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| | from diffusers import DiffusionPipeline |
| | import tqdm |
| | import torch |
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|
| | class DDPM(DiffusionPipeline): |
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| | modeling_file = "modeling_ddpm.py" |
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| | def __init__(self, unet, noise_scheduler): |
| | super().__init__() |
| | self.register_modules(unet=unet, noise_scheduler=noise_scheduler) |
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| | def __call__(self, batch_size=1, generator=None, torch_device=None): |
| | if torch_device is None: |
| | torch_device = "cuda" if torch.cuda.is_available() else "cpu" |
| |
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| | self.unet.to(torch_device) |
| | |
| | image = self.noise_scheduler.sample_noise((batch_size, self.unet.in_channels, self.unet.resolution, self.unet.resolution), device=torch_device, generator=generator) |
| | for t in tqdm.tqdm(reversed(range(len(self.noise_scheduler))), total=len(self.noise_scheduler)): |
| | |
| | clip_image_coeff = 1 / torch.sqrt(self.noise_scheduler.get_alpha_prod(t)) |
| | clip_noise_coeff = torch.sqrt(1 / self.noise_scheduler.get_alpha_prod(t) - 1) |
| | image_coeff = (1 - self.noise_scheduler.get_alpha_prod(t - 1)) * torch.sqrt(self.noise_scheduler.get_alpha(t)) / (1 - self.noise_scheduler.get_alpha_prod(t)) |
| | clip_coeff = torch.sqrt(self.noise_scheduler.get_alpha_prod(t - 1)) * self.noise_scheduler.get_beta(t) / (1 - self.noise_scheduler.get_alpha_prod(t)) |
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| | |
| | with torch.no_grad(): |
| | noise_residual = self.unet(image, t) |
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| | pred_mean = clip_image_coeff * image - clip_noise_coeff * noise_residual |
| | pred_mean = torch.clamp(pred_mean, -1, 1) |
| | prev_image = clip_coeff * pred_mean + image_coeff * image |
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| | |
| | prev_variance = self.noise_scheduler.sample_variance(t, prev_image.shape, device=torch_device, generator=generator) |
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| | |
| | sampled_prev_image = prev_image + prev_variance |
| | image = sampled_prev_image |
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|
| | return image |
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