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19 Commits
1.0.1 ... 1.6.0

Author SHA1 Message Date
Phil Wang
7c5477b26d bet on the new self-conditioning technique out of geoffrey hintons group 2022-08-12 11:36:08 -07:00
Phil Wang
be3bb868bf add gradient checkpointing for all resnet blocks 2022-08-02 19:21:44 -07:00
Phil Wang
451de34871 enforce clip anytorch version 2022-07-30 10:07:55 -07:00
Phil Wang
f22e8c8741 make open clip available for use with dalle2 pytorch 2022-07-30 09:02:31 -07:00
Phil Wang
87432e93ad quick fix for linear attention 2022-07-29 13:17:12 -07:00
Phil Wang
d167378401 add cosine sim for self attention as well, as a setting 2022-07-29 12:48:20 -07:00
Phil Wang
2d67d5821e change up epsilon in layernorm the case of using fp16, thanks to @Veldrovive for figuring out this stabilizes training 2022-07-29 12:41:02 -07:00
Phil Wang
748c7fe7af allow for cosine sim cross attention, modify linear attention in attempt to resolve issue on fp16 2022-07-29 11:12:18 -07:00
Phil Wang
80046334ad make sure entire readme runs without errors 2022-07-28 10:17:43 -07:00
Phil Wang
36fb46a95e fix readme and a small bug in DALLE2 class 2022-07-28 08:33:51 -07:00
Phil Wang
07abfcf45b rescale values in linear attention to mitigate overflows in fp16 setting 2022-07-27 12:27:38 -07:00
Phil Wang
2e35a9967d product management 2022-07-26 11:10:16 -07:00
Phil Wang
406e75043f add upsample combiner feature for the unets 2022-07-26 10:46:04 -07:00
Phil Wang
9646dfc0e6 fix path_or_state bug 2022-07-26 09:47:54 -07:00
Phil Wang
62043acb2f fix repaint 2022-07-24 15:29:06 -07:00
Phil Wang
417ff808e6 1.0.3 2022-07-22 13:16:57 -07:00
Aidan Dempster
f3d7e226ba Changed types to be generic instead of functions (#215)
This allows pylance to do proper type hinting and makes developing
extensions to the package much easier
2022-07-22 13:16:29 -07:00
Phil Wang
48a1302428 1.0.2 2022-07-20 23:01:51 -07:00
Aidan Dempster
ccaa46b81b Re-introduced change that was accidentally rolled back (#212) 2022-07-20 23:01:19 -07:00
7 changed files with 462 additions and 155 deletions

View File

@@ -371,6 +371,7 @@ loss.backward()
unet1 = Unet(
dim = 128,
image_embed_dim = 512,
text_embed_dim = 512,
cond_dim = 128,
channels = 3,
dim_mults=(1, 2, 4, 8),
@@ -395,7 +396,7 @@ decoder = Decoder(
).cuda()
for unet_number in (1, 2):
loss = decoder(images, unet_number = unet_number) # this can optionally be decoder(images, text) if you wish to condition on the text encodings as well, though it was hinted in the paper it didn't do much
loss = decoder(images, text = text, unet_number = unet_number) # this can optionally be decoder(images, text) if you wish to condition on the text encodings as well, though it was hinted in the paper it didn't do much
loss.backward()
# do above for many steps
@@ -626,6 +627,18 @@ images = dalle2(
# save your image (in this example, of size 256x256)
```
Alternatively, you can also use <a href="https://github.com/mlfoundations/open_clip">Open Clip</a>
```bash
$ pip install open-clip-torch
```
```python
from dalle2_pytorch import OpenClipAdapter
clip = OpenClipAdapter()
```
Now you'll just have to worry about training the Prior and the Decoder!
## Inpainting
@@ -860,25 +873,23 @@ unet1 = Unet(
text_embed_dim = 512,
cond_dim = 128,
channels = 3,
dim_mults=(1, 2, 4, 8)
dim_mults=(1, 2, 4, 8),
cond_on_text_encodings = True,
).cuda()
unet2 = Unet(
dim = 16,
image_embed_dim = 512,
text_embed_dim = 512,
cond_dim = 128,
channels = 3,
dim_mults = (1, 2, 4, 8, 16),
cond_on_text_encodings = True
).cuda()
decoder = Decoder(
unet = (unet1, unet2),
image_sizes = (128, 256),
clip = clip,
timesteps = 1000,
condition_on_text_encodings = True
timesteps = 1000
).cuda()
decoder_trainer = DecoderTrainer(
@@ -903,8 +914,8 @@ for unet_number in (1, 2):
# after much training
# you can sample from the exponentially moving averaged unets as so
mock_image_embed = torch.randn(4, 512).cuda()
images = decoder_trainer.sample(mock_image_embed, text = text) # (4, 3, 256, 256)
mock_image_embed = torch.randn(32, 512).cuda()
images = decoder_trainer.sample(image_embed = mock_image_embed, text = text) # (4, 3, 256, 256)
```
### Diffusion Prior Training
@@ -1112,7 +1123,8 @@ For detailed information on training the diffusion prior, please refer to the [d
- [x] allow for unet to be able to condition non-cross attention style as well
- [x] speed up inference, read up on papers (ddim)
- [x] add inpainting ability using resampler from repaint paper https://arxiv.org/abs/2201.09865
- [ ] try out the nested unet from https://arxiv.org/abs/2005.09007 after hearing several positive testimonies from researchers, for segmentation anyhow
- [x] add the final combination of upsample feature maps, used in unet squared, seems to have an effect in local experiments
- [ ] consider elucidated dalle2 https://arxiv.org/abs/2206.00364
- [ ] interface out the vqgan-vae so a pretrained one can be pulled off the shelf to validate latent diffusion + DALL-E2
## Citations
@@ -1241,4 +1253,15 @@ For detailed information on training the diffusion prior, please refer to the [d
}
```
```bibtex
@misc{chen2022analog,
title = {Analog Bits: Generating Discrete Data using Diffusion Models with Self-Conditioning},
author = {Ting Chen and Ruixiang Zhang and Geoffrey Hinton},
year = {2022},
eprint = {2208.04202},
archivePrefix = {arXiv},
primaryClass = {cs.CV}
}
```
*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>

View File

@@ -8,6 +8,7 @@ from pathlib import Path
import torch
import torch.nn.functional as F
from torch.utils.checkpoint import checkpoint
from torch import nn, einsum
import torchvision.transforms as T
@@ -108,6 +109,28 @@ def pad_tuple_to_length(t, length, fillvalue = None):
return t
return (*t, *((fillvalue,) * remain_length))
# checkpointing helper function
def make_checkpointable(fn, **kwargs):
if isinstance(fn, nn.ModuleList):
return [maybe(make_checkpointable)(el, **kwargs) for el in fn]
