AgentRank

Google for AI agents — live search across 25,000+ scored MCP servers, updated daily

AgentRank

Google PageRank for AI agents. A live, daily-updated index of 25,000+ MCP servers and agent tools — scored by real GitHub signals, not just star counts.

npm version npm downloads GitHub stars License: MIT Last commit


Install in 3 Steps

1. Add to your AI tool:

# Claude Code
claude mcp add agentrank -- npx -y agentrank-mcp-server

2. Ask your AI to find a tool:

"Find me an MCP server for database access"

3. Get ranked, current results — automatically.

That's it. No API key, no config, no prompting. Your AI searches the live index whenever it needs a tool.

Cursor, VS Code, Cline, Claude Desktop, Windsurf →


Why AgentRank?

  • Your AI's knowledge is stale. Training data is months old — it can't know if a tool was abandoned last week or if something better shipped yesterday.
  • Stars lie. A repo with 2,000 stars and no commits in 18 months isn't production-ready. AgentRank weighs freshness, issue health, and dependents — not just popularity.
  • 25,000+ tools, scored daily. The index crawls GitHub nightly. Every recommendation reflects what's happening now.
  • Gets smarter with use. Every query surfaces which tools developers actually reach for, sharpening rankings for everyone.

Demo

> search("postgres mcp server")

1. postgres-mcp          Score: 91  ★ 2.1k  Updated: 2d ago
2. mcp-server-postgres   Score: 84  ★ 891   Updated: 5d ago
3. pg-mcp                Score: 71  ★ 432   Updated: 12d ago
> lookup("github.com/modelcontextprotocol/servers")

{
  "name": "modelcontextprotocol/servers",
  "agentrank_score": 97,
  "stars": 14200,
  "last_commit": "1 day ago",
  "dependents": 1840,
  "issue_health": 0.91
}

Links


Repo Structure

crawler/     GitHub crawler — finds and indexes repos nightly
scorer/      Scoring engine — 5-signal composite score (0-100)
mcp-server/  MCP server package published to npm
workers/     Cloudflare Workers API
site/        Astro frontend (agentrank-ai.com)

How the Score Works

Five signals, weighted by signal quality:

SignalWeightWhat it measures
Freshness25%Days since last commit — stale repos decay fast
Issue health25%Closed / total issues — maintainer responsiveness
Dependents25%Repos that depend on this — real-world adoption
Stars15%Raw popularity signal
Contributors10%Bus factor — solo projects score lower

Scores are recomputed nightly from live GitHub data.


MIT License · Built by @comforteagle

Máy chủ liên quan

NotebookLM Web Importer

Nhập trang web và video YouTube vào NotebookLM chỉ với một cú nhấp. Được tin dùng bởi hơn 200.000 người dùng.

Cài đặt tiện ích Chrome