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| | from dataclasses import dataclass |
| | from typing import Dict, Optional, Tuple, Union |
| |
|
| | import torch |
| | import torch.nn.functional as F |
| | from torch import nn |
| |
|
| | from ...configuration_utils import ConfigMixin, register_to_config |
| | from ...schedulers import ConsistencyDecoderScheduler |
| | from ...utils import BaseOutput |
| | from ...utils.accelerate_utils import apply_forward_hook |
| | from ...utils.torch_utils import randn_tensor |
| | from ..attention_processor import ( |
| | ADDED_KV_ATTENTION_PROCESSORS, |
| | CROSS_ATTENTION_PROCESSORS, |
| | AttentionProcessor, |
| | AttnAddedKVProcessor, |
| | AttnProcessor, |
| | ) |
| | from ..modeling_utils import ModelMixin |
| | from ..unets.unet_2d import UNet2DModel |
| | from .vae import DecoderOutput, DiagonalGaussianDistribution, Encoder |
| |
|
| |
|
| | @dataclass |
| | class ConsistencyDecoderVAEOutput(BaseOutput): |
| | """ |
| | Output of encoding method. |
| | |
| | Args: |
| | latent_dist (`DiagonalGaussianDistribution`): |
| | Encoded outputs of `Encoder` represented as the mean and logvar of `DiagonalGaussianDistribution`. |
| | `DiagonalGaussianDistribution` allows for sampling latents from the distribution. |
| | """ |
| |
|
| | latent_dist: "DiagonalGaussianDistribution" |
| |
|
| |
|
| | class ConsistencyDecoderVAE(ModelMixin, ConfigMixin): |
| | r""" |
| | The consistency decoder used with DALL-E 3. |
| | |
| | Examples: |
| | ```py |
| | >>> import torch |
| | >>> from diffusers import StableDiffusionPipeline, ConsistencyDecoderVAE |
| | |
| | >>> vae = ConsistencyDecoderVAE.from_pretrained("openai/consistency-decoder", torch_dtype=torch.float16) |
| | >>> pipe = StableDiffusionPipeline.from_pretrained( |
| | ... "runwayml/stable-diffusion-v1-5", vae=vae, torch_dtype=torch.float16 |
| | ... ).to("cuda") |
| | |
| | >>> image = pipe("horse", generator=torch.manual_seed(0)).images[0] |
| | >>> image |
| | ``` |
| | """ |
| |
|
| | @register_to_config |
| | def __init__( |
| | self, |
| | scaling_factor: float = 0.18215, |
| | latent_channels: int = 4, |
| | sample_size: int = 32, |
| | encoder_act_fn: str = "silu", |
| | encoder_block_out_channels: Tuple[int, ...] = (128, 256, 512, 512), |
| | encoder_double_z: bool = True, |
| | encoder_down_block_types: Tuple[str, ...] = ( |
| | "DownEncoderBlock2D", |
| | "DownEncoderBlock2D", |
| | "DownEncoderBlock2D", |
| | "DownEncoderBlock2D", |
| | ), |
| | encoder_in_channels: int = 3, |
| | encoder_layers_per_block: int = 2, |
| | encoder_norm_num_groups: int = 32, |
| | encoder_out_channels: int = 4, |
| | decoder_add_attention: bool = False, |
| | decoder_block_out_channels: Tuple[int, ...] = (320, 640, 1024, 1024), |
| | decoder_down_block_types: Tuple[str, ...] = ( |
| | "ResnetDownsampleBlock2D", |
| | "ResnetDownsampleBlock2D", |
| | "ResnetDownsampleBlock2D", |
| | "ResnetDownsampleBlock2D", |
| | ), |
| | decoder_downsample_padding: int = 1, |
| | decoder_in_channels: int = 7, |
| | decoder_layers_per_block: int = 3, |
| | decoder_norm_eps: float = 1e-05, |
| | decoder_norm_num_groups: int = 32, |
| | decoder_num_train_timesteps: int = 1024, |
| | decoder_out_channels: int = 6, |
| | decoder_resnet_time_scale_shift: str = "scale_shift", |
| | decoder_time_embedding_type: str = "learned", |
| | decoder_up_block_types: Tuple[str, ...] = ( |
| | "ResnetUpsampleBlock2D", |
| | "ResnetUpsampleBlock2D", |
| | "ResnetUpsampleBlock2D", |
| | "ResnetUpsampleBlock2D", |
| | ), |
| | ): |
| | super().__init__() |
| | self.encoder = Encoder( |
| | act_fn=encoder_act_fn, |
| | block_out_channels=encoder_block_out_channels, |
| | double_z=encoder_double_z, |
| | down_block_types=encoder_down_block_types, |
| | in_channels=encoder_in_channels, |
| | layers_per_block=encoder_layers_per_block, |
| | norm_num_groups=encoder_norm_num_groups, |
| | out_channels=encoder_out_channels, |
| | ) |
| |
|
| | self.decoder_unet = UNet2DModel( |
| | add_attention=decoder_add_attention, |
| | block_out_channels=decoder_block_out_channels, |
| | down_block_types=decoder_down_block_types, |
