Agentic AI is transforming how intelligent systems operate-moving beyond static responses to dynamic, tool-using, goal-driven behavior. At the heart of this evolution is Retrieval-Augmented Generation 2.0 (RAG 2.0), a new architectural pattern that fuses long-term memory, contextual reasoning, multi-agent coordination, and modular tool use for building advanced AI systems that act, learn, and adapt over time. This book delivers a practical blueprint for applying RAG 2.0 to real-world agentic workflows across enterprise, healthcare, education, and automation sectors.
Written by a seasoned AI practitioner and technical author specializing in LLM architectures, this guide is grounded in the latest research, including SafeRAG best practices, LangChain, LlamaIndex, Pinecone integration patterns, DSPy, GraphRAG, and AGI-aware agent design. Every chapter reflects current industry trends, community-driven implementations, and field-tested methodologies that have emerged from the leading AI labs and open-source communities.
"Building Agentic AI System with RAG 2.0" is your complete roadmap to designing, implementing, and deploying powerful, scalable, and intelligent agents using the next generation of Retrieval-Augmented Generation techniques. Covering everything from system pipelines and memory management to prompt chaining, multi-agent orchestration, hallucination control, and ethical deployment, this book equips developers, architects, and AI enthusiasts with actionable insights and full-stack expertise. Whether you are building AI copilots, enterprise search assistants, autonomous agents, or educational tutors, this guide will accelerate your journey from experimentation to production readiness.
Explore cutting-edge topics including vector databases and hybrid retrieval strategies, adaptive memory structuring, multi-modal extensions (GraphRAG & VideoRAG), safe deployment architectures, long-term personalization techniques, and cost-effective optimization. Detailed case studies demonstrate agentic AI in action across finance, clinical decision support, education, and more. Practical node-based examples using LangChain, LlamaIndex, and DSPy are provided throughout-designed to ensure hands-on application.
This book is written for AI developers, data scientists, software engineers, ML ops practitioners, and anyone building advanced AI systems with LLMs. Whether you're transitioning from basic LLM use to advanced agent orchestration, or leading technical teams in deploying autonomous reasoning frameworks, you'll find clear guidance, practical architecture blueprints, and real-world use cases to elevate your skills.
Stop building fragile prototypes and start engineering future-proof, scalable AI systems. The RAG 2.0 framework enables long-term performance, lower hallucination risk, and flexible integration across tools and memory-so your applications remain relevant, reliable, and continually evolving with new data and user feedback. This book is built for today's LLM stack and tomorrow's intelligent agents.
Unlock the full potential of AI agents today.
Buy "Building Agentic AI System with RAG 2.0" now and take the next step toward mastering Retrieval-Augmented Generation, declarative agent design, and production-grade agentic architecture.
Start building intelligent, scalable systems that reason, remember, and act-on your terms.