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136
README.md
136
README.md
@@ -706,7 +706,7 @@ mock_image_embed = torch.randn(1, 512).cuda()
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images = decoder.sample(mock_image_embed) # (1, 3, 1024, 1024)
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```
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## Training wrapper (wip)
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## Training wrapper
|
||||
|
||||
### Decoder Training
|
||||
|
||||
@@ -732,8 +732,8 @@ clip = CLIP(
|
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|
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# mock data
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|
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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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text = torch.randint(0, 49408, (32, 256)).cuda()
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images = torch.randn(32, 3, 256, 256).cuda()
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|
||||
# decoder (with unet)
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|
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@@ -774,8 +774,12 @@ decoder_trainer = DecoderTrainer(
|
||||
)
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||||
|
||||
for unet_number in (1, 2):
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loss = decoder_trainer(images, text = text, unet_number = unet_number) # use the decoder_trainer forward
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loss.backward()
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||||
loss = decoder_trainer(
|
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images,
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||||
text = text,
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unet_number = unet_number, # which unet to train on
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||||
max_batch_size = 4 # gradient accumulation - this sets the maximum batch size in which to do forward and backwards pass - for this example 32 / 4 == 8 times
|
||||
)
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||||
|
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decoder_trainer.update(unet_number) # update the specific unet as well as its exponential moving average
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|
||||
@@ -810,8 +814,8 @@ clip = CLIP(
|
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|
||||
# mock data
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|
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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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text = torch.randint(0, 49408, (32, 256)).cuda()
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images = torch.randn(32, 3, 256, 256).cuda()
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|
||||
# prior networks (with transformer)
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|
||||
@@ -838,8 +842,7 @@ diffusion_prior_trainer = DiffusionPriorTrainer(
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ema_update_every = 10,
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)
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||||
|
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loss = diffusion_prior_trainer(text, images)
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||||
loss.backward()
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loss = diffusion_prior_trainer(text, images, max_batch_size = 4)
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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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@@ -848,6 +851,57 @@ diffusion_prior_trainer.update() # this will update the optimizer as well as th
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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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## Bonus
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|
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### Unconditional Training
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|
||||
The repository also contains the means to train unconditional DDPM model, or even cascading DDPMs. You simply have to set `unconditional = True` in the `Decoder`
|
||||
|
||||
ex.
|
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|
||||
```python
|
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import torch
|
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from dalle2_pytorch import Unet, Decoder
|
||||
|
||||
# unet for the cascading ddpm
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||||
|
||||
unet1 = Unet(
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||||
dim = 128,
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||||
dim_mults=(1, 2, 4, 8)
|
||||
).cuda()
|
||||
|
||||
unet2 = Unet(
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||||
dim = 32,
|
||||
dim_mults = (1, 2, 4, 8, 16)
|
||||
).cuda()
|
||||
|
||||
# decoder, which contains the unets
|
||||
|
||||
decoder = Decoder(
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||||
unet = (unet1, unet2),
|
||||
image_sizes = (256, 512), # first unet up to 256px, then second to 512px
|
||||
timesteps = 1000,
|
||||
unconditional = True
|
||||
).cuda()
|
||||
|
||||
# mock images (get a lot of this)
|
||||
|
||||
images = torch.randn(1, 3, 512, 512).cuda()
|
||||
|
||||
# feed images into decoder
|
||||
|
||||
for i in (1, 2):
|
||||
loss = decoder(images, unet_number = i)
|
||||
loss.backward()
|
||||
|
||||
# do the above for many many many many steps
|
||||
# then it will learn to generate images
|
||||
|
||||
images = decoder.sample(batch_size = 2) # (2, 3, 512, 512)
|
||||
```
|
||||
|
||||
## Dataloaders
|
||||
|
||||
### Decoder Dataloaders
|
||||
|
||||
In order to make loading data simple and efficient, we include some general dataloaders that can be used to train portions of the network.
|
||||
@@ -892,14 +946,14 @@ dataset = ImageEmbeddingDataset(
|
||||
)
|
||||
```
|
||||
|
||||
## Scripts
|
||||
### Scripts (wip)
|
||||
|
||||
### Using the `train_diffusion_prior.py` script
|
||||
#### `train_diffusion_prior.py`
|
||||
|
||||
This script allows training the DiffusionPrior on pre-computed text and image embeddings. The working example below elucidates this process.
|
||||
Please note that the script internally passes text_embed and image_embed to the DiffusionPrior, unlike the example below.
|
||||
|
||||
### Usage
|
||||
#### Usage
|
||||
|
||||
```bash
|
||||
$ python train_diffusion_prior.py
|
||||
@@ -907,58 +961,49 @@ $ python train_diffusion_prior.py
|
||||
|
||||
The most significant parameters for the script are as follows:
|
||||
|
||||
--image-embed-url, default = "https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/img_emb/")
|
||||
- `image-embed-url`, default = `"https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/img_emb/"`
|
||||
|
||||
--text-embed-url, default = "https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/text_emb/")
|
||||
- `text-embed-url`, default = `"https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/text_emb/"`
|
||||
|
||||
--image-embed-dim, default=768 - 768 corresponds to the ViT iL/14 embedding size,change it to what your chosen ViT generates
|
||||
- `image-embed-dim`, default = `768` - 768 corresponds to the ViT iL/14 embedding size,change it to what your chosen ViT generates
|
||||
|
||||
--learning-rate, default=1.1e-4
|
||||
- `learning-rate`, default = `1.1e-4`
|
||||
|
||||
--weight-decay, default=6.02e-2
|
||||
- `weight-decay`, default = `6.02e-2`
|
||||
|
||||
--max-grad-norm, default=0.5
|
||||
- `max-grad-norm`, default = `0.5`
|
||||
|
||||
--batch-size, default=10 ** 4
|
||||
- `batch-size`, default = `10 ** 4`
|
||||
|
||||
--num-epochs, default=5
|
||||
- `num-epochs`, default = `5`
|
||||
|
||||
--clip, default=None # Signals the prior to use pre-computed embeddings
|
||||
- `clip`, default = `None` # Signals the prior to use pre-computed embeddings
|
||||
|
||||
### Sample wandb run log
|
||||
|
||||
Please find a sample wandb run log at : https://wandb.ai/laion/diffusion-prior/runs/1blxu24j
|
||||
|
||||
### Loading and saving the Diffusion Prior model
|
||||
#### Loading and Saving the DiffusionPrior model
|
||||
|
||||
Two methods are provided, load_diffusion_model and save_diffusion_model, the names being self-explanatory.
|
||||
|
||||
## from dalle2_pytorch.train import load_diffusion_model, save_diffusion_model
|
||||
```python
|
||||
from dalle2_pytorch.train import load_diffusion_model, save_diffusion_model
|
||||
```
|
||||
|
||||
##### Loading
|
||||
|
||||
load_diffusion_model(dprior_path, device)
|
||||
|
||||
dprior_path : path to saved model(.pth)
|
||||
|
||||
device : the cuda device you're running on
|
||||
|
||||
##### Saving
|
||||
|
||||
save_diffusion_model(save_path, model, optimizer, scaler, config, image_embed_dim)
|
||||
|
||||
save_path : path to save at
|
||||
|
||||
model : object of Diffusion_Prior
|
||||
|
||||
optimizer : optimizer object - see train_diffusion_prior.py for how to create one.
|
||||
|
||||
e.g: optimizer = get_optimizer(diffusion_prior.net.parameters(), wd=weight_decay, lr=learning_rate)
|
||||
|
||||
scaler : a GradScaler object.
|
||||
|
||||
e.g: scaler = GradScaler(enabled=amp)
|
||||
|
||||
config : config object created in train_diffusion_prior.py - see file for example.
|
||||
|
||||
image_embed_dim - the dimension of the image_embedding
|
||||
|
||||
e.g: 768
|
||||
|
||||
## CLI (wip)
|
||||
@@ -1004,6 +1049,7 @@ Once built, images will be saved to the same directory the command is invoked
|
||||
- [x] make sure the cascading ddpm in the repository can be trained unconditionally, offer a one-line CLI tool for training on a folder of images
