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25 Commits

Author SHA1 Message Date
Phil Wang
68e7d2f241 make sure gradient accumulation feature works even if all arguments passed in are keyword arguments 2022-05-15 11:16:16 -07:00
Phil Wang
74f222596a remove todo 2022-05-15 11:01:35 -07:00
Phil Wang
aa6772dcff make sure optimizer and scaler is reloaded on resume for training diffusion prior script, move argparse to click 2022-05-15 10:48:10 -07:00
Phil Wang
71d0c4edae cleanup to use diffusion prior trainer 2022-05-15 10:16:05 -07:00
Phil Wang
f7eee09d8b 0.2.30 2022-05-15 09:56:59 -07:00
Phil Wang
89de5af63e experiment tracker agnostic 2022-05-15 09:56:40 -07:00
Phil Wang
4ec6d0ba81 backwards pass is not recommended under the autocast context, per pytorch docs 2022-05-14 18:26:19 -07:00
Phil Wang
aee92dba4a simplify more 2022-05-14 17:16:46 -07:00
Phil Wang
b0cd5f24b6 take care of gradient accumulation automatically for researchers, by passing in a max_batch_size on the decoder or diffusion prior trainer forward 2022-05-14 17:04:09 -07:00
Phil Wang
b494ed81d4 take care of backwards within trainer classes for diffusion prior and decoder, readying to take care of gradient accumulation as well (plus, unsure if loss should be backwards within autocast block) 2022-05-14 15:49:24 -07:00
Phil Wang
ff3474f05c normalize conditioning tokens outside of cross attention blocks 2022-05-14 14:23:52 -07:00
Phil Wang
d5293f19f1 lineup with paper 2022-05-14 13:57:00 -07:00
Phil Wang
e697183849 be able to customize adam eps 2022-05-14 13:55:04 -07:00
Phil Wang
591d37e266 lower default initial learning rate to what Jonathan Ho had in his original repo 2022-05-14 13:22:43 -07:00
Phil Wang
d1f02e8f49 always use sandwich norm for attention layer 2022-05-14 12:13:41 -07:00
Phil Wang
9faab59b23 use post-attn-branch layernorm in attempt to stabilize cross attention conditioning in decoder 2022-05-14 11:58:09 -07:00
Phil Wang
5d27029e98 make sure lowres conditioning image is properly normalized to -1 to 1 for cascading ddpm 2022-05-14 01:23:54 -07:00
Phil Wang
3115fa17b3 fix everything around normalizing images to -1 to 1 for ddpm training automatically 2022-05-14 01:17:11 -07:00
Phil Wang
124d8577c8 move the inverse normalization function called before image embeddings are derived from clip to within the diffusion prior and decoder classes 2022-05-14 00:37:52 -07:00
Phil Wang
2db0c9794c comments 2022-05-12 14:25:20 -07:00
Phil Wang
2277b47ffd make sure learned variance can work for any number of unets in the decoder, defaults to first unet, as suggested was used in the paper 2022-05-12 14:18:15 -07:00
Phil Wang
28b58e568c cleanup in preparation of option for learned variance 2022-05-12 12:04:52 -07:00
Phil Wang
924455d97d align the ema model device back after sampling from the cascading ddpm in the decoder 2022-05-11 19:56:54 -07:00
Phil Wang
6021945fc8 default to l2 loss 2022-05-11 19:24:51 -07:00
Light-V
6f76652d11 fix typo in README.md (#85)
The default config for clip from openai should be ViT-B/32
2022-05-11 13:38:16 -07:00
7 changed files with 557 additions and 220 deletions

