical complexity. Teams must suddenly collaborate across traditional boundaries. This organizational shift is often harder than the technical work itself.
The tactical requirements outlined above point to why many GEO initiatives fail. Without strategic prioritization, organizations spread resources across too many platforms and queries, achieving mediocre results everywhere instead of strong positions where it matters most.
Organizations that avoid this trap start with strategic clarity about what to prioritize and how to execute given their specific resources, competitive context, digital strategy, and overall marketing strategy.
You can't own every product attribute in AI's "mind." Which queries represent genuine business value? Which positions are winnable given your current authority and competitive set? Which battles can you fight with a realistic chance of winning? These are strategic questions tactics can’t answer.
We use a systematic framework to answer these questions. It moves from assessment to action with clarity about where you stand today and what your definition of success looks like. We'll be covering this framework in our next article.
Want to know which AI platforms your customers trust most and how to win those valuable recommendation slots? Contact us to get started.