Production Agent Engineering with Claude Code : Build Autonomous Agents, MCP Integrations, Multi-Agent Systems, Hooks, Computer Use, and Production-Rea
Overview
This book is a practical, engineering-focused guide to building real-world autonomous agent systems using Claude Code. It moves beyond surface-level explanations and focuses on how production-grade AI systems are actually designed, structured, deployed, and scaled.
Modern AI agents are no longer simple chat interfaces or scripted automations. They are becoming full execution systems capable of planning, tool use, memory management, environment interaction, and multi-agent coordination. However, most developers struggle when moving from prototypes to systems that can run reliably in production. This book bridges that gap.
Inside, you will learn how to design agents that are not only intelligent, but also stable, observable, secure, and scalable. Every concept is grounded in real engineering patterns used in production AI systems, including event-driven architectures, memory pipelines, tool execution layers, and distributed agent coordination.
This is not a theoretical overview. It is a hands-on engineering guide.
Who This Book Is For
This book is designed for developers and engineers who want to build real AI systems, not just experiment with prompts.
- AI engineers building autonomous agent systems
- Python developers transitioning into AI/LLM engineering
- Machine learning engineers moving into production AI systems
- Software engineers working with LLM APIs and tool integrations
- System architects designing scalable AI infrastructure
- Advanced learners exploring multi-agent systems and automation workflows
If you already understand basic programming and want to move into building intelligent systems that can operate autonomously in real environments, this book is written for you.
What You Will Learn
Throughout this book, you will learn how to design and engineer full-scale agent systems using Claude Code and modern AI architecture principles.
- Build autonomous agents that can reason, plan, and execute tasks
- Design MCP-based integrations for structured tool and context access
- Implement event-driven architectures using hooks and triggers
- Create multi-agent systems that collaborate and coordinate tasks
- Engineer memory systems for long-term context and knowledge retention
- Build safe computer-use systems for browser and desktop interaction
- Design human-in-the-loop workflows for controlled autonomy
- Implement monitoring, logging, and observability layers
- Secure agent systems using governance and access control models
- Scale agent architectures for production workloads and real traffic
Each concept is explained from first principles and then translated into real, working Python implementations.
Why This Book Matters
Most AI tutorials stop at simple API calls or basic chatbot examples. In real-world systems, that is only the beginning.
Production agent systems must handle uncertainty, failure, scaling, memory constraints, and external tool dependencies. They must also remain safe, observable, and maintainable over time.
This book focuses on exactly that layer of engineering.
You will not only learn how to make agents "work," but how to make them reliable enough to run continuously in production environments where failure is not an option.
A Practical Engineering Approach
Every concept in this book is built around real engineering patterns:
- Modular system design
- Event-driven execution models
- Structured memory and retrieval pipelines
- Agent orchestration and delegation
- Safe execution boundaries and governance layers
- Scalable distributed processing models
Code examples are provided throughout to ensure that each idea can be implemented immediately and adapted into real projects.
This book is for builders.
This item is Non-Returnable
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Details
- ISBN-13: 9798181010437
- ISBN-10: 9798181010437
- Publisher: Independently Published
- Publish Date: June 2026
- Dimensions: 10 x 7 x 0.55 inches
- Shipping Weight: 1.01 pounds
- Page Count: 260
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