Metadata-Version: 2.1
Name: gmmvi
Version: 1.1
Summary: A library for learning Gaussian mixture models for variational inference
Author: Oleg Arenz
Author-email: oleg@holistic-robotics.de
License: MIT
Keywords: variational inference,machine learning
Classifier: Programming Language :: Python :: 3
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License-File: LICENSE
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GMMVI: Gaussian Mixture Model Variational Inference
===================================================

A framework for optimizing Gaussian mixture models for variational inference.
Please refer to the `online documentation <https://gmmvi.rtfd.io>`_ for details.