|
||||
- [x] bring in cross-scale embedding from iclr paper https://github.com/lucidrains/vit-pytorch/blob/main/vit_pytorch/crossformer.py#L14
|
||||
- [x] cross embed layers for downsampling, as an option
|
||||
- [x] use an experimental tracker agnostic setup, as done <a href="https://github.com/lucidrains/tf-bind-transformer#simple-trainer-class-for-fine-tuning">here</a>
|
||||
- [ ] become an expert with unets, cleanup unet code, make it fully configurable, port all learnings over to https://github.com/lucidrains/x-unet (test out unet² in ddpm repo) - consider https://github.com/lucidrains/uformer-pytorch attention-based unet
|
||||
- [ ] transcribe code to Jax, which lowers the activation energy for distributed training, given access to TPUs
|
||||
- [ ] train on a toy task, offer in colab
|
||||
@@ -1011,12 +1057,15 @@ Once built, images will be saved to the same directory the command is invoked
|
||||
- [ ] extend diffusion head to use diffusion-gan (potentially using lightweight-gan) to speed up inference
|
||||
- [ ] figure out if possible to augment with external memory, as described in https://arxiv.org/abs/2204.11824
|
||||
- [ ] test out grid attention in cascading ddpm locally, decide whether to keep or remove
|
||||
- [ ] use an experimental tracker agnostic setup, as done <a href="https://github.com/lucidrains/tf-bind-transformer#simple-trainer-class-for-fine-tuning">here</a>
|
||||
- [ ] interface out the vqgan-vae so a pretrained one can be pulled off the shelf to validate latent diffusion + DALL-E2
|
||||
- [ ] make sure FILIP works with DALL-E2 from x-clip https://arxiv.org/abs/2111.07783
|
||||
- [ ] offer save / load methods on the trainer classes to automatically take care of state dicts for scalers / optimizers / saving versions and checking for breaking changes
|
||||
- [ ] bring in skip-layer excitatons (from lightweight gan paper) to see if it helps for either decoder of unet or vqgan-vae training
|
||||
- [ ] decoder needs one day worth of refactor for tech debt
|
||||
- [ ] allow for unet to be able to condition non-cross attention style as well
|
||||
- [ ] for all model classes with hyperparameters that changes the network architecture, make it requirement that they must expose a config property, and write a simple function that asserts that it restores the object correctly
|
||||
- [ ] for both diffusion prior and decoder, all exponential moving averaged models needs to be saved and restored as well (as well as the step number)
|
||||
- [ ] read the paper, figure it out, and build it https://github.com/lucidrains/DALLE2-pytorch/issues/89
|
||||
|
||||
## Citations
|
||||
|
||||
@@ -1105,4 +1154,13 @@ Once built, images will be saved to the same directory the command is invoked
|
||||
}
|
||||
```
|
||||
|
||||
```bibtex
|
||||
@article{ho2021cascaded,
|
||||
title = {Cascaded Diffusion Models for High Fidelity Image Generation},
|
||||
author = {Ho, Jonathan and Saharia, Chitwan and Chan, William and Fleet, David J and Norouzi, Mohammad and Salimans, Tim},
|
||||
journal = {arXiv preprint arXiv:2106.15282},
|
||||
year = {2021}
|
||||
}
|
||||
```
|
||||
|
||||
*Creating noise from data is easy; creating data from noise is generative modeling.* - <a href="https://arxiv.org/abs/2011.13456">Yang Song's paper</a>
|
||||
|
||||
@@ -1,6 +1,6 @@
|
||||
from dalle2_pytorch.dalle2_pytorch import DALLE2, DiffusionPriorNetwork, DiffusionPrior, Unet, Decoder
|
||||
from dalle2_pytorch.dalle2_pytorch import OpenAIClipAdapter
|
||||
from dalle2_pytorch.train import DecoderTrainer, DiffusionPriorTrainer
|
||||
from dalle2_pytorch.trainer import DecoderTrainer, DiffusionPriorTrainer
|
||||
|
||||
from dalle2_pytorch.vqgan_vae import VQGanVAE
|
||||
from x_clip import CLIP
|
||||
|
||||
@@ -1,7 +1,7 @@
|
||||
import math
|
||||
from tqdm import tqdm
|
||||
from inspect import isfunction
|
||||
from functools import partial
|
||||
from functools import partial, wraps
|
||||
from contextlib import contextmanager
|
||||
from collections import namedtuple
|
||||
from pathlib import Path
|
||||
@@ -45,6 +45,14 @@ def exists(val):
|
||||
def identity(t, *args, **kwargs):
|
||||
return t
|
||||
|
||||
def maybe(fn):
|
||||
@wraps(fn)
|
||||
def inner(x):
|
||||
if not exists(x):
|
||||
return x
|
||||
return fn(x)
|
||||
return inner
|
||||
|
||||
def default(val, d):
|
||||
if exists(val):
|
||||
return val
|
||||
@@ -53,6 +61,9 @@ def default(val, d):
|
||||
def cast_tuple(val, length = 1):
|
||||
return val if isinstance(val, tuple) else ((val,) * length)
|
||||
|
||||
def module_device(module):
|
||||
return next(module.parameters()).device
|
||||
|
||||
@contextmanager
|
||||
def null_context(*args, **kwargs):
|
||||
yield
|
||||
@@ -114,10 +125,10 @@ def resize_image_to(image, target_image_size):
|
||||
# ddpms expect images to be in the range of -1 to 1
|
||||
# but CLIP may otherwise
|
||||
|
||||
def normalize_img(img):
|
||||
def normalize_neg_one_to_one(img):
|
||||
return img * 2 - 1
|
||||
|
||||
def unnormalize_img(normed_img):
|
||||
def unnormalize_zero_to_one(normed_img):
|
||||
return (normed_img + 1) * 0.5
|
||||
|
||||
# clip related adapters
|
||||
@@ -606,7 +617,6 @@ class Attention(nn.Module):
|
||||
heads = 8,
|
||||
dropout = 0.,
|
||||
causal = False,
|
||||
post_norm = False,
|
||||
rotary_emb = None
|
||||
):
|
||||
super().__init__()
|
||||
@@ -616,7 +626,6 @@ class Attention(nn.Module):
|
||||
|
||||
self.causal = causal
|
||||
self.norm = LayerNorm(dim)
|
||||
self.post_norm = LayerNorm(dim) # sandwich norm from Coqview paper + Normformer
|
||||
self.dropout = nn.Dropout(dropout)
|
||||
|
||||
self.null_kv = nn.Parameter(torch.randn(2, dim_head))
|
||||
@@ -627,7 +636,7 @@ class Attention(nn.Module):
|
||||
|
||||
self.to_out = nn.Sequential(
|
||||
nn.Linear(inner_dim, dim, bias = False),
|
||||
LayerNorm(dim) if post_norm else nn.Identity()
|
||||
LayerNorm(dim)
|
||||
)
|
||||
|
||||
def forward(self, x, mask = None, attn_bias = None):
|
||||
@@ -684,8 +693,7 @@ class Attention(nn.Module):
|
||||
out = einsum('b h i j, b j d -> b h i d', attn, v)
|
||||
|
||||
out = rearrange(out, 'b h n d -> b n (h d)')
|
||||
out = self.to_out(out)
|
||||
return self.post_norm(out)
|
||||
return self.to_out(out)
|
||||
|
||||
class CausalTransformer(nn.Module):
|
||||
def __init__(
|
||||
@@ -711,7 +719,7 @@ class CausalTransformer(nn.Module):
|
||||
self.layers = nn.ModuleList([])
|
||||
for _ in range(depth):
|
||||
self.layers.append(nn.ModuleList([
|
||||
Attention(dim = dim, causal = True, dim_head = dim_head, heads = heads, dropout = attn_dropout, post_norm = normformer, rotary_emb = rotary_emb),
|
||||
Attention(dim = dim, causal = True, dim_head = dim_head, heads = heads, dropout = attn_dropout, rotary_emb = rotary_emb),
|
||||
FeedForward(dim = dim, mult = ff_mult, dropout = ff_dropout, post_activation_norm = normformer)
|
||||
]))
|
||||
|
||||
@@ -789,7 +797,7 @@ class DiffusionPriorNetwork(nn.Module):
|
||||
text_embed,
|
||||
text_encodings = None,
|
||||
mask = None,
|
||||
cond_drop_prob = 0.2
|
||||
cond_drop_prob = 0.
|
||||
):
|
||||
batch, dim, device, dtype = *image_embed.shape, image_embed.device, image_embed.dtype
|
||||
|
||||
@@ -896,6 +904,7 @@ class DiffusionPrior(BaseGaussianDiffusion):
|
||||
self.channels = default(image_channels, lambda: clip.image_channels)
|
||||
|
||||
self.cond_drop_prob = cond_drop_prob
|
||||
self.can_classifier_guidance = cond_drop_prob > 0.
|
||||
self.condition_on_text_encodings = condition_on_text_encodings
|
||||
|
||||
# in paper, they do not predict the noise, but predict x0 directly for image embedding, claiming empirically better results. I'll just offer both.
|
||||
@@ -909,8 +918,10 @@ class DiffusionPrior(BaseGaussianDiffusion):
|
||||
self.training_clamp_l2norm = training_clamp_l2norm
|
||||
self.init_image_embed_l2norm = init_image_embed_l2norm
|
||||
|
||||
def p_mean_variance(self, x, t, text_cond, clip_denoised: bool):
|
||||
pred = self.net(x, t, **text_cond)
|
||||
def p_mean_variance(self, x, t, text_cond, clip_denoised = False, cond_scale = 1.):
|
||||
assert not (cond_scale != 1. and not self.can_classifier_guidance), 'the model was not trained with conditional dropout, and thus one cannot use classifier free guidance (cond_scale anything other than 1)'
|
||||
|
||||
pred = self.net.forward_with_cond_scale(x, t, cond_scale = cond_scale, **text_cond)
|
||||
|
||||
if self.predict_x_start:
|
||||
x_recon = pred
|
||||
@@ -928,17 +939,17 @@ class DiffusionPrior(BaseGaussianDiffusion):
|
||||
model_mean, posterior_variance, posterior_log_variance = self.q_posterior(x_start=x_recon, x_t=x, t=t)
|
||||
return model_mean, posterior_variance, posterior_log_variance
|
||||
|
||||
@torch.inference_mode()
|
||||
def p_sample(self, x, t, text_cond = None, clip_denoised = True, repeat_noise = False):
|
||||
@torch.no_grad()
|
||||
def p_sample(self, x, t, text_cond = None, clip_denoised = True, repeat_noise = False, cond_scale = 1.):
|
||||
b, *_, device = *x.shape, x.device
|
||||
model_mean, _, model_log_variance = self.p_mean_variance(x = x, t = t, text_cond = text_cond, clip_denoised = clip_denoised)
|
||||
model_mean, _, model_log_variance = self.p_mean_variance(x = x, t = t, text_cond = text_cond, clip_denoised = clip_denoised, cond_scale = cond_scale)
|
||||
noise = noise_like(x.shape, device, repeat_noise)
|
||||
# no noise when t == 0
|
||||
nonzero_mask = (1 - (t == 0).float()).reshape(b, *((1,) * (len(x.shape) - 1)))
|
||||
return model_mean + nonzero_mask * (0.5 * model_log_variance).exp() * noise
|
||||
|
||||
@torch.inference_mode()
|
||||
def p_sample_loop(self, shape, text_cond):
|
||||
@torch.no_grad()
|
||||
def p_sample_loop(self, shape, text_cond, cond_scale = 1.):
|
||||
device = self.betas.device
|
||||
|
||||
b = shape[0]
|
||||
@@ -949,7 +960,7 @@ class DiffusionPrior(BaseGaussianDiffusion):
