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Generative AI with LangChain

Generative AI with LangChain - Second Edition

By : Ben Auffarth, Leonid Kuligin
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Generative AI with LangChain

Generative AI with LangChain

5 (1)
By: Ben Auffarth, Leonid Kuligin

Overview of this book

This second edition tackles the biggest challenge facing companies in AI today: moving from prototypes to production. Fully updated to reflect the latest developments in the LangChain ecosystem, it captures how modern AI systems are developed, deployed, and scaled in enterprise environments. This edition places a strong focus on multi-agent architectures, robust LangGraph workflows, and advanced retrieval-augmented generation (RAG) pipelines. You'll explore design patterns for building agentic systems, with practical implementations of multi-agent setups for complex tasks. The book guides you through reasoning techniques such as Tree-of -Thoughts, structured generation, and agent handoffs—complete with error handling examples. Expanded chapters on testing, evaluation, and deployment address the demands of modern LLM applications, showing you how to design secure, compliant AI systems with built-in safeguards and responsible development principles. This edition also expands RAG coverage with guidance on hybrid search, re-ranking, and fact-checking pipelines to enhance output accuracy. Whether you're extending existing workflows or architecting multi-agent systems from scratch, this book provides the technical depth and practical instruction needed to design LLM applications ready for success in production environments.
Table of Contents (14 chapters)
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11
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How to observe LLM apps

Effective observability for LLM applications requires a fundamental shift in monitoring approach compared to traditional ML systems. While Chapter 8 established evaluation frameworks for development and testing, production monitoring presents distinct challenges due to the unique characteristics of LLMs. Traditional systems monitor structured inputs and outputs against clear ground truth, but LLMs process natural language with contextual dependencies and multiple valid responses to the same prompt.

The non-deterministic nature of LLMs, especially when using sampling parameters like temperature, creates variability that traditional monitoring systems aren’t designed to handle. As these models become deeply integrated with critical business processes, their reliability directly impacts organizational operations, making comprehensive observability not just a technical requirement but a business imperative.

Operational metrics for LLM applications...

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