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generative-adversarial-networks's Introduction

Generative-Adversarial-Networks

Implementation of the paper Generative Adversarial Networks Using Knet Library for Julia.

Introduction

  • GANs are used to generate realistic looking samples.
  • MNIST model uses MLP to generate samples.
  • CNN is used for other datasets.
  • The model must be trained on a GPU machine.
  • If the dataset does not exist in the current directory, it will be downloaded.

Usage

$ julia gan_mnist.jl

$ julia gan_faces.jl

$ julia gan_cifar.jl

NOTE: To run the code, this line should be replaced with size(w,N-1) on your current Knet installation.

Generated Samples

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📝 TODO

  • Output images for CIFAR-10 dataset have low resolution.

📚 Tutorial

  • A tutorial for Generate Adversarial Networks can be found here.

Related Works

generative-adversarial-networks's People

Contributors

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Stargazers

David Lin avatar Rascaldom avatar Dong Zhiming avatar Marcelo Maciel avatar Esen Erdemgil avatar  avatar Yusuf Mertcan Kabadayi avatar Lei Wang avatar Ekin Akyürek avatar

Watchers

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Forkers

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