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7 Commits

Author SHA1 Message Date
Phil Wang
2219348a6e adopt similar unet architecture as imagen 2022-06-15 12:18:21 -07:00
Phil Wang
9eea9b9862 add p2 loss reweighting for decoder training as an option 2022-06-14 10:58:57 -07:00
Phil Wang
5d958713c0 fix classifier free guidance for image hiddens summed to time hiddens, thanks to @xvjiarui for finding this bug 2022-06-13 21:01:50 -07:00
Phil Wang
0f31980362 cleanup 2022-06-07 17:31:38 -07:00
Phil Wang
bee5bf3815 fix for https://github.com/lucidrains/DALLE2-pytorch/issues/143 2022-06-07 09:03:48 -07:00
Phil Wang
350a3d6045 0.6.16 2022-06-06 08:45:46 -07:00
Kashif Rasul
1a81670718 fix quadratic_beta_schedule (#141) 2022-06-06 08:45:14 -07:00
4 changed files with 67 additions and 36 deletions

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@@ -1207,4 +1207,14 @@ This library would not have gotten to this working state without the help of
}
```
```bibtex
@article{Choi2022PerceptionPT,
title = {Perception Prioritized Training of Diffusion Models},
author = {Jooyoung Choi and Jungbeom Lee and Chaehun Shin and Sungwon Kim and Hyunwoo J. Kim and Sung-Hoon Yoon},
journal = {ArXiv},
year = {2022},
volume = {abs/2204.00227}
}
```
*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>

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@@ -1,7 +1,6 @@
import math
import random
from tqdm import tqdm
from inspect import isfunction
from functools import partial, wraps
from contextlib import contextmanager
from collections import namedtuple
@@ -12,7 +11,7 @@ import torch.nn.functional as F
from torch import nn, einsum
import torchvision.transforms as T
from einops import rearrange, repeat
from einops import rearrange, repeat, reduce
from einops.layers.torch import Rearrange
from einops_exts import rearrange_many, repeat_many, check_shape
from einops_exts.torch import EinopsToAndFrom
@@ -57,7 +56,7 @@ def maybe(fn):
def default(val, d):
if exists(val):
return val
return d() if isfunction(d) else d
return d() if callable(d) else d
def cast_tuple(val, length = 1):
if isinstance(val, list):
@@ -314,11 +313,6 @@ def extract(a, t, x_shape):
out = a.gather(-1, t)
return out.reshape(b, *((1,) * (len(x_shape) - 1)))
def noise_like(shape, device, repeat=False):
repeat_noise = lambda: torch.randn((1, *shape[1:]), device=device).repeat(shape[0], *((1,) * (len(shape) - 1)))
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))))
@@ -373,7 +367,7 @@ def quadratic_beta_schedule(timesteps):
scale = 1000 / timesteps
beta_start = scale * 0.0001
beta_end = scale * 0.02
return torch.linspace(beta_start**2, beta_end**2, timesteps, dtype = torch.float64) ** 2
return torch.linspace(beta_start**0.5, beta_end**0.5, timesteps, dtype = torch.float64) ** 2
def sigmoid_beta_schedule(timesteps):
@@ -385,7 +379,7 @@ def sigmoid_beta_schedule(timesteps):
class BaseGaussianDiffusion(nn.Module):
def __init__(self, *, beta_schedule, timesteps, loss_type):
def __init__(self, *, beta_schedule, timesteps, loss_type, p2_loss_weight_gamma = 0., p2_loss_weight_k = 1):
super().__init__()
if beta_schedule == "cosine":
@@ -450,6 +444,11 @@ 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))
# p2 loss reweighting
self.has_p2_loss_reweighting = p2_loss_weight_gamma > 0.
