move the VAE models in src/models
move the VAE models in src/models
This commit is contained in:
commit
eceeb97242
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@ -7,7 +7,7 @@ from .utils import is_inflect_available, is_transformers_available, is_unidecode
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__version__ = "0.0.4"
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from .modeling_utils import ModelMixin
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from .models import NCSNpp, TemporalUNet, UNetLDMModel, UNetModel
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from .models import AutoencoderKL, NCSNpp, TemporalUNet, UNetLDMModel, UNetModel, VQModel
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from .pipeline_utils import DiffusionPipeline
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from .pipelines import (
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BDDMPipeline,
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@ -22,3 +22,4 @@ from .unet_grad_tts import UNetGradTTSModel
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from .unet_ldm import UNetLDMModel
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from .unet_rl import TemporalUNet
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from .unet_sde_score_estimation import NCSNpp
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from .vae import AutoencoderKL, VQModel
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@ -0,0 +1,636 @@
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import math
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import numpy as np
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import torch
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import torch.nn as nn
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from ..configuration_utils import ConfigMixin
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from ..modeling_utils import ModelMixin
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from .attention import AttentionBlock
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from .resnet import Downsample, Upsample
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def get_timestep_embedding(timesteps, embedding_dim):
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"""
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This matches the implementation in Denoising Diffusion Probabilistic Models: From Fairseq. Build sinusoidal
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embeddings. This matches the implementation in tensor2tensor, but differs slightly from the description in Section
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3.5 of "Attention Is All You Need".
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"""
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assert len(timesteps.shape) == 1
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half_dim = embedding_dim // 2
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emb = math.log(10000) / (half_dim - 1)
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emb = torch.exp(torch.arange(half_dim, dtype=torch.float32) * -emb)
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emb = emb.to(device=timesteps.device)
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emb = timesteps.float()[:, None] * emb[None, :]
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emb = torch.cat([torch.sin(emb), torch.cos(emb)], dim=1)
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if embedding_dim % 2 == 1: # zero pad
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emb = torch.nn.functional.pad(emb, (0, 1, 0, 0))
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return emb
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def nonlinearity(x):
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# swish
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return x * torch.sigmoid(x)
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def Normalize(in_channels):
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return torch.nn.GroupNorm(num_groups=32, num_channels=in_channels, eps=1e-6, affine=True)
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class ResnetBlock(nn.Module):
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def __init__(self, *, in_channels, out_channels=None, conv_shortcut=False, dropout, temb_channels=512):
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super().__init__()
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self.in_channels = in_channels
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out_channels = in_channels if out_channels is None else out_channels
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self.out_channels = out_channels
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self.use_conv_shortcut = conv_shortcut
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self.norm1 = Normalize(in_channels)
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self.conv1 = torch.nn.Conv2d(in_channels, out_channels, kernel_size=3, stride=1, padding=1)
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if temb_channels > 0:
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self.temb_proj = torch.nn.Linear(temb_channels, out_channels)
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self.norm2 = Normalize(out_channels)
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self.dropout = torch.nn.Dropout(dropout)
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self.conv2 = torch.nn.Conv2d(out_channels, out_channels, kernel_size=3, stride=1, padding=1)
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if self.in_channels != self.out_channels:
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if self.use_conv_shortcut:
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self.conv_shortcut = torch.nn.Conv2d(in_channels, out_channels, kernel_size=3, stride=1, padding=1)
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else:
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self.nin_shortcut = torch.nn.Conv2d(in_channels, out_channels, kernel_size=1, stride=1, padding=0)
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def forward(self, x, temb):
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h = x
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h = self.norm1(h)
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h = nonlinearity(h)
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h = self.conv1(h)
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if temb is not None:
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h = h + self.temb_proj(nonlinearity(temb))[:, :, None, None]
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h = self.norm2(h)
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h = nonlinearity(h)
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h = self.dropout(h)
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h = self.conv2(h)
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if self.in_channels != self.out_channels:
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if self.use_conv_shortcut:
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x = self.conv_shortcut(x)
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else:
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x = self.nin_shortcut(x)
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return x + h
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class Encoder(nn.Module):
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def __init__(
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self,
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*,
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ch,
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ch_mult=(1, 2, 4, 8),
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num_res_blocks,
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attn_resolutions,
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dropout=0.0,
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resamp_with_conv=True,
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in_channels,
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resolution,
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z_channels,
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double_z=True,
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**ignore_kwargs,
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):
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super().__init__()
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self.ch = ch
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self.temb_ch = 0
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self.num_resolutions = len(ch_mult)
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self.num_res_blocks = num_res_blocks
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self.resolution = resolution
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self.in_channels = in_channels
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# downsampling
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self.conv_in = torch.nn.Conv2d(in_channels, self.ch, kernel_size=3, stride=1, padding=1)
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curr_res = resolution
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in_ch_mult = (1,) + tuple(ch_mult)
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self.down = nn.ModuleList()
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for i_level in range(self.num_resolutions):
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block = nn.ModuleList()
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attn = nn.ModuleList()
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block_in = ch * in_ch_mult[i_level]
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block_out = ch * ch_mult[i_level]
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for i_block in range(self.num_res_blocks):
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block.append(
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ResnetBlock(
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in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout
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)
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)
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block_in = block_out
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if curr_res in attn_resolutions:
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attn.append(AttentionBlock(block_in, overwrite_qkv=True))
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down = nn.Module()
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down.block = block
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down.attn = attn
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if i_level != self.num_resolutions - 1:
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down.downsample = Downsample(block_in, use_conv=resamp_with_conv, padding=0)
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curr_res = curr_res // 2
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self.down.append(down)
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# middle
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self.mid = nn.Module()
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self.mid.block_1 = ResnetBlock(
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in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
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)
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self.mid.attn_1 = AttentionBlock(block_in, overwrite_qkv=True)
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self.mid.block_2 = ResnetBlock(
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in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
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)
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# end
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self.norm_out = Normalize(block_in)
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self.conv_out = torch.nn.Conv2d(
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block_in, 2 * z_channels if double_z else z_channels, kernel_size=3, stride=1, padding=1
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)
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def forward(self, x):
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# assert x.shape[2] == x.shape[3] == self.resolution, "{}, {}, {}".format(x.shape[2], x.shape[3], self.resolution)
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# timestep embedding
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temb = None
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# downsampling
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hs = [self.conv_in(x)]
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for i_level in range(self.num_resolutions):
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for i_block in range(self.num_res_blocks):
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h = self.down[i_level].block[i_block](hs[-1], temb)
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if len(self.down[i_level].attn) > 0:
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h = self.down[i_level].attn[i_block](h)
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hs.append(h)
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if i_level != self.num_resolutions - 1:
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hs.append(self.down[i_level].downsample(hs[-1]))
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# middle
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h = hs[-1]
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h = self.mid.block_1(h, temb)
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h = self.mid.attn_1(h)
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h = self.mid.block_2(h, temb)
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# end
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h = self.norm_out(h)
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h = nonlinearity(h)
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h = self.conv_out(h)
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return h
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class Decoder(nn.Module):
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def __init__(
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self,
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*,
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ch,
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out_ch,
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ch_mult=(1, 2, 4, 8),
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num_res_blocks,
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attn_resolutions,
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dropout=0.0,
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resamp_with_conv=True,
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in_channels,
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resolution,
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z_channels,
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give_pre_end=False,
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**ignorekwargs,
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):
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super().__init__()
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self.ch = ch
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self.temb_ch = 0
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self.num_resolutions = len(ch_mult)
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self.num_res_blocks = num_res_blocks
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self.resolution = resolution
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self.in_channels = in_channels
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self.give_pre_end = give_pre_end
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# compute in_ch_mult, block_in and curr_res at lowest res
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block_in = ch * ch_mult[self.num_resolutions - 1]
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curr_res = resolution // 2 ** (self.num_resolutions - 1)
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self.z_shape = (1, z_channels, curr_res, curr_res)
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print("Working with z of shape {} = {} dimensions.".format(self.z_shape, np.prod(self.z_shape)))
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# z to block_in
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self.conv_in = torch.nn.Conv2d(z_channels, block_in, kernel_size=3, stride=1, padding=1)
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# middle
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self.mid = nn.Module()
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self.mid.block_1 = ResnetBlock(
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in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
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)
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self.mid.attn_1 = AttentionBlock(block_in, overwrite_qkv=True)
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self.mid.block_2 = ResnetBlock(
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in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
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)
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# upsampling
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self.up = nn.ModuleList()
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for i_level in reversed(range(self.num_resolutions)):
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block = nn.ModuleList()
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attn = nn.ModuleList()
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block_out = ch * ch_mult[i_level]
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for i_block in range(self.num_res_blocks + 1):
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block.append(
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ResnetBlock(
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in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout
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)
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)
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block_in = block_out
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if curr_res in attn_resolutions:
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attn.append(AttentionBlock(block_in, overwrite_qkv=True))
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up = nn.Module()
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up.block = block
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up.attn = attn
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if i_level != 0:
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up.upsample = Upsample(block_in, use_conv=resamp_with_conv)
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curr_res = curr_res * 2
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self.up.insert(0, up) # prepend to get consistent order
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# end
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self.norm_out = Normalize(block_in)
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self.conv_out = torch.nn.Conv2d(block_in, out_ch, kernel_size=3, stride=1, padding=1)
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def forward(self, z):
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# assert z.shape[1:] == self.z_shape[1:]
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self.last_z_shape = z.shape
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# timestep embedding
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temb = None
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# z to block_in
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h = self.conv_in(z)
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# middle
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h = self.mid.block_1(h, temb)
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h = self.mid.attn_1(h)
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h = self.mid.block_2(h, temb)
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# upsampling
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for i_level in reversed(range(self.num_resolutions)):
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for i_block in range(self.num_res_blocks + 1):
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h = self.up[i_level].block[i_block](h, temb)
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if len(self.up[i_level].attn) > 0:
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h = self.up[i_level].attn[i_block](h)
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if i_level != 0:
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h = self.up[i_level].upsample(h)
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# end
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if self.give_pre_end:
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return h
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h = self.norm_out(h)
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h = nonlinearity(h)
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h = self.conv_out(h)
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return h
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class VectorQuantizer(nn.Module):
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"""
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Improved version over VectorQuantizer, can be used as a drop-in replacement. Mostly avoids costly matrix
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multiplications and allows for post-hoc remapping of indices.