condition = kwargs.pop('condition', None)
if exists(condition) and not condition(fn):
return fn
@wraps(fn)
def inner(*args):
input_needs_grad = any([isinstance(el, torch.Tensor) and el.requires_grad for el in args])
if not input_needs_grad:
return fn(*args)
return checkpoint(fn, *args)
return inner
# for controlling freezing of CLIP
def set_module_requires_grad_(module, requires_grad):
@@ -339,6 +362,75 @@ class OpenAIClipAdapter(BaseClipAdapter):
image_embed = self.clip.encode_image(image)
return EmbeddedImage(l2norm(image_embed.float()), None)
class OpenClipAdapter(BaseClipAdapter):
def __init__(
self,
name = 'ViT-B/32',
pretrained = 'laion400m_e32'
):
import open_clip
clip, _, preprocess = open_clip.create_model_and_transforms(name, pretrained = pretrained)
super().__init__(clip)
self.eos_id = 49407
text_attention_final = self.find_layer('ln_final')
self.handle = text_attention_final.register_forward_hook(self._hook)
self.clip_normalize = preprocess.transforms[-1]
self.cleared = False
def find_layer(self, layer):
modules = dict([*self.clip.named_modules()])
return modules.get(layer, None)
def clear(self):
if self.cleared:
return
self.handle()
def _hook(self, _, inputs, outputs):
self.text_encodings = outputs
@property
def dim_latent(self):
return 512
@property
def image_size(self):
return self.clip.visual.image_size
@property
def image_channels(self):
return 3
@property
def max_text_len(self):
return self.clip.context_length
@torch.no_grad()
def embed_text(self, text):
text = text[..., :self.max_text_len]
is_eos_id = (text == self.eos_id)
text_mask_excluding_eos = is_eos_id.cumsum(dim = -1) == 0
text_mask = F.pad(text_mask_excluding_eos, (1, -1), value = True)
assert not self.cleared
text_embed = self.clip.encode_text(text)
text_encodings = self.text_encodings
text_encodings = text_encodings.masked_fill(~text_mask[..., None], 0.)
del self.text_encodings
return EmbeddedText(l2norm(text_embed.float()), text_encodings.float())
@torch.no_grad()
def embed_image(self, image):
assert not self.cleared
image = self.validate_and_resize_image(image)
image = self.clip_normalize(image)
image_embed = self.clip.encode_image(image)
return EmbeddedImage(l2norm(image_embed.float()), None)
# classifier free guidance functions
def prob_mask_like(shape, prob, device):
@@ -516,6 +608,17 @@ class NoiseScheduler(nn.Module):
extract(self.sqrt_one_minus_alphas_cumprod, t, x_start.shape) * noise
)
def q_sample_from_to(self, x_from, from_t, to_t, noise = None):
shape = x_from.shape
noise = default(noise, lambda: torch.randn_like(x_from))
alpha = extract(self.sqrt_alphas_cumprod, from_t, shape)
sigma = extract(self.sqrt_one_minus_alphas_cumprod, from_t, shape)
alpha_next = extract(self.sqrt_alphas_cumprod, to_t, shape)
sigma_next = extract(self.sqrt_one_minus_alphas_cumprod, to_t, shape)
return x_from * (alpha_next / alpha) + noise * (sigma_next * alpha - sigma * alpha_next) / alpha
def predict_start_from_noise(self, x_t, t, noise):
return (
extract(self.sqrt_recip_alphas_cumprod, t, x_t.shape) * x_t -
@@ -536,34 +639,40 @@ class NoiseScheduler(nn.Module):
# diffusion prior
class LayerNorm(nn.Module):
def __init__(self, dim, eps = 1e-5, stable = False):
def __init__(self, dim, eps = 1e-5, fp16_eps = 1e-3, stable = False):
super().__init__()
self.eps = eps
self.fp16_eps = fp16_eps
self.stable = stable
self.g = nn.Parameter(torch.ones(dim))
def forward(self, x):
eps = self.eps if x.dtype == torch.float32 else self.fp16_eps
if self.stable:
x = x / x.amax(dim = -1, keepdim = True).detach()
var = torch.var(x, dim = -1, unbiased = False, keepdim = True)
mean = torch.mean(x, dim = -1, keepdim = True)
return (x - mean) * (var + self.eps).rsqrt() * self.g
return (x - mean) * (var + eps).rsqrt() * self.g
class ChanLayerNorm(nn.Module):
def __init__(self, dim, eps = 1e-5, stable = False):
def __init__(self, dim, eps = 1e-5, fp16_eps = 1e-3, stable = False):
super().__init__()
self.eps = eps
self.fp16_eps = fp16_eps
self.stable = stable
self.g = nn.Parameter(torch.ones(1, dim, 1, 1))
def forward(self, x):
eps = self.eps if x.dtype == torch.float32 else self.fp16_eps
if self.stable:
x = x / x.amax(dim = 1, keepdim = True).detach()
var = torch.var(x, dim = 1, unbiased = False, keepdim = True)
mean = torch.mean(x, dim = 1, keepdim = True)
return (x - mean) * (var + self.eps).rsqrt() * self.g
return (x - mean) * (var + eps).rsqrt() * self.g
class Residual(nn.Module):
def __init__(self, fn):
@@ -684,11 +793,12 @@ class Attention(nn.Module):
dropout = 0.,
causal = False,
rotary_emb = None,
pb_relax_alpha = 128
cosine_sim = True,
cosine_sim_scale = 16
):
super().__init__()
self.pb_relax_alpha = pb_relax_alpha
self.scale = dim_head ** -0.5 * (pb_relax_alpha ** -1)
self.scale = cosine_sim_scale if cosine_sim else (dim_head ** -0.5)
self.cosine_sim = cosine_sim
self.heads = heads
inner_dim = dim_head * heads
@@ -728,6 +838,13 @@ class Attention(nn.Module):
k = torch.cat((nk, k), dim = -2)
v = torch.cat((nv, v), dim = -2)
# whether to use cosine sim
if self.cosine_sim:
q, k = map(l2norm, (q, k))
q, k = map(lambda t: t * math.sqrt(self.scale), (q, k))
# calculate query / key similarities
sim = einsum('b h i d, b j d -> b h i j', q, k)
@@ -753,10 +870,7 @@ class Attention(nn.Module):
# attention
sim = sim - sim.amax(dim = -1, keepdim = True).detach()
sim = sim * self.pb_relax_alpha
attn = sim.softmax(dim = -1)
attn = sim.softmax(dim = -1, dtype = torch.float32)
attn = self.dropout(attn)
# aggregate values
@@ -1043,17 +1157,17 @@ class DiffusionPrior(nn.Module):
pred = self.net.forward_with_cond_scale(x, t, cond_scale = cond_scale, **text_cond)
if self.predict_x_start:
x_recon = pred
x_start = pred
else:
x_recon = self.noise_scheduler.predict_start_from_noise(x, t = t, noise = pred)
x_start = self.noise_scheduler.predict_start_from_noise(x, t = t, noise = pred)
if clip_denoised and not self.predict_x_start:
x_recon.clamp_(-1., 1.)
