Instructions to use tencent/HunyuanImage-3.0 with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use tencent/HunyuanImage-3.0 with Transformers:
# Load model directly from transformers import AutoModelForCausalLM model = AutoModelForCausalLM.from_pretrained("tencent/HunyuanImage-3.0", trust_remote_code=True, dtype="auto") - Inference
- Notebooks
- Google Colab
- Kaggle
| # Licensed under the TENCENT HUNYUAN COMMUNITY LICENSE AGREEMENT (the "License"); | |
| # you may not use this file except in compliance with the License. | |
| # You may obtain a copy of the License at | |
| # | |
| # https://github.com/Tencent-Hunyuan/HunyuanImage-3.0/blob/main/LICENSE | |
| # | |
| # Unless required by applicable law or agreed to in writing, software | |
| # distributed under the License is distributed on an "AS IS" BASIS, | |
| # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. | |
| # See the License for the specific language governing permissions and | |
| # limitations under the License. | |
| # ============================================================================== | |
| from dataclasses import dataclass | |
| from typing import Tuple, Optional | |
| import math | |
| import random | |
| import numpy as np | |
| from einops import rearrange | |
| import torch | |
| from torch import Tensor, nn | |
| import torch.nn.functional as F | |
| from diffusers.configuration_utils import ConfigMixin, register_to_config | |
| from diffusers.models.modeling_outputs import AutoencoderKLOutput | |
| from diffusers.models.modeling_utils import ModelMixin | |
| from diffusers.utils.torch_utils import randn_tensor | |
| from diffusers.utils import BaseOutput | |
| class DiagonalGaussianDistribution(object): | |
| def __init__(self, parameters: torch.Tensor, deterministic: bool = False): | |
| if parameters.ndim == 3: | |
| dim = 2 # (B, L, C) | |
| elif parameters.ndim == 5 or parameters.ndim == 4: | |
| dim = 1 # (B, C, T, H ,W) / (B, C, H, W) | |
| else: | |
| raise NotImplementedError | |
| self.parameters = parameters | |
| self.mean, self.logvar = torch.chunk(parameters, 2, dim=dim) | |
| self.logvar = torch.clamp(self.logvar, -30.0, 20.0) | |
| self.deterministic = deterministic | |
| self.std = torch.exp(0.5 * self.logvar) | |
| self.var = torch.exp(self.logvar) | |
| if self.deterministic: | |
| self.var = self.std = torch.zeros_like( | |
| self.mean, device=self.parameters.device, dtype=self.parameters.dtype | |
| ) | |
| def sample(self, generator: Optional[torch.Generator] = None) -> torch.FloatTensor: | |
| # make sure sample is on the same device as the parameters and has same dtype | |
| sample = randn_tensor( | |
| self.mean.shape, | |
| generator=generator, | |
| device=self.parameters.device, | |
| dtype=self.parameters.dtype, | |
| ) | |
| x = self.mean + self.std * sample | |
| return x | |
| def kl(self, other: "DiagonalGaussianDistribution" = None) -> torch.Tensor: | |
| if self.deterministic: | |
| return torch.Tensor([0.0]) | |
| else: | |
| reduce_dim = list(range(1, self.mean.ndim)) | |
| if other is None: | |
| return 0.5 * torch.sum( | |
| torch.pow(self.mean, 2) + self.var - 1.0 - self.logvar, | |
| dim=reduce_dim, | |
| ) | |
| else: | |
| return 0.5 * torch.sum( | |
| torch.pow(self.mean - other.mean, 2) / other.var + | |
| self.var / other.var - | |
| 1.0 - | |
| self.logvar + | |
| other.logvar, | |
| dim=reduce_dim, | |
| ) | |
| def nll(self, sample: torch.Tensor, dims: Tuple[int, ...] = [1, 2, 3]) -> torch.Tensor: | |
| if self.deterministic: | |
| return torch.Tensor([0.0]) | |
| logtwopi = np.log(2.0 * np.pi) | |
| return 0.5 * torch.sum( | |
| logtwopi + self.logvar + torch.pow(sample - self.mean, 2) / self.var, | |
| dim=dims, | |
| ) | |
| def mode(self) -> torch.Tensor: | |