|
||||
|
||||
for i in tqdm(reversed(range(0, self.num_timesteps)), desc='sampling loop time step', total=self.num_timesteps):
|
||||
times = torch.full((b,), i, device = device, dtype = torch.long)
|
||||
image_embed = self.p_sample(image_embed, times, text_cond = text_cond)
|
||||
image_embed = self.p_sample(image_embed, times, text_cond = text_cond, cond_scale = cond_scale)
|
||||
|
||||
return image_embed
|
||||
|
||||
@@ -973,21 +984,21 @@ class DiffusionPrior(BaseGaussianDiffusion):
|
||||
loss = self.loss_fn(pred, target)
|
||||
return loss
|
||||
|
||||
@torch.inference_mode()
|
||||
@torch.no_grad()
|
||||
@eval_decorator
|
||||
def sample_batch_size(self, batch_size, text_cond):
|
||||
def sample_batch_size(self, batch_size, text_cond, cond_scale = 1.):
|
||||
device = self.betas.device
|
||||
shape = (batch_size, self.image_embed_dim)
|
||||
|
||||
img = torch.randn(shape, device = device)
|
||||
|
||||
for i in tqdm(reversed(range(0, self.num_timesteps)), desc = 'sampling loop time step', total = self.num_timesteps):
|
||||
img = self.p_sample(img, torch.full((batch_size,), i, device = device, dtype = torch.long), text_cond = text_cond)
|
||||
img = self.p_sample(img, torch.full((batch_size,), i, device = device, dtype = torch.long), text_cond = text_cond, cond_scale = cond_scale)
|
||||
return img
|
||||
|
||||
@torch.inference_mode()
|
||||
@torch.no_grad()
|
||||
@eval_decorator
|
||||
def sample(self, text, num_samples_per_batch = 2):
|
||||
def sample(self, text, num_samples_per_batch = 2, cond_scale = 1.):
|
||||
# in the paper, what they did was
|
||||
# sample 2 image embeddings, choose the top 1 similarity, as judged by CLIP
|
||||
text = repeat(text, 'b ... -> (b r) ...', r = num_samples_per_batch)
|
||||
@@ -1002,7 +1013,7 @@ class DiffusionPrior(BaseGaussianDiffusion):
|
||||
if self.condition_on_text_encodings:
|
||||
text_cond = {**text_cond, 'text_encodings': text_encodings, 'mask': text_mask}
|
||||
|
||||
image_embeds = self.p_sample_loop((batch_size, image_embed_dim), text_cond = text_cond)
|
||||
image_embeds = self.p_sample_loop((batch_size, image_embed_dim), text_cond = text_cond, cond_scale = cond_scale)
|
||||
|
||||
# retrieve original unscaled image embed
|
||||
|
||||
@@ -1037,7 +1048,7 @@ class DiffusionPrior(BaseGaussianDiffusion):
|
||||
assert not (self.condition_on_text_encodings and (not exists(text_encodings) and not exists(text))), 'text encodings must be present if you specified you wish to condition on it on initialization'
|
||||
|
||||
if exists(image):
|
||||
image_embed, _ = self.clip.embed_image(unnormalize_img(image))
|
||||
image_embed, _ = self.clip.embed_image(image)
|
||||
|
||||
# calculate text conditionings, based on what is passed in
|
||||
|
||||
@@ -1158,6 +1169,7 @@ class CrossAttention(nn.Module):
|
||||
dim_head = 64,
|
||||
heads = 8,
|
||||
dropout = 0.,
|
||||
norm_context = False
|
||||
):
|
||||
super().__init__()
|
||||
self.scale = dim_head ** -0.5
|
||||
@@ -1167,13 +1179,17 @@ class CrossAttention(nn.Module):
|
||||
context_dim = default(context_dim, dim)
|
||||
|
||||
self.norm = LayerNorm(dim)
|
||||
self.norm_context = LayerNorm(context_dim)
|
||||
self.norm_context = LayerNorm(context_dim) if norm_context else nn.Identity()
|
||||
self.dropout = nn.Dropout(dropout)
|
||||
|
||||
self.null_kv = nn.Parameter(torch.randn(2, dim_head))
|
||||
self.to_q = nn.Linear(dim, inner_dim, bias = False)
|
||||
self.to_kv = nn.Linear(context_dim, inner_dim * 2, bias = False)
|
||||
self.to_out = nn.Linear(inner_dim, dim, bias = False)
|
||||
|
||||
self.to_out = nn.Sequential(
|
||||
nn.Linear(inner_dim, dim, bias = False),
|
||||
LayerNorm(dim)
|
||||
)
|
||||
|
||||
def forward(self, x, context, mask = None):
|
||||
b, n, device = *x.shape[:2], x.device
|
||||
@@ -1295,7 +1311,7 @@ class Unet(nn.Module):
|
||||
self,
|
||||
dim,
|
||||
*,
|
||||
image_embed_dim,
|
||||
image_embed_dim = None,
|
||||
text_embed_dim = None,
|
||||
cond_dim = None,
|
||||
num_image_tokens = 4,
|
||||
@@ -1367,14 +1383,18 @@ class Unet(nn.Module):
|
||||
self.image_to_cond = nn.Sequential(
|
||||
nn.Linear(image_embed_dim, cond_dim * num_image_tokens),
|
||||
Rearrange('b (n d) -> b n d', n = num_image_tokens)
|
||||
) if image_embed_dim != cond_dim else nn.Identity()
|
||||
) if cond_on_image_embeds and image_embed_dim != cond_dim else nn.Identity()
|
||||
|
||||
self.norm_cond = nn.LayerNorm(cond_dim)
|
||||
self.norm_mid_cond = nn.LayerNorm(cond_dim)
|
||||
|
||||
# text encoding conditioning (optional)
|
||||
|
||||
self.text_to_cond = None
|
||||
|
||||
if cond_on_text_encodings:
|
||||
self.text_to_cond = nn.LazyLinear(cond_dim) if not exists(text_embed_dim) else nn.Linear(text_embed_dim, cond_dim)
|
||||
assert exists(text_embed_dim), 'text_embed_dim must be given to the unet if cond_on_text_encodings is True'
|
||||
self.text_to_cond = nn.Linear(text_embed_dim, cond_dim)
|
||||
|
||||
# finer control over whether to condition on image embeddings and text encodings
|
||||
# so one can have the latter unets in the cascading DDPMs only focus on super-resoluting
|
||||
@@ -1584,6 +1604,11 @@ class Unet(nn.Module):
|
||||
|
||||
mid_c = c if not exists(text_tokens) else torch.cat((c, text_tokens), dim = -2)
|
||||
|
||||
# normalize conditioning tokens
|
||||
|
||||
c = self.norm_cond(c)
|
||||
mid_c = self.norm_mid_cond(mid_c)
|
||||
|
||||
# go through the layers of the unet, down and up
|
||||
|
||||
hiddens = []
|
||||
@@ -1683,7 +1708,7 @@ class Decoder(BaseGaussianDiffusion):
|
||||
self.unconditional = unconditional
|
||||
assert not (condition_on_text_encodings and unconditional), 'unconditional decoder image generation cannot be set to True if conditioning on text is present'
|
||||
|
||||
assert exists(clip) ^ exists(image_size), 'either CLIP is supplied, or you must give the image_size and channels (usually 3 for RGB)'
|
||||
assert self.unconditional or (exists(clip) ^ exists(image_size)), 'either CLIP is supplied, or you must give the image_size and channels (usually 3 for RGB)'
|
||||
|
||||
self.clip = None
|
||||
if exists(clip):
|
||||
@@ -1774,6 +1799,7 @@ class Decoder(BaseGaussianDiffusion):
|
||||
|
||||
self.image_cond_drop_prob = image_cond_drop_prob
|
||||
self.text_cond_drop_prob = text_cond_drop_prob
|
||||
self.can_classifier_guidance = image_cond_drop_prob > 0. or text_cond_drop_prob > 0.
|
||||
|
||||
# whether to clip when sampling
|
||||
|
||||
@@ -1793,13 +1819,19 @@ class Decoder(BaseGaussianDiffusion):
|
||||
unet = self.get_unet(unet_number)
|
||||
|
||||
self.cuda()
|
||||
self.unets.cpu()
|
||||
|
||||
devices = [module_device(unet) for unet in self.unets]
|
||||
self.unets.cpu()
|
||||
unet.cuda()
|
||||
|
||||
yield
|
||||
unet.cpu()
|
||||
|
||||
for unet, device in zip(self.unets, devices):
|
||||
unet.to(device)
|
||||
|
||||
def p_mean_variance(self, unet, x, t, image_embed, text_encodings = None, text_mask = None, lowres_cond_img = None, clip_denoised = True, predict_x_start = False, learned_variance = False, cond_scale = 1., model_output = None):
|
||||
assert not (cond_scale != 1. and not self.can_classifier_guidance), 'the decoder was not trained with conditional dropout, and thus one cannot use classifier free guidance (cond_scale anything other than 1)'
|
||||
|
||||
pred = default(model_output, lambda: unet.forward_with_cond_scale(x, t, image_embed = image_embed, text_encodings = text_encodings, text_mask = text_mask, cond_scale = cond_scale, lowres_cond_img = lowres_cond_img))
|
||||
|
||||
if learned_variance:
|
||||
@@ -1821,14 +1853,14 @@ class Decoder(BaseGaussianDiffusion):
|
||||
# eq 15 - https://arxiv.org/abs/2102.09672
|
||||
min_log = extract(self.posterior_log_variance_clipped, t, x.shape)
|
||||
max_log = extract(torch.log(self.betas), t, x.shape)
|
||||
var_interp_frac = unnormalize_img(var_interp_frac_unnormalized)
|
||||
var_interp_frac = unnormalize_zero_to_one(var_interp_frac_unnormalized)
|
||||
|
||||
posterior_log_variance = var_interp_frac * max_log + (1 - var_interp_frac) * min_log
|
||||
posterior_variance = posterior_log_variance.exp()
|
||||
|
||||
return model_mean, posterior_variance, posterior_log_variance
|
||||
|
||||
@torch.inference_mode()
|
||||
@torch.no_grad()
|
||||
def p_sample(self, unet, x, t, image_embed, text_encodings = None, text_mask = None, cond_scale = 1., lowres_cond_img = None, predict_x_start = False, learned_variance = False, clip_denoised = True, repeat_noise = False):
|
||||
b, *_, device = *x.shape, x.device
|
||||
model_mean, _, model_log_variance = self.p_mean_variance(unet, x = x, t = t, image_embed = image_embed, text_encodings = text_encodings, text_mask = text_mask, cond_scale = cond_scale, lowres_cond_img = lowres_cond_img, clip_denoised = clip_denoised, predict_x_start = predict_x_start, learned_variance = learned_variance)
|
||||
@@ -1837,13 +1869,15 @@ class Decoder(BaseGaussianDiffusion):
|
||||
nonzero_mask = (1 - (t == 0).float()).reshape(b, *((1,) * (len(x.shape) - 1)))
|
||||
return model_mean + nonzero_mask * (0.5 * model_log_variance).exp() * noise
|
||||
|
||||
@torch.inference_mode()
|
||||
@torch.no_grad()
|
||||
def p_sample_loop(self, unet, shape, image_embed, predict_x_start = False, learned_variance = False, clip_denoised = True, lowres_cond_img = None, text_encodings = None, text_mask = None, cond_scale = 1):
|
||||
device = self.betas.device
|
||||
|
||||
b = shape[0]
|
||||
img = torch.randn(shape, device = device)
|
||||
|
||||
lowres_cond_img = maybe(normalize_neg_one_to_one)(lowres_cond_img)
|
||||
|
||||
for i in tqdm(reversed(range(0, self.num_timesteps)), desc = 'sampling loop time step', total = self.num_timesteps):
|
||||
img = self.p_sample(
|
||||
unet,
|
||||
@@ -1859,11 +1893,19 @@ class Decoder(BaseGaussianDiffusion):
|
||||
clip_denoised = clip_denoised
|
||||
)
|
||||
|
||||
return img
|
