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5 Commits

Author SHA1 Message Date
mi804
2cefc20ed6 wanx tiled encode 2025-02-21 12:58:45 +08:00
mi804
02a4c8df9f wanx vae tile decode 2025-02-21 11:27:30 +08:00
mi804
582e33ad51 save_video 2025-02-20 17:57:38 +08:00
mi804
491bbf5369 support wanxvae 2025-02-20 17:44:20 +08:00
mi804
0c92f3b2cc support wanx prompter 2025-02-20 16:08:22 +08:00
7 changed files with 1218 additions and 0 deletions

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@@ -54,6 +54,7 @@ from ..models.hunyuan_video_dit import HunyuanVideoDiT
from ..models.stepvideo_vae import StepVideoVAE
from ..models.stepvideo_dit import StepVideoModel
from ..models.wanx_vae import WanXVideoVAE
model_loader_configs = [
# These configs are provided for detecting model type automatically.
@@ -108,6 +109,7 @@ model_loader_configs = [
(None, "84ef4bd4757f60e906b54aa6a7815dc6", ["hunyuan_video_dit"], [HunyuanVideoDiT], "civitai"),
(None, "68beaf8429b7c11aa8ca05b1bd0058bd", ["stepvideo_vae"], [StepVideoVAE], "civitai"),
(None, "5c0216a2132b082c10cb7a0e0377e681", ["stepvideo_dit"], [StepVideoModel], "civitai"),
(None, "1378ea763357eea97acdef78e65d6d96", ["wanxvideo_vae"], [WanXVideoVAE], "civitai")
]
huggingface_model_loader_configs = [
# These configs are provided for detecting model type automatically.

