| | """Transformer building blocks. |
| | |
| | Reference: |
| | https://github.com/mlfoundations/open_clip/blob/main/src/open_clip/transformer.py |
| | https://github.com/baofff/U-ViT/blob/main/libs/timm.py |
| | """ |
| |
|
| | import math |
| | import torch |
| | import torch.nn as nn |
| | from torch.utils.checkpoint import checkpoint |
| | from collections import OrderedDict |
| | import einops |
| | from einops.layers.torch import Rearrange |
| |
|
| |
|
| | def modulate(x, shift, scale): |
| | return x * (1 + scale) + shift |
| |
|
| |
|
| | class ResidualAttentionBlock(nn.Module): |
| | def __init__( |
| | self, |
| | d_model, |
| | n_head, |
| | mlp_ratio = 4.0, |
| | act_layer = nn.GELU, |
| | norm_layer = nn.LayerNorm |
| | ): |
| | super().__init__() |
| |
|
| | self.ln_1 = norm_layer(d_model) |
| | self.attn = nn.MultiheadAttention(d_model, n_head) |
| | self.mlp_ratio = mlp_ratio |
| | |
| | if mlp_ratio > 0: |
| | self.ln_2 = norm_layer(d_model) |
| | mlp_width = int(d_model * mlp_ratio) |
| | self.mlp = nn.Sequential(OrderedDict([ |
| | ("c_fc", nn.Linear(d_model, mlp_width)), |
| | ("gelu", act_layer()), |
| | ("c_proj", nn.Linear(mlp_width, d_model)) |
| | ])) |
| |
|
| | def attention( |
| | self, |
| | x: torch.Tensor |
| | ): |
| | return self.attn(x, x, x, need_weights=False)[0] |
| |
|
| | def forward( |
| | self, |
| | x: torch.Tensor, |
| | ): |
| | attn_output = self.attention(x=self.ln_1(x)) |
| | x = x + attn_output |
| | if self.mlp_ratio > 0: |
| | x = x + self.mlp(self.ln_2(x)) |
| | return x |
| |
|
| | if hasattr(torch.nn.functional, 'scaled_dot_product_attention'): |
| | ATTENTION_MODE = 'flash' |
| | else: |
| | try: |
| | import xformers |
| | import xformers.ops |
| | ATTENTION_MODE = 'xformers' |
| | except: |
| | ATTENTION_MODE = 'math' |
| | print(f'attention mode is {ATTENTION_MODE}') |
| |
|
| |
|
| | class Attention(nn.Module): |
| | def __init__(self, dim, num_heads=8, qkv_bias=False, qk_scale=None, attn_drop=0., proj_drop=0.): |
| | super().__init__() |
| | self.num_heads = num_heads |
| | head_dim = dim // num_heads |
| | self.scale = qk_scale or head_dim ** -0.5 |
| | self.qkv = nn.Linear(dim, dim * 3, bias=qkv_bias) |
| | self.attn_drop = nn.Dropout(attn_drop) |
| | self.proj = nn.Linear(dim, dim) |
| | self.proj_drop = nn.Dropout(proj_drop) |
| |
|
| | def forward(self, x): |
| | B, L, C = x.shape |
| |
|
| | qkv = self.qkv(x) |
| | if ATTENTION_MODE == 'flash': |
| | qkv = einops.rearrange(qkv, 'B L (K H D) -> K B H L D', K=3, H=self.num_heads).float() |
| | q, k, v = qkv[0], qkv[1], qkv[2] |
| | x = torch.nn.functional.scaled_dot_product_attention(q, k, v) |
| | x = einops.rearrange(x, 'B H L D -> B L (H D)') |
| | elif ATTENTION_MODE == 'xformers': |
| | qkv = einops.rearrange(qkv, 'B L (K H D) -> K B L H D', K=3, H=self.num_heads) |
| | q, k, v = qkv[0], qkv[1], qkv[2] |
| | x = xformers.ops.memory_efficient_attention(q, k, v) |
| | x = einops.rearrange(x, 'B L H D -> B L (H D)', H=self.num_heads) |
| | elif ATTENTION_MODE == 'math': |
| | qkv = einops.rearrange(qkv, 'B L (K H D) -> K B H L D', K=3, H=self.num_heads) |
