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Ranajoy Bose
Mastering Retrieval-Augmented Generation - Advanced Techniques and Production-Ready Solutions for Enterprise AI
Inglese · Tascabile
Pubblicazione il 19.01.2026
Descrizione
Retrieval-Augmented Generation (RAG) represents the cutting edge of AI innovation, bridging the gap between large language models (LLMs) and real-world knowledge. This book provides the definitive roadmap for building, optimizing, and deploying enterprise-grade RAG systems that deliver measurable business value.
This comprehensive guide takes you beyond basic concepts to advanced implementation strategies, covering everything from architectural patterns to production deployment. You'll explore proven techniques for document processing, vector optimization, retrieval enhancement, and system scaling, supported by real-world case studies from leading organizations.
Key Learning Objectives
- Design and implement production-ready RAG architectures for diverse enterprise use cases
- Master advanced retrieval strategies including graph-based approaches and agentic systems
- Optimize performance through sophisticated chunking, embedding, and vector database techniques
- Navigate the integration of RAG with modern LLMs and generative AI frameworks
- Implement robust evaluation frameworks and quality assurance processes
- Deploy scalable solutions with proper security, privacy, and governance controls
- Intelligent document analysis and knowledge extraction
Sommario
Part I: Foundations.- Chapter 1: Introduction to Retrieval-Augmented Generation (RAG).- Chapter 2: Core Concepts of Retrieval-Augmented Generation (RAG).- Chapter 3: Building a Retrieval-Augmented Generation (RAG) Application.- Part II: Core Components.- Chapter 4: Document Loaders: The Gateway to Knowledge.- Chapter 5: Text Splitters in RAG Systems.- Chapter 6: Embedding Models: Converting Text to Vectors.- Chapter 7: Vector Stores: Organizing and Retrieving Your Knwledge.- Chapter 8: Retrievers: Finding the Most Relevant Information.- Part III: Advanced Implementation.- Chapter 9: Prompt Templates: The Communication Experts that Structure Interactions with the LLM.- Chapter 10: RAG in Action: Advanced Patterns for Unstructured Data.- Chapter 11: RAG for Structured Data: Building Question-Answering Systems for SQL Databases and CSV Files.- Chapter 12: Graph RAG: Leveraging Knowledge Graphs for Enhanced Retrieval.- Chapter 13: Agentic RAG: Building Autonomous Information Systems.- Part IV: Production and Evaluation.- Chapter 14: RAG Evaluation: Measuring Quality and Performance.
Info autore
Ranajoy Bose is a technologist, entrepreneur, and thought leader in the fields of Generative AI, MLOps, and enterprise data systems. As Co-founder and Global Head of Engineering at Morfius, he is at the helm of building cutting-edge AI solutions that power real-world transformation through Retrieval-Augmented Generation (RAG) and large-scale language models.
Before Morfius, Ranajoy held leadership roles at Oracle, where he led the Cloud Engineering organization for North America. His work was instrumental in advancing the adoption of data lakehouse architectures, modern analytics, AI/ML platforms, and cloud-native services for Fortune 500 clients.
Recognized as a 40-under-40 Data Scientist, Ranajoy also led a team ranked among Analytics India Magazine’s Top 10 data science workplaces. Beyond his corporate leadership, he remains a committed advocate for innovation and learning—frequently speaking at global conferences, contributing to academic and industry forums, and mentoring the next generation of AI practitioners.
Driven by curiosity and purpose, Ranajoy continues to push the boundaries of enterprise AI, translating complex technology into impactful solutions for the modern world.
Riassunto
Retrieval-Augmented Generation (RAG) represents the cutting edge of AI innovation, bridging the gap between large language models (LLMs) and real-world knowledge. This book provides the definitive roadmap for building, optimizing, and deploying enterprise-grade RAG systems that deliver measurable business value.
This comprehensive guide takes you beyond basic concepts to advanced implementation strategies, covering everything from architectural patterns to production deployment. You'll explore proven techniques for document processing, vector optimization, retrieval enhancement, and system scaling, supported by real-world case studies from leading organizations.
Key Learning Objectives
- Design and implement production-ready RAG architectures for diverse enterprise use cases
- Master advanced retrieval strategies including graph-based approaches and agentic systems
- Optimize performance through sophisticated chunking, embedding, and vector database techniques
- Navigate the integration of RAG with modern LLMs and generative AI frameworks
- Implement robust evaluation frameworks and quality assurance processes
- Deploy scalable solutions with proper security, privacy, and governance controls
- Intelligent document analysis and knowledge extraction
- Code generation and technical documentation systems
- Customer support automation and decision support tools
- Regulatory compliance and risk management solutions
What You Will Learn
- Architecture Mastery: Design scalable RAG systems from prototype to enterprise production
- Advanced Retrieval: Implement sophisticated strategies, including graph-based and multi-modal approaches
- Performance Optimization: Fine-tune embedding models, vector databases, and retrieval algorithms for maximum efficiency
- LLM Integration: Seamlessly combine RAG with state-of-the-art language models and generative AI frameworks
- Production Excellence: Deploy robust systems with monitoring, evaluation, and continuous improvement processes
- Industry Applications: Apply RAG solutions across diverse enterprise sectors and use cases
Who This Book Is For
Primary audience: Senior AI/ML engineers, data scientists, and technical architects building production AI systems; secondary audience: Engineering managers, technical leads, and AI researchers working with large-scale language models and information retrieval systems
Prerequisites: Intermediate Python programming, basic understanding of machine learning concepts, and familiarity with natural language processing fundamentals
Dettagli sul prodotto
| Autori | Ranajoy Bose |
| Editore | Springer, Berlin |
| Lingue | Inglese |
| Formato | Tascabile |
| Pubblicazione | 19.01.2026 |
| EAN | 9798868818073 |
| ISBN | 9798868818073 |
| Pagine | 414 |
| Illustrazioni | VII, 414 p. 17 illus., 1 illus. in color. |
| Categorie |
Scienze naturali, medicina, informatica, tecnica
> Informatica, EDP
> Informatica
machine learning, Maschinelles Lernen, Artificial Intelligence, Natural Language Processing, Large Language Models, Generative AI, Retrieval-Augmented Generation, Dynamic contextual retrieval |
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