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"""
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# NOTE: due to a bug the beta term was applied to the wrong term. for
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# backwards compatibility we use the buggy version by default, but you can
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# specify legacy=False to fix it.
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def __init__(self, n_e, e_dim, beta, remap=None, unknown_index="random", sane_index_shape=False, legacy=True):
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super().__init__()
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self.n_e = n_e
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self.e_dim = e_dim
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self.beta = beta
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self.legacy = legacy
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self.embedding = nn.Embedding(self.n_e, self.e_dim)
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self.embedding.weight.data.uniform_(-1.0 / self.n_e, 1.0 / self.n_e)
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self.remap = remap
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if self.remap is not None:
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self.register_buffer("used", torch.tensor(np.load(self.remap)))
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self.re_embed = self.used.shape[0]
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self.unknown_index = unknown_index # "random" or "extra" or integer
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if self.unknown_index == "extra":
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self.unknown_index = self.re_embed
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self.re_embed = self.re_embed + 1
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print(
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f"Remapping {self.n_e} indices to {self.re_embed} indices. "
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f"Using {self.unknown_index} for unknown indices."
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)
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else:
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self.re_embed = n_e
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self.sane_index_shape = sane_index_shape
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def remap_to_used(self, inds):
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ishape = inds.shape
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assert len(ishape) > 1
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inds = inds.reshape(ishape[0], -1)
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used = self.used.to(inds)
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match = (inds[:, :, None] == used[None, None, ...]).long()
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new = match.argmax(-1)
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unknown = match.sum(2) < 1
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if self.unknown_index == "random":
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new[unknown] = torch.randint(0, self.re_embed, size=new[unknown].shape).to(device=new.device)
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else:
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new[unknown] = self.unknown_index
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return new.reshape(ishape)
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def unmap_to_all(self, inds):
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ishape = inds.shape
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assert len(ishape) > 1
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inds = inds.reshape(ishape[0], -1)
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used = self.used.to(inds)
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if self.re_embed > self.used.shape[0]: # extra token
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inds[inds >= self.used.shape[0]] = 0 # simply set to zero
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back = torch.gather(used[None, :][inds.shape[0] * [0], :], 1, inds)
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return back.reshape(ishape)
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def forward(self, z):
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# reshape z -> (batch, height, width, channel) and flatten
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z = z.permute(0, 2, 3, 1).contiguous()
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z_flattened = z.view(-1, self.e_dim)
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# distances from z to embeddings e_j (z - e)^2 = z^2 + e^2 - 2 e * z
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d = (
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torch.sum(z_flattened**2, dim=1, keepdim=True)
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+ torch.sum(self.embedding.weight**2, dim=1)
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- 2 * torch.einsum("bd,dn->bn", z_flattened, self.embedding.weight.t())
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)
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min_encoding_indices = torch.argmin(d, dim=1)
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z_q = self.embedding(min_encoding_indices).view(z.shape)
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perplexity = None
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min_encodings = None
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# compute loss for embedding
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if not self.legacy:
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loss = self.beta * torch.mean((z_q.detach() - z) ** 2) + torch.mean((z_q - z.detach()) ** 2)
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else:
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loss = torch.mean((z_q.detach() - z) ** 2) + self.beta * torch.mean((z_q - z.detach()) ** 2)
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# preserve gradients
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z_q = z + (z_q - z).detach()
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# reshape back to match original input shape
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z_q = z_q.permute(0, 3, 1, 2).contiguous()
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if self.remap is not None:
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min_encoding_indices = min_encoding_indices.reshape(z.shape[0], -1) # add batch axis
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min_encoding_indices = self.remap_to_used(min_encoding_indices)
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min_encoding_indices = min_encoding_indices.reshape(-1, 1) # flatten
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if self.sane_index_shape:
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min_encoding_indices = min_encoding_indices.reshape(z_q.shape[0], z_q.shape[2], z_q.shape[3])
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return z_q, loss, (perplexity, min_encodings, min_encoding_indices)
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def get_codebook_entry(self, indices, shape):
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# shape specifying (batch, height, width, channel)
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if self.remap is not None:
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indices = indices.reshape(shape[0], -1) # add batch axis
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indices = self.unmap_to_all(indices)
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indices = indices.reshape(-1) # flatten again
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# get quantized latent vectors
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z_q = self.embedding(indices)
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if shape is not None:
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z_q = z_q.view(shape)
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# reshape back to match original input shape
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z_q = z_q.permute(0, 3, 1, 2).contiguous()
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return z_q
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class DiagonalGaussianDistribution(object):
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def __init__(self, parameters, deterministic=False):
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self.parameters = parameters
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self.mean, self.logvar = torch.chunk(parameters, 2, dim=1)
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self.logvar = torch.clamp(self.logvar, -30.0, 20.0)
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self.deterministic = deterministic
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self.std = torch.exp(0.5 * self.logvar)
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self.var = torch.exp(self.logvar)
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if self.deterministic:
|
||||
self.var = self.std = torch.zeros_like(self.mean).to(device=self.parameters.device)
|
||||
|
||||
def sample(self):
|
||||
x = self.mean + self.std * torch.randn(self.mean.shape).to(device=self.parameters.device)
|
||||
return x
|
||||
|
||||
def kl(self, other=None):
|
||||
if self.deterministic:
|
||||
return torch.Tensor([0.0])
|
||||
else:
|
||||
if other is None:
|
||||
return 0.5 * torch.sum(torch.pow(self.mean, 2) + self.var - 1.0 - self.logvar, dim=[1, 2, 3])
|
||||
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=[1, 2, 3],
|
||||
)
|
||||
|
||||
def nll(self, sample, dims=[1, 2, 3]):
|
||||
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):
|
||||
return self.mean
|
||||
|
||||
|
||||
class VQModel(ModelMixin, ConfigMixin):
|
||||
def __init__(
|
||||
self,
|
||||
ch,
|
||||
out_ch,
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
n_embed,
|
||||
embed_dim,
|
||||
remap=None,
|
||||
sane_index_shape=False, # tell vector quantizer to return indices as bhw
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
dropout=0.0,
|
||||
double_z=True,
|
||||
resamp_with_conv=True,
|
||||
give_pre_end=False,
|
||||
):
|
||||
super().__init__()
|
||||
|
||||
# register all __init__ params with self.register
|
||||
self.register_to_config(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
n_embed=n_embed,
|
||||
embed_dim=embed_dim,
|
||||
remap=remap,
|
||||
sane_index_shape=sane_index_shape,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
double_z=double_z,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
# pass init params to Encoder
|
||||
self.encoder = Encoder(
|
||||
ch=ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
double_z=double_z,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
self.quant_conv = torch.nn.Conv2d(z_channels, embed_dim, 1)
|
||||
self.quantize = VectorQuantizer(n_embed, embed_dim, beta=0.25, remap=remap, sane_index_shape=sane_index_shape)
|
||||
self.post_quant_conv = torch.nn.Conv2d(embed_dim, z_channels, 1)
|
||||
|
||||
# pass init params to Decoder
|
||||
self.decoder = Decoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
def encode(self, x):
|
||||
h = self.encoder(x)
|
||||
h = self.quant_conv(h)
|
||||
return h
|
||||
|
||||
def decode(self, h, force_not_quantize=False):
|
||||
# also go through quantization layer
|
||||
if not force_not_quantize:
|
||||
quant, emb_loss, info = self.quantize(h)
|
||||
else:
|
||||
quant = h
|
||||
quant = self.post_quant_conv(quant)
|
||||
dec = self.decoder(quant)
|
||||
return dec
|
||||
|
||||
def forward(self, x):
|
||||
h = self.encode(x)
|
||||
dec = self.decode(h)
|
||||
return dec
|
||||
|
||||
|
||||
class AutoencoderKL(ModelMixin, ConfigMixin):
|
||||
def __init__(
|
||||
self,
|
||||
ch,
|
||||
out_ch,
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
embed_dim,
|
||||
remap=None,
|
||||
sane_index_shape=False, # tell vector quantizer to return indices as bhw
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
dropout=0.0,
|
||||
double_z=True,
|
||||
resamp_with_conv=True,
|
||||
give_pre_end=False,
|
||||
):
|
||||
super().__init__()
|
||||
|
||||
# register all __init__ params with self.register
|
||||
self.register_to_config(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
embed_dim=embed_dim,
|
||||
remap=remap,
|
||||
sane_index_shape=sane_index_shape,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
double_z=double_z,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
# pass init params to Encoder
|
||||
self.encoder = Encoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
double_z=double_z,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
# pass init params to Decoder
|
||||
self.decoder = Decoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
self.quant_conv = torch.nn.Conv2d(2 * z_channels, 2 * embed_dim, 1)
|
||||
self.post_quant_conv = torch.nn.Conv2d(embed_dim, z_channels, 1)
|
||||
|
||||
def encode(self, x):
|
||||
h = self.encoder(x)
|
||||
moments = self.quant_conv(h)
|
||||
posterior = DiagonalGaussianDistribution(moments)
|
||||
return posterior
|
||||
|
||||
def decode(self, z):
|
||||
z = self.post_quant_conv(z)
|
||||
dec = self.decoder(z)
|
||||
return dec
|
||||
|
||||
def forward(self, x, sample_posterior=False):
|
||||
posterior = self.encode(x)
|
||||
if sample_posterior:
|
||||
z = posterior.sample()
|
||||
else:
|
||||
z = posterior.mode()
|
||||
dec = self.decode(z)
|
||||
return dec
|
|
@ -2,4 +2,4 @@ from ...utils import is_transformers_available
|
|||
|
||||
|
||||
if is_transformers_available():
|
||||
from .pipeline_latent_diffusion import AutoencoderKL, LatentDiffusionPipeline, LDMBertModel
|
||||
from .pipeline_latent_diffusion import LatentDiffusionPipeline, LDMBertModel
|
||||
|
|
|
@ -1,4 +1,3 @@
|
|||
import math
|
||||
from typing import Optional, Tuple, Union
|
||||
|
||||
import numpy as np
|
||||
|
@ -13,8 +12,6 @@ from transformers.modeling_outputs import BaseModelOutput
|
|||
from transformers.modeling_utils import PreTrainedModel
|
||||
from transformers.utils import logging
|
||||
|
||||
from ...configuration_utils import ConfigMixin
|
||||
from ...modeling_utils import ModelMixin
|
||||
from ...pipeline_utils import DiffusionPipeline
|
||||
|
||||
|
||||
|
@ -547,852 +544,6 @@ class LDMBertModel(LDMBertPreTrainedModel):
|
|||
return sequence_output
|
||||
|
||||
|
||||
def get_timestep_embedding(timesteps, embedding_dim):
|
||||
"""
|
||||
This matches the implementation in Denoising Diffusion Probabilistic Models: From Fairseq. Build sinusoidal
|
||||
embeddings. This matches the implementation in tensor2tensor, but differs slightly from the description in Section
|
||||
3.5 of "Attention Is All You Need".
