GAN-MNIST

A simple yet effective DCGAN trained on the MNIST dataset using PyTorch, designed for data augmentation experiments.

🧠 Model Details

  • Architecture: Deep Convolutional GAN (DCGAN)
  • Generator/Discriminator: 3-layer CNN
  • Latent Dimension: 100
  • Epochs Trained: 20
  • Final FID Score: 24.16
  • Image Size: 28Γ—28 grayscale

πŸ“¦ Usage

from torch import load
from models.gan.model import Generator

# Load model
model = Generator(latent_dim=100, img_channels=1)
model.load_state_dict(load("generator.pt"))
model.eval()
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Dataset used to train ianisdev/gan-mnist