| | downsample_padding=decoder_downsample_padding, |
| | in_channels=decoder_in_channels, |
| | layers_per_block=decoder_layers_per_block, |
| | norm_eps=decoder_norm_eps, |
| | norm_num_groups=decoder_norm_num_groups, |
| | num_train_timesteps=decoder_num_train_timesteps, |
| | out_channels=decoder_out_channels, |
| | resnet_time_scale_shift=decoder_resnet_time_scale_shift, |
| | time_embedding_type=decoder_time_embedding_type, |
| | up_block_types=decoder_up_block_types, |
| | ) |
| | self.decoder_scheduler = ConsistencyDecoderScheduler() |
| | self.register_to_config(block_out_channels=encoder_block_out_channels) |
| | self.register_to_config(force_upcast=False) |
| | self.register_buffer( |
| | "means", |
| | torch.tensor([0.38862467, 0.02253063, 0.07381133, -0.0171294])[None, :, None, None], |
| | persistent=False, |
| | ) |
| | self.register_buffer( |
| | "stds", torch.tensor([0.9654121, 1.0440036, 0.76147926, 0.77022034])[None, :, None, None], persistent=False |
| | ) |
| |
|
| | self.quant_conv = nn.Conv2d(2 * latent_channels, 2 * latent_channels, 1) |
| |
|
| | self.use_slicing = False |
| | self.use_tiling = False |
| |
|
| | |
| | self.tile_sample_min_size = self.config.sample_size |
| | sample_size = ( |
| | self.config.sample_size[0] |
| | if isinstance(self.config.sample_size, (list, tuple)) |
| | else self.config.sample_size |
| | ) |
| | self.tile_latent_min_size = int(sample_size / (2 ** (len(self.config.block_out_channels) - 1))) |
| | self.tile_overlap_factor = 0.25 |
| |
|
| | |
| | def enable_tiling(self, use_tiling: bool = True): |
| | r""" |
| | Enable tiled VAE decoding. When this option is enabled, the VAE will split the input tensor into tiles to |
| | compute decoding and encoding in several steps. This is useful for saving a large amount of memory and to allow |
| | processing larger images. |
| | """ |
| | self.use_tiling = use_tiling |
| |
|
| | |
| | def disable_tiling(self): |
| | r""" |
| | Disable tiled VAE decoding. If `enable_tiling` was previously enabled, this method will go back to computing |
| | decoding in one step. |
| | """ |
| | self.enable_tiling(False) |
| |
|
| | |
| | def enable_slicing(self): |
| | r""" |
| | Enable sliced VAE decoding. When this option is enabled, the VAE will split the input tensor in slices to |
| | compute decoding in several steps. This is useful to save some memory and allow larger batch sizes. |
| | """ |
| | self.use_slicing = True |
| |
|
| | |
| | def disable_slicing(self): |
| | r""" |
| | Disable sliced VAE decoding. If `enable_slicing` was previously enabled, this method will go back to computing |
| | decoding in one step. |
| | """ |
| | self.use_slicing = False |
| |
|
| | @property |
| | |
| | def attn_processors(self) -> Dict[str, AttentionProcessor]: |
| | r""" |
| | Returns: |
| | `dict` of attention processors: A dictionary containing all attention processors used in the model with |
| | indexed by its weight name. |
| | """ |
| | |
| | processors = {} |
| |
|
| | def fn_recursive_add_processors(name: str, module: torch.nn.Module, processors: Dict[str, AttentionProcessor]): |
| | if hasattr(module, "get_processor"): |
| | processors[f"{name}.processor"] = module.get_processor() |
| |
|
| | for sub_name, child in module.named_children(): |
| | fn_recursive_add_processors(f"{name}.{sub_name}", child, processors) |
| |
|
| | return processors |
| |
|
| | for name, module in self.named_children(): |
| | fn_recursive_add_processors(name, module, processors) |
| |
|
| | return processors |
| |
|
| | |
| | def set_attn_processor(self, processor: Union[AttentionProcessor, Dict[str, AttentionProcessor]]): |
| | r""" |
| | Sets the attention processor to use to compute attention. |
| | |
| | Parameters: |
| | processor (`dict` of `AttentionProcessor` or only `AttentionProcessor`): |
| | The instantiated processor class or a dictionary of processor classes that will be set as the processor |
| | for **all** `Attention` layers. |
| | |
| | If `processor` is a dict, the key needs to define the path to the corresponding cross attention |
| | processor. This is strongly recommended when setting trainable attention processors. |