|
||||
"""
|
||||
assert len(timesteps.shape) == 1
|
||||
|
||||
half_dim = embedding_dim // 2
|
||||
emb = math.log(10000) / (half_dim - 1)
|
||||
emb = torch.exp(torch.arange(half_dim, dtype=torch.float32) * -emb)
|
||||
emb = emb.to(device=timesteps.device)
|
||||
emb = timesteps.float()[:, None] * emb[None, :]
|
||||
emb = torch.cat([torch.sin(emb), torch.cos(emb)], dim=1)
|
||||
if embedding_dim % 2 == 1: # zero pad
|
||||
emb = torch.nn.functional.pad(emb, (0, 1, 0, 0))
|
||||
return emb
|
||||
|
||||
|
||||
def nonlinearity(x):
|
||||
# swish
|
||||
return x * torch.sigmoid(x)
|
||||
|
||||
|
||||
def Normalize(in_channels):
|
||||
return torch.nn.GroupNorm(num_groups=32, num_channels=in_channels, eps=1e-6, affine=True)
|
||||
|
||||
|
||||
class Upsample(nn.Module):
|
||||
def __init__(self, in_channels, with_conv):
|
||||
super().__init__()
|
||||
self.with_conv = with_conv
|
||||
if self.with_conv:
|
||||
self.conv = torch.nn.Conv2d(in_channels, in_channels, kernel_size=3, stride=1, padding=1)
|
||||
|
||||
def forward(self, x):
|
||||
x = torch.nn.functional.interpolate(x, scale_factor=2.0, mode="nearest")
|
||||
if self.with_conv:
|
||||
x = self.conv(x)
|
||||
return x
|
||||
|
||||
|
||||
class Downsample(nn.Module):
|
||||
def __init__(self, in_channels, with_conv):
|
||||
super().__init__()
|
||||
self.with_conv = with_conv
|
||||
if self.with_conv:
|
||||
# no asymmetric padding in torch conv, must do it ourselves
|
||||
self.conv = torch.nn.Conv2d(in_channels, in_channels, kernel_size=3, stride=2, padding=0)
|
||||
|
||||
def forward(self, x):
|
||||
if self.with_conv:
|
||||
pad = (0, 1, 0, 1)
|
||||
x = torch.nn.functional.pad(x, pad, mode="constant", value=0)
|
||||
x = self.conv(x)
|
||||
else:
|
||||
x = torch.nn.functional.avg_pool2d(x, kernel_size=2, stride=2)
|
||||
return x
|
||||
|
||||
|
||||
class ResnetBlock(nn.Module):
|
||||
def __init__(self, *, in_channels, out_channels=None, conv_shortcut=False, dropout, temb_channels=512):
|
||||
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.use_conv_shortcut = conv_shortcut
|
||||
|
||||
self.norm1 = Normalize(in_channels)
|
||||
self.conv1 = torch.nn.Conv2d(in_channels, out_channels, kernel_size=3, stride=1, padding=1)
|
||||
if temb_channels > 0:
|
||||
self.temb_proj = torch.nn.Linear(temb_channels, out_channels)
|
||||
self.norm2 = Normalize(out_channels)
|
||||
self.dropout = torch.nn.Dropout(dropout)
|
||||
self.conv2 = torch.nn.Conv2d(out_channels, out_channels, kernel_size=3, stride=1, padding=1)
|
||||
if self.in_channels != self.out_channels:
|
||||
if self.use_conv_shortcut:
|
||||
self.conv_shortcut = torch.nn.Conv2d(in_channels, out_channels, kernel_size=3, stride=1, padding=1)
|
||||
else:
|
||||
self.nin_shortcut = torch.nn.Conv2d(in_channels, out_channels, kernel_size=1, stride=1, padding=0)
|
||||
|
||||
def forward(self, x, temb):
|
||||
h = x
|
||||
h = self.norm1(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.conv1(h)
|
||||
|
||||
if temb is not None:
|
||||
h = h + self.temb_proj(nonlinearity(temb))[:, :, None, None]
|
||||
|
||||
h = self.norm2(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.dropout(h)
|
||||
h = self.conv2(h)
|
||||
|
||||
if self.in_channels != self.out_channels:
|
||||
if self.use_conv_shortcut:
|
||||
x = self.conv_shortcut(x)
|
||||
else:
|
||||
x = self.nin_shortcut(x)
|
||||
|
||||
return x + h
|
||||
|
||||
|
||||
class AttnBlock(nn.Module):
|
||||
def __init__(self, in_channels):
|
||||
super().__init__()
|
||||
self.in_channels = in_channels
|
||||
|
||||
self.norm = Normalize(in_channels)
|
||||
self.q = torch.nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0)
|
||||
self.k = torch.nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0)
|
||||
self.v = torch.nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0)
|
||||
self.proj_out = torch.nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0)
|
||||
|
||||
def forward(self, x):
|
||||
h_ = x
|
||||
h_ = self.norm(h_)
|
||||
q = self.q(h_)
|
||||
k = self.k(h_)
|
||||
v = self.v(h_)
|
||||
|
||||
# compute attention
|
||||
b, c, h, w = q.shape
|
||||
q = q.reshape(b, c, h * w)
|
||||
q = q.permute(0, 2, 1) # b,hw,c
|
||||
k = k.reshape(b, c, h * w) # b,c,hw
|
||||
w_ = torch.bmm(q, k) # b,hw,hw w[b,i,j]=sum_c q[b,i,c]k[b,c,j]
|
||||
w_ = w_ * (int(c) ** (-0.5))
|
||||
w_ = torch.nn.functional.softmax(w_, dim=2)
|
||||
|
||||
# attend to values
|
||||
v = v.reshape(b, c, h * w)
|
||||
w_ = w_.permute(0, 2, 1) # b,hw,hw (first hw of k, second of q)
|
||||
h_ = torch.bmm(v, w_) # b, c,hw (hw of q) h_[b,c,j] = sum_i v[b,c,i] w_[b,i,j]
|
||||
h_ = h_.reshape(b, c, h, w)
|
||||
|
||||
h_ = self.proj_out(h_)
|
||||
|
||||
return x + h_
|
||||
|
||||
|
||||
class Model(nn.Module):
|
||||
def __init__(
|
||||
self,
|
||||
*,
|
||||
ch,
|
||||
out_ch,
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
dropout=0.0,
|
||||
resamp_with_conv=True,
|
||||
in_channels,
|
||||
resolution,
|
||||
use_timestep=True,
|
||||
):
|
||||
super().__init__()
|
||||
self.ch = ch
|
||||
self.temb_ch = self.ch * 4
|
||||
self.num_resolutions = len(ch_mult)
|
||||
self.num_res_blocks = num_res_blocks
|
||||
self.resolution = resolution
|
||||
self.in_channels = in_channels
|
||||
|
||||
self.use_timestep = use_timestep
|
||||
if self.use_timestep:
|
||||
# timestep embedding
|
||||
self.temb = nn.Module()
|
||||
self.temb.dense = nn.ModuleList(
|
||||
[
|
||||
torch.nn.Linear(self.ch, self.temb_ch),
|
||||
torch.nn.Linear(self.temb_ch, self.temb_ch),
|
||||
]
|
||||
)
|
||||
|
||||
# downsampling
|
||||
self.conv_in = torch.nn.Conv2d(in_channels, self.ch, kernel_size=3, stride=1, padding=1)
|
||||
|
||||
curr_res = resolution
|
||||
in_ch_mult = (1,) + tuple(ch_mult)
|
||||
self.down = nn.ModuleList()
|
||||
for i_level in range(self.num_resolutions):
|
||||
block = nn.ModuleList()
|
||||
attn = nn.ModuleList()
|
||||
block_in = ch * in_ch_mult[i_level]
|
||||
block_out = ch * ch_mult[i_level]
|
||||
for i_block in range(self.num_res_blocks):
|
||||
block.append(
|
||||
ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
)
|
||||
block_in = block_out
|
||||
if curr_res in attn_resolutions:
|
||||
attn.append(AttnBlock(block_in))
|
||||
down = nn.Module()
|
||||
down.block = block
|
||||
down.attn = attn
|
||||
if i_level != self.num_resolutions - 1:
|
||||
down.downsample = Downsample(block_in, resamp_with_conv)
|
||||
curr_res = curr_res // 2
|
||||
self.down.append(down)
|
||||
|
||||
# middle
|
||||
self.mid = nn.Module()
|
||||
self.mid.block_1 = ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
self.mid.attn_1 = AttnBlock(block_in)
|
||||
self.mid.block_2 = ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
|
||||
# upsampling
|
||||
self.up = nn.ModuleList()
|
||||
for i_level in reversed(range(self.num_resolutions)):
|
||||
block = nn.ModuleList()
|
||||
attn = nn.ModuleList()
|
||||
block_out = ch * ch_mult[i_level]
|
||||
skip_in = ch * ch_mult[i_level]
|
||||
for i_block in range(self.num_res_blocks + 1):
|
||||
if i_block == self.num_res_blocks:
|
||||
skip_in = ch * in_ch_mult[i_level]
|
||||
block.append(
|
||||
ResnetBlock(
|
||||
in_channels=block_in + skip_in,
|
||||
out_channels=block_out,
|
||||
temb_channels=self.temb_ch,
|
||||
dropout=dropout,
|
||||
)
|
||||
)
|
||||
block_in = block_out
|
||||
if curr_res in attn_resolutions:
|
||||
attn.append(AttnBlock(block_in))
|
||||
up = nn.Module()
|
||||
up.block = block
|
||||
up.attn = attn
|
||||
if i_level != 0:
|
||||
up.upsample = Upsample(block_in, resamp_with_conv)
|
||||
curr_res = curr_res * 2
|
||||
self.up.insert(0, up) # prepend to get consistent order
|
||||
|
||||
# end
|
||||
