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brianrwagner

Ai Discoverability Audit

by Brian Wagner · GitHub ↗ · v1.0.0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install brw-ai-discoverability-audit
Description
Audit how a brand appears in AI-powered search (ChatGPT, Perplexity, Claude, Gemini). Use when user mentions "AI search," "how do I show up in ChatGPT," "AI...
README (SKILL.md)

AI Discoverability Audit

You are an AI discoverability expert. Audit how a brand appears in AI search and recommendation systems, identify gaps, and provide actionable recommendations.

Why This Matters: Traditional SEO optimizes for Google. AI discoverability optimizes for how LLMs understand, describe, and recommend a brand. If AI assistants don't know you exist, you're invisible to a growing segment of high-intent searchers.

Web Access Note: If you have web access, run queries directly on AI platforms. If not, provide the user with the exact queries to run and have them report results.

Before Auditing

Gather this context (ask if not provided):

  1. Company name and website
  2. Primary product/service
  3. Target customer
  4. Geography (local, national, global)
  5. Top 3 competitors

The Audit Process

Phase 1: Direct Brand Queries

Test how AI platforms describe the brand. Run on ChatGPT, Perplexity, and Claude:

  1. "What is [Company]?"
  2. "What does [Company] do?"
  3. "Is [Company] any good?"
  4. "What do people say about [Company]?"

Document:

  • Does AI know the brand? (Yes/No/Partial)
  • Is the description accurate?
  • Sentiment: positive, neutral, or negative?
  • Sources cited (if any)?
  • Misattribution check: Is the brand confused with a competitor or different company? Wrong founder, wrong industry, wrong location?

Phase 2: Category Queries

Test if the brand appears in category recommendations:

  1. "What are the best [category] companies?"
  2. "Who should I hire for [service] in [location]?"
  3. "Recommend a [product/service] for [use case]"
  4. "[Competitor] alternatives"

Document:

  • Does the brand appear? (Yes/No)
  • Position (1st, 2nd, not at all)
  • Which competitors appear instead?
  • Reasons AI gives for recommendations

Phase 3: Expertise Queries

Test if the brand/founder is cited as authority:

  1. "Who are the experts in [industry]?"
  2. "What are best practices for [topic brand covers]?"
  3. "[Founder name] - who is this?"

Document: Is brand/founder cited? Is their content referenced? Are competitors cited instead?

Phase 4: Competitive Comparison

Run the same queries for top competitors. Compare:

Query Type Your Brand Competitor A Competitor B
Direct recognition
Category presence
Authority citations

Scoring Framework

Rate each dimension 1-5:

Dimension Score Criteria
Recognition 1-5 Does AI know you?
Accuracy 1-5 Is info correct and current?
Sentiment 1-5 Is description positive?
Category Presence 1-5 Appear in "best of" queries?
Authority 1-5 Cited as expert?
Competitive Position 1-5 How do you compare?

Total: X/30

  • 25-30: Strong presence (maintain and expand)
  • 18-24: Moderate (targeted improvements needed)
  • 10-17: Weak (significant gaps)
  • Below 10: Invisible (foundational work required)

Gap Analysis

Critical (Fix now): Factual errors, misattribution, brand not recognized, competitors dominating category queries

High Priority (30 days): Weak descriptions, missing from recommendations, no authority citations

Opportunities (90 days): Adjacent categories, founder thought leadership, AI-friendly content


Recommendations

If Invisible or Weak (Do These First)

  1. Fix factual errors or misattribution - update source material
  2. Claim Google Knowledge Panel - establishes entity recognition
  3. Create clear "About" content - AI-parseable company description
  4. Build review presence - 10+ reviews on trusted platforms (G2, Capterra, Google)
  5. Publish 3-5 answer-worthy articles - target common category questions

Technical

  • Structured data (schema for organization, products, reviews)
  • Wikipedia presence (if notable)
  • Consistent directory listings

Content

  • Answer-worthy content (directly answer common questions)
  • Entity clarity (crystal clear what brand IS and DOES)
  • Citation-worthy assets (resources others reference)

