000 04257nam a22002777a 4500
003 OSt
005 20260520122730.0
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020 _a9781835087060
020 _a183508706X
041 _aeng
082 _a006.3 RAI-B
100 _aRaieli, Salvatore
_979279
245 _aBuilding AI agents with LLMs, RAG, and knowledge graphs :
_bA practical guide to autonomous and modern AI agents
260 _aBirmingham, UK
_bPackt Publishing
_c2025
300 _axx, 544p,
500 _aMaster LLM fundamentals to advanced techniques like RAG, reinforcement learning, and knowledge graphs to build, deploy, and scale intelligent AI agents that reason, retrieve, and act autonomously Key Features: - Implement RAG and knowledge graphs for advanced problem-solving - Leverage innovative approaches like LangChain to create real-world intelligent systems - Integrate large language models, graph databases, and tool use for next-gen AI solutions
505 _aTable of Contents - Analyzing Text Data with Deep Learning - The Transformer: The Model Behind the Modern AI Revolution - Exploring LLMs as a Powerful AI Engine - Building a Web Scraping Agent with an LLM - Extending Your Agent with RAG to Prevent Hallucinations - Advanced RAG Techniques for Information Retrieval and Augmentation - Creating and Connecting a Knowledge Graph to an AI Agent - Reinforcement Learning and AI Agents - Creating Single- and Multi-Agent Systems - Building an AI Agent Application - The Future Ahead
520 _aThis AI agents book addresses the challenge of building AI that not only generates text but also grounds its responses in real data and takes action. Authored by AI specialists with deep expertise in drug discovery and systems optimization, this guide empowers you to leverage retrieval-augmented generation (RAG), knowledge graphs, and agent-based architectures to engineer truly intelligent behavior. By combining large language models (LLMs) with up-to-date information retrieval and structured knowledge, you'll create AI agents capable of deeper reasoning and more reliable problem-solving. Inside, you'll find a practical roadmap from concept to implementation. You'll discover how to connect language models with external data via RAG pipelines for increasing factual accuracy and incorporate knowledge graphs for context-rich reasoning. The chapters will help you build and orchestrate autonomous agents that combine planning, tool use, and knowledge retrieval to achieve complex goals. Concrete Python examples built on popular libraries, along with real-world case studies, reinforce each concept and show you how these techniques come together. By the end of this book, you'll be well-equipped to build intelligent AI agents that reason, retrieve, and interact dynamically, empowering you to deploy powerful AI solutions across industries. What You Will Learn: - Learn how LLMs work, their structure, uses, and limits, and design RAG pipelines to link them to external data - Build and query knowledge graphs for structured context and factual grounding - Develop AI agents that plan, reason, and use tools to complete tasks - Integrate LLMs with external APIs and databases to incorporate live data - Apply techniques to minimize hallucinations and ensure accurate outputs - Orchestrate multiple agents to solve complex, multi-step problems - Optimize prompts, memory, and context handling for long-running tasks - Deploy and monitor AI agents in production environments Who this book is for: If you are a data scientist or researcher who wants to learn how to create and deploy an AI agent to solve limitless tasks, this book is for you. To get the most out of this book, you should have basic knowledge of Python and Gen AI. This book is also excellent for experienced data scientists who want to explore state-of-the-art developments in LLM and LLM-based applications.
650 _aArtificial intelligence.
_979280
650 _aLarge language models (LLMs)
_979281
650 _aRetrieval
_xaugmented generation (RAG)
_979282
700 _aIuculano, Gabriele
_979283
942 _cBK
999 _c199990
_d199990