self.norm_out = Normalize(block_in)
|
||||
self.conv_out = torch.nn.Conv2d(block_in, out_ch, kernel_size=3, stride=1, padding=1)
|
||||
|
||||
def forward(self, x, t=None):
|
||||
# assert x.shape[2] == x.shape[3] == self.resolution
|
||||
|
||||
if self.use_timestep:
|
||||
# timestep embedding
|
||||
assert t is not None
|
||||
temb = get_timestep_embedding(t, self.ch)
|
||||
temb = self.temb.dense[0](temb)
|
||||
temb = nonlinearity(temb)
|
||||
temb = self.temb.dense[1](temb)
|
||||
else:
|
||||
temb = None
|
||||
|
||||
# downsampling
|
||||
hs = [self.conv_in(x)]
|
||||
for i_level in range(self.num_resolutions):
|
||||
for i_block in range(self.num_res_blocks):
|
||||
h = self.down[i_level].block[i_block](hs[-1], temb)
|
||||
if len(self.down[i_level].attn) > 0:
|
||||
h = self.down[i_level].attn[i_block](h)
|
||||
hs.append(h)
|
||||
if i_level != self.num_resolutions - 1:
|
||||
hs.append(self.down[i_level].downsample(hs[-1]))
|
||||
|
||||
# middle
|
||||
h = hs[-1]
|
||||
h = self.mid.block_1(h, temb)
|
||||
h = self.mid.attn_1(h)
|
||||
h = self.mid.block_2(h, temb)
|
||||
|
||||
# upsampling
|
||||
for i_level in reversed(range(self.num_resolutions)):
|
||||
for i_block in range(self.num_res_blocks + 1):
|
||||
h = self.up[i_level].block[i_block](torch.cat([h, hs.pop()], dim=1), temb)
|
||||
if len(self.up[i_level].attn) > 0:
|
||||
h = self.up[i_level].attn[i_block](h)
|
||||
if i_level != 0:
|
||||
h = self.up[i_level].upsample(h)
|
||||
|
||||
# end
|
||||
h = self.norm_out(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.conv_out(h)
|
||||
return h
|
||||
|
||||
|
||||
class Encoder(nn.Module):
|
||||
def __init__(
|
||||
self,
|
||||
*,
|
||||
ch,
|
||||
out_ch,
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
dropout=0.0,
|
||||
resamp_with_conv=True,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
double_z=True,
|
||||
**ignore_kwargs,
|
||||
):
|
||||
super().__init__()
|
||||
self.ch = ch
|
||||
self.temb_ch = 0
|
||||
self.num_resolutions = len(ch_mult)
|
||||
self.num_res_blocks = num_res_blocks
|
||||
self.resolution = resolution
|
||||
self.in_channels = in_channels
|
||||
|
||||
# downsampling
|
||||
self.conv_in = torch.nn.Conv2d(in_channels, self.ch, kernel_size=3, stride=1, padding=1)
|
||||
|
||||
curr_res = resolution
|
||||
in_ch_mult = (1,) + tuple(ch_mult)
|
||||
self.down = nn.ModuleList()
|
||||
for i_level in range(self.num_resolutions):
|
||||
block = nn.ModuleList()
|
||||
attn = nn.ModuleList()
|
||||
block_in = ch * in_ch_mult[i_level]
|
||||
block_out = ch * ch_mult[i_level]
|
||||
for i_block in range(self.num_res_blocks):
|
||||
block.append(
|
||||
ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
)
|
||||
block_in = block_out
|
||||
if curr_res in attn_resolutions:
|
||||
attn.append(AttnBlock(block_in))
|
||||
down = nn.Module()
|
||||
down.block = block
|
||||
down.attn = attn
|
||||
if i_level != self.num_resolutions - 1:
|
||||
down.downsample = Downsample(block_in, resamp_with_conv)
|
||||
curr_res = curr_res // 2
|
||||
self.down.append(down)
|
||||
|
||||
# middle
|
||||
self.mid = nn.Module()
|
||||
self.mid.block_1 = ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
self.mid.attn_1 = AttnBlock(block_in)
|
||||
self.mid.block_2 = ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
|
||||
# end
|
||||
self.norm_out = Normalize(block_in)
|
||||
self.conv_out = torch.nn.Conv2d(
|
||||
block_in, 2 * z_channels if double_z else z_channels, kernel_size=3, stride=1, padding=1
|
||||
)
|
||||
|
||||
def forward(self, x):
|
||||
# assert x.shape[2] == x.shape[3] == self.resolution, "{}, {}, {}".format(x.shape[2], x.shape[3], self.resolution)
|
||||
|
||||
# timestep embedding
|
||||
temb = None
|
||||
|
||||
# downsampling
|
||||
hs = [self.conv_in(x)]
|
||||
for i_level in range(self.num_resolutions):
|
||||
for i_block in range(self.num_res_blocks):
|
||||
h = self.down[i_level].block[i_block](hs[-1], temb)
|
||||
if len(self.down[i_level].attn) > 0:
|
||||
h = self.down[i_level].attn[i_block](h)
|
||||
hs.append(h)
|
||||
if i_level != self.num_resolutions - 1:
|
||||
hs.append(self.down[i_level].downsample(hs[-1]))
|
||||
|
||||
# middle
|
||||
h = hs[-1]
|
||||
h = self.mid.block_1(h, temb)
|
||||
h = self.mid.attn_1(h)
|
||||
h = self.mid.block_2(h, temb)
|
||||
|
||||
# end
|
||||
h = self.norm_out(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.conv_out(h)
|
||||
return h
|
||||
|
||||
|
||||
class Decoder(nn.Module):
|
||||
def __init__(
|
||||
self,
|
||||
*,
|
||||
ch,
|
||||
out_ch,
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
dropout=0.0,
|
||||
resamp_with_conv=True,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
give_pre_end=False,
|
||||
**ignorekwargs,
|
||||
):
|
||||
super().__init__()
|
||||
self.ch = ch
|
||||
self.temb_ch = 0
|
||||
self.num_resolutions = len(ch_mult)
|
||||
self.num_res_blocks = num_res_blocks
|
||||
self.resolution = resolution
|
||||
self.in_channels = in_channels
|
||||
self.give_pre_end = give_pre_end
|
||||
|
||||
# compute in_ch_mult, block_in and curr_res at lowest res
|
||||
in_ch_mult = (1,) + tuple(ch_mult)
|
||||
block_in = ch * ch_mult[self.num_resolutions - 1]
|
||||
curr_res = resolution // 2 ** (self.num_resolutions - 1)
|
||||
self.z_shape = (1, z_channels, curr_res, curr_res)
|
||||
print("Working with z of shape {} = {} dimensions.".format(self.z_shape, np.prod(self.z_shape)))
|
||||
|
||||
# z to block_in
|
||||
self.conv_in = torch.nn.Conv2d(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, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
self.mid.attn_1 = AttnBlock(block_in)
|
||||
self.mid.block_2 = ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
|
||||
# upsampling
|
||||
self.up = nn.ModuleList()
|
||||
for i_level in reversed(range(self.num_resolutions)):
|
||||
block = nn.ModuleList()
|
||||
attn = nn.ModuleList()
|
||||
block_out = ch * ch_mult[i_level]
|
||||
for i_block in range(self.num_res_blocks + 1):
|
||||
block.append(
|
||||
ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
)
|
||||
block_in = block_out
|
||||
if curr_res in attn_resolutions:
|
||||
attn.append(AttnBlock(block_in))
|
||||
up = nn.Module()
|
||||
up.block = block
|
||||
up.attn = attn
|
||||
if i_level != 0:
|
||||
up.upsample = Upsample(block_in, resamp_with_conv)
|
||||
curr_res = curr_res * 2
|
||||
self.up.insert(0, up) # prepend to get consistent order
|
||||
|
||||
# end
|
||||
self.norm_out = Normalize(block_in)
|
||||
self.conv_out = torch.nn.Conv2d(block_in, out_ch, kernel_size=3, stride=1, padding=1)
|
||||
|
||||
def forward(self, z):
|
||||
# assert z.shape[1:] == self.z_shape[1:]
|
||||
self.last_z_shape = z.shape
|
||||
|
||||
# timestep embedding
|
||||
temb = None
|
||||
|
||||
# z to block_in
|
||||
h = self.conv_in(z)
|
||||
|
||||
# middle
|
||||
h = self.mid.block_1(h, temb)
|
||||
h = self.mid.attn_1(h)
|
||||
h = self.mid.block_2(h, temb)
|
||||
|
||||
# upsampling
|
||||
for i_level in reversed(range(self.num_resolutions)):
|
||||
for i_block in range(self.num_res_blocks + 1):
|
||||
h = self.up[i_level].block[i_block](h, temb)
|
||||
if len(self.up[i_level].attn) > 0:
|
||||
h = self.up[i_level].attn[i_block](h)
|
||||
if i_level != 0:
|
||||
h = self.up[i_level].upsample(h)
|
||||
|
||||
# end
|
||||
if self.give_pre_end:
|
||||
return h
|
||||
|
||||
h = self.norm_out(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.conv_out(h)
|
||||
return h
|
||||
|
||||
|
||||
class VectorQuantizer(nn.Module):
|
||||
"""
|
||||
Improved version over VectorQuantizer, can be used as a drop-in replacement. Mostly avoids costly matrix
|
||||
multiplications and allows for post-hoc remapping of indices.
