Giotto Tda Save

A high-performance topological machine learning toolbox in Python

Project README

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========== giotto-tda

giotto-tda is a high-performance topological machine learning toolbox in Python built on top of scikit-learn and is distributed under the GNU AGPLv3 license. It is part of the Giotto <https://github.com/giotto-ai>_ family of open-source projects.

Project genesis

giotto-tda is the result of a collaborative effort between L2F SA <https://www.l2f.ch/>, the Laboratory for Topology and Neuroscience <https://www.epfl.ch/labs/hessbellwald-lab/> at EPFL, and the Institute of Reconfigurable & Embedded Digital Systems (REDS) <https://heig-vd.ch/en/research/reds>_ of HEIG-VD.

License

.. _L2F team: [email protected]

giotto-tda is distributed under the AGPLv3 license <https://github.com/giotto-ai/giotto-tda/blob/master/LICENSE>. If you need a different distribution license, please contact the L2F team.

Documentation

Please visit https://giotto-ai.github.io/gtda-docs <https://giotto-ai.github.io/gtda-docs>_ and navigate to the version you are interested in.

Installation

Dependencies

The latest stable version of giotto-tda requires:

  • Python (>= 3.7)
  • NumPy (>= 1.19.1)
  • SciPy (>= 1.5.0)
  • joblib (>= 0.16.0)
  • scikit-learn (>= 0.23.1)
  • pyflagser (>= 0.4.3)
  • python-igraph (>= 0.8.2)
  • plotly (>= 4.8.2)
  • ipywidgets (>= 7.5.1)

To run the examples, jupyter is required.

User installation

The simplest way to install giotto-tda is using pip ::

python -m pip install -U giotto-tda

If necessary, this will also automatically install all the above dependencies. Note: we recommend upgrading pip to a recent version as the above may fail on very old versions.

Pre-release, experimental builds containing recently added features, and/or bug fixes can be installed by running ::

python -m pip install -U giotto-tda-nightly

The main difference between giotto-tda-nightly and the developer installation (see the section on contributing, below) is that the former is shipped with pre-compiled wheels (similarly to the stable release) and hence does not require any C++ dependencies. As the main library module is called gtda in both the stable and nightly versions, giotto-tda and giotto-tda-nightly should not be installed in the same environment.

Developer installation

Please consult the dedicated page <https://giotto-ai.github.io/gtda-docs/latest/installation.html#developer-installation>_ for detailed instructions on how to build giotto-tda from sources across different platforms.

.. _contributing-section:

Contributing

We welcome new contributors of all experience levels. The Giotto community goals are to be helpful, welcoming, and effective. To learn more about making a contribution to giotto-tda, please consult the relevant page <https://giotto-ai.github.io/gtda-docs/latest/contributing/index.html>_.

Testing

After developer installation, you can launch the test suite from outside the source directory ::

pytest gtda

Important links

Citing giotto-tda

If you use giotto-tda in a scientific publication, we would appreciate citations to the following paper:

giotto-tda: A Topological Data Analysis Toolkit for Machine Learning and Data Exploration <https://www.jmlr.org/papers/volume22/20-325/20-325.pdf>_, Tauzin et al, J. Mach. Learn. Res. 22.39 (2021): 1-6.

You can use the following BibTeX entry:

.. code:: bibtex

@article{giotto-tda,
  author  = {Guillaume Tauzin and Umberto Lupo and Lewis Tunstall and Julian Burella P\'{e}rez and Matteo Caorsi and Anibal M. Medina-Mardones and Alberto Dassatti and Kathryn Hess},
  title   = {giotto-tda: A Topological Data Analysis Toolkit for Machine Learning and Data Exploration},
  journal = {Journal of Machine Learning Research},
  year    = {2021},
  volume  = {22},
  number  = {39},
  pages   = {1-6},
  url     = {http://jmlr.org/papers/v22/20-325.html}
}

Community

giotto-ai Slack workspace: https://slack.giotto.ai/

Contacts

[email protected]

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