||||
unnormalize_img = unnormalize_zero_to_one(img)
|
||||
return unnormalize_img
|
||||
|
||||
def p_losses(self, unet, x_start, times, *, image_embed, lowres_cond_img = None, text_encodings = None, text_mask = None, predict_x_start = False, noise = None, learned_variance = False, clip_denoised = False):
|
||||
noise = default(noise, lambda: torch.randn_like(x_start))
|
||||
|
||||
# normalize to [-1, 1]
|
||||
|
||||
x_start = normalize_neg_one_to_one(x_start)
|
||||
lowres_cond_img = maybe(normalize_neg_one_to_one)(lowres_cond_img)
|
||||
|
||||
# get x_t
|
||||
|
||||
x_noisy = self.q_sample(x_start = x_start, t = times, noise = noise)
|
||||
|
||||
model_output = unet(
|
||||
@@ -1920,12 +1962,14 @@ class Decoder(BaseGaussianDiffusion):
|
||||
|
||||
return loss + vb_loss
|
||||
|
||||
@torch.inference_mode()
|
||||
@torch.no_grad()
|
||||
@eval_decorator
|
||||
def sample(
|
||||
self,
|
||||
image_embed = None,
|
||||
text = None,
|
||||
text_mask = None,
|
||||
text_encodings = None,
|
||||
batch_size = 1,
|
||||
cond_scale = 1.,
|
||||
stop_at_unet_number = None
|
||||
@@ -1935,8 +1979,8 @@ class Decoder(BaseGaussianDiffusion):
|
||||
if not self.unconditional:
|
||||
batch_size = image_embed.shape[0]
|
||||
|
||||
text_encodings = text_mask = None
|
||||
if exists(text):
|
||||
if exists(text) and not exists(text_encodings) and not self.unconditional:
|
||||
assert exists(self.clip)
|
||||
_, text_encodings, text_mask = self.clip.embed_text(text)
|
||||
|
||||
assert not (self.condition_on_text_encodings and not exists(text_encodings)), 'text or text encodings must be passed into decoder if specified'
|
||||
@@ -1960,8 +2004,7 @@ class Decoder(BaseGaussianDiffusion):
|
||||
image_size = vae.get_encoded_fmap_size(image_size)
|
||||
shape = (batch_size, vae.encoded_dim, image_size, image_size)
|
||||
|
||||
if exists(lowres_cond_img):
|
||||
lowres_cond_img = vae.encode(lowres_cond_img)
|
||||
lowres_cond_img = maybe(vae.encode)(lowres_cond_img)
|
||||
|
||||
img = self.p_sample_loop(
|
||||
unet,
|
||||
@@ -1989,6 +2032,7 @@ class Decoder(BaseGaussianDiffusion):
|
||||
text = None,
|
||||
image_embed = None,
|
||||
text_encodings = None,
|
||||
text_mask = None,
|
||||
unet_number = None
|
||||
):
|
||||
assert not (len(self.unets) > 1 and not exists(unet_number)), f'you must specify which unet you want trained, from a range of 1 to {len(self.unets)}, if you are training cascading DDPM (multiple unets)'
|
||||
@@ -2009,12 +2053,11 @@ class Decoder(BaseGaussianDiffusion):
|
||||
|
||||
times = torch.randint(0, self.num_timesteps, (b,), device = device, dtype = torch.long)
|
||||
|
||||
if not exists(image_embed):
|
||||
if not exists(image_embed) and not self.unconditional:
|
||||
assert exists(self.clip), 'if you want to derive CLIP image embeddings automatically, you must supply `clip` to the decoder on init'
|
||||
image_embed, _ = self.clip.embed_image(unnormalize_img(image))
|
||||
image_embed, _ = self.clip.embed_image(image)
|
||||
|
||||
text_encodings = text_mask = None
|
||||
if exists(text) and not exists(text_encodings):
|
||||
if exists(text) and not exists(text_encodings) and not self.unconditional:
|
||||
assert exists(self.clip), 'if you are passing in raw text, you need to supply `clip` to the decoder'
|
||||
_, text_encodings, text_mask = self.clip.embed_text(text)
|
||||
|
||||
@@ -2035,9 +2078,7 @@ class Decoder(BaseGaussianDiffusion):
|
||||
vae.eval()
|
||||
with torch.no_grad():
|
||||
image = vae.encode(image)
|
||||
|
||||
if exists(lowres_cond_img):
|
||||
lowres_cond_img = vae.encode(lowres_cond_img)
|
||||
lowres_cond_img = maybe(vae.encode)(lowres_cond_img)
|
||||
|
||||
return self.p_losses(unet, image, times, image_embed = image_embed, text_encodings = text_encodings, text_mask = text_mask, lowres_cond_img = lowres_cond_img, predict_x_start = predict_x_start, learned_variance = learned_variance)
|
||||
|
||||
@@ -2062,22 +2103,23 @@ class DALLE2(nn.Module):
|
||||
|
||||
self.to_pil = T.ToPILImage()
|
||||
|
||||
@torch.inference_mode()
|
||||
@torch.no_grad()
|
||||
@eval_decorator
|
||||
def forward(
|
||||
self,
|
||||
text,
|
||||
cond_scale = 1.,
|
||||
prior_cond_scale = 1.,
|
||||
return_pil_images = False
|
||||
):
|
||||
device = next(self.parameters()).device
|
||||
device = module_device(self)
|
||||
one_text = isinstance(text, str) or (not is_list_str(text) and text.shape[0] == 1)
|
||||
|
||||
if isinstance(text, str) or is_list_str(text):
|
||||
text = [text] if not isinstance(text, (list, tuple)) else text
|
||||
text = tokenizer.tokenize(text).to(device)
|
||||
|
||||
image_embed = self.prior.sample(text, num_samples_per_batch = self.prior_num_samples)
|
||||
image_embed = self.prior.sample(text, num_samples_per_batch = self.prior_num_samples, cond_scale = prior_cond_scale)
|
||||
|
||||
text_cond = text if self.decoder_need_text_cond else None
|
||||
images = self.decoder.sample(image_embed, text = text_cond, cond_scale = cond_scale)
|
||||
|
||||
@@ -1 +1,2 @@
|
||||
from dalle2_pytorch.dataloaders.decoder_loader import ImageEmbeddingDataset, create_image_embedding_dataloader
|
||||
from dalle2_pytorch.dataloaders.decoder_loader import ImageEmbeddingDataset, create_image_embedding_dataloader
|
||||
from dalle2_pytorch.dataloaders.embedding_wrapper import make_splits
|
||||
|
||||
180
dalle2_pytorch/dataloaders/embedding_wrapper.py
Normal file
180
dalle2_pytorch/dataloaders/embedding_wrapper.py
Normal file
@@ -0,0 +1,180 @@
|
||||
from torch.utils.data import IterableDataset
|
||||
from torch import from_numpy
|
||||
from clip import tokenize
|
||||
from embedding_reader import EmbeddingReader
|
||||
|
||||
|
||||
class PriorEmbeddingLoader(IterableDataset):
|
||||
def __init__(
|
||||
self,
|
||||
text_conditioned: bool,
|
||||
batch_size: int,
|
||||
start: int,
|
||||
stop: int,
|
||||
image_reader,
|
||||
text_reader: EmbeddingReader = None,
|
||||
device: str = "cpu",
|
||||
) -> None:
|
||||
super(PriorEmbeddingLoader).__init__()
|
||||
|
||||
self.text_conditioned = text_conditioned
|
||||
|
||||
if not self.text_conditioned:
|
||||
self.text_reader = text_reader
|
||||
|
||||
self.image_reader = image_reader
|
||||
self.batch_size = batch_size
|
||||
self.start = start
|
||||
self.stop = stop
|
||||
self.device = device
|
||||
|
||||
def __iter__(self):
|
||||
self.n = 0
|
||||
loader_args = dict(
|
||||
batch_size=self.batch_size,
|
||||
start=self.start,
|
||||
end=self.stop,
|
||||
show_progress=False,
|
||||
)
|
||||
if self.text_conditioned:
|
||||
self.loader = self.image_reader(**loader_args)
|
||||
else:
|
||||
self.loader = zip(
|
||||
self.image_reader(**loader_args), self.text_reader(**loader_args)
|
||||
)
|
||||
return self
|
||||
|
||||
def __next__(self):
|
||||
try:
|
||||
return self.get_sample()
|
||||
except StopIteration:
|
||||
raise StopIteration
|
||||
|
||||
def get_sample(self):
|
||||
"""
|
||||
pre-proocess data from either reader into a common format
|
||||
"""
|
||||
self.n += 1
|
||||
|
||||
if self.text_conditioned:
|
||||
image_embedding, caption = next(self.loader)
|
||||
|
||||
image_embedding = from_numpy(image_embedding).to(self.device)
|
||||
tokenized_caption = tokenize(
|
||||
caption["caption"].to_list(), truncate=True
|
||||
).to(self.device)
|
||||
|
||||
return image_embedding, tokenized_caption
|
||||
|
||||
else:
|
||||
(image_embedding, _), (text_embedding, _) = next(self.loader)
|
||||
|
||||
image_embedding = from_numpy(image_embedding).to(self.device)
|
||||
text_embedding = from_numpy(text_embedding).to(self.device)
|
||||
|
||||
return image_embedding, text_embedding
|
||||
|
||||
|
||||
def make_splits(
|
||||
text_conditioned: bool,
|
||||
batch_size: int,
|
||||
num_data_points: int,
|
||||
train_split: float,
|
||||
eval_split: float,
|
||||
device: str,
|
||||
img_url: str,
|
||||
meta_url: str = None,
|
||||
txt_url: str = None,
|
||||
):
|
||||
|
||||
assert img_url is not None, "Must supply some image embeddings"
|
||||
|
||||
if text_conditioned:
|
||||
assert meta_url is not None, "Must supply metadata url if text-conditioning"
|
||||
image_reader = EmbeddingReader(
|
||||
embeddings_folder=img_url,
|
||||
file_format="parquet_npy",
|
||||
meta_columns=["caption"],
|
||||
metadata_folder=meta_url,
|
||||
)
|
||||
|
||||
# compute split points
|
||||
if num_data_points > image_reader.count:
|
||||
print("Specified point count is larger than the number of points available...defaulting to max length of reader.")
|
||||
num_data_points = image_reader.count
|
||||
|
||||
train_set_size = int(train_split * num_data_points)
|
||||
eval_set_size = int(eval_split * num_data_points)
|
||||
eval_stop = int(train_set_size + eval_set_size)
|
||||
|
||||
train_loader = PriorEmbeddingLoader(
|
||||
text_conditioned=text_conditioned,
|
||||
image_reader=image_reader,
|
||||
batch_size=batch_size,
|
||||
start=0,
|
||||
stop=train_set_size,
|
||||
device=device,
|
||||
)
|
||||
eval_loader = PriorEmbeddingLoader(
|
||||
text_conditioned=text_conditioned,
|
||||
image_reader=image_reader,
|
||||
batch_size=batch_size,
|
||||
start=train_set_size,
|
||||
stop=eval_stop,
|
||||
device=device,
|
||||
)
|
||||
test_loader = PriorEmbeddingLoader(
|
||||
text_conditioned=text_conditioned,
|
||||
image_reader=image_reader,
|
||||
batch_size=batch_size,
|
||||
start=eval_stop,
|
||||
stop=int(num_data_points),
|
||||
device=device,
|
||||
)
|
||||
|
||||
else:
|
||||
assert (
|
||||
txt_url is not None
|
||||
), "Must supply text embedding url if not text-conditioning"
|
||||
|
||||
image_reader = EmbeddingReader(img_url, file_format="npy")
|
||||
text_reader = EmbeddingReader(txt_url, file_format="npy")
|
||||
|
||||
# compute split points
|
||||
if num_data_points > image_reader.count:
|
||||
print("Specified point count is larger than the number of points available...defaulting to max length of reader.")