| | q, k, v = qkv[0], qkv[1], qkv[2] |
| | attn = (q @ k.transpose(-2, -1)) * self.scale |
| | attn = attn.softmax(dim=-1) |
| | attn = self.attn_drop(attn) |
| | x = (attn @ v).transpose(1, 2).reshape(B, L, C) |
| | else: |
| | raise NotImplemented |
| |
|
| | x = self.proj(x) |
| | x = self.proj_drop(x) |
| | return x |
| |
|
| |
|
| | def drop_path(x, drop_prob: float = 0., training: bool = False): |
| | """Drop paths (Stochastic Depth) per sample (when applied in main path of residual blocks). |
| | |
| | This is the same as the DropConnect impl I created for EfficientNet, etc networks, however, |
| | the original name is misleading as 'Drop Connect' is a different form of dropout in a separate paper... |
| | See discussion: https://github.com/tensorflow/tpu/issues/494#issuecomment-532968956 ... I've opted for |
| | changing the layer and argument names to 'drop path' rather than mix DropConnect as a layer name and use |
| | 'survival rate' as the argument. |
| | |
| | """ |
| | if drop_prob == 0. or not training: |
| | return x |
| | keep_prob = 1 - drop_prob |
| | shape = (x.shape[0],) + (1,) * (x.ndim - 1) |
| | random_tensor = keep_prob + torch.rand(shape, dtype=x.dtype, device=x.device) |
| | random_tensor.floor_() |
| | output = x.div(keep_prob) * random_tensor |
| | return output |
| |
|
| |
|
| | class DropPath(nn.Module): |
| | """Drop paths (Stochastic Depth) per sample (when applied in main path of residual blocks). |
| | """ |
| | def __init__(self, drop_prob=None): |
| | super(DropPath, self).__init__() |
| | self.drop_prob = drop_prob |
| |
|
| | def forward(self, x): |
| | return drop_path(x, self.drop_prob, self.training) |
| |
|
| |
|
| | class Mlp(nn.Module): |
| | def __init__(self, in_features, hidden_features=None, out_features=None, act_layer=nn.GELU, drop=0.): |
| | super().__init__() |
| | out_features = out_features or in_features |
| | hidden_features = hidden_features or in_features |
| | self.fc1 = nn.Linear(in_features, hidden_features) |
| | self.act = act_layer() |
| | self.fc2 = nn.Linear(hidden_features, out_features) |
| | self.drop = nn.Dropout(drop) |
| |
|
| | def forward(self, x): |
| | x = self.fc1(x) |
| | x = self.act(x) |
| | x = self.drop(x) |
| | x = self.fc2(x) |
| | x = self.drop(x) |
| | return x |
| |
|
| |
|
| | class UViTBlock(nn.Module): |
| |
|
| | def __init__(self, dim, num_heads, mlp_ratio=4., qkv_bias=False, qk_scale=None, drop=0., attn_drop=0., |
| | drop_path=0., act_layer=nn.GELU, norm_layer=nn.LayerNorm, skip=False, use_checkpoint=False): |
| | super().__init__() |
| | self.norm1 = norm_layer(dim) |
| | self.attn = Attention( |
| | dim, num_heads=num_heads, qkv_bias=qkv_bias, qk_scale=qk_scale, attn_drop=attn_drop, proj_drop=drop) |
| | |
| | self.drop_path = DropPath(drop_path) if drop_path > 0. else nn.Identity() |
| | self.norm2 = norm_layer(dim) |
| | mlp_hidden_dim = int(dim * mlp_ratio) |
| | self.mlp = Mlp(in_features=dim, hidden_features=mlp_hidden_dim, act_layer=act_layer, drop=drop) |
| | self.skip_linear = nn.Linear(2 * dim, dim) if skip else None |
| | self.use_checkpoint = use_checkpoint |
| |
|
| | def forward(self, x, skip=None): |