View File

@@ -508,7 +508,7 @@ To use a pretrained OpenAI CLIP, simply import `OpenAIClipAdapter` and pass it i
import torch
from dalle2_pytorch import DALLE2, DiffusionPriorNetwork, DiffusionPrior, Unet, Decoder, OpenAIClipAdapter
# openai pretrained clip - defaults to ViT/B-32
# openai pretrained clip - defaults to ViT-B/32
clip = OpenAIClipAdapter()
@@ -732,8 +732,8 @@ clip = CLIP(
# mock data
text = torch.randint(0, 49408, (4, 256)).cuda()
images = torch.randn(4, 3, 256, 256).cuda()
text = torch.randint(0, 49408, (32, 256)).cuda()
images = torch.randn(32, 3, 256, 256).cuda()
# decoder (with unet)
@@ -774,8 +774,12 @@ decoder_trainer = DecoderTrainer(
)
for unet_number in (1, 2):
loss = decoder_trainer(images, text = text, unet_number = unet_number) # use the decoder_trainer forward
loss.backward()
loss = decoder_trainer(
images,
text = text,
unet_number = unet_number, # which unet to train on
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
)
decoder_trainer.update(unet_number) # update the specific unet as well as its exponential moving average
@@ -810,8 +814,8 @@ clip = CLIP(
# mock data
text = torch.randint(0, 49408, (4, 256)).cuda()
images = torch.randn(4, 3, 256, 256).cuda()
text = torch.randint(0, 49408, (32, 256)).cuda()
images = torch.randn(32, 3, 256, 256).cuda()
# prior networks (with transformer)
@@ -838,8 +842,7 @@ diffusion_prior_trainer = DiffusionPriorTrainer(
ema_update_every = 10,
)
loss = diffusion_prior_trainer(text, images)
loss.backward()
loss = diffusion_prior_trainer(text, images, max_batch_size = 4)
diffusion_prior_trainer.update() # this will update the optimizer as well as the exponential moving averaged diffusion prior
# after much of the above three lines in a loop
@@ -1004,6 +1007,7 @@ 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 +1015,12 @@ 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
## Citations