|
||||
num_data_points = image_reader.count
|
||||
|
||||
train_set_size = int(train_split * num_data_points)
|
||||
eval_set_size = int(eval_split * num_data_points)
|
||||
eval_stop = int(train_set_size + eval_set_size)
|
||||
|
||||
train_loader = PriorEmbeddingLoader(
|
||||
text_conditioned=text_conditioned,
|
||||
image_reader=image_reader,
|
||||
text_reader=text_reader,
|
||||
batch_size=batch_size,
|
||||
start=0,
|
||||
stop=train_set_size,
|
||||
device=device,
|
||||
)
|
||||
eval_loader = PriorEmbeddingLoader(
|
||||
text_conditioned=text_conditioned,
|
||||
image_reader=image_reader,
|
||||
text_reader=text_reader,
|
||||
batch_size=batch_size,
|
||||
start=train_set_size,
|
||||
stop=eval_stop,
|
||||
device=device,
|
||||
)
|
||||
test_loader = PriorEmbeddingLoader(
|
||||
text_conditioned=text_conditioned,
|
||||
image_reader=image_reader,
|
||||
text_reader=text_reader,
|
||||
batch_size=batch_size,
|
||||
start=eval_stop,
|
||||
stop=int(num_data_points),
|
||||
device=device,
|
||||
)
|
||||
|
||||
return train_loader, eval_loader, test_loader
|
||||
@@ -7,16 +7,17 @@ def separate_weight_decayable_params(params):
|
||||
|
||||
def get_optimizer(
|
||||
params,
|
||||
lr = 3e-4,
|
||||
lr = 2e-5,
|
||||
wd = 1e-2,
|
||||
betas = (0.9, 0.999),
|
||||
eps = 1e-8,
|
||||
filter_by_requires_grad = False
|
||||
):
|
||||
if filter_by_requires_grad:
|
||||
params = list(filter(lambda t: t.requires_grad, params))
|
||||
|
||||
if wd == 0:
|
||||
return Adam(params, lr = lr, betas = betas)
|
||||
return Adam(params, lr = lr, betas = betas, eps = eps)
|
||||
|
||||
params = set(params)
|
||||
wd_params, no_wd_params = separate_weight_decayable_params(params)
|
||||
@@ -26,4 +27,4 @@ def get_optimizer(
|
||||
{'params': list(no_wd_params), 'weight_decay': 0},
|
||||
]
|
||||
|
||||
return AdamW(param_groups, lr = lr, weight_decay = wd, betas = betas)
|
||||
return AdamW(param_groups, lr = lr, weight_decay = wd, betas = betas, eps = eps)
|
||||
|
||||
49
dalle2_pytorch/trackers.py
Normal file
49
dalle2_pytorch/trackers.py
Normal file
@@ -0,0 +1,49 @@
|
||||
import os
|
||||
import torch
|
||||
from torch import nn
|
||||
|
||||
# helper functions
|
||||
|
||||
def exists(val):
|
||||
return val is not None
|
||||
|
||||
# base class
|
||||
|
||||
class BaseTracker(nn.Module):
|
||||
def __init__(self):
|
||||
super().__init__()
|
||||
|
||||
def init(self, config, **kwargs):
|
||||
raise NotImplementedError
|
||||
|
||||
def log(self, log, **kwargs):
|
||||
raise NotImplementedError
|
||||
|
||||
# basic stdout class
|
||||
|
||||
class ConsoleTracker(BaseTracker):
|
||||
def init(self, **config):
|
||||
print(config)
|
||||
|
||||
def log(self, log, **kwargs):
|
||||
print(log)
|
||||
|
||||
# basic wandb class
|
||||
|
||||
class WandbTracker(BaseTracker):
|
||||
def __init__(self):
|
||||
super().__init__()
|
||||
try:
|
||||
import wandb
|
||||
except ImportError as e:
|
||||
print('`pip install wandb` to use the wandb experiment tracker')
|
||||
raise e
|
||||
|
||||
os.environ["WANDB_SILENT"] = "true"
|
||||
self.wandb = wandb
|
||||
|
||||
def init(self, **config):
|
||||
self.wandb.init(**config)
|
||||
|
||||
def log(self, log, **kwargs):
|
||||
self.wandb.log(log, **kwargs)
|
||||
@@ -1,6 +1,8 @@
|
||||
import time
|
||||
import copy
|
||||
from functools import partial
|
||||
from math import ceil
|
||||
from functools import partial, wraps
|
||||
from collections.abc import Iterable
|
||||
|
||||
import torch
|
||||
from torch import nn
|
||||
@@ -9,11 +11,16 @@ from torch.cuda.amp import autocast, GradScaler
|
||||
from dalle2_pytorch.dalle2_pytorch import Decoder, DiffusionPrior
|
||||
from dalle2_pytorch.optimizer import get_optimizer
|
||||
|
||||
import numpy as np
|
||||
|
||||
# helper functions
|
||||
|
||||
def exists(val):
|
||||
return val is not None
|
||||
|
||||
def default(val, d):
|
||||
return val if exists(val) else d
|
||||
|
||||
def cast_tuple(val, length = 1):
|
||||
return val if isinstance(val, tuple) else ((val,) * length)
|
||||
|
||||
@@ -40,6 +47,79 @@ def groupby_prefix_and_trim(prefix, d):
|
||||
kwargs_without_prefix = dict(map(lambda x: (x[0][len(prefix):], x[1]), tuple(kwargs_with_prefix.items())))
|
||||
return kwargs_without_prefix, kwargs
|
||||
|
||||
# decorators
|
||||
|
||||
def cast_torch_tensor(fn):
|
||||
@wraps(fn)
|
||||
def inner(model, *args, **kwargs):
|
||||
device = kwargs.pop('_device', next(model.parameters()).device)
|
||||
cast_device = kwargs.pop('_cast_device', True)
|
||||
|
||||
kwargs_keys = kwargs.keys()
|
||||
all_args = (*args, *kwargs.values())
|
||||
split_kwargs_index = len(all_args) - len(kwargs_keys)
|
||||
all_args = tuple(map(lambda t: torch.from_numpy(t) if exists(t) and isinstance(t, np.ndarray) else t, all_args))
|
||||
|
||||
if cast_device:
|
||||
all_args = tuple(map(lambda t: t.to(device) if exists(t) and isinstance(t, torch.Tensor) else t, all_args))
|
||||
|
||||
args, kwargs_values = all_args[:split_kwargs_index], all_args[split_kwargs_index:]
|
||||
kwargs = dict(tuple(zip(kwargs_keys, kwargs_values)))
|
||||
|
||||
out = fn(model, *args, **kwargs)
|
||||
return out
|
||||
return inner
|
||||
|
||||
# gradient accumulation functions
|
||||
|
||||
def split_iterable(it, split_size):
|
||||
accum = []
|
||||
for ind in range(ceil(len(it) / split_size)):
|
||||
start_index = ind * split_size
|
||||
accum.append(it[start_index: (start_index + split_size)])
|
||||
return accum
|
||||
|
||||
def split(t, split_size = None):
|
||||
if not exists(split_size):
|
||||
return t
|
||||
|
||||
if isinstance(t, torch.Tensor):
|
||||
return t.split(split_size, dim = 0)
|
||||
|
||||
if isinstance(t, Iterable):
|
||||
return split_iterable(t, split_size)
|
||||
|
||||
return TypeError
|
||||
|
||||
def find_first(cond, arr):
|
||||
for el in arr:
|
||||
if cond(el):
|
||||
return el
|
||||
return None
|
||||
|
||||
def split_args_and_kwargs(*args, split_size = None, **kwargs):
|
||||
all_args = (*args, *kwargs.values())
|
||||
len_all_args = len(all_args)
|
||||
first_tensor = find_first(lambda t: isinstance(t, torch.Tensor), all_args)
|
||||
assert exists(first_tensor)
|
||||
|
||||
batch_size = len(first_tensor)
|
||||
split_size = default(split_size, batch_size)
|
||||
num_chunks = ceil(batch_size / split_size)
|
||||
|
||||
dict_len = len(kwargs)
|
||||
dict_keys = kwargs.keys()
|
||||
split_kwargs_index = len_all_args - dict_len
|
||||
|
||||
split_all_args = [split(arg, split_size = split_size) if exists(arg) and isinstance(arg, (torch.Tensor, Iterable)) else ((arg,) * num_chunks) for arg in all_args]
|
||||
chunk_sizes = tuple(map(len, split_all_args[0]))
|
||||
|
||||
for (chunk_size, *chunked_all_args) in tuple(zip(chunk_sizes, *split_all_args)):
|
||||
chunked_args, chunked_kwargs_values = chunked_all_args[:split_kwargs_index], chunked_all_args[split_kwargs_index:]
|
||||
chunked_kwargs = dict(tuple(zip(dict_keys, chunked_kwargs_values)))
|
||||
chunk_size_frac = chunk_size / batch_size
|
||||
yield chunk_size_frac, (chunked_args, chunked_kwargs)
|
||||
|
||||
# print helpers
|
||||
|
||||
def print_ribbon(s, symbol = '=', repeat = 40):
|
||||
@@ -71,7 +151,7 @@ def load_diffusion_model(dprior_path, device):
|
||||
# Load state dict from saved model
|
||||
diffusion_prior.load_state_dict(loaded_obj['model'])
|
||||
|
||||
return diffusion_prior
|
||||
return diffusion_prior, loaded_obj
|
||||
|
||||
def save_diffusion_model(save_path, model, optimizer, scaler, config, image_embed_dim):
|
||||
# Saving State Dict
|
||||
@@ -90,7 +170,7 @@ class EMA(nn.Module):
|
||||
def __init__(
|
||||
self,
|
||||
model,
|
||||
beta = 0.99,
|
||||
beta = 0.9999,
|
||||
update_after_step = 1000,
|
||||
update_every = 10,
|
||||
):
|
||||
@@ -147,6 +227,7 @@ class DiffusionPriorTrainer(nn.Module):
|
||||
use_ema = True,
|
||||
lr = 3e-4,
|
||||
wd = 1e-2,
|
||||
eps = 1e-6,
|
||||
max_grad_norm = None,
|
||||
amp = False,
|
||||
**kwargs
|
||||
@@ -173,6 +254,7 @@ class DiffusionPriorTrainer(nn.Module):
|
||||
diffusion_prior.parameters(),
|
||||
lr = lr,
|
||||
wd = wd,
|
||||
eps = eps,
|
||||
**kwargs
|
||||
)
|
||||
|
||||
@@ -180,6 +262,8 @@ class DiffusionPriorTrainer(nn.Module):
|
||||
|
||||
self.max_grad_norm = max_grad_norm
|
||||
|
||||
self.register_buffer('step', torch.tensor([0.]))
|
||||
|
||||
def update(self):
|
||||
if exists(self.max_grad_norm):
|
||||
self.scaler.unscale_(self.optimizer)
|
||||
@@ -192,27 +276,42 @@ class DiffusionPriorTrainer(nn.Module):
|
||||
if self.use_ema:
|
||||
self.ema_diffusion_prior.update()
|
||||
|
||||
@torch.inference_mode()
|
||||
self.step += 1
|
||||
|
||||
@torch.no_grad()
|
||||
@cast_torch_tensor
|
||||
def p_sample_loop(self, *args, **kwargs):
|
||||
return self.ema_diffusion_prior.ema_model.p_sample_loop(*args, **kwargs)
|
||||
|
||||
@torch.inference_mode()
|
||||
@torch.no_grad()
|
||||
@cast_torch_tensor
|
||||
def sample(self, *args, **kwargs):
|
||||
return self.ema_diffusion_prior.ema_model.sample(*args, **kwargs)
|
||||
|
||||
@torch.inference_mode()
|
||||
@torch.no_grad()
|
||||
def sample_batch_size(self, *args, **kwargs):
|
||||
return self.ema_diffusion_prior.ema_model.sample_batch_size(*args, **kwargs)
|
||||
|
||||
@cast_torch_tensor
|
||||
def forward(
|
||||
self,
|
||||
*args,
|
||||
divisor = 1,
|
||||
max_batch_size = None,
|
||||
**kwargs
|
||||
):
|
||||
with autocast(enabled = self.amp):
|
||||
loss = self.diffusion_prior(*args, **kwargs)
|
||||
return self.scaler.scale(loss / divisor)
|
||||
total_loss = 0.
|
||||
|
||||
for chunk_size_frac, (chunked_args, chunked_kwargs) in split_args_and_kwargs(*args, split_size = max_batch_size, **kwargs):
|
||||
with autocast(enabled = self.amp):
|
||||
loss = self.diffusion_prior(*chunked_args, **chunked_kwargs)
|
||||
loss = loss * chunk_size_frac
|
||||
|
||||
total_loss += loss.item()
|
||||
|
||||
if self.training:
|
||||
self.scaler.scale(loss).backward()
|
||||
|
||||
return total_loss
|
||||
|
||||
# decoder trainer
|
||||
|
||||
@@ -221,8 +320,9 @@ class DecoderTrainer(nn.Module):
|
||||
self,
|
||||
decoder,
|
||||
use_ema = True,
|
||||
lr = 3e-4,
|
||||
lr = 2e-5,
|
||||
wd = 1e-2,
|
||||
eps = 1e-8,
|
||||
max_grad_norm = None,
|
||||
amp = False,
|
||||
**kwargs
|
||||
@@ -235,11 +335,6 @@ class DecoderTrainer(nn.Module):
|
||||
self.num_unets = len(self.decoder.unets)
|
||||
|
||||
self.use_ema = use_ema
|
||||
|
||||
if use_ema:
|
||||
has_lazy_linear = any([type(module) == nn.LazyLinear for module in decoder.modules()])
|
||||
assert not has_lazy_linear, 'you must set the text_embed_dim on your u-nets if you plan on doing automatic exponential moving average'
|
||||
|
||||
self.ema_unets = nn.ModuleList([])
|
||||
|
||||
self.amp = amp
|
||||
@@ -247,13 +342,14 @@ class DecoderTrainer(nn.Module):
|
||||
# be able to finely customize learning rate, weight decay
|
||||
# per unet
|
||||
|
||||
lr, wd = map(partial(cast_tuple, length = self.num_unets), (lr, wd))
|
||||
lr, wd, eps = map(partial(cast_tuple, length = self.num_unets), (lr, wd, eps))
|
||||
|
||||
for ind, (unet, unet_lr, unet_wd) in enumerate(zip(self.decoder.unets, lr, wd)):
|
||||
for ind, (unet, unet_lr, unet_wd, unet_eps) in enumerate(zip(self.decoder.unets, lr, wd, eps)):
|
||||
optimizer = get_optimizer(
|
||||
unet.parameters(),
|
||||
lr = unet_lr,
|
||||
wd = unet_wd,
|
||||
eps = unet_eps,
|
||||
**kwargs
|
||||
)
|
||||
|
||||
@@ -269,6 +365,8 @@ class DecoderTrainer(nn.Module):
|
||||
|
||||
self.max_grad_norm = max_grad_norm
|
||||
|
||||
self.register_buffer('step', torch.tensor([0.]))
