MemSearch
ActiveDescription
A Markdown-first memory system and standalone library for any AI agent. Provides memory storage and retrieval with vector search and semantic matching to help agents manage long-term context.
A Markdown-first memory system and standalone library for any AI agent. Provides memory storage and retrieval with vector search and semantic matching to help agents manage long-term context.
A hyper-fast local vector database for use with LLM Agents, providing lightweight vector storage and similarity search capabilities for embedding as instant memory and knowledge retrieval components in agent applications.
MemVid is a long-term memory layer for AI agents that uses video encoding for lightweight single-file storage, replacing complex RAG pipelines with instant retrieval.
A graph-native context development platform for storing, enriching, and retrieving structured knowledge with semantic search and portable context cores, supporting RDF, SPARQL, and other standards for AI agent knowledge management.
A MemAgent framework that can extrapolate to 3.5M context tokens, along with a training framework for RL training of any agent workflow.