| | |
| | """ |
| | count = len(self.attn_processors.keys()) |
| |
|
| | if isinstance(processor, dict) and len(processor) != count: |
| | raise ValueError( |
| | f"A dict of processors was passed, but the number of processors {len(processor)} does not match the" |
| | f" number of attention layers: {count}. Please make sure to pass {count} processor classes." |
| | ) |
| |
|
| | def fn_recursive_attn_processor(name: str, module: torch.nn.Module, processor): |
| | if hasattr(module, "set_processor"): |
| | if not isinstance(processor, dict): |
| | module.set_processor(processor) |
| | else: |
| | module.set_processor(processor.pop(f"{name}.processor")) |
| |
|
| | for sub_name, child in module.named_children(): |
| | fn_recursive_attn_processor(f"{name}.{sub_name}", child, processor) |
| |
|
| | for name, module in self.named_children(): |
| | fn_recursive_attn_processor(name, module, processor) |
| |
|
| | |
| | def set_default_attn_processor(self): |
| | """ |
| | Disables custom attention processors and sets the default attention implementation. |
| | """ |
| | if all(proc.__class__ in ADDED_KV_ATTENTION_PROCESSORS for proc in self.attn_processors.values()): |
| | processor = AttnAddedKVProcessor() |
| | elif all(proc.__class__ in CROSS_ATTENTION_PROCESSORS for proc in self.attn_processors.values()): |
| | processor = AttnProcessor() |
| | else: |
| | raise ValueError( |
| | f"Cannot call `set_default_attn_processor` when attention processors are of type {next(iter(self.attn_processors.values()))}" |
| | ) |
| |
|
| | self.set_attn_processor(processor) |
| |
|
| | @apply_forward_hook |
| | def encode( |
| | self, x: torch.Tensor, return_dict: bool = True |
| | ) -> Union[ConsistencyDecoderVAEOutput, Tuple[DiagonalGaussianDistribution]]: |
| | """ |
| | Encode a batch of images into latents. |
| | |
| | Args: |
| | x (`torch.Tensor`): Input batch of images. |
| | return_dict (`bool`, *optional*, defaults to `True`): |
| | Whether to return a [`~models.autoencoders.consistency_decoder_vae.ConsistencyDecoderVAEOutput`] |
| | instead of a plain tuple. |
| | |
| | Returns: |
| | The latent representations of the encoded images. If `return_dict` is True, a |
| | [`~models.autoencoders.consistency_decoder_vae.ConsistencyDecoderVAEOutput`] is returned, otherwise a |
| | plain `tuple` is returned. |
| | """ |
| | if self.use_tiling and (x.shape[-1] > self.tile_sample_min_size or x.shape[-2] > self.tile_sample_min_size): |
| | return self.tiled_encode(x, return_dict=return_dict) |
| |
|
| | if self.use_slicing and x.shape[0] > 1: |
| | encoded_slices = [self.encoder(x_slice) for x_slice in x.split(1)] |
| | h = torch.cat(encoded_slices) |
| | else: |
| | h = self.encoder(x) |
| |
|
| | moments = self.quant_conv(h) |
| | posterior = DiagonalGaussianDistribution(moments) |
| |
|
| | if not return_dict: |
| | return (posterior,) |
| |
|
| | return ConsistencyDecoderVAEOutput(latent_dist=posterior) |
| |
|
| | @apply_forward_hook |
| | def decode( |
| | self, |
| | z: torch.Tensor, |
| | generator: Optional[torch.Generator] = None, |
| | return_dict: bool = True, |
| | num_inference_steps: int = 2, |
| | ) -> Union[DecoderOutput, Tuple[torch.Tensor]]: |
| | """ |
| | Decodes the input latent vector `z` using the consistency decoder VAE model. |
| | |
| | Args: |
| | z (torch.Tensor): The input latent vector. |
| | generator (Optional[torch.Generator]): The random number generator. Default is None. |
| | return_dict (bool): Whether to return the output as a dictionary. Default is True. |
| | num_inference_steps (int): The number of inference steps. Default is 2. |
| | |
| | Returns: |
| | Union[DecoderOutput, Tuple[torch.Tensor]]: The decoded output. |
| | |
| | """ |
| | z = (z * self.config.scaling_factor - self.means) / self.stds |
| |
|
| | scale_factor = 2 ** (len(self.config.block_out_channels) - 1) |
| | z = F.interpolate(z, mode="nearest", scale_factor=scale_factor) |
| |
|
| | batch_size, _, height, width = z.shape |
| |
|
| | self.decoder_scheduler.set_timesteps(num_inference_steps, device=self.device) |
| |
|
