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You've seen what LLMs can do. You've also seen what they can't - answer questions about your company's internal documents, your proprietary data, or anything that happened after their training cutoff. The result: confident, fluent, completely wrong. If you've tried to fix this with a basic RAG prototype and found that retrieval quality was poor, answers were unfaithful, or latency was unacceptable, you already know the problem. Shallow tutorials got you started. They won't get you to production.
RAG in Action is the hands-on engineering guide that bridges that gap. Written for working Python developers, it moves beyond blog-post basics to show you exactly how to build reliable, production-grade Retrieval-Augmented Generation systems - with complete, runnable code at every step and honest guidance on tradeoffs.
Inside this book, you'll learn how to:
Along the way, you'll build:
This book is for Python developers who have worked (or dabbled) with LLMs before and are ready to build something real. Whether you're designing a document Q&A system from scratch, rescuing a struggling prototype, or evaluating tooling decisions as a technical lead, RAG in Action gives you the structured, current, complete resource the RAG space has been missing.
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