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Mastering SciPy

Mastering SciPy

By : Blanco-Silva, Francisco Javier B Silva
3.5 (2)
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Mastering SciPy

Mastering SciPy

3.5 (2)
By: Blanco-Silva, Francisco Javier B Silva

Overview of this book

The SciPy stack is a collection of open source libraries of the powerful scripting language Python, together with its interactive shells. This environment offers a cutting-edge platform for numerical computation, programming, visualization and publishing, and is used by some of the world’s leading mathematicians, scientists, and engineers. It works on any operating system that supports Python and is very easy to install, and completely free of charge! It can effectively transform into a data-processing and system-prototyping environment, directly rivalling MATLAB and Octave. This book goes beyond a mere description of the different built-in functions coded in the libraries from the SciPy stack. It presents you with a solid mathematical and computational background to help you identify the right tools for each problem in scientific computing and visualization. You will gain an insight into the best practices with numerical methods depending on the amount or type of data, properties of the mathematical tools employed, or computer architecture, among other factors. The book kicks off with a concise exploration of the basics of numerical linear algebra and graph theory for the treatment of problems that handle large data sets or matrices. In the subsequent chapters, you will delve into the depths of algorithms in symbolic algebra and numerical analysis to address modeling/simulation of various real-world problems with functions (through interpolation, approximation, or creation of systems of differential equations), and extract their representing features (zeros, extrema, integration or differentiation). Lastly, you will move on to advanced concepts of data analysis, image/signal processing, and computational geometry.
Table of Contents (11 chapters)
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10
Index

Analytic approximation methods


Analytic approximation methods try to compute approximations to the exact solutions on suitable domains, in the form of truncated series expansions over a system of basis functions. In the SciPy stack, we have an implementation based on the Taylor series, through the routine odefun in the module sympy.mpmath.

Note

mpmath is a Python library for arbitrary-precision floating-point arithmetic, hosted inside the sympy module. Although it is independent of the numpy machinery, they both work well together.

For more information about this library, read the official documentation at http://mpmath.org/doc/current/.

Let's see it in action, first with our trivial example y'(t) = y(t), y(0) = 1. The key here is to assess the speed and the accuracy of the approximation, as compared to the actual solution in the interval [0, 1]. Its syntax is very simple, we assume the equation is always in the form of y' = F, and we provide the routine odefun with this functional F and the...

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