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16
README.md
16
README.md
@@ -371,6 +371,7 @@ loss.backward()
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unet1 = Unet(
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dim = 128,
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image_embed_dim = 512,
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text_embed_dim = 512,
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cond_dim = 128,
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channels = 3,
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dim_mults=(1, 2, 4, 8),
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@@ -395,7 +396,7 @@ decoder = Decoder(
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).cuda()
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for unet_number in (1, 2):
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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
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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
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loss.backward()
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# do above for many steps
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@@ -860,25 +861,23 @@ unet1 = Unet(
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text_embed_dim = 512,
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cond_dim = 128,
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channels = 3,
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dim_mults=(1, 2, 4, 8)
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dim_mults=(1, 2, 4, 8),
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cond_on_text_encodings = True,
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).cuda()
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unet2 = Unet(
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dim = 16,
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image_embed_dim = 512,
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text_embed_dim = 512,
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cond_dim = 128,
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channels = 3,
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dim_mults = (1, 2, 4, 8, 16),
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cond_on_text_encodings = True
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).cuda()
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decoder = Decoder(
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unet = (unet1, unet2),
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image_sizes = (128, 256),
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clip = clip,
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timesteps = 1000,
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condition_on_text_encodings = True
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timesteps = 1000
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).cuda()
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decoder_trainer = DecoderTrainer(
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@@ -903,8 +902,8 @@ for unet_number in (1, 2):
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# after much training
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# you can sample from the exponentially moving averaged unets as so
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mock_image_embed = torch.randn(4, 512).cuda()
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images = decoder_trainer.sample(mock_image_embed, text = text) # (4, 3, 256, 256)
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mock_image_embed = torch.randn(32, 512).cuda()
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images = decoder_trainer.sample(image_embed = mock_image_embed, text = text) # (4, 3, 256, 256)
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```
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### Diffusion Prior Training
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@@ -1113,6 +1112,7 @@ For detailed information on training the diffusion prior, please refer to the [d
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- [x] speed up inference, read up on papers (ddim)
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- [x] add inpainting ability using resampler from repaint paper https://arxiv.org/abs/2201.09865
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- [x] add the final combination of upsample feature maps, used in unet squared, seems to have an effect in local experiments
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- [ ] consider elucidated dalle2 https://arxiv.org/abs/2206.00364
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- [ ] interface out the vqgan-vae so a pretrained one can be pulled off the shelf to validate latent diffusion + DALL-E2
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## Citations
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@@ -547,34 +547,40 @@ class NoiseScheduler(nn.Module):
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# diffusion prior
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class LayerNorm(nn.Module):
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def __init__(self, dim, eps = 1e-5, stable = False):
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def __init__(self, dim, eps = 1e-5, fp16_eps = 1e-3, stable = False):
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super().__init__()
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self.eps = eps
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self.fp16_eps = fp16_eps
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self.stable = stable
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self.g = nn.Parameter(torch.ones(dim))
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def forward(self, x):
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eps = self.eps if x.dtype == torch.float32 else self.fp16_eps
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if self.stable:
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x = x / x.amax(dim = -1, keepdim = True).detach()
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var = torch.var(x, dim = -1, unbiased = False, keepdim = True)
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mean = torch.mean(x, dim = -1, keepdim = True)
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return (x - mean) * (var + self.eps).rsqrt() * self.g
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return (x - mean) * (var + eps).rsqrt() * self.g
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class ChanLayerNorm(nn.Module):
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def __init__(self, dim, eps = 1e-5, stable = False):
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def __init__(self, dim, eps = 1e-5, fp16_eps = 1e-3, stable = False):
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super().__init__()
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self.eps = eps
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self.fp16_eps = fp16_eps
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self.stable = stable
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self.g = nn.Parameter(torch.ones(1, dim, 1, 1))
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def forward(self, x):
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eps = self.eps if x.dtype == torch.float32 else self.fp16_eps
