AI is moving faster than any technology in history - but most teams are still stuck building demos instead of deployable systems. This book changes that.
AI Agent System Design is the first end-to-end, engineering-focused guide that teaches you how to build real LLM applications, architect reliable agent systems, and design production-ready AI workflows that scale. Whether you're an engineer, architect, technical product lead, or founder, this book shows you how to move from prototypes that impress... to systems that endure.
While other books stay high-level or theoretical, this one is unapologetically practical. You'll learn how modern AI systems actually work - across models, data architecture, RAG pipelines, tools, APIs, function calling, safety layers, orchestration frameworks, agents, evaluation, observability, performance, and deployment.
Built on real engineering lessons, modern patterns, and field-tested architectures, this is your blueprint for building AI that works in the real world.
What You Will Learn
Design AI systems that are fast, safe, and scalable Move from naïve prompt hacks to reliable interfaces, schemas, guardrails, and orchestration pipelines used by professional AI teams.
Build LLM agents without the hype Understand what an agent truly is, how agent loops work, when memory helps (and when it doesn't), and how to avoid runaway, unstable, or unpredictable behaviors.
Make RAG actually work Chunking, indexing, metadata, reranking, hybrid search, evidence routing, evaluation - a complete RAG engineering playbook.
Engineer real-world tools and function calling Implement planning, multi-step reasoning, multi-tool pipelines, and agent-tool collaboration with correctness guarantees.
Master evaluation beyond "it feels good" Learn measurable metrics, test harnesses, AI-as-a-judge systems, stress testing, edge-case validation, and regression protocols.
Scale for performance, cost, and reliability Latency patterns, inference optimization, caching systems, routing strategies, load balancing, and cost engineering.
Deploy and operate production-grade AI systems Monitoring, logging, drift detection, governance, model versioning, and continuous improvement workflows.
This book is designed for:
AI Engineers & ML Engineers
Software Engineers
Product Leaders & Founders
Technical Architects & Researchers
If you want to build LLM applications that don't collapse under real users, real data, or real scale, this book will become your most-used reference.
A New Standard for AI Engineering Books
• End-to-end architecture patterns • Real examples and case studies • Failure modes and how to avoid them • Practical micro-modules at the end of every chapter • A complete library of agent and system design patterns
This is not a conceptual overview or an academic text. This is a hands-on engineering guide for people who want to build.
Stop building demos. Start engineering systems.
If you're ready to build the next generation of intelligent applications - not just talk about them - this book is your blueprint.
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