| return self.mean | |
| class DecoderOutput(BaseOutput): | |
| sample: torch.FloatTensor | |
| posterior: Optional[DiagonalGaussianDistribution] = None | |
| def swish(x: Tensor) -> Tensor: | |
| return x * torch.sigmoid(x) | |
| def forward_with_checkpointing(module, *inputs, use_checkpointing=False): | |
| def create_custom_forward(module): | |
| def custom_forward(*inputs): | |
| return module(*inputs) | |
| return custom_forward | |
| if use_checkpointing: | |
| return torch.utils.checkpoint.checkpoint(create_custom_forward(module), *inputs, use_reentrant=False) | |
| else: | |
| return module(*inputs) | |
| class Conv3d(nn.Conv3d): | |
| """ | |
| Perform Conv3d on patches with numerical differences from nn.Conv3d within 1e-5. | |
| Only symmetric padding is supported. | |
| """ | |
| def forward(self, input): | |
| B, C, T, H, W = input.shape | |
| memory_count = (C * T * H * W) * 2 / 1024**3 | |
| if memory_count > 2: | |
| n_split = math.ceil(memory_count / 2) | |
| assert n_split >= 2 | |
| chunks = torch.chunk(input, chunks=n_split, dim=-3) | |
| padded_chunks = [] | |
| for i in range(len(chunks)): | |
| if self.padding[0] > 0: | |
| padded_chunk = F.pad( | |
| chunks[i], | |
| (0, 0, 0, 0, self.padding[0], self.padding[0]), | |
| mode="constant" if self.padding_mode == "zeros" else self.padding_mode, | |
| value=0, | |
| ) | |
| if i > 0: | |
| padded_chunk[:, :, :self.padding[0]] = chunks[i - 1][:, :, -self.padding[0]:] | |
| if i < len(chunks) - 1: | |
| padded_chunk[:, :, -self.padding[0]:] = chunks[i + 1][:, :, :self.padding[0]] | |
| else: | |
| padded_chunk = chunks[i] | |
| padded_chunks.append(padded_chunk) | |
| padding_bak = self.padding | |
| self.padding = (0, self.padding[1], self.padding[2]) | |
| outputs = [] | |
| for i in range(len(padded_chunks)): | |
| outputs.append(super().forward(padded_chunks[i])) | |
| self.padding = padding_bak | |
| return torch.cat(outputs, dim=-3) | |
| else: | |
| return super().forward(input) | |
| class AttnBlock(nn.Module): | |
| """ Attention with torch sdpa implementation. """ | |
| def __init__(self, in_channels: int): | |
| super().__init__() | |
| self.in_channels = in_channels | |
| self.norm = nn.GroupNorm(num_groups=32, num_channels=in_channels, eps=1e-6, affine=True) | |
| self.q = Conv3d(in_channels, in_channels, kernel_size=1) | |
| self.k = Conv3d(in_channels, in_channels, kernel_size=1) | |
| self.v = Conv3d(in_channels, in_channels, kernel_size=1) | |
| self.proj_out = Conv3d(in_channels, in_channels, kernel_size=1) | |
| def attention(self, h_: Tensor) -> Tensor: | |
| h_ = self.norm(h_) | |
| q = self.q(h_) | |
| k = self.k(h_) | |
| v = self.v(h_) | |
| b, c, f, h, w = q.shape | |
| q = rearrange(q, "b c f h w -> b 1 (f h w) c").contiguous() | |
| k = rearrange(k, "b c f h w -> b 1 (f h w) c").contiguous() | |
| v = rearrange(v, "b c f h w -> b 1 (f h w) c").contiguous() | |
| h_ = nn.functional.scaled_dot_product_attention(q, k, v) | |
| return rearrange(h_, "b 1 (f h w) c -> b c f h w", f=f, h=h, w=w, c=c, b=b) | |
| def forward(self, x: Tensor) -> Tensor: | |
| return x + self.proj_out(self.attention(x)) | |
| class ResnetBlock(nn.Module): | |
| def __init__(self, in_channels: int, out_channels: int): | |
| super().__init__() | |
| self.in_channels = in_channels | |
| out_channels = in_channels if out_channels is None else out_channels | |
| self.out_channels = out_channels | |
| self.norm1 = nn.GroupNorm(num_groups=32, num_channels=in_channels, eps=1e-6, affine=True) | |
| self.conv1 = Conv3d(in_channels, out_channels, kernel_size=3, stride=1, padding=1) | |
| self.norm2 = nn.GroupNorm(num_groups=32, num_channels=out_channels, eps=1e-6, affine=True) | |
| self.conv2 = Conv3d(out_channels, out_channels, kernel_size=3, stride=1, padding=1) | |
