Local Memory
Local memory storage and retrieval using Ollama vector embeddings for persistent AI agent memory.
What it does
Local memory storage and retrieval using Ollama vector embeddings for persistent AI agent memory.
Provides local memory storage and retrieval for AI agents using vector embeddings generated by Ollama models. Stores memories as vectors in a Zvec database with metadata including workspace keys, memory types (decisions, preferences, facts, etc.), importance scores, and timestamps. Features semantic search, memory superseding for updates, workspace isolation, and automatic relevance scoring based on embedding similarity and importance weights. Designed for agents that need persistent memory across conversations without relying on external cloud services.
Capabilities
Server
Quality
deterministic score 0.56 from registry signals: · indexed on pulsemcp · has source repo · 4 github stars · registry-generated description present