Mathematical Methods in Data Science, 9781009509404
Paperback
Unlock data science: Math insights meet Python skills.
Pre-Order

Mathematical Methods in Data Science

bridging theory and applications with python

$217.62

  • Paperback

    499 pages

  • Release Date

    30 September 2025

Check Delivery Options

Summary

From Theory to Implementation: A Mathematical Journey Through Data Science

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 red…

Book Details

ISBN-13:9781009509404
ISBN-10:1009509403
Series:Cambridge Mathematical Textbooks
Author:Sébastien Roch
Publisher:Cambridge University Press
Imprint:Cambridge University Press
Format:Paperback
Number of Pages:499
Release Date:30 September 2025
Weight:0g
What They're Saying

Critics Review

‘Mathematical Methods in Data Science provides a clear and accessible primer on key concepts central to data science and machine learning. Through engaging examples from neural networks, recommender systems, and data visualization, Roch illuminates myriad foundational topics and methods. Designed for readers from a broad range of backgrounds, this text is an indispensable resource for students and professionals.’ Rebecca Willett, University of Chicago‘This book is an outstanding introduction to the fundamentals of data science by an expert educator and researcher in the area. Its choice of topics, its use of Python, its plentiful examples and exercises, and its battle-testing in the classroom make it a top choice for students and educators seeking a mathematically rigorous yet practical entrée into data science.’ Stephen J. Wright, University of Wisconsin

About The Author

Sébastien Roch

Sébastien Roch is a Vilas Distinguished Achievement Professor of Mathematics at the University of Wisconsin, Madison. At UW-Madison, he helped establish the Data Science Major and has developed several courses on the mathematics of data. He is the author of Modern Discrete Probability: An Essential Toolkit (2023).

Returns

This item is eligible for free returns within 30 days of delivery. See our returns policy for further details.