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if self.stable:
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x = x / x.amax(dim = 1, keepdim = True).detach()
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var = torch.var(x, dim = 1, unbiased = False, keepdim = True)
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mean = torch.mean(x, dim = 1, keepdim = True)
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return (x - mean) * (var + self.eps).rsqrt() * self.g
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return (x - mean) * (var + eps).rsqrt() * self.g
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class Residual(nn.Module):
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def __init__(self, fn):
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@@ -1357,7 +1363,8 @@ class ResnetBlock(nn.Module):
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*,
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cond_dim = None,
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time_cond_dim = None,
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groups = 8
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groups = 8,
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cosine_sim_cross_attn = False
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):
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super().__init__()
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@@ -1377,7 +1384,8 @@ class ResnetBlock(nn.Module):
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'b (h w) c',
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CrossAttention(
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dim = dim_out,
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context_dim = cond_dim
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context_dim = cond_dim,
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cosine_sim = cosine_sim_cross_attn
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)
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)
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@@ -1412,11 +1420,12 @@ class CrossAttention(nn.Module):
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heads = 8,
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dropout = 0.,
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norm_context = False,
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pb_relax_alpha = 32 ** 2
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cosine_sim = False,
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cosine_sim_scale = 16
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):
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super().__init__()
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self.pb_relax_alpha = pb_relax_alpha
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self.scale = dim_head ** -0.5 * (pb_relax_alpha ** -1)
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self.cosine_sim = cosine_sim
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self.scale = cosine_sim_scale if cosine_sim else (dim_head ** -0.5)
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self.heads = heads
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inner_dim = dim_head * heads
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@@ -1452,7 +1461,10 @@ class CrossAttention(nn.Module):
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k = torch.cat((nk, k), dim = -2)
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v = torch.cat((nv, v), dim = -2)
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q = q * self.scale
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if self.cosine_sim:
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q, k = map(l2norm, (q, k))
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q, k = map(lambda t: t * math.sqrt(self.scale), (q, k))
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sim = einsum('b h i d, b h j d -> b h i j', q, k)
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max_neg_value = -torch.finfo(sim.dtype).max
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@@ -1462,9 +1474,6 @@ class CrossAttention(nn.Module):
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mask = rearrange(mask, 'b j -> b 1 1 j')
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sim = sim.masked_fill(~mask, max_neg_value)
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sim = sim - sim.amax(dim = -1, keepdim = True).detach()
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sim = sim * self.pb_relax_alpha
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attn = sim.softmax(dim = -1)
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out = einsum('b h i j, b h j d -> b h i d', attn, v)
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@@ -1494,6 +1503,7 @@ class LinearAttention(nn.Module):
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def forward(self, fmap):
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h, x, y = self.heads, *fmap.shape[-2:]
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seq_len = x * y
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fmap = self.norm(fmap)
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q, k, v = self.to_qkv(fmap).chunk(3, dim = 1)
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@@ -1503,6 +1513,9 @@ class LinearAttention(nn.Module):
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k = k.softmax(dim = -2)
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q = q * self.scale
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v = l2norm(v)
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k, v = map(lambda t: t / math.sqrt(seq_len), (k, v))
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context = einsum('b n d, b n e -> b d e', k, v)
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out = einsum('b n d, b d e -> b n e', q, context)
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@@ -1590,6 +1603,7 @@ class Unet(nn.Module):
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lowres_cond = False, # for cascading diffusion - https://cascaded-diffusion.github.io/
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lowres_noise_cond = False, # for conditioning on low resolution noising, based on Imagen
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sparse_attn = False,
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cosine_sim_cross_attn = False,
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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)
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cond_on_text_encodings = False,
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max_text_len = 256,
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@@ -1733,9 +1747,13 @@ class Unet(nn.Module):
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upsample_klass = NearestUpsample if not pixel_shuffle_upsample else PixelShuffleUpsample
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# prepare resnet klass
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resnet_block = partial(ResnetBlock, cosine_sim_cross_attn = cosine_sim_cross_attn)
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# give memory efficient unet an initial resnet block
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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
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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