View File

@@ -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
@@ -33,6 +33,10 @@ from rotary_embedding_torch import RotaryEmbedding
from x_clip import CLIP
from coca_pytorch import CoCa
# constants
NAT = 1. / math.log(2.)
# helper functions
def exists(val):
@@ -41,6 +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
@@ -91,6 +103,9 @@ def freeze_model_and_make_eval_(model):
# tensor helpers
def log(t, eps = 1e-12):
return torch.log(t.clamp(min = eps))
def l2norm(t):
return F.normalize(t, dim = -1)
@@ -107,10 +122,10 @@ 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
@@ -271,7 +286,7 @@ class OpenAIClipAdapter(BaseClipAdapter):
def embed_image(self, image):
assert not self.cleared
image = resize_image_to(image, self.image_size)
image = self.clip_normalize(unnormalize_img(image))
image = self.clip_normalize(image)
image_embed = self.clip.encode_image(image)
return EmbeddedImage(l2norm(image_embed.float()), None)
@@ -297,6 +312,36 @@ def noise_like(shape, device, repeat=False):
noise = lambda: torch.randn(shape, device=device)
return repeat_noise() if repeat else noise()
def meanflat(x):
return x.mean(dim = tuple(range(1, len(x.shape))))
def normal_kl(mean1, logvar1, mean2, logvar2):
return 0.5 * (-1.0 + logvar2 - logvar1 + torch.exp(logvar1 - logvar2) + ((mean1 - mean2) ** 2) * torch.exp(-logvar2))
def approx_standard_normal_cdf(x):
return 0.5 * (1.0 + torch.tanh(((2.0 / math.pi) ** 0.5) * (x + 0.044715 * (x ** 3))))
def discretized_gaussian_log_likelihood(x, *, means, log_scales, thres = 0.999):
assert x.shape == means.shape == log_scales.shape
centered_x = x - means
inv_stdv = torch.exp(-log_scales)
plus_in = inv_stdv * (centered_x + 1. / 255.)
cdf_plus = approx_standard_normal_cdf(plus_in)
min_in = inv_stdv * (centered_x - 1. / 255.)
cdf_min = approx_standard_normal_cdf(min_in)
log_cdf_plus = log(cdf_plus)
log_one_minus_cdf_min = log(1. - cdf_min)
cdf_delta = cdf_plus - cdf_min
log_probs = torch.where(x < -thres,
log_cdf_plus,
torch.where(x > thres,
log_one_minus_cdf_min,
log(cdf_delta)))
return log_probs
def cosine_beta_schedule(timesteps, s = 0.008):
"""
cosine schedule
@@ -398,12 +443,6 @@ class BaseGaussianDiffusion(nn.Module):
register_buffer('posterior_mean_coef1', betas * torch.sqrt(alphas_cumprod_prev) / (1. - alphas_cumprod))
register_buffer('posterior_mean_coef2', (1. - alphas_cumprod_prev) * torch.sqrt(alphas) / (1. - alphas_cumprod))
def q_mean_variance(self, x_start, t):
mean = extract(self.sqrt_alphas_cumprod, t, x_start.shape) * x_start
variance = extract(1. - self.alphas_cumprod, t, x_start.shape)
log_variance = extract(self.log_one_minus_alphas_cumprod, t, x_start.shape)
return mean, variance, log_variance
def q_posterior(self, x_start, x_t, t):
posterior_mean = (
extract(self.posterior_mean_coef1, t, x_t.shape) * x_start +
@@ -575,7 +614,6 @@ class Attention(nn.Module):
heads = 8,
dropout = 0.,
causal = False,
post_norm = False,
rotary_emb = None
):
super().__init__()
@@ -585,7 +623,6 @@ 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))
@@ -596,7 +633,7 @@ 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):
@@ -653,8 +690,7 @@ 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__(
@@ -680,7 +716,7 @@ 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)
]))
@@ -831,7 +867,7 @@ class DiffusionPrior(BaseGaussianDiffusion):
image_channels = 3,
timesteps = 1000,
cond_drop_prob = 0.,
loss_type = "l1",
loss_type = "l2",
predict_x_start = True,
beta_schedule = "cosine",
condition_on_text_encodings = True, # the paper suggests this is needed, but you can turn it off for your CLIP preprocessed text embed -> image embed training
@@ -1127,6 +1163,7 @@ class CrossAttention(nn.Module):
dim_head = 64,
heads = 8,
dropout = 0.,
norm_context = False
):
super().__init__()
self.scale = dim_head ** -0.5
@@ -1136,13 +1173,17 @@ 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
@@ -1272,6 +1313,7 @@ class Unet(nn.Module):
out_dim = None,
dim_mults=(1, 2, 4, 8),
channels = 3,
channels_out = None,
attn_dim_head = 32,
attn_heads = 16,
lowres_cond = False, # for cascading diffusion - https://cascaded-diffusion.github.io/
@@ -1302,6 +1344,7 @@ class Unet(nn.Module):
# determine dimensions
self.channels = channels
self.channels_out = default(channels_out, channels)
init_channels = channels if not lowres_cond else channels * 2 # in cascading diffusion, one concats the low resolution image, blurred, for conditioning the higher resolution synthesis