| if self.in_channels != self.out_channels: | |
| self.nin_shortcut = Conv3d(in_channels, out_channels, kernel_size=1, stride=1, padding=0) | |
| def forward(self, x): | |
| h = x | |
| h = self.norm1(h) | |
| h = swish(h) | |
| h = self.conv1(h) | |
| h = self.norm2(h) | |
| h = swish(h) | |
| h = self.conv2(h) | |
| if self.in_channels != self.out_channels: | |
| x = self.nin_shortcut(x) | |
| return x + h | |
| class Downsample(nn.Module): | |
| def __init__(self, in_channels: int, add_temporal_downsample: bool = True): | |
| super().__init__() | |
| self.add_temporal_downsample = add_temporal_downsample | |
| stride = (2, 2, 2) if add_temporal_downsample else (1, 2, 2) # THW | |
| # no asymmetric padding in torch conv, must do it ourselves | |
| self.conv = Conv3d(in_channels, in_channels, kernel_size=3, stride=stride, padding=0) | |
| def forward(self, x: Tensor): | |
| spatial_pad = (0, 1, 0, 1, 0, 0) # WHT | |
| x = nn.functional.pad(x, spatial_pad, mode="constant", value=0) | |
| temporal_pad = (0, 0, 0, 0, 0, 1) if self.add_temporal_downsample else (0, 0, 0, 0, 1, 1) | |
| x = nn.functional.pad(x, temporal_pad, mode="replicate") | |
| x = self.conv(x) | |
| return x | |
| class DownsampleDCAE(nn.Module): | |
| def __init__(self, in_channels: int, out_channels: int, add_temporal_downsample: bool = True): | |
| super().__init__() | |
| factor = 2 * 2 * 2 if add_temporal_downsample else 1 * 2 * 2 | |
| assert out_channels % factor == 0 | |
| self.conv = Conv3d(in_channels, out_channels // factor, kernel_size=3, stride=1, padding=1) | |
| self.add_temporal_downsample = add_temporal_downsample | |
| self.group_size = factor * in_channels // out_channels | |
| def forward(self, x: Tensor): | |
| r1 = 2 if self.add_temporal_downsample else 1 | |
| h = self.conv(x) | |
| h = rearrange(h, "b c (f r1) (h r2) (w r3) -> b (r1 r2 r3 c) f h w", r1=r1, r2=2, r3=2) | |
| shortcut = rearrange(x, "b c (f r1) (h r2) (w r3) -> b (r1 r2 r3 c) f h w", r1=r1, r2=2, r3=2) | |
| B, C, T, H, W = shortcut.shape | |
| shortcut = shortcut.view(B, h.shape[1], self.group_size, T, H, W).mean(dim=2) | |
| return h + shortcut | |
| class Upsample(nn.Module): | |
| def __init__(self, in_channels: int, add_temporal_upsample: bool = True): | |
| super().__init__() | |
| self.add_temporal_upsample = add_temporal_upsample | |
| self.scale_factor = (2, 2, 2) if add_temporal_upsample else (1, 2, 2) # THW | |
| self.conv = Conv3d(in_channels, in_channels, kernel_size=3, stride=1, padding=1) | |
| def forward(self, x: Tensor): | |
| x = nn.functional.interpolate(x, scale_factor=self.scale_factor, mode="nearest") | |
| x = self.conv(x) | |
| return x | |
| class UpsampleDCAE(nn.Module): | |
| def __init__(self, in_channels: int, out_channels: int, add_temporal_upsample: bool = True): | |
| super().__init__() | |
| factor = 2 * 2 * 2 if add_temporal_upsample else 1 * 2 * 2 | |
| self.conv = Conv3d(in_channels, out_channels * factor, kernel_size=3, stride=1, padding=1) | |
| self.add_temporal_upsample = add_temporal_upsample | |
| self.repeats = factor * out_channels // in_channels | |
| def forward(self, x: Tensor): | |
| r1 = 2 if self.add_temporal_upsample else 1 | |
| h = self.conv(x) | |
| h = rearrange(h, "b (r1 r2 r3 c) f h w -> b c (f r1) (h r2) (w r3)", r1=r1, r2=2, r3=2) | |
| shortcut = x.repeat_interleave(repeats=self.repeats, dim=1) | |
| shortcut = rearrange(shortcut, "b (r1 r2 r3 c) f h w -> b c (f r1) (h r2) (w r3)", r1=r1, r2=2, r3=2) | |
| return h + shortcut | |
| class Encoder(nn.Module): | |
| """ | |
| The encoder network of AutoencoderKLConv3D. | |
| """ | |
| def __init__( | |
| self, | |
| in_channels: int, | |
| z_channels: int, | |
| block_out_channels: Tuple[int, ...], | |
| num_res_blocks: int, | |
