Practical Linear Algebra for Data Science

Practical Linear Algebra for Data Science

  • Mike X Cohen
Publisher:"O'Reilly Media, Inc."ISBN 13: 9781098120573ISBN 10: 1098120574

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Practical Linear Algebra for Data Science is written by Mike X Cohen and published by "O'Reilly Media, Inc.". It's available with International Standard Book Number or ISBN identification 1098120574 (ISBN 10) and 9781098120573 (ISBN 13).

If you want to work in any computational or technical field, you need to understand linear algebra. As the study of matrices and operations acting upon them, linear algebra is the mathematical basis of nearly all algorithms and analyses implemented in computers. But the way it's presented in decades-old textbooks is much different from how professionals use linear algebra today to solve real-world modern applications. This practical guide from Mike X Cohen teaches the core concepts of linear algebra as implemented in Python, including how they're used in data science, machine learning, deep learning, computational simulations, and biomedical data processing applications. Armed with knowledge from this book, you'll be able to understand, implement, and adapt myriad modern analysis methods and algorithms. Ideal for practitioners and students using computer technology and algorithms, this book introduces you to: The interpretations and applications of vectors and matrices Matrix arithmetic (various multiplications and transformations) Independence, rank, and inverses Important decompositions used in applied linear algebra (including LU and QR) Eigendecomposition and singular value decomposition Applications including least-squares model fitting and principal components analysis