Voc Amazon Reviews
FreeNot checkedAgent-native Amazon review intelligence — fetches verified reviews from 10 marketplaces via real Shulex OpenAPI (not scrapers) and produces copy-ready listing i
About
Agent-native Amazon review intelligence — fetches verified reviews from 10 marketplaces via real Shulex OpenAPI (not scrapers) and produces copy-ready listing improvements grounded in actual customer language. Backed by a 2B-review historical dataset that Helium 10 / Jungle Scout can't replicate. Works in any MCP client (Claude Code, Claude Desktop, ChatGPT, Cursor, Windsurf, VS Code, Cline).
README
Review Analyzer
Agent-native voice-of-customer for e-commerce.
Drop in an ASIN or a CSV — get sentiment, pain points, copy-ready listing improvements,
and a black-gold HTML dashboard. 6 MCP tools. Backed by the most stable Amazon review data layer.
↑ Sample dashboard: B08N5WRWNW · 100 reviews · sentiment + pain points + listing improvements, generated by render_dashboard.
TL;DR
Two inputs, six tools, three outputs.
┌─────────────┐ ┌──────────────┐
│ ASIN │──┐ ┌─│ Markdown │
└─────────────┘ │ ┌─────────────────────────┐ │ │ report │
├──────▶ 6 agent-callable tools ├──────┤ ├──────────────┤
┌─────────────┐ │ └─────────────────────────┘ │ │ Structured │
│ CSV / XLSX │──┘ fetch_reviews analyze_csv │ │ JSON │
└─────────────┘ analyze_reviews voc_full │ ├──────────────┤
extract_listing_improvements └─│ Black-gold │
render_dashboard │ HTML deck │
└──────────────┘
- Inputs — Amazon ASIN (auto-fetched via Shulex VOC OpenAPI, 10 markets) or any review CSV / Excel (Helium 10 / eBay / Shopify / custom — fuzzy column detection)
- Outputs — Markdown report · structured JSON · standalone HTML dashboard
- Surface — MCP server (works in Claude Code / Cursor / Cline / Continue) and Skill (works in Claude Code)
Quick start
Option A — As an MCP server (recommended)
Requires uv.
Add this to your MCP client config (Claude Code, Claude Desktop, Cursor, Windsurf, VS Code Copilot, Cline, Continue.dev):
{
"mcpServers": {
"voc-amazon-reviews": {
"command": "uvx",
"args": ["voc-amazon-reviews-mcp"],
"env": {
"VOC_API_KEY": "your-shulex-key"
}
}
}
}
Get a free Shulex API key (100 calls/month, no credit card): apps.voc.ai/openapi.
Optional: Add "ANTHROPIC_API_KEY": "sk-ant-..." to enable extract_listing_improvements (the only tool that calls Claude directly — others work without it). Must be an actual Anthropic key; other providers won't work.
First run resolves dependencies in ~5s; subsequent runs are instant.
Try it
Ask any MCP-compatible agent:
Run a VOC report on
B08N5WRWNW, render the dashboard, and write it to~/Desktop/voc.html.
The agent will call voc_full → render_dashboard and hand you the file.
Option B — One-shot CLI
bash voc.sh B08N5WRWNW --limit 100 --market US
Option C — Bring your own reviews (CSV)
# Drop in any reviews CSV (Helium 10 export, eBay scrape, Shopify, custom)
python -c "from mcp_server.tools import analyze_csv, render_dashboard; \
r = analyze_csv('reviews.csv', product_name='My Product'); \
render_dashboard(r, output_path='dashboard.html')"
Option D — Hosted on Smithery (no install)
Connect to the server remotely — no uvx, no Python, no local install. Bring
your own Shulex API key (Smithery prompts for it on first connection).
This repo ships a Dockerfile and smithery.yaml for one-click deploy.
To run your own hosted instance:
- Fork or clone this repo to your GitHub.
- Sign in at smithery.ai with GitHub.
- Deploy a server → pick the repo. Smithery builds the container and exposes an HTTPS MCP endpoint.
- Share the URL with users; they paste it into Claude / Cursor / Cline.
The same image runs anywhere that takes a Dockerfile — Fly.io, Railway, Cloudflare Workers (with adapter), Render, Cloud Run.
To run the HTTP transport locally (e.g. for testing):
MCP_TRANSPORT=streamable-http PORT=8080 python -m mcp_server.server
Option E — Deploy to Vercel (serverless)
This repo also ships vercel.json + app.py for one-click Vercel
deploys. Sign in at vercel.com with GitHub, import the
repo, and Vercel auto-detects the Python function.
Set these in Project Settings → Environment Variables before the first deploy:
| Variable | Required | Notes |
|---|---|---|
VOC_API_KEY |
yes | Shulex VOC OpenAPI key |
ANTHROPIC_API_KEY |
optional | Only for extract_listing_improvements |
Timeout caveat: Vercel functions cap at 10s (Hobby default), 60s
(Hobby with maxDuration: 60 — already set in vercel.json), or 300s
(Pro). Long-running tools like voc_full (30-90s) and
extract_listing_improvements (20-60s) may exceed these limits. For
unbounded execution, prefer Option D (Docker/Render/Fly) or local install.
The MCP endpoint after deploy: https://your-project.vercel.app/mcp
Tools
| # | Tool | Input | Use when |
|---|---|---|---|
| 1 | fetch_reviews |
ASIN | You want raw reviews; you'll analyze them yourself |
| 2 | analyze_reviews |
reviews JSON | You already have reviews and want the VOC report |
| 3 | voc_full |
ASIN | Default "give me a VOC report" — fetch + analyze in one call |
| 4 | extract_listing_improvements |
ASIN | ★ Differentiator — copy-ready title / 5 bullets / description grounded in customer language |
| 5 | analyze_csv |
CSV / Excel path or URL | The product is NOT on Amazon, or you have your own scrape |
| 6 | render_dashboard |
VOC report | Generate a standalone black-gold HTML dashboard, no external deps |
All 6 tools speak MCP. All return JSON-serializable dicts. Full schemas in mcp_server/README.md.
