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MemTensor

MemOS

by MemTensor

MCP Server for MemOS API

A Model Context Protocol (MCP) implementation for the MemOS API service. This package provides a command-line interface to interact with MemOS API using MCP standards.

MCP Configuration

To use this package In MCP Client, use the following configuration: (You may need to install Node.js first)

{
  "mcpServers": {
    "memos-api-mcp": {
      "command": "npx",
      "args": ["-y", "@memtensor/memos-api-mcp"],
      "env": {
        "MEMOS_API_KEY": "your-api-key",
        "MEMOS_USER_ID": "your-user-id",
        "MEMOS_CHANNEL": "the-site-where-you-are-seeing-this-document"
      }
    }
  }
}

Configuration Explanation

  • command: Uses npx to run the package

  • args: Arguments passed to npx to run the package

  • env: Environment variables

    • MEMOS_API_KEY: Your Memos API key for authentication (Get your API Key in Dashboard[https://memos-dashboard-pre.openmem.net/cn/quickstart/])

    • MEMOS_USER_ID: Stable per-human identifier. MUST be deterministic and non-PII, and MUST remain the same for the same person across devices/sessions. NEVER reuse across different people. DO NOT use random values, device IDs, or model/chat session IDs. Recommended: SHA-256(lowercase(trim(email))) or your SSO subject/employee ID.

    • MEMOS_CHANNEL: The site where you are seeing this document. Candidate values: MODELSCOPE, MCPSO, MCPMARKETCN, MCPMARKETCOM, GLAMA, PULSEMCP, MCPSERVERS,LOBEHUB,MEMOS(meaning the MemOS official website), GITHUB(meaning this README file)

Available MCP Tools

This package provides the following MCP tools:

  1. add_message

    • Adds a new message to a conversation

    • Parameters:

      • conversation_id: Unique identifier of the conversation associated with the feedback.

      • messages: Array of messages containing role and content information.

        • role: Role of the message sender (user or assistant).

        • content: Message content.

        • chat_time: (Optional) Message timestamp.

  2. search_memory

    • Searches for memories in a conversation.

    • Parameters:

      • query: Text content to search within the memories. The token limit for a single query is 4k.

      • filter: (Optional) Filter conditions, used to precisely limit the memory scope before retrieval.

      • knowledgebase_ids: (Optional) Array specifying the knowledge bases to search.

        • DO NOT USE THIS unless the user explicitly mentions "knowledge base" or "KB".

          1. If the user explicitly asks to search ALL knowledge bases -> pass ["all"].

          1. If the user specifies particular KB IDs -> pass those IDs.

          1. If the user DOES NOT mention knowledge bases -> OMIT this parameter (do not send it).

      • include_preference: (Optional) Enable preference memory recall. Default: true.

      • preference_limit_number: (Optional) Max preference memories to return. Default: 9, max 25.

      • include_tool_memory: (Optional) Enable tool memory recall. Default: false.

      • tool_memory_limit_number: (Optional) Max tool memories to return. Default: 6, max 25.

      • include_skill: (Optional) Enable Skill recall. Default: false.

      • skill_limit_number: (Optional) Max Skills to return. Default: 6, max 25.

      • relativity: (Optional) Relevance threshold (0-1) for recalled memories. A value of 0 disables relevance filtering.

      • conversation_first_message: First user message in the thread (used to generate conversation_id).

      • memory_limit_number: Maximum number of memories that can be recalled. Default: 9, max 25.

  3. delete_memory

    • Delete specific memories by their IDs.

    • Parameters:

      • user_ids: List of user IDs whose memories will be deleted.

      • memory_ids: List of memory IDs to delete.

  4. add_feedback

    • Submit user feedback to the MemOS system.

    • Note: Feedback is applied asynchronously — add_feedback returns immediately (often with a task_id), and the effect may take a short time to appear.

    • Parameters:

      • user_id: The user identifier associated with the feedback.

      • conversation_id: Unique identifier of the conversation associated with the feedback.

      • feedback_content: The specific content of the feedback.

      • agent_id: (Optional) Agent ID associated with the feedback.

      • app_id: (Optional) App ID associated with the feedback.

      • feedback_time: (Optional) Feedback time string (default: current UTC time).

      • allow_public: (Optional) Whether to allow public access (default: false).

      • allow_knowledgebase_ids: (Optional) List of knowledge base IDs allowed to be written to.

All tools use the same configuration and require the MEMOS_API_KEY environment variable.

Features

  • MCP-compliant API interface

  • Command-line tool for easy interaction

  • Built with TypeScript for type safety

  • Express.js server implementation

  • Zod schema validation

Prerequisites

  • Node.js >= 18

  • npm or pnpm (recommended)

Installation

You can install the package globally using npm:

npm install -g @memtensor/memos-api-mcp

Or using pnpm:

pnpm add -g @memtensor/memos-api-mcp

Usage

After installation, you can run the CLI tool using:

npx @memtensor/memos-api-mcp

Or if installed globally:

memos-api-mcp

Development

  1. Clone the repository:

git clone <repository-url>
cd memos-api-mcp
  1. Install dependencies:

pnpm install
  1. Start development server:

pnpm dev
  1. Build the project:

pnpm build

Available Scripts

  • pnpm build - Build the project

  • pnpm dev - Start development server using tsx

  • pnpm start - Run the built version

  • pnpm inspect - Inspect the MCP implementation using @modelcontextprotocol/inspector

Project Structure

memos-mcp/
├── src/           # Source code
├── build/         # Compiled JavaScript files
├── package.json   # Project configuration
└── tsconfig.json  # TypeScript configuration

Dependencies

  • @modelcontextprotocol/sdk: ^1.0.0

  • express: ^4.19.2

  • zod: ^3.23.8

  • ts-md5: ^2.0.0

Version

Current version: 1.0.0-beta.2

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