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Generative Adversarial Network(GAN) to recreate MNIST dataset.

Open ShashankP19 opened this issue 6 years ago • 1 comments

Description

In a Generative Adversarial Network (GAN), one neural network, called the generator, generates new data instances, while the other, the discriminator, evaluates them for authenticity; i.e. the discriminator decides whether each instance of data it reviews belongs to the actual training dataset or not. Build a Generative Adversarial Network(GAN) to recreate MNIST dataset. It should consist of two networks - the generator network and discriminator network.

Details

  • Technical Specifications: python, tensorflow, keras
  • Type of issue: Single
  • Time Limit: 5 days

Issue requirements / progress

  • [ ] Create a generator network
  • [ ] Create a discriminator network
  • [ ] Combine the generator and discriminator networks

Resources

Directory Structure

Place your solution in /machine_learning/gan/mnist/<your_solution_file>

Note

Please claim the issue first by commenting here before starting to work on it.

ShashankP19 avatar Oct 07 '18 10:10 ShashankP19

I already did one, a DCGAN, if you want a gan to work with your data, I can share this one. To a mnist gan I have to prepare it

MuriloAndre2000 avatar Oct 26 '18 16:10 MuriloAndre2000