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https://github.com/lucidrains/DALLE2-pytorch.git
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2 Commits
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3676ef4d49 | ||
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28e944f328 |
@@ -264,7 +264,7 @@ class OpenAIClipAdapter(BaseClipAdapter):
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text_embed = self.clip.encode_text(text)
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text_encodings = self.text_encodings
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del self.text_encodings
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return EmbeddedText(text_embed.float(), text_encodings.float(), text_mask)
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return EmbeddedText(l2norm(text_embed.float()), text_encodings.float(), text_mask)
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@torch.no_grad()
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def embed_image(self, image):
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@@ -272,7 +272,7 @@ class OpenAIClipAdapter(BaseClipAdapter):
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image = resize_image_to(image, self.image_size)
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image = self.clip_normalize(unnormalize_img(image))
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image_embed = self.clip.encode_image(image)
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return EmbeddedImage(image_embed.float(), None)
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return EmbeddedImage(l2norm(image_embed.float()), None)
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# classifier free guidance functions
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@@ -3,14 +3,15 @@ import copy
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from random import choice
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from pathlib import Path
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from shutil import rmtree
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from PIL import Image
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import torch
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from torch import nn
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from PIL import Image
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from torchvision.datasets import ImageFolder
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import torchvision.transforms as T
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from torch.cuda.amp import autocast, GradScaler
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from torch.utils.data import Dataset, DataLoader, random_split
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import torchvision.transforms as T
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from torchvision.datasets import ImageFolder
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from torchvision.utils import make_grid, save_image
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from einops import rearrange
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@@ -99,6 +100,7 @@ class VQGanVAETrainer(nn.Module):
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ema_update_after_step = 2000,
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ema_update_every = 10,
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apply_grad_penalty_every = 4,
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amp = False
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):
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super().__init__()
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assert isinstance(vae, VQGanVAE), 'vae must be instance of VQGanVAE'
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@@ -120,6 +122,10 @@ class VQGanVAETrainer(nn.Module):
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self.optim = get_optimizer(vae_parameters, lr = lr, wd = wd)
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self.discr_optim = get_optimizer(discr_parameters, lr = lr, wd = wd)
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self.amp = amp
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self.scaler = GradScaler(enabled = amp)
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self.discr_scaler = GradScaler(enabled = amp)
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# create dataset
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self.ds = ImageDataset(folder, image_size = image_size)
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@@ -178,20 +184,22 @@ class VQGanVAETrainer(nn.Module):
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img = next(self.dl)
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img = img.to(device)
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loss = self.vae(
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img,
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return_loss = True,
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apply_grad_penalty = apply_grad_penalty
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)
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with autocast(enabled = self.amp):
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loss = self.vae(
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img,
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return_loss = True,
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apply_grad_penalty = apply_grad_penalty
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)
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self.scaler.scale(loss / self.grad_accum_every).backward()
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accum_log(logs, {'loss': loss.item() / self.grad_accum_every})
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(loss / self.grad_accum_every).backward()
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self.optim.step()
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self.scaler.step(self.optim)
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self.scaler.update()
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self.optim.zero_grad()
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# update discriminator
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if exists(self.vae.discr):
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@@ -200,12 +208,15 @@ class VQGanVAETrainer(nn.Module):
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img = next(self.dl)
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img = img.to(device)
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loss = self.vae(img, return_discr_loss = True)
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with autocast(enabled = self.amp):
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loss = self.vae(img, return_discr_loss = True)
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self.discr_scaler.scale(loss / self.grad_accum_every).backward()
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accum_log(logs, {'discr_loss': loss.item() / self.grad_accum_every})
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(loss / self.grad_accum_every).backward()
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self.discr_optim.step()
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self.discr_scaler.step(self.discr_optim)
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self.discr_scaler.update()
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self.discr_optim.zero_grad()
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# log
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