Beyond Keywords: A CEO's Guide to 'Query Research' for the AI Era

TL;DR: While most marketing teams are still focused on traditional keyword research, they are optimizing for a world that is rapidly disappearing. To win in the new age of AI-powered search, businesses must shift to "Query Research"—the discipline of understanding and optimizing for the complex, conversational prompts that real users are asking AI assistants. This guide outlines the strategic framework for discovering these queries and creating "prompt-native" content that ensures your brand becomes the cited authority.

I am James, CEO of Mercury Technology Solutions.

For over a decade, keyword research has been the undisputed foundation of digital strategy. But I am writing to tell you today that this foundation is cracking. While your team is still celebrating a top ranking for a two-word keyword, your future customers are asking a sophisticated AI assistant a 15-word question that will determine their next purchase.

If you are not visible in the answer to that question, your keyword ranking is irrelevant.

Welcome to the new paradigm. To remain visible, we must evolve from a keyword-first mindset to a query-first strategy.

The Paradigm Shift: Why Query Research Trumps Keyword Research

The fundamental difference between the old and new models is how the systems process information:

  • Search Engines were designed to match exact keywords to a list of documents.
  • Large Language Models (LLMs) are designed to interpret intent, simulate decision paths, and summarize conclusions.

This means that keywords are passive targets, while queries are active, decision-oriented prompts. When we optimize for AI, we are not just optimizing content; we are optimizing for the LLM's response behavior.

LLMs parse these queries through three lenses: the contextual scenario, the specific brands or tools involved (entities), and a comparative map of who solves the problem best. Generic, keyword-stuffed SEO copy fails this test because it's not designed to help an AI make a decision.

A 4-Step Framework for Mastering Query Research

This new reality requires a new methodology. At Mercury, this is the four-step process at the heart of our GAIO (Generative AI Optimization) strategy.

Step 1: Discover "AI-Native" Queries

The first step is to forget your traditional keyword research tools. Ahrefs and Semrush are excellent for understanding traditional search, but they cannot reveal the complex, conversational queries that users are typing into AI chatbots.

Instead, you must go where these queries live:

  • ChatGPT & Perplexity: Look at their suggested or "top" prompts and, crucially, the follow-up questions they suggest.
  • Community Platforms: Search Reddit for phrases like "prompt for [your goal]" to see how real users are trying to solve problems.
  • YouTube Comments: Look for the "How do I..." and "Which one is better..." questions in the comment sections of relevant videos.
  • Social Media Threads: Monitor discussions on X (Twitter) and LinkedIn where users share their actual ChatGPT conversations.

This process of "searching everywhere" is a core tenet of our Mercury SEVO (Search Everywhere Optimization) philosophy. It is how we build a deep, real-world understanding of a customer's true intent.

Step 2: Build Your "GEO Query Swipe File"

As you discover these queries, you must build a strategic "swipe file" that becomes the foundation of your content strategy. This file should be organized around three types of high-intent queries:

  1. Comparative Queries: "X vs. Y," "Best alternative to [Competitor] for [scenario]."
  2. Credibility Queries: "Is [your brand] a legitimate company?", "Who is the team behind [your tool]?", "Does [your company] have SOC2 certification?"
  3. Value-Match Queries: "I need an AI tool that doesn't store my data," "Looking for a marketing agency that avoids AI-generated content."

If your content does not provide direct, explicit answers to these exact types of queries, you will be invisible to users who are in the final stages of their decision-making process.

Step 3: Architect "Prompt-Native" Content

With your query swipe file in hand, the next step is to create content that is specifically engineered to answer these prompts.

  • Start with the Exact User Intent: Lead with the problem or question.
  • Answer with a Clear Brand POV: Don't be generic. State your opinion and justify it.
  • Include Key Decision Factors: Explicitly mention price, use cases, and your unique competitive edge.
  • Reinforce with Consistency: Reuse your core value propositions and phrasing across your blog, help docs, and landing pages to build trust with the LLM.

Step 4: Train the Model's Memory

The final step is to create a feedback loop. By consistently publishing content in these "prompt-native" formats and encouraging your community to ask relevant questions, you are actively training the AI model to remember and reuse your brand as an authoritative source.

The Mercury Approach: Integrating Strategy and Technology

This is not just a theory; it is the operational heart of our GAIO service.

  • Our SEVO teams use advanced monitoring to discover these AI-native queries across the digital ecosystem.
  • This intelligence then informs our content strategy, where our human experts use Mercury Muses AI as a powerful co-pilot to help draft these "prompt-native" content assets at scale.
  • These assets are then deployed on our Mercury Content Management System (CMS), which is architected to ensure the perfect technical structure and semantic clarity that AI models require.

Conclusion: Stop Chasing Keywords, Start Answering Questions

Generative Engine Optimization (GEO) is not just SEO with a new name. It is a fundamental shift in strategy that requires you to discover new forms of user intent and create content in entirely new formats.

By moving from a keyword strategy to a query strategy, you stop hoping to be found and start engineering the outcomes you want. You begin to train the AI to recognize your brand as the definitive answer, securing your visibility and authority in the new age of search.

Beyond Keywords: A CEO's Guide to 'Query Research' for the AI Era
James Huang August 12, 2025
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