Files
t6_mem0_v2/docs/mcp/introduction.mdx
Claude Code 1998bef6f4 Add MCP HTTP/SSE server and complete n8n integration
Major Changes:
- Implemented MCP HTTP/SSE transport server for n8n and web clients
- Created mcp_server/http_server.py with FastAPI for JSON-RPC 2.0 over HTTP
- Added health check endpoint (/health) for container monitoring
- Refactored mcp-server/ to mcp_server/ (Python module structure)
- Updated Dockerfile.mcp to run HTTP server with health checks

MCP Server Features:
- 7 memory tools exposed via MCP (add, search, get, update, delete)
- HTTP/SSE transport on port 8765 for n8n integration
- stdio transport for Claude Code integration
- JSON-RPC 2.0 protocol implementation
- CORS support for web clients

n8n Integration:
- Successfully tested with AI Agent workflows
- MCP Client Tool configuration documented
- Working webhook endpoint tested and verified
- System prompt optimized for automatic user_id usage

Documentation:
- Created comprehensive Mintlify documentation site
- Added docs/mcp/introduction.mdx - MCP server overview
- Added docs/mcp/installation.mdx - Installation guide
- Added docs/mcp/tools.mdx - Complete tool reference
- Added docs/examples/n8n.mdx - n8n integration guide
- Added docs/examples/claude-code.mdx - Claude Code setup
- Updated README.md with MCP HTTP server info
- Updated roadmap to mark Phase 1 as complete

Bug Fixes:
- Fixed synchronized delete operations across Supabase and Neo4j
- Updated memory_service.py with proper error handling
- Fixed Neo4j connection issues in delete operations

Configuration:
- Added MCP_HOST and MCP_PORT environment variables
- Updated .env.example with MCP server configuration
- Updated docker-compose.yml with MCP container health checks

Testing:
- Added test scripts for MCP HTTP endpoint verification
- Created test workflows in n8n
- Verified all 7 memory tools working correctly
- Tested synchronized operations across both stores

Version: 1.0.0
Status: Phase 1 Complete - Production Ready

🤖 Generated with Claude Code

Co-Authored-By: Claude <noreply@anthropic.com>
2025-10-15 13:56:41 +02:00

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---
title: 'MCP Server Introduction'
description: 'Model Context Protocol server for AI-powered memory operations'
---
# MCP Server Overview
The T6 Mem0 v2 MCP (Model Context Protocol) server provides a standardized interface for AI assistants and agents to interact with the memory system. It exposes all memory operations as MCP tools that can be used by any MCP-compatible client.
## What is MCP?
Model Context Protocol (MCP) is an open protocol that standardizes how applications provide context to LLMs. Created by Anthropic, it enables:
- **Universal tool access** - One protocol works across all AI assistants
- **Secure communication** - Structured message format with validation
- **Rich capabilities** - Tools, resources, and prompts in a single protocol
## Features
- ✅ **7 Memory Tools** - Complete CRUD operations for memories
- ✅ **HTTP/SSE Transport** - Compatible with n8n and web-based clients
- ✅ **stdio Transport** - Compatible with Claude Code and terminal-based clients
- ✅ **Synchronized Operations** - Ensures both Supabase and Neo4j stay in sync
- ✅ **Type-safe** - Full schema validation for all operations
## Available Tools
| Tool | Description |
|------|-------------|
| `add_memory` | Store new memories from conversation messages |
| `search_memories` | Semantic search across stored memories |
| `get_memory` | Retrieve a specific memory by ID |
| `get_all_memories` | Get all memories for a user or agent |
| `update_memory` | Update existing memory content |
| `delete_memory` | Delete a specific memory |
| `delete_all_memories` | Delete all memories for a user/agent |
## Transport Options
### HTTP/SSE Transport
Best for:
- n8n workflows
- Web applications
- REST API integrations
- Remote access
**Endpoint**: `http://localhost:8765/mcp`
### stdio Transport
Best for:
- Claude Code integration
- Local development tools
- Command-line applications
- Direct Python integration
**Usage**: Run as a subprocess with JSON-RPC over stdin/stdout
## Quick Example
```javascript
// Using n8n MCP Client Tool
{
"endpointUrl": "http://172.21.0.14:8765/mcp",
"serverTransport": "httpStreamable",
"authentication": "none",
"include": "all"
}
```
```python
# Using Python MCP SDK
from mcp import ClientSession, StdioServerParameters
from mcp.client.stdio import stdio_client
server_params = StdioServerParameters(
command="python",
args=["-m", "mcp_server.main"]
)
async with stdio_client(server_params) as (read, write):
async with ClientSession(read, write) as session:
await session.initialize()
# List available tools
tools = await session.list_tools()
# Call a tool
result = await session.call_tool(
"add_memory",
arguments={
"messages": [
{"role": "user", "content": "I love Python"},
{"role": "assistant", "content": "Noted!"}
],
"user_id": "user_123"
}
)
```
## Next Steps
<CardGroup cols={2}>
<Card title="Installation" icon="download" href="/mcp/installation">
Set up the MCP server locally or in Docker
</Card>
<Card title="Tool Reference" icon="wrench" href="/mcp/tools">
Detailed documentation for all available tools
</Card>
<Card title="n8n Integration" icon="workflow" href="/examples/n8n">
Use MCP tools in n8n AI Agent workflows
</Card>
<Card title="Claude Code" icon="code" href="/examples/claude-code">
Integrate with Claude Code for AI-powered coding
</Card>
</CardGroup>