Tsukada / Kobayashi / Kaneko

Linear Algebra with Python

Theory and Applications

Springer

ISBN 9789819929535

Standardpreis


64,19 €

lieferbar ca. 10 Tage als Sonderdruck ohne Rückgaberecht

Preisangaben inkl. MwSt. Abhängig von der Lieferadresse kann die MwSt. an der Kasse variieren. Weitere Informationen

Bibliografische Daten

Fachbuch

Buch. Softcover

2024

27 s/w-Abbildungen, 64 Farbabbildungen.

In englischer Sprache

Umfang: xv, 309 S.

Format (B x L): 17,8 x 25,4 cm

Verlag: Springer

ISBN: 9789819929535

Weiterführende bibliografische Daten

Produktbeschreibung

This textbook is for those who want to learn linear algebra from the basics. After a brief mathematical introduction, it provides the standard curriculum of linear algebra based on an abstract linear space. It covers, among other aspects: linear mappings and their matrix representations, basis, and dimension; matrix invariants, inner products, and norms; eigenvalues and eigenvectors; and Jordan normal forms. Detailed and self-contained proofs as well as descriptions are given for all theorems, formulas, and algorithms.

A unified overview of linear structures is presented by developing linear algebra from the perspective of functional analysis. Advanced topics such as function space are taken up, along with Fourier analysis, the Perron–Frobenius theorem, linear differential equations, the state transition matrix and the generalized inverse matrix, singular value decomposition, tensor products, and linear regression models. These all provide a bridge to more specialized theories based on linear algebra in mathematics, physics, engineering, economics, and social sciences.

Python is used throughout the book to explain linear algebra. Learning with Python interactively, readers will naturally become accustomed to Python coding. By using Python’s libraries NumPy, Matplotlib, VPython, and SymPy, readers can easily perform large-scale matrix calculations, visualization of calculation results, and symbolic computations. All the codes in this book can be executed on both Windows and macOS and also on Raspberry Pi.

Autorinnen und Autoren

Kundeninformationen

Gives a unified overview of various phenomena with linear structure from the perspective of functional analysis Makes it enjoyable to learn linear algebra with Python by performing linear calculations without manual calculations Handles large data such as images and sound using Python and deepens the understanding of linear structures

Produktsicherheit

Hersteller

Springer Nature Customer Service Center GmbH

ProductSafety@springernature.com

Topseller & Empfehlungen für Sie

Ihre zuletzt angesehenen Produkte

Rezensionen

Dieses Set enthält folgende Produkte:
    Auch in folgendem Set erhältlich:

    • nach oben

      Ihre Daten werden geladen ...