| | if self.use_checkpoint: |
| | return torch.utils.checkpoint.checkpoint(self._forward, x, skip) |
| | else: |
| | return self._forward(x, skip) |
| |
|
| | def _forward(self, x, skip=None): |
| | if self.skip_linear is not None: |
| | x = self.skip_linear(torch.cat([x, skip], dim=-1)) |
| | x = x + self.drop_path(self.attn(self.norm1(x))) |
| | x = x + self.drop_path(self.mlp(self.norm2(x))) |
| | return x |
| | |
| |
|
| | def _expand_token(token, batch_size: int): |
| | return token.unsqueeze(0).expand(batch_size, -1, -1) |
| |
|
| |
|
| | class TiTokEncoder(nn.Module): |
| | def __init__(self, config): |
| | super().__init__() |
| | self.config = config |
| | self.image_size = config.dataset.preprocessing.crop_size |
| | self.patch_size = config.model.vq_model.vit_enc_patch_size |
| | self.grid_size = self.image_size // self.patch_size |
| | self.model_size = config.model.vq_model.vit_enc_model_size |
| | self.num_latent_tokens = config.model.vq_model.num_latent_tokens |
| | self.token_size = config.model.vq_model.token_size |
| |
|
| | if config.model.vq_model.get("quantize_mode", "vq") == "vae": |
| | self.token_size = self.token_size * 2 |
| |
|
| | self.is_legacy = config.model.vq_model.get("is_legacy", True) |
| |
|
| | self.width = { |
| | "small": 512, |
| | "base": 768, |
| | "large": 1024, |
| | }[self.model_size] |
| | self.num_layers = { |
| | "small": 8, |
| | "base": 12, |
| | "large": 24, |
| | }[self.model_size] |
| | self.num_heads = { |
| | "small": 8, |
| | "base": 12, |
| | "large": 16, |
| | }[self.model_size] |
| | |
| | self.patch_embed = nn.Conv2d( |
| | in_channels=3, out_channels=self.width, |
| | kernel_size=self.patch_size, stride=self.patch_size, bias=True) |
| | |
| | scale = self.width ** -0.5 |
| | self.class_embedding = nn.Parameter(scale * torch.randn(1, self.width)) |
| | self.positional_embedding = nn.Parameter( |
| | scale * torch.randn(self.grid_size ** 2 + 1, self.width)) |
| | self.latent_token_positional_embedding = nn.Parameter( |
| | scale * torch.randn(self.num_latent_tokens, self.width)) |
| | self.ln_pre = nn.LayerNorm(self.width) |
| | self.transformer = nn.ModuleList() |
| | for i in range(self.num_layers): |
| | self.transformer.append(ResidualAttentionBlock( |
| | self.width, self.num_heads, mlp_ratio=4.0 |
| | )) |
| | self.ln_post = nn.LayerNorm(self.width) |
| | self.conv_out = nn.Conv2d(self.width, self.token_size, kernel_size=1, bias=True) |
| |
|
| | def forward(self, pixel_values, latent_tokens): |
| | batch_size = pixel_values.shape[0] |
| | x = pixel_values |
| | x = self.patch_embed(x) |
| | x = x.reshape(x.shape[0], x.shape[1], -1) |
| | x = x.permute(0, 2, 1) |
| | |
| | x = torch.cat([_expand_token(self.class_embedding, x.shape[0]).to(x.dtype), x], dim=1) |
| | x = x + self.positional_embedding.to(x.dtype) |
| | |
| |
|
| | latent_tokens = _expand_token(latent_tokens, x.shape[0]).to(x.dtype) |
| | latent_tokens = latent_tokens + self.latent_token_positional_embedding.to(x.dtype) |
| | x = torch.cat([x, latent_tokens], dim=1) |
| |
|
| | x = self.ln_pre(x) |
| | x = x.permute(1, 0, 2) |
| | for i in range(self.num_layers): |
