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AUTHORS.rst

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- Dimitris Spathis
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- Filip Malkowski
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- George Wambold
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- Brunno Vanelli
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- Maximilian Lohmann

CHANGES.rst

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tsfresh uses `Semantic Versioning <http://semver.org/>`_
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Version 0.20.0
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==============
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- Breaking Change
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- The matrixprofile package becomes an optional dependency
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- Bugfixes/Typos/Documentation:
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- Fix feature extraction of Friedrich coefficients for pandas>1.3.5
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- Fix file paths after example notebooks were moved
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Version 0.19.0
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==============
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README.md

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The algorithm, especially the filtering part are also described in the paper mentioned above.
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If you have some questions or feedback you can find the developers in the [gitter chatroom.](https://gitter.im/tsfresh/Lobby?utm_source=share-link&utm_medium=link&utm_campaign=share-link)
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We appreciate any contributions, if you are interested in helping us to make *TSFRESH* the biggest archive of feature extraction methods in python, just head over to our [How-To-Contribute](http://tsfresh.readthedocs.io/en/latest/text/how_to_contribute.html) instructions.
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If you want to try out `tsfresh` quickly or if you want to integrate it into your workflow, we also have a docker image available:
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docker pull nbraun/tsfresh
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## Backwards compatibility
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If you need to reproduce or update time-series features, which were computed with the `matrixprofile` feature calculators, you need to create a Python 3.8 environment:
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conda create --name tsfresh__py_3.8 python=3.8
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conda activate tsfresh__py_3.8
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pip install tsfresh[matrixprofile]
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## Acknowledgements
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The research and development of *TSFRESH* was funded in part by the German Federal Ministry of Education and Research under grant number 01IS14004 (project iPRODICT).

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