|
||||
"""
|
||||
|
||||
# NOTE: due to a bug the beta term was applied to the wrong term. for
|
||||
# backwards compatibility we use the buggy version by default, but you can
|
||||
# specify legacy=False to fix it.
|
||||
def __init__(self, n_e, e_dim, beta, remap=None, unknown_index="random", sane_index_shape=False, legacy=True):
|
||||
super().__init__()
|
||||
self.n_e = n_e
|
||||
self.e_dim = e_dim
|
||||
self.beta = beta
|
||||
self.legacy = legacy
|
||||
|
||||
self.embedding = nn.Embedding(self.n_e, self.e_dim)
|
||||
self.embedding.weight.data.uniform_(-1.0 / self.n_e, 1.0 / self.n_e)
|
||||
|
||||
self.remap = remap
|
||||
if self.remap is not None:
|
||||
self.register_buffer("used", torch.tensor(np.load(self.remap)))
|
||||
self.re_embed = self.used.shape[0]
|
||||
self.unknown_index = unknown_index # "random" or "extra" or integer
|
||||
if self.unknown_index == "extra":
|
||||
self.unknown_index = self.re_embed
|
||||
self.re_embed = self.re_embed + 1
|
||||
print(
|
||||
f"Remapping {self.n_e} indices to {self.re_embed} indices. "
|
||||
f"Using {self.unknown_index} for unknown indices."
|
||||
)
|
||||
else:
|
||||
self.re_embed = n_e
|
||||
|
||||
self.sane_index_shape = sane_index_shape
|
||||
|
||||
def remap_to_used(self, inds):
|
||||
ishape = inds.shape
|
||||
assert len(ishape) > 1
|
||||
inds = inds.reshape(ishape[0], -1)
|
||||
used = self.used.to(inds)
|
||||
match = (inds[:, :, None] == used[None, None, ...]).long()
|
||||
new = match.argmax(-1)
|
||||
unknown = match.sum(2) < 1
|
||||
if self.unknown_index == "random":
|
||||
new[unknown] = torch.randint(0, self.re_embed, size=new[unknown].shape).to(device=new.device)
|
||||
else:
|
||||
new[unknown] = self.unknown_index
|
||||
return new.reshape(ishape)
|
||||
|
||||
def unmap_to_all(self, inds):
|
||||
ishape = inds.shape
|
||||
assert len(ishape) > 1
|
||||
inds = inds.reshape(ishape[0], -1)
|
||||
used = self.used.to(inds)
|
||||
if self.re_embed > self.used.shape[0]: # extra token
|
||||
inds[inds >= self.used.shape[0]] = 0 # simply set to zero
|
||||
back = torch.gather(used[None, :][inds.shape[0] * [0], :], 1, inds)
|
||||
return back.reshape(ishape)
|
||||
|
||||
def forward(self, z, temp=None, rescale_logits=False, return_logits=False):
|
||||
assert temp is None or temp == 1.0, "Only for interface compatible with Gumbel"
|
||||
assert rescale_logits == False, "Only for interface compatible with Gumbel"
|
||||
assert return_logits == False, "Only for interface compatible with Gumbel"
|
||||
# reshape z -> (batch, height, width, channel) and flatten
|
||||
z = rearrange(z, "b c h w -> b h w c").contiguous()
|
||||
z_flattened = z.view(-1, self.e_dim)
|
||||
# distances from z to embeddings e_j (z - e)^2 = z^2 + e^2 - 2 e * z
|
||||
|
||||
d = (
|
||||
torch.sum(z_flattened**2, dim=1, keepdim=True)
|
||||
+ torch.sum(self.embedding.weight**2, dim=1)
|
||||
- 2 * torch.einsum("bd,dn->bn", z_flattened, rearrange(self.embedding.weight, "n d -> d n"))
|
||||
)
|
||||
|
||||
min_encoding_indices = torch.argmin(d, dim=1)
|
||||
z_q = self.embedding(min_encoding_indices).view(z.shape)
|
||||
perplexity = None
|
||||
min_encodings = None
|
||||
|
||||
# compute loss for embedding
|
||||
if not self.legacy:
|
||||
loss = self.beta * torch.mean((z_q.detach() - z) ** 2) + torch.mean((z_q - z.detach()) ** 2)
|
||||
else:
|
||||
loss = torch.mean((z_q.detach() - z) ** 2) + self.beta * torch.mean((z_q - z.detach()) ** 2)
|
||||
|
||||
# preserve gradients
|
||||
z_q = z + (z_q - z).detach()
|
||||
|
||||
# reshape back to match original input shape
|
||||
z_q = rearrange(z_q, "b h w c -> b c h w").contiguous()
|
||||
|
||||
if self.remap is not None:
|
||||
min_encoding_indices = min_encoding_indices.reshape(z.shape[0], -1) # add batch axis
|
||||
min_encoding_indices = self.remap_to_used(min_encoding_indices)
|
||||
min_encoding_indices = min_encoding_indices.reshape(-1, 1) # flatten
|
||||
|
||||
if self.sane_index_shape:
|
||||
min_encoding_indices = min_encoding_indices.reshape(z_q.shape[0], z_q.shape[2], z_q.shape[3])
|
||||
|
||||
return z_q, loss, (perplexity, min_encodings, min_encoding_indices)
|
||||
|
||||
def get_codebook_entry(self, indices, shape):
|
||||
# shape specifying (batch, height, width, channel)
|
||||
if self.remap is not None:
|
||||
indices = indices.reshape(shape[0], -1) # add batch axis
|
||||
indices = self.unmap_to_all(indices)
|
||||
indices = indices.reshape(-1) # flatten again
|
||||
|
||||
# get quantized latent vectors
|
||||
z_q = self.embedding(indices)
|
||||
|
||||
if shape is not None:
|
||||
z_q = z_q.view(shape)
|
||||
# reshape back to match original input shape
|
||||
z_q = z_q.permute(0, 3, 1, 2).contiguous()
|
||||
|
||||
return z_q
|
||||
|
||||
|
||||
class VQModel(ModelMixin, ConfigMixin):
|
||||
def __init__(
|
||||
self,
|
||||
ch,
|
||||
out_ch,
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
n_embed,
|
||||
embed_dim,
|
||||
remap=None,
|
||||
sane_index_shape=False, # tell vector quantizer to return indices as bhw
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
dropout=0.0,
|
||||
double_z=True,
|
||||
resamp_with_conv=True,
|
||||
give_pre_end=False,
|
||||
):
|
||||
super().__init__()
|
||||
|
||||
# register all __init__ params with self.register
|
||||
self.register_to_config(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
n_embed=n_embed,
|
||||
embed_dim=embed_dim,
|
||||
remap=remap,
|
||||
sane_index_shape=sane_index_shape,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
double_z=double_z,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
# pass init params to Encoder
|
||||
self.encoder = Encoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
double_z=double_z,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
self.quantize = VectorQuantizer(n_embed, embed_dim, beta=0.25, remap=remap, sane_index_shape=sane_index_shape)
|
||||
|
||||
# pass init params to Decoder
|
||||
self.decoder = Decoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
def encode(self, x):
|
||||
h = self.encoder(x)
|
||||
h = self.quant_conv(h)
|
||||
return h
|
||||
|
||||
def decode(self, h, force_not_quantize=False):
|
||||
# also go through quantization layer
|
||||
if not force_not_quantize:
|
||||
quant, emb_loss, info = self.quantize(h)
|
||||
else:
|
||||
quant = h
|
||||
quant = self.post_quant_conv(quant)
|
||||
dec = self.decoder(quant)
|
||||
return dec
|
||||
|
||||
|
||||
class DiagonalGaussianDistribution(object):
|
||||
def __init__(self, parameters, deterministic=False):
|
||||
self.parameters = parameters
|
||||
self.mean, self.logvar = torch.chunk(parameters, 2, dim=1)
|
||||
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).to(device=self.parameters.device)
|
||||
|
||||
def sample(self):
|
||||
x = self.mean + self.std * torch.randn(self.mean.shape).to(device=self.parameters.device)
|
||||
return x
|
||||
|
||||
def kl(self, other=None):
|
||||
if self.deterministic:
|
||||
return torch.Tensor([0.0])
|
||||
else:
|
||||
if other is None:
|
||||
return 0.5 * torch.sum(torch.pow(self.mean, 2) + self.var - 1.0 - self.logvar, dim=[1, 2, 3])
|
||||
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=[1, 2, 3],
|
||||
)
|
||||
|
||||
def nll(self, sample, dims=[1, 2, 3]):
|
||||
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):
|
||||
return self.mean
|
||||
|
||||
|
||||
class AutoencoderKL(ModelMixin, ConfigMixin):
|
||||
def __init__(
|
||||
self,
|
||||
ch,
|
||||
out_ch,
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
embed_dim,
|
||||
remap=None,
|
||||
sane_index_shape=False, # tell vector quantizer to return indices as bhw
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
dropout=0.0,
|
||||
double_z=True,
|
||||
resamp_with_conv=True,
|
||||
give_pre_end=False,
|
||||
):
|
||||
super().__init__()
|
||||
|
||||
# register all __init__ params with self.register
|
||||
self.register_to_config(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
embed_dim=embed_dim,
|
||||
remap=remap,
|
||||
sane_index_shape=sane_index_shape,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
double_z=double_z,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
# pass init params to Encoder
|
||||
self.encoder = Encoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
double_z=double_z,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
# pass init params to Decoder
|
||||
self.decoder = Decoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
self.quant_conv = torch.nn.Conv2d(2 * z_channels, 2 * embed_dim, 1)
|
||||
self.post_quant_conv = torch.nn.Conv2d(embed_dim, z_channels, 1)
|
||||
|
||||
def encode(self, x):
|
||||
h = self.encoder(x)
|
||||
moments = self.quant_conv(h)
|
||||
posterior = DiagonalGaussianDistribution(moments)
|
||||
return posterior
|
||||
|
||||
def decode(self, z):
|
||||
z = self.post_quant_conv(z)
|
||||
dec = self.decoder(z)
|
||||
return dec
|
||||
|
||||
def forward(self, input, sample_posterior=True):
|
||||
posterior = self.encode(input)
|
||||
if sample_posterior:
|
||||
z = posterior.sample()
|
||||
else:
|
||||
z = posterior.mode()
|
||||
dec = self.decode(z)
|
||||
return dec, posterior
|
||||
|
||||
|
||||
class LatentDiffusionPipeline(DiffusionPipeline):
|
||||
def __init__(self, vqvae, bert, tokenizer, unet, noise_scheduler):
|
||||
super().__init__()
|
||||
|
|
|
@ -1,571 +1,10 @@
|
|||
import math
|
||||
|
||||
import numpy as np
|
||||
import torch
|
||||
import torch.nn as nn
|
||||
|
||||
import tqdm
|
||||
|
||||
from ...configuration_utils import ConfigMixin
|
||||
from ...modeling_utils import ModelMixin
|
||||
from ...pipeline_utils import DiffusionPipeline
|
||||
|
||||
|
||||
def get_timestep_embedding(timesteps, embedding_dim):
|
||||
"""
|
||||
This matches the implementation in Denoising Diffusion Probabilistic Models: From Fairseq. Build sinusoidal
|
||||
embeddings. This matches the implementation in tensor2tensor, but differs slightly from the description in Section
|
||||
3.5 of "Attention Is All You Need".
