Book Image

Applying Math with Python - Second Edition

By : Sam Morley
Book Image

Applying Math with Python - Second Edition

By: Sam Morley

Overview of this book

The updated edition of Applying Math with Python will help you solve complex problems in a wide variety of mathematical fields in simple and efficient ways. Old recipes have been revised for new libraries and several recipes have been added to demonstrate new tools such as JAX. You'll start by refreshing your knowledge of several core mathematical fields and learn about packages covered in Python's scientific stack, including NumPy, SciPy, and Matplotlib. As you progress, you'll gradually get to grips with more advanced topics of calculus, probability, and networks (graph theory). Once you’ve developed a solid base in these topics, you’ll have the confidence to set out on math adventures with Python as you explore Python's applications in data science and statistics, forecasting, geometry, and optimization. The final chapters will take you through a collection of miscellaneous problems, including working with specific data formats and accelerating code. By the end of this book, you'll have an arsenal of practical coding solutions that can be used and modified to solve a wide range of practical problems in computational mathematics and data science.
Table of Contents (13 chapters)

Accelerating code with Cython

Python is often criticized for being a slow programming language – an endlessly debatable statement. Many of these criticisms can be addressed by using a high-performance compiled library with a Python interface – such as the scientific Python stack – to greatly improve performance. However, there are some situations where it is difficult to avoid the fact that Python is not a compiled language. One way to improve performance in these (fairly rare) situations is to write a C extension (or even rewrite the code entirely in C) to speed up the critical parts. This will certainly make the code run more quickly, but it might make it more difficult to maintain the package. Instead, we can use Cython, which is an extension of the Python language that is transpiled into C and compiled for great performance improvements.

For example, we can consider some code that’s used to generate an image of the Mandelbrot set. For comparison,...