Linear Algebra For Data Science

$78.00

This book teaches foundational and advanced linear algebra concepts essential for students in data science and related fields.

Linear Algebra For Data Science
Linear Algebra For Data Science
$78.00

[wpforms id=”1190″ title=”true” description=”Request a call back”]

This book serves as an introduction to linear algebra for undergraduate students in data science, statistics, computer science, economics, and engineering. The book presents all the essentials in rigorous (proof-based) manner, describes the intuition behind the results, while discussing some applications to data science along the way. The book comes with two parts, one on vectors, the other on matrices. The former consists of four chapters: vector algebra, linear independence and linear subspaces, orthonormal bases and the Gram-Schmidt process, linear functions. The latter comes with eight chapters: matrices and matrix operations, invertible matrices and matrix inversion, projections and regression, determinants, eigensystems and diagonalizability, symmetric matrices, singular value decomposition, and stochastic matrices. The book ends with the solution of exercises which appear throughout its twelve chapters.

Additional information

Weight 0.508 lbs
Dimensions 15.2 × 2 × 22.9 in

Reviews

There are no reviews yet.

Be the first to review “Linear Algebra For Data Science”

Your email address will not be published. Required fields are marked *