Skip to main content Accessibility help
Internet Explorer 11 is being discontinued by Microsoft in August 2021. If you have difficulties viewing the site on Internet Explorer 11 we recommend using a different browser such as Microsoft Edge, Google Chrome, Apple Safari or Mozilla Firefox.

Mathematical Methods in Data Science Bridging Theory and Applications with Python

Coming soon in September 2025

Authors

, University of Wisconsin, Madison

Description

Bridge the gap between theoretical concepts and their practical applications with this rigorous introduction to the mathematics underpinning data science. It covers essential topics in linear algebra, calculus and optimization, and probability and statistics, demonstrating their relevance in the context of data analysis. Key application topics include clustering, regression, classification, dimensionality reduction, network analysis, and neural networks. What sets this text apart is its focus on hands-on learning. Each chapter combines mathematical insights with practical examples, using Python to implement…

  • Add bookmark
  • Cite
  • Share

Key features

  • Uses real data analysis problems to motivate the mathematical theory to help students to connect mathematical concepts with practice
  • Encourages hands-on learning with self-assessment quizzes (with answers included), extensive basic exercises and many advanced problems
  • Carefully develops mathematical concepts and includes detailed proofs, allowing students in DS/ML/AI to gain a deeper understanding of the mathematics involved
  • Includes a background section in each chapter, which can serve as review to help instructors to adapt the material to the background of their students
  • 'CHAT & LEARN' activities encourage students to use AI to further explore the topics broached in the book and enhance their coding skills

About the book