click to view more

Applied Vector Databases: Theory to Real-World Implementation of Optimization, Indexing, and Infrast

by Rowe, Cal

$10.93

List Price: $13.49
Save: $2.56 (18%)
add to favourite
  • In Stock - Ship in 24 hours with Free Online tracking.
  • FREE DELIVERY by Friday, July 18, 2025
  • 24/24 Online
  • Yes High Speed
  • Yes Protection

Description

In Applied Vector Databases: From Theory to Real-World Implementation of Optimization, Indexing, and Infrastructure, Cal Rowe delivers a hands-on, end-to-end guide for building AI-driven systems powered by vector databases, without drowning you in complex math. If you can read code and follow clear explanations, you'll master every concept through practical examples and straightforward commentary no PhD required. This book is your blueprint for turning high-dimensional data into real-world solutions, from recommendation engines to fraud detection.
You'll start with the essentials: why traditional databases struggle with AI workloads, how embeddings capture semantic meaning, and how vector databases like Chroma, Pinecone, and Milvus enable lightning-fast similarity search. Instead of wading through equations, you'll get plain-English breakdowns backed by annotated Python code that makes concepts like cosine similarity, HNSW indexing, and hybrid search crystal clear. By the end of Part I, you'll know exactly how vector databases fit into modern AI pipelines.
Next, you'll dig into the nuts and bolts of implementation. Learn to set up and optimize vector databases for performance, whether you're using open-source tools like Weaviate or Pgvector or managed services like Pinecone. Step-by-step tutorials walk you through installation, indexing (flat, HNSW, IVF), and tuning for speed versus accuracy, complete with copy-paste code you can run today. You'll benchmark memory trade-offs, configure sharding for scalability, and integrate with frameworks like LangChain and TensorFlow, all without a single derivative or formal proof.
Part III takes you into production with real-world applications. Build end-to-end pipelines for e-commerce search (Chapter 10), where "cozy jacket" matches "warm coat" using Pinecone's semantic search. Explore genomic analysis with Deep Lake, detecting mutations in seconds, or implement real-time fraud detection with MongoDB's vector search. Each case study includes detailed code snippets think FastAPI for APIs, Kafka for streaming, and hybrid queries combining vectors and metadata so you can replicate the results. You'll also tackle security (Chapter 8), learning to encrypt embeddings, enforce GDPR-compliant access controls, and audit logs with practical policies, not abstract theory.
Part IV looks to the future, preparing you for 2030. Discover how multimodal embeddings (text, images, audio) are transforming search, how open-source databases like Chroma and Pgvector are reshaping cost models, and how GPU acceleration slashes latency (Chapter 11). Debate whether vector databases will merge with traditional systems like PostgreSQL, and learn to scale to billions of vectors with AWS or Kubernetes. The book wraps up with a practical prototype (Chapter 12), guiding you through building a recommendation system with Chroma and deploying it to AWS ECS, complete with Docker configurations and auto-scaling setups.
Throughout, Cal keeps the focus on code and clarity. You'll build a recommendation engine with Chroma and FastAPI, secure it with encryption, and optimize it with UMAP for 50% storage savings. You'll deploy a hybrid search system with Pgvector, combining SQL and vector queries for e-commerce. Every chapter includes runnable Python snippets, configuration files, and troubleshooting tips, ensuring you can apply concepts immediately. Privacy is covered too learn to protect PII in embeddings, implement role-based access, and use differential privacy without wading through cryptographic math.
By the end of Applied Vector Databases, you'll have a complete toolkit to design, optimize, and deploy vector database systems that power AI applications. Whether you're a backend developer, machine learning engineer, or solution architect, this book equips you to build scalable, secure, and practical solutions that deliver real-world impact no equations needed.

Last updated on

Product Details

  • Jul 11, 2025 Pub Date:
  • 9798292090205 ISBN-10:
  • 9798292090205 ISBN-13:
  • English Language