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{ "item_title" : "Multi-Agent AI Systems Handbook", "item_author" : [" Raymond Norman "], "item_description" : "Are you tired of AI demos that work in tutorials-but fail the moment you try to deploy them in the real world? Do your agents break under pressure, spiral into unpredictable loops, or quietly drain your budget without delivering results? You're not alone. The gap between building AI systems and deploying production-ready agents that actually work is where most developers get stuck. This book closes that gap. Multi-Agent AI Systems Handbook: Design, Build, and Deploy Production-Ready Autonomous Agents is your complete, practical guide to engineering intelligent, scalable AI systems that move beyond experimentation into reliable, real-world performance. Inside, you'll learn how to design and implement multi-agent architectures where autonomous agents collaborate, coordinate, and execute complex workflows with precision. From foundational concepts to advanced production strategies, this book equips you with the tools and frameworks needed to build systems that are not only powerful-but stable, observable, and cost-efficient. What You'll LearnHow to design multi-agent AI systems that scale across real-world applicationsBuild and deploy autonomous agents that execute tasks reliably without constant supervisionMaster Retrieval-Augmented Generation (RAG) to give your agents accurate, context-aware intelligenceImplement LLMOps and AgentOps practices for monitoring, debugging, and optimizing performancePrevent failures with fault-tolerant architectures, circuit breakers, and guardrailsDesign AI workflows and orchestration systems for complex, multi-step automationApply Responsible AI and governance principles to ensure compliance, transparency, and trustIntegrate modern frameworks like LangGraph, CrewAI, and AutoGen into production-ready systemsFrom Prototype to ProductionThis isn't another theory-heavy guide or shallow overview of tools. You'll go beyond basic prompts and simple pipelines to learn how to: Build robust, production-grade AI architecturesHandle instruction drift and unpredictable outputsDesign scalable systems that don't collapse under real workloadsControl costs, latency, and performance at scaleEvery concept is grounded in practical implementation, giving you the confidence to move from experimentation to deployment. Who This Book Is ForThis book is designed for: AI developers and engineers building real-world applicationsData scientists moving into LLM-powered systemsSoftware engineers exploring multi-agent architecturesProfessionals seeking to deploy scalable, enterprise-grade AI solutionsA basic understanding of programming and AI concepts will help you get the most out of this guide. Why This Book Stands OutWhile many resources focus on isolated tools or abstract theory, this book delivers a complete engineering approach-combining architecture, deployment, and governance into a single, actionable framework. You won't just learn how agents work. You'll learn how to build systems that: Work reliably in productionScale with demandAdapt to complex workflowsDeliver real business valueBuild AI Systems That Actually Work The future of AI isn't just smarter models-it's well-engineered systems of agents working together. If you're ready to move beyond fragile demos and start building production-ready AI systems that perform under real-world conditions, this book will show you how. Scroll up and get your copy today-start building AI systems that don't just run... but deliver.", "item_img_path" : "https://covers1.booksamillion.com/covers/bam/9/79/819/588/9798195882440_b.jpg", "price_data" : { "retail_price" : "28.00", "online_price" : "28.00", "our_price" : "28.00", "club_price" : "28.00", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : "" } }
Multi-Agent AI Systems Handbook|Raymond Norman

Multi-Agent AI Systems Handbook : Design, Build, and Deploy Production-Ready Autonomous Agents Master RAG, LLMOps, and Responsible AI for Scalable Real

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Overview

Are you tired of AI demos that work in tutorials-but fail the moment you try to deploy them in the real world?

Do your agents break under pressure, spiral into unpredictable loops, or quietly drain your budget without delivering results?

You're not alone. The gap between building AI systems and deploying production-ready agents that actually work is where most developers get stuck.

This book closes that gap.

Multi-Agent AI Systems Handbook: Design, Build, and Deploy Production-Ready Autonomous Agents is your complete, practical guide to engineering intelligent, scalable AI systems that move beyond experimentation into reliable, real-world performance.

Inside, you'll learn how to design and implement multi-agent architectures where autonomous agents collaborate, coordinate, and execute complex workflows with precision. From foundational concepts to advanced production strategies, this book equips you with the tools and frameworks needed to build systems that are not only powerful-but stable, observable, and cost-efficient.

What You'll Learn

  • How to design multi-agent AI systems that scale across real-world applications
  • Build and deploy autonomous agents that execute tasks reliably without constant supervision
  • Master Retrieval-Augmented Generation (RAG) to give your agents accurate, context-aware intelligence
  • Implement LLMOps and AgentOps practices for monitoring, debugging, and optimizing performance
  • Prevent failures with fault-tolerant architectures, circuit breakers, and guardrails
  • Design AI workflows and orchestration systems for complex, multi-step automation
  • Apply Responsible AI and governance principles to ensure compliance, transparency, and trust
  • Integrate modern frameworks like LangGraph, CrewAI, and AutoGen into production-ready systems
From Prototype to Production
This isn't another theory-heavy guide or shallow overview of tools.

You'll go beyond basic prompts and simple pipelines to learn how to:

  • Build robust, production-grade AI architectures
  • Handle instruction drift and unpredictable outputs
  • Design scalable systems that don't collapse under real workloads
  • Control costs, latency, and performance at scale
Every concept is grounded in practical implementation, giving you the confidence to move from experimentation to deployment.

Who This Book Is For
This book is designed for:

  • AI developers and engineers building real-world applications
  • Data scientists moving into LLM-powered systems
  • Software engineers exploring multi-agent architectures
  • Professionals seeking to deploy scalable, enterprise-grade AI solutions
A basic understanding of programming and AI concepts will help you get the most out of this guide.

Why This Book Stands Out
While many resources focus on isolated tools or abstract theory, this book delivers a complete engineering approach-combining architecture, deployment, and governance into a single, actionable framework.

You won't just learn how agents work.

You'll learn how to build systems that:

  • Work reliably in production
  • Scale with demand
  • Adapt to complex workflows
  • Deliver real business value
Build AI Systems That Actually Work

The future of AI isn't just smarter models-it's well-engineered systems of agents working together.

If you're ready to move beyond fragile demos and start building production-ready AI systems that perform under real-world conditions, this book will show you how.

Scroll up and get your copy today-start building AI systems that don't just run... but deliver.

This item is Non-Returnable

Details

  • ISBN-13: 9798195882440
  • ISBN-10: 9798195882440
  • Publisher: Independently Published
  • Publish Date: May 2026
  • Dimensions: 11 x 8.5 x 0.7 inches
  • Shipping Weight: 1.73 pounds
  • Page Count: 338

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