optimized-memory-mcp-server

Created By
AgentWonga year ago
Overview

What is Optimized Memory MCP Server?

The Optimized Memory MCP Server is a project designed to test and demonstrate Claude AI's coding abilities, focusing on effective AI workflows and prompt design. It implements a persistent memory system using a local knowledge graph, allowing Claude to remember user information across chats.

How to use Optimized Memory MCP Server?

To use the server, set it up with Docker or NPX, and configure it in your claude_desktop_config.json. You can then interact with the server through various API endpoints to manage entities and their relationships.

Key features of Optimized Memory MCP Server?

  • Persistent memory using a local knowledge graph
  • API for creating and managing entities and relations
  • Ability to add, delete, and search observations
  • Supports Docker and NPX for easy setup

Use cases of Optimized Memory MCP Server?

  1. Personalizing user interactions by remembering preferences and behaviors.
  2. Managing relationships and observations for enhanced AI conversations.
  3. Building a knowledge base for applications requiring user context.

FAQ from Optimized Memory MCP Server?

  • Can I use this server for any type of memory management?

Yes! The server is designed for flexible memory management across various applications.

  • Is there a limit to the number of entities I can create?

No, you can create as many entities as needed, but performance may vary based on the size of the knowledge graph.

  • How do I retrieve information from the memory?

You can use the read_graph API to retrieve the entire knowledge graph or search_nodes to find specific entities.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
AgentWong
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