Fast Intercom
A high-performance MCP server for analyzing Intercom conversations, offering speeds up to 100x faster than the REST API.
FastIntercom MCP Server
High-performance Model Context Protocol (MCP) server for Intercom conversation analytics. Provides fast, local access to Intercom conversations through intelligent caching and background synchronization.
Features
- 🚀 Fast Local Access: Sub-100ms response times for conversation searches
- 🧠 Intelligent Sync: Request-triggered background updates ensure fresh data
- 💾 Efficient Storage: SQLite-based local storage (~2KB per conversation)
- 🔍 Powerful Search: Natural language timeframes and text search
- ⚡ MCP Integration: Direct integration with Claude Desktop and MCP clients
Quick Start
Installation
# Clone and install
git clone <repository-url>
cd fast-intercom-mcp
python -m venv venv
source venv/bin/activate # On Windows: venv\Scripts\activate
pip install -e .
Setup
# Initialize with your Intercom credentials
fast-intercom-mcp init
# Check status
fast-intercom-mcp status
# Sync conversation history
fast-intercom-mcp sync --force --days 7
Claude Desktop Integration
Add to your Claude Desktop configuration (~/.config/claude/claude_desktop_config.json
):
{
"mcpServers": {
"fast-intercom-mcp": {
"command": "fast-intercom-mcp",
"args": ["start"],
"env": {
"INTERCOM_ACCESS_TOKEN": "your_token_here"
}
}
}
}
Usage
CLI Commands
fast-intercom-mcp status # Show server status and statistics
fast-intercom-mcp sync # Incremental sync of recent conversations
fast-intercom-mcp sync --force --days 7 # Force sync last 7 days
fast-intercom-mcp start # Start MCP server
fast-intercom-mcp logs # View recent log entries
fast-intercom-mcp reset # Reset all data
MCP Tools
Once connected to Claude Desktop, you can ask questions like:
- "Search for conversations about billing in the last 7 days"
- "Show me customer conversations from yesterday"
- "What's the status of the FastIntercom server?"
- "Get conversation details for ID 123456789"
Configuration
Environment Variables
INTERCOM_ACCESS_TOKEN=your_token_here
FASTINTERCOM_LOG_LEVEL=INFO
FASTINTERCOM_MAX_SYNC_AGE_MINUTES=5
FASTINTERCOM_BACKGROUND_SYNC_INTERVAL=10
Configuration File
Located at ~/.fast-intercom-mcp/config.json
:
{
"log_level": "INFO",
"max_sync_age_minutes": 5,
"background_sync_interval_minutes": 10,
"initial_sync_days": 30
}
Architecture
Intelligent Sync Strategy
FastIntercom uses a sophisticated caching strategy:
- Immediate Response: MCP requests return data instantly from local cache
- Background Sync: Stale timeframes trigger background updates
- Smart Triggers: System learns from request patterns to optimize sync timing
- Fresh Data: Next request gets updated data from background sync
Components
- Database: SQLite with optimized schema for fast searches
- Sync Service: Background service with intelligent refresh logic
- MCP Server: Model Context Protocol implementation
- CLI Interface: Command-line tools for management and monitoring
Development
Testing
Quick Tests
# Unit tests
pytest tests/
# Integration test (requires API key)
./scripts/run_integration_test.sh
# Docker test
./scripts/test_docker_install.sh
Comprehensive Testing
# Full unit test suite with coverage
pytest tests/ --cov=fast_intercom_mcp
# Integration test with performance report
./scripts/run_integration_test.sh --performance-report
# Docker clean install test
./scripts/test_docker_install.sh --with-api-test
# Performance benchmarking
./scripts/run_performance_test.sh
CI/CD Integration
- Fast Check: Runs on every PR (unit tests, linting, imports)
- Integration Test: Manual/weekly trigger with real API data
- Docker Test: On releases and deployment validation
For detailed testing procedures, see:
docs/TESTING.md
- Complete testing guidedocs/INTEGRATION_TESTING.md
- Integration test proceduresscripts/README.md
- Test script documentation
Local Development
# Install in development mode
pip install -e .
