Free Download AI Agent System Design: How to Build LLM Applications, Architect LLM Agents, and Engineer Real-World AI Systems
English | December 8, 2025 | ASIN: B0G5VRMK2W | 734 pages | EPUB (True) | 519.69 KB
AI is no longer just a feature-it is an architecture. Organizations are moving beyond simple chatbot demos into complex systems that reason, plan, act, and interact with tools, data, users, and other agents. Yet most teams struggle to bridge the gap between experimental prototypes and real, functioning products. AI Agent System Design is a practical, end-to-end guide to designing, building, and deploying reliable, scalable, and production-ready AI systems powered by large language models and agent architectures. It combines engineering rigor with actionable patterns, showing you how to transform AI from a promising idea into a dependable capability that delivers measurable value. This book is built around a simple belief: Stop building demos. Start engineering systems. Whether you're designing an internal assistant, automating workflows, building RAG systems, or orchestrating multi-agent environments, this book will show you how to go beyond prompt experiments and prototype hacks-and design intelligent systems that work predictably in the real world. What You'll Learn Inside, you'll discover how to: Identify high-value opportunities for AI systems within workflows and business processes Architect LLM-based products that are reliable, usable, and cost-efficient Design prompts, schemas, and structures for predictable behavior Build retrieval-augmented generation (RAG) systems that actually work Orchestrate tools, APIs, function calls, and multi-step workflows Design and evaluate agent architectures without hype or guesswork Integrate safety, security, and guardrails into system design Measure performance, prevent regressions, and manage system drift Control cost, latency, and scalability in production environments Structure teams, roles, governance, and culture for AI adoption You'll also gain access to: Reusable architecture blueprints Practical evaluation frameworks Failure patterns and anti-patterns Deployment and monitoring strategies An end-to-end case study from concept to production A pattern library of real-world agent design templates This is not a survey of research, a catalog of tools, or a speculative essay about the future of AI. It is a systems engineering playbook for building intelligent applications that users can trust. Who This Book Is For This book is written for practitioners who want to build real systems, not just prototypes: AI engineers, ML engineers, software engineers Architects, technical leads, and CTOs Data scientists and platform builders Product managers and innovation leaders Researchers exploring agent behavior Teams transitioning from POCs to production If you're tired of toy examples, hype-driven claims, and untested advice-and you want a clear, pragmatic roadmap to building intelligent systems -this book is for you. Why This Book Matters Now The rapid rise of foundation models has lowered the barrier to experimentation-but dramatically raised the stakes for engineering. The organizations that succeed will not be those with the most powerful models, but those with the most reliable systems. This book shows you how to engineer: Stability in probabilistic systems Safety in autonomous workflows Efficiency in resource-intensive environments Trust in user-facing interactions Add to Cart Now.
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