| ffactor_spatial: int, | |
| ffactor_temporal: int, | |
| downsample_match_channel: bool = True, | |
| ): | |
| super().__init__() | |
| assert block_out_channels[-1] % (2 * z_channels) == 0 | |
| self.z_channels = z_channels | |
| self.block_out_channels = block_out_channels | |
| self.num_res_blocks = num_res_blocks | |
| # downsampling | |
| self.conv_in = Conv3d(in_channels, block_out_channels[0], kernel_size=3, stride=1, padding=1) | |
| self.down = nn.ModuleList() | |
| block_in = block_out_channels[0] | |
| for i_level, ch in enumerate(block_out_channels): | |
| block = nn.ModuleList() | |
| block_out = ch | |
| for _ in range(self.num_res_blocks): | |
| block.append(ResnetBlock(in_channels=block_in, out_channels=block_out)) | |
| block_in = block_out | |
| down = nn.Module() | |
| down.block = block | |
| add_spatial_downsample = bool(i_level < np.log2(ffactor_spatial)) | |
| add_temporal_downsample = (add_spatial_downsample and | |
| bool(i_level >= np.log2(ffactor_spatial // ffactor_temporal))) | |
| if add_spatial_downsample or add_temporal_downsample: | |
| assert i_level < len(block_out_channels) - 1 | |
| block_out = block_out_channels[i_level + 1] if downsample_match_channel else block_in | |
| down.downsample = DownsampleDCAE(block_in, block_out, add_temporal_downsample) | |
| block_in = block_out | |
| self.down.append(down) | |
| # middle | |
| self.mid = nn.Module() | |
| self.mid.block_1 = ResnetBlock(in_channels=block_in, out_channels=block_in) | |
| self.mid.attn_1 = AttnBlock(block_in) | |
| self.mid.block_2 = ResnetBlock(in_channels=block_in, out_channels=block_in) | |
| # end | |
| self.norm_out = nn.GroupNorm(num_groups=32, num_channels=block_in, eps=1e-6, affine=True) | |
| self.conv_out = Conv3d(block_in, 2 * z_channels, kernel_size=3, stride=1, padding=1) | |
| self.gradient_checkpointing = False | |
| def forward(self, x: Tensor) -> Tensor: | |
| use_checkpointing = bool(self.training and self.gradient_checkpointing) | |
| # downsampling | |
| h = self.conv_in(x) | |
| for i_level in range(len(self.block_out_channels)): | |
| for i_block in range(self.num_res_blocks): | |
| h = forward_with_checkpointing( | |
| self.down[i_level].block[i_block], h, use_checkpointing=use_checkpointing) | |
| if hasattr(self.down[i_level], "downsample"): | |
| h = forward_with_checkpointing(self.down[i_level].downsample, h, use_checkpointing=use_checkpointing) | |
| # middle | |
| h = forward_with_checkpointing(self.mid.block_1, h, use_checkpointing=use_checkpointing) | |
| h = forward_with_checkpointing(self.mid.attn_1, h, use_checkpointing=use_checkpointing) | |
| h = forward_with_checkpointing(self.mid.block_2, h, use_checkpointing=use_checkpointing) | |
| # end | |
| group_size = self.block_out_channels[-1] // (2 * self.z_channels) | |
| shortcut = rearrange(h, "b (c r) f h w -> b c r f h w", r=group_size).mean(dim=2) | |
| h = self.norm_out(h) | |
| h = swish(h) | |
| h = self.conv_out(h) | |
| h += shortcut | |
| return h | |
| class Decoder(nn.Module): | |
| """ | |
| The decoder network of AutoencoderKLConv3D. | |
| """ | |
| def __init__( | |
| self, | |
| z_channels: int, | |
| out_channels: int, | |
| block_out_channels: Tuple[int, ...], | |
| num_res_blocks: int, | |
| ffactor_spatial: int, | |
| ffactor_temporal: int, | |
| upsample_match_channel: bool = True, | |
| ): | |
| super().__init__() | |
| assert block_out_channels[0] % z_channels == 0 | |
| self.z_channels = z_channels | |
| self.block_out_channels = block_out_channels | |
| self.num_res_blocks = num_res_blocks | |
| # z to block_in | |
| block_in = block_out_channels[0] | |
| self.conv_in = Conv3d(z_channels, block_in, kernel_size=3, stride=1, padding=1) | |
| # middle | |
| self.mid = nn.Module() | |
