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https://github.com/lucidrains/DALLE2-pytorch.git
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add diffusion prior trainer, which automatically takes care of the exponential moving average (training and sampling), as well as mixed precision, gradient clipping
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62
README.md
62
README.md
@@ -786,6 +786,68 @@ mock_image_embed = torch.randn(4, 512).cuda()
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images = decoder_trainer.sample(mock_image_embed, text = text) # (4, 3, 256, 256)
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```
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### Diffusion Prior Training
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Similarly, one can use the `DiffusionPriorTrainer` to automatically instantiate and keep track of an exponential moving averaged prior.
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```python
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import torch
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from dalle2_pytorch import DALLE2, DiffusionPriorNetwork, DiffusionPrior, DiffusionPriorTrainer, Unet, Decoder, CLIP
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clip = CLIP(
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dim_text = 512,
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dim_image = 512,
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dim_latent = 512,
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num_text_tokens = 49408,
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text_enc_depth = 6,
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text_seq_len = 256,
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text_heads = 8,
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visual_enc_depth = 6,
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visual_image_size = 256,
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visual_patch_size = 32,
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visual_heads = 8
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).cuda()
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# mock data
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text = torch.randint(0, 49408, (4, 256)).cuda()
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images = torch.randn(4, 3, 256, 256).cuda()
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# prior networks (with transformer)
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prior_network = DiffusionPriorNetwork(
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dim = 512,
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depth = 6,
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dim_head = 64,
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heads = 8
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).cuda()
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diffusion_prior = DiffusionPrior(
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net = prior_network,
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clip = clip,
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timesteps = 100,
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cond_drop_prob = 0.2
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).cuda()
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diffusion_prior_trainer = DiffusionPriorTrainer(
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diffusion_prior,
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lr = 3e-4,
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wd = 1e-2,
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ema_beta = 0.99,
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ema_update_after_step = 1000,
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ema_update_every = 10,
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)
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loss = diffusion_prior_trainer(text, images)
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loss.backward()
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diffusion_prior_trainer.update() # this will update the optimizer as well as the exponential moving averaged diffusion prior
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# after much of the above three lines in a loop
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# you can sample from the exponential moving average of the diffusion prior identically to how you do so for DiffusionPrior
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image_embeds = diffusion_prior_trainer.sample(text) # (4, 512) - exponential moving averaged image embeddings
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```
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### Decoder Dataloaders
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In order to make loading data simple and efficient, we include some general dataloaders that can be used to train portions of the network.
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@@ -1,6 +1,6 @@
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from dalle2_pytorch.dalle2_pytorch import DALLE2, DiffusionPriorNetwork, DiffusionPrior, Unet, Decoder
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from dalle2_pytorch.dalle2_pytorch import OpenAIClipAdapter
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from dalle2_pytorch.train import DecoderTrainer
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from dalle2_pytorch.train import DecoderTrainer, DiffusionPriorTrainer
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from dalle2_pytorch.vqgan_vae import VQGanVAE
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from x_clip import CLIP
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@@ -845,6 +845,18 @@ class DiffusionPrior(BaseGaussianDiffusion):
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loss = self.loss_fn(pred, target)
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return loss
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@torch.inference_mode()
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@eval_decorator
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def sample_batch_size(self, batch_size, text_cond):
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device = self.betas.device
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shape = (batch_size, self.image_embed_dim)
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img = torch.randn(shape, device = device)
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for i in tqdm(reversed(range(0, self.num_timesteps)), desc = 'sampling loop time step', total = self.num_timesteps):
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img = self.p_sample(img, torch.full((batch_size,), i, device = device, dtype = torch.long), text_cond = text_cond)
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return img
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@torch.inference_mode()
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@eval_decorator
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def sample(self, text, num_samples_per_batch = 2):
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@@ -5,7 +5,7 @@ import torch
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from torch import nn
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from torch.cuda.amp import autocast, GradScaler
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from dalle2_pytorch.dalle2_pytorch import Decoder
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from dalle2_pytorch.dalle2_pytorch import Decoder, DiffusionPrior
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from dalle2_pytorch.optimizer import get_optimizer
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# helper functions
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@@ -89,7 +89,83 @@ class EMA(nn.Module):
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def __call__(self, *args, **kwargs):
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return self.ema_model(*args, **kwargs)
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# trainers
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# diffusion prior trainer
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class DiffusionPriorTrainer(nn.Module):
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def __init__(
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self,
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diffusion_prior,
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use_ema = True,
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lr = 3e-4,
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wd = 1e-2,
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max_grad_norm = None,
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amp = False,
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**kwargs
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):
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super().__init__()
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assert isinstance(diffusion_prior, DiffusionPrior)
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ema_kwargs, kwargs = groupby_prefix_and_trim('ema_', kwargs)
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self.diffusion_prior = diffusion_prior
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# exponential moving average
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self.use_ema = use_ema
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if self.use_ema:
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self.ema_diffusion_prior = EMA(diffusion_prior, **ema_kwargs)
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# optimizer and mixed precision stuff
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self.amp = amp
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self.scaler = GradScaler(enabled = amp)
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self.optimizer = get_optimizer(
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diffusion_prior.parameters(),
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lr = lr,
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wd = wd,
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**kwargs
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)
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# gradient clipping if needed
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self.max_grad_norm = max_grad_norm
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def update(self):
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if exists(self.max_grad_norm):
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self.scaler.unscale_(self.optimizer)
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nn.utils.clip_grad_norm_(self.diffusion_prior.parameters(), self.max_grad_norm)
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self.scaler.step(self.optimizer)
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self.scaler.update()
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self.optimizer.zero_grad()
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if self.use_ema:
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self.ema_diffusion_prior.update()
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@torch.inference_mode()
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def p_sample_loop(self, *args, **kwargs):
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return self.ema_diffusion_prior.ema_model.p_sample_loop(*args, **kwargs)
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@torch.inference_mode()
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def sample(self, *args, **kwargs):
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return self.ema_diffusion_prior.ema_model.sample(*args, **kwargs)
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@torch.inference_mode()
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def sample_batch_size(self, *args, **kwargs):
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return self.ema_diffusion_prior.ema_model.sample_batch_size(*args, **kwargs)
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def forward(
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self,
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*args,
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divisor = 1,
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**kwargs
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):
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with autocast(enabled = self.amp):
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loss = self.diffusion_prior(*args, **kwargs)
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return self.scaler.scale(loss / divisor)
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# decoder trainer
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class DecoderTrainer(nn.Module):
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def __init__(
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