init_dim = default(init_dim, dim // 3 * 2)
@@ -1336,6 +1379,9 @@ class Unet(nn.Module):
Rearrange('b (n d) -> b n d', n = num_image_tokens)
) if 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
@@ -1407,11 +1453,9 @@ class Unet(nn.Module):
Upsample(dim_in)
]))
out_dim = default(out_dim, channels)
self.final_conv = nn.Sequential(
ResnetBlock(dim, dim, groups = resnet_groups[0]),
nn.Conv2d(dim, out_dim, 1)
nn.Conv2d(dim, self.channels_out, 1)
)
# if the current settings for the unet are not correct
@@ -1421,13 +1465,25 @@ class Unet(nn.Module):
*,
lowres_cond,
channels,
channels_out,
cond_on_image_embeds,
cond_on_text_encodings
):
if lowres_cond == self.lowres_cond and channels == self.channels and cond_on_image_embeds == self.cond_on_image_embeds and cond_on_text_encodings == self.cond_on_text_encodings:
if lowres_cond == self.lowres_cond and \
channels == self.channels and \
cond_on_image_embeds == self.cond_on_image_embeds and \
cond_on_text_encodings == self.cond_on_text_encodings and \
channels_out == self.channels_out:
return self
updated_kwargs = {'lowres_cond': lowres_cond, 'channels': channels, 'cond_on_image_embeds': cond_on_image_embeds, 'cond_on_text_encodings': cond_on_text_encodings}
updated_kwargs = dict(
lowres_cond = lowres_cond,
channels = channels,
channels_out = channels_out,
cond_on_image_embeds = cond_on_image_embeds,
cond_on_text_encodings = cond_on_text_encodings
)
return self.__class__(**{**self._locals, **updated_kwargs})
def forward_with_cond_scale(
@@ -1541,6 +1597,11 @@ 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 = []
@@ -1614,7 +1675,7 @@ class Decoder(BaseGaussianDiffusion):
timesteps = 1000,
image_cond_drop_prob = 0.1,
text_cond_drop_prob = 0.5,
loss_type = 'l1',
loss_type = 'l2',
beta_schedule = 'cosine',
predict_x_start = False,
predict_x_start_for_latent_diffusion = False,
@@ -1627,6 +1688,8 @@ class Decoder(BaseGaussianDiffusion):
clip_denoised = True,
clip_x_start = True,
clip_adapter_overrides = dict(),
learned_variance = True,
vb_loss_weight = 0.001,
unconditional = False
):
super().__init__(
@@ -1665,10 +1728,18 @@ class Decoder(BaseGaussianDiffusion):
unets = cast_tuple(unet)
vaes = pad_tuple_to_length(cast_tuple(vae), len(unets), fillvalue = NullVQGanVAE(channels = self.channels))
# whether to use learned variance, defaults to True for the first unet in the cascade, as in paper
learned_variance = pad_tuple_to_length(cast_tuple(learned_variance), len(unets), fillvalue = False)
self.learned_variance = learned_variance
self.vb_loss_weight = vb_loss_weight
# construct unets and vaes
self.unets = nn.ModuleList([])
self.vaes = nn.ModuleList([])
for ind, (one_unet, one_vae) in enumerate(zip(unets, vaes)):
for ind, (one_unet, one_vae, one_unet_learned_var) in enumerate(zip(unets, vaes, learned_variance)):
assert isinstance(one_unet, Unet)
assert isinstance(one_vae, (VQGanVAE, NullVQGanVAE))
@@ -1676,12 +1747,14 @@ class Decoder(BaseGaussianDiffusion):
latent_dim = one_vae.encoded_dim if exists(one_vae) else None
unet_channels = default(latent_dim, self.channels)
unet_channels_out = unet_channels * (1 if not one_unet_learned_var else 2)
one_unet = one_unet.cast_model_parameters(
lowres_cond = not is_first,
cond_on_image_embeds = is_first and not unconditional,
cond_on_text_encodings = one_unet.cond_on_text_encodings and not unconditional,
channels = unet_channels
channels = unet_channels,
channels_out = unet_channels_out
)
self.unets.append(one_unet)
@@ -1744,8 +1817,11 @@ class Decoder(BaseGaussianDiffusion):
yield
unet.cpu()
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, cond_scale = 1.):
pred = 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)
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):
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:
pred, var_interp_frac_unnormalized = pred.chunk(2, dim = 1)
if predict_x_start:
x_recon = pred
@@ -1756,24 +1832,38 @@ class Decoder(BaseGaussianDiffusion):
x_recon.clamp_(-1., 1.)
model_mean, posterior_variance, posterior_log_variance = self.q_posterior(x_start=x_recon, x_t=x, t=t)
if learned_variance:
# if learned variance, posterio variance and posterior log variance are predicted by the network
# by an interpolation of the max and min log beta values
# 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_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()
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, clip_denoised = True, repeat_noise = False):