| self.mid.block_1 = ResnetBlock(in_channels=block_in, out_channels=block_in) | |
| self.mid.attn_1 = AttnBlock(block_in) | |
| self.mid.block_2 = ResnetBlock(in_channels=block_in, out_channels=block_in) | |
| # upsampling | |
| self.up = nn.ModuleList() | |
| for i_level, ch in enumerate(block_out_channels): | |
| block = nn.ModuleList() | |
| block_out = ch | |
| for _ in range(self.num_res_blocks + 1): | |
| block.append(ResnetBlock(in_channels=block_in, out_channels=block_out)) | |
| block_in = block_out | |
| up = nn.Module() | |
| up.block = block | |
| add_spatial_upsample = bool(i_level < np.log2(ffactor_spatial)) | |
| add_temporal_upsample = bool(i_level < np.log2(ffactor_temporal)) | |
| if add_spatial_upsample or add_temporal_upsample: | |
| assert i_level < len(block_out_channels) - 1 | |
| block_out = block_out_channels[i_level + 1] if upsample_match_channel else block_in | |
| up.upsample = UpsampleDCAE(block_in, block_out, add_temporal_upsample) | |
| block_in = block_out | |
| self.up.append(up) | |
| # end | |
| self.norm_out = nn.GroupNorm(num_groups=32, num_channels=block_in, eps=1e-6, affine=True) | |
| self.conv_out = Conv3d(block_in, out_channels, kernel_size=3, stride=1, padding=1) | |
| self.gradient_checkpointing = False | |
| def forward(self, z: Tensor) -> Tensor: | |
| use_checkpointing = bool(self.training and self.gradient_checkpointing) | |
| # z to block_in | |
| repeats = self.block_out_channels[0] // (self.z_channels) | |
| h = self.conv_in(z) + z.repeat_interleave(repeats=repeats, dim=1) | |
| # middle | |
| h = forward_with_checkpointing(self.mid.block_1, h, use_checkpointing=use_checkpointing) | |
| h = forward_with_checkpointing(self.mid.attn_1, h, use_checkpointing=use_checkpointing) | |
| h = forward_with_checkpointing(self.mid.block_2, h, use_checkpointing=use_checkpointing) | |
| # upsampling | |
| for i_level in range(len(self.block_out_channels)): | |
| for i_block in range(self.num_res_blocks + 1): | |
| h = forward_with_checkpointing(self.up[i_level].block[i_block], h, use_checkpointing=use_checkpointing) | |
| if hasattr(self.up[i_level], "upsample"): | |
| h = forward_with_checkpointing(self.up[i_level].upsample, h, use_checkpointing=use_checkpointing) | |
| # end | |
| h = self.norm_out(h) | |
| h = swish(h) | |
| h = self.conv_out(h) | |
| return h | |
| class AutoencoderKLConv3D(ModelMixin, ConfigMixin): | |
| """ | |
| Autoencoder model with KL-regularized latent space based on 3D convolutions. | |
| """ | |
| _supports_gradient_checkpointing = True | |
| def __init__( | |
| self, | |
| in_channels: int, | |
| out_channels: int, | |
| latent_channels: int, | |
| block_out_channels: Tuple[int, ...], | |
| layers_per_block: int, | |
| ffactor_spatial: int, | |
| ffactor_temporal: int, | |
| sample_size: int, | |
| sample_tsize: int, | |
| scaling_factor: float = None, | |
| shift_factor: Optional[float] = None, | |
| downsample_match_channel: bool = True, | |
| upsample_match_channel: bool = True, | |
| only_encoder: bool = False, # only build encoder for saving memory | |
| only_decoder: bool = False, # only build decoder for saving memory | |
| ): | |
| super().__init__() | |
| self.ffactor_spatial = ffactor_spatial | |
| self.ffactor_temporal = ffactor_temporal | |
| self.scaling_factor = scaling_factor | |
| self.shift_factor = shift_factor | |
| # build model | |
| if not only_decoder: | |
| self.encoder = Encoder( | |
| in_channels=in_channels, | |
| z_channels=latent_channels, | |
| block_out_channels=block_out_channels, | |
| num_res_blocks=layers_per_block, | |
| ffactor_spatial=ffactor_spatial, | |
| ffactor_temporal=ffactor_temporal, | |
| downsample_match_channel=downsample_match_channel, | |
| ) | |
| if not only_encoder: | |
| self.decoder = Decoder( | |
