SciPy: Difference between revisions

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(Created page with "=External= * https://scipy.org =Internal= * Python for Data Analysis")
 
 
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=Internal=
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* [[Python_for_Data_Analysis#Overview|Python for Data Analysis]]
* [[Python_for_Data_Analysis#Overview|Python for Data Analysis]]
=Overview=
SciPy is a collection of packages addressing a number of foundational problems in scientific computing.
=Modules=
==<tt>scipy.integrate</tt>==
Numerical integration routines and differential equation solvers.
==<tt>scipy.linalg</tt>==
Linear algebra routines and matrix decomposition extending beyond those provided by <code>numpy.linalg</code>.
==<tt>scipy.optimize</tt>==
Function optimizers (minimizers) and root finding algorithms.
==<tt>scipy.signal</tt>==
Signal processing tools.
==<tt>scipy.sparse</tt>==
Sparse matrices and sparse linear system solvers.
==<tt>scipy.special</tt>==
==<tt>scipy.stats</tt>==
Standard continuous and discrete probability distributions (density functions, samplers, continuous distribution functions), various statistical tests and more descriptive statistics.

Latest revision as of 23:44, 14 May 2024

External

Internal

Overview

SciPy is a collection of packages addressing a number of foundational problems in scientific computing.

Modules

scipy.integrate

Numerical integration routines and differential equation solvers.

scipy.linalg

Linear algebra routines and matrix decomposition extending beyond those provided by numpy.linalg.

scipy.optimize

Function optimizers (minimizers) and root finding algorithms.

scipy.signal

Signal processing tools.

scipy.sparse

Sparse matrices and sparse linear system solvers.

scipy.special

scipy.stats

Standard continuous and discrete probability distributions (density functions, samplers, continuous distribution functions), various statistical tests and more descriptive statistics.