Mastering Retrieval-Augmented Generation: Building next-gen GenAI apps with LangChain, LlamaIndex, and LLMs (English Edition)

Mastering Retrieval-Augmented Generation:Building next-gen GenAI apps with LangChain, LlamaIndex, and LLMs (English Edition)

Mastering Retrieval-Augmented Generation:Building next-gen GenAI apps with LangChain, LlamaIndex, and LLMs (English Edition)

by: Prashanth Josyula (Author), Karanbir Singh (Author)

Publication Date: 2025-03-21

Language: English

Print Length: 394 pages

ISBN-10: 9365897246

ISBN-13: 9789365897241

Book Description

DescriptionLarge language models (LLMs) like GPT, BERT, and T5 are revolutionizing how we interact with technology — powering virtual assistants, content generation, and data analysis. As their influence grows, understanding their architecture, capabilities, and ethical considerations is more important than ever. This book breaks down the essentials of LLMs and explores retrieval-augmented generation (RAG), a powerful approach that combines retrieval systems with generative AI for smarter, faster, and more reliable results.It provides a step-by-step approach to building advanced intelligent systems that utilize an innovative technique known as the RAG thus making them factually correct, context-aware, and sustainable. You will start with foundational knowledge — understanding architectures, training processes, and ethical considerations — before diving into the mechanics of RAG, learning how retrievers and generators collaborate to improve performance. The book introduces essential frameworks like LangChain and LlamaIndex, walking you through practical implementations, troubleshooting, and optimization techniques. It explores advanced optimization techniques, and offers hands-on coding exercises to ensure practical understanding. Real-world case studies and industry applications help bridge the gap between theory and implementation.By the final chapter, you will have the skills to design, build, and optimize RAG-powered applications — integrating LLMs with retrieval systems, creating custom pipelines, and scaling for performance. Whether you are an experienced AI professional or an aspiring developer, this book equips you with the knowledge and tools to stay ahead in the ever-evolving world of AI.What you will learn● Understand the fundamentals of LLMs.● Explore RAG and its key components.● Build GenAI applications using LangChain and LlamaIndex frameworks.● Optimize retrieval strategies for accurate and grounded AI responses.● Deploy scalable, production-ready RAG pipelines with best practices.● Troubleshoot and fine-tune RAG pipelines for optimal performance.Who this book is forThis book is for AI practitioners, data scientists, students, and developers looking to implement RAG using LangChain and LlamaIndex. Readers having basic knowledge of Python, ML concepts, and NLP fundamentals would be able to leverage the knowledge gained to accelerate their careers.Table of Contents1. Introduction to Large Language Models2. Introduction to Retrieval-augmented Generation3. Getting Started with LangChain4. Fundamentals of Retrieval-augmented Generation5. Integrating RAG with LangChain6. Comprehensive Guide to LangChain7. Introduction to LlamaIndex8. Building and Optimizing RAG Pipelines with LlamaIndex9. Advanced Techniques with LlamaIndex10. Deploying RAG Models in Production11. Future Trends and Innovations in RAG

Editorial Reviews

DescriptionLarge language models (LLMs) like GPT, BERT, and T5 are revolutionizing how we interact with technology — powering virtual assistants, content generation, and data analysis. As their influence grows, understanding their architecture, capabilities, and ethical considerations is more important than ever. This book breaks down the essentials of LLMs and explores retrieval-augmented generation (RAG), a powerful approach that combines retrieval systems with generative AI for smarter, faster, and more reliable results.It provides a step-by-step approach to building advanced intelligent systems that utilize an innovative technique known as the RAG thus making them factually correct, context-aware, and sustainable. You will start with foundational knowledge — understanding architectures, training processes, and ethical considerations — before diving into the mechanics of RAG, learning how retrievers and generators collaborate to improve performance. The book introduces essential frameworks like LangChain and LlamaIndex, walking you through practical implementations, troubleshooting, and optimization techniques. It explores advanced optimization techniques, and offers hands-on coding exercises to ensure practical understanding. Real-world case studies and industry applications help bridge the gap between theory and implementation.By the final chapter, you will have the skills to design, build, and optimize RAG-powered applications — integrating LLMs with retrieval systems, creating custom pipelines, and scaling for performance. Whether you are an experienced AI professional or an aspiring developer, this book equips you with the knowledge and tools to stay ahead in the ever-evolving world of AI.What you will learn● Understand the fundamentals of LLMs.● Explore RAG and its key components.● Build GenAI applications using LangChain and LlamaIndex frameworks.● Optimize retrieval strategies for accurate and grounded AI responses.● Deploy scalable, production-ready RAG pipelines with best practices.● Troubleshoot and fine-tune RAG pipelines for optimal performance.Who this book is forThis book is for AI practitioners, data scientists, students, and developers looking to implement RAG using LangChain and LlamaIndex. Readers having basic knowledge of Python, ML concepts, and NLP fundamentals would be able to leverage the knowledge gained to accelerate their careers.Table of Contents1. Introduction to Large Language Models2. Introduction to Retrieval-augmented Generation3. Getting Started with LangChain4. Fundamentals of Retrieval-augmented Generation5. Integrating RAG with LangChain6. Comprehensive Guide to LangChain7. Introduction to LlamaIndex8. Building and Optimizing RAG Pipelines with LlamaIndex9. Advanced Techniques with LlamaIndex10. Deploying RAG Models in Production11. Future Trends and Innovations in RAG

Amazon Page

代发服务PDF电子书10立即求助
1111
打赏
未经允许不得转载:Wow! eBook » Mastering Retrieval-Augmented Generation: Building next-gen GenAI apps with LangChain, LlamaIndex, and LLMs (English Edition)

觉得文章有用就打赏一下文章作者

支付宝扫一扫

微信扫一扫