Skip to content

At the moment we can only deliver in the UK. Click here to visit Cambridge.org for international orders.

  • Bestsellers
  • Latest releases
  • Offers
  • Events

    Cart

    Your cart is empty

    Mathematical Methods in Data Science

    Bridging Theory and Applications with Python

    Author(s): Sébastien Roch

    ISBN: 9781009509404
    Publication Date: 30/10/25
    Pages: 582
    Format: Paperback
    Sale price£54.99 GBP

    Quantity

    Pickup available at Cambridge University Press Bookshop

    Usually ready in 24 hours

    Mathematical Methods in Data Science

    Mathematical Methods in Data Science

    Cambridge University Press Bookshop

    Pickup available, Usually ready in 24 hours

    1-2 Trinity Street
    Cambridge CB2 1SZ
    United Kingdom

    +441223333333

    🚚 Please note we can only ship within the UK.

    FREE delivery on books (excluding sale).

    Delivery for other items is £1.50 - £4.50, calculated at checkout.

    T&Cs apply.

    Free click & collect on all orders.

    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 algorithms and solve problems. Self-assessment quizzes, warm-up exercises and theoretical problems foster both mathematical understanding and computational skills. Designed for advanced undergraduate students and beginning graduate students, this textbook serves as both an invitation to data science for mathematics majors and as a deeper excursion into mathematics for data science students.

    • 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