| z_channels=latent_channels, | |
| out_channels=out_channels, | |
| block_out_channels=list(reversed(block_out_channels)), | |
| num_res_blocks=layers_per_block, | |
| ffactor_spatial=ffactor_spatial, | |
| ffactor_temporal=ffactor_temporal, | |
| upsample_match_channel=upsample_match_channel, | |
| ) | |
| # slicing and tiling related | |
| self.use_slicing = False | |
| self.slicing_bsz = 1 | |
| self.use_spatial_tiling = False | |
| self.use_temporal_tiling = False | |
| self.use_tiling_during_training = False | |
| # only relevant if vae tiling is enabled | |
| self.tile_sample_min_size = sample_size | |
| self.tile_latent_min_size = sample_size // ffactor_spatial | |
| self.tile_sample_min_tsize = sample_tsize | |
| self.tile_latent_min_tsize = sample_tsize // ffactor_temporal | |
| self.tile_overlap_factor = 0.25 | |
| # use torch.compile for faster encode speed | |
| self.use_compile = False | |
| def _set_gradient_checkpointing(self, module, value=False): | |
| if isinstance(module, (Encoder, Decoder)): | |
| module.gradient_checkpointing = value | |
| def enable_tiling_during_training(self, use_tiling: bool = True): | |
| self.use_tiling_during_training = use_tiling | |
| def disable_tiling_during_training(self): | |
| self.enable_tiling_during_training(False) | |
| def enable_temporal_tiling(self, use_tiling: bool = True): | |
| self.use_temporal_tiling = use_tiling | |
| def disable_temporal_tiling(self): | |
| self.enable_temporal_tiling(False) | |
| def enable_spatial_tiling(self, use_tiling: bool = True): | |
| self.use_spatial_tiling = use_tiling | |
| def disable_spatial_tiling(self): | |
| self.enable_spatial_tiling(False) | |
| def enable_tiling(self, use_tiling: bool = True): | |
| self.enable_spatial_tiling(use_tiling) | |
| def disable_tiling(self): | |
| self.disable_spatial_tiling() | |
| def enable_slicing(self): | |
| self.use_slicing = True | |
| def disable_slicing(self): | |
| self.use_slicing = False | |
| def blend_h(self, a: torch.Tensor, b: torch.Tensor, blend_extent: int): | |
| blend_extent = min(a.shape[-1], b.shape[-1], blend_extent) | |
| for x in range(blend_extent): | |
| b[:, :, :, :, x] = \ | |
| a[:, :, :, :, -blend_extent + x] * (1 - x / blend_extent) + b[:, :, :, :, x] * (x / blend_extent) | |
| return b | |
| def blend_v(self, a: torch.Tensor, b: torch.Tensor, blend_extent: int): | |
| blend_extent = min(a.shape[-2], b.shape[-2], blend_extent) | |
| for y in range(blend_extent): | |
| b[:, :, :, y, :] = \ | |
| a[:, :, :, -blend_extent + y, :] * (1 - y / blend_extent) + b[:, :, :, y, :] * (y / blend_extent) | |
| return b | |
| def blend_t(self, a: torch.Tensor, b: torch.Tensor, blend_extent: int): | |
| blend_extent = min(a.shape[-3], b.shape[-3], blend_extent) | |
| for x in range(blend_extent): | |
| b[:, :, x, :, :] = \ | |
| a[:, :, -blend_extent + x, :, :] * (1 - x / blend_extent) + b[:, :, x, :, :] * (x / blend_extent) | |
| return b | |
| def spatial_tiled_encode(self, x: torch.Tensor): | |
| """ spatial tailing for frames """ | |
| B, C, T, H, W = x.shape | |
| overlap_size = int(self.tile_sample_min_size * (1 - self.tile_overlap_factor)) # 256 * (1 - 0.25) = 192 | |
| blend_extent = int(self.tile_latent_min_size * self.tile_overlap_factor) # 8 * 0.25 = 2 | |
| row_limit = self.tile_latent_min_size - blend_extent # 8 - 2 = 6 | |
| rows = [] | |
| for i in range(0, H, overlap_size): | |
| row = [] | |
| for j in range(0, W, overlap_size): | |
| tile = x[:, :, :, i: i + self.tile_sample_min_size, j: j + self.tile_sample_min_size] | |
| tile = self.encoder(tile) | |
| row.append(tile) | |
| rows.append(row) | |
| result_rows = [] | |
| for i, row in enumerate(rows): | |
| result_row = [] | |
| for j, tile in enumerate(row): | |
| if i > 0: | |