| | x = self.transformer[i](x) |
| | x = x.permute(1, 0, 2) |
| | |
| | latent_tokens = x[:, 1+self.grid_size**2:] |
| | latent_tokens = self.ln_post(latent_tokens) |
| | |
| | if self.is_legacy: |
| | latent_tokens = latent_tokens.reshape(batch_size, self.width, self.num_latent_tokens, 1) |
| | else: |
| | |
| | latent_tokens = latent_tokens.reshape(batch_size, self.num_latent_tokens, self.width, 1).permute(0, 2, 1, 3) |
| | latent_tokens = self.conv_out(latent_tokens) |
| | latent_tokens = latent_tokens.reshape(batch_size, self.token_size, 1, self.num_latent_tokens) |
| | return latent_tokens |
| | |
| |
|
| | class TiTokDecoder(nn.Module): |
| | def __init__(self, config): |
| | super().__init__() |
| | self.config = config |
| | self.image_size = config.dataset.preprocessing.crop_size |
| | self.patch_size = config.model.vq_model.vit_dec_patch_size |
| | self.grid_size = self.image_size // self.patch_size |
| | self.model_size = config.model.vq_model.vit_dec_model_size |
| | self.num_latent_tokens = config.model.vq_model.num_latent_tokens |
| | self.token_size = config.model.vq_model.token_size |
| | self.is_legacy = config.model.vq_model.get("is_legacy", True) |
| | self.width = { |
| | "small": 512, |
| | "base": 768, |
| | "large": 1024, |
| | }[self.model_size] |
| | self.num_layers = { |
| | "small": 8, |
| | "base": 12, |
| | "large": 24, |
| | }[self.model_size] |
| | self.num_heads = { |
| | "small": 8, |
| | "base": 12, |
| | "large": 16, |
| | }[self.model_size] |
| |
|
| | self.decoder_embed = nn.Linear( |
| | self.token_size, self.width, bias=True) |
| | scale = self.width ** -0.5 |
| | self.class_embedding = nn.Parameter(scale * torch.randn(1, self.width)) |
| | self.positional_embedding = nn.Parameter( |
| | scale * torch.randn(self.grid_size ** 2 + 1, self.width)) |
| | |
| | self.mask_token = nn.Parameter(scale * torch.randn(1, 1, self.width)) |
| | self.latent_token_positional_embedding = nn.Parameter( |
| | scale * torch.randn(self.num_latent_tokens, self.width)) |
| | self.ln_pre = nn.LayerNorm(self.width) |
| | self.transformer = nn.ModuleList() |
| | for i in range(self.num_layers): |
| | self.transformer.append(ResidualAttentionBlock( |
| | self.width, self.num_heads, mlp_ratio=4.0 |
| | )) |
| | self.ln_post = nn.LayerNorm(self.width) |
| |
|
| | if self.is_legacy: |
| | self.ffn = nn.Sequential( |
| | nn.Conv2d(self.width, 2 * self.width, 1, padding=0, bias=True), |
| | nn.Tanh(), |
| | nn.Conv2d(2 * self.width, 1024, 1, padding=0, bias=True), |
| | ) |
| | self.conv_out = nn.Identity() |
| | else: |
| | |
| | self.ffn = nn.Sequential( |
| | nn.Conv2d(self.width, self.patch_size * self.patch_size * 3, 1, padding=0, bias=True), |
| | Rearrange('b (p1 p2 c) h w -> b c (h p1) (w p2)', |
| | p1 = self.patch_size, p2 = self.patch_size),) |
| | self.conv_out = nn.Conv2d(3, 3, 3, padding=1, bias=True) |
| | |
| | def forward(self, z_quantized): |
| | N, C, H, W = z_quantized.shape |
| | assert H == 1 and W == self.num_latent_tokens, f"{H}, {W}, {self.num_latent_tokens}" |
| | x = z_quantized.reshape(N, C*H, W).permute(0, 2, 1) |
| | x = self.decoder_embed(x) |
