Agentic AI Systems: A Practical Guide to LLMs, LangChain, LangGraph, and Autonomous Intelligence
暫譯: 代理式人工智慧系統:大型語言模型、LangChain、LangGraph 與自主智能的實用指南
Andrews, Rufus J.
- 出版商: Independently Published
- 出版日期: 2025-09-10
- 售價: $1,160
- 貴賓價: 9.5 折 $1,102
- 語言: 英文
- 頁數: 288
- 裝訂: Quality Paper - also called trade paper
- ISBN: 9798264698286
- ISBN-13: 9798264698286
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相關分類:
LangChain
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Book Description
Agentic AI Systems: A Practical Guide to LLMs, LangChain, LangGraph, and Autonomous Intelligence is a comprehensive resource for mastering the rapidly evolving world of artificial intelligence, specifically focusing on Large Language Models (LLMs), LangChain, LangGraph, and autonomous AI systems. This book dives deep into the architecture, development, and deployment of agentic AI intelligent systems capable of autonomous decision-making, reasoning, and task execution. Authored by Rufus J. Andrews, this guide combines theoretical insights with practical, hands-on tutorials to empower readers to build cutting-edge AI applications. What's in the Book?
This book provides a step-by-step exploration of agentic AI systems, covering the foundational principles of LLMs, the modular capabilities of LangChain for chaining language models with external tools, and the graph-based workflows of LangGraph for orchestrating complex AI processes. Readers will learn to design, train, and deploy autonomous AI agents that can perform tasks such as natural language processing (NLP), automated reasoning, data analysis, and real-time decision-making. The book includes real-world case studies, code examples, and best practices for integrating AI frameworks, optimizing performance, and ensuring ethical AI development. Who Is This Book For?
This book is designed for AI developers, data scientists, machine learning engineers, software developers, and technology enthusiasts who want to harness the power of agentic AI. It is ideal for intermediate to advanced practitioners with a basic understanding of Python programming and machine learning concepts, as well as business leaders and product managers seeking to leverage AI solutions for innovation. Whether you're building AI-powered applications, automating workflows, or exploring autonomous intelligence, this guide offers actionable insights. What Will Readers Learn?
Agentic AI Systems: A Practical Guide to LLMs, LangChain, LangGraph, and Autonomous Intelligence is a comprehensive resource for mastering the rapidly evolving world of artificial intelligence, specifically focusing on Large Language Models (LLMs), LangChain, LangGraph, and autonomous AI systems. This book dives deep into the architecture, development, and deployment of agentic AI intelligent systems capable of autonomous decision-making, reasoning, and task execution. Authored by Rufus J. Andrews, this guide combines theoretical insights with practical, hands-on tutorials to empower readers to build cutting-edge AI applications. What's in the Book?
This book provides a step-by-step exploration of agentic AI systems, covering the foundational principles of LLMs, the modular capabilities of LangChain for chaining language models with external tools, and the graph-based workflows of LangGraph for orchestrating complex AI processes. Readers will learn to design, train, and deploy autonomous AI agents that can perform tasks such as natural language processing (NLP), automated reasoning, data analysis, and real-time decision-making. The book includes real-world case studies, code examples, and best practices for integrating AI frameworks, optimizing performance, and ensuring ethical AI development. Who Is This Book For?
This book is designed for AI developers, data scientists, machine learning engineers, software developers, and technology enthusiasts who want to harness the power of agentic AI. It is ideal for intermediate to advanced practitioners with a basic understanding of Python programming and machine learning concepts, as well as business leaders and product managers seeking to leverage AI solutions for innovation. Whether you're building AI-powered applications, automating workflows, or exploring autonomous intelligence, this guide offers actionable insights. What Will Readers Learn?
- Fundamentals of LLMs: Understand the architecture, training, and fine-tuning of Large Language Models.
- LangChain Mastery: Learn to build modular AI pipelines using LangChain for tasks like text generation, retrieval-augmented generation (RAG), and tool integration.
- LangGraph Workflows: Design and implement graph-based AI workflows for complex, multi-step processes.
- Autonomous AI Systems: Develop agentic AI agents capable of reasoning, planning, and executing tasks independently.
- Practical Applications: Apply AI frameworks to real-world use cases such as chatbots, virtual assistants, and automated decision systems.
- Ethical AI Practices: Navigate challenges like bias mitigation, transparency, and responsible AI deployment.
- Optimization Techniques: Enhance AI performance through fine-tuning, prompt engineering, and resource management.