| tile = self.blend_v(rows[i - 1][j], tile, blend_extent) | |
| if j > 0: | |
| tile = self.blend_h(row[j - 1], tile, blend_extent) | |
| result_row.append(tile[:, :, :, :row_limit, :row_limit]) | |
| result_rows.append(torch.cat(result_row, dim=-1)) | |
| moments = torch.cat(result_rows, dim=-2) | |
| return moments | |
| def temporal_tiled_encode(self, x: torch.Tensor): | |
| """ temporal tailing for frames """ | |
| B, C, T, H, W = x.shape | |
| overlap_size = int(self.tile_sample_min_tsize * (1 - self.tile_overlap_factor)) # 64 * (1 - 0.25) = 48 | |
| blend_extent = int(self.tile_latent_min_tsize * self.tile_overlap_factor) # 8 * 0.25 = 2 | |
| t_limit = self.tile_latent_min_tsize - blend_extent # 8 - 2 = 6 | |
| row = [] | |
| for i in range(0, T, overlap_size): | |
| tile = x[:, :, i: i + self.tile_sample_min_tsize, :, :] | |
| if self.use_spatial_tiling and ( | |
| tile.shape[-1] > self.tile_sample_min_size or tile.shape[-2] > self.tile_sample_min_size): | |
| tile = self.spatial_tiled_encode(tile) | |
| else: | |
| tile = self.encoder(tile) | |
| row.append(tile) | |
| result_row = [] | |
| for i, tile in enumerate(row): | |
| if i > 0: | |
| tile = self.blend_t(row[i - 1], tile, blend_extent) | |
| result_row.append(tile[:, :, :t_limit, :, :]) | |
| moments = torch.cat(result_row, dim=-3) | |
| return moments | |
| def spatial_tiled_decode(self, z: torch.Tensor): | |
| """ spatial tailing for frames """ | |
| B, C, T, H, W = z.shape | |
| overlap_size = int(self.tile_latent_min_size * (1 - self.tile_overlap_factor)) # 8 * (1 - 0.25) = 6 | |
| blend_extent = int(self.tile_sample_min_size * self.tile_overlap_factor) # 256 * 0.25 = 64 | |
| row_limit = self.tile_sample_min_size - blend_extent # 256 - 64 = 192 | |
| rows = [] | |
| for i in range(0, H, overlap_size): | |
| row = [] | |
| for j in range(0, W, overlap_size): | |
| tile = z[:, :, :, i: i + self.tile_latent_min_size, j: j + self.tile_latent_min_size] | |
| decoded = self.decoder(tile) | |
| row.append(decoded) | |
| rows.append(row) | |
| result_rows = [] | |
| for i, row in enumerate(rows): | |
| result_row = [] | |
| for j, tile in enumerate(row): | |
| if i > 0: | |
| tile = self.blend_v(rows[i - 1][j], tile, blend_extent) | |
| if j > 0: | |
| tile = self.blend_h(row[j - 1], tile, blend_extent) | |
| result_row.append(tile[:, :, :, :row_limit, :row_limit]) | |
| result_rows.append(torch.cat(result_row, dim=-1)) | |
| dec = torch.cat(result_rows, dim=-2) | |
| return dec | |
| def temporal_tiled_decode(self, z: torch.Tensor): | |
| """ temporal tailing for frames """ | |
| B, C, T, H, W = z.shape | |
| overlap_size = int(self.tile_latent_min_tsize * (1 - self.tile_overlap_factor)) # 8 * (1 - 0.25) = 6 | |
| blend_extent = int(self.tile_sample_min_tsize * self.tile_overlap_factor) # 64 * 0.25 = 16 | |
| t_limit = self.tile_sample_min_tsize - blend_extent # 64 - 16 = 48 | |
| assert 0 < overlap_size < self.tile_latent_min_tsize | |
| row = [] | |
| for i in range(0, T, overlap_size): | |
| tile = z[:, :, i: i + self.tile_latent_min_tsize, :, :] | |
| if self.use_spatial_tiling and ( | |
| tile.shape[-1] > self.tile_latent_min_size or tile.shape[-2] > self.tile_latent_min_size): | |
| decoded = self.spatial_tiled_decode(tile) | |
| else: | |
| decoded = self.decoder(tile) | |
| row.append(decoded) | |
| result_row = [] | |
| for i, tile in enumerate(row): | |
| if i > 0: | |
| tile = self.blend_t(row[i - 1], tile, blend_extent) | |
| result_row.append(tile[:, :, :t_limit, :, :]) | |
| dec = torch.cat(result_row, dim=-3) | |
| return dec | |
| def encode(self, x: Tensor, return_dict: bool = True): | |
| """ | |
| Encodes the input by passing through the encoder network. | |
| Support slicing and tiling for memory efficiency. | |
