|
![]() |
|||
|
||||
OverviewA one-stop-shop for all the math you should have learned for your programming career. A one-stop-shop for all the math you should have learned for your programming career. Every great programming challenge has mathematical principles at its heart. Whether you're optimizing search algorithms, building physics engines for games, or training neural networks, success depends on your grasp of core mathematical concepts. In Math for Programming, you'll master the essential mathematics that will take you from basic coding to serious software development. You'll discover how vectors and matrices give you the power to handle complex data, how calculus drives optimization and machine learning, and how graph theory leads to advanced search algorithms. Through clear explanations and practical examples, you'll learn to- Harness linear algebra to manipulate data with unprecedented efficiency Apply calculus concepts to optimize algorithms and drive simulations Use probability and statistics to model uncertainty and analyze data Master the discrete mathematics that powers modern data structures Solve dynamic problems through differential equations Whether you're seeking to fill gaps in your mathematical foundation or looking to refresh your understanding of core concepts, Math for Programming will turn complex math into a practical tool you'll use every day. Full Product DetailsAuthor: Ronald T. KneuselPublisher: No Starch Press,US Imprint: No Starch Press,US Weight: 0.369kg ISBN: 9781718503588ISBN 10: 171850358 Pages: 504 Publication Date: 22 April 2025 Audience: Professional and scholarly , Professional & Vocational Format: Paperback Publisher's Status: Active Availability: Available To Order ![]() We have confirmation that this item is in stock with the supplier. It will be ordered in for you and dispatched immediately. Table of ContentsIntroduction Chapter 1. Computers and Numbers Chapter 2. Sets and Abstract Algebra Chapter 3. Boolean Algebra Chapter 4. Functions and Relations Chapter 5. Induction Chapter 6. Recurrence and Recursion Chapter 7. Number Theory Chapter 8. Counting and Combinatorics Chapter 9. Graphs Chapter 10. Trees Chapter 11. Probability Chapter 12. Statistics Chapter 13. Linear Algebra Chapter 14. Differential Calculus Chapter 15. Integral Calculus Chapter 16. Differential EquationsReviewsAuthor InformationRonald T. Kneusel has been working with machine learning in industry since 2003 and has a PhD in machine learning from the University of Colorado, Boulder. Kneusel is the author of Practical Deep Learning, Math for Deep Learning, The Art of Randomness, How AI Works, and Strange Code (all from No Starch Press), as well as Numbers and Computers and Random Numbers and Computers (Springer). Tab Content 6Author Website:Countries AvailableAll regions |