|
||||
"""
|
||||
assert len(timesteps.shape) == 1
|
||||
|
||||
half_dim = embedding_dim // 2
|
||||
emb = math.log(10000) / (half_dim - 1)
|
||||
emb = torch.exp(torch.arange(half_dim, dtype=torch.float32) * -emb)
|
||||
emb = emb.to(device=timesteps.device)
|
||||
emb = timesteps.float()[:, None] * emb[None, :]
|
||||
emb = torch.cat([torch.sin(emb), torch.cos(emb)], dim=1)
|
||||
if embedding_dim % 2 == 1: # zero pad
|
||||
emb = torch.nn.functional.pad(emb, (0, 1, 0, 0))
|
||||
return emb
|
||||
|
||||
|
||||
def nonlinearity(x):
|
||||
# swish
|
||||
return x * torch.sigmoid(x)
|
||||
|
||||
|
||||
def Normalize(in_channels):
|
||||
return torch.nn.GroupNorm(num_groups=32, num_channels=in_channels, eps=1e-6, affine=True)
|
||||
|
||||
|
||||
class Upsample(nn.Module):
|
||||
def __init__(self, in_channels, with_conv):
|
||||
super().__init__()
|
||||
self.with_conv = with_conv
|
||||
if self.with_conv:
|
||||
self.conv = torch.nn.Conv2d(in_channels, in_channels, kernel_size=3, stride=1, padding=1)
|
||||
|
||||
def forward(self, x):
|
||||
x = torch.nn.functional.interpolate(x, scale_factor=2.0, mode="nearest")
|
||||
if self.with_conv:
|
||||
x = self.conv(x)
|
||||
return x
|
||||
|
||||
|
||||
class Downsample(nn.Module):
|
||||
def __init__(self, in_channels, with_conv):
|
||||
super().__init__()
|
||||
self.with_conv = with_conv
|
||||
if self.with_conv:
|
||||
# no asymmetric padding in torch conv, must do it ourselves
|
||||
self.conv = torch.nn.Conv2d(in_channels, in_channels, kernel_size=3, stride=2, padding=0)
|
||||
|
||||
def forward(self, x):
|
||||
if self.with_conv:
|
||||
pad = (0, 1, 0, 1)
|
||||
x = torch.nn.functional.pad(x, pad, mode="constant", value=0)
|
||||
x = self.conv(x)
|
||||
else:
|
||||
x = torch.nn.functional.avg_pool2d(x, kernel_size=2, stride=2)
|
||||
return x
|
||||
|
||||
|
||||
class ResnetBlock(nn.Module):
|
||||
def __init__(self, *, in_channels, out_channels=None, conv_shortcut=False, dropout, temb_channels=512):
|
||||
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.use_conv_shortcut = conv_shortcut
|
||||
|
||||
self.norm1 = Normalize(in_channels)
|
||||
self.conv1 = torch.nn.Conv2d(in_channels, out_channels, kernel_size=3, stride=1, padding=1)
|
||||
if temb_channels > 0:
|
||||
self.temb_proj = torch.nn.Linear(temb_channels, out_channels)
|
||||
self.norm2 = Normalize(out_channels)
|
||||
self.dropout = torch.nn.Dropout(dropout)
|
||||
self.conv2 = torch.nn.Conv2d(out_channels, out_channels, kernel_size=3, stride=1, padding=1)
|
||||
if self.in_channels != self.out_channels:
|
||||
if self.use_conv_shortcut:
|
||||
self.conv_shortcut = torch.nn.Conv2d(in_channels, out_channels, kernel_size=3, stride=1, padding=1)
|
||||
else:
|
||||
self.nin_shortcut = torch.nn.Conv2d(in_channels, out_channels, kernel_size=1, stride=1, padding=0)
|
||||
|
||||
def forward(self, x, temb):
|
||||
h = x
|
||||
h = self.norm1(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.conv1(h)
|
||||
|
||||
if temb is not None:
|
||||
h = h + self.temb_proj(nonlinearity(temb))[:, :, None, None]
|
||||
|
||||
h = self.norm2(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.dropout(h)
|
||||
h = self.conv2(h)
|
||||
|
||||
if self.in_channels != self.out_channels:
|
||||
if self.use_conv_shortcut:
|
||||
x = self.conv_shortcut(x)
|
||||
else:
|
||||
x = self.nin_shortcut(x)
|
||||
|
||||
return x + h
|
||||
|
||||
|
||||
class AttnBlock(nn.Module):
|
||||
def __init__(self, in_channels):
|
||||
super().__init__()
|
||||
self.in_channels = in_channels
|
||||
|
||||
self.norm = Normalize(in_channels)
|
||||
self.q = torch.nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0)
|
||||
self.k = torch.nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0)
|
||||
self.v = torch.nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0)
|
||||
self.proj_out = torch.nn.Conv2d(in_channels, in_channels, kernel_size=1, stride=1, padding=0)
|
||||
|
||||
def forward(self, x):
|
||||
h_ = x
|
||||
h_ = self.norm(h_)
|
||||
q = self.q(h_)
|
||||
k = self.k(h_)
|
||||
v = self.v(h_)
|
||||
|
||||
# compute attention
|
||||
b, c, h, w = q.shape
|
||||
q = q.reshape(b, c, h * w)
|
||||
q = q.permute(0, 2, 1) # b,hw,c
|
||||
k = k.reshape(b, c, h * w) # b,c,hw
|
||||
w_ = torch.bmm(q, k) # b,hw,hw w[b,i,j]=sum_c q[b,i,c]k[b,c,j]
|
||||
w_ = w_ * (int(c) ** (-0.5))
|
||||
w_ = torch.nn.functional.softmax(w_, dim=2)
|
||||
|
||||
# attend to values
|
||||
v = v.reshape(b, c, h * w)
|
||||
w_ = w_.permute(0, 2, 1) # b,hw,hw (first hw of k, second of q)
|
||||
h_ = torch.bmm(v, w_) # b, c,hw (hw of q) h_[b,c,j] = sum_i v[b,c,i] w_[b,i,j]
|
||||
h_ = h_.reshape(b, c, h, w)
|
||||
|
||||
h_ = self.proj_out(h_)
|
||||
|
||||
return x + h_
|
||||
|
||||
|
||||
class Encoder(nn.Module):
|
||||
def __init__(
|
||||
self,
|
||||
*,
|
||||
ch,
|
||||
out_ch,
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
dropout=0.0,
|
||||
resamp_with_conv=True,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
double_z=True,
|
||||
**ignore_kwargs,
|
||||
):
|
||||
super().__init__()
|
||||
self.ch = ch
|
||||
self.temb_ch = 0
|
||||
self.num_resolutions = len(ch_mult)
|
||||
self.num_res_blocks = num_res_blocks
|
||||
self.resolution = resolution
|
||||
self.in_channels = in_channels
|
||||
|
||||
# downsampling
|
||||
self.conv_in = torch.nn.Conv2d(in_channels, self.ch, kernel_size=3, stride=1, padding=1)
|
||||
|
||||
curr_res = resolution
|
||||
in_ch_mult = (1,) + tuple(ch_mult)
|
||||
self.down = nn.ModuleList()
|
||||
for i_level in range(self.num_resolutions):
|
||||
block = nn.ModuleList()
|
||||
attn = nn.ModuleList()
|
||||
block_in = ch * in_ch_mult[i_level]
|
||||
block_out = ch * ch_mult[i_level]
|
||||
for i_block in range(self.num_res_blocks):
|
||||
block.append(
|
||||
ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
)
|
||||
block_in = block_out
|
||||
if curr_res in attn_resolutions:
|
||||
attn.append(AttnBlock(block_in))
|
||||
down = nn.Module()
|
||||
down.block = block
|
||||
down.attn = attn
|
||||
if i_level != self.num_resolutions - 1:
|
||||
down.downsample = Downsample(block_in, resamp_with_conv)
|
||||
curr_res = curr_res // 2
|
||||
self.down.append(down)
|
||||
|
||||
# middle
|
||||
self.mid = nn.Module()
|
||||
self.mid.block_1 = ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
self.mid.attn_1 = AttnBlock(block_in)
|
||||
self.mid.block_2 = ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
|
||||
# end
|
||||
self.norm_out = Normalize(block_in)
|
||||
self.conv_out = torch.nn.Conv2d(
|
||||
block_in, 2 * z_channels if double_z else z_channels, kernel_size=3, stride=1, padding=1
|
||||
)
|
||||
|
||||
def forward(self, x):
|
||||
# assert x.shape[2] == x.shape[3] == self.resolution, "{}, {}, {}".format(x.shape[2], x.shape[3], self.resolution)
|
||||
|
||||
# timestep embedding
|
||||
temb = None
|
||||
|
||||
# downsampling
|
||||
hs = [self.conv_in(x)]
|
||||
for i_level in range(self.num_resolutions):
|
||||
for i_block in range(self.num_res_blocks):
|
||||
h = self.down[i_level].block[i_block](hs[-1], temb)
|
||||
if len(self.down[i_level].attn) > 0:
|
||||
h = self.down[i_level].attn[i_block](h)
|
||||
hs.append(h)
|
||||
if i_level != self.num_resolutions - 1:
|
||||
hs.append(self.down[i_level].downsample(hs[-1]))
|
||||
|
||||
# middle
|
||||
h = hs[-1]
|
||||
h = self.mid.block_1(h, temb)
|
||||
h = self.mid.attn_1(h)
|
||||
h = self.mid.block_2(h, temb)
|
||||
|
||||
# end
|
||||
h = self.norm_out(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.conv_out(h)
|
||||
return h
|
||||
|
||||
|
||||
