This podcast introduces vector databases, explaining their function in handling unstructured data and contrasting them with traditional databases. It details the components of vectors (ID, dimensions, payload), discusses indexing and search methods (HNSW, approximate nearest neighbors), and explores advanced features like hybrid search, quantization, and distributed deployment. The podcast emphasizes Qdrant, a vector database, showcasing its capabilities and architecture through code examples and use cases. Finally, it addresses data security concerns and access control methods.
© 2025 B Hari
Substack is the home for great culture
Share this post