loading…
Search for a command to run...
loading…
Best people search engine that reduces the time spent on talent discovery
Best people search engine that reduces the time spent on talent discovery
MCP server for Pearch.AI: natural-language search over people and companies/leads (B2B). Use it from Cursor, Claude Desktop, VS Code, or any MCP-compatible client.
Evaluating AI Recruitment Sourcing Tools by Human Preference
test_mcp_key (masked/sample results); set your own key for full results.curl -LsSf https://astral.sh/uv/install.sh | sh) or pippip install fastmcp or uv add fastmcpUse test_mcp_key for masked (sample) results — no sign-up required.
For full, unmasked results, get an API key from the Pearch.ai Dashboard and set it as PEARCH_API_KEY in your MCP config (see Installation below).
Clone the repo, then follow the steps for your client:
git clone https://github.com/Pearch-ai/mcp_pearch
cd mcp_pearch
Automatic:
fastmcp install claude-desktop pearch_mcp.py --env PEARCH_API_KEY=test_mcp_key
Replace test_mcp_key with your dashboard key for full results.
If you see bad interpreter: No such file or directory (e.g. with conda), run:
pip install --force-reinstall fastmcp
or:
python -m fastmcp install claude-desktop pearch_mcp.py --env PEARCH_API_KEY=test_mcp_key
Manual: edit ~/.claude/claude_desktop_config.json and add under mcpServers. Replace /path/to/mcp_pearch with your actual path.
With uv:
"Pearch.ai": {
"command": "uv",
"args": ["run", "--with", "fastmcp", "fastmcp", "run", "/path/to/mcp_pearch/pearch_mcp.py"],
"env": { "PEARCH_API_KEY": "test_mcp_key" }
}
With pip/conda (no uv):
"Pearch.ai": {
"command": "python",
"args": ["/path/to/mcp_pearch/pearch_mcp.py"],
"env": { "PEARCH_API_KEY": "test_mcp_key" }
}
Ensure fastmcp is installed: pip install fastmcp.
Recommended (automatic):
fastmcp install cursor pearch_mcp.py --env PEARCH_API_KEY=test_mcp_key
Replace test_mcp_key with your dashboard key for full results.
Manual: add to ~/.cursor/mcp.json (or project .cursor/mcp.json):
{
"mcpServers": {
"Pearch.ai": {
"command": "uv",
"args": ["run", "--with", "fastmcp", "fastmcp", "run", "/absolute/path/to/pearch_mcp.py"],
"env": { "PEARCH_API_KEY": "test_mcp_key" }
}
}
}
Replace /absolute/path/to/pearch_mcp.py with the real path. Use test_mcp_key for masked results, or your dashboard key for full results.
To generate a ready snippet:
fastmcp install mcp-json pearch_mcp.py --name "Pearch.ai"
Then paste the output into mcpServers in ~/.cursor/mcp.json.
mcpServers block to .vscode/mcp.json in your workspace.command / args / env format in the client’s MCP config.Generate a config snippet (defaults to test_mcp_key; add --env PEARCH_API_KEY=your-key for full results):
fastmcp install mcp-json pearch_mcp.py --name "Pearch.ai"
Paste the generated object into your client’s mcpServers.
| Tool | Description |
|---|---|
| search_people | Natural-language search for people or follow-up on a thread. Example: "software engineers in California with 5+ years Python", "senior ML researchers in Berlin". |
| search_company_leads | Find companies and leads/contacts (B2B). Example: company "AI startups in SF, 50–200 employees" + leads "CTOs and engineering managers". |
Base URL: PEARCH_API_URL or per-call base_url (default https://api.pearch.ai).
export PEARCH_API_KEY='test_mcp_key' # or your key for full results
fastmcp dev inspector pearch_mcp.py
MIT — see LICENSE.
Добавь это в claude_desktop_config.json и перезапусти Claude Desktop.
{
"mcpServers": {
"pearch-ai-mcp-pearch": {
"command": "npx",
"args": []
}
}
}