MCP Handoff Server
Facilitates seamless collaboration between AI agents by providing tools for structured task handoffs, progress tracking, and documentation management. It allows agents to create, update, and archive handoff documents to ensure continuity across complex workflows.
README
🤝 MCP Handoff Server
A Model Context Protocol (MCP) server that helps AI agents hand off work to each other with structured documentation and progress tracking.
✨ What it does
When AI agents need to pass work between each other, this server provides:
- 📝 Structured handoff documents with templates
- 🔄 Progress tracking from start to completion
- 📁 Automatic organization of active and archived handoffs
- 🔍 Easy searching and filtering of past work
🚀 Quick Start
Just run it with npx - no installation needed:
# Start in MCP mode (for MCP clients)
npx -y mcp-handoff-server
# Start HTTP server (for testing/direct API access)
npx -y mcp-handoff-server --mode http
That's it! The server automatically creates all needed folders and templates.
📋 Basic Usage
For MCP Clients
Add to your MCP client configuration:
{
"mcpServers": {
"handoff": {
"command": "npx",
"args": [
"-y",
"mcp-handoff-server"
]
}
}
}
For HTTP Testing
# Start server
npx -y mcp-handoff-server --mode http
# Test it works
curl http://localhost:3001/health
🛠️ Available Tools
The server provides these MCP tools for AI agents:
graph LR
A[📝 create_handoff] --> B[📖 read_handoff]
B --> C[🔄 update_handoff]
C --> D[✅ complete_handoff]
D --> E[📦 archive_handoff]
F[📋 list_handoffs] --> B
style A fill:#e1f5fe
style C fill:#f3e5f5
style D fill:#e8f5e8
style E fill:#fff3e0
style F fill:#fce4ec
Tool Functions:
create_handoff- Start a new handoff documentread_handoff- Read an existing handoffupdate_handoff- Add progress updatescomplete_handoff- Mark work as finishedarchive_handoff- Move completed work to archivelist_handoffs- Find and filter handoffs
📖 Example: Creating a Handoff
# Start the server
npx -y mcp-handoff-server --mode http
# Create a new handoff
curl -X POST http://localhost:3001/mcp \
-H "Content-Type: application/json" \
-d '{
"jsonrpc": "2.0",
"id": 1,
"method": "create_handoff",
"params": {
"type": "quick",
"initialData": {
"date": "2025-06-30",
"time": "14:30 UTC",
"currentState": {
"workingOn": "Building user login",
"status": "50% complete",
"nextStep": "Add password validation"
},
"environmentStatus": {
"details": {
"Server": "✅",
"Database": "✅"
}
}
}
}
}'
🔧 Command Options
npx -y mcp-handoff-server [options]
Options:
--mode <mode> 'mcp' or 'http' (default: mcp)
--port <port> HTTP port (default: 3001)
--handoff-root <dir> Storage directory (default: ./handoff-system)
--help Show help
--version Show version
🔄 How It Works
Simple Workflow
- Create a handoff when starting work
- Update progress as you work
- Complete when finished
- Archive for future reference
graph TD
A[🤖 Agent Starts Work] --> B{New Work?}
B -->|Yes| C[📝 create_handoff]
B -->|No| D[📖 read_handoff]
C --> E[📁 Active Handoff]
D --> E
E --> F[🔄 update_handoff]
F --> G{Work Done?}
G -->|No| F
G -->|Yes| H[✅ complete_handoff]
H --> I[📦 archive_handoff]
I --> J[🗄️ Archived]
style C fill:#e1f5fe
style F fill:#f3e5f5
style H fill:#e8f5e8
style I fill:#fff3e0
File Organization
The server automatically organizes everything in folders:
handoff-system/active/- Current workhandoff-system/archive/- Completed workhandoff-system/templates/- Document templates
🎯 Two Types of Handoffs
📋 Standard Handoff - For complex work with detailed context ⚡ Quick Handoff - For simple updates and brief transitions
🏷️ Status Indicators
- ✅ Working - Everything good
- ⚠️ Warning - Some issues but not blocked
- ❌ Error - Problems that need fixing
🛠️ Development
Want to contribute or run locally?
# Clone and install
git clone <repository-url>
cd mcp-handoff-server
npm install
# Run in development
npm run dev
# Build for production
npm run build
📄 License
MIT License - feel free to use this in your projects!
🆘 Need Help?
- Issues: GitHub Issues
- MCP Protocol: Model Context Protocol Docs
Built for seamless AI agent collaboration 🤖✨
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