| | x_t = self.decoder_scheduler.init_noise_sigma * randn_tensor( |
| | (batch_size, 3, height, width), generator=generator, dtype=z.dtype, device=z.device |
| | ) |
| |
|
| | for t in self.decoder_scheduler.timesteps: |
| | model_input = torch.concat([self.decoder_scheduler.scale_model_input(x_t, t), z], dim=1) |
| | model_output = self.decoder_unet(model_input, t).sample[:, :3, :, :] |
| | prev_sample = self.decoder_scheduler.step(model_output, t, x_t, generator).prev_sample |
| | x_t = prev_sample |
| |
|
| | x_0 = x_t |
| |
|
| | if not return_dict: |
| | return (x_0,) |
| |
|
| | return DecoderOutput(sample=x_0) |
| |
|
| | |
| | def blend_v(self, a: torch.Tensor, b: torch.Tensor, blend_extent: int) -> torch.Tensor: |
| | 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_h(self, a: torch.Tensor, b: torch.Tensor, blend_extent: int) -> torch.Tensor: |
| | 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 tiled_encode(self, x: torch.Tensor, return_dict: bool = True) -> Union[ConsistencyDecoderVAEOutput, Tuple]: |
| | r"""Encode a batch of images using a tiled encoder. |
| | |
| | When this option is enabled, the VAE will split the input tensor into tiles to compute encoding in several |
| | steps. This is useful to keep memory use constant regardless of image size. The end result of tiled encoding is |
| | different from non-tiled encoding because each tile uses a different encoder. To avoid tiling artifacts, the |
| | tiles overlap and are blended together to form a smooth output. You may still see tile-sized changes in the |
| | output, but they should be much less noticeable. |
| | |
| | Args: |
| | x (`torch.Tensor`): Input batch of images. |
| | return_dict (`bool`, *optional*, defaults to `True`): |
| | Whether or not to return a [`~models.autoencoders.consistency_decoder_vae.ConsistencyDecoderVAEOutput`] |
| | instead of a plain tuple. |
| | |
| | Returns: |
| | [`~models.autoencoders.consistency_decoder_vae.ConsistencyDecoderVAEOutput`] or `tuple`: |
| | If return_dict is True, a [`~models.autoencoders.consistency_decoder_vae.ConsistencyDecoderVAEOutput`] |
| | is returned, otherwise a plain `tuple` is returned. |
| | """ |
| | overlap_size = int(self.tile_sample_min_size * (1 - self.tile_overlap_factor)) |
| | blend_extent = int(self.tile_latent_min_size * self.tile_overlap_factor) |
| | row_limit = self.tile_latent_min_size - blend_extent |
| |
|
| | |
| | rows = [] |
| | for i in range(0, x.shape[2], overlap_size): |
| | row = [] |
| | for j in range(0, x.shape[3], overlap_size): |
| | tile = x[:, :, i : i + self.tile_sample_min_size, j : j + self.tile_sample_min_size] |
| | tile = self.encoder(tile) |
| | tile = self.quant_conv(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=3)) |
| |
|
| | moments = torch.cat(result_rows, dim=2) |
| | posterior = DiagonalGaussianDistribution(moments) |
| |
|
| | if not return_dict: |
| | return (posterior,) |
| |
|
| | return ConsistencyDecoderVAEOutput(latent_dist=posterior) |
| |
|
| | def forward( |
| | self, |
| | sample: torch.Tensor, |
| | sample_posterior: bool = False, |
| | return_dict: bool = True, |
| | generator: Optional[torch.Generator] = None, |
| | ) -> Union[DecoderOutput, Tuple[torch.Tensor]]: |
| | r""" |
| | Args: |
| | sample (`torch.Tensor`): Input sample. |
| | sample_posterior (`bool`, *optional*, defaults to `False`): |
| | Whether to sample from the posterior. |
| | return_dict (`bool`, *optional*, defaults to `True`): |
| | Whether or not to return a [`DecoderOutput`] instead of a plain tuple. |
| | generator (`torch.Generator`, *optional*, defaults to `None`): |
| | Generator to use for sampling. |
| | |
| | Returns: |
| | [`DecoderOutput`] or `tuple`: |
| | If return_dict is True, a [`DecoderOutput`] is returned, otherwise a plain `tuple` is returned. |
| | """ |
| | x = sample |
| | posterior = self.encode(x).latent_dist |
| | if sample_posterior: |
| | z = posterior.sample(generator=generator) |
| | else: |
| | z = posterior.mode() |
| | dec = self.decode(z, generator=generator).sample |
| |
|
| | if not return_dict: |
| | return (dec,) |
| |
|
| | return DecoderOutput(sample=dec) |
| |
|