Specialized databases for AI embedding search and similarity matching
Vector databases store and query high-dimensional embeddings, enabling semantic search, recommendation systems, and RAG architectures. Unlike traditional databases that match exact values, vector databases find semantically similar items using distance metrics (cosine similarity, dot product). With AI applications exploding, vector database knowledge is essential for building search, recommendation, and conversational AI features. Options range from dedicated solutions (Pinecone, Weaviate, Qdrant) to extensions on existing databases (pgvector).