Multilead Open API MCP Server
Enables AI assistants to interact with the Multilead platform for lead management, email campaigns, conversations, webhooks, and analytics through 74 API endpoints.
README
Multilead Open API MCP Server
A comprehensive FastMCP server providing access to the Multilead Open API with 74 endpoints for lead management, campaigns, conversations, webhooks, and analytics.
Overview
This MCP server enables Claude and other AI assistants to interact with the Multilead platform for:
- Lead Management (32 endpoints): Create, retrieve, update, delete, search, and enrich leads with custom fields and tags
- Campaign Management (12 endpoints): Design, execute, and monitor email campaigns with advanced targeting
- Conversations (15 endpoints): Access email threads, message history, and conversation analytics
- Webhooks (8 endpoints): Set up real-time event notifications for leads, campaigns, and conversations
- Analytics & Reporting (7 endpoints): Generate performance reports, track metrics, and analyze trends
Features
- Full async/await support for high-performance operations
- Comprehensive error handling with helpful error messages
- Authentication via Bearer token (API key)
- Rate limiting and retry logic
- Type-safe operations using Pydantic models
- Example tools, resources, and prompts included
- Production-ready structure for adding all 74 API endpoints
Prerequisites
- Python 3.10 or higher
- Package manager:
uv(recommended) orpip - Multilead API Key: Get yours at https://app.multilead.co/settings/api
Installation
1. Clone or Navigate to Project
cd /home/gotime2022/Projects/mcp-servers/multilead-mcp
2. Create Virtual Environment
Using uv (recommended):
uv venv
source .venv/bin/activate # On Linux/Mac
# or
.venv\Scripts\activate # On Windows
Using standard venv:
python -m venv .venv
source .venv/bin/activate # On Linux/Mac
# or
.venv\Scripts\activate # On Windows
3. Install Dependencies
Using uv:
uv pip install -e .
Using pip:
pip install -e .
4. Configure Environment Variables
Copy the example environment file and add your API key:
cp .env.example .env
Edit .env and replace your_multilead_api_key_here with your actual API key:
MULTILEAD_API_KEY=ml_live_abc123xyz...
MULTILEAD_BASE_URL=https://api.multilead.co
MULTILEAD_TIMEOUT=30
MULTILEAD_DEBUG=false
Important: Never commit your .env file to version control. It's already in .gitignore.
Usage
Quick Start
STDIO Mode (For Claude Desktop/Code/Cursor)
# 1. Configure environment
cp .env.example .env
nano .env # Add your MULTILEAD_API_KEY
# 2. Start server
./start.sh
HTTP Mode (For Remote Access)
# 1. Configure environment
cp .env.example .env
nano .env # Add your MULTILEAD_API_KEY
# 2. Start HTTP server
./start-http.sh
The server will be available at:
- MCP Endpoint:
http://localhost:8000/mcp - Health Check:
http://localhost:8000/health
Advanced Usage
Custom HTTP Configuration
# Custom host and port
./start-http.sh --host 127.0.0.1 --port 3000
# Production mode (JSON logs)
./start-http.sh --production
# Debug mode
./start-http.sh --log-level DEBUG
Manual Startup
STDIO:
source .venv/bin/activate
export TRANSPORT=stdio
python server.py
HTTP:
source .venv/bin/activate
export TRANSPORT=http
export PORT=8000
python server.py
Health Check
When running in HTTP mode, check server health:
curl http://localhost:8000/health
Expected response:
{
"status": "healthy",
"service": "multilead-mcp",
"version": "1.0.0",
"transport": "http",
"api_configured": true
}
Deployment
The Multilead MCP Server supports two deployment modes:
STDIO Deployment (Local/IDE Integration)
For Claude Desktop, Cursor, and Claude Code integration.
Quick Setup:
-
Copy IDE configuration template:
# For Claude Desktop (macOS) cp docs/setup/claude-desktop-config.json ~/Library/Application\ Support/Claude/claude_desktop_config.json # For Cursor cp docs/setup/cursor-mcp-config.json .cursor/mcp_config.json # For Claude Code cp docs/setup/claude-code-mcp.json .claude/mcp.json -
Edit configuration file and add your API key
-
Restart your IDE
Detailed Guide: IDE Setup Guide
HTTP Deployment (Remote Access)
For web services, remote access, and cloud deployment.
