generative-models - Collection of generative models, e.g. GAN, VAE in Pytorch and Tensorflow.

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Collection of generative models, e.g. GAN, VAE in Pytorch and Tensorflow. Also present here are RBM and Helmholtz Machine. Generated samples will be stored in GAN/{gan_model}/out (or VAE/{vae_model}/out, etc) directory during training.

http://wiseodd.github.io
https://github.com/wiseodd/generative-models

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