|
||||
|
||||
@property
|
||||
def unets(self):
|
||||
return nn.ModuleList([ema.ema_model for ema in self.ema_unets])
|
||||
@@ -279,8 +377,11 @@ class DecoderTrainer(nn.Module):
|
||||
scaler = getattr(self, f'scaler{index}')
|
||||
return scaler.scale(loss)
|
||||
|
||||
def update(self, unet_number):
|
||||
assert 1 <= unet_number <= self.num_unets
|
||||
def update(self, unet_number = None):
|
||||
if self.num_unets == 1:
|
||||
unet_number = default(unet_number, 1)
|
||||
|
||||
assert exists(unet_number) and 1 <= unet_number <= self.num_unets
|
||||
index = unet_number - 1
|
||||
unet = self.decoder.unets[index]
|
||||
|
||||
@@ -299,7 +400,10 @@ class DecoderTrainer(nn.Module):
|
||||
ema_unet = self.ema_unets[index]
|
||||
ema_unet.update()
|
||||
|
||||
self.step += 1
|
||||
|
||||
@torch.no_grad()
|
||||
@cast_torch_tensor
|
||||
def sample(self, *args, **kwargs):
|
||||
if self.use_ema:
|
||||
trainable_unets = self.decoder.unets
|
||||
@@ -316,14 +420,27 @@ class DecoderTrainer(nn.Module):
|
||||
|
||||
return output
|
||||
|
||||
@cast_torch_tensor
|
||||
def forward(
|
||||
self,
|
||||
x,
|
||||
*,
|
||||
unet_number,
|
||||
divisor = 1,
|
||||
*args,
|
||||
unet_number = None,
|
||||
max_batch_size = None,
|
||||
**kwargs
|
||||
):
|
||||
with autocast(enabled = self.amp):
|
||||
loss = self.decoder(x, unet_number = unet_number, **kwargs)
|
||||
return self.scale(loss / divisor, unet_number = unet_number)
|
||||
if self.num_unets == 1:
|
||||
unet_number = default(unet_number, 1)
|
||||
|
||||
total_loss = 0.
|
||||
|
||||
for chunk_size_frac, (chunked_args, chunked_kwargs) in split_args_and_kwargs(*args, split_size = max_batch_size, **kwargs):
|
||||
with autocast(enabled = self.amp):
|
||||
loss = self.decoder(*chunked_args, unet_number = unet_number, **chunked_kwargs)
|
||||
loss = loss * chunk_size_frac
|
||||
|
||||
total_loss += loss.item()
|
||||
|
||||
if self.training:
|
||||
self.scale(loss, unet_number = unet_number).backward()
|
||||
|
||||
return total_loss
|
||||
3
setup.py
3
setup.py
@@ -10,7 +10,7 @@ setup(
|
||||
'dream = dalle2_pytorch.cli:dream'
|
||||
],
|
||||
},
|
||||
version = '0.2.15',
|
||||
version = '0.2.42',
|
||||
license='MIT',
|
||||
description = 'DALL-E 2',
|
||||
author = 'Phil Wang',
|
||||
@@ -30,6 +30,7 @@ setup(
|
||||
'einops-exts>=0.0.3',
|
||||
'embedding-reader',
|
||||
'kornia>=0.5.4',
|
||||
'numpy',
|
||||
'pillow',
|
||||
'resize-right>=0.0.2',
|
||||
'rotary-embedding-torch',
|
||||
|
||||
@@ -1,354 +1,375 @@
|
||||
import os
|
||||
from pathlib import Path
|
||||
import click
|
||||
import math
|
||||
import argparse
|
||||
import time
|
||||
import numpy as np
|
||||
|
||||
import torch
|
||||
import clip
|
||||
from torch import nn
|
||||
from embedding_reader import EmbeddingReader
|
||||
from dalle2_pytorch import DiffusionPrior, DiffusionPriorNetwork
|
||||
from dalle2_pytorch.train import load_diffusion_model, save_diffusion_model, print_ribbon
|
||||
from dalle2_pytorch.optimizer import get_optimizer
|
||||
from torch.cuda.amp import autocast,GradScaler
|
||||
|
||||
import time
|
||||
from dalle2_pytorch.dataloaders import make_splits
|
||||
from dalle2_pytorch import DiffusionPrior, DiffusionPriorNetwork, OpenAIClipAdapter
|
||||
from dalle2_pytorch.trainer import DiffusionPriorTrainer, load_diffusion_model, save_diffusion_model, print_ribbon
|
||||
|
||||
from dalle2_pytorch.trackers import ConsoleTracker, WandbTracker
|
||||
|
||||
from embedding_reader import EmbeddingReader
|
||||
|
||||
from tqdm import tqdm
|
||||
|
||||
import wandb
|
||||
os.environ["WANDB_SILENT"] = "true"
|
||||
NUM_TEST_EMBEDDINGS = 100 # for cosine similarity reporting during training
|
||||
REPORT_METRICS_EVERY = 100 # for cosine similarity and other metric reporting during training
|
||||
# constants
|
||||
|
||||
REPORT_METRICS_EVERY = 250 # for cosine similarity and other metric reporting during training
|
||||
|
||||
def eval_model(model,device,image_reader,text_reader,start,end,batch_size,loss_type,phase="Validation"):
|
||||
tracker = WandbTracker()
|
||||
|
||||
# helpers functions
|
||||
|
||||
def exists(val):
|
||||
val is not None
|
||||
|
||||
class Timer:
|
||||
def __init__(self):
|
||||
self.reset()
|
||||
|
||||
def reset(self):
|
||||
self.last_time = time.time()
|
||||
|
||||
def elapsed(self):
|
||||
return time.time() - self.last_time
|
||||
|
||||
# functions
|
||||
|
||||
def eval_model(model, dataloader, text_conditioned, loss_type, phase="Validation"):
|
||||
model.eval()
|
||||
|
||||
with torch.no_grad():
|
||||
total_loss = 0.
|
||||
total_samples = 0.
|
||||
|
||||
for emb_images, emb_text in zip(image_reader(batch_size=batch_size, start=start, end=end),
|
||||
text_reader(batch_size=batch_size, start=start, end=end)):
|
||||
for image_embeddings, text_data in tqdm(dataloader):
|
||||
|
||||
emb_images_tensor = torch.tensor(emb_images[0]).to(device)
|
||||
emb_text_tensor = torch.tensor(emb_text[0]).to(device)
|
||||
batches = image_embeddings.shape[0]
|
||||
|
||||
batches = emb_images_tensor.shape[0]
|
||||
input_args = dict(image_embed=image_embeddings)
|
||||
if text_conditioned:
|
||||
input_args = dict(**input_args, text = text_data)
|
||||
else:
|
||||
input_args = dict(**input_args, text_embed=text_data)
|
||||
|
||||
loss = model(text_embed = emb_text_tensor, image_embed = emb_images_tensor)
|
||||
loss = model(**input_args)
|
||||
|
||||
total_loss += loss.item() * batches
|
||||
total_loss += loss * batches
|
||||
total_samples += batches
|
||||
|
||||
avg_loss = (total_loss / total_samples)
|
||||
wandb.log({f'{phase} {loss_type}': avg_loss})
|
||||
|
||||
def report_cosine_sims(diffusion_prior,image_reader,text_reader,train_set_size,NUM_TEST_EMBEDDINGS,device):
|
||||
tracker.log({f'{phase} {loss_type}': avg_loss})
|
||||
|
||||
def report_cosine_sims(diffusion_prior, dataloader, text_conditioned):
|
||||
diffusion_prior.eval()
|
||||
|
||||
cos = nn.CosineSimilarity(dim=1, eps=1e-6)
|
||||
|
||||
tstart = train_set_size
|
||||
tend = train_set_size+NUM_TEST_EMBEDDINGS
|
||||
for test_image_embeddings, text_data in tqdm(dataloader):
|
||||
|
||||
# we are text conditioned, we produce an embedding from the tokenized text
|
||||
if text_conditioned:
|
||||
text_embedding, text_encodings, text_mask = diffusion_prior.clip.embed_text(
|
||||
text_data)
|
||||
text_cond = dict(text_embed=text_embedding,
|
||||
text_encodings=text_encodings, mask=text_mask)
|
||||
else:
|
||||
text_embedding = text_data
|
||||
text_cond = dict(text_embed=text_embedding)
|
||||
|
||||
# make a copy of the text embeddings for shuffling
|
||||
text_embed_shuffled = text_embedding.clone()
|
||||
|
||||
# roll the text to simulate "unrelated" captions
|
||||
rolled_idx = torch.roll(torch.arange(text_embedding.shape[0]), 1)
|
||||
text_embed_shuffled = text_embed_shuffled[rolled_idx]
|
||||
text_embed_shuffled = text_embed_shuffled / \
|
||||
text_embed_shuffled.norm(dim=1, keepdim=True)
|
||||
|
||||
if text_conditioned:
|
||||
text_encodings_shuffled = text_encodings[rolled_idx]
|
||||
text_mask_shuffled = text_mask[rolled_idx]
|
||||
else:
|
||||
text_encodings_shuffled = None
|
||||
text_mask_shuffled = None
|
||||
|
||||
text_cond_shuffled = dict(text_embed=text_embed_shuffled,
|
||||
text_encodings=text_encodings_shuffled, mask=text_mask_shuffled)
|
||||
|
||||
for embt, embi in zip(text_reader(batch_size=NUM_TEST_EMBEDDINGS, start=tstart, end=tend),
|
||||
image_reader(batch_size=NUM_TEST_EMBEDDINGS, start=tstart, end=tend)):
|
||||
# make a copy of the text embeddings for shuffling
|
||||
text_embed = torch.tensor(embt[0]).to(device)
|
