vae-pytorch
Here are 45 public repositories matching this topic...
A new version of world models using Echo-state networks and random weight-fixed CNNs
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Jun 1, 2020 - Python
Pytorch Implementation of Hou, Shen, Sun, Qiu, "Deep Feature Consistent Variational Autoencoder", 2016
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Aug 21, 2020 - Python
VAE with RealNVP prior and Super-Resolution VAE in PyTorch. Code release for https://arxiv.org/abs/2006.05218.
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Sep 1, 2020 - Python
simple VAE pytorch implementation
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May 20, 2021 - Python
Variational Autoencoder using the MNIST dataset. Also included, is an ANN and CNN for MNIST as well. Coded in Python, uses PyTorch
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Aug 24, 2021 - Python
A repository for generating synthetic data (images) using various DL/ML models.
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Aug 30, 2021 - Python
Recommender system for songs using different neural networks: MLP, VAE and flow
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Nov 28, 2021 - Python
Implementation of CVAE. Trained CVAE on faces from UTKFace Dataset to produce synthetic faces with a given degree of happiness/smileyness.
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Dec 13, 2021 - Python
Official PyTorch implementation of A Quaternion-Valued Variational Autoencoder (QVAE).
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Mar 30, 2022 - Python
A simple variational autoencoder
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Apr 21, 2022 - Python
Variational Autoencoders. This implements and pokes the original VAE in < 100 lines.
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Jun 2, 2022 - Python
A collection of different latent variable and generative models
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Jun 8, 2022 - Python
Applying VAE and DGM families to JATS personality survey database in PyTorch
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Jun 27, 2022 - Python
A re-implementation of the Sentence VAE paper, Generating Sentences from a Continuous Space
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Sep 22, 2022 - Python
Code to reproduce the results of the ICML 2022 paper "Mitigating Modality Collapse in Multimodal VAEs via Impartial Optimization."
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Oct 23, 2022 - Python
A pytorch implementation of Variational Autoencoder (VAE) and Conditional Variational Autoencoder (CVAE) on the MNIST dataset
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Nov 2, 2022 - Python
Code for paper: P.J. Bentley, S.L. Lim, A. Gaier and L. Tran. (2022). COIL: Constrained Optimization in Learned Latent Space. Learning Representations for Valid Solutions. ACM Genetic and Evolutionary Computation Conference (GECCO'22) Companion, ACM, pp. 1870–1877.
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Nov 18, 2022 - Python
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