| |
|
| | batchsize, seq_len, _ = x.shape |
| |
|
| | mask_tokens = self.mask_token.repeat(batchsize, self.grid_size**2, 1).to(x.dtype) |
| | mask_tokens = torch.cat([_expand_token(self.class_embedding, mask_tokens.shape[0]).to(mask_tokens.dtype), |
| | mask_tokens], dim=1) |
| | mask_tokens = mask_tokens + self.positional_embedding.to(mask_tokens.dtype) |
| | x = x + self.latent_token_positional_embedding[:seq_len] |
| | x = torch.cat([mask_tokens, x], dim=1) |
| | |
| | x = self.ln_pre(x) |
| | x = x.permute(1, 0, 2) |
| | for i in range(self.num_layers): |
| | x = self.transformer[i](x) |
| | x = x.permute(1, 0, 2) |
| | x = x[:, 1:1+self.grid_size**2] |
| | x = self.ln_post(x) |
| | |
| | x = x.permute(0, 2, 1).reshape(batchsize, self.width, self.grid_size, self.grid_size) |
| | x = self.ffn(x.contiguous()) |
| | x = self.conv_out(x) |
| | return x |
| |
|
| |
|
| | class TATiTokDecoder(TiTokDecoder): |
| | def __init__(self, config): |
| | super().__init__(config) |
| | scale = self.width ** -0.5 |
| | self.text_context_length = config.model.vq_model.get("text_context_length", 77) |
| | self.text_embed_dim = config.model.vq_model.get("text_embed_dim", 768) |
| | self.text_guidance_proj = nn.Linear(self.text_embed_dim, self.width) |
| | self.text_guidance_positional_embedding = nn.Parameter(scale * torch.randn(self.text_context_length, self.width)) |
| |
|
| | def forward(self, z_quantized, text_guidance): |
| | N, C, H, W = z_quantized.shape |
| | assert H == 1 and W == self.num_latent_tokens, f"{H}, {W}, {self.num_latent_tokens}" |
| | x = z_quantized.reshape(N, C*H, W).permute(0, 2, 1) |
| | x = self.decoder_embed(x) |
| |
|
| | batchsize, seq_len, _ = x.shape |
| |
|
| | mask_tokens = self.mask_token.repeat(batchsize, self.grid_size**2, 1).to(x.dtype) |
| | mask_tokens = torch.cat([_expand_token(self.class_embedding, mask_tokens.shape[0]).to(mask_tokens.dtype), |
| | mask_tokens], dim=1) |
| | mask_tokens = mask_tokens + self.positional_embedding.to(mask_tokens.dtype) |
| | x = x + self.latent_token_positional_embedding[:seq_len] |
| | x = torch.cat([mask_tokens, x], dim=1) |
| |
|
| | text_guidance = self.text_guidance_proj(text_guidance) |
| | text_guidance = text_guidance + self.text_guidance_positional_embedding |
| | x = torch.cat([x, text_guidance], dim=1) |
| | |
| | x = self.ln_pre(x) |
| | x = x.permute(1, 0, 2) |
| | for i in range(self.num_layers): |
| | x = self.transformer[i](x) |
| | x = x.permute(1, 0, 2) |
| | x = x[:, 1:1+self.grid_size**2] |
| | x = self.ln_post(x) |
| | |
| | x = x.permute(0, 2, 1).reshape(batchsize, self.width, self.grid_size, self.grid_size) |
| | x = self.ffn(x.contiguous()) |
| | x = self.conv_out(x) |
| | return x |
| | |
| |
|
| | class WeightTiedLMHead(nn.Module): |
| | def __init__(self, embeddings, target_codebook_size): |
| | super().__init__() |
| | self.weight = embeddings.weight |
| | self.target_codebook_size = target_codebook_size |
| |
|
| | def forward(self, x): |
| | |
| | |
| | weight = self.weight[:self.target_codebook_size] |
| | |
| | logits = torch.matmul(x, weight.t()) |
| | return logits |
| |
|
| |
|
