Achieving a leap from 575 trials per month to 819 trials per week from AI search in just seven weeks illustrates the profound impact of AI-driven SEO (AEO) for B2B SaaS companies. This case study details the exact AEO playbook used to help a multiple eight-figure ARR SaaS business secure the top position in ChatGPT recommendations, all without black hat tactics or short-term schemes. The strategies outlined here leverage organic AI and search optimization to influence how buyers find and select vendors in the evolving world of AI search engines and large language models.

The Power of AI Search and the New Buyer Journey
AI search, or AEO, refers to acquiring customers through AI assistants such as ChatGPT, Claude, and Perplexity. According to HubSpot's 2024 report, 48% of B2B buyers now use AI search to evaluate vendors. This shift has accelerated the trend toward zero-click research, where buyers get tailored answers directly from chat models, often bypassing traditional websites completely.
As a result, impressions may rise while clicks fall, and the locus of influence shifts from the website to AI-generated answers. Traditional SEO and AEO are not the same—SEO focuses on ranking entire pages and earning clicks, while AEO aims for frequent mentions and citations within AI-generated responses, optimizing for mention rate, citation share, and narrative control.
| SEO | AEO (AI SEO) |
|---|---|
| Rank whole pages on Google | Get cited in AI answers and passages |
| Clicks, impressions, positions | Mention rate, citation rate, share of voice |
| Low intent (generic results) | High intent (personalized recommendations) |
| Domain authority, backlinks | Content quality, trust, entity clarity |
Technology Shifts Create New Opportunities
Technological revolutions, such as the rise of AI, bring new distribution channels. The emergence of ChatGPT, Gemini, and other LLMs signifies a major shift in how buyers discover products and services. Distribution shifts create outsized opportunities, enabling startups to outrank large incumbents by focusing on content quality, freshness, and trust signals, rather than domain authority.
In these transitional periods, companies that adapt fastest often capture the lion's share of the market. Category leaders can seize up to 76% of market cap, leaving late entrants to compete for the remaining 24%. AI search thus represents a rare window to reshape industry dominance.
Key Differences Between SEO and AEO
With AI search, the rules have changed:
| SEO | AEO |
|---|---|
| Optimize for Google and Bing | Optimize for OpenAI, Anthropic, Perplexity, Gemini |
| Chase keywords and clicks | Target entity mentions and passage citations |
| Focus on backlinks and domain authority | Focus on trust, external validation, and content clarity |
| Impressions and clicks | Mention rate, citation share, and narrative influence |
Our Four-Step AEO Playbook for AI Visibility
AI Visibility Audit
Establishing a baseline for AI mentions and citations is very different from a traditional SEO audit. Instead of relying solely on keyword tools, the process maps out a prompt universe—all the queries and questions buyers use in LLMs to discover solutions. This involves analyzing sales calls, support tickets, customer research, Reddit, and podcasts to capture the language and context real buyers use.
Testing queries across AI models (ChatGPT, Gemini, Claude, Perplexity) reveals unique model biases and citation sources. Data must be interpreted probabilistically, as impression data is not exposed by these models, and personalized memories in workspaces can skew results.
AI-Assisted Content Engine
Content is crafted using custom AI-powered workflows, overseen by senior human editors to ensure quality. The approach combines traditional keyword research with AEO audits, creating in-depth cluster assignments, pillar and spoke models, and fact-checked, entity-rich content.
Three main content types are produced: daily articles (blogs), landing pages, and original research. All content is written to answer buyer questions, integrate external user commentary, and cite original sources.
Google has confirmed that it does not penalize AI-assisted content as long as quality is maintained. The focus is on producing content that is both human-edited and optimized for LLM retrieval, using a citable framework.
Third-Party Validation
AI models trust external validation over self-claims. This includes reviews (G2, Capterra, TrustRadius), Reddit discussions, Wikipedia, YouTube, and industry forums. Incorporating user commentary, linking to reviews, and citing sources builds trust signals that AI models prioritize.
Reddit is particularly influential, as LLMs frequently cite discussions and comments from high-traffic, high-karma subreddits. Building authentic, neutral, and entity-rich discussions on Reddit can drive citations in AI answers.
Technical Optimization for AI Agents
Technical optimization is critical for AI agents, who require fast, accessible, and well-structured content. Essential areas include:
| Optimization Area | Action |
|---|---|
| Indexability & Crawling | Allow AI bots, use server-side rendered HTML, ensure sitemaps are current |
| Site Architecture | Implement canonical tags, clean URLs, avoid orphan pages |
| Structured Data | Add schema and FAQ schema to key pages |
| Performance | Compress images, use CDNs, minimize JavaScript, optimize TTFB |
The Citable Content Framework
The proprietary CITABLE framework underpins all AEO content:
| Letter | Principle | Description |
|---|---|---|
| C | Entity Clarity | Clear summary, definition, and context at the top (TLDDR/BLUFF) |
| I | Intent Architecture | Answers core and adjacent buyer queries, covers the long tail |
| T | Third Party Validation | External proof from reviews, wikis, and forums |
| A | Answer Quality | Verifiable, quotable facts, sources cited |
| B | Block Structure | Content in extractable blocks (200-400 words), tables, FAQs |
| L | Latest & Consistent | Timestamp content, update regularly, use dateModified schema |
| E | Entity Relationship Mapping | Explicitly state integrations, alternatives, use cases |
This ensures content is optimized for both human readers and AI retrieval, boosting AI citation rates and SEO performance.
How Success Is Measured in AEO
Traditional funnel metrics evolve in AEO:
| Funnel Stage | Metrics |
|---|---|
| Top of Funnel | Share of voice, mention rate, citation rate in AI answers |
| Middle | AI-referred traffic, click tracking, brand search lift |
| Bottom | Trials, demos, pipeline, new revenue |
Self-reported attribution is crucial—adding a "How did you hear about us?" field at conversion provides high-quality data about AI search influence, supplementing analytics and search console data.
Speed of Results and Industry Applicability
Unlike traditional SEO, which can take six months to show results, AEO can deliver citations and business impact within weeks. New content may be cited in AI answers within 48 to 72 hours. Even fresh domains (DA0) have seen inbound interest when the right levers are pulled.
AI search is not just disrupting Google, but also review sites, forums, LinkedIn, and YouTube. If buyers previously used these sources for research, AEO can have a measurable impact, accelerating the evaluation process and providing personalized recommendations.
