/install amazon-listing-audit-pro
APIClaw — Amazon Listing Audit Pro
8-dimension health check. Benchmark against leaders. Fix what matters most. Respond in user's language.
Files
| File | Purpose |
|---|---|
{skill_base_dir}/scripts/apiclaw.py |
Execute for all API calls (run --help for params) |
{skill_base_dir}/references/reference.md |
Load for exact field names or response structure |
Credential
Required: APICLAW_API_KEY. Get free key at apiclaw.io/api-keys.
Input
Required: my_asin. Optional: keyword, category. Category is auto-detected from ASIN via realtime/product if not provided. If category_source is inferred_from_search, confirm with user before proceeding.
API Pitfalls (CRITICAL)
- Category auto-detection: categoryPath is auto-detected from ASIN. If
category_sourcein output isinferred_from_search, confirm with user - All keyword-based endpoints MUST include
--category; ASIN-specific endpoints do NOT - Use API fields directly: revenue=
sampleAvgMonthlyRevenue(NEVER price×sales), sales=monthlySalesFloor, opportunity=sampleOpportunityIndex - reviews/analysis: needs 50+ reviews; ASIN mode first, category fallback
- Sales null fallback: Monthly sales ≈ 300,000 / BSR^0.65, tag 🔍
Execution
listing-audit --my-asin X [--keyword Y] [--category Z](composite, auto-detects category from ASIN)- Score 8 dimensions → generate report with improvements
8 Scoring Dimensions
| Dimension | Weight | 90-100 | 60-89 | 30-59 | 0-29 |
|---|---|---|---|---|---|
| Title | 15% | 150+ chars, top 3 KW, brand first | 100-150, 2 KW | \x3C100 or stuffed | Missing key terms |
| Bullets | 15% | 5+, benefit-led, KW each | 5, features only | 3-4, generic | \x3C3 bullets |
| Images | 15% | 7+, infographic+lifestyle | 5-6, decent | 3-4, basic | 1-2 images |
| A+ Content | 10% | Rich A+, comparison, brand story | Basic A+ | No A+ w/ description | Nothing |
| Reviews | 15% | 1000+, 4.5+, \x3C5% 1-star | 200-1K, 4.0-4.5 | 50-200, 3.5-4.0 | \x3C50 or \x3C3.5 |
| Keywords | 10% | Top 5 competitor KW covered | 3-4 covered | 1-2 covered | None matched |
| Category Fit | 10% | Optimal category, top 1% BSR | Top 5% | Suboptimal | Wrong category |
| Pricing | 10% | In opportunity band, margin >25% | Hottest band | Outside top bands | Overpriced/\x3C10% margin |
Score each 0-100, calculate weighted total. Include "Basis" column explaining each score.
Output Spec
Sections: Overall Score (X/100, A-F grade) → 8-Dimension Scorecard → Title Audit (analysis + suggested rewrite) → Bullets Audit (vs leaders, missing points, rewrites) → Image Audit → Review Health → Keyword Gap Analysis (vs Top 5 leader titles/bullets) → vs Category Leaders (side-by-side Top 3) → Priority Fix List (lowest scores first) → Data Provenance → API Usage.
Suggested rewrites should incorporate high-frequency positive review language.
Language (required)
Output language MUST match the user's input language. If the user asks in Chinese, the entire report is in Chinese. If in English, output in English. Exception: API field names (e.g. monthlySalesFloor, categoryPath), endpoint names, technical terms (e.g. ASIN, BSR, CR10, FBA, credits) remain in English.
Disclaimer (required, at the top of every report)
Data is based on APIClaw API sampling as of [date]. Monthly sales (
monthlySalesFloor) are lower-bound estimates. This analysis is for reference only and should not be the sole basis for business decisions. Validate with additional sources before acting.
Confidence Labels (required, tag EVERY conclusion)
- 📊 Data-backed — direct API data (e.g. "CR10 = 54.8% 📊")
- 🔍 Inferred — logical reasoning from data (e.g. "brand concentration is moderate 🔍")
- 💡 Directional — suggestions, predictions, strategy (e.g. "consider entering $10-15 band 💡")
Rules: Strategy recommendations are NEVER 📊. User criteria override AI judgment.
Bulk audit: share market data across ASINs, run audit per ASIN.
Data Provenance (required)
Include a table at the end of every report:
| Data | Endpoint | Key Params | Notes |
|---|---|---|---|
| (e.g. Market Overview) | markets/search |
categoryPath, topN=10 | 📊 Top N sampling, sales are lower-bound |
| ... | ... | ... | ... |
Extract endpoint and params from _query in JSON output. Add notes: sampling method, T+1 delay, realtime vs DB, minimum review threshold, etc.
API Usage (required)
| Endpoint | Calls | Credits |
|---|---|---|
| (each endpoint used) | N | N |
| Total | N | N |
Extract from meta.creditsConsumed per response. End with Credits remaining: N.
API Budget: ~20-25 credits
Audit target(1) + Categories/Products/Competitors(3) + Realtime×5(5) + Market/Brand(3) + Price(2) + Reviews(2) + History(1) + Buffer(3-8).
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install amazon-listing-audit-pro - After installation, invoke the skill by name or use
/amazon-listing-audit-pro - Provide required inputs per the skill's parameter spec and get structured output
What is Amazon Listing Audit Pro?
Comprehensive listing health check and optimization engine for Amazon sellers. Scores listings across 8 dimensions, benchmarks against category leaders, iden... It is an AI Agent Skill for Claude Code / OpenClaw, with 150 downloads so far.
How do I install Amazon Listing Audit Pro?
Run "/install amazon-listing-audit-pro" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Amazon Listing Audit Pro free?
Yes, Amazon Listing Audit Pro is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Amazon Listing Audit Pro support?
Amazon Listing Audit Pro is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Amazon Listing Audit Pro?
It is built and maintained by apiclaw (@apiclaw); the current version is v1.0.1.