patrickvonplaten commited on
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Upload modeling_ddpm.py

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  1. modeling_ddpm.py +24 -26
modeling_ddpm.py CHANGED
@@ -14,15 +14,13 @@
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  # limitations under the License.
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- from diffusers import DiffusionPipeline
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- import tqdm
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  import torch
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- class DDPM(DiffusionPipeline):
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-
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- modeling_file = "modeling_ddpm.py"
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  def __init__(self, unet, noise_scheduler):
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  super().__init__()
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  self.register_modules(unet=unet, noise_scheduler=noise_scheduler)
@@ -32,30 +30,30 @@ class DDPM(DiffusionPipeline):
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  torch_device = "cuda" if torch.cuda.is_available() else "cpu"
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  self.unet.to(torch_device)
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- # 1. Sample gaussian noise
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- image = self.noise_scheduler.sample_noise((batch_size, self.unet.in_channels, self.unet.resolution, self.unet.resolution), device=torch_device, generator=generator)
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- for t in tqdm.tqdm(reversed(range(len(self.noise_scheduler))), total=len(self.noise_scheduler)):
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- # i) define coefficients for time step t
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- clip_image_coeff = 1 / torch.sqrt(self.noise_scheduler.get_alpha_prod(t))
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- clip_noise_coeff = torch.sqrt(1 / self.noise_scheduler.get_alpha_prod(t) - 1)
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- 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))
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- 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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-
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- # ii) predict noise residual
 
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  with torch.no_grad():
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- noise_residual = self.unet(image, t)
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- # iii) compute predicted image from residual
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- # See 2nd formula at https://github.com/hojonathanho/diffusion/issues/5#issue-896554416 for comparison
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- pred_mean = clip_image_coeff * image - clip_noise_coeff * noise_residual
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- pred_mean = torch.clamp(pred_mean, -1, 1)
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- prev_image = clip_coeff * pred_mean + image_coeff * image
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- # iv) sample variance
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- prev_variance = self.noise_scheduler.sample_variance(t, prev_image.shape, device=torch_device, generator=generator)
 
 
 
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- # v) sample x_{t-1} ~ N(prev_image, prev_variance)
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- sampled_prev_image = prev_image + prev_variance
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- image = sampled_prev_image
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  return image
 
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  # limitations under the License.
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  import torch
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+ import tqdm
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+ from diffusers import DiffusionPipeline
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+ class DDPM(DiffusionPipeline):
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  def __init__(self, unet, noise_scheduler):
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  super().__init__()
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  self.register_modules(unet=unet, noise_scheduler=noise_scheduler)
 
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  torch_device = "cuda" if torch.cuda.is_available() else "cpu"
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  self.unet.to(torch_device)
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+
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+ # Sample gaussian noise to begin loop
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+ image = self.noise_scheduler.sample_noise(
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+ (batch_size, self.unet.in_channels, self.unet.resolution, self.unet.resolution),
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+ device=torch_device,
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+ generator=generator,
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+ )
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+
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+ num_prediction_steps = len(self.noise_scheduler)
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+ for t in tqdm.tqdm(reversed(range(num_prediction_steps)), total=num_prediction_steps):
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+ # 1. predict noise residual
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  with torch.no_grad():
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+ residual = self.unet(image, t)
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+ # 2. predict previous mean of image x_t-1
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+ pred_prev_image = self.noise_scheduler.compute_prev_image_step(residual, image, t)
 
 
 
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+ # 3. optionally sample variance
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+ variance = 0
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+ if t > 0:
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+ noise = self.noise_scheduler.sample_noise(image.shape, device=image.device, generator=generator)
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+ variance = self.noise_scheduler.get_variance(t).sqrt() * noise
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+ # 4. set current image to prev_image: x_t -> x_t-1
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+ image = pred_prev_image + variance
 
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  return image