This trains a small model on CIFAR 10 to test how much distillation benefits.
13import torch.nn as nn
14
15from labml import experiment, logger
16from labml.configs import option
17from labml_nn.experiments.cifar10 import CIFAR10Configs, CIFAR10VGGModel
18from labml_nn.normalization.batch_norm import BatchNormWe use CIFAR10Configs
 which defines all the dataset related configurations, optimizer, and a training loop.
21class Configs(CIFAR10Configs):28    pass31class SmallModel(CIFAR10VGGModel):Create a convolution layer and the activations
38    def conv_block(self, in_channels, out_channels) -> nn.Module:42        return nn.Sequential(Convolution layer
44            nn.Conv2d(in_channels, out_channels, kernel_size=3, padding=1),Batch normalization
46            BatchNorm(out_channels, track_running_stats=False),ReLU activation
48            nn.ReLU(inplace=True),
49        )51    def __init__(self):Create a model with given convolution sizes (channels)
53        super().__init__([[32, 32], [64, 64], [128], [128], [128]])56@option(Configs.model)
57def _small_model(c: Configs):61    return SmallModel().to(c.device)64def main():Create experiment
66    experiment.create(name='cifar10', comment='small model')Create configurations
68    conf = Configs()Load configurations
70    experiment.configs(conf, {
71        'optimizer.optimizer': 'Adam',
72        'optimizer.learning_rate': 2.5e-4,
73    })Set model for saving/loading
75    experiment.add_pytorch_models({'model': conf.model})Print number of parameters in the model
77    logger.inspect(params=(sum(p.numel() for p in conf.model.parameters() if p.requires_grad)))Start the experiment and run the training loop
79    with experiment.start():
80        conf.run()84if __name__ == '__main__':
85    main()