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Total Size:
20.8 MB
Info Hash:
5CC75AB9B4B99CB0BCA1DEBD4ADE8AEF6C378F4A
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Added:
May 29, 2025, 10:51 a.m.
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(Last updated: May 29, 2025, 10:52 a.m.)
| File | Size |
|---|---|
| Readme.txt | 1.3 KB |
| Hijab O. Math for Data Science 2025.pdf | 20.8 MB |
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20.8 MB
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2025-05-29
| Uploaded by andryold1 | Size 20.8 MB | Health [ 111 /18 ] | Added 2025-05-29 |
NOTE
SOURCE: Hijab O. Math for Data Science 2025
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COVER

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MEDIAINFO
Textbook in PDF format
Math for Data Science presents the mathematical foundations necessary for studying and working in Data Science. The book is suitable for courses in applied mathematics, business analytics, computer science, data science, and engineering. The text covers the portions of linear algebra, calculus, probability, and statistics prerequisite to Data Science. The highlight of the book is the machine learning chapter, where the results of the previous chapters are applied to neural network training and stochastic gradient descent. Also included in this last chapter are advanced topics such as accelerated gradient descent and logistic regression trainability. Clear examples are supported with detailed figures and Python code; Jupyter notebooks and supporting files are available on the author's website. More than 380 exercises and nine detailed appendices covering background elementary material are provided to aid understanding. The book begins at a gentle pace, by focusing on two-dimensional datasets. As the text progresses, foundational topics are expanded upon, leading to deeper results at a more advanced level.
Preface.
List of Figures.
Datasets.
Linear Geometry.
Principal Components.
Calculus.
Probability.
Statistics.
Machine Learning.
A Auxiliary Material.
B Auxiliary Files.
References.
Python Index.
Index
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