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Scikit-learn estimator wrappers for pymer4 wrapped LME4 mixed effects models

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project-template - A template for scikit-learn contributions

project-template is a template project for scikit-learn compatible extensions.

It aids development of estimators that can be used in scikit-learn pipelines and (hyper)parameter search, while facilitating testing (including some API compliance), documentation, open source development, packaging, and continuous integration.

Refer to the documentation to modify the template for your own scikit-learn contribution.

Thank you for cleanly contributing to the scikit-learn ecosystem!

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