| Management number | 219221486 | Release Date | 2026/05/03 | List Price | $90.00 | Model Number | 219221486 | ||
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Artificial intelligence is rapidly evolving from simple prompt-based tools into autonomous systems capable of reasoning, collaboration, and complex decision-making. However, most LLM applications remain limited by stateless interactions and rigid pipelines that cannot support real-world workflows. LangGraph for Stateful AI Workflows: Building Autonomous Agents and Multi-Agent Systems with LangChain is a comprehensive, developer-focused guide that teaches you how to design, build, and deploy stateful AI systems capable of long-running reasoning, dynamic decision-making, and multi-agent collaboration.Built on the powerful combination of LangGraph and LangChain, this book provides a step-by-step roadmap for transforming traditional LLM applications into scalable, production-grade AI architectures. Instead of relying on fragile prompt chains, you will learn how to architect graph-based AI workflows where nodes represent intelligent tasks, edges control execution logic, and shared state enables memory across the entire system. This approach allows AI agents to plan, iterate, collaborate, and adapt dynamically while maintaining context throughout complex processes. Through practical explanations and real-world examples, the book demonstrates how modern AI systems can move beyond static chatbots and become autonomous, stateful applications capable of solving multi-step problems. You will explore how graph-based orchestration enables workflows that branch, loop, and coordinate multiple agents while preserving context and intermediate results. Whether you are developing AI automation tools, enterprise decision systems, or intelligent research assistants, this book provides the architectural knowledge needed to design robust and maintainable AI systems. What You Will LearnHow to design stateful AI workflows using graph-based execution modelsHow to build autonomous agents capable of reasoning, planning, and tool usageHow to implement multi-agent collaboration systems using supervisor and worker architecturesHow to integrate external tools, APIs, and knowledge sources into agent workflowsHow to implement human-in-the-loop control mechanisms for safe AI deploymentHow to debug, monitor, and test complex AI workflows using observability practicesHow to deploy production-ready AI systems using FastAPI, Docker, and scalable infrastructure The book also covers advanced topics including:StateGraph architecture and workflow orchestrationAgent reasoning patterns such as Plan-and-Execute and ReflexionShared state design and persistent memoryMulti-agent communication protocolsPerformance optimization and reliability strategiesSecurity considerations including prompt injection defenseEach chapter combines conceptual foundations with practical implementation guidance so you can confidently build production-ready AI systems rather than experimental prototypes. Who This Book Is ForThis book is ideal for:Python developers building AI-powered applicationsAI engineers designing complex LLM workflowsmachine learning engineers wo Read more
| XRay | Not Enabled |
|---|---|
| Language | English |
| File size | 2.3 MB |
| Page Flip | Enabled |
| Word Wise | Not Enabled |
| Print length | 381 pages |
| Accessibility | Learn more |
| Screen Reader | Supported |
| Publication date | March 12, 2026 |
| Enhanced typesetting | Enabled |
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