Next-Gen Vector Databases: Hands-On Techniques for High-Dimensional Search, Multimodal Retrieval, and AI-Powered Applications. (Vector Database ... to Production-Ready AI Search Systems) - Softcover

Book 2 of 2: Vector Database Mastery: From Foundations to Production-Ready AI Search Systems

Zhou, Lian

 
9798277976357: Next-Gen Vector Databases: Hands-On Techniques for High-Dimensional Search, Multimodal Retrieval, and AI-Powered Applications. (Vector Database ... to Production-Ready AI Search Systems)

Synopsis

Next-Gen Vector Databases: Hands-On Techniques for High-Dimensional Search, Multimodal Retrieval, and AI-Powered Applications is your definitive guide to building the next generation of intelligent, scalable, and production-ready vector search systems. Designed for engineers, data scientists, and AI researchers, this book takes you beyond the fundamentals and dives deep into advanced vector database architectures, cutting-edge retrieval strategies, and real-world AI applications.
In this book, you’ll explore:

  • High-Dimensional Vector Spaces: Master the mathematical foundations of embeddings, distance metrics, and dimensionality reduction.
  • Adaptive and Distributed Indexing: Implement HNSW, IVF, PQ, and hybrid indices for real-time, large-scale search.
  • Multimodal Retrieval: Integrate text, images, audio, and video into unified vector spaces for AI-powered search.
  • Neural and Retrieval-Augmented Generation (RAG): Combine vector search with LLMs to build next-level chatbots, recommendation engines, and knowledge systems.
  • Edge and Federated Search: Deploy AI search pipelines across distributed environments with privacy-preserving embeddings.
  • Performance, Security, and Optimization: Scale, accelerate, and secure your vector database infrastructure for production workloads.
With 40+ hands-on Python examples, this book equips you to implement high-performance pipelines, optimize latency and memory, and handle real-world challenges in multimodal retrieval and RAG workflows. Whether you’re building semantic search engines, AI chatbots, recommendation systems, or cutting-edge generative AI applications, this book gives you the tools, techniques, and insights to succeed.
Why This Book?
  • Advanced, code-first guidance for modern vector search systems
  • Production-ready design patterns with security and compliance best practices
  • Deep dive into neural retrieval, adaptive indexing, and multimodal pipelines
  • Real-world use cases across search, recommendation, AI, and generative applications
Who Should Read This Book:
  • AI and ML engineers building large-scale search and recommendation systems
  • Data scientists integrating vector retrieval into analytics and pipelines
  • DevOps professionals deploying distributed, high-performance vector databases
  • Researchers exploring retrieval-augmented generation, multimodal search, and next-gen AI applications
Take your vector search skills to the next level and master next-generation AI retrieval systems with practical Python examples, mathematical rigor, and production-ready best practices.

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