Treffer: Deepchecks: A Library for Testing and Validating Machine Learning Models and Data.
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This paper presents Deepchecks, a Python library for comprehensively validating machine learning models and data. Our goal is to provide an easy-to-use library comprising many checks related to various issues, such as model predictive performance, data integrity, data distribution mismatches, and more. The package is distributed under the GNU Affero General Public License (AGPL) and relies on core libraries from the scienti fic Python ecosystem: scikit-learn, PyTorch, NumPy, pandas, and SciPy. Source code, documentation, examples, and an extensive user guide can be found at https://github.com/deepchecks/deepchecks and https://docs.deepchecks.com/. [ABSTRACT FROM AUTHOR]
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