||||
text_embed_shuffled = text_embed.clone()
|
||||
# roll the text embeddings to simulate "unrelated" captions
|
||||
rolled_idx = torch.roll(torch.arange(NUM_TEST_EMBEDDINGS), 1)
|
||||
text_embed_shuffled = text_embed_shuffled[rolled_idx]
|
||||
text_embed_shuffled = text_embed_shuffled / \
|
||||
text_embed_shuffled.norm(dim=1, keepdim=True)
|
||||
test_text_shuffled_cond = dict(text_embed=text_embed_shuffled)
|
||||
# prepare the text embedding
|
||||
text_embed = text_embed / text_embed.norm(dim=1, keepdim=True)
|
||||
test_text_cond = dict(text_embed=text_embed)
|
||||
text_embed = text_embedding / text_embedding.norm(dim=1, keepdim=True)
|
||||
|
||||
# prepare image embeddings
|
||||
test_image_embeddings = torch.tensor(embi[0]).to(device)
|
||||
test_image_embeddings = test_image_embeddings / \
|
||||
test_image_embeddings.norm(dim=1, keepdim=True)
|
||||
test_image_embeddings = test_image_embeddings / \
|
||||
test_image_embeddings.norm(dim=1, keepdim=True)
|
||||
|
||||
# predict on the unshuffled text embeddings
|
||||
predicted_image_embeddings = diffusion_prior.p_sample_loop(
|
||||
(NUM_TEST_EMBEDDINGS, 768), text_cond=test_text_cond)
|
||||
predicted_image_embeddings = predicted_image_embeddings / \
|
||||
predicted_image_embeddings.norm(dim=1, keepdim=True)
|
||||
predicted_image_embeddings = diffusion_prior.p_sample_loop(
|
||||
test_image_embeddings.shape, text_cond)
|
||||
predicted_image_embeddings = predicted_image_embeddings / \
|
||||
predicted_image_embeddings.norm(dim=1, keepdim=True)
|
||||
|
||||
# predict on the shuffled embeddings
|
||||
predicted_unrelated_embeddings = diffusion_prior.p_sample_loop(
|
||||
(NUM_TEST_EMBEDDINGS, 768), text_cond=test_text_shuffled_cond)
|
||||
predicted_unrelated_embeddings = predicted_unrelated_embeddings / \
|
||||
predicted_unrelated_embeddings.norm(dim=1, keepdim=True)
|
||||
predicted_unrelated_embeddings = diffusion_prior.p_sample_loop(
|
||||
test_image_embeddings.shape, text_cond_shuffled)
|
||||
predicted_unrelated_embeddings = predicted_unrelated_embeddings / \
|
||||
predicted_unrelated_embeddings.norm(dim=1, keepdim=True)
|
||||
|
||||
# calculate similarities
|
||||
original_similarity = cos(
|
||||
original_similarity = cos(
|
||||
text_embed, test_image_embeddings).cpu().numpy()
|
||||
predicted_similarity = cos(
|
||||
predicted_similarity = cos(
|
||||
text_embed, predicted_image_embeddings).cpu().numpy()
|
||||
unrelated_similarity = cos(
|
||||
unrelated_similarity = cos(
|
||||
text_embed, predicted_unrelated_embeddings).cpu().numpy()
|
||||
predicted_img_similarity = cos(
|
||||
predicted_img_similarity = cos(
|
||||
test_image_embeddings, predicted_image_embeddings).cpu().numpy()
|
||||
wandb.log({"CosineSimilarity(text_embed,image_embed)": np.mean(original_similarity),
|
||||
tracker.log({"CosineSimilarity(text_embed,image_embed)": np.mean(original_similarity),
|
||||
"CosineSimilarity(text_embed,predicted_image_embed)":np.mean(predicted_similarity),
|
||||
"CosineSimilarity(orig_image_embed,predicted_image_embed)":np.mean(predicted_img_similarity),
|
||||
"CosineSimilarity(text_embed,predicted_unrelated_embed)": np.mean(unrelated_similarity),
|
||||
"Cosine similarity difference":np.mean(predicted_similarity - original_similarity)})
|
||||
|
||||
def train(image_embed_dim,
|
||||
image_embed_url,
|
||||
text_embed_url,
|
||||
batch_size,
|
||||
train_percent,
|
||||
val_percent,
|
||||
test_percent,
|
||||
num_epochs,
|
||||
dp_loss_type,
|
||||
clip,
|
||||
dp_condition_on_text_encodings,
|
||||
dp_timesteps,
|
||||
dp_normformer,
|
||||
dp_cond_drop_prob,
|
||||
dpn_depth,
|
||||
dpn_dim_head,
|
||||
dpn_heads,
|
||||
save_interval,
|
||||
save_path,
|
||||
device,
|
||||
RESUME,
|
||||
DPRIOR_PATH,
|
||||
config,
|
||||
wandb_entity,
|
||||
wandb_project,
|
||||
learning_rate=0.001,
|
||||
max_grad_norm=0.5,
|
||||
weight_decay=0.01,
|
||||
dropout=0.05,
|
||||
amp=False):
|
||||
|
||||
# DiffusionPriorNetwork
|
||||
@click.command()
|
||||
@click.option("--wandb-entity", default="laion")
|
||||
@click.option("--wandb-project", default="diffusion-prior")
|
||||
@click.option("--wandb-dataset", default="LAION-5B")
|
||||
@click.option("--wandb-arch", default="DiffusionPrior")
|
||||
@click.option("--image-embed-url", default="https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/img_emb/")
|
||||
@click.option("--text-embed-url", default="https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/text_emb/")
|
||||
@click.option("--meta-url", default="https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/laion2B-en-metadata/")
|
||||
@click.option("--learning-rate", default=1.1e-4)
|
||||
@click.option("--weight-decay", default=6.02e-2)
|
||||
@click.option("--dropout", default=5e-2)
|
||||
@click.option("--max-grad-norm", default=0.5)
|
||||
@click.option("--num-data-points", default=250e6)
|
||||
@click.option("--batch-size", default=320)
|
||||
@click.option("--num-epochs", default=5)
|
||||
@click.option("--image-embed-dim", default=768)
|
||||
@click.option("--train-percent", default=0.9)
|
||||
@click.option("--val-percent", default=1e-7)
|
||||
@click.option("--test-percent", default=0.0999999)
|
||||
@click.option("--dpn-depth", default=12)
|
||||
@click.option("--dpn-dim-head", default=64)
|
||||
@click.option("--dpn-heads", default=12)
|
||||
@click.option("--dp-condition-on-text-encodings", default=True)
|
||||
@click.option("--dp-timesteps", default=1000)
|
||||
@click.option("--dp-normformer", default=True)
|
||||
@click.option("--dp-cond-drop-prob", default=0.1)
|
||||
@click.option("--dp-loss-type", default="l2")
|
||||
@click.option("--clip", default="ViT-L/14")
|
||||
@click.option("--amp", default=False)
|
||||
@click.option("--save-interval", default=120)
|
||||
@click.option("--save-path", default="./diffusion_prior_checkpoints")
|
||||
@click.option("--pretrained-model-path", default=None)
|
||||
@click.option("--gpu-device", default=0)
|
||||
def train(
|
||||
wandb_entity,
|
||||
wandb_project,
|
||||
wandb_dataset,
|
||||
wandb_arch,
|
||||
image_embed_url,
|
||||
text_embed_url,
|
||||
meta_url,
|
||||
learning_rate,
|
||||
weight_decay,
|
||||
dropout,
|
||||
max_grad_norm,
|
||||
num_data_points,
|
||||
batch_size,
|
||||
num_epochs,
|
||||
image_embed_dim,
|
||||
train_percent,
|
||||
val_percent,
|
||||
test_percent,
|
||||
dpn_depth,
|
||||
dpn_dim_head,
|
||||
dpn_heads,
|
||||
dp_condition_on_text_encodings,
|
||||
dp_timesteps,
|
||||
dp_normformer,
|
||||
dp_cond_drop_prob,
|
||||
dp_loss_type,
|
||||
clip,
|
||||
amp,
|
||||
save_interval,
|
||||
save_path,
|
||||
pretrained_model_path,
|
||||
gpu_device
|
||||
):
|
||||
config = {
|
||||
"learning_rate": learning_rate,
|
||||
"architecture": wandb_arch,
|
||||
"dataset": wandb_dataset,
|
||||
"weight_decay": weight_decay,
|
||||
"max_gradient_clipping_norm": max_grad_norm,
|
||||
"batch_size": batch_size,
|
||||
"epochs": num_epochs,
|
||||
"diffusion_prior_network": {
|
||||
"depth": dpn_depth,
|
||||
"dim_head": dpn_dim_head,
|
||||
"heads": dpn_heads,
|
||||
"normformer": dp_normformer
|
||||
},
|
||||
"diffusion_prior": {
|
||||
"condition_on_text_encodings": dp_condition_on_text_encodings,
|
||||
"timesteps": dp_timesteps,
|
||||
"cond_drop_prob": dp_cond_drop_prob,
|
||||
"loss_type": dp_loss_type,
|
||||
"clip": clip
|
||||
}
|
||||
}
|
||||
|
||||
# Check if DPRIOR_PATH exists(saved model path)
|
||||
|
||||
DPRIOR_PATH = pretrained_model_path
|
||||
RESUME = exists(DPRIOR_PATH)
|
||||
|
||||
if not RESUME:
|
||||
tracker.init(
|
||||
entity = wandb_entity,
|
||||
project = wandb_project,
|
||||
config = config
|
||||
)
