MCP Memory Server

MCP Memory Server

By sdimitrov GitHub

MCP Memory Server with PostgreSQL and pgvector for long-term memory capabilities

Overview

What is MCP Memory Server?

MCP Memory Server is a server designed to implement long-term memory capabilities for AI assistants, utilizing PostgreSQL and pgvector for efficient vector similarity search.

How to use MCP Memory Server?

To use the MCP Memory Server, set up PostgreSQL with the pgvector extension, install the necessary dependencies, configure environment variables, and start the server. You can then interact with the server through its RESTful API.

Key features of MCP Memory Server?

  • PostgreSQL with pgvector for vector similarity search
  • Automatic embedding generation using BERT
  • RESTful API for memory operations
  • Semantic search capabilities
  • Support for various types of memories (learnings, experiences, etc.)
  • Tag-based memory retrieval
  • Confidence scoring for memories
  • Real-time updates via Server-Sent Events (SSE)

Use cases of MCP Memory Server?

  1. Storing and retrieving AI assistant memories
  2. Enhancing AI interactions with contextual memory
  3. Implementing personalized user experiences based on past interactions

FAQ from MCP Memory Server?

  • What is the purpose of the MCP Memory Server?

It provides long-term memory capabilities for AI assistants, allowing them to remember past interactions and improve user experience.

  • Is there a specific database requirement?

Yes, it requires PostgreSQL 14+ with the pgvector extension installed.

  • How can I check the server status?

You can check the server status by visiting http://localhost:3333/mcp/v1/health.

Content

MCP Memory Server

This server implements long-term memory capabilities for AI assistants using mem0 principles, powered by PostgreSQL with pgvector for efficient vector similarity search.

Features

  • PostgreSQL with pgvector for vector similarity search
  • Automatic embedding generation using BERT
  • RESTful API for memory operations
  • Semantic search capabilities
  • Support for different types of memories (learnings, experiences, etc.)
  • Tag-based memory retrieval
  • Confidence scoring for memories
  • Server-Sent Events (SSE) for real-time updates
  • Cursor MCP protocol compatible

Prerequisites

  1. PostgreSQL 14+ with pgvector extension installed:
# In your PostgreSQL instance:
CREATE EXTENSION vector;
  1. Node.js 16+

Setup

  1. Install dependencies:
npm install
  1. Configure environment variables: Copy .env.sample to .env and adjust the values:
cp .env.sample .env

Example .env configurations:

# With username/password
DATABASE_URL="postgresql://username:password@localhost:5432/mcp_memory"
PORT=3333

# Local development with peer authentication
DATABASE_URL="postgresql:///mcp_memory"
PORT=3333
  1. Initialize the database:
npm run prisma:migrate
  1. Start the server:
npm start

For development with auto-reload:

npm run dev

Using with Cursor

Adding the MCP Server in Cursor

To add the memory server to Cursor, you need to modify your MCP configuration file located at ~/.cursor/mcp.json. Add the following configuration to the mcpServers object:

{
  "mcpServers": {
    "memory": {
      "command": "node",
      "args": [
        "/path/to/your/memory/src/server.js"
      ]
    }
  }
}

Replace /path/to/your/memory with the actual path to your memory server installation.

For example, if you cloned the repository to /Users/username/workspace/memory, your configuration would look like:

{
  "mcpServers": {
    "memory": {
      "command": "node",
      "args": [
        "/Users/username/workspace/memory/src/server.js"
      ]
    }
  }
}

The server will be automatically started by Cursor when needed. You can verify it's working by:

  1. Opening Cursor
  2. The memory server will be started automatically when Cursor launches
  3. You can check the server status by visiting http://localhost:3333/mcp/v1/health

Available MCP Endpoints

SSE Connection

  • Endpoint: GET /mcp/v1/sse
  • Query Parameters:
    • subscribe: Comma-separated list of events to subscribe to (optional)
  • Events:
    • connected: Sent on initial connection
    • memory.created: Sent when new memories are created
    • memory.updated: Sent when existing memories are updated

Memory Operations

  1. Create Memory
POST /mcp/v1/memory
Content-Type: application/json

{
  "type": "learning",
  "content": {
    "topic": "Express.js",
    "details": "Express.js is a web application framework for Node.js"
  },
  "source": "documentation",
  "tags": ["nodejs", "web-framework"],
  "confidence": 0.95
}
  1. Search Memories
GET /mcp/v1/memory/search?query=web+frameworks&type=learning&tags=nodejs
  1. List Memories
GET /mcp/v1/memory?type=learning&tags=nodejs,web-framework

Health Check

GET /mcp/v1/health

Response Format

All API responses follow the standard MCP format:

{
  "status": "success",
  "data": {
    // Response data
  }
}

Or for errors:

{
  "status": "error",
  "error": "Error message"
}

Memory Schema

  • id: Unique identifier
  • type: Type of memory (learning, experience, etc.)
  • content: Actual memory content (JSON)
  • source: Where the memory came from
  • embedding: Vector representation of the content (384 dimensions)
  • tags: Array of relevant tags
  • confidence: Confidence score (0-1)
  • createdAt: When the memory was created
  • updatedAt: When the memory was last updated
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