Skip to content

Booksellers & Trade Customers: Sign up for online bulk buying at trade.atlanticbooks.com for wholesale discounts

Booksellers: Create Account on our B2B Portal for wholesale discounts

Retrieval Augmented Generation: Build Reliable Retrieval-Augmented Generation Systems for LLMs and Generative AI

by Husn Ara
Save 10% Save 10%
Current price ₹2,114.00
Original price ₹2,339.00
Original price ₹2,339.00
Original price ₹2,339.00
(-10%)
₹2,114.00
Current price ₹2,114.00

Imported Edition - Ships in 18-21 Days

Free Shipping in India on orders above Rs. 500

Request Bulk Quantity Quote
+91
Book cover type: Paperback
  • ISBN13: 9798246815908
  • Binding: Paperback
  • Subject: N/A
  • Publisher: Independently Published
  • Publisher Imprint: Independently Published
  • Publication Date:
  • Pages: 340
  • Original Price: GBP 18.49
  • Language: English
  • Edition: N/A
  • Item Weight: 454 grams
  • BISAC Subject(s): Artificial Intelligence / Natural Language Processing

Retrieval-Augmented Generation: Build Reliable Retrieval-Augmented Generation Systems for LLMs and Generative AI
Unlock the full potential of Retrieval-Augmented Generation (RAG) with this authoritative, hands-on guide for engineers, AI professionals, and data scientists. Retrieval-Augmented Generation bridges the gap between large language models (LLMs) and enterprise knowledge systems, teaching you how to design, implement, and optimize robust, production-ready RAG pipelines.
Inside this book, you'll master:

  • RAG Fundamentals: Understand why standalone LLMs are limited, how RAG enhances reasoning, and the evolution from IR + NLP to modern retrieval-augmented systems.
  • RAG System Architecture: Explore minimal and high-level pipelines, online/offline components, and data/control flow engineering.
  • Embeddings & Vector Databases: Learn dense vs sparse embeddings, embedding drift, ANN algorithms, hybrid search, and large-scale vector indexing.
  • Retrieval Quality Engineering: Implement similarity metrics, top-K selection, reranking with cross-encoders, and handle retrieval failures.
  • Document Ingestion Pipelines: Design batch, streaming, and hybrid ingestion; handle PDFs, tables, HTML; and implement chunking strategies with overlap and context awareness.
  • Data Quality & Versioning: Apply cleaning, normalization, deduplication, versioning, rollbacks, and audit strategies for enterprise-grade reliability.
  • Query Processing & Intelligence: Master query classification, rewriting, multi-query retrieval, and self-querying RAG systems.
  • Advanced Retrieval Techniques: Build hybrid search, temporal/context-aware retrieval, and multi-hop systems for real-world applications.
This book is packed with Python code examples, architecture diagrams, and practical guidance, so you can implement systems confidently while avoiding common production pitfalls.
Case Studies Included
  • Large-Scale Vector Search - industrial vector database deployment and performance optimization.
  • Enterprise Document Ingestion - handling multi-format documents at scale.
  • Search-Driven RAG at Scale - hybrid search and multi-hop retrieval in production.
  • RAG Retrieval Failures - diagnosis and mitigation of low recall/high hallucination scenarios.
  • Knowledge Base Versioning - version control and rollback in live systems.
Whether you're building enterprise search, AI assistants, or knowledge-grounded LLM applications, RAG in Practice provides the step-by-step blueprint to engineer high-performance, reliable, and scalable knowledge-augmented AI systems.

Trusted for over 49 years

Family Owned Company

Secure Payment

All Major Credit Cards/Debit Cards/UPI & More Accepted

New & Authentic Products

India's Largest Distributor

Need Support?

Whatsapp Us