To harness the full potential of large language models (LLMs), mastering context is essential. Dynamic Context Engineering: Mastering Retrieval, Memory, and Tools for Advanced AI Systems offers a comprehensive, hands-on guide to designing intelligent, scalable, and robust AI systems through precise control over context. This book empowers developers, AI engineers, and data scientists to move beyond basic prompt engineering, providing a deep understanding of how to architect retrieval pipelines, memory systems, and tool ...
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To harness the full potential of large language models (LLMs), mastering context is essential. Dynamic Context Engineering: Mastering Retrieval, Memory, and Tools for Advanced AI Systems offers a comprehensive, hands-on guide to designing intelligent, scalable, and robust AI systems through precise control over context. This book empowers developers, AI engineers, and data scientists to move beyond basic prompt engineering, providing a deep understanding of how to architect retrieval pipelines, memory systems, and tool integrations that drive advanced AI behaviors. Whether you're building a customer support agent, a research assistant, or a content generation system, this book delivers the tools, strategies, and practical insights to create AI that reasons, adapts, and performs reliably in production. This book introduces a systematic approach to context engineering, exploring how information flows into and through LLMs to enable sophisticated capabilities like autonomous task chaining, retrieval-augmented generation, dynamic memory loops, and ethical data handling. With detailed explanations, production-ready Python code using LangChain, LangGraph, and Pinecone, and real-world case studies, each chapter equips you with actionable techniques to tackle challenges like token limits, hallucinations, and privacy concerns. From foundational concepts to future-facing innovations, this book provides a blueprint for building AI systems that are not only powerful but also transparent, scalable, and trustworthy. Inside, you'll learn how to: Grasp the critical role of context in shaping LLM performance and behavior, from input processing to output generation. Design structured context schemas and state management systems to ensure clarity and consistency in agent workflows. Build and optimize retrieval pipelines using semantic search, chunking, and hybrid techniques to deliver relevant, timely data. Implement memory loops with reflexion and feedback to enable continuous learning and lifelong memory in agents. Leverage LangChain and LangGraph to orchestrate multi-agent systems for tasks like search, support, and content generation. Apply compression and pruning strategies to manage extended context windows efficiently, reducing latency and costs. Ensure explainability and auditing through traceable context logs and validation checks, using tools like LangSmith. Address privacy, ethics, and trust with anonymized data storage, bias detection, and user-controlled memory systems. Deploy production-ready agents, from support bots to enterprise assistants, using modular, scalable architectures. Explore future directions, including extended context windows, interpretable LLMs, and privacy-preserving techniques. Whether you're a seasoned developer, an AI architect, or a technical leader, Dynamic Context Engineering is your essential guide to building AI systems that excel in real-world applications. Packed with reusable design patterns, complete code examples, and expert insights, this book empowers you to create systems that reason intelligently, adapt dynamically, and operate ethically. Master the art of context engineering, and unlock the future of advanced AI systems. Get your copy of Dynamic Context Engineering: Mastering Retrieval, Memory, and Tools for Advanced AI Systems today!
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Add this copy of Dynamic Context Engineering: Mastering Retrieval, to cart. $16.09, new condition, Sold by Ingram Customer Returns Center rated 5.0 out of 5 stars, ships from NV, USA, published 2025 by Independently Published.