AI Engineering Foundations: Designing, Evaluating, and Scaling Systems Built on Foundation Models is the definitive guide for anyone ready to master the next generation of AI system design. In this book, you won't just learn about AI, you will gain the skills, strategies, and frameworks that professional AI engineers use to build reliable, scalable, and high-impact systems powered by foundation models.
Inside, you will discover how to move beyond theory and leverage cutting-edge models in practical, production-ready ways. You'll explore the full lifecycle of AI engineering, from selecting and customizing foundation models, to crafting effective prompts and retrieval systems, to fine-tuning and deploying systems that perform under real-world demands. Every concept is unpacked with clarity, accompanied by examples, best practices, and actionable guidance that transforms abstract ideas into tangible skills.
This book equips you to understand the trade-offs between scale, cost, and performance, master evaluation techniques that ensure your models work safely and effectively, and implement architectures that are resilient, modular, and future-proof. You will also learn how to manage alignment, content safety, and system observability, ensuring the AI you build is not only powerful but trustworthy.
If you've ever felt overwhelmed by the pace of AI development or uncertain about how to translate models into real business or technical outcomes, this book is your solution. By the last page, you will hold the knowledge and confidence to design, deploy, and scale AI systems that deliver meaningful results, systems that turn potential into measurable impact.
AI Engineering Foundations is more than a guide; it is the roadmap for achieving mastery in the era of foundation models. Your path to building AI systems that truly work starts here.