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)
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)
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, unet, shape, image_embed, predict_x_start = False, clip_denoised = True, lowres_cond_img = None, text_encodings = None, text_mask = None, cond_scale = 1):
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,
@@ -1785,17 +1875,26 @@ class Decoder(BaseGaussianDiffusion):
cond_scale = cond_scale,
lowres_cond_img = lowres_cond_img,
predict_x_start = predict_x_start,
learned_variance = learned_variance,
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):
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)
pred = unet(
model_output = unet(
x_noisy,
times,
image_embed = image_embed,
@@ -1806,10 +1905,48 @@ class Decoder(BaseGaussianDiffusion):
text_cond_drop_prob = self.text_cond_drop_prob,
)
if learned_variance:
pred, _ = model_output.chunk(2, dim = 1)
else:
pred = model_output
target = noise if not predict_x_start else x_start
loss = self.loss_fn(pred, target)
return loss
if not learned_variance:
# return simple loss if not using learned variance
return loss
# most of the code below is transcribed from
# https://github.com/hojonathanho/diffusion/blob/master/diffusion_tf/diffusion_utils_2.py
# the Improved DDPM paper then further modified it so that the mean is detached (shown a couple lines before), and weighted to be smaller than the l1 or l2 "simple" loss
# it is questionable whether this is really needed, looking at some of the figures in the paper, but may as well stay faithful to their implementation
# if learning the variance, also include the extra weight kl loss
true_mean, _, true_log_variance_clipped = self.q_posterior(x_start = x_start, x_t = x_noisy, t = times)
model_mean, _, model_log_variance = self.p_mean_variance(unet, x = x_noisy, t = times, image_embed = image_embed, clip_denoised = clip_denoised, learned_variance = True, model_output = model_output)
# kl loss with detached model predicted mean, for stability reasons as in paper
detached_model_mean = model_mean.detach()
kl = normal_kl(true_mean, true_log_variance_clipped, detached_model_mean, model_log_variance)
kl = meanflat(kl) * NAT
decoder_nll = -discretized_gaussian_log_likelihood(x_start, means = detached_model_mean, log_scales = 0.5 * model_log_variance)
decoder_nll = meanflat(decoder_nll) * NAT
# at the first timestep return the decoder NLL, otherwise return KL(q(x_{t-1}|x_t,x_0) || p(x_{t-1}|x_t))
vb_losses = torch.where(times == 0, decoder_nll, kl)
# weight the vb loss smaller, for stability, as in the paper (recommended 0.001)
vb_loss = vb_losses.mean() * self.vb_loss_weight
return loss + vb_loss
@torch.inference_mode()
@eval_decorator
@@ -1836,7 +1973,7 @@ class Decoder(BaseGaussianDiffusion):
img = None
is_cuda = next(self.parameters()).is_cuda
for unet_number, unet, vae, channel, image_size, predict_x_start in tqdm(zip(range(1, len(self.unets) + 1), self.unets, self.vaes, self.sample_channels, self.image_sizes, self.predict_x_start)):
for unet_number, unet, vae, channel, image_size, predict_x_start, learned_variance in tqdm(zip(range(1, len(self.unets) + 1), self.unets, self.vaes, self.sample_channels, self.image_sizes, self.predict_x_start, self.learned_variance)):
context = self.one_unet_in_gpu(unet = unet) if is_cuda else null_context()
@@ -1862,6 +1999,7 @@ class Decoder(BaseGaussianDiffusion):
text_mask = text_mask,
cond_scale = cond_scale,
predict_x_start = predict_x_start,
learned_variance = learned_variance,
clip_denoised = not is_latent_diffusion,
lowres_cond_img = lowres_cond_img
)
@@ -1891,6 +2029,7 @@ class Decoder(BaseGaussianDiffusion):
target_image_size = self.image_sizes[unet_index]
predict_x_start = self.predict_x_start[unet_index]
random_crop_size = self.random_crop_sizes[unet_index]
learned_variance = self.learned_variance[unet_index]
b, c, h, w, device, = *image.shape, image.device
check_shape(image, 'b c h w', c = self.channels)
@@ -1928,7 +2067,7 @@ class Decoder(BaseGaussianDiffusion):
if exists(lowres_cond_img):
lowres_cond_img = 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)
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)
# main class
@@ -1978,4 +2117,3 @@ class DALLE2(nn.Module):
return images[0]
return images

