Tune-sklearn is a package that integrates Ray Tune's hyperparameter tuning and scikit-learn's models, allowing users to optimize hyerparameter searching for sklearn using Tune's schedulers (more details in the Tune Documentation). Tune-sklearn follows the same API as scikit-learn's GridSearchCV, but allows for more flexibility in defining hyperparameter search regions, such as distributions to sample from.

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