MCP OpenMemory Server

Created By
baryhuanga year ago
Simple standalone MCP server giving Claude the ability to remember your conversations and learn from them over time.
Overview

What is MCP OpenMemory Server?

MCP OpenMemory Server is a standalone server that enables Claude to remember conversations and learn from them over time, enhancing user interaction.

How to use MCP OpenMemory Server?

To use the server, configure it with Claude Desktop by setting the MEMORY_DB_PATH to a persistent location and run it using npm or from source.

Key features of MCP OpenMemory Server?

  • Memory Storage: Save and recall conversation messages.
  • Memory Abstracts: Maintain summarized memory context across conversations.
  • Recent History: Access recent conversations within configurable time windows.
  • Local Database: Uses SQLite for persistent storage without external dependencies.

Use cases of MCP OpenMemory Server?

  1. Enhancing user experience by remembering past interactions.
  2. Storing important user preferences and decisions for future reference.
  3. Providing context-aware assistance based on previous conversations.

FAQ from MCP OpenMemory Server?

  • How do I ensure my conversation history is saved?

Configure MEMORY_DB_PATH to a persistent location to avoid losing data.

  • Can I run the server without external dependencies?

Yes, it uses SQLite for local storage, requiring no external database.

  • What happens if I don't configure the database path?

The database will default to a temporary location, which may be cleared when the application restarts.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
baryhuang
Star
1
Language
JavaScript
License
MIT license

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