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Evaluate machine-learning models

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Test status code coverage audmetric's documentation audmetric's supported Python versions audmetric's MIT license

audmetric includes several equations to estimate the performance of a machine learning prediction algorithm.

Some of the metrics are also available in sklearn, but we wanted to have a package which depends only on numpy. For those metrics we included tests that the results are identical to sklearn.

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