x_start.clamp_(-1., 1.)
if self.predict_x_start and self.sampling_clamp_l2norm:
x_recon = l2norm(x_recon) * self.image_embed_scale
x_start = l2norm(x_start) * self.image_embed_scale
model_mean, posterior_variance, posterior_log_variance = self.noise_scheduler.q_posterior(x_start=x_recon, x_t=x, t=t)
model_mean, posterior_variance, posterior_log_variance = self.noise_scheduler.q_posterior(x_start=x_start, x_t=x, t=t)
return model_mean, posterior_variance, posterior_log_variance
@torch.no_grad()
@@ -1346,7 +1460,8 @@ class ResnetBlock(nn.Module):
*,
cond_dim = None,
time_cond_dim = None,
groups = 8
groups = 8,
cosine_sim_cross_attn = False
):
super().__init__()
@@ -1366,7 +1481,8 @@ class ResnetBlock(nn.Module):
'b (h w) c',
CrossAttention(
dim = dim_out,
context_dim = cond_dim
context_dim = cond_dim,
cosine_sim = cosine_sim_cross_attn
)
)
@@ -1401,11 +1517,12 @@ class CrossAttention(nn.Module):
heads = 8,
dropout = 0.,
norm_context = False,
pb_relax_alpha = 32 ** 2
cosine_sim = False,
cosine_sim_scale = 16
):
super().__init__()
self.pb_relax_alpha = pb_relax_alpha
self.scale = dim_head ** -0.5 * (pb_relax_alpha ** -1)
self.cosine_sim = cosine_sim
self.scale = cosine_sim_scale if cosine_sim else (dim_head ** -0.5)
self.heads = heads
inner_dim = dim_head * heads
@@ -1441,7 +1558,10 @@ class CrossAttention(nn.Module):
k = torch.cat((nk, k), dim = -2)
v = torch.cat((nv, v), dim = -2)
q = q * self.scale
if self.cosine_sim:
q, k = map(l2norm, (q, k))
q, k = map(lambda t: t * math.sqrt(self.scale), (q, k))
sim = einsum('b h i d, b h j d -> b h i j', q, k)
max_neg_value = -torch.finfo(sim.dtype).max
@@ -1451,10 +1571,7 @@ class CrossAttention(nn.Module):
mask = rearrange(mask, 'b j -> b 1 1 j')
sim = sim.masked_fill(~mask, max_neg_value)
sim = sim - sim.amax(dim = -1, keepdim = True).detach()
sim = sim * self.pb_relax_alpha
attn = sim.softmax(dim = -1)
attn = sim.softmax(dim = -1, dtype = torch.float32)
out = einsum('b h i j, b h j d -> b h i d', attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
@@ -1465,7 +1582,8 @@ class LinearAttention(nn.Module):
self,
dim,
dim_head = 32,
heads = 8
heads = 8,
**kwargs
):
super().__init__()
self.scale = dim_head ** -0.5
@@ -1483,6 +1601,7 @@ class LinearAttention(nn.Module):
def forward(self, fmap):
h, x, y = self.heads, *fmap.shape[-2:]
seq_len = x * y
fmap = self.norm(fmap)
q, k, v = self.to_qkv(fmap).chunk(3, dim = 1)
@@ -1492,6 +1611,9 @@ class LinearAttention(nn.Module):
k = k.softmax(dim = -2)
q = q * self.scale
v = l2norm(v)
k, v = map(lambda t: t / math.sqrt(seq_len), (k, v))
context = einsum('b n d, b n e -> b d e', k, v)
out = einsum('b n d, b d e -> b n e', q, context)
@@ -1527,6 +1649,38 @@ class CrossEmbedLayer(nn.Module):
fmaps = tuple(map(lambda conv: conv(x), self.convs))
return torch.cat(fmaps, dim = 1)
class UpsampleCombiner(nn.Module):
def __init__(
self,
dim,
*,
enabled = False,
dim_ins = tuple(),
dim_outs = tuple()
):
super().__init__()
assert len(dim_ins) == len(dim_outs)
self.enabled = enabled
if not self.enabled:
self.dim_out = dim
return
self.fmap_convs = nn.ModuleList([Block(dim_in, dim_out) for dim_in, dim_out in zip(dim_ins, dim_outs)])
self.dim_out = dim + (sum(dim_outs) if len(dim_outs) > 0 else 0)
def forward(self, x, fmaps = None):
target_size = x.shape[-1]
fmaps = default(fmaps, tuple())
if not self.enabled or len(fmaps) == 0 or len(self.fmap_convs) == 0:
return x
fmaps = [resize_image_to(fmap, target_size) for fmap in fmaps]
outs = [conv(fmap) for fmap, conv in zip(fmaps, self.fmap_convs)]
return torch.cat((x, *outs), dim = 1)
class Unet(nn.Module):
def __init__(
self,
@@ -1546,7 +1700,10 @@ class Unet(nn.Module):
attn_heads = 16,
lowres_cond = False, # for cascading diffusion - https://cascaded-diffusion.github.io/
lowres_noise_cond = False, # for conditioning on low resolution noising, based on Imagen
self_cond = False,
sparse_attn = False,
cosine_sim_cross_attn = False,
cosine_sim_self_attn = False,
attend_at_middle = True, # whether to have a layer of attention at the bottleneck (can turn off for higher resolution in cascading DDPM, before bringing in efficient attention)
cond_on_text_encodings = False,
max_text_len = 256,
@@ -1564,6 +1721,8 @@ class Unet(nn.Module):
scale_skip_connection = False,
pixel_shuffle_upsample = True,
final_conv_kernel_size = 1,
combine_upsample_fmaps = False, # whether to combine the outputs of all upsample blocks, as in unet squared paper
checkpoint_during_training = False,
**kwargs
):
super().__init__()
@@ -1577,12 +1736,21 @@ class Unet(nn.Module):
self.lowres_cond = lowres_cond
# whether to do self conditioning
self.self_cond = self_cond
# 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
# initial number of channels depends on
# (1) low resolution conditioning from cascading ddpm paper, conditioned on previous unet output in the cascade
# (2) self conditioning (bit diffusion paper)
init_channels = channels * (1 + int(lowres_cond) + int(self_cond))
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) if init_cross_embed else nn.Conv2d(init_channels, init_dim, init_conv_kernel_size, padding = init_conv_kernel_size // 2)
