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DDPM

A Simple implementation of DDPM model in PyTorch.

It's just for fun, the Unet model does not include attention, normalization, etc.

Traning

Before training, please set up the config.ini file:

[unet]
batch_size = 256
time_emb_dim = 128
device = cuda
epoch_num = 500
learning_rate = 1e-4

[ddpm]
iteration = 500

To start training, run:

$ python train.py

Sampling

To generate 16 pictures, run the following command:

The pictures will be output to the ./output directory.

$ python sample 16