register_buffer('p2_loss_weight', (p2_loss_weight_k + alphas_cumprod / (1 - alphas_cumprod)) ** -p2_loss_weight_gamma)
def q_posterior(self, x_start, x_t, t):
posterior_mean = (
extract(self.posterior_mean_coef1, t, x_t.shape) * x_start +
@@ -946,10 +945,10 @@ class DiffusionPrior(BaseGaussianDiffusion):
return model_mean, posterior_variance, posterior_log_variance
@torch.no_grad()
def p_sample(self, x, t, text_cond = None, clip_denoised = True, repeat_noise = False, cond_scale = 1.):
def p_sample(self, x, t, text_cond = None, clip_denoised = True, 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, cond_scale = cond_scale)
noise = noise_like(x.shape, device, repeat_noise)
noise = torch.randn_like(x)
# 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
@@ -1085,8 +1084,9 @@ class DiffusionPrior(BaseGaussianDiffusion):
def Upsample(dim):
return nn.ConvTranspose2d(dim, dim, 4, 2, 1)
def Downsample(dim):
return nn.Conv2d(dim, dim, 4, 2, 1)
def Downsample(dim, *, dim_out = None):
dim_out = default(dim_out, dim)
return nn.Conv2d(dim, dim_out, 4, 2, 1)
class SinusoidalPosEmb(nn.Module):
def __init__(self, dim):
@@ -1371,7 +1371,7 @@ class Unet(nn.Module):
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)
init_dim = default(init_dim, dim)
self.init_conv = CrossEmbedLayer(init_channels, dim_out = init_dim, kernel_sizes = init_cross_embed_kernel_sizes, stride = 1)
@@ -1428,6 +1428,7 @@ class Unet(nn.Module):
# for classifier free guidance
self.null_image_embed = nn.Parameter(torch.randn(1, num_image_tokens, cond_dim))
self.null_image_hiddens = nn.Parameter(torch.randn(1, time_cond_dim))
self.max_text_len = max_text_len
self.null_text_embed = nn.Parameter(torch.randn(1, max_text_len, cond_dim))
@@ -1461,10 +1462,10 @@ class Unet(nn.Module):
layer_cond_dim = cond_dim if not is_first else None
self.downs.append(nn.ModuleList([
ResnetBlock(dim_in, dim_out, time_cond_dim = time_cond_dim, groups = groups),
downsample_klass(dim_in, dim_out = dim_out),
ResnetBlock(dim_out, dim_out, time_cond_dim = time_cond_dim, groups = groups),
Residual(LinearAttention(dim_out, **attn_kwargs)) if sparse_attn else nn.Identity(),
nn.ModuleList([ResnetBlock(dim_out, dim_out, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups) for _ in range(layer_num_resnet_blocks)]),
downsample_klass(dim_out) if not is_last else nn.Identity()
]))
mid_dim = dims[-1]
@@ -1473,7 +1474,7 @@ class Unet(nn.Module):
self.mid_attn = EinopsToAndFrom('b c h w', 'b (h w) c', Residual(Attention(mid_dim, **attn_kwargs))) if attend_at_middle else None
self.mid_block2 = ResnetBlock(mid_dim, mid_dim, cond_dim = cond_dim, time_cond_dim = time_cond_dim, groups = resnet_groups[-1])
for ind, ((dim_in, dim_out), groups, layer_num_resnet_blocks) in enumerate(zip(reversed(in_out[1:]), reversed(resnet_groups), reversed(num_resnet_blocks))):
for ind, ((dim_in, dim_out), groups, layer_num_resnet_blocks) in enumerate(zip(reversed(in_out), reversed(resnet_groups), reversed(num_resnet_blocks))):
is_last = ind >= (num_resolutions - 2)
layer_cond_dim = cond_dim if not is_last else None
@@ -1565,19 +1566,28 @@ class Unet(nn.Module):
time_tokens = self.to_time_tokens(time_hiddens)
t = self.to_time_cond(time_hiddens)
# image embedding to be summed to time embedding
# discovered by @mhh0318 in the paper
if exists(image_embed) and exists(self.to_image_hiddens):
image_hiddens = self.to_image_hiddens(image_embed)
t = t + image_hiddens
# conditional dropout
image_keep_mask = prob_mask_like((batch_size,), 1 - image_cond_drop_prob, device = device)
text_keep_mask = prob_mask_like((batch_size,), 1 - text_cond_drop_prob, device = device)
image_keep_mask, text_keep_mask = rearrange_many((image_keep_mask, text_keep_mask), 'b -> b 1 1')