@@ -1666,7 +1834,7 @@ class Unet(nn.Module):
# attention related params
attn_kwargs = dict(heads = attn_heads, dim_head = attn_dim_head)
attn_kwargs = dict(heads = attn_heads, dim_head = attn_dim_head, cosine_sim = cosine_sim_self_attn)
self_attn = cast_tuple(self_attn, num_stages)
@@ -1689,9 +1857,13 @@ class Unet(nn.Module):
upsample_klass = NearestUpsample if not pixel_shuffle_upsample else PixelShuffleUpsample
# prepare resnet klass
resnet_block = partial(ResnetBlock, cosine_sim_cross_attn = cosine_sim_cross_attn)
# give memory efficient unet an initial resnet block
self.init_resnet_block = ResnetBlock(init_dim, init_dim, time_cond_dim = time_cond_dim, groups = top_level_resnet_group) if memory_efficient else None
self.init_resnet_block = resnet_block(init_dim, init_dim, time_cond_dim = time_cond_dim, groups = top_level_resnet_group) if memory_efficient else None
# layers
@@ -1699,7 +1871,8 @@ class Unet(nn.Module):
self.ups = nn.ModuleList([])
num_resolutions = len(in_out)
skip_connect_dims = [] # keeping track of skip connection dimensions
skip_connect_dims = [] # keeping track of skip connection dimensions
upsample_combiner_dims = [] # keeping track of dimensions for final upsample feature map combiner
for ind, ((dim_in, dim_out), groups, layer_num_resnet_blocks, layer_self_attn) in enumerate(zip(in_out, resnet_groups, num_resnet_blocks, self_attn)):
is_first = ind == 0
@@ -1717,17 +1890,17 @@ class Unet(nn.Module):
self.downs.append(nn.ModuleList([
downsample_klass(dim_in, dim_out = dim_out) if memory_efficient else None,
ResnetBlock(dim_layer, dim_layer, time_cond_dim = time_cond_dim, groups = groups),
nn.ModuleList([ResnetBlock(dim_layer, dim_layer, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups) for _ in range(layer_num_resnet_blocks)]),
resnet_block(dim_layer, dim_layer, time_cond_dim = time_cond_dim, groups = groups),
nn.ModuleList([resnet_block(dim_layer, dim_layer, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups) for _ in range(layer_num_resnet_blocks)]),
attention,
downsample_klass(dim_layer, dim_out = dim_out) if not is_last and not memory_efficient else nn.Conv2d(dim_layer, dim_out, 1)
]))
mid_dim = dims[-1]
self.mid_block1 = ResnetBlock(mid_dim, mid_dim, cond_dim = cond_dim, time_cond_dim = time_cond_dim, groups = resnet_groups[-1])
self.mid_block1 = resnet_block(mid_dim, mid_dim, cond_dim = cond_dim, time_cond_dim = time_cond_dim, groups = resnet_groups[-1])
self.mid_attn = create_self_attn(mid_dim)
self.mid_block2 = ResnetBlock(mid_dim, mid_dim, cond_dim = cond_dim, time_cond_dim = time_cond_dim, groups = resnet_groups[-1])
self.mid_block2 = resnet_block(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, layer_self_attn) in enumerate(zip(reversed(in_out), reversed(resnet_groups), reversed(num_resnet_blocks), reversed(self_attn))):
is_last = ind >= (len(in_out) - 1)
@@ -1741,14 +1914,27 @@ class Unet(nn.Module):
elif sparse_attn:
attention = Residual(LinearAttention(dim_out, **attn_kwargs))
upsample_combiner_dims.append(dim_out)
self.ups.append(nn.ModuleList([
ResnetBlock(dim_out + skip_connect_dim, dim_out, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups),
nn.ModuleList([ResnetBlock(dim_out + skip_connect_dim, dim_out, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups) for _ in range(layer_num_resnet_blocks)]),
resnet_block(dim_out + skip_connect_dim, dim_out, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups),
nn.ModuleList([resnet_block(dim_out + skip_connect_dim, dim_out, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups) for _ in range(layer_num_resnet_blocks)]),
attention,
upsample_klass(dim_out, dim_in) if not is_last or memory_efficient else nn.Identity()
]))
self.final_resnet_block = ResnetBlock(dim * 2, dim, time_cond_dim = time_cond_dim, groups = top_level_resnet_group)
# whether to combine outputs from all upsample blocks for final resnet block
self.upsample_combiner = UpsampleCombiner(
dim = dim,
enabled = combine_upsample_fmaps,
dim_ins = upsample_combiner_dims,
dim_outs = (dim,) * len(upsample_combiner_dims)
)
# a final resnet block
self.final_resnet_block = resnet_block(self.upsample_combiner.dim_out + dim, dim, time_cond_dim = time_cond_dim, groups = top_level_resnet_group)
out_dim_in = dim + (channels if lowres_cond else 0)
@@ -1756,6 +1942,10 @@ class Unet(nn.Module):
zero_init_(self.to_out) # since both OpenAI and @crowsonkb are doing it
# whether to checkpoint during training
self.checkpoint_during_training = checkpoint_during_training
# if the current settings for the unet are not correct
# for cascading DDPM, then reinit the unet with the right settings
def cast_model_parameters(
@@ -1772,7 +1962,7 @@ class Unet(nn.Module):
channels == self.channels and \
cond_on_image_embeds == self.cond_on_image_embeds and \
cond_on_text_encodings == self.cond_on_text_encodings and \
cond_on_lowres_noise == self.cond_on_lowres_noise and \
lowres_noise_cond == self.lowres_noise_cond and \
channels_out == self.channels_out:
return self
@@ -1813,7 +2003,9 @@ class Unet(nn.Module):
image_cond_drop_prob = 0.,