| | class TimestepEmbedder(nn.Module): |
| | """ |
| | Embeds scalar timesteps into vector representations. |
| | """ |
| | def __init__(self, hidden_size, frequency_embedding_size=256): |
| | super().__init__() |
| | self.mlp = nn.Sequential( |
| | nn.Linear(frequency_embedding_size, hidden_size, bias=True), |
| | nn.SiLU(), |
| | nn.Linear(hidden_size, hidden_size, bias=True), |
| | ) |
| | self.frequency_embedding_size = frequency_embedding_size |
| |
|
| | @staticmethod |
| | def timestep_embedding(t, dim, max_period=10000): |
| | """ |
| | Create sinusoidal timestep embeddings. |
| | :param t: a 1-D Tensor of N indices, one per batch element. |
| | These may be fractional. |
| | :param dim: the dimension of the output. |
| | :param max_period: controls the minimum frequency of the embeddings. |
| | :return: an (N, D) Tensor of positional embeddings. |
| | """ |
| | |
| | half = dim // 2 |
| | freqs = torch.exp( |
| | -math.log(max_period) * torch.arange(start=0, end=half, dtype=torch.float32) / half |
| | ).to(device=t.device) |
| | args = t[:, None].float() * freqs[None] |
| | embedding = torch.cat([torch.cos(args), torch.sin(args)], dim=-1) |
| | if dim % 2: |
| | embedding = torch.cat([embedding, torch.zeros_like(embedding[:, :1])], dim=-1) |
| | return embedding |
| |
|
| | def forward(self, t): |
| | t_freq = self.timestep_embedding(t, self.frequency_embedding_size) |
| | t_emb = self.mlp(t_freq) |
| | return t_emb |
| |
|
| |
|
| | class ResBlock(nn.Module): |
| | """ |
| | A residual block that can optionally change the number of channels. |
| | :param channels: the number of input channels. |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | channels |
| | ): |
| | super().__init__() |
| | self.channels = channels |
| |
|
| | self.in_ln = nn.LayerNorm(channels, eps=1e-6) |
| | self.mlp = nn.Sequential( |
| | nn.Linear(channels, channels, bias=True), |
| | nn.SiLU(), |
| | nn.Linear(channels, channels, bias=True), |
| | ) |
| |
|
| | self.adaLN_modulation = nn.Sequential( |
| | nn.SiLU(), |
| | nn.Linear(channels, 3 * channels, bias=True) |
| | ) |
| |
|
| | def forward(self, x, y): |
| | shift_mlp, scale_mlp, gate_mlp = self.adaLN_modulation(y).chunk(3, dim=-1) |
| | h = modulate(self.in_ln(x), shift_mlp, scale_mlp) |
| | h = self.mlp(h) |
| | return x + gate_mlp * h |
| |
|
| |
|
| | class FinalLayer(nn.Module): |
| | """ |
| | The final layer adopted from DiT. |
| | """ |
| | def __init__(self, model_channels, out_channels): |
| | super().__init__() |
| | self.norm_final = nn.LayerNorm(model_channels, elementwise_affine=False, eps=1e-6) |
| | self.linear = nn.Linear(model_channels, out_channels, bias=True) |
| | self.adaLN_modulation = nn.Sequential( |
| | nn.SiLU(), |
| | nn.Linear(model_channels, 2 * model_channels, bias=True) |
| | ) |
| |
|
| | def forward(self, x, c): |
| | shift, scale = self.adaLN_modulation(c).chunk(2, dim=-1) |
| | x = modulate(self.norm_final(x), shift, scale) |
| | x = self.linear(x) |
| | return x |
| |
|
| |
|
| | class SimpleMLPAdaLN(nn.Module): |
| | """ |
| | The MLP for Diffusion Loss. |
| | :param in_channels: channels in the input Tensor. |
