logo
Free, unlimited AI code reviews that run on commit
git-lrc git-lrc GitHub Install Now We'd appreciate a star git-lrc - Free, unlimited AI code reviews that run on commit | Product Hunt git-lrc - Free, unlimited AI code reviews that run on commit | Product Hunt

enrich_b2b_mcp

Template Server implements the Model Context Protocol (MCP) to connect AI models such as OpenAI GPT-4 and Anthropic Claude, while integrating with EnrichB2B for LinkedIn data insights. It provides a structured project layout and development tools for building applications that leverage advanced text generation and data analysis.

Author

enrich_b2b_mcp logo

moonlabsai

No License

Quick Info

GitHub GitHub Stars 1
NPM Weekly Downloads 0
Tools 1
Last Updated 2026-02-19

Tags

linkedinenrich_b2b_mcpenrichb2benrichb2b linkedinenrich_b2b_mcp templatelinkedin data

MCP Template Server

A template server implementing the Model Context Protocol (MCP) with OpenAI, Anthropic, and EnrichB2B integration.

Setup

  1. Create a virtual environment:
python -m venv venv
source venv/bin/activate  # On Windows: venv\Scripts\activate
  1. Install dependencies:
pip install -r requirements.txt
  1. Set up environment variables:
cp .env.example .env
# Edit .env with your API keys and configuration

Running the Server

Development mode:

python server.py

Or using MCP CLI:

mcp dev server.py

Features

  • OpenAI GPT-4 integration
  • Anthropic Claude integration
  • EnrichB2B LinkedIn data integration
  • FastAPI and Uvicorn server
  • Environment configuration
  • Example resources and tools
  • Structured project layout

Project Structure

.
├── .env.example          # Template for environment variables
├── .gitignore           # Git ignore rules
├── README.md            # This file
├── requirements.txt     # Python dependencies
├── enrichb2b.py        # EnrichB2B API client
└── server.py           # MCP server implementation

Usage

  1. Start the server
  2. Connect using any MCP client
  3. Use the provided tools and resources:
  4. config://app - Get server configuration
  5. get_profile_details - Get LinkedIn profile information
  6. get_contact_activities - Get LinkedIn user's recent activities and posts
  7. gpt4_completion - Generate text using GPT-4
  8. claude_completion - Generate text using Claude
  9. analysis_prompt - Template for text analysis

EnrichB2B Tools

get_profile_details

Get detailed information about a LinkedIn profile:

result = await get_profile_details(
    linkedin_url="https://www.linkedin.com/in/username",
    include_company_details=True,
    include_followers_count=True
)

get_contact_activities

Get recent activities and posts from a LinkedIn profile:

result = await get_contact_activities(
    linkedin_url="https://www.linkedin.com/in/username",
    pages=1,  # Number of pages (1-50)
    comments_per_post=1,  # Comments per post (0-50)
    likes_per_post=None  # Likes per post (0-50)
)

Development

To add new features:

  1. Add new tools using the @mcp.tool() decorator
  2. Add new resources using the @mcp.resource() decorator
  3. Add new prompts using the @mcp.prompt() decorator

License

MIT

See Also

`