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# layers
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@@ -1762,17 +1780,17 @@ class Unet(nn.Module):
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self.downs.append(nn.ModuleList([
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downsample_klass(dim_in, dim_out = dim_out) if memory_efficient else None,
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ResnetBlock(dim_layer, dim_layer, time_cond_dim = time_cond_dim, groups = groups),
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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)]),
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resnet_block(dim_layer, dim_layer, time_cond_dim = time_cond_dim, groups = groups),
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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)]),
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attention,
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downsample_klass(dim_layer, dim_out = dim_out) if not is_last and not memory_efficient else nn.Conv2d(dim_layer, dim_out, 1)
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]))
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mid_dim = dims[-1]
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self.mid_block1 = ResnetBlock(mid_dim, mid_dim, cond_dim = cond_dim, time_cond_dim = time_cond_dim, groups = resnet_groups[-1])
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self.mid_block1 = resnet_block(mid_dim, mid_dim, cond_dim = cond_dim, time_cond_dim = time_cond_dim, groups = resnet_groups[-1])
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self.mid_attn = create_self_attn(mid_dim)
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self.mid_block2 = ResnetBlock(mid_dim, mid_dim, cond_dim = cond_dim, time_cond_dim = time_cond_dim, groups = resnet_groups[-1])
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self.mid_block2 = resnet_block(mid_dim, mid_dim, cond_dim = cond_dim, time_cond_dim = time_cond_dim, groups = resnet_groups[-1])
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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))):
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is_last = ind >= (len(in_out) - 1)
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@@ -1789,8 +1807,8 @@ class Unet(nn.Module):
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upsample_combiner_dims.append(dim_out)
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self.ups.append(nn.ModuleList([
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ResnetBlock(dim_out + skip_connect_dim, dim_out, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups),
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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)]),
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resnet_block(dim_out + skip_connect_dim, dim_out, cond_dim = layer_cond_dim, time_cond_dim = time_cond_dim, groups = groups),
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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)]),
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attention,
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upsample_klass(dim_out, dim_in) if not is_last or memory_efficient else nn.Identity()
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]))
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@@ -1806,7 +1824,7 @@ class Unet(nn.Module):
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# a final resnet block
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self.final_resnet_block = ResnetBlock(self.upsample_combiner.dim_out + dim, dim, time_cond_dim = time_cond_dim, groups = top_level_resnet_group)
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self.final_resnet_block = resnet_block(self.upsample_combiner.dim_out + dim, dim, time_cond_dim = time_cond_dim, groups = top_level_resnet_group)
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out_dim_in = dim + (channels if lowres_cond else 0)
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@@ -1830,7 +1848,7 @@ class Unet(nn.Module):
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channels == self.channels and \
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cond_on_image_embeds == self.cond_on_image_embeds and \
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cond_on_text_encodings == self.cond_on_text_encodings and \
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cond_on_lowres_noise == self.cond_on_lowres_noise and \
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lowres_noise_cond == self.lowres_noise_cond and \
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channels_out == self.channels_out:
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return self
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@@ -2937,7 +2955,7 @@ class DALLE2(nn.Module):
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image_embed = self.prior.sample(text, num_samples_per_batch = self.prior_num_samples, cond_scale = prior_cond_scale)
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text_cond = text if self.decoder_need_text_cond else None
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images = self.decoder.sample(image_embed, text = text_cond, cond_scale = cond_scale)
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images = self.decoder.sample(image_embed = image_embed, text = text_cond, cond_scale = cond_scale)
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if return_pil_images:
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images = list(map(self.to_pil, images.unbind(dim = 0)))
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@@ -174,7 +174,7 @@ class DiffusionPriorTrainer(nn.Module):
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def __init__(
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self,
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diffusion_prior,
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accelerator,
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accelerator = None,
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use_ema = True,
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lr = 3e-4,
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wd = 1e-2,
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@@ -186,8 +186,12 @@ class DiffusionPriorTrainer(nn.Module):
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):
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super().__init__()
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assert isinstance(diffusion_prior, DiffusionPrior)
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assert isinstance(accelerator, Accelerator)
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ema_kwargs, kwargs = groupby_prefix_and_trim('ema_', kwargs)
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accelerator_kwargs, kwargs = groupby_prefix_and_trim('accelerator_', kwargs)
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if not exists(accelerator):
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accelerator = Accelerator(**accelerator_kwargs)
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# assign some helpful member vars
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@@ -1 +1 @@
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__version__ = '1.1.0'
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__version__ = '1.4.2'
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Reference in New Issue
Block a user