Discrete Mathematics for Data Science

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A01=Jack Pope
algorithm analysis
Author_Jack Pope
Category=PBD
Category=PBT
Category=PBV
Category=UMX
Category=UMZ
Category=UY
combinatorics
Computer Science
Data Science
Discrete structures
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eq_computing
eq_isMigrated=1
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eq_new_release
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Forth
information theory
Programming
proof strategies for data analysis
propositional logic
recursion techniques
undergraduate mathematics

Product details

  • ISBN 9781032687223
  • Weight: 910g
  • Dimensions: 156 x 234mm
  • Publication Date: 30 Mar 2026
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Discrete Mathematics for Data Science provides an early course in both Data Science and Discrete Mathematics, focusing on how a deeper understanding of the former can unlock a more effective implementation of the latter. Students of Data Science come from a variety of disciplines, with Business, Statistics, Computer Science, Economics, and Psychology among the departments offering courses on the subject. Therefore, for many students, Data Science is considered a means of insight into a particular field of interest, with the study of its underlying discrete mathematics not a primary objective.

This book covers the topics of Discrete Mathematical Structures relevant to students of Data Science, offering a relevant and gentle introduction to both the theoretical and practical elements required to be a successful data scientist. The relaxed, accessible style makes it a perfect textbook for undergraduates.

Features

  • Numerous exercises and examples
  • Ideal as a textbook for a Discrete Mathematics course for data science and computer science students
  • Source code and solutions provided as a supplementary resource

Jack Pope has wrangled financial data since Big Data meant a big pile of floppy disks. He works at Investment Economics (aka, System Goats) providing system configuration, guidance, and training for organizations interested in data science infrastructure. He is also department coordinator for Computer Science and Data Science at North Hennepin Community College and chairman of the Twin Cities IEEE Computer Society.

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