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OverviewWhat if your AI could think, reason, and retrieve knowledge as intelligently as it generates it? In a world where data is infinite but intelligence is fleeting, Architecting RAG Systems reveals how to design AI that truly understands context, retrieves truth, and generates answers you can trust. Written for builders, engineers, and innovators, this definitive guide unlocks the principles and blueprints behind Retrieval-Augmented Generation (RAG) - the architecture that transforms large language models into powerful, grounded systems of intelligence. This is not another surface-level AI book. It's a step-by-step manual for constructing scalable, high-performance RAG pipelines - from data engineering and embedding optimization to retrieval orchestration, re-ranking, and real-time reasoning. You'll learn how to bridge retrieval and generation, reduce hallucinations, fine-tune responses for faithfulness, and deploy production-grade RAG systems that serve enterprises, research labs, and intelligent assistants alike. Through clear frameworks, real-world examples, and field-tested architectures, Boyce Gowans takes you beyond the hype into the engineering mindset of modern AI systems. You'll gain practical mastery over the full lifecycle - designing, scaling, monitoring, and optimizing AI systems that learn continuously and evolve intelligently. Inside, You'll Discover How To: Engineer the complete data-to-answer RAG pipeline, from preprocessing to retrieval and generation Build and optimize hybrid retrievers using vector search, BM25, and cross-encoders Implement context compression, prompt control, and self-verifying generation Master model optimization techniques - quantization, distillation, and caching Deploy cloud-native, containerized RAG systems across AWS, GCP, or Azure Monitor index health, latency, and data drift with real-world MLOps practices Explore next-gen architectures - from Agentic RAG to multimodal and self-evolving systems Why This Book Stands ApartWhile others talk about ""how RAG works,"" Architecting RAG Systems shows you how to build it - at scale, in production, and with precision. This is the first book that treats RAG not as a model feature, but as a complete AI system architecture - uniting retrieval, reasoning, generation, and feedback into one continuous intelligence loop. You'll walk away not just understanding RAG, but being able to architect it, debug it, and optimize it like a systems engineer. Who This Book Is For AI Engineers & Data Scientists seeking to design robust, high-performing RAG architectures Technical Leaders & ML Architects building enterprise-grade knowledge assistants Researchers & Innovators exploring the next frontier of grounded AI systems Developers who want to operationalize LLMs with precision, context, and control A Call to the Builders of TomorrowAI is shifting - from model-centric to system-centric thinking. Those who master Retrieval-Augmented Generation will define the next era of intelligent systems. If you're ready to move beyond prompts and start building AI that thinks with purpose, this is your blueprint. Pick up your copy of Architecting RAG Systems today - and start shaping the future of grounded intelligence. Full Product DetailsAuthor: Boyce GowansPublisher: Independently Published Imprint: Independently Published Dimensions: Width: 17.80cm , Height: 1.50cm , Length: 25.40cm Weight: 0.485kg ISBN: 9798272101631Pages: 278 Publication Date: 29 October 2025 Audience: General/trade , General Format: Paperback Publisher's Status: Active Availability: Available To Order We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately. Table of ContentsReviewsAuthor InformationTab Content 6Author Website:Countries AvailableAll regions |
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