Step into the world where AI and machine learning meet practical system design. Fundamental Machine Learning Design Patterns by Abel Heartree is not just another machine learning textbook-it's a blueprint for solving real-world problems with confidence and clarity.
Through clear explanations of machine learning design patterns, hands-on coding examples, and challenging machine learning questions, this book shows you how to build reliable, ethical, and scalable systems. You'll learn how to optimize models, address persistent challenges like data drift and reproducibility, and implement patterns that accelerate success in AI machine learning projects.
Whether you're exploring machine learning with Python, working through applied examples in machine learning Python, or diving into cutting-edge machine learning deep learning strategies, you'll find actionable tools for every stage of the ML lifecycle. From transfer learning and ensemble methods to fairness lenses and explainability, this guide blends theory and practice in a way that empowers both beginners and advanced practitioners.
Perfect for engineers, data scientists, and technology leaders, this book gives you a foundation in machine learning and AI that will stand the test of time-while equipping you to innovate, scale, and thrive in the future of intelligent systems.
By:
Abel Heartree Imprint: Telephasic Workshop, Ltd. Hawaii Dimensions:
Height: 279mm,
Width: 216mm,
Spine: 26mm
Weight: 1.157kg ISBN:9781998332298 ISBN 10: 1998332292 Pages: 504 Publication Date:20 September 2025 Audience:
General/trade
,
ELT Advanced
Format:Paperback Publisher's Status: Active