text_keep_mask = rearrange(text_keep_mask, 'b -> b 1 1')
# image embedding to be summed to time embedding
# discovered by @mhh0318 in the paper
if exists(image_embed) and exists(self.to_image_hiddens):
image_hiddens = self.to_image_hiddens(image_embed)
image_keep_mask_hidden = rearrange(image_keep_mask, 'b -> b 1')
null_image_hiddens = self.null_image_hiddens.to(image_hiddens.dtype)
image_hiddens = torch.where(
image_keep_mask_hidden,
image_hiddens,
null_image_hiddens
)
t = t + image_hiddens
# mask out image embedding depending on condition dropout
# for classifier free guidance
@@ -1585,11 +1595,12 @@ class Unet(nn.Module):
image_tokens = None
if self.cond_on_image_embeds:
image_keep_mask_embed = rearrange(image_keep_mask, 'b -> b 1 1')
image_tokens = self.image_to_tokens(image_embed)
null_image_embed = self.null_image_embed.to(image_tokens.dtype) # for some reason pytorch AMP not working
image_tokens = torch.where(
image_keep_mask,
image_keep_mask_embed,
image_tokens,
null_image_embed
)
@@ -1644,7 +1655,8 @@ class Unet(nn.Module):
hiddens = []
for init_block, sparse_attn, resnet_blocks, downsample in self.downs:
for downsample, init_block, sparse_attn, resnet_blocks in self.downs:
x = downsample(x)
x = init_block(x, c, t)
x = sparse_attn(x)
@@ -1652,7 +1664,6 @@ class Unet(nn.Module):
x = resnet_block(x, c, t)
hiddens.append(x)
x = downsample(x)
x = self.mid_block1(x, mid_c, t)
@@ -1750,12 +1761,16 @@ class Decoder(BaseGaussianDiffusion):
unconditional = False,
auto_normalize_img = True, # whether to take care of normalizing the image from [0, 1] to [-1, 1] and back automatically - you can turn this off if you want to pass in the [-1, 1] ranged image yourself from the dataloader
use_dynamic_thres = False, # from the Imagen paper
dynamic_thres_percentile = 0.9
dynamic_thres_percentile = 0.9,
p2_loss_weight_gamma = 0., # p2 loss weight, from https://arxiv.org/abs/2204.00227 - 0 is equivalent to weight of 1 across time - 1. is recommended
p2_loss_weight_k = 1
):
super().__init__(
beta_schedule = beta_schedule,
timesteps = timesteps,
loss_type = loss_type
loss_type = loss_type,
p2_loss_weight_gamma = p2_loss_weight_gamma,
p2_loss_weight_k = p2_loss_weight_k
)
self.unconditional = unconditional
@@ -1956,10 +1971,10 @@ class Decoder(BaseGaussianDiffusion):
return model_mean, posterior_variance, posterior_log_variance
@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):
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):
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)
noise = noise_like(x.shape, device, repeat_noise)
noise = torch.randn_like(x)
# 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
@@ -2023,7 +2038,13 @@ class Decoder(BaseGaussianDiffusion):
target = noise if not predict_x_start else x_start
loss = self.loss_fn(pred, target)
loss = self.loss_fn(pred, target, reduction = 'none')
loss = reduce(loss, 'b ... -> b (...)', 'mean')
if self.has_p2_loss_reweighting:
loss = loss * extract(self.p2_loss_weight, times, loss.shape)
loss = loss.mean()
if not learned_variance:
# return simple loss if not using learned variance

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@@ -1 +1 @@
__version__ = '0.6.15'
__version__ = '0.8.0'

View File

@@ -211,7 +211,7 @@ def recall_trainer(tracker, trainer, recall_source=None, **load_config):
Loads the model with an appropriate method depending on the tracker
"""
print(print_ribbon(f"Loading model from {recall_source}"))
state_dict = tracker.recall_state_dict(recall_source, **load_config)
state_dict = tracker.recall_state_dict(recall_source, **load_config.dict())
trainer.load_state_dict(state_dict["trainer"])
print("Model loaded")
return state_dict["epoch"], state_dict["step"], state_dict["validation_losses"]