ToolRank
Score and optimize MCP tool definitions for AI agent discovery. Analyzes Findability, Clarity, Precision, and Efficiency.
ToolRank
The PageRank for AI agent tools.
Score, optimize, and monitor how AI agents discover and select your MCP tools.
We scanned 4,162 MCP servers. Here's what we found.
| Metric | Value |
|---|---|
| Registered servers | 4,162 |
| With tool definitions | 1,122 (27%) |
| Invisible to agents | 3,040 (73%) |
| Average score | 84.7/100 |
| Selection advantage | 3.6x for optimized tools |
73% of MCP servers are invisible to AI agents. They have no tool definitions, no descriptions, no schema. When an agent searches for tools, these servers don't exist.
Sources: arXiv 2602.14878, arXiv 2602.18914
What is ATO?
ATO (Agent Tool Optimization) is to the agent economy what SEO was to the search economy.
| SEO | LLMO | ATO | |
|---|---|---|---|
| Target | Search engines | LLM responses | Agent tool selection |
| Trigger | Human searches | Human asks AI | Agent acts autonomously |
| Result | A click | A mention | A transaction |
LLMO is Stage 1 of ATO — necessary but not sufficient.
Quick Start
Score in browser
toolrank.dev/score — paste your tool JSON or enter your Smithery server name.
Score via CLI
npx @toolrank/mcp-server
Score in Python
from toolrank_score import score_server, format_report
result = score_server("my-server", tools)
print(format_report(result))
ToolRank Score
0-100 metric across four dimensions:
| Dimension | Weight | What it measures |
|---|---|---|
| Findability | 25% | Can agents discover you? |
| Clarity | 35% | Can agents understand you? |
| Precision | 25% | Is your schema precise? |
| Efficiency | 15% | Are you token-efficient? |
Maturity Levels
| Level | Score | Meaning |
|---|---|---|
| Dominant | 85-100 | Agents prefer your tool |
| Preferred | 70-84 | Agents can use your tool well |
| Selectable | 50-69 | Agents might use your tool |
| Visible | 25-49 | Agents see you but rarely select |
| Absent | 0-24 | Agents can't find you |
Before and After
- "name": "get",
- "description": "gets data from the api"
+ "name": "search_repositories",
+ "description": "Searches for GitHub repositories matching a query.
+ Useful for finding open-source projects or checking if a repo exists.
+ Returns name, description, stars, language, and URL.",
+ "inputSchema": {
+ "type": "object",
+ "properties": {
+ "query": { "type": "string", "description": "Search query" },
+ "sort": { "type": "string", "enum": ["stars", "forks", "updated"] }
+ },
+ "required": ["query"]
+ }
Score: 52 → 96. Five minutes of work. 3.6x selection advantage.
Architecture
toolrank/
├── packages/
│ ├── scoring/ # Level A engine (Python, zero-cost)
│ │ ├── toolrank_score.py # 14 checks across 4 dimensions
│ │ ├── level_c_score.py # Claude AI scoring (Pro)
│ │ └── weights.json # Auto-calibrated weights
│ ├── scanner/ # Ecosystem scanner
│ │ ├── scanner_v3.py # Weekly full / daily diff
│ │ ├── calibrate.py # Weight auto-adjustment
│ │ └── auto_blog.py # Daily article generation
│ ├── web/ # Astro site (toolrank.dev)
│ ├── mcp-server/ # ToolRank MCP Server
│ └── badge-worker/ # Dynamic badge SVG (CF Workers)
└── .github/workflows/ # Automated pipelines
Ecosystem Rankings
Updated weekly. Full ranking →
| Rank | Server | Score |
|---|---|---|
| 1 | microsoft/learn_mcp | 96.5 |
| 2 | docfork/docfork | 96.5 |
| 3 | brave | 94.7 |
| 4 | LinkupPlatform/linkup-mcp-server | 93.5 |
| 5 | smithery-ai/national-weather-service | 93.3 |
Add Badge to Your README
[](https://toolrank.dev/ranking)
Contributing
ToolRank is open source. The scoring logic is fully transparent and auditable.
- Report issues: GitHub Issues
- Scoring methodology: packages/scoring/toolrank_score.py
- Governance: GOVERNANCE.md · CHANGELOG.md
- ATO Framework: toolrank.dev/framework
⭐ Star this repo if you find ToolRank useful — it helps others discover it.
License
MIT
toolrank.dev · Built by @imhiroki
If SEO is about being found by search engines, ATO is about being used by AI agents.
関連サーバー
Scout Monitoring MCP
スポンサーPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
スポンサーAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Tailkits UI
Tailwind Components with Native MCP Support
Percepta MCP Server
An AI-driven platform for frontend semantic cognition and automation.
SSH MCP Server
SSH server management with zero-token SFTP file transfer and SOCKS proxy support
DreamFactory MCP
An MCP server for integrating with the DreamFactory API to manage and access data sources.
NovaCV
An MCP server for accessing the NovaCV resume service API.
Cucumber Studio
Provides LLM access to the Cucumber Studio testing platform for managing and executing tests.
Windows API
An MCP server for interacting with the native Windows API, enabling control over system functions and resources.
MCP Agentic AI Crash Course with Python
A comprehensive crash course on the Model Context Protocol (MCP), covering everything from basic concepts to building production-ready MCP servers and clients in Python.
MCP Bridge
A proxy server that enables existing REST APIs to be used as Model Context Protocol (MCP) servers.
MCP Time Server
Provides tools for getting the current time and date, and formatting timestamps in various formats and timezones.