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- from pathlib import Path
- import numpy as np
- import torch
- from torchvision.utils import make_grid, save_image
- from tinygrad.nn.state import get_parameters
- from tinygrad.tensor import Tensor
- from tinygrad.helpers import trange
- from tinygrad.nn import optim
- from extra.datasets import fetch_mnist
- class LinearGen:
- def __init__(self):
- self.l1 = Tensor.scaled_uniform(128, 256)
- self.l2 = Tensor.scaled_uniform(256, 512)
- self.l3 = Tensor.scaled_uniform(512, 1024)
- self.l4 = Tensor.scaled_uniform(1024, 784)
- def forward(self, x):
- x = x.dot(self.l1).leakyrelu(0.2)
- x = x.dot(self.l2).leakyrelu(0.2)
- x = x.dot(self.l3).leakyrelu(0.2)
- x = x.dot(self.l4).tanh()
- return x
- class LinearDisc:
- def __init__(self):
- self.l1 = Tensor.scaled_uniform(784, 1024)
- self.l2 = Tensor.scaled_uniform(1024, 512)
- self.l3 = Tensor.scaled_uniform(512, 256)
- self.l4 = Tensor.scaled_uniform(256, 2)
- def forward(self, x):
- # balance the discriminator inputs with const bias (.add(1))
- x = x.dot(self.l1).add(1).leakyrelu(0.2).dropout(0.3)
- x = x.dot(self.l2).leakyrelu(0.2).dropout(0.3)
- x = x.dot(self.l3).leakyrelu(0.2).dropout(0.3)
- x = x.dot(self.l4).log_softmax()
- return x
- def make_batch(images):
- sample = np.random.randint(0, len(images), size=(batch_size))
- image_b = images[sample].reshape(-1, 28*28).astype(np.float32) / 127.5 - 1.0
- return Tensor(image_b)
- def make_labels(bs, col, val=-2.0):
- y = np.zeros((bs, 2), np.float32)
- y[range(bs), [col] * bs] = val # Can we do label smoothing? i.e -2.0 changed to -1.98789.
- return Tensor(y)
- def train_discriminator(optimizer, data_real, data_fake):
- real_labels = make_labels(batch_size, 1)
- fake_labels = make_labels(batch_size, 0)
- optimizer.zero_grad()
- output_real = discriminator.forward(data_real)
- output_fake = discriminator.forward(data_fake)
- loss_real = (output_real * real_labels).mean()
- loss_fake = (output_fake * fake_labels).mean()
- loss_real.backward()
- loss_fake.backward()
- optimizer.step()
- return (loss_real + loss_fake).numpy()
- def train_generator(optimizer, data_fake):
- real_labels = make_labels(batch_size, 1)
- optimizer.zero_grad()
- output = discriminator.forward(data_fake)
- loss = (output * real_labels).mean()
- loss.backward()
- optimizer.step()
- return loss.numpy()
- if __name__ == "__main__":
- # data for training and validation
- images_real = np.vstack(fetch_mnist()[::2])
- ds_noise = Tensor.randn(64, 128, requires_grad=False)
- # parameters
- epochs, batch_size, k = 300, 512, 1
- sample_interval = epochs // 10
- n_steps = len(images_real) // batch_size
- # models and optimizer
- generator = LinearGen()
- discriminator = LinearDisc()
- # path to store results
- output_dir = Path(".").resolve() / "outputs"
- output_dir.mkdir(exist_ok=True)
- # optimizers
- optim_g = optim.Adam(get_parameters(generator),lr=0.0002, b1=0.5) # 0.0002 for equilibrium!
- optim_d = optim.Adam(get_parameters(discriminator),lr=0.0002, b1=0.5)
- # training loop
- Tensor.training = True
- for epoch in (t := trange(epochs)):
- loss_g, loss_d = 0.0, 0.0
- for _ in range(n_steps):
- data_real = make_batch(images_real)
- for step in range(k): # Try with k = 5 or 7.
- noise = Tensor.randn(batch_size, 128)
- data_fake = generator.forward(noise).detach()
- loss_d += train_discriminator(optim_d, data_real, data_fake)
- noise = Tensor.randn(batch_size, 128)
- data_fake = generator.forward(noise)
- loss_g += train_generator(optim_g, data_fake)
- if (epoch + 1) % sample_interval == 0:
- fake_images = generator.forward(ds_noise).detach().numpy()
- fake_images = (fake_images.reshape(-1, 1, 28, 28) + 1) / 2 # 0 - 1 range.
- save_image(make_grid(torch.tensor(fake_images)), output_dir / f"image_{epoch+1}.jpg")
- t.set_description(f"Generator loss: {loss_g/n_steps}, Discriminator loss: {loss_d/n_steps}")
- print("Training Completed!")
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