| """ | |
| def _encode(x): | |
| if self.use_temporal_tiling and x.shape[-3] > self.tile_sample_min_tsize: | |
| return self.temporal_tiled_encode(x) | |
| if self.use_spatial_tiling and ( | |
| x.shape[-1] > self.tile_sample_min_size or x.shape[-2] > self.tile_sample_min_size): | |
| return self.spatial_tiled_encode(x) | |
| if self.use_compile: | |
| def encoder(x): | |
| return self.encoder(x) | |
| return encoder(x) | |
| return self.encoder(x) | |
| if len(x.shape) != 5: # (B, C, T, H, W) | |
| x = x[:, :, None] | |
| assert len(x.shape) == 5 # (B, C, T, H, W) | |
| if x.shape[2] == 1: | |
| x = x.expand(-1, -1, self.ffactor_temporal, -1, -1) | |
| else: | |
| assert x.shape[2] != self.ffactor_temporal and x.shape[2] % self.ffactor_temporal == 0 | |
| if self.use_slicing and x.shape[0] > 1: | |
| if self.slicing_bsz == 1: | |
| encoded_slices = [_encode(x_slice) for x_slice in x.split(1)] | |
| else: | |
| sections = [self.slicing_bsz] * (x.shape[0] // self.slicing_bsz) | |
| if x.shape[0] % self.slicing_bsz != 0: | |
| sections.append(x.shape[0] % self.slicing_bsz) | |
| encoded_slices = [_encode(x_slice) for x_slice in x.split(sections)] | |
| h = torch.cat(encoded_slices) | |
| else: | |
| h = _encode(x) | |
| posterior = DiagonalGaussianDistribution(h) | |
| if not return_dict: | |
| return (posterior,) | |
| return AutoencoderKLOutput(latent_dist=posterior) | |
| def decode(self, z: Tensor, return_dict: bool = True, generator=None): | |
| """ | |
| Decodes the input by passing through the decoder network. | |
| Support slicing and tiling for memory efficiency. | |
| """ | |
| def _decode(z): | |
| if self.use_temporal_tiling and z.shape[-3] > self.tile_latent_min_tsize: | |
| return self.temporal_tiled_decode(z) | |
| if self.use_spatial_tiling and ( | |
| z.shape[-1] > self.tile_latent_min_size or z.shape[-2] > self.tile_latent_min_size): | |
| return self.spatial_tiled_decode(z) | |
| return self.decoder(z) | |
| if self.use_slicing and z.shape[0] > 1: | |
| decoded_slices = [_decode(z_slice) for z_slice in z.split(1)] | |
| decoded = torch.cat(decoded_slices) | |
| else: | |
| decoded = _decode(z) | |
| if z.shape[-3] == 1: | |
| decoded = decoded[:, :, -1:] | |
| if not return_dict: | |
| return (decoded,) | |
| return DecoderOutput(sample=decoded) | |
| def forward( | |
| self, | |
| sample: torch.Tensor, | |
| sample_posterior: bool = False, | |
| return_posterior: bool = True, | |
| return_dict: bool = True | |
| ): | |
| posterior = self.encode(sample).latent_dist | |
| z = posterior.sample() if sample_posterior else posterior.mode() | |
| dec = self.decode(z).sample | |
| return DecoderOutput(sample=dec, posterior=posterior) if return_dict else (dec, posterior) | |
| def random_reset_tiling(self, x: torch.Tensor): | |
| if x.shape[-3] == 1: | |
| self.disable_spatial_tiling() | |
| self.disable_temporal_tiling() | |
| return | |
| # Use fixed shape here | |
| min_sample_size = int(1 / self.tile_overlap_factor) * self.ffactor_spatial | |
| min_sample_tsize = int(1 / self.tile_overlap_factor) * self.ffactor_temporal | |
| sample_size = random.choice([None, 1 * min_sample_size, 2 * min_sample_size, 3 * min_sample_size]) | |
| if sample_size is None: | |
| self.disable_spatial_tiling() | |
| else: | |
| self.tile_sample_min_size = sample_size | |
| self.tile_latent_min_size = sample_size // self.ffactor_spatial | |
| self.enable_spatial_tiling() | |
| sample_tsize = random.choice([None, 1 * min_sample_tsize, 2 * min_sample_tsize, 3 * min_sample_tsize]) | |
| if sample_tsize is None: | |
| self.disable_temporal_tiling() | |
| else: | |
| self.tile_sample_min_tsize = sample_tsize | |
| self.tile_latent_min_tsize = sample_tsize // self.ffactor_temporal | |
| self.enable_temporal_tiling() | |