Enables high-performance distributed vector search and multi-agent coordination using QUIC synchronization and hybrid search.
This skill provides Claude with advanced expertise in managing AgentDB, a specialized database designed for AI agents. It covers sophisticated implementation patterns including sub-millisecond QUIC synchronization for distributed systems, hybrid search that combines vector embeddings with complex metadata filters, and Maximal Marginal Relevance (MMR) for diverse result retrieval. It is an essential capability for developers building complex multi-agent architectures, scalable AI systems, or high-performance search applications requiring fine-grained control over distance metrics, database sharding, and context synthesis.
主な機能
01Multi-database management and horizontal sharding for large-scale deployments
02Maximal Marginal Relevance (MMR) for diverse, non-redundant search results
03Sub-millisecond QUIC synchronization for distributed AI nodes
04Advanced distance metrics including Cosine, Euclidean, and Dot Product
051 GitHub stars
06Hybrid search combining vector similarity with complex metadata filtering
ユースケース
01Implementing enterprise-grade semantic search with strict metadata constraints
02Building high-availability distributed AI agent swarms across network boundaries
03Scaling AI memory systems using multi-database sharding and optimization