|
||||
|
||||
# Obtain the utilized device.
|
||||
|
||||
has_cuda = torch.cuda.is_available()
|
||||
if has_cuda:
|
||||
device = torch.device(f"cuda:{gpu_device}")
|
||||
torch.cuda.set_device(device)
|
||||
|
||||
# Training loop
|
||||
# diffusion prior network
|
||||
|
||||
prior_network = DiffusionPriorNetwork(
|
||||
dim = image_embed_dim,
|
||||
depth = dpn_depth,
|
||||
dim_head = dpn_dim_head,
|
||||
heads = dpn_heads,
|
||||
attn_dropout = dropout,
|
||||
ff_dropout = dropout,
|
||||
normformer = dp_normformer).to(device)
|
||||
dim = image_embed_dim,
|
||||
depth = dpn_depth,
|
||||
dim_head = dpn_dim_head,
|
||||
heads = dpn_heads,
|
||||
attn_dropout = dropout,
|
||||
ff_dropout = dropout,
|
||||
normformer = dp_normformer
|
||||
)
|
||||
|
||||
# DiffusionPrior with text embeddings and image embeddings pre-computed
|
||||
# Load clip model if text-conditioning
|
||||
if dp_condition_on_text_encodings:
|
||||
clip_adapter = OpenAIClipAdapter(clip)
|
||||
else:
|
||||
clip_adapter = None
|
||||
|
||||
# diffusion prior with text embeddings and image embeddings pre-computed
|
||||
|
||||
diffusion_prior = DiffusionPrior(
|
||||
net = prior_network,
|
||||
clip = clip,
|
||||
image_embed_dim = image_embed_dim,
|
||||
timesteps = dp_timesteps,
|
||||
cond_drop_prob = dp_cond_drop_prob,
|
||||
loss_type = dp_loss_type,
|
||||
condition_on_text_encodings = dp_condition_on_text_encodings).to(device)
|
||||
net = prior_network,
|
||||
clip = clip_adapter,
|
||||
image_embed_dim = image_embed_dim,
|
||||
timesteps = dp_timesteps,
|
||||
cond_drop_prob = dp_cond_drop_prob,
|
||||
loss_type = dp_loss_type,
|
||||
condition_on_text_encodings = dp_condition_on_text_encodings
|
||||
)
|
||||
|
||||
# Load pre-trained model from DPRIOR_PATH
|
||||
|
||||
if RESUME:
|
||||
diffusion_prior=load_diffusion_model(DPRIOR_PATH,device)
|
||||
wandb.init( entity=wandb_entity, project=wandb_project, config=config)
|
||||
diffusion_prior, loaded_obj = load_diffusion_model(DPRIOR_PATH, device)
|
||||
tracker.init(entity = wandb_entity, project = wandb_project, config = config)
|
||||
|
||||
# diffusion prior trainer
|
||||
|
||||
trainer = DiffusionPriorTrainer(
|
||||
diffusion_prior = diffusion_prior,
|
||||
lr = learning_rate,
|
||||
wd = weight_decay,
|
||||
max_grad_norm = max_grad_norm,
|
||||
amp = amp,
|
||||
).to(device)
|
||||
|
||||
# load optimizer and scaler
|
||||
|
||||
if RESUME:
|
||||
trainer.optimizer.load_state_dict(loaded_obj['optimizer'])
|
||||
trainer.scaler.load_state_dict(loaded_obj['scaler'])
|
||||
|
||||
# Create save_path if it doesn't exist
|
||||
if not os.path.exists(save_path):
|
||||
os.makedirs(save_path)
|
||||
|
||||
# Get image and text embeddings from the servers
|
||||
print_ribbon("Downloading embeddings - image and text")
|
||||
image_reader = EmbeddingReader(embeddings_folder=image_embed_url, file_format="npy")
|
||||
text_reader = EmbeddingReader(embeddings_folder=text_embed_url, file_format="npy")
|
||||
num_data_points = text_reader.count
|
||||
Path(save_path).mkdir(exist_ok = True, parents = True)
|
||||
|
||||
# Utilize wrapper to abstract away loader logic
|
||||
print_ribbon("Downloading Embeddings")
|
||||
loader_args = dict(text_conditioned=dp_condition_on_text_encodings, batch_size=batch_size, num_data_points=num_data_points,
|
||||
train_split=train_percent, eval_split=val_percent, device=device, img_url=image_embed_url)
|
||||
|
||||
if dp_condition_on_text_encodings:
|
||||
loader_args = dict(**loader_args, meta_url=meta_url)
|
||||
else:
|
||||
loader_args = dict(**loader_args, txt_url=text_embed_url)
|
||||
|
||||
train_loader, eval_loader, test_loader = make_splits(**loader_args)
|
||||
|
||||
### Training code ###
|
||||
scaler = GradScaler(enabled=amp)
|
||||
optimizer = get_optimizer(diffusion_prior.net.parameters(), wd=weight_decay, lr=learning_rate)
|
||||
|
||||
step = 1
|
||||
timer = Timer()
|
||||
epochs = num_epochs
|
||||
|
||||
step = 0
|
||||
t = time.time()
|
||||
|
||||
train_set_size = int(train_percent*num_data_points)
|
||||
val_set_size = int(val_percent*num_data_points)
|
||||
eval_start = train_set_size
|
||||
|
||||
for _ in range(epochs):
|
||||
|
||||
for emb_images,emb_text in zip(image_reader(batch_size=batch_size, start=0, end=train_set_size),
|
||||
text_reader(batch_size=batch_size, start=0, end=train_set_size)):
|
||||
|
||||
for image, text in tqdm(train_loader):
|
||||
|
||||
diffusion_prior.train()
|
||||
|
||||
emb_images_tensor = torch.tensor(emb_images[0]).to(device)
|
||||
emb_text_tensor = torch.tensor(emb_text[0]).to(device)
|
||||
input_args = dict(image_embed=image)
|
||||
if dp_condition_on_text_encodings:
|
||||
input_args = dict(**input_args, text = text)
|
||||
else:
|
||||
input_args = dict(**input_args, text_embed=text)
|
||||
|
||||
with autocast(enabled=amp):
|
||||
loss = diffusion_prior(text_embed = emb_text_tensor,image_embed = emb_images_tensor)
|
||||
scaler.scale(loss).backward()
|
||||
loss = trainer(**input_args)
|
||||
|
||||
# Samples per second
|
||||
step+=1
|
||||
samples_per_sec = batch_size*step/(time.time()-t)
|
||||
|
||||
samples_per_sec = batch_size * step / timer.elapsed()
|
||||
|
||||
# Save checkpoint every save_interval minutes
|
||||
if(int(time.time()-t) >= 60*save_interval):
|
||||
t = time.time()
|
||||
if(int(timer.elapsed()) >= 60 * save_interval):
|
||||
timer.reset()
|
||||
|
||||
save_diffusion_model(
|
||||
save_path,
|
||||
diffusion_prior,
|
||||
optimizer,
|
||||
scaler,
|
||||
trainer.optimizer,
|
||||
trainer.scaler,
|
||||
config,
|
||||
image_embed_dim)
|
||||
|
||||
# Log to wandb
|
||||
wandb.log({"Training loss": loss.item(),
|
||||
tracker.log({"Training loss": loss,
|
||||
"Steps": step,
|
||||
"Samples per second": samples_per_sec})
|
||||
# Log cosineSim(text_embed,predicted_image_embed) - cosineSim(text_embed,image_embed)
|
||||
# Use NUM_TEST_EMBEDDINGS samples from the test set each time
|
||||
# Get embeddings from the most recently saved model
|
||||
if(step % REPORT_METRICS_EVERY) == 0:
|
||||
report_cosine_sims(diffusion_prior,
|
||||
image_reader,
|
||||
text_reader,
|
||||
train_set_size,
|
||||
NUM_TEST_EMBEDDINGS,
|
||||
device)
|
||||
report_cosine_sims(diffusion_prior, eval_loader, dp_condition_on_text_encodings)
|
||||
### Evaluate model(validation run) ###
|
||||
eval_model(diffusion_prior,
|
||||
device,
|
||||
image_reader,
|
||||
text_reader,
|
||||
eval_start,
|
||||
eval_start+NUM_TEST_EMBEDDINGS,
|
||||
NUM_TEST_EMBEDDINGS,
|
||||
dp_loss_type,
|
||||
phase="Validation")
|
||||
eval_model(diffusion_prior, eval_loader, dp_condition_on_text_encodings, dp_loss_type, phase="Validation")
|
||||
|
||||
scaler.unscale_(optimizer)
|
||||
nn.utils.clip_grad_norm_(diffusion_prior.parameters(), max_grad_norm)
|
||||
|
||||
scaler.step(optimizer)
|
||||
scaler.update()
|
||||
optimizer.zero_grad()
|
||||
step += 1
|
||||
trainer.update()
|
||||
|
||||
### Test run ###
|
||||
test_set_size = int(test_percent*train_set_size)
|
||||
start=train_set_size+val_set_size
|
||||
end=num_data_points
|
||||
eval_model(diffusion_prior,device,image_reader,text_reader,start,end,batch_size,dp_loss_type,phase="Test")
|
||||
eval_model(diffusion_prior, test_loader, dp_condition_on_text_encodings, dp_loss_type, phase="Test")
|
||||
|
||||
def main():
|
||||
parser = argparse.ArgumentParser()
|
||||
# Logging
|
||||
parser.add_argument("--wandb-entity", type=str, default="laion")
|
||||
parser.add_argument("--wandb-project", type=str, default="diffusion-prior")
|
||||
parser.add_argument("--wandb-dataset", type=str, default="LAION-5B")
|
||||
parser.add_argument("--wandb-arch", type=str, default="DiffusionPrior")
|
||||
# URLs for embeddings
|
||||
parser.add_argument("--image-embed-url", type=str, default="https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/img_emb/")
|
||||
parser.add_argument("--text-embed-url", type=str, default="https://mystic.the-eye.eu/public/AI/cah/laion5b/embeddings/laion2B-en/text_emb/")
|
||||
# Hyperparameters
|
||||
parser.add_argument("--learning-rate", type=float, default=1.1e-4)
|
||||
parser.add_argument("--weight-decay", type=float, default=6.02e-2)
|
||||
parser.add_argument("--dropout", type=float, default=5e-2)
|
||||
parser.add_argument("--max-grad-norm", type=float, default=0.5)
|
||||
parser.add_argument("--batch-size", type=int, default=10**4)
|
||||
parser.add_argument("--num-epochs", type=int, default=5)
|
||||
# Image embed dimension
|
||||
parser.add_argument("--image-embed-dim", type=int, default=768)
|
||||
# Train-test split
|
||||
parser.add_argument("--train-percent", type=float, default=0.7)
|
||||
parser.add_argument("--val-percent", type=float, default=0.2)
|
||||
parser.add_argument("--test-percent", type=float, default=0.1)
|
||||
# LAION training(pre-computed embeddings)
|
||||
# DiffusionPriorNetwork(dpn) parameters
|
||||
parser.add_argument("--dpn-depth", type=int, default=6)
|
||||
parser.add_argument("--dpn-dim-head", type=int, default=64)
|
||||
parser.add_argument("--dpn-heads", type=int, default=8)
|
||||
# DiffusionPrior(dp) parameters
|
||||
parser.add_argument("--dp-condition-on-text-encodings", type=bool, default=False)
|
||||
parser.add_argument("--dp-timesteps", type=int, default=100)
|
||||
parser.add_argument("--dp-normformer", type=bool, default=False)
|
||||
parser.add_argument("--dp-cond-drop-prob", type=float, default=0.1)
|
||||
parser.add_argument("--dp-loss-type", type=str, default="l2")
|
||||
parser.add_argument("--clip", type=str, default=None)
|
||||
parser.add_argument("--amp", type=bool, default=False)
|
||||
# Model checkpointing interval(minutes)
|
||||
parser.add_argument("--save-interval", type=int, default=30)
|
||||
parser.add_argument("--save-path", type=str, default="./diffusion_prior_checkpoints")
|
||||
# Saved model path
|
||||
parser.add_argument("--pretrained-model-path", type=str, default=None)
|
||||
|
||||
args = parser.parse_args()
|
||||
|
||||
config = ({"learning_rate": args.learning_rate,
|
||||
"architecture": args.wandb_arch,
|
||||
"dataset": args.wandb_dataset,
|
||||
"weight_decay":args.weight_decay,
|
||||
"max_gradient_clipping_norm":args.max_grad_norm,
|
||||
"batch_size":args.batch_size,
|
||||
"epochs": args.num_epochs,
|
||||
"diffusion_prior_network":{"depth":args.dpn_depth,
|
||||
"dim_head":args.dpn_dim_head,
|
||||
"heads":args.dpn_heads,
|
||||
"normformer":args.dp_normformer},
|
||||
"diffusion_prior":{"condition_on_text_encodings": args.dp_condition_on_text_encodings,
|
||||
"timesteps": args.dp_timesteps,
|
||||
"cond_drop_prob":args.dp_cond_drop_prob,
|
||||
"loss_type":args.dp_loss_type,
|
||||
"clip":args.clip}
|
||||
})
|
||||
|
||||
RESUME = False
|
||||
# Check if DPRIOR_PATH exists(saved model path)
|
||||
DPRIOR_PATH = args.pretrained_model_path
|
||||
if(DPRIOR_PATH is not None):
|
||||
RESUME = True
|
||||
else:
|
||||
wandb.init(
|
||||
entity=args.wandb_entity,
|
||||
project=args.wandb_project,
|
||||
config=config)
|
||||
|
||||
# Obtain the utilized device.
|
||||
|
||||
has_cuda = torch.cuda.is_available()
|
||||
if has_cuda:
|
||||
device = torch.device("cuda:0")
|
||||
torch.cuda.set_device(device)
|
||||
|
||||
# Training loop
|
||||
train(args.image_embed_dim,
|
||||
args.image_embed_url,
|
||||
args.text_embed_url,
|
||||
args.batch_size,
|
||||
args.train_percent,
|
||||
args.val_percent,
|
||||
args.test_percent,
|
||||
args.num_epochs,
|
||||
args.dp_loss_type,
|
||||
args.clip,
|
||||
args.dp_condition_on_text_encodings,
|
||||
args.dp_timesteps,
|
||||
args.dp_normformer,
|
||||
args.dp_cond_drop_prob,
|
||||
args.dpn_depth,
|
||||
args.dpn_dim_head,
|
||||
args.dpn_heads,
|
||||
args.save_interval,
|
||||
args.save_path,
|
||||
device,
|
||||
RESUME,
|
||||
DPRIOR_PATH,
|
||||
config,
|
||||
args.wandb_entity,
|
||||
args.wandb_project,
|
||||
args.learning_rate,
|
||||
args.max_grad_norm,
|
||||
args.weight_decay,
|
||||
args.dropout,
|
||||
args.amp)
|
||||
|
||||
if __name__ == "__main__":
|
||||
main()
|
||||
train()
|
||||
|
||||
Reference in New Issue
Block a user