View File

@@ -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)

View 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)

View File

@@ -1,6 +1,8 @@
import time
import copy
from math import ceil
from functools import partial
from collections.abc import Iterable
import torch
from torch import nn
@@ -14,6 +16,9 @@ from dalle2_pytorch.optimizer import get_optimizer
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 +45,56 @@ 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
# 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)
chunk_size = 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,) * chunk_size) 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 +126,7 @@ 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 +145,7 @@ class EMA(nn.Module):
def __init__(
self,
model,
beta = 0.99,
beta = 0.9999,
update_after_step = 1000,
update_every = 10,
):
@@ -105,6 +160,10 @@ class EMA(nn.Module):
self.register_buffer('initted', torch.Tensor([False]))
self.register_buffer('step', torch.tensor([0.]))
def restore_ema_model_device(self):
device = self.initted.device
self.ema_model.to(device)
def update(self):
self.step += 1
@@ -143,6 +202,7 @@ class DiffusionPriorTrainer(nn.Module):
use_ema = True,
lr = 3e-4,
wd = 1e-2,
eps = 1e-6,
max_grad_norm = None,
amp = False,
**kwargs
@@ -169,6 +229,7 @@ class DiffusionPriorTrainer(nn.Module):
diffusion_prior.parameters(),
lr = lr,
wd = wd,
eps = eps,
**kwargs
)
@@ -176,6 +237,8 @@ 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)
@@ -188,6 +251,8 @@ class DiffusionPriorTrainer(nn.Module):
if self.use_ema:
self.ema_diffusion_prior.update()
self.step += 1
@torch.inference_mode()
def p_sample_loop(self, *args, **kwargs):
return self.ema_diffusion_prior.ema_model.p_sample_loop(*args, **kwargs)
@@ -203,12 +268,20 @@ class DiffusionPriorTrainer(nn.Module):
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()
self.scaler.scale(loss).backward()
return total_loss
# decoder trainer
@@ -217,8 +290,9 @@ 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
@@ -243,13 +317,14 @@ 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
)
@@ -265,6 +340,8 @@ 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])
@@ -295,6 +372,8 @@ class DecoderTrainer(nn.Module):
ema_unet = self.ema_unets[index]
ema_unet.update()
self.step += 1
@torch.no_grad()
def sample(self, *args, **kwargs):
if self.use_ema:
@@ -305,16 +384,28 @@ class DecoderTrainer(nn.Module):
if self.use_ema:
self.decoder.unets = trainable_unets # restore original training unets
# cast the ema_model unets back to original device
for ema in self.ema_unets:
ema.restore_ema_model_device()
return output
def forward(
self,
x,
*,
*args,
unet_number,
divisor = 1,
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)
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()
self.scale(loss, unet_number = unet_number).backward()
return total_loss

View File

@@ -10,7 +10,7 @@ setup(
'dream = dalle2_pytorch.cli:dream'
],
},
version = '0.2.10',
version = '0.2.31',
license='MIT',
description = 'DALL-E 2',
author = 'Phil Wang',