# Run with verbose logging
fast-intercom-mcp --verbose status
# Monitor logs in real-time
tail -f ~/.fast-intercom-mcp/logs/fast-intercom-mcp.log
Performance
Typical Performance Metrics
- Response Time: <100ms for cached queries
- Storage Efficiency: ~2KB per conversation average
- Sync Speed: 10-50 conversations/second
- Memory Usage: <100MB for server process
Storage Requirements
- Small workspace: 100-500 conversations, ~5-25 MB
- Medium workspace: 1,000-5,000 conversations, ~50-250 MB
- Large workspace: 10,000+ conversations, ~500+ MB
Troubleshooting
Common Issues
Connection Failed
- Verify your Intercom access token
- Check token permissions (read conversations required)
- Test:
curl -H "Authorization: Bearer YOUR_TOKEN" https://api.intercom.io/me
Database Locked
- Stop any running FastIntercom processes:
ps aux | grep fast-intercom-mcp
- Check log file:
~/.fast-intercom-mcp/logs/fast-intercom-mcp.log
MCP Server Not Responding
- Verify Claude Desktop config JSON syntax
- Restart Claude Desktop after configuration changes
- Check that the
fast-intercom-mcp
command is available in PATH
Debug Mode
fast-intercom-mcp --verbose start # Enable verbose logging
export FASTINTERCOM_LOG_LEVEL=DEBUG # Set debug level
API Reference
MCP Tools
search_conversations
Search conversations with flexible filters.
Parameters:
query
(string): Text to search in conversation messagestimeframe
(string): Natural language timeframe ("last 7 days", "this month", etc.)customer_email
(string): Filter by specific customer emaillimit
(integer): Maximum conversations to return (default: 50)
get_conversation
Get full details of a specific conversation.
Parameters:
conversation_id
(string, required): Intercom conversation ID
get_server_status
Get server status and statistics.
Parameters: None
sync_conversations
Trigger manual conversation sync.
Parameters:
force
(boolean): Force full sync even if recent data exists
Contributing
- Fork the repository
- Create a feature branch (
git checkout -b feature/amazing-feature
) - Commit your changes (
git commit -m 'Add amazing feature'
) - Push to the branch (
git push origin feature/amazing-feature
) - Open a Pull Request
License
MIT License - see LICENSE file for details.
Support
- Issues: GitHub Issues
- Documentation: This README and inline code documentation
- Logs: Check
~/.fast-intercom-mcp/logs/fast-intercom-mcp.log
for detailed information
Related Servers
DeepL
Translate text using the DeepL API.
VRChat MCP OSC
A bridge between AI assistants and VRChat using MCP and OSC, enabling AI-driven avatar control and interactions in virtual reality.
MCP LinkedIn
Interact with LinkedIn using an unofficial API, requiring email and password for authentication.
MCP ChatGPT Proxy
A production-ready MCP server for ChatGPT and o3-pro, featuring caching, cost tracking, and rate limiting.
Telegram
Interact with the Telegram API to send and receive messages.
Feishu/Lark OpenAPI MCP
Connects AI agents to the Feishu/Lark platform via its OpenAPI to automate tasks like document processing, conversation management, and calendar scheduling.
NANDA AI Agent Sunday Hack
An MCP server integrating WhatsApp messaging and ElevenLabs AI voice capabilities into VS Code.
Gmail MCP
A standardized interface for managing, sending, and retrieving emails through the Gmail API.
Discord Notification MCP Server
Sends notifications to Discord channels or users via a bot.
Multi Chat MCP Server (Google Chat)
Connect AI assistants like Cursor to Google Chat and beyond — enabling smart, extensible collaboration across chat platforms.