Vector Database Mastery: Foundations, Indexing, and Semantic Search with FAISS, Milvus, and Pinecone: 1 (Vector Database Mastery: From Foundations to Production-Ready AI Search Systems) - Tapa blanda

Libro 1 de 2: Vector Database Mastery: From Foundations to Production-Ready AI Search Systems

Zhou, Lian

 
9798277971871: Vector Database Mastery: Foundations, Indexing, and Semantic Search with FAISS, Milvus, and Pinecone: 1 (Vector Database Mastery: From Foundations to Production-Ready AI Search Systems)

Sinopsis

Build a solid foundation in AI-powered vector search with Vector Database Mastery – Volume 1. This book guides engineers, data scientists, and AI enthusiasts through the essentials of vector representations, similarity search, and indexing techniques for scalable retrieval systems.
Learn how to transform text, images, and structured data into high-dimensional vectors and implement efficient search with cosine, Euclidean, and inner product distances. Explore FAISS, Milvus, and Pinecone, and understand the trade-offs between latency, memory, and recall with practical, production-ready Python code.
What You’ll Learn:

  • Fundamentals of vector embeddings and similarity search
  • High-dimensional indexing with FAISS HNSW, IVF, and PQ
  • Using managed and self-hosted vector databases
  • Building semantic search engines and recommendation systems
  • Mathematical insights behind performance optimization
Key Use Cases:
  • Semantic search beyond keyword queries
  • Personalized recommendations and content retrieval
  • Multimodal search with text and images
  • RAG pipelines for AI applications
Start your journey into scalable vector search systems with hands-on examples and theoretical foundations that prepare you for advanced AI retrieval workflows.

"Sinopsis" puede pertenecer a otra edición de este libro.