In an era where information retrieval is central to digital success, "Next-Gen Search with Vector Databases" offers a definitive exploration of the transformative shift from traditional keyword-based search to advanced vector search systems. This comprehensive guide begins by detailing the foundational evolution of search technology, explaining the shortcomings of classical keyword queries and introducing the paradigm of semantic search using dense vector representations. Readers are guided through the essential concepts of ...
Read More
In an era where information retrieval is central to digital success, "Next-Gen Search with Vector Databases" offers a definitive exploration of the transformative shift from traditional keyword-based search to advanced vector search systems. This comprehensive guide begins by detailing the foundational evolution of search technology, explaining the shortcomings of classical keyword queries and introducing the paradigm of semantic search using dense vector representations. Readers are guided through the essential concepts of embeddings, similarity metrics, and hybrid retrieval architectures, laying the groundwork for understanding how modern systems achieve contextual relevance and intelligent information discovery. The book delves deeply into the underlying architectures and operational intricacies of leading vector database platforms, such as FAISS, Milvus, Pinecone, and Weaviate. Through practical examinations of storage models, sharding, scalability, and query interfaces, it equips practitioners with the technical tools to build, optimize, and benchmark robust large-scale search infrastructures. Advanced chapters present proven methodologies for high-dimensional indexing, latency and throughput optimization, GPU acceleration, and cost-effective, cloud-native deployments. Real-world engineering challenges, including dynamic data pipelines, embedding drift, security, and privacy compliance, are addressed with actionable guidance and contemporary best practices. Rounding out its practical orientation, the book explores cutting-edge applications of vector search in domains ranging from enterprise semantic search to recommendation engines, conversational AI, and multi-modal retrieval systems. It imparts strategies for integrating vector search within existing infrastructures, monitoring system health, and continuously improving relevance and performance through experimentation and retraining. With a forward-looking perspective on advances in self-supervised embeddings, neural search-augmented LLMs, and privacy-preserving architectures, "Next-Gen Search with Vector Databases" is an indispensable resource for engineers, architects, and researchers seeking to harness the full potential of intelligent search in the age of artificial intelligence.
Read Less
Add this copy of Next-Gen Search with Vector Databases: Tools, to cart. £33.84, new condition, Sold by Ingram Customer Returns Center rated 5.0 out of 5 stars, ships from NV, USA, published 2025 by Independently Published.
Add this copy of Next-Gen Search With Vector Databases to cart. £35.43, new condition, Sold by Paperbackshop International rated 5.0 out of 5 stars, ships from Fairford, GLOS, UNITED KINGDOM, published 2025 by Independently Published.
Choose your shipping method in Checkout. Costs may vary based on destination.
Seller's Description:
PLEASE NOTE, WE DO NOT SHIP TO DENMARK. New Book. Shipped from UK in 4 to 14 days. Established seller since 2000. Please note we cannot offer an expedited shipping service from the UK.