Thanks to visit codestin.com
Credit goes to github.com

Skip to content

StatML/sporco

 
 

Repository files navigation

SParse Optimization Research COde (SPORCO)

Build Status Code Health Documentation Status Test Coverage PyPi Release Supported Python Versions Package License Binder

SPORCO is a Python package for solving optimisation problems with sparsity-inducing regularisation. These consist primarily of sparse coding and dictionary learning problems, including convolutional sparse coding and dictionary learning, but there is also support for other problems such as Total Variation regularisation and Robust PCA. In the current version all of the optimisation algorithms are based on the Alternating Direction Method of Multipliers (ADMM).

Requirements

The primary requirements are Python itself, and modules numpy, scipy, future, pyfftw, and matplotlib. Module numexpr is not required, but some functions will be faster if it is installed. If module mpldatacursor is installed, functions plot.plot and plot.imview will support the data cursor that it provides.

Installation of these requirements is system dependent. For example, under Ubuntu Linux 16.04, the following commands should be sufficient for Python 2

sudo apt-get install python-numpy python-scipy python-numexpr
sudo apt-get install python-matplotlib python-pip python-future
sudo apt-get install libfftw3-dev
sudo pip install pyfftw

or Python 3

sudo apt-get install python3-numpy python3-scipy python3-numexpr
sudo apt-get install python3-matplotlib python3-pip python3-future
sudo apt-get install libfftw3-dev
sudo pip3 install pyfftw

Some additional dependencies are required for running the unit tests or building the documentation from the package source. For example, under Ubuntu Linux 16.04, the following commands should be sufficient for Python 2

sudo apt-get install python-pytest python-numpydoc
sudo pip install pytest-runner
sudo pip install sphinxcontrib-bibtex

or Python 3

sudo apt-get install python3-pytest python3-numpydoc
sudo pip3 install pytest-runner
sudo pip3 install sphinxcontrib-bibtex

Installation

To install the most recent release of SPORCO from PyPI do

pip install sporco

To install the development version from GitHub do

git clone git://github.com/bwohlberg/sporco.git

followed by

cd sporco
python setup.py build
python setup.py install

The install commands will usually have to be performed with root privileges.

A summary of the most significant changes between SPORCO releases can be found in the CHANGES.rst file. It is strongly recommended to consult this summary when updating from a previous version.

Test Images

The usage examples, described below, make use of a number of standard test images, which can be installed using the sporco_get_images script. To download these images from the root directory of the source distribition (i.e. prior to installation) do

bin/sporco_get_images --libdest

after setting the PYTHONPATH environment variable as described below. To download the images as part of a package that has already been installed, do

sporco_get_images --libdest

which will usually have to be performed with root privileges.

Usage

Scripts illustrating usage of the package can be found in the examples directory of the source distribution. These examples can be run from the root directory of the package by, for example

python examples/stdsparse/demo_bpdn.py

To run these scripts prior to installing the package it will be necessary to first set the PYTHONPATH environment variable to include the root directory of the package. For example, in a bash shell

export PYTHONPATH=$PYTHONPATH:`pwd`

from the root directory of the package.

Jupyter Notebook versions of some of the demos in examples are also available in the same directories as the corresponding demo scripts. The scripts can also be viewed online via nbviewer, or run interactively at binder.

Documentation

Documentation is available online at Read the Docs, or can be built from the root directory of the source distribution by the command

python setup.py build_sphinx

in which case the HTML documentation can be found in the build/sphinx/html directory (the top-level document is index.html).

License

This package is distributed with a BSD license; see the LICENSE file for details.

Acknowledgments

Thanks to Aric Hagberg for valuable advice on python packaging, documentation, and related issues.

About

Sparse Optimisation Research Code

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 99.5%
  • Jupyter Notebook 0.5%