Free AI Audit
Are You Invisible for the Most Important AI Searches?
Stop guessing and find out today with our FREE AI Visibility Audit.
If AI systems aren’t citing your brand, your future customers aren’t just missing you — they’re being actively guided to competitors. In the age of AI answers, visibility means being trusted as the source.
The Reality Check
AI doesn’t browse the web like humans do. It evaluates authority, consistency, and credibility before it ever recommends a brand.
Citation Beats Ranking
If AI doesn’t trust you, ranking alone won’t matter.
Pages
AI recommends brands, not individual URLs.
Competition
Your competitors may already be training AI systems to choose them.
What is Ai Audit
AI Audit Isn’t Another
SEO Report.
The AI Audit is designed for the Answer Economy.
We don’t analyze keyword positions — we assess your brand’s Entity Authority, semantic clarity, and likelihood of being selected as the trusted answer by AI systems like ChatGPT, Gemini, and Perplexity.
The Audit Lens
We evaluate how AI systems currently understand, interpret, and rank your brand — and where that understanding breaks down.
AI models form opinions based on patterns, consistency, and corroboration across the web.
The audit reveals how your brand appears inside those systems — before a recommendation is ever made.
- How visible your brand is in AI-generated answers
- Where authority signals are weak or missing
- Which competitors AI trusts more — and why
AI Visibility Score
We measure your current Share of Voice inside AI-generated responses for high-intent prompts in your category.
Content & Brand Gaps
We identify missing, unclear, or misaligned content that reduces your probability of being cited as a trusted source.
Competitor Leapfrog Analysis
We uncover queries where legacy competitors are weak — creating opportunities for your brand to become the preferred AI recommendation.
Audit Breakdown
This is a strategic diagnostic — not a surface-level scan. You leave with clarity, not guesswork.
01
AI Share of Voice Snapshot
Where and how often your brand appears in AI answers.
02
Entity Authority Benchmark
How AI systems perceive your credibility versus competitors.
03
Semantic Structure Review
Whether your site is machine-readable or being ignored.
04
Content Opportunity Map
Which questions and answers you should own next.
05
Competitor Weak-Point Identification
Where incumbents fail to satisfy AI trust signals.
06
Actionable AEO/GEO Roadmap
A clear next-step plan to improve AI recommendation probability.
Book Your Session
A 15-minute strategic session to understand exactly where you stand — and how to win AI recommendations.
No commitment required • 100% confidential
Testimonials
What Our Clients Say
FAQs
Frequently Asked Questions
AI-driven search refers to search engines and platforms (like Perplexity, Google’s Gemini-powered Overviews, or ChatGPT Search) that use Large Language Models (LLMs) to synthesize information rather than simply listing URLs.
Instead of forcing the user to click through multiple sites, the engine uses Retrieval-Augmented Generation (RAG) to pull data from high-authority sources across the web and generate a cohesive, natural-language answer. It functions as a researcher rather than a librarian.Instead of forcing the user to click through multiple sites, the engine uses Retrieval-Augmented Generation (RAG) to pull data from high-authority sources across the web and generate a cohesive, natural-language answer. It functions as a researcher rather than a librarian.
Optimizing for AI requires making your data as “consumable” as possible for LLMs. Key strategies include:
- Structured Data (Schema): Using comprehensive Schema markup to help AI understand the relationship between entities, products, and prices.
- Direct Answer Formatting: Creating content sections that directly answer “who, what, where, and why” in clear, concise prose.
- E-E-A-T Enhancement: AI engines prioritize sources with high Experience, Expertise, Authoritativeness, and Trustworthiness.
- Natural Language Optimization: Writing in a conversational tone that mirrors how users actually phrase complex questions to an AI.
The primary difference lies in the unit of value. In traditional SEO, the goal is to rank for a specific keyword to drive a click. In AI Search/GEO, the goal is to be the cited source within a generated summary.
- Traditional SEO: Focuses on backlinks, keyword density, and site speed to win a SERP position.
- AEO/GEO: Focuses on brand mentions, sentiment, and providing the “consensus” answer that an AI will feel confident repeating. It’s less about “where you rank” and more about “how often you are cited.”
LLMs are trained to avoid “hallucinations” by looking for a consensus across the web. If your brand is mentioned frequently across high-authority news sites, forums (like Reddit), and industry publications with positive sentiment, the AI is far more likely to recommend you as the definitive solution.
Note: In the AI era, “off-page SEO” isn’t just about links; it’s about your overall digital reputation across the entire training set of the model.
Success in an AI-dominated landscape can’t be measured by organic clicks alone, as many users get their answer without ever visiting your site. Instead, look at:
- Share of Model (SoM): How often your brand is mentioned when an LLM is asked for recommendations in your category.
- Citation Frequency: Tracking how often your URLs appear in the “Sources” or “References” section of AI summaries.
- Branded Search Volume: Measuring if your presence in AI answers is driving users to search for your brand specifically.
AI Rank System provides a full-stack AI Search Optimization ecosystem. Our services cover everything from GEO (Generative Engine Optimization) and AEO content strategy to technical structured data implementation and high-authority brand mention campaigns designed to build “Model Trust.”
Our AI Intelligence Audit is a deep dive into the “Digital Brain” of modern search. We use a series of specialized prompts to see how LLMs categorize your brand’s expertise. We evaluate your site’s “Readability Score” for AI crawlers and identify specific technical hurdles that prevent generative engines from citing your content as a primary source.
AI Rank System follows a rigorous deployment timeline based on the update cycles of major Large Language Models:
- System Integration (Days 15–45): We begin seeing your technical schema and optimized data layers being indexed. You’ll start to see your brand appearing in the “Sources” and “References” citations on real-time engines like Perplexity and Google Gemini.
- Model Consensus Shift (Days 60–120): As we build authority through high-grade editorial signals, the models (like ChatGPT and Claude) begin to internalize your brand as a primary authority.
- Share of Model Dominance (Month 4+): You will see a measurable increase in your Share of Voice—meaning when a user asks for a recommendation in your niche, the AI “defaults” to your system more frequently as the definitive answer.
We measure success through Source-of-Truth KPIs that redefine Share of Voice for a generative world. By calculating your “Share of Model” across platforms like ChatGPT and Perplexity, we determine your brand’s authority relative to the total market conversation. We supplement this with sentiment analysis of AI responses and “Attribution Lift” metrics, ensuring that when an AI speaks about your industry, your system is the primary architecture it relies upon for its answers.
Yes. Our Custom AEO/SEO Plans are built to scale. You can choose to focus exclusively on “Trust & Citation” building or opt for a full “Market Dominance” package that includes ongoing content engineering and competitive AI monitoring.
We provide an AEO/GEO Strategy Blueprint, a dedicated account strategist, and our “AI Citation Guide,” which helps your team understand the evolving relationship between E-E-A-T and generative search engines.