explabox 
 Model Explorer
 An exploratory tool for analyzing and understanding machine learning models
Explore/examine/explain/expose your model with the explabox!
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Language: Python 
last commit: 11 months ago   explainable-aiexplainable-mlfairnessinterpretable-machine-learningmachine-learningpythonresponsible-airobustness 
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