Become a Readings Member to make your shopping experience even easier. Sign in or sign up for free!

Become a Readings Member. Sign in or sign up for free!

Hello Readings Member! Go to the member centre to view your orders, change your details, or view your lists, or sign out.

Hello Readings Member! Go to the member centre or sign out.

 
Paperback

A Simple Guide to Retrieval Augmented Generation

$117.99
Sign in or become a Readings Member to add this title to your wishlist.

Everything you need to know about Retrieval Augmented Generation in one human-friendly guide. Generative AI models struggle when you ask them about facts not covered in their training data. Retrieval Augmented Generation--or RAG--enhances an LLM's available data by adding context from an external knowledge base, so it can answer accurately about proprietary content, recent information, and even live conversations. RAG is powerful, and with A Simple Guide to Retrieval Augmented Generation, it's also easy to understand and implement!

In A Simple Guide to Retrieval Augmented Generation you'll learn:

  • The components of a RAG system
    • How to create a RAG knowledge base
    • The indexing and generation pipeline
    • Evaluating a RAG system
    • Advanced RAG strategies
    • RAG tools, technologies, and frameworks

A Simple Guide to Retrieval Augmented Generation shows you how to enhance an LLM with relevant data, increasing factual accuracy and reducing hallucination. Your customer service chatbots can quote your company's policies, your teaching tools can draw directly from your syllabus, and your work assistants can access your organization's minutes, notes, and files.

Purchase of the print book includes a free eBook in PDF and ePub formats from Manning Publications.

About the book

A Simple Guide to Retrieval Augmented Generation makes RAG simple and easy, even if you've never worked with LLMs before. This book goes deeper than any blog or YouTube tutorial, covering fundamental RAG concepts that are essential for building LLM-based applications. You'll be introduced to the idea of RAG and be guided from the basics on to advanced and modularized RAG approaches--plus hands-on code snippets leveraging LangChain, OpenAI, Transformers, and other Python libraries.

Chapter-by-chapter, you'll build a complete RAG enabled system and evaluate its effectiveness. You'll compare and combine accuracy-improving approaches for different components of RAG, and see what the future holds for RAG. You'll also get a sense of the different tools and technologies available to implement RAG. By the time you're done reading, you'll be ready to start building RAG enabled systems.

About the reader

For data scientists, machine learning and software engineers, and technology managers who wish to build LLM-based applications. Examples in Python--no experience with LLMs necessary.

About the author

Abhinav Kimothi is an entrepreneur and Vice President of Artificial Intelligence at Yarnit. He has spent over 15 years consulting and leadership roles in data science, machine learning and AI.

Read More
In Shop
Out of stock
Shipping & Delivery

$9.00 standard shipping within Australia
FREE standard shipping within Australia for orders over $100.00
Express & International shipping calculated at checkout

MORE INFO
Format
Paperback
Publisher
Manning Publications
Date
29 July 2025
Pages
175
ISBN
9781633435858

Everything you need to know about Retrieval Augmented Generation in one human-friendly guide. Generative AI models struggle when you ask them about facts not covered in their training data. Retrieval Augmented Generation--or RAG--enhances an LLM's available data by adding context from an external knowledge base, so it can answer accurately about proprietary content, recent information, and even live conversations. RAG is powerful, and with A Simple Guide to Retrieval Augmented Generation, it's also easy to understand and implement!

In A Simple Guide to Retrieval Augmented Generation you'll learn:

  • The components of a RAG system
    • How to create a RAG knowledge base
    • The indexing and generation pipeline
    • Evaluating a RAG system
    • Advanced RAG strategies
    • RAG tools, technologies, and frameworks

A Simple Guide to Retrieval Augmented Generation shows you how to enhance an LLM with relevant data, increasing factual accuracy and reducing hallucination. Your customer service chatbots can quote your company's policies, your teaching tools can draw directly from your syllabus, and your work assistants can access your organization's minutes, notes, and files.

Purchase of the print book includes a free eBook in PDF and ePub formats from Manning Publications.

About the book

A Simple Guide to Retrieval Augmented Generation makes RAG simple and easy, even if you've never worked with LLMs before. This book goes deeper than any blog or YouTube tutorial, covering fundamental RAG concepts that are essential for building LLM-based applications. You'll be introduced to the idea of RAG and be guided from the basics on to advanced and modularized RAG approaches--plus hands-on code snippets leveraging LangChain, OpenAI, Transformers, and other Python libraries.

Chapter-by-chapter, you'll build a complete RAG enabled system and evaluate its effectiveness. You'll compare and combine accuracy-improving approaches for different components of RAG, and see what the future holds for RAG. You'll also get a sense of the different tools and technologies available to implement RAG. By the time you're done reading, you'll be ready to start building RAG enabled systems.

About the reader

For data scientists, machine learning and software engineers, and technology managers who wish to build LLM-based applications. Examples in Python--no experience with LLMs necessary.

About the author

Abhinav Kimothi is an entrepreneur and Vice President of Artificial Intelligence at Yarnit. He has spent over 15 years consulting and leadership roles in data science, machine learning and AI.

Read More
Format
Paperback
Publisher
Manning Publications
Date
29 July 2025
Pages
175
ISBN
9781633435858