Book Image

Scientific Computing with Python - Second Edition

By : Claus Führer, Jan Erik Solem, Olivier Verdier
Book Image

Scientific Computing with Python - Second Edition

By: Claus Führer, Jan Erik Solem, Olivier Verdier

Overview of this book

Python has tremendous potential within the scientific computing domain. This updated edition of Scientific Computing with Python features new chapters on graphical user interfaces, efficient data processing, and parallel computing to help you perform mathematical and scientific computing efficiently using Python. This book will help you to explore new Python syntax features and create different models using scientific computing principles. The book presents Python alongside mathematical applications and demonstrates how to apply Python concepts in computing with the help of examples involving Python 3.8. You'll use pandas for basic data analysis to understand the modern needs of scientific computing, and cover data module improvements and built-in features. You'll also explore numerical computation modules such as NumPy and SciPy, which enable fast access to highly efficient numerical algorithms. By learning to use the plotting module Matplotlib, you will be able to represent your computational results in talks and publications. A special chapter is devoted to SymPy, a tool for bridging symbolic and numerical computations. By the end of this Python book, you'll have gained a solid understanding of task automation and how to implement and test mathematical algorithms within the realm of scientific computing.
Table of Contents (23 chapters)
20
About Packt
22
References

4.9.3 More methods

In the examples so far, you met a couple of methods for computational tasks in linear algebra, for example, solve. More methods are available after the command import scipy.linalg as sl is executed. The most common of them are listed in Table 4.6:

Methods Description
sl.det Determinant of a matrix
sl.eig Eigenvalues and eigenvectors of a matrix
sl.inv Matrix inverse
sl.pinv Matrix pseudoinverse
sl.norm Matrix or vector norm
sl.svd Singular value decomposition
sl.lu LU decomposition
sl.qr QR decomposition
sl.cholesky Cholesky decomposition
sl.solve Solution of a general or symmetric linear system: Ax = b
sl.solve.banded The same for banded matrices
sl.lstsq Least squares solution
Table 4.6: Linear algebra functions of the module scipy.linalg

Execute import scipy.linalg as sl first.