Development:
./start-http.sh
Production: See the complete Deployment Guide for:
- systemd service configuration
- Docker deployment
- nginx reverse proxy setup
- SSL/TLS configuration
- Production best practices
Production Features
The server includes production-ready middleware:
- Structured Logging: JSON or text format, file rotation
- Request Logging: All requests logged with timing
- Error Handling: Graceful error responses with proper status codes
- Rate Limiting: Configurable per-minute and per-hour limits (100/min, 1000/hr default)
- Health Checks:
/healthendpoint for monitoring - Response Timing:
X-Response-Timeheader on all responses
Configuration:
LOG_LEVEL=INFO # DEBUG, INFO, WARNING, ERROR, CRITICAL
LOG_FORMAT=json # json (production) or text (development)
RATE_LIMIT_PER_MINUTE=100 # Requests per minute
RATE_LIMIT_PER_HOUR=1000 # Requests per hour
Documentation
Complete deployment documentation is available in the docs/ directory:
- Deployment Guide - Complete deployment instructions
- Deployment Checklist - Pre/post deployment checklist
- IDE Setup Guide - Claude Desktop, Cursor, Claude Code integration
- Environment Variables - Complete variable reference
- Configuration Templates in
docs/setup/- Ready-to-use IDE configs
Available Tools
Lead Management (5 tools implemented)
- create_lead: Create a new lead with email, name, company, tags, and custom fields
- get_lead: Retrieve a lead by ID with all properties
- list_leads: List and filter leads with pagination and filtering
- update_lead: Update lead properties, tags, and custom fields
- delete_lead: Delete a lead by ID
Example usage with Claude:
Create a new lead with email "john@example.com", first name "John",
last name "Doe", company "Acme Corp", and tags ["enterprise", "qualified"]
Resources
- multilead://config: Server configuration and API status
- multilead://stats: API usage statistics and account information
Prompts
- lead_enrichment_prompt: Template for enriching lead data with AI analysis
- campaign_analysis_prompt: Template for analyzing campaign performance
API Coverage
Current Implementation
- 5 core lead management tools (create, read, update, delete, list)
- 2 informational resources
- 2 AI prompt templates
- Full error handling and authentication
Planned Tools (69 endpoints remaining)
Lead Management (27 more):
- Bulk import/export
- Lead scoring and enrichment
- Tag management
- Custom field operations
- Lead lifecycle tracking
- Duplicate detection
- Lead assignment
Campaign Management (12 endpoints):
- Campaign CRUD operations
- Template management
- Segment targeting
- Schedule management
- Performance tracking
- A/B testing
Conversations (15 endpoints):
- Thread retrieval
- Message history
- Participant tracking
- Conversation analytics
- Export capabilities
Webhooks (8 endpoints):
- Webhook registration
- Event subscriptions
- Delivery logs
- Webhook testing
Analytics (7 endpoints):
- Lead reports
- Campaign analytics
- Engagement metrics
- Custom reporting
Project Structure
multilead-mcp/
├── server.py # Main FastMCP server implementation
├── pyproject.toml # Project metadata and dependencies
├── .env.example # Environment variable template
├── .gitignore # Git ignore patterns
├── README.md # This file
├── start.sh # STDIO startup script
├── start-http.sh # HTTP startup script
├── docs/ # Complete documentation
│ ├── deployment/ # Deployment guides
│ │ ├── DEPLOYMENT.md # Complete deployment guide
│ │ ├── DEPLOYMENT_CHECKLIST.md # Deployment checklist
│ │ └── .env.production # Production environment template
│ ├── setup/ # Setup and configuration
│ │ ├── IDE_SETUP.md # IDE integration guide
│ │ ├── ENVIRONMENT_VARIABLES.md # Environment variables reference
│ │ ├── claude-desktop-config.json # Claude Desktop template
│ │ ├── cursor-mcp-config.json # Cursor template
│ │ ├── claude-code-mcp.json # Claude Code template
│ │ └── http-client-config.json # HTTP client template
│ └── testing/ # Testing documentation
├── logs/ # Server logs (HTTP mode only, gitignored)
└── tests/ # Test suite (to be implemented)
└── test_server.py
Development
Adding New Tools
Follow the pattern in server.py:
@mcp.tool()
async def your_new_tool(
param1: str,
param2: Optional[int] = None
) -> Dict[str, Any]:
"""
Tool description for LLM
Args:
param1: Description of param1
param2: Description of param2
Returns:
Response data from API
"""
result = await client.request(
"GET",
"/v1/your-endpoint",
params={"param1": param1, "param2": param2}
)
return result
Code Quality
# Format code
black server.py
# Lint code
ruff check server.py
# Type checking (optional)
mypy server.py
Security Best Practices
- Never hardcode API keys in source code
- Always use environment variables for secrets
- The
.envfile is in.gitignoreto prevent accidental commits - API keys are never logged or exposed in error messages
- Use
.env.exampleas a template with placeholders only
Troubleshooting
Authentication Errors
Error: Authentication failed. Please check your MULTILEAD_API_KEY.
Solution: Verify your API key is correct and active at https://app.multilead.co/settings/api
Timeout Errors
Error: Request timed out after 30 seconds.
Solution: Increase the timeout in your .env file:
MULTILEAD_TIMEOUT=60
Rate Limiting
Error: Rate limit exceeded. Please wait before making more requests.
Solution: The API has rate limits. Wait a few minutes before retrying. Consider implementing request queuing for high-volume operations.
Connection Errors
Error: Network error while connecting to Multilead API
Solution:
- Check your internet connection
- Verify the
MULTILEAD_BASE_URLis correct - Check if Multilead API is operational
API Documentation
For complete API reference, visit:
- Official Docs: https://docs.multilead.co/api-reference
- API Dashboard: https://app.multilead.co/settings/api
FastMCP Documentation
Learn more about FastMCP:
- Getting Started: https://gofastmcp.com/getting-started/welcome
- Server Guide: https://gofastmcp.com/servers/server
- Tools: https://gofastmcp.com/servers/tools
Contributing
Contributions are welcome! To add more endpoints:
- Review the Multilead API documentation
- Add the tool function following existing patterns
- Include proper type hints and docstrings
- Test the endpoint manually
- Update this README with the new tool
License
MIT License - See LICENSE file for details
Support
For issues with:
- This MCP server: Open an issue in the repository
- Multilead API: Contact Multilead support
- FastMCP framework: Visit FastMCP documentation
Changelog
Version 1.0.0 (2025-11-05)
- Initial release
- 5 core lead management tools implemented
- 2 informational resources
- 2 AI prompt templates
- Full authentication and error handling
- Production-ready foundation for 74 API endpoints
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