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{ "item_title" : "Architecting Rag 2.0 for AI Agent", "item_author" : [" Nova Kellan "], "item_description" : "Retrieval-Augmented Generation (RAG) 2.0 is the cornerstone of modern AI agent architecture-enabling language models to access external knowledge, maintain long-term context, and perform real-world tasks with accuracy and trust. As LLMs evolve, the fusion of retrieval systems, memory, tool use, and agent orchestration defines the next generation of intelligent applications-across research, diagnostics, enterprise automation, and beyond.This guide is written by a leading expert in AI systems and data engineering, drawing from production-grade implementations, academic research, and enterprise deployment experience. It reflects 2025's most current technologies covering architectures adopted by OpenAI, Meta, Anthropic, Google DeepMind, and leading open-source innovators.Architecting RAG 2.0 for AI Agent is your complete, professional guide to designing scalable, modular, and intelligent RAG-based pipelines. You'll learn how to combine vector databases, hybrid retrievers, and LLMs into robust systems with memory, reasoning, and planning. Whether you're developing a chatbot, knowledge assistant, or autonomous agent, this book teaches you how to bridge language understanding with real-time knowledge and tool use.Modular RAG 2.0 system architecture (Retriever ↔ Augmenter ↔ LLM)Long-context handling with vector stores + context-aware modelsMetadata and provenance tracking for reliability and auditabilityRetriever tuning, embeddings, and hybrid indexing strategiesLLM integration: streaming, token management, and API orchestrationAdvanced agent workflows, tool use, and planning techniquesMultimodal RAG systems (text, image, audio, video)Deployment strategies, containerization, and performance monitoringA/B testing, evaluation frameworks, and error debuggingCase studies in legal, medical, research, and enterprise AI agentsThis book is ideal for AI engineers, data scientists, ML architects, and advanced developers who want to build retrieval-augmented AI agents. It's also suited for technical product managers, researchers, and enterprise teams deploying LLM-powered systems with RAG capabilities in production.Don't waste months experimenting through trial and error. This guide distills the most effective strategies, architectures, and patterns into actionable insights-saving you countless hours and giving you a competitive edge in deploying AI agent systems that work at scale. Whether you're augmenting GPT, Claude, or open-source LLMs with your own data, this book gives you the blueprint to build robust, high-performance RAG 2.0 systems today.Buy Architecting RAG 2.0 for AI Agent now and lead the future of intelligent automation.", "item_img_path" : "https://covers3.booksamillion.com/covers/bam/9/79/828/954/9798289548122_b.jpg", "price_data" : { "retail_price" : "18.00", "online_price" : "18.00", "our_price" : "18.00", "club_price" : "18.00", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : "" } }
Architecting Rag 2.0 for AI Agent|Nova Kellan

Architecting Rag 2.0 for AI Agent : Design smarter retrieved argumented system for LLM powered automation and agentic intelligence

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Overview

Retrieval-Augmented Generation (RAG) 2.0 is the cornerstone of modern AI agent architecture-enabling language models to access external knowledge, maintain long-term context, and perform real-world tasks with accuracy and trust. As LLMs evolve, the fusion of retrieval systems, memory, tool use, and agent orchestration defines the next generation of intelligent applications-across research, diagnostics, enterprise automation, and beyond.

This guide is written by a leading expert in AI systems and data engineering, drawing from production-grade implementations, academic research, and enterprise deployment experience. It reflects 2025's most current technologies covering architectures adopted by OpenAI, Meta, Anthropic, Google DeepMind, and leading open-source innovators.

Architecting RAG 2.0 for AI Agent is your complete, professional guide to designing scalable, modular, and intelligent RAG-based pipelines. You'll learn how to combine vector databases, hybrid retrievers, and LLMs into robust systems with memory, reasoning, and planning. Whether you're developing a chatbot, knowledge assistant, or autonomous agent, this book teaches you how to bridge language understanding with real-time knowledge and tool use.

  • Modular RAG 2.0 system architecture (Retriever ↔ Augmenter ↔ LLM)

  • Long-context handling with vector stores + context-aware models

  • Metadata and provenance tracking for reliability and auditability

  • Retriever tuning, embeddings, and hybrid indexing strategies

  • LLM integration: streaming, token management, and API orchestration

  • Advanced agent workflows, tool use, and planning techniques

  • Multimodal RAG systems (text, image, audio, video)

  • Deployment strategies, containerization, and performance monitoring

  • A/B testing, evaluation frameworks, and error debugging

  • Case studies in legal, medical, research, and enterprise AI agents

This book is ideal for AI engineers, data scientists, ML architects, and advanced developers who want to build retrieval-augmented AI agents. It's also suited for technical product managers, researchers, and enterprise teams deploying LLM-powered systems with RAG capabilities in production.

Don't waste months experimenting through trial and error. This guide distills the most effective strategies, architectures, and patterns into actionable insights-saving you countless hours and giving you a competitive edge in deploying AI agent systems that work at scale.

Whether you're augmenting GPT, Claude, or open-source LLMs with your own data, this book gives you the blueprint to build robust, high-performance RAG 2.0 systems today.
Buy Architecting RAG 2.0 for AI Agent now and lead the future of intelligent automation.

This item is Non-Returnable

Details

  • ISBN-13: 9798289548122
  • ISBN-10: 9798289548122
  • Publisher: Independently Published
  • Publish Date: June 2025
  • Dimensions: 10 x 7 x 0.46 inches
  • Shipping Weight: 0.86 pounds
  • Page Count: 220

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