AI Visibility Fix Plan
Turn AI visibility and answer-gap evidence into a concrete remediation plan: identify why the current cited source wins, choose the right build path, and define acceptance checks for improving AI citations, mentions, and third-party presence.
Agent-native
Run it in Claude, ChatGPT custom MCP apps, OpenClaw, Hermes, Codex, Claude Code, Cursor, VS Code, or another MCP-capable client. No dedicated GUI flow and no separate LLM API key.
Backed by live public data
Every step is grounded in live public-data records UnifAPI returns, so the output cites what is actually ranking, posting, or being said — not a generic best-practice list.
Composable & open source
Skills cross-reference each other and live in a public, MIT-style repo. Read the full SKILL.md on GitHub, fork it, or run it as-is inside your agent.
Paste this into Codex or Claude Code
The prompt is intentionally editable. Replace the handles, market, budget, and campaign goal, then let the agent call UnifAPI MCP when it needs live public data.
Turn these AI visibility gaps into an AI visibility fix plan. For each high-value prompt, classify the miss as Structure, Authority, or Presence, choose the build path, and define the acceptance check.
The full skill, rendered from its SKILL.md
Turn AI visibility evidence into an execution-ready fix plan for generative engine optimization. The plan should say which prompt gaps to attack, why the current cited source wins, and whether the fix is Structure, Authority, or Presence.
This is an enhanced skill: it reads live public data through UnifAPI when needed, but it remains eyes, not hands. It does not edit pages, post on third-party sites, buy reviews, or manipulate mentions.
Use UnifAPI for live evidence
Start from ai-visibility-audit or ai-answer-gap output. Re-pull only what is stale or missing:
- Per-prompt answer and citations -
geo/serpwithtargetset to the brand domain. Confirm whether the brand is cited, merely named, or absent. - Demand weighting -
geo/keywords/search-volumeso the fix plan attacks prompts people actually ask. - Answer owners -
geo/mentions/top-domains,geo/mentions/top-pages, andgeo/mentions/cross-aggregated-metricsto identify the source or competitor winning the answer. - Organic cross-read -
seo/serpto identify quick wins where the brand ranks organically but is not cited in the AI answer. - Page structure read -
browser/markdownon the brand page and winning source to compare extractability: definition blocks, comparison tables, FAQ sections, cited stats, and clear headings.
Keep the run date, platform, market, prompt set, and billing metadata in the output.
Workflow
- Load the gap set. Prefer an existing audit or answer-gap table. If absent, run a small prompt set first; do not create a fix plan from vibes.
- Group misses by root cause.
- Structure - the brand has the answer, but it is not extractable.
- Authority - the winning source has stronger stats, quotes, citations, freshness, or topical depth.
- Presence - the answer is owned by third-party surfaces where the brand is missing: directories, review sites, listicles, Wikipedia-style pages, communities, or partner pages.
- Choose the build path.
- Update existing page when the brand ranks organically, is name-dropped, or has a near-equivalent page.
- Create net-new page when no credible page exists for a high-demand prompt.
- Earn third-party presence when the cited source is a list, review surface, community thread, or external authority page.
- Score the fix. Use AI search volume as the spine, then adjust for winnability, right-to-win, effort, and risk.
- Write acceptance checks. Each fix must say how to verify it after shipping: re-run
geo/serp, read the page withbrowser/markdown, validate schema, or check the third-party listing. - Separate content from distribution. On-site structure fixes, authority edits, and third-party presence work should not be lumped into one content task.
Fix patterns
Use these as the default remediation menu:
| Cause | Fix pattern | Acceptance check |
|---|---|---|
| Structure | Add concise definition, comparison table, FAQ, summary bullets, internal anchors, and clean headings. | browser/markdown shows extractable answer blocks. |
| Authority | Add original stats, dated claims, expert/customer quotes, primary-source citations, and author/review signals. | Page visibly cites sources and contains current, attributable evidence. |
| Presence | Get listed or genuinely mentioned on the surface AI already cites. | The third-party surface contains the brand with accurate positioning. |
| Organic-but-uncited | Reformat the ranking page instead of creating a new one. | seo/serp still ranks; geo/serp re-check shows citation movement or better source fit. |
Output
Return a prioritized plan:
# AI Visibility Fix Plan - {brand/domain} ({YYYY-MM-DD})
## Summary
- Highest-value prompt gap: ...
- Fastest win: ...
- Dominant miss cause: Structure | Authority | Presence
## Fix Plan
| Priority | Prompt | AI vol | Current owner | Cause | Build path | Action | Acceptance check |
| -------- | ---------------------------- | ------ | ------------- | -------- | ----------- | -------------------------------------------------------- | -------------------------------------- |
| Now | best {category} for startups | 1.9k | g2.com | Presence | Third-party | Earn accurate listing/reviews on the cited category page | Re-check top-pages and listing content |
## Page-Level Tasks
- Existing page updates: ...
- Net-new pages: ...
- Third-party presence targets: ...
## Re-check Plan
- Re-run the same prompt set and market after shipping.
- Compare cited-source slots, name-drops, and absences separately.
- Record UnifAPI cost from billing metadata.
Guardrails
- Do not equate name-drops with citations. A name-drop is a quick-win signal, not a solved gap.
- Do not recommend fake reviews, spammy listicles, astroturfed communities, or manipulative third-party mentions.
- Do not create "AI-only" doorway pages. Fix the human page so it is clear, cited, and extractable.
- Do not overfit to one stochastic answer. Treat each result as a dated snapshot and re-check before large work.
Related Skills
- ai-visibility-audit: diagnose citation coverage and classify misses.
- ai-answer-gap: find and rank the prompt gaps this skill turns into fixes.
- llm-mention-tracking: monitor whether shipped fixes improve AI share of voice over time.
- seo-audit: cross-check organic ranking and page quality when a GEO miss is also an SEO issue.
- unifapi: the shared data skill (connect MCP, discover the GEO, SEO, and browser operations this skill reads).
Source: ai-visibility-fix-plan/SKILL.md on GitHub — open a PR there to improve it.
The live APIs this skill calls
Every operation the skill names is one of these UnifAPI platforms — still visible and callable for product code, debugging, and custom agent flows.
- Prioritized prompt-level fix plan with current owner, miss cause, build path, and acceptance check
- Structure, Authority, and Presence task groups for on-site and third-party work
- Quick-win flags where the brand ranks organically but is not cited
- Re-check plan for the same prompt set, market, and AI engine
More skills in the AI Visibility Agent
Chain these in the same agent to go from one decision artifact to the next — each is its own run-prompt, workflow, and expected output.
AI visibility audit
The GEO equivalent of an SEO audit — check whether you're cited in AI answers and who owns the answer instead.
Open skillAI answer gap
Find the prompts you should own in AI answers but don't, name who owns each, and rank the gaps by AI search volume.
Open skillLLM mention tracking
Track how often you're mentioned across ChatGPT and AI search over a fixed prompt set, and how share of voice moves vs competitors.
Open skillSEO audit
Audit crawlability, on-page, and content against live SERP and ranking evidence — not a static checklist.
Open skillQuestions about AI visibility fixes
Pricing, workflow boundaries, public-data scope, and why this works better as an agent Skill.