Memorizer icon

Memorizer

62

Enables AI agents to store, retrieve, and semantically search through memories using vector embeddings.

Acerca de

Memorizer is a .NET-based service leveraging PostgreSQL with the pgvector extension to provide efficient similarity search capabilities. Designed for AI agents, it offers a robust long-term memory system where agents can store structured memories with vector embeddings. It supports retrieving memories by ID, performing semantic searches based on vector similarity, filtering search results by tags, and creating relationships to form knowledge graphs. The service integrates with the Model Context Protocol (MCP) for seamless use with AI agents and includes a web-based UI for manual memory management and configuration.

Características Principales

  • Integration with Model Context Protocol (MCP) for AI agents
  • Create relationships between memories to form knowledge graphs
  • 51 GitHub stars
  • Web-based UI for manual memory management
  • Semantic search through memories using vector similarity
  • Store structured memories with vector embeddings

Casos de Uso

  • Providing long-term, retrievable memory for AI agents
  • Building and managing knowledge graphs for AI systems
  • Enabling semantic search capabilities over agent-specific data
Advertisement

Advertisement