Implementation of GD-VAEs in PyTorch.
Project description
PyTorch implementation of GD-VAEs.
NOTE: The package is still being packaged for pip. Please sign-up below for Google-Form for mailing list announcing soon this code release: https://forms.gle/mJSRRrqMo8CwFKRC7
If you find these codes or methods helpful for your project, please cite:
@article{lopez_atzberger_gd_vae_2022,
title={GD-VAEs: Geometric Dynamic Variational Autoencoders for
Learning Non-linear Dynamics and Dimension Reductions},
author={Ryan Lopez, Paul J. Atzberger},
journal={arXiv:2206.05183},
month={June},
year={2022},
url={http://arxiv.org/abs/2206.05183}
}
Source code and additional information for this package available at https://github.com/gd-vae and http://atzberger.org.
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