text_cond_drop_prob = 0.,
blur_sigma = None,
blur_kernel_size = None
blur_kernel_size = None,
disable_checkpoint = False,
self_cond = None
):
batch_size, device = x.shape[0], x.device
@@ -1821,6 +2013,14 @@ class Unet(nn.Module):
assert not (self.lowres_cond and not exists(lowres_cond_img)), 'low resolution conditioning image must be present'
# concat self conditioning, if needed
if self.self_cond:
self_cond = default(self_cond, lambda: torch.zeros_like(x))
x = torch.cat((x, self_cond), dim = 1)
# concat low resolution conditioning
if exists(lowres_cond_img):
x = torch.cat((x, lowres_cond_img), dim = 1)
@@ -1935,16 +2135,29 @@ class Unet(nn.Module):
c = self.norm_cond(c)
mid_c = self.norm_mid_cond(mid_c)
# gradient checkpointing
can_checkpoint = self.training and self.checkpoint_during_training and not disable_checkpoint
apply_checkpoint_fn = make_checkpointable if can_checkpoint else identity
# make checkpointable modules
init_resnet_block, mid_block1, mid_attn, mid_block2, final_resnet_block = [maybe(apply_checkpoint_fn)(module) for module in (self.init_resnet_block, self.mid_block1, self.mid_attn, self.mid_block2, self.final_resnet_block)]
can_checkpoint_cond = lambda m: isinstance(m, ResnetBlock)
downs, ups = [maybe(apply_checkpoint_fn)(m, condition = can_checkpoint_cond) for m in (self.downs, self.ups)]
# initial resnet block
if exists(self.init_resnet_block):
x = self.init_resnet_block(x, t)
if exists(init_resnet_block):
x = init_resnet_block(x, t)
# go through the layers of the unet, down and up
hiddens = []
down_hiddens = []
up_hiddens = []
for pre_downsample, init_block, resnet_blocks, attn, post_downsample in self.downs:
for pre_downsample, init_block, resnet_blocks, attn, post_downsample in downs:
if exists(pre_downsample):
x = pre_downsample(x)
@@ -1952,24 +2165,24 @@ class Unet(nn.Module):
for resnet_block in resnet_blocks:
x = resnet_block(x, t, c)
hiddens.append(x)
down_hiddens.append(x.contiguous())
x = attn(x)
hiddens.append(x.contiguous())
down_hiddens.append(x.contiguous())
if exists(post_downsample):
x = post_downsample(x)
x = self.mid_block1(x, t, mid_c)
x = mid_block1(x, t, mid_c)
if exists(self.mid_attn):
x = self.mid_attn(x)
if exists(mid_attn):
x = mid_attn(x)
x = self.mid_block2(x, t, mid_c)
x = mid_block2(x, t, mid_c)
connect_skip = lambda fmap: torch.cat((fmap, hiddens.pop() * self.skip_connect_scale), dim = 1)
connect_skip = lambda fmap: torch.cat((fmap, down_hiddens.pop() * self.skip_connect_scale), dim = 1)
for init_block, resnet_blocks, attn, upsample in self.ups:
for init_block, resnet_blocks, attn, upsample in ups:
x = connect_skip(x)
x = init_block(x, t, c)
@@ -1978,11 +2191,15 @@ class Unet(nn.Module):
x = resnet_block(x, t, c)
x = attn(x)
up_hiddens.append(x.contiguous())
x = upsample(x)
x = self.upsample_combiner(x, up_hiddens)
x = torch.cat((x, r), dim = 1)
x = self.final_resnet_block(x, t)
x = final_resnet_block(x, t)
if exists(lowres_cond_img):
x = torch.cat((x, lowres_cond_img), dim = 1)
@@ -2373,23 +2590,23 @@ class Decoder(nn.Module):
x = x.clamp(-s, s) / s
return x
def p_mean_variance(self, unet, x, t, image_embed, noise_scheduler, text_encodings = None, lowres_cond_img = None, clip_denoised = True, predict_x_start = False, learned_variance = False, cond_scale = 1., model_output = None, lowres_noise_level = None):
def p_mean_variance(self, unet, x, t, image_embed, noise_scheduler, text_encodings = None, lowres_cond_img = None, self_cond = None, clip_denoised = True, predict_x_start = False, learned_variance = False, cond_scale = 1., model_output = None, lowres_noise_level = 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, cond_scale = cond_scale, lowres_cond_img = lowres_cond_img, lowres_noise_level = lowres_noise_level))
pred = default(model_output, lambda: unet.forward_with_cond_scale(x, t, image_embed = image_embed, text_encodings = text_encodings, cond_scale = cond_scale, lowres_cond_img = lowres_cond_img, self_cond = self_cond, lowres_noise_level = lowres_noise_level))
if learned_variance:
pred, var_interp_frac_unnormalized = pred.chunk(2, dim = 1)
if predict_x_start:
x_recon = pred
x_start = pred
else:
x_recon = noise_scheduler.predict_start_from_noise(x, t = t, noise = pred)
x_start = noise_scheduler.predict_start_from_noise(x, t = t, noise = pred)
if clip_denoised:
x_recon = self.dynamic_threshold(x_recon)
x_start = self.dynamic_threshold(x_start)
model_mean, posterior_variance, posterior_log_variance = noise_scheduler.q_posterior(x_start=x_recon, x_t=x, t=t)
model_mean, posterior_variance, posterior_log_variance = noise_scheduler.q_posterior(x_start=x_start, x_t=x, t=t)
if learned_variance:
# if learned variance, posterio variance and posterior log variance are predicted by the network
@@ -2405,16 +2622,17 @@ class Decoder(nn.Module):
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
return model_mean, posterior_variance, posterior_log_variance, x_start
@torch.no_grad()
def p_sample(self, unet, x, t, image_embed, noise_scheduler, text_encodings = None, cond_scale = 1., lowres_cond_img = None, predict_x_start = False, learned_variance = False, clip_denoised = True, lowres_noise_level = None):
