NFO
_.--.__.-'""'-.__.--.__.-'""'-.__.--.__.-'""'-.__.--.__.-'""'-._
-.-. .... .- .--. - . .-. - .-- . -. - -.-- --- -. .
________ ________ ________ ________ ________ ________ ________
/ / / / / / / /
/ / / / / / /_ _/ / / / /
/ __/ / / __// // __/ __/
\_______/_\___/____/\___/____/\______/___\______/_\_______/ \___/___/
/ / / / / / / / / /
/_ _/ / / / /_ _/ /
/ // / __/ // / \__ /
\______/_\________/\_______/_\__/_____/ \______/ \_____/
/ / / /
/ / / / / /
/ / / __/ -- C H A P T E R T W E N T Y O N E --
\________/\__/_____/\_______/
"'--'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'"
O'Reilly Media, Inc
Ofer Mendelevitch
Hands-On RAG For Production
N/A
2026
_.--.__.-'""'-.__.--.__.-'""'-.__.--.__.-'""'-.__.--.__.-'""'-._
Publisher > O'Reilly Media, Inc
Author > Ofer Mendelevitch
Title > Hands-On RAG For Production
Issue > N/A
Year > 2026
_.-"'-'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'"-._
ISBN > 9798341621718
Pages > 567
Genre > Retrieval-Augmented-Generation-RAG
Language > English
_.-"'-'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'"-._
Type > RETAIL
Media > Book
Format > .EPUB
Section > eBook
_.-"'-'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'"-._
Published > 2026-06
Release > 2026-05-30
Disks > 02*5.0MB
"'--'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'"
https://bookshop.org/p/books/hands-on-rag-for-production-design-develop-and-
deploy-production-ready-rag-applications-forrest-sheng-bao/435f76d7993c1bd0
Retrieval-augmented generation (RAG) is the go-to strategy for integrating large
language models with your organization's unique knowledge. However, the market
is full of RAG pipelines and components, making it hard to choose the right
solution for your enterprise's needs. This book simplifies the process, offering
a comprehensive road map to building, refining, and scaling production-grade RAG
applications. Authors Ofer Mendelevitch and Forrest Bao guide you through every
phase of development, from data ingestion, embeddings, and vector search to
advanced techniques like agentic RAG, multimodal RAG, and GraphRAG. Engineers
and architects will learn how to tackle the challenges they'll encounter when
building RAG applications at enterprise scale: ensuring high accuracy with
minimal hallucinations, maintaining low-latency performance, safeguarding data
privacy, and providing transparent, explainable responses among them. Determine
whether to build RAG yourself or deploy a RAG-as-a-service platform Build a
basic RAG stack that maximizes performance and cost-effectiveness Measure key
metrics such as hallucinations, response quality, latency, and cost Address
challenges in enterprise deployment, such as compliance with data security and
privacy requirements, explainability, and prompt design Implement advanced
techniques such as multimodal RAG, agentic RAG, and GraphRAG
_.--.__.-'""'-.__.--.__.-'""'-.__.--.__.-'""'-.__.--.__.-'""'-._
- --- - - -- [ C H A P T E R T W E N T Y O N E ] -- - - --- -
"'--'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'""'--'""'-.__.-'"
-.-. .... .- .--. - . .-. - .-- . -. - -.-- --- -. .
CRC32: cabf37932bb65025f6c59a196292b02731d2b54b