This Memory MCP Server, developed by estav, provides a knowledge graph management system for AI assistants using the Model Context Protocol. It offers tools for storing, retrieving, and querying information in a graph structure, enabling assistants to build and maintain long-term memory. The server uses SQLite for persistent storage and implements optimized batch operations for efficiency. By connecting AI capabilities with structured knowledge representation, this implementation allows assistants to accumulate and reason over information across conversations. It is particularly useful for applications requiring context retention, relationship modeling between concepts, or any scenario where an AI system needs to build and leverage a persistent knowledge base.
暂无评论. 成为第一个评论的人!
登录以参与讨论
Retrieve an entity from the knowledge graph using its name. Parameters: entity_name (string)
Fetch the entire knowledge graph data. No parameters required.
Create new entities in the knowledge graph. Parameters: entities (list of Entity objects)
Add a unique observation to an existing entity. Parameters: entity (string), observation (string)
Establish a relation between two entities. Parameters: from_entity (string), to_entity (string), relation_type (string)
Search the memory using a natural language query. Parameters: query (string)
Delete specified entities from the knowledge graph. Parameters: names (list of strings)
Remove a relation between two entities. Parameters: from_entity (string), to_entity (string)
Clear all data from memory. No parameters required.