def p_sample(self, unet, x, t, image_embed, noise_scheduler, text_encodings = None, cond_scale = 1., lowres_cond_img = None, self_cond = None, predict_x_start = False, learned_variance = False, clip_denoised = True, lowres_noise_level = None):
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, cond_scale = cond_scale, lowres_cond_img = lowres_cond_img, clip_denoised = clip_denoised, predict_x_start = predict_x_start, noise_scheduler = noise_scheduler, learned_variance = learned_variance, lowres_noise_level = lowres_noise_level)
model_mean, _, model_log_variance, x_start = self.p_mean_variance(unet, x = x, t = t, image_embed = image_embed, text_encodings = text_encodings, cond_scale = cond_scale, lowres_cond_img = lowres_cond_img, self_cond = self_cond, clip_denoised = clip_denoised, predict_x_start = predict_x_start, noise_scheduler = noise_scheduler, learned_variance = learned_variance, lowres_noise_level = lowres_noise_level)
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
pred = model_mean + nonzero_mask * (0.5 * model_log_variance).exp() * noise
return pred, x_start
@torch.no_grad()
def p_sample_loop_ddpm(
@@ -2432,14 +2650,20 @@ class Decoder(nn.Module):
is_latent_diffusion = False,
lowres_noise_level = None,
inpaint_image = None,
inpaint_mask = None
inpaint_mask = None,
inpaint_resample_times = 5
):
device = self.device
b = shape[0]
img = torch.randn(shape, device = device)
if exists(inpaint_image):
x_start = None # for self-conditioning
is_inpaint = exists(inpaint_image)
resample_times = inpaint_resample_times if is_inpaint else 1
if is_inpaint:
inpaint_image = self.normalize_img(inpaint_image)
inpaint_image = resize_image_to(inpaint_image, shape[-1], nearest = True)
inpaint_mask = rearrange(inpaint_mask, 'b h w -> b 1 h w').float()
@@ -2449,31 +2673,43 @@ class Decoder(nn.Module):
if not is_latent_diffusion:
lowres_cond_img = maybe(self.normalize_img)(lowres_cond_img)
for i in tqdm(reversed(range(0, noise_scheduler.num_timesteps)), desc = 'sampling loop time step', total = noise_scheduler.num_timesteps):
times = torch.full((b,), i, device = device, dtype = torch.long)
for time in tqdm(reversed(range(0, noise_scheduler.num_timesteps)), desc = 'sampling loop time step', total = noise_scheduler.num_timesteps):
is_last_timestep = time == 0
if exists(inpaint_image):
# following the repaint paper
# https://arxiv.org/abs/2201.09865
noised_inpaint_image = noise_scheduler.q_sample(inpaint_image, t = times)
img = (img * ~inpaint_mask) + (noised_inpaint_image * inpaint_mask)
for r in reversed(range(0, resample_times)):
is_last_resample_step = r == 0
img = self.p_sample(
unet,
img,
times,
image_embed = image_embed,
text_encodings = text_encodings,
cond_scale = cond_scale,
lowres_cond_img = lowres_cond_img,
lowres_noise_level = lowres_noise_level,
predict_x_start = predict_x_start,
noise_scheduler = noise_scheduler,
learned_variance = learned_variance,
clip_denoised = clip_denoised
)
times = torch.full((b,), time, device = device, dtype = torch.long)
if exists(inpaint_image):
if is_inpaint:
# following the repaint paper
# https://arxiv.org/abs/2201.09865
noised_inpaint_image = noise_scheduler.q_sample(inpaint_image, t = times)
img = (img * ~inpaint_mask) + (noised_inpaint_image * inpaint_mask)
self_cond = x_start if unet.self_cond else None
img, x_start = self.p_sample(
unet,
img,
times,
image_embed = image_embed,
text_encodings = text_encodings,
cond_scale = cond_scale,
self_cond = self_cond,
lowres_cond_img = lowres_cond_img,
lowres_noise_level = lowres_noise_level,
predict_x_start = predict_x_start,
noise_scheduler = noise_scheduler,
learned_variance = learned_variance,
clip_denoised = clip_denoised
)
if is_inpaint and not (is_last_timestep or is_last_resample_step):
# in repaint, you renoise and resample up to 10 times every step
img = noise_scheduler.q_sample_from_to(img, times - 1, times)
if is_inpaint:
img = (img * ~inpaint_mask) + (inpaint_image * inpaint_mask)
unnormalize_img = self.unnormalize_img(img)
@@ -2497,7 +2733,8 @@ class Decoder(nn.Module):
is_latent_diffusion = False,
lowres_noise_level = None,
inpaint_image = None,
inpaint_mask = None
inpaint_mask = None,
inpaint_resample_times = 5
):
batch, device, total_timesteps, alphas, eta = shape[0], self.device, noise_scheduler.num_timesteps, noise_scheduler.alphas_cumprod_prev, self.ddim_sampling_eta
@@ -2506,7 +2743,10 @@ class Decoder(nn.Module):
times = list(reversed(times.int().tolist()))
time_pairs = list(zip(times[:-1], times[1:]))
if exists(inpaint_image):
is_inpaint = exists(inpaint_image)
resample_times = inpaint_resample_times if is_inpaint else 1
if is_inpaint:
inpaint_image = self.normalize_img(inpaint_image)
inpaint_image = resize_image_to(inpaint_image, shape[-1], nearest = True)
inpaint_mask = rearrange(inpaint_mask, 'b h w -> b 1 h w').float()
@@ -2515,43 +2755,57 @@ class Decoder(nn.Module):
img = torch.randn(shape, device = device)
x_start = None # for self-conditioning
if not is_latent_diffusion:
lowres_cond_img = maybe(self.normalize_img)(lowres_cond_img)
