Kód: 53016880
Modern AI systems are only as powerful as their ability to retrieve the right information at the right time. As applications move beyond simple chatbots into semantic search engines, recommendation systems, RAG pipelines, and auto ... celý popis
Angličtina
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Anotace knihy
Modern AI systems are only as powerful as their ability to retrieve the right information at the right time. As applications move beyond simple chatbots into semantic search engines, recommendation systems, RAG pipelines, and autonomous AI agents, vector databases have become the core infrastructure behind intelligent retrieval.
Production Vector Databases is a practical, engineering-focused guide to building high-performance similarity search and retrieval systems that work at scale. This book goes far beyond theory. It breaks down how real production systems are designed, optimized, deployed, and maintained using tools like FAISS, Milvus, Pinecone, Weaviate, and modern orchestration frameworks.
Inside, you will learn how to design and implement vector-based architectures that power real AI applications, from embedding pipelines to distributed search systems and cloud-native deployments. Every concept is explained with production-level clarity and supported with practical code examples that reflect real engineering environments.
This book is written for engineers who want to move from understanding vector search to building systems that can handle real-world traffic, real data volumes, and real performance constraints.
It is especially useful for:
The book walks through the full lifecycle of a retrieval system. It starts from embeddings and similarity search fundamentals, then moves into indexing strategies, approximate nearest neighbor algorithms, and scalable vector storage architectures. From there, it progresses into production topics such as distributed search, replication, fault tolerance, caching, observability, security, and cost optimization.
You will also learn how to design complete AI retrieval platforms using modern infrastructure tools, including Docker, Kubernetes, and cloud services. The focus is not just on building systems that work, but systems that are stable, efficient, and ready for production deployment.
Unlike introductory materials, this book focuses on engineering decisions that matter in real systems: how to balance speed and accuracy, how to reduce infrastructure costs at scale, how to maintain recall under heavy optimization, and how to design architectures that remain flexible as models and workloads evolve.
By the end of this book, you will understand how large-scale vector retrieval systems are built and how to design your own production-ready AI infrastructure from scratch.
If you are serious about building scalable AI systems that go beyond prototypes and into real-world production, this book gives you the architectural thinking, implementation detail, and engineering depth required to get there.
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577 Kč
AngličtinaOsobní odběr Praha, Brno a 46870 dalších
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