{
"item_title" : "Design and Build Scalable RAG Pipelines",
"item_author" : [" Ajit Singh "],
"item_description" : "Design and Build Scalable RAG Pipelines is a comprehensive, practical, and application-oriented guide for students and professionals aiming to master the art and science of creating Retrieval-Augmented Generation systems. This book moves beyond theoretical discussions to provide a step-by-step blueprint for building functional, efficient, and scalable RAG applications from the ground up. Philosophy The core philosophy of this book is Learning by Building. We believe that the most effective way to understand a complex system like a RAG pipeline is to construct it piece by piece. Abstract concepts are made concrete through implementation. This approach demystifies advanced AI by breaking it down into a series of manageable, logical, and code-driven steps. The emphasis is consistently on the how-how to select the right tools, how to write the code, how to connect the components, and how to deploy the final solution. The goal is to empower readers to transition from being passive consumers of AI technology to active creators and innovators. Key Features 1. Step-by-Step Implementation: Clear, numbered instructions guide you through every stage of building a RAG pipeline, from setting up the environment to deploying the final application. 2. Code-First Approach: Rich with Python code snippets and complete, executable programs using popular libraries like LangChain, LlamaIndex, Hugging Face Transformers, and FAISS. 3. Scalability and Production-Readiness: Special emphasis is placed on designing systems that are not just functional prototypes but are architected for scalability, efficiency, and real-world deployment. 4. Comprehensive Component Coverage: Detailed exploration of each part of the RAG ecosystem: data loading and chunking, embedding models, vector databases, retrieval algorithms, and integration with various LLMs. 5. Evaluation and Optimization: A dedicated chapter on how to measure the performance of your RAG system (using metrics like context relevance, answer faithfulness) and techniques to optimize it for speed and accuracy. 6. Hands-On Capstone Project: A complete, end-to-end DIY project in the final chapter that integrates all the concepts learned throughout the book into a single, impressive, portfolio-ready application. 7. Beginner to Advanced Path: The book starts with foundational concepts, making it accessible to beginners, but gradually introduces advanced techniques, optimization strategies, and architectural patterns to challenge and engage more experienced learners. Key Takeaways After completing this book, you will be able to: 1. Design the architecture for a scalable RAG pipeline tailored to specific requirements. 2. Implement each core component: data ingestion, chunking, embedding, indexing, and retrieval. 3. Integrate various vector databases and LLMs (both proprietary and open-source) into your pipeline. 4. Evaluate the performance of your RAG system using key industry-standard metrics. 5. Optimize your pipeline for speed, cost, and accuracy. 6. Deploy a RAG application using modern MLOps practices. 7. Build a complete, end-to-end portfolio-worthy RAG-based application from scratch. Disclaimer: Earnest request from the Author. Kindly go through the table of contents and refer kindle edition for a glance on the related contents. Thank you for your kind consideration ",
"item_img_path" : "https://covers4.booksamillion.com/covers/bam/9/79/825/783/9798257831003_b.jpg",
"price_data" : {
"retail_price" : "30.68", "online_price" : "30.68", "our_price" : "30.68", "club_price" : "30.68", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : ""
}
}
Overview
"Design and Build Scalable RAG Pipelines" is a comprehensive, practical, and application-oriented guide for students and professionals aiming to master the art and science of creating Retrieval-Augmented Generation systems. This book moves beyond theoretical discussions to provide a step-by-step blueprint for building functional, efficient, and scalable RAG applications from the ground up.
Philosophy The core philosophy of this book is "Learning by Building." We believe that the most effective way to understand a complex system like a RAG pipeline is to construct it piece by piece. Abstract concepts are made concrete through implementation. This approach demystifies advanced AI by breaking it down into a series of manageable, logical, and code-driven steps. The emphasis is consistently on the "how"-how to select the right tools, how to write the code, how to connect the components, and how to deploy the final solution. The goal is to empower readers to transition from being passive consumers of AI technology to active creators and innovators. Key Features 1. Step-by-Step Implementation: Clear, numbered instructions guide you through every stage of building a RAG pipeline, from setting up the environment to deploying the final application. 2. Code-First Approach: Rich with Python code snippets and complete, executable programs using popular libraries like LangChain, LlamaIndex, Hugging Face Transformers, and FAISS. 3. Scalability and Production-Readiness: Special emphasis is placed on designing systems that are not just functional prototypes but are architected for scalability, efficiency, and real-world deployment. 4. Comprehensive Component Coverage: Detailed exploration of each part of the RAG ecosystem: data loading and chunking, embedding models, vector databases, retrieval algorithms, and integration with various LLMs. 5. Evaluation and Optimization: A dedicated chapter on how to measure the performance of your RAG system (using metrics like context relevance, answer faithfulness) and techniques to optimize it for speed and accuracy. 6. Hands-On Capstone Project: A complete, end-to-end DIY project in the final chapter that integrates all the concepts learned throughout the book into a single, impressive, portfolio-ready application. 7. Beginner to Advanced Path: The book starts with foundational concepts, making it accessible to beginners, but gradually introduces advanced techniques, optimization strategies, and architectural patterns to challenge and engage more experienced learners. Key Takeaways After completing this book, you will be able to: 1. Design the architecture for a scalable RAG pipeline tailored to specific requirements. 2. Implement each core component: data ingestion, chunking, embedding, indexing, and retrieval. 3. Integrate various vector databases and LLMs (both proprietary and open-source) into your pipeline. 4. Evaluate the performance of your RAG system using key industry-standard metrics. 5. Optimize your pipeline for speed, cost, and accuracy. 6. Deploy a RAG application using modern MLOps practices. 7. Build a complete, end-to-end portfolio-worthy RAG-based application from scratch. Disclaimer: Earnest request from the Author. Kindly go through the table of contents and refer kindle edition for a glance on the related contents. Thank you for your kind considerationThis item is Non-Returnable
Customers Also Bought
Details
- ISBN-13: 9798257831003
- ISBN-10: 9798257831003
- Publisher: Independently Published
- Publish Date: April 2026
- Dimensions: 9 x 6 x 0.69 inches
- Shipping Weight: 0.98 pounds
- Page Count: 332
Related Categories