for time, time_next in tqdm(time_pairs, desc = 'sampling loop time step'):
alpha = alphas[time]
alpha_next = alphas[time_next]
is_last_timestep = time_next == 0
time_cond = torch.full((batch,), time, device = device, dtype = torch.long)
for r in reversed(range(0, resample_times)):
is_last_resample_step = r == 0
if exists(inpaint_image):
# following the repaint paper
# https://arxiv.org/abs/2201.09865
noised_inpaint_image = noise_scheduler.q_sample(inpaint_image, t = time_cond)
img = (img * ~inpaint_mask) + (noised_inpaint_image * inpaint_mask)
alpha = alphas[time]
alpha_next = alphas[time_next]
pred = unet.forward_with_cond_scale(img, time_cond, image_embed = image_embed, text_encodings = text_encodings, cond_scale = cond_scale, lowres_cond_img = lowres_cond_img, lowres_noise_level = lowres_noise_level)
time_cond = torch.full((batch,), time, device = device, dtype = torch.long)
if learned_variance:
pred, _ = pred.chunk(2, dim = 1)
if is_inpaint:
# following the repaint paper
# https://arxiv.org/abs/2201.09865
noised_inpaint_image = noise_scheduler.q_sample(inpaint_image, t = time_cond)
img = (img * ~inpaint_mask) + (noised_inpaint_image * inpaint_mask)
if predict_x_start:
x_start = pred
pred_noise = noise_scheduler.predict_noise_from_start(img, t = time_cond, x0 = pred)
else:
x_start = noise_scheduler.predict_start_from_noise(img, t = time_cond, noise = pred)
pred_noise = pred
self_cond = x_start if unet.self_cond else None
if clip_denoised:
x_start = self.dynamic_threshold(x_start)
pred = unet.forward_with_cond_scale(img, time_cond, image_embed = image_embed, text_encodings = text_encodings, cond_scale = cond_scale, self_cond = self_cond, lowres_cond_img = lowres_cond_img, lowres_noise_level = lowres_noise_level)
c1 = eta * ((1 - alpha / alpha_next) * (1 - alpha_next) / (1 - alpha)).sqrt()
c2 = ((1 - alpha_next) - torch.square(c1)).sqrt()
noise = torch.randn_like(img) if time_next > 0 else 0.
if learned_variance:
pred, _ = pred.chunk(2, dim = 1)
img = x_start * alpha_next.sqrt() + \
c1 * noise + \
c2 * pred_noise
if predict_x_start:
x_start = pred
pred_noise = noise_scheduler.predict_noise_from_start(img, t = time_cond, x0 = pred)
else:
x_start = noise_scheduler.predict_start_from_noise(img, t = time_cond, noise = pred)
pred_noise = pred
if clip_denoised:
x_start = self.dynamic_threshold(x_start)
c1 = eta * ((1 - alpha / alpha_next) * (1 - alpha_next) / (1 - alpha)).sqrt()
c2 = ((1 - alpha_next) - torch.square(c1)).sqrt()
noise = torch.randn_like(img) if not is_last_timestep else 0.
img = x_start * alpha_next.sqrt() + \
c1 * noise + \
c2 * pred_noise
if is_inpaint and not (is_last_timestep or is_last_resample_step):
# in repaint, you renoise and resample up to 10 times every step
time_next_cond = torch.full((batch,), time_next, device = device, dtype = torch.long)
img = noise_scheduler.q_sample_from_to(img, time_next_cond, time_cond)
if exists(inpaint_image):
img = (img * ~inpaint_mask) + (inpaint_image * inpaint_mask)
@@ -2585,13 +2839,35 @@ class Decoder(nn.Module):
x_noisy = noise_scheduler.q_sample(x_start = x_start, t = times, noise = noise)
model_output = unet(
x_noisy,
times,
# unet kwargs
unet_kwargs = dict(
image_embed = image_embed,
text_encodings = text_encodings,
lowres_cond_img = lowres_cond_img,
lowres_noise_level = lowres_noise_level,
)
# self conditioning
self_cond = None
if unet.self_cond and random.random() < 0.5:
with torch.no_grad():
self_cond = unet(x_noisy, times, **unet_kwargs)
if learned_variance:
self_cond, _ = self_cond.chunk(2, dim = 1)
self_cond = self_cond.detach()
# forward to get model prediction
model_output = unet(
x_noisy,
times,
**unet_kwargs,
self_cond = self_cond,
image_cond_drop_prob = self.image_cond_drop_prob,
text_cond_drop_prob = self.text_cond_drop_prob,
)
@@ -2622,7 +2898,7 @@ class Decoder(nn.Module):
# if learning the variance, also include the extra weight kl loss
true_mean, _, true_log_variance_clipped = noise_scheduler.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, noise_scheduler = noise_scheduler, clip_denoised = clip_denoised, learned_variance = True, model_output = model_output)
model_mean, _, model_log_variance, _ = self.p_mean_variance(unet, x = x_noisy, t = times, image_embed = image_embed, noise_scheduler = noise_scheduler, clip_denoised = clip_denoised, learned_variance = True, model_output = model_output)
# kl loss with detached model predicted mean, for stability reasons as in paper
@@ -2658,7 +2934,8 @@ class Decoder(nn.Module):
stop_at_unet_number = None,
distributed = False,
inpaint_image = None,
inpaint_mask = None
inpaint_mask = None,
inpaint_resample_times = 5
):
assert self.unconditional or exists(image_embed), 'image embed must be present on sampling from decoder unless if trained unconditionally'
@@ -2730,7 +3007,8 @@ class Decoder(nn.Module):
noise_scheduler = noise_scheduler,
timesteps = sample_timesteps,
inpaint_image = inpaint_image,
inpaint_mask = inpaint_mask
inpaint_mask = inpaint_mask,
inpaint_resample_times = inpaint_resample_times
)
img = vae.decode(img)
@@ -2845,7 +3123,7 @@ class DALLE2(nn.Module):
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)
