"Winner of the Chambliss Astronomical Writing Award, American Astronomical Society"
A hands-on introduction to machine learning and its applications to the physical sciences
As the size and complexity of data continue to grow exponentially across the physical sciences, machine learning is helping scientists to sift through and analyze this information while driving breathtaking advances in quantum physics, astronomy, cosmology, and beyond. This incisive textbook covers the basics of building, diagnosing, optimizing, and deploying machine learning methods to solve research problems in physics and astronomy, with an emphasis on critical thinking and the scientific method. Using a hands-on approach to learning, Machine Learning for Physics and Astronomy draws on real-world, publicly available data as well as examples taken directly from the frontiers of research, from identifying galaxy morphology from images to identifying the signature of standard model particles in simulations at the Large Hadron Collider.
- Introduces readers to best practices in data-driven problem-solving, from preliminary data exploration and cleaning to selecting the best method for a given task
- Each chapter is accompanied by Jupyter Notebook worksheets in Python that enable students to explore key concepts
- Includes a wealth of review questions and quizzes
- Ideal for advanced undergraduate and early graduate students in STEM disciplines such as physics, computer science, engineering, and applied mathematics
- Accessible to self-learners with a basic knowledge of linear algebra and calculus
- Slides and assessment questions (available only to instructors)
“Machine Learning for Physics and Astronomy covers the essential concepts of machine learning algorithms in detail, with accessible examples and practical applications.”—Claudia Scarlata, University of Minnesota
“A wonderful introduction to the field. Acquaviva uses an engaging, conversational tone that breaks through the algorithmic details and welcomes the reader into the marvelously expansive world of machine learning.”—John Bochanski, Rider University
“This book features a very high level of scholarship with an outstanding breadth of material that manages to be instructive and complete while not overwhelming students. With clear language and plenty of examples, it has just the right depth and coverage for higher-level college classes that incorporate machine learning in a physics and astronomy setting.”—Benne Holwerda, University of Louisville