| | :param model_channels: base channel count for the model. |
| | :param out_channels: channels in the output Tensor. |
| | :param z_channels: channels in the condition. |
| | :param num_res_blocks: number of residual blocks per downsample. |
| | """ |
| |
|
| | def __init__( |
| | self, |
| | in_channels, |
| | model_channels, |
| | out_channels, |
| | z_channels, |
| | num_res_blocks, |
| | grad_checkpointing=False, |
| | ): |
| | super().__init__() |
| |
|
| | self.in_channels = in_channels |
| | self.model_channels = model_channels |
| | self.out_channels = out_channels |
| | self.num_res_blocks = num_res_blocks |
| | self.grad_checkpointing = grad_checkpointing |
| |
|
| | self.time_embed = TimestepEmbedder(model_channels) |
| | self.cond_embed = nn.Linear(z_channels, model_channels) |
| |
|
| | self.input_proj = nn.Linear(in_channels, model_channels) |
| |
|
| | res_blocks = [] |
| | for i in range(num_res_blocks): |
| | res_blocks.append(ResBlock( |
| | model_channels, |
| | )) |
| |
|
| | self.res_blocks = nn.ModuleList(res_blocks) |
| | self.final_layer = FinalLayer(model_channels, out_channels) |
| |
|
| | self.initialize_weights() |
| |
|
| | def initialize_weights(self): |
| | def _basic_init(module): |
| | if isinstance(module, nn.Linear): |
| | torch.nn.init.xavier_uniform_(module.weight) |
| | if module.bias is not None: |
| | nn.init.constant_(module.bias, 0) |
| | self.apply(_basic_init) |
| |
|
| | |
| | nn.init.normal_(self.time_embed.mlp[0].weight, std=0.02) |
| | nn.init.normal_(self.time_embed.mlp[2].weight, std=0.02) |
| |
|
| | |
| | for block in self.res_blocks: |
| | nn.init.constant_(block.adaLN_modulation[-1].weight, 0) |
| | nn.init.constant_(block.adaLN_modulation[-1].bias, 0) |
| |
|
| | |
| | nn.init.constant_(self.final_layer.adaLN_modulation[-1].weight, 0) |
| | nn.init.constant_(self.final_layer.adaLN_modulation[-1].bias, 0) |
| | nn.init.constant_(self.final_layer.linear.weight, 0) |
| | nn.init.constant_(self.final_layer.linear.bias, 0) |
| |
|
| | def forward(self, x, t, c): |
| | """ |
| | Apply the model to an input batch. |
| | :param x: an [N x C] Tensor of inputs. |
| | :param t: a 1-D batch of timesteps. |
| | :param c: conditioning from AR transformer. |
| | :return: an [N x C] Tensor of outputs. |
| | """ |
| | x = self.input_proj(x) |
| | t = self.time_embed(t) |
| | c = self.cond_embed(c) |
| |
|
| | y = t + c |
| |
|
| | if self.grad_checkpointing and not torch.jit.is_scripting(): |
| | for block in self.res_blocks: |
| | x = checkpoint(block, x, y) |
| | else: |
| | for block in self.res_blocks: |
| | x = block(x, y) |
| |
|
| | return self.final_layer(x, y) |
| |
|
| | def forward_with_cfg(self, x, t, c, cfg_scale): |
| | half = x[: len(x) // 2] |
| | combined = torch.cat([half, half], dim=0) |
| | model_out = self.forward(combined, t, c) |
| | eps, rest = model_out[:, :self.in_channels], model_out[:, self.in_channels:] |
| | cond_eps, uncond_eps = torch.split(eps, len(eps) // 2, dim=0) |
| | half_eps = uncond_eps + cfg_scale * (cond_eps - uncond_eps) |
| | eps = torch.cat([half_eps, half_eps], dim=0) |
| | return torch.cat([eps, rest], dim=1) |