class Decoder(nn.Module):
|
||||
def __init__(
|
||||
self,
|
||||
*,
|
||||
ch,
|
||||
out_ch,
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
dropout=0.0,
|
||||
resamp_with_conv=True,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
give_pre_end=False,
|
||||
**ignorekwargs,
|
||||
):
|
||||
super().__init__()
|
||||
self.ch = ch
|
||||
self.temb_ch = 0
|
||||
self.num_resolutions = len(ch_mult)
|
||||
self.num_res_blocks = num_res_blocks
|
||||
self.resolution = resolution
|
||||
self.in_channels = in_channels
|
||||
self.give_pre_end = give_pre_end
|
||||
|
||||
# compute in_ch_mult, block_in and curr_res at lowest res
|
||||
block_in = ch * ch_mult[self.num_resolutions - 1]
|
||||
curr_res = resolution // 2 ** (self.num_resolutions - 1)
|
||||
self.z_shape = (1, z_channels, curr_res, curr_res)
|
||||
print("Working with z of shape {} = {} dimensions.".format(self.z_shape, np.prod(self.z_shape)))
|
||||
|
||||
# z to block_in
|
||||
self.conv_in = torch.nn.Conv2d(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, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
self.mid.attn_1 = AttnBlock(block_in)
|
||||
self.mid.block_2 = ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_in, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
|
||||
# upsampling
|
||||
self.up = nn.ModuleList()
|
||||
for i_level in reversed(range(self.num_resolutions)):
|
||||
block = nn.ModuleList()
|
||||
attn = nn.ModuleList()
|
||||
block_out = ch * ch_mult[i_level]
|
||||
for i_block in range(self.num_res_blocks + 1):
|
||||
block.append(
|
||||
ResnetBlock(
|
||||
in_channels=block_in, out_channels=block_out, temb_channels=self.temb_ch, dropout=dropout
|
||||
)
|
||||
)
|
||||
block_in = block_out
|
||||
if curr_res in attn_resolutions:
|
||||
attn.append(AttnBlock(block_in))
|
||||
up = nn.Module()
|
||||
up.block = block
|
||||
up.attn = attn
|
||||
if i_level != 0:
|
||||
up.upsample = Upsample(block_in, resamp_with_conv)
|
||||
curr_res = curr_res * 2
|
||||
self.up.insert(0, up) # prepend to get consistent order
|
||||
|
||||
# end
|
||||
self.norm_out = Normalize(block_in)
|
||||
self.conv_out = torch.nn.Conv2d(block_in, out_ch, kernel_size=3, stride=1, padding=1)
|
||||
|
||||
def forward(self, z):
|
||||
# assert z.shape[1:] == self.z_shape[1:]
|
||||
self.last_z_shape = z.shape
|
||||
|
||||
# timestep embedding
|
||||
temb = None
|
||||
|
||||
# z to block_in
|
||||
h = self.conv_in(z)
|
||||
|
||||
# middle
|
||||
h = self.mid.block_1(h, temb)
|
||||
h = self.mid.attn_1(h)
|
||||
h = self.mid.block_2(h, temb)
|
||||
|
||||
# upsampling
|
||||
for i_level in reversed(range(self.num_resolutions)):
|
||||
for i_block in range(self.num_res_blocks + 1):
|
||||
h = self.up[i_level].block[i_block](h, temb)
|
||||
if len(self.up[i_level].attn) > 0:
|
||||
h = self.up[i_level].attn[i_block](h)
|
||||
if i_level != 0:
|
||||
h = self.up[i_level].upsample(h)
|
||||
|
||||
# end
|
||||
if self.give_pre_end:
|
||||
return h
|
||||
|
||||
h = self.norm_out(h)
|
||||
h = nonlinearity(h)
|
||||
h = self.conv_out(h)
|
||||
return h
|
||||
|
||||
|
||||
class VectorQuantizer(nn.Module):
|
||||
"""
|
||||
Improved version over VectorQuantizer, can be used as a drop-in replacement. Mostly avoids costly matrix
|
||||
multiplications and allows for post-hoc remapping of indices.
|
||||
"""
|
||||
|
||||
# NOTE: due to a bug the beta term was applied to the wrong term. for
|
||||
# backwards compatibility we use the buggy version by default, but you can
|
||||
# specify legacy=False to fix it.
|
||||
def __init__(self, n_e, e_dim, beta, remap=None, unknown_index="random", sane_index_shape=False, legacy=True):
|
||||
super().__init__()
|
||||
self.n_e = n_e
|
||||
self.e_dim = e_dim
|
||||
self.beta = beta
|
||||
self.legacy = legacy
|
||||
|
||||
self.embedding = nn.Embedding(self.n_e, self.e_dim)
|
||||
self.embedding.weight.data.uniform_(-1.0 / self.n_e, 1.0 / self.n_e)
|
||||
|
||||
self.remap = remap
|
||||
if self.remap is not None:
|
||||
self.register_buffer("used", torch.tensor(np.load(self.remap)))
|
||||
self.re_embed = self.used.shape[0]
|
||||
self.unknown_index = unknown_index # "random" or "extra" or integer
|
||||
if self.unknown_index == "extra":
|
||||
self.unknown_index = self.re_embed
|
||||
self.re_embed = self.re_embed + 1
|
||||
print(
|
||||
f"Remapping {self.n_e} indices to {self.re_embed} indices. "
|
||||
f"Using {self.unknown_index} for unknown indices."
|
||||
)
|
||||
else:
|
||||
self.re_embed = n_e
|
||||
|
||||
self.sane_index_shape = sane_index_shape
|
||||
|
||||
def remap_to_used(self, inds):
|
||||
ishape = inds.shape
|
||||
assert len(ishape) > 1
|
||||
inds = inds.reshape(ishape[0], -1)
|
||||
used = self.used.to(inds)
|
||||
match = (inds[:, :, None] == used[None, None, ...]).long()
|
||||
new = match.argmax(-1)
|
||||
unknown = match.sum(2) < 1
|
||||
if self.unknown_index == "random":
|
||||
new[unknown] = torch.randint(0, self.re_embed, size=new[unknown].shape).to(device=new.device)
|
||||
else:
|
||||
new[unknown] = self.unknown_index
|
||||
return new.reshape(ishape)
|
||||
|
||||
def unmap_to_all(self, inds):
|
||||
ishape = inds.shape
|
||||
assert len(ishape) > 1
|
||||
inds = inds.reshape(ishape[0], -1)
|
||||
used = self.used.to(inds)
|
||||
if self.re_embed > self.used.shape[0]: # extra token
|
||||
inds[inds >= self.used.shape[0]] = 0 # simply set to zero
|
||||
back = torch.gather(used[None, :][inds.shape[0] * [0], :], 1, inds)
|
||||
return back.reshape(ishape)
|
||||
|
||||
def forward(self, z):
|
||||
# reshape z -> (batch, height, width, channel) and flatten
|
||||
z = z.permute(0, 2, 3, 1).contiguous()
|
||||
z_flattened = z.view(-1, self.e_dim)
|
||||
# distances from z to embeddings e_j (z - e)^2 = z^2 + e^2 - 2 e * z
|
||||
|
||||
d = (
|
||||
torch.sum(z_flattened**2, dim=1, keepdim=True)
|
||||
+ torch.sum(self.embedding.weight**2, dim=1)
|
||||
- 2 * torch.einsum("bd,dn->bn", z_flattened, self.embedding.weight.t())
|
||||
)
|
||||
|
||||
min_encoding_indices = torch.argmin(d, dim=1)
|
||||
z_q = self.embedding(min_encoding_indices).view(z.shape)
|
||||
perplexity = None
|
||||
min_encodings = None
|
||||
|
||||
# compute loss for embedding
|
||||
if not self.legacy:
|
||||
loss = self.beta * torch.mean((z_q.detach() - z) ** 2) + torch.mean((z_q - z.detach()) ** 2)
|
||||
else:
|
||||
loss = torch.mean((z_q.detach() - z) ** 2) + self.beta * torch.mean((z_q - z.detach()) ** 2)
|
||||
|
||||
# preserve gradients
|
||||
z_q = z + (z_q - z).detach()
|
||||
|
||||
# reshape back to match original input shape
|
||||
z_q = z_q.permute(0, 3, 1, 2).contiguous()
|
||||
|
||||
if self.remap is not None:
|
||||
min_encoding_indices = min_encoding_indices.reshape(z.shape[0], -1) # add batch axis
|
||||
min_encoding_indices = self.remap_to_used(min_encoding_indices)
|
||||
min_encoding_indices = min_encoding_indices.reshape(-1, 1) # flatten
|
||||
|
||||
if self.sane_index_shape:
|
||||
min_encoding_indices = min_encoding_indices.reshape(z_q.shape[0], z_q.shape[2], z_q.shape[3])
|
||||
|
||||
return z_q, loss, (perplexity, min_encodings, min_encoding_indices)
|
||||
|
||||
def get_codebook_entry(self, indices, shape):
|
||||
# shape specifying (batch, height, width, channel)
|
||||
if self.remap is not None:
|
||||
indices = indices.reshape(shape[0], -1) # add batch axis
|
||||
indices = self.unmap_to_all(indices)
|
||||
indices = indices.reshape(-1) # flatten again
|
||||
|
||||
# get quantized latent vectors
|
||||
z_q = self.embedding(indices)
|
||||
|
||||
if shape is not None:
|
||||
z_q = z_q.view(shape)
|
