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Generative AI with LangChain

You're reading from   Generative AI with LangChain Build production-ready LLM applications and advanced agents using Python, LangChain, and LangGraph

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Product type Paperback
Published in May 2025
Publisher Packt
ISBN-13 9781837022014
Length 476 pages
Edition 2nd Edition
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Table of Contents (14) Chapters Close

Preface 1. The Rise of Generative AI: From Language Models to Agents 2. First Steps with LangChain FREE CHAPTER 3. Building Workflows with LangGraph 4. Building Intelligent RAG Systems 5. Building Intelligent Agents 6. Advanced Applications and Multi-Agent Systems 7. Software Development and Data Analysis Agents 8. Evaluation and Testing 9. Production-Ready LLM Deployment and Observability 10. The Future of Generative Models: Beyond Scaling 11. Other Books You May Enjoy 12. Index Appendix

Building Intelligent Agents

As generative AI adoption grows, we start using LLMs for more open and complex tasks that require knowledge about fresh events or interaction with the world. This is what is generally called agentic applications. We’ll define what an agent is later in this chapter, but you’ve likely seen the phrase circulating in the media: 2025 is the year of agentic AI. For example, in a recently introduced RE-Bench benchmark that consists of complex open-ended tasks, AI agents outperform humans in some settings (for example, with a thinking budget of 30 minutes) or on some specific class of tasks (like writing Triton kernels).

To understand how these agentic capabilities are built in practice, we’ll start by discussing tool calling with LLMs and how it is implemented on LangChain. We’ll look in detail at the ReACT pattern, and how LLMs can use tools to interact with the external environment and improve their performance on specific tasks...

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