AI Agents Handbook: The Complete Guide to Building Autonomous Multiagent Systems with LLM RAG, Knowledge Graphs, and Scalable AI Workflows - Couverture souple

Halversen, Bjorn

 
9798182431828: AI Agents Handbook: The Complete Guide to Building Autonomous Multiagent Systems with LLM RAG, Knowledge Graphs, and Scalable AI Workflows

Synopsis

Description The convergence of large language models, retrieval-augmented generation, and knowledge graphs has opened a new frontier in artificial intelligence: the design of autonomous multiagent systems capable of sophisticated reasoning, dynamic collaboration, and reliable execution in complex, real-world environments. AI Agents Handbook delivers a rigorous, end-to-end reference for professionals who must move beyond isolated LLM calls to architect, implement, and operate production-grade agentic platforms.

This volume provides the architectural principles, design patterns, and engineering methodologies required to build agents that perceive, plan, act, and coordinate effectively. Readers gain deep expertise in constructing high-fidelity RAG pipelines, integrating structured knowledge graphs for semantic reasoning, implementing advanced agent patterns such as ReAct and Reflexion, and orchestrating multiagent workflows that scale across distributed infrastructure.

The handbook systematically addresses the full system lifecycle—from data ingestion and knowledge representation to agent lifecycle management, inter-agent communication protocols, fault tolerance, and continuous evaluation—while maintaining a consistent focus on reliability, observability, and responsible deployment.

Special attention is given to the practical challenges that determine success in enterprise and research settings: mitigating hallucinations and retrieval failures, securing agents against prompt injection and adversarial inputs, preserving privacy in multi-party environments, establishing governance and audit mechanisms, and achieving horizontal scalability without sacrificing coherence. Domain-informed case studies and reference architectures illustrate how these components integrate into cohesive solutions for software engineering automation, research acceleration, financial process orchestration, and knowledge-intensive operations.

AI Agents Handbook is written for experienced AI engineers, system architects, machine learning researchers, and technical leaders who require both theoretical depth and actionable implementation guidance. Its structured progression from foundational concepts to advanced production considerations equips readers to design agents that are not only intelligent but also robust, maintainable, and aligned with organizational objectives.

Master the construction of autonomous multiagent systems that deliver measurable value.
Acquire your copy of AI Agents Handbook today and begin building the next generation of scalable, trustworthy, and collaborative AI agent platforms.

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