Map the competitors that AI engines are most ready to cite.
Enter multiple competitor URLs and run a batch GEO audit. See how each site scores for AI search visibility, citability, and technical readiness.
Portfolio
Multiple domains in one run.
Pattern
Shared blockers and winning signals.
Priority
Where to focus before the next audit.
Last updated: May 2026
AI visibility leaderboard
GEO scoreSame 100-point rubric for every domain — find the gap to close.
What competitor analysis checks
Every competitor is scored across the same categories so relative strengths are visible.
Score
GEO Score across 8 signal categories.
Citability
Citation-oriented content and source signals.
Readiness
Technical access, structure, and AI discovery.
Need a focused two-site benchmark? Use side-by-side comparison.
When to map competitor AI visibility
Map competitor AI visibility when a single audit isn't enough to make a decision. A standalone score tells you where you stand; it doesn't tell you whether a 72 is leading your category or trailing it. Run a multi-competitor analysis when you're entering a crowded space, planning a content investment, or trying to explain to a stakeholder why a rival keeps showing up in ChatGPT and Perplexity answers and you don't.
The analysis is most useful in three moments: before you commit budget to GEO work and want a baseline against the field; after a competitor's traffic or share of AI mentions shifts and you need to know what changed technically; and during a quarterly review, where a repeated run shows whether your relative position improved or the category as a whole moved.
What a competitor GEO gap reveals
A gap is the difference between your category breakdown and a rival's, read against the scoring weights. Because every domain is graded on the same 100-point scale across 8 categories, a gap points to a specific, fixable cause rather than a vague "they rank better" feeling. The categories carry uneven weight, so where the gap sits matters more than how big it looks:
- robots.txt (18) and llms.txt (18) — an access or discovery gap here is the most expensive. If a competitor lets AI crawlers in and you don't, no amount of content closes the distance.
- Schema (16) and meta (14) — a competitor with valid structured data and clean canonical or Open Graph tags is easier for an engine to parse and attribute.
- Content (12) and brand & entity (10) — multi-page topical coverage and consistent entity signals are where a thin site falls behind a deep one.
- Signals (6) and AI discovery (6) — language declaration, freshness, and the AI discovery files are smaller but cheap to fix once spotted.
A gap concentrated in the high-weight categories is a priority; a gap spread across the 6-point categories is housekeeping. Reading the gap by weight is what turns a comparison into a plan.
A worked example: one SaaS against three rivals
A project-management SaaS keeps seeing one of its competitors cited when prospects ask an AI engine "what's the best tool for remote teams". It runs a multi-competitor analysis on its own domain plus three rivals. The breakdown is more informative than any single number:
- All four sites have a strong meta and content profile — that's table stakes in the category, not a differentiator.
- The two most-cited rivals both publish an llms.txt and valid FAQ and Organization schema. The SaaS publishes neither.
- One rival blocks AI crawlers in robots.txt and scores lowest overall, confirming the cost of an access gap even with good content.
The conclusion writes itself: the SaaS isn't losing on content, it's losing on the high-weight technical signals (llms.txt and schema) that the cited rivals already have. That's a two-week fix, not a quarter-long content project — and the analysis is what made the priority obvious. To confirm the change later, the team re-runs the analysis against the same three domains and watches the gap close.
Single audit vs head-to-head vs multi-competitor
The three views answer different questions. Pick the smallest one that answers yours:
- Single audit — your own baseline, one domain, full category breakdown. Start here to know where you stand before you look at anyone else. Run a free GEO audit.
- Head-to-head compare — two domains, side by side, for when one rival matters most and you want a focused diff. Compare two sites.
- Multi-competitor analysis — your domain plus several rivals in one run, for reading a whole category and finding where you sit in the field. That's this page.
How to run a competitor analysis
- Enter your URL and competitor URLs. Add your own domain and the competitor domains you want to benchmark — the rivals that already surface in AI answers for your category.
- Run the batch audit. Each domain is scored across the same 8 GEO signal categories on a 100-point scale, so the results are directly comparable.
- Read which domain AI engines are most ready to cite. Compare the scores and category breakdowns to see which site has the fewest blockers and the strongest citable signals for AI answer engines.
- Prioritise fixes by scoring weight. Close the gaps that carry the most points first — robots.txt and llms.txt are worth 18 points each — then re-run the analysis to confirm the gap narrowed.
Earning citations is a function of the signals AI retrieval rewards — open access for AI crawlers, structured data, an llms.txt, quotable statistics, and multi-page topical coverage. The guide to appearing in ChatGPT and Perplexity and the entity authority guide cover the playbook behind the categories you're benchmarking.
Frequently asked questions
What is competitor AI visibility analysis?
It runs the same GEO audit on your site and several competitor domains at once, then puts the scores next to each other. Instead of an isolated number, you see how ready each domain is to be cited by AI answer engines across the same 8 signal categories: robots.txt, llms.txt, schema, meta, content, brand and entity, signals, and AI discovery.
How many competitors should I analyze at once?
Three to five direct rivals is usually enough to reveal a pattern. Pick the domains that already appear when you ask an AI engine "what is the best tool for X". More than that and the gaps blur together; fewer and you cannot tell a category-wide blocker from a single weak site.
Does a higher GEO Score mean a competitor is cited more often?
The GEO Score measures readiness — the technical and content signals AI retrieval rewards — not live citation counts. A higher score means a domain has fewer blockers and stronger citable signals, which correlates with being cited. To confirm who is actually cited for a given question, pair the analysis with a citation check.
When should I use head-to-head compare instead of multi-competitor analysis?
Use a single audit when you only need your own baseline. Use head-to-head compare when one rival matters most and you want a focused, two-column diff. Use multi-competitor analysis when you need to see a whole category at once and decide where you sit in the field.
Is the competitor analysis free?
Yes. The batch audit scores each domain on the open-source GEO scoring weights at no cost, with a fair-use limit per visitor. The audit reads only publicly available pages, the same content any AI crawler can fetch.
What do I do once I find a gap?
Sort the blockers by scoring weight and fix the highest-impact ones first. robots.txt and llms.txt are worth 18 points each, so an access or discovery gap usually outranks a content tweak. Re-run the analysis after the fixes to confirm the gap closed relative to the same competitors.