images = self.decoder.sample(image_embed = image_embed, text = text_cond, cond_scale = cond_scale)
if return_pil_images:
images = list(map(self.to_pil, images.unbind(dim = 0)))

View File

@@ -528,8 +528,12 @@ class Tracker:
elif save_type == 'model':
if isinstance(trainer, DiffusionPriorTrainer):
prior = trainer.ema_diffusion_prior.ema_model if trainer.use_ema else trainer.diffusion_prior
state_dict = trainer.accelerator.unwrap_model(prior).state_dict()
torch.save(state_dict, file_path)
prior: DiffusionPrior = trainer.accelerator.unwrap_model(prior)
# Remove CLIP if it is part of the model
original_clip = prior.clip
prior.clip = None
model_state_dict = prior.state_dict()
prior.clip = original_clip
elif isinstance(trainer, DecoderTrainer):
decoder: Decoder = trainer.accelerator.unwrap_model(trainer.decoder)
# Remove CLIP if it is part of the model

View File

@@ -1,7 +1,7 @@
import json
from torchvision import transforms as T
from pydantic import BaseModel, validator, root_validator
from typing import List, Iterable, Optional, Union, Tuple, Dict, Any
from typing import List, Optional, Union, Tuple, Dict, Any, TypeVar
from x_clip import CLIP as XCLIP
from coca_pytorch import CoCa
@@ -25,11 +25,9 @@ def exists(val):
def default(val, d):
return val if exists(val) else d
def ListOrTuple(inner_type):
return Union[List[inner_type], Tuple[inner_type]]
def SingularOrIterable(inner_type):
return Union[inner_type, ListOrTuple(inner_type)]
InnerType = TypeVar('InnerType')
ListOrTuple = Union[List[InnerType], Tuple[InnerType]]
SingularOrIterable = Union[InnerType, ListOrTuple[InnerType]]
# general pydantic classes
@@ -222,13 +220,13 @@ class TrainDiffusionPriorConfig(BaseModel):
class UnetConfig(BaseModel):
dim: int
dim_mults: ListOrTuple(int)
dim_mults: ListOrTuple[int]
image_embed_dim: int = None
text_embed_dim: int = None
cond_on_text_encodings: bool = None
cond_dim: int = None
channels: int = 3
self_attn: ListOrTuple(int)
self_attn: ListOrTuple[int]
attn_dim_head: int = 32
attn_heads: int = 16
init_cross_embed: bool = True
@@ -237,16 +235,16 @@ class UnetConfig(BaseModel):
extra = "allow"
class DecoderConfig(BaseModel):
unets: ListOrTuple(UnetConfig)
unets: ListOrTuple[UnetConfig]
image_size: int = None
image_sizes: ListOrTuple(int) = None
image_sizes: ListOrTuple[int] = None
clip: Optional[AdapterConfig] # The clip model to use if embeddings are not provided
channels: int = 3
timesteps: int = 1000
sample_timesteps: Optional[SingularOrIterable(int)] = None
sample_timesteps: Optional[SingularOrIterable[int]] = None
loss_type: str = 'l2'
beta_schedule: ListOrTuple(str) = 'cosine'
learned_variance: bool = True
beta_schedule: ListOrTuple[str] = None # None means all cosine
learned_variance: SingularOrIterable[bool] = True
image_cond_drop_prob: float = 0.1
text_cond_drop_prob: float = 0.5
@@ -305,11 +303,11 @@ class DecoderDataConfig(BaseModel):
class DecoderTrainConfig(BaseModel):
epochs: int = 20
lr: SingularOrIterable(float) = 1e-4
wd: SingularOrIterable(float) = 0.01
warmup_steps: Optional[SingularOrIterable(int)] = None
lr: SingularOrIterable[float] = 1e-4
wd: SingularOrIterable[float] = 0.01
warmup_steps: Optional[SingularOrIterable[int]] = None
find_unused_parameters: bool = True
max_grad_norm: SingularOrIterable(float) = 0.5
max_grad_norm: SingularOrIterable[float] = 0.5
save_every_n_samples: int = 100000
n_sample_images: int = 6 # The number of example images to produce when sampling the train and test dataset
cond_scale: Union[float, List[float]] = 1.0
@@ -320,7 +318,7 @@ class DecoderTrainConfig(BaseModel):
use_ema: bool = True
ema_beta: float = 0.999
amp: bool = False
unet_training_mask: ListOrTuple(bool) = None # If None, use all unets
unet_training_mask: ListOrTuple[bool] = None # If None, use all unets
class DecoderEvaluateConfig(BaseModel):
n_evaluation_samples: int = 1000

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@@ -174,7 +174,7 @@ class DiffusionPriorTrainer(nn.Module):
def __init__(
self,
diffusion_prior,
accelerator,
accelerator = None,
use_ema = True,
lr = 3e-4,
wd = 1e-2,
@@ -186,8 +186,12 @@ class DiffusionPriorTrainer(nn.Module):
):
super().__init__()
assert isinstance(diffusion_prior, DiffusionPrior)
assert isinstance(accelerator, Accelerator)
ema_kwargs, kwargs = groupby_prefix_and_trim('ema_', kwargs)
accelerator_kwargs, kwargs = groupby_prefix_and_trim('accelerator_', kwargs)
if not exists(accelerator):
accelerator = Accelerator(**accelerator_kwargs)
# assign some helpful member vars
@@ -300,7 +304,7 @@ class DiffusionPriorTrainer(nn.Module):
# all processes need to load checkpoint. no restriction here
if isinstance(path_or_state, str):
path = Path(path)
path = Path(path_or_state)
assert path.exists()
loaded_obj = torch.load(str(path), map_location=self.device)

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@@ -1 +1 @@
__version__ = '1.0.1'
__version__ = '1.6.0'

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@@ -26,7 +26,7 @@ setup(
install_requires=[
'accelerate',
'click',
'clip-anytorch',
'clip-anytorch>=2.4.0',
'coca-pytorch>=0.0.5',
'ema-pytorch>=0.0.7',
'einops>=0.4',