Artificial intelligence applications increasingly rely on semantic search, recommendation systems, retrieval-augmented generation (RAG), and similarity matching. At the center of these systems lies a new category of infrastructure: vector databases. Vector Database Development provides a structured, engineering-focused guide to designing and implementing embedding-driven data systems for modern AI applications. This book moves beyond surface-level introductions and explores how vector indexing, similarity search algorithms, and distributed storage architectures operate in production environments. Inside this book, you will learn: The mathematical and architectural foundations of vector embeddingsIndexing strategies such as HNSW, IVF, and approximate nearest neighbor searchStorage design and memory optimization techniquesIntegrating vector databases with AI pipelines and LLM workflowsDesigning retrieval-augmented generation systemsPerformance benchmarking and tuning methodsDeployment strategies for scalable infrastructureThe book provides practical implementation patterns using real-world design principles. It also discusses system trade-offs, data modeling decisions, and security considerations relevant to enterprise deployments. This guide is suitable for backend engineers, machine learning engineers, AI developers, and architects who want to understand how vector databases function internally and how to build reliable, scalable solutions around them. Rather than offering quick tutorials, this book presents a long-term engineering perspective on embedding-based data systems.
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