||||
# reshape back to match original input shape
|
||||
z_q = z_q.permute(0, 3, 1, 2).contiguous()
|
||||
|
||||
return z_q
|
||||
|
||||
|
||||
class VQModel(ModelMixin, ConfigMixin):
|
||||
def __init__(
|
||||
self,
|
||||
ch,
|
||||
out_ch,
|
||||
num_res_blocks,
|
||||
attn_resolutions,
|
||||
in_channels,
|
||||
resolution,
|
||||
z_channels,
|
||||
n_embed,
|
||||
embed_dim,
|
||||
remap=None,
|
||||
sane_index_shape=False, # tell vector quantizer to return indices as bhw
|
||||
ch_mult=(1, 2, 4, 8),
|
||||
dropout=0.0,
|
||||
double_z=True,
|
||||
resamp_with_conv=True,
|
||||
give_pre_end=False,
|
||||
):
|
||||
super().__init__()
|
||||
|
||||
# register all __init__ params with self.register
|
||||
self.register_to_config(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
n_embed=n_embed,
|
||||
embed_dim=embed_dim,
|
||||
remap=remap,
|
||||
sane_index_shape=sane_index_shape,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
double_z=double_z,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
# pass init params to Encoder
|
||||
self.encoder = Encoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
double_z=double_z,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
self.quantize = VectorQuantizer(n_embed, embed_dim, beta=0.25, remap=remap, sane_index_shape=sane_index_shape)
|
||||
|
||||
# pass init params to Decoder
|
||||
self.decoder = Decoder(
|
||||
ch=ch,
|
||||
out_ch=out_ch,
|
||||
num_res_blocks=num_res_blocks,
|
||||
attn_resolutions=attn_resolutions,
|
||||
in_channels=in_channels,
|
||||
resolution=resolution,
|
||||
z_channels=z_channels,
|
||||
ch_mult=ch_mult,
|
||||
dropout=dropout,
|
||||
resamp_with_conv=resamp_with_conv,
|
||||
give_pre_end=give_pre_end,
|
||||
)
|
||||
|
||||
def encode(self, x):
|
||||
h = self.encoder(x)
|
||||
h = self.quant_conv(h)
|
||||
return h
|
||||
|
||||
def decode(self, h, force_not_quantize=False):
|
||||
# also go through quantization layer
|
||||
if not force_not_quantize:
|
||||
quant, emb_loss, info = self.quantize(h)
|
||||
else:
|
||||
quant = h
|
||||
quant = self.post_quant_conv(quant)
|
||||
dec = self.decoder(quant)
|
||||
return dec
|
||||
|
||||
|
||||
class LatentDiffusionUncondPipeline(DiffusionPipeline):
|
||||
def __init__(self, vqvae, unet, noise_scheduler):
|
||||
super().__init__()
|
||||
|
|
|
@ -22,6 +22,7 @@ import numpy as np
|
|||
import torch
|
||||
|
||||
from diffusers import (
|
||||
AutoencoderKL,
|
||||
BDDMPipeline,
|
||||
DDIMPipeline,
|
||||
DDIMScheduler,
|
||||
|
@ -44,6 +45,8 @@ from diffusers import (
|
|||
UNetGradTTSModel,
|
||||
UNetLDMModel,
|
||||
UNetModel,
|
||||
VQModel,
|
||||
AutoencoderKL,
|
||||
)
|
||||
from diffusers.configuration_utils import ConfigMixin
|
||||
from diffusers.pipeline_utils import DiffusionPipeline
|
||||
|
@ -805,6 +808,154 @@ class NCSNppModelTests(ModelTesterMixin, unittest.TestCase):
|
|||
self.assertTrue(torch.allclose(output_slice, expected_output_slice, atol=1e-3))
|
||||
|
||||
|
||||
class VQModelTests(ModelTesterMixin, unittest.TestCase):
|
||||
model_class = VQModel
|
||||
|
||||
@property
|
||||
def dummy_input(self):
|
||||
batch_size = 4
|
||||
num_channels = 3
|
||||
sizes = (32, 32)
|
||||
|
||||
image = floats_tensor((batch_size, num_channels) + sizes).to(torch_device)
|
||||
|
||||
return {"x": image}
|
||||
|
||||
@property
|
||||
def input_shape(self):
|
||||
return (3, 32, 32)
|
||||
|
||||
@property
|
||||
def output_shape(self):
|
||||
return (3, 32, 32)
|
||||
|
||||
def prepare_init_args_and_inputs_for_common(self):
|
||||
init_dict = {
|
||||
"ch": 64,
|
||||
"out_ch": 3,
|
||||
"num_res_blocks": 1,
|
||||
"attn_resolutions": [],
|
||||
"in_channels": 3,
|
||||
"resolution": 32,
|
||||
"z_channels": 3,
|
||||
"n_embed": 256,
|
||||
"embed_dim": 3,
|
||||
"sane_index_shape": False,
|
||||
"ch_mult": (1,),
|
||||
"dropout": 0.0,
|
||||
"double_z": False,
|
||||
}
|
||||
inputs_dict = self.dummy_input
|
||||
return init_dict, inputs_dict
|
||||
|
||||
def test_forward_signature(self):
|
||||
pass
|
||||
|
||||
def test_training(self):
|
||||
pass
|
||||
|
||||
def test_from_pretrained_hub(self):
|
||||
model, loading_info = VQModel.from_pretrained("fusing/vqgan-dummy", output_loading_info=True)
|
||||
self.assertIsNotNone(model)
|
||||
self.assertEqual(len(loading_info["missing_keys"]), 0)
|
||||
|
||||
model.to(torch_device)
|
||||
image = model(**self.dummy_input)
|
||||
|
||||
assert image is not None, "Make sure output is not None"
|
||||
|
||||
def test_output_pretrained(self):
|
||||
model = VQModel.from_pretrained("fusing/vqgan-dummy")
|
||||
model.eval()
|
||||
|
||||
torch.manual_seed(0)
|
||||
if torch.cuda.is_available():
|
||||
torch.cuda.manual_seed_all(0)
|
||||
|
||||
image = torch.randn(1, model.config.in_channels, model.config.resolution, model.config.resolution)
|
||||
with torch.no_grad():
|
||||
output = model(image)
|
||||
|
||||
output_slice = output[0, -1, -3:, -3:].flatten()
|
||||
# fmt: off
|
||||
expected_output_slice = torch.tensor([-1.1321, 0.1056, 0.3505, -0.6461, -0.2014, 0.0419, -0.5763, -0.8462,
|
||||
-0.4218])
|
||||
# fmt: on
|
||||
self.assertTrue(torch.allclose(output_slice, expected_output_slice, atol=1e-3))
|
||||
|
||||
|
||||
class AutoEncoderKLTests(ModelTesterMixin, unittest.TestCase):
|
||||
model_class = AutoencoderKL
|
||||
|
||||
@property
|
||||
def dummy_input(self):
|
||||
batch_size = 4
|
||||
num_channels = 3
|
||||
sizes = (32, 32)
|
||||
|
||||
image = floats_tensor((batch_size, num_channels) + sizes).to(torch_device)
|
||||
|
||||
return {"x": image}
|
||||
|
||||
@property
|
||||
def input_shape(self):
|
||||
return (3, 32, 32)
|
||||
|
||||
@property
|
||||
def output_shape(self):
|
||||
return (3, 32, 32)
|
||||
|
||||
def prepare_init_args_and_inputs_for_common(self):
|
||||
init_dict = {
|
||||
"ch": 64,
|
||||
"ch_mult": (1,),
|
||||
"embed_dim": 4,
|
||||
"in_channels": 3,
|
||||
"num_res_blocks": 1,
|
||||
"out_ch": 3,
|
||||
"resolution": 32,
|
||||
"z_channels": 4,
|
||||
"attn_resolutions": []
|
||||
}
|
||||
inputs_dict = self.dummy_input
|
||||
return init_dict, inputs_dict
|
||||
|
||||
def test_forward_signature(self):
|
||||
pass
|
||||
|
||||
def test_training(self):
|
||||
pass
|
||||
|
||||
def test_from_pretrained_hub(self):
|
||||
model, loading_info = AutoencoderKL.from_pretrained("fusing/autoencoder-kl-dummy", output_loading_info=True)
|
||||
self.assertIsNotNone(model)
|
||||
self.assertEqual(len(loading_info["missing_keys"]), 0)
|
||||
|
||||
model.to(torch_device)
|
||||
image = model(**self.dummy_input)
|
||||
|
||||
assert image is not None, "Make sure output is not None"
|
||||
|
||||
def test_output_pretrained(self):
|
||||
model = AutoencoderKL.from_pretrained("fusing/autoencoder-kl-dummy")
|
||||
model.eval()
|
||||
|
||||
torch.manual_seed(0)
|
||||
if torch.cuda.is_available():
|
||||
torch.cuda.manual_seed_all(0)
|
||||
|
||||
image = torch.randn(1, model.config.in_channels, model.config.resolution, model.config.resolution)
|
||||
with torch.no_grad():
|
||||
output = model(image, sample_posterior=True)
|
||||
|
||||
output_slice = output[0, -1, -3:, -3:].flatten()
|
||||
# fmt: off
|
||||
expected_output_slice = torch.tensor([-0.0814, -0.0229, -0.1320, -0.4123, -0.0366, -0.3473, 0.0438, -0.1662,
|
||||
0.1750])
|
||||
# fmt: on
|
||||
self.assertTrue(torch.allclose(output_slice, expected_output_slice, atol=1e-3))
|
||||
|
||||
|
||||
class PipelineTesterMixin(unittest.TestCase):
|
||||
def test_from_pretrained_save_pretrained(self):
|
||||
# 1. Load models
|
||||
|
|
Loading…
Reference in New Issue