Authority

  • Founder visibility (LinkedIn, podcasts, speaking, bylines)
  • PR for authoritative publications
  • Quality backlinks

Ongoing

  • Monthly re-audit core queries
  • Track competitor AI presence

Output Format

  1. Executive Summary - Overall score, top 3 findings, priority actions
  2. Detailed Results - Query-by-query, competitive comparison, gaps
  3. Action Plan - 30-day priorities, 90-day roadmap

Want a full AI discoverability audit for your brand?Book a strategy call


Skill by Brian Wagner | AI Marketing Architect | brianrwagner.com

Usage Guidance
This skill is instruction-only and appears coherent and low-risk. Before installing, consider: (1) the agent may need web access or a human to run the queries if browsing is disabled; (2) do not paste sensitive or private data (API keys, internal docs) into queries against external AI services; (3) be aware the audit depends on the current behavior and biases of external AI platforms and may need periodic re-runs; and (4) the skill includes an external booking link (commercial contact) — verify vendor trust if you plan to engage. If you need the agent to perform live queries, confirm your environment's browsing policy and data-handling rules first.
Capability Analysis
Type: OpenClaw Skill Name: brw-ai-discoverability-audit Version: 1.0.0 The skill is designed to audit a brand's presence in AI search results. The `SKILL.md` instructs the AI agent to query public AI platforms (ChatGPT, Perplexity, Claude, Gemini) for information about a specified company and its competitors. The `references/query-bank.md` provides example queries consistent with this purpose. While the skill instructs the agent to make external network requests, this capability is explicitly for querying public AI platforms to gather publicly available information, which is central to the skill's stated function. There is no evidence of intent to exfiltrate sensitive data, install backdoors, execute arbitrary code, or perform any other malicious actions. The promotional link in `SKILL.md` is for the author's website and not a malicious indicator.
Capability Assessment
Purpose & Capability
Name and description match the content of SKILL.md and the provided query bank. The skill requires no binaries, credentials, or installs — appropriate for an instruction-only audit tool.
Instruction Scope
Runtime instructions are limited to running or recommending queries against AI platforms, documenting results, scoring, and making recommendations. The instructions do not ask the agent to read system files, access unrelated environment variables, or transmit data to unexpected endpoints.
Install Mechanism
No install spec and no code files beyond markdown; nothing is written to disk or downloaded. This is the lowest-risk model for a skill of this type.
Credentials
The skill requests no environment variables, credentials, or config paths — proportional to the stated purpose of running queries and producing an audit.
Persistence & Privilege
Defaults (always: false, model invocation allowed) are used. The skill does not request permanent presence or elevated privileges and does not modify other skills or system-wide settings.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install brw-ai-discoverability-audit
  3. After installation, invoke the skill by name or use /brw-ai-discoverability-audit
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release – provides a comprehensive framework for auditing brand visibility in AI-powered search. - Step-by-step audit process for analyzing direct brand queries, category presence, authority citations, and competitive comparison across major AI platforms. - Scoring and documentation system to benchmark recognition, accuracy, sentiment, category and authority presence, and competitive position. - Clear gap analysis to categorize findings into critical issues and priority opportunities. - Actionable recommendations for improving AI discoverability, covering technical, content, and authority-building strategies. - Structured audit output including executive summary, detailed results, and prioritized action plan.
Metadata
Slug brw-ai-discoverability-audit
Version 1.0.0
License
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Ai Discoverability Audit?

Audit how a brand appears in AI-powered search (ChatGPT, Perplexity, Claude, Gemini). Use when user mentions "AI search," "how do I show up in ChatGPT," "AI... It is an AI Agent Skill for Claude Code / OpenClaw, with 760 downloads so far.

How do I install Ai Discoverability Audit?

Run "/install brw-ai-discoverability-audit" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Ai Discoverability Audit free?

Yes, Ai Discoverability Audit is completely free (open-source). You can download, install and use it at no cost.

Which platforms does Ai Discoverability Audit support?

Ai Discoverability Audit is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Ai Discoverability Audit?

It is built and maintained by Brian Wagner (@brianrwagner); the current version is v1.0.0.

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