View File

@@ -1,24 +1,42 @@
import os
from pathlib import Path
import click
import math
import argparse
import time
import numpy as np
import torch
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 import DiffusionPrior, DiffusionPriorNetwork
from dalle2_pytorch.train 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"
# constants
NUM_TEST_EMBEDDINGS = 100 # for cosine similarity reporting during training
REPORT_METRICS_EVERY = 100 # for cosine similarity and other metric reporting during training
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,device,image_reader,text_reader,start,end,batch_size,loss_type,phase="Validation"):
model.eval()
@@ -40,7 +58,7 @@ def eval_model(model,device,image_reader,text_reader,start,end,batch_size,loss_t
total_samples += batches
avg_loss = (total_loss / total_samples)
wandb.log({f'{phase} {loss_type}': avg_loss})
tracker.log({f'{phase} {loss_type}': avg_loss})
def report_cosine_sims(diffusion_prior,image_reader,text_reader,train_set_size,NUM_TEST_EMBEDDINGS,device):
diffusion_prior.eval()
@@ -87,7 +105,7 @@ def report_cosine_sims(diffusion_prior,image_reader,text_reader,train_set_size,N
text_embed, predicted_unrelated_embeddings).cpu().numpy()
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),
@@ -124,48 +142,67 @@ def train(image_embed_dim,
dropout=0.05,
amp=False):
# DiffusionPriorNetwork
# 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
# 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,
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)
Path(save_path).mkdir(exist_ok = True, parents = True)
# 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
### Training code ###
scaler = GradScaler(enabled=amp)
optimizer = get_optimizer(diffusion_prior.net.parameters(), wd=weight_decay, lr=learning_rate)
epochs = num_epochs
step = 0
t = time.time()
timer = Timer()
epochs = num_epochs
train_set_size = int(train_percent*num_data_points)
val_set_size = int(val_percent*num_data_points)
@@ -176,32 +213,31 @@ def train(image_embed_dim,
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)):
diffusion_prior.train()
trainer.train()
emb_images_tensor = torch.tensor(emb_images[0]).to(device)
emb_text_tensor = torch.tensor(emb_text[0]).to(device)
with autocast(enabled=amp):
loss = diffusion_prior(text_embed = emb_text_tensor,image_embed = emb_images_tensor)
scaler.scale(loss).backward()
loss = trainer(text_embed = emb_text_tensor, image_embed = emb_images_tensor)
# 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.item(),
"Steps": step,
"Samples per second": samples_per_sec})
# Log cosineSim(text_embed,predicted_image_embed) - cosineSim(text_embed,image_embed)
@@ -225,91 +261,109 @@ def train(image_embed_dim,
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()
trainer.update()
### Test run ###
test_set_size = int(test_percent*train_set_size)
start=train_set_size+val_set_size
end=num_data_points
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")
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)
@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("--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("--batch-size", default=10**4)
@click.option("--num-epochs", default=5)
@click.option("--image-embed-dim", default=768)
@click.option("--train-percent", default=0.7)
@click.option("--val-percent", default=0.2)
@click.option("--test-percent", default=0.1)
@click.option("--dpn-depth", default=6)
@click.option("--dpn-dim-head", default=64)
@click.option("--dpn-heads", default=8)
@click.option("--dp-condition-on-text-encodings", default=False)
@click.option("--dp-timesteps", default=100)
@click.option("--dp-normformer", default=False)
@click.option("--dp-cond-drop-prob", default=0.1)
@click.option("--dp-loss-type", default="l2")
@click.option("--clip", default=None)
@click.option("--amp", default=False)
@click.option("--save-interval", default=30)
@click.option("--save-path", default="./diffusion_prior_checkpoints")
@click.option("--pretrained-model-path", default=None)
def main(
wandb_entity,
wandb_project,
wandb_dataset,
wandb_arch,
image_embed_url,
text_embed_url,
learning_rate,
weight_decay,
dropout,
max_grad_norm,
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
):
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
}
}
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)
RESUME = exists(DPRIOR_PATH)
if not RESUME:
tracker.init(
entity = wandb_entity,
project = wandb_project,
config = config
)
# Obtain the utilized device.
@@ -319,36 +373,36 @@ def main():
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,
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,
args.wandb_entity,
args.wandb_project,
args.learning_rate,
args.max_grad_norm,
args.weight_decay,
args.dropout,
args.amp)
wandb_entity,
wandb_project,
learning_rate,
max_grad_norm,
weight_decay,
dropout,
amp)
if __name__ == "__main__":
main()
main()