Data layer — why this is the moat
Most "AI review tools" are a thin LLM wrapper over a brittle scraper. We invert that. The data layer is the moat:
| Typical seller-tool data layer | review-analyzer | |
|---|---|---|
| Source | Web scraper / undocumented scrape API | Paid Shulex VOC OpenAPI |
| Reliability | Breaks when Amazon updates HTML | API-grade, no DOM dependencies |
| Markets | US-only or 2-3 markets | 10: US, CA, MX, GB, DE, FR, IT, ES, JP, AU |
| Volume | 10–50 reviews (free-tier cap) | Up to 1,000 reviews per ASIN |
| Freshness | Daily snapshots, sometimes cached for days | Live pull |
| Schema | Strings only | Full: verified-purchase, helpful votes, vine, variant, dates |
| Non-English markets | Often broken / omitted | Native captures + AI translation |
| Access | Locked behind a UI | curl + JSON, fully scriptable, MCP-ready |
For non-Amazon platforms, analyze_csv accepts any review file — fuzzy column matching detects 内容 / 评价 / body / review / content so you don't have to reformat. Bring data from anywhere, get the same VOC report.
vs. the alternatives
| review-analyzer | Helium 10 / Data Dive | review-analyzer-skill (Buluu) | Generic review scrapers | |
|---|---|---|---|---|
| Input | ASIN or CSV | ASIN (manual UI) | CSV only | URL |
| Markets | 10 | 1-3 | depends on user's data | 1 |
| Output | JSON + Markdown + HTML dashboard | UI dashboard (locked) | CSV + MD + HTML dashboard | Raw CSV |
| MCP-callable | ✅ | ❌ | ❌ Claude Code only | ❌ |
| Listing copy gen | ✅ extract_listing_improvements (cite-by-pain-point) |
Keyword research only | ❌ | ❌ |
| Cost | Shulex API + Anthropic API ($0.05-0.20/listing) | $99-249/month subscription | Free (uses your Claude quota) | Free, brittle |
| Open source | ✅ MIT | ❌ | ✅ MIT | varies |
Credit & inspiration: The 22-dimension tag system, fuzzy CSV column detection, and black-gold dashboard aesthetic were inspired by buluslan/review-analyzer-skill (MIT). We adapted them onto an MCP-native architecture with the Shulex VOC OpenAPI data layer.
Architecture
mcp_server/
├── server.py # 6 @mcp.tool decorators
├── tools.py # implementations (subprocess wrappers + Anthropic SDK)
├── csv_loader.py # fuzzy column detection for CSV/Excel input
├── dashboard.py # HTML rendering
├── dashboard_template.html # black-gold template (placeholders)
├── tag_system.yaml # 22-dim tag schema (customizable per category)
├── schemas.py # pydantic structured-output models
└── tests/ # 36 unit tests (subprocess + Anthropic mocked)
fetch.sh / analyze.sh / voc.sh # shell pipeline behind tools 1-3
- fetch + analyze loop: shell scripts (proven, reproducible, easy to debug)
- listing rewrites: Anthropic SDK direct (
claude-opus-4-7+ adaptive thinking + prompt caching on the system rubric) - dashboard: pure stdlib HTML rendering, no node / no react
Distribution / where to find us
| Channel | Status |
|---|---|
| punkpeye/awesome-mcp-servers PR #6528 | ✅ Open |
| cline/mcp-marketplace issue #1602 | ✅ Open |
| Glama | 🟢 Auto-indexed via GitHub topics |
| mcp.directory | 🟢 Auto-pull |
| mcp.so / PulseMCP | 🟡 Pending (manual form submit) |
| Smithery | 🟡 Container deploy ready (smithery.yaml + Dockerfile in repo) |
| Official MCP Registry | 🟡 Pending PyPI publish (W2) |
Roadmap
- Drop in CSV / Excel (any platform, fuzzy column detect)
- 22-dimension tag system (YAML-configurable)
- Black-gold HTML dashboard tool
- 6 MCP tools shipped
-
npx skills add mguozhen/review-analyzerone-line install - CLI subprocess engine option (use your Claude subscription, $0 API)
- PyPI publish + official MCP Registry submission
- Smithery deploy config (
smithery.yaml+Dockerfile) - Vercel deploy config (
vercel.json+app.py) - Smithery / mcp.so / PulseMCP form submissions
License
MIT. See LICENSE.
Acknowledgments: Tag schema, CSV column detection, and dashboard visual design inspired by buluslan/review-analyzer-skill. Data layer powered by Shulex VOC OpenAPI.
Install Voc Amazon Reviews in Claude Desktop, Claude Code & Cursor
unyly install voc-amazon-reviewsInstalls into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.
First time? Get the CLI: curl -fsSL https://unyly.org/install | sh
Or configure manually
Run in your terminal:
claude mcp add voc-amazon-reviews -- uvx voc-amazon-reviews-mcpFAQ
Is Voc Amazon Reviews MCP free?
Yes, Voc Amazon Reviews MCP is free — one-click install via Unyly at no cost.
Does Voc Amazon Reviews need an API key?
No, Voc Amazon Reviews runs without API keys or environment variables.
Is Voc Amazon Reviews hosted or self-hosted?
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
How do I install Voc Amazon Reviews in Claude Desktop, Claude Code or Cursor?
Open Voc Amazon Reviews on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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