소개
Vector Index Tuning provides the specialized technical knowledge required to optimize production-grade vector databases for maximum performance. This skill bridges the gap between raw embeddings and efficient search by offering systematic approaches to balancing latency, recall, and memory usage. It features robust benchmarking templates for HNSW tuning, comparative analysis of quantization types like Scalar and Product Quantization, and practical configuration patterns for scaling vector infrastructure to handle millions of records without compromising retrieval quality.