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@@ -0,0 +1,254 @@
import math
import torch
import torch.nn as nn
import torch.nn.functional as F
def fp16_clamp(x):
if x.dtype == torch.float16 and torch.isinf(x).any():
clamp = torch.finfo(x.dtype).max - 1000
x = torch.clamp(x, min=-clamp, max=clamp)
return x
class GELU(nn.Module):
def forward(self, x):
return 0.5 * x * (1.0 + torch.tanh(
math.sqrt(2.0 / math.pi) * (x + 0.044715 * torch.pow(x, 3.0))))
class T5LayerNorm(nn.Module):
def __init__(self, dim, eps=1e-6):
super(T5LayerNorm, self).__init__()
self.dim = dim
self.eps = eps
self.weight = nn.Parameter(torch.ones(dim))
def forward(self, x):
x = x * torch.rsqrt(x.float().pow(2).mean(dim=-1, keepdim=True) +
self.eps)
if self.weight.dtype in [torch.float16, torch.bfloat16]:
x = x.type_as(self.weight)
return self.weight * x
class T5Attention(nn.Module):
def __init__(self, dim, dim_attn, num_heads, dropout=0.1):
assert dim_attn % num_heads == 0
super(T5Attention, self).__init__()
self.dim = dim
self.dim_attn = dim_attn
self.num_heads = num_heads
self.head_dim = dim_attn // num_heads
# layers
self.q = nn.Linear(dim, dim_attn, bias=False)
self.k = nn.Linear(dim, dim_attn, bias=False)
self.v = nn.Linear(dim, dim_attn, bias=False)
self.o = nn.Linear(dim_attn, dim, bias=False)
self.dropout = nn.Dropout(dropout)
def forward(self, x, context=None, mask=None, pos_bias=None):
"""
x: [B, L1, C].
context: [B, L2, C] or None.
mask: [B, L2] or [B, L1, L2] or None.
"""
# check inputs
context = x if context is None else context
b, n, c = x.size(0), self.num_heads, self.head_dim
# compute query, key, value
q = self.q(x).view(b, -1, n, c)
k = self.k(context).view(b, -1, n, c)
v = self.v(context).view(b, -1, n, c)
# attention bias
attn_bias = x.new_zeros(b, n, q.size(1), k.size(1))
if pos_bias is not None:
attn_bias += pos_bias
if mask is not None:
assert mask.ndim in [2, 3]
mask = mask.view(b, 1, 1,
-1) if mask.ndim == 2 else mask.unsqueeze(1)
attn_bias.masked_fill_(mask == 0, torch.finfo(x.dtype).min)
# compute attention (T5 does not use scaling)
attn = torch.einsum('binc,bjnc->bnij', q, k) + attn_bias
attn = F.softmax(attn.float(), dim=-1).type_as(attn)
x = torch.einsum('bnij,bjnc->binc', attn, v)
# output
x = x.reshape(b, -1, n * c)
x = self.o(x)
x = self.dropout(x)
return x
class T5FeedForward(nn.Module):
def __init__(self, dim, dim_ffn, dropout=0.1):
super(T5FeedForward, self).__init__()
self.dim = dim
self.dim_ffn = dim_ffn
# layers
self.gate = nn.Sequential(nn.Linear(dim, dim_ffn, bias=False), GELU())
self.fc1 = nn.Linear(dim, dim_ffn, bias=False)
self.fc2 = nn.Linear(dim_ffn, dim, bias=False)
self.dropout = nn.Dropout(dropout)
def forward(self, x):
x = self.fc1(x) * self.gate(x)
x = self.dropout(x)
x = self.fc2(x)
x = self.dropout(x)
return x
class T5SelfAttention(nn.Module):
def __init__(self,
dim,
dim_attn,
dim_ffn,
num_heads,
num_buckets,
shared_pos=True,
dropout=0.1):
super(T5SelfAttention, self).__init__()
self.dim = dim
self.dim_attn = dim_attn
self.dim_ffn = dim_ffn
self.num_heads = num_heads
self.num_buckets = num_buckets
self.shared_pos = shared_pos
# layers
self.norm1 = T5LayerNorm(dim)
self.attn = T5Attention(dim, dim_attn, num_heads, dropout)
self.norm2 = T5LayerNorm(dim)
self.ffn = T5FeedForward(dim, dim_ffn, dropout)
self.pos_embedding = None if shared_pos else T5RelativeEmbedding(
num_buckets, num_heads, bidirectional=True)
def forward(self, x, mask=None, pos_bias=None):
e = pos_bias if self.shared_pos else self.pos_embedding(
x.size(1), x.size(1))
x = fp16_clamp(x + self.attn(self.norm1(x), mask=mask, pos_bias=e))
x = fp16_clamp(x + self.ffn(self.norm2(x)))
return x
class T5RelativeEmbedding(nn.Module):
def __init__(self, num_buckets, num_heads, bidirectional, max_dist=128):
super(T5RelativeEmbedding, self).__init__()
self.num_buckets = num_buckets
self.num_heads = num_heads
self.bidirectional = bidirectional
self.max_dist = max_dist
# layers
self.embedding = nn.Embedding(num_buckets, num_heads)
def forward(self, lq, lk):
device = self.embedding.weight.device
# rel_pos = torch.arange(lk).unsqueeze(0).to(device) - \
# torch.arange(lq).unsqueeze(1).to(device)
rel_pos = torch.arange(lk, device=device).unsqueeze(0) - \
torch.arange(lq, device=device).unsqueeze(1)
rel_pos = self._relative_position_bucket(rel_pos)
rel_pos_embeds = self.embedding(rel_pos)
rel_pos_embeds = rel_pos_embeds.permute(2, 0, 1).unsqueeze(
0) # [1, N, Lq, Lk]
return rel_pos_embeds.contiguous()
def _relative_position_bucket(self, rel_pos):
# preprocess
if self.bidirectional:
num_buckets = self.num_buckets // 2
rel_buckets = (rel_pos > 0).long() * num_buckets
rel_pos = torch.abs(rel_pos)
else:
num_buckets = self.num_buckets
rel_buckets = 0
rel_pos = -torch.min(rel_pos, torch.zeros_like(rel_pos))
# embeddings for small and large positions
max_exact = num_buckets // 2
rel_pos_large = max_exact + (torch.log(rel_pos.float() / max_exact) /
math.log(self.max_dist / max_exact) *
(num_buckets - max_exact)).long()
rel_pos_large = torch.min(
rel_pos_large, torch.full_like(rel_pos_large, num_buckets - 1))
rel_buckets += torch.where(rel_pos < max_exact, rel_pos, rel_pos_large)
return rel_buckets
def init_weights(m):
if isinstance(m, T5LayerNorm):
nn.init.ones_(m.weight)
elif isinstance(m, T5FeedForward):
nn.init.normal_(m.gate[0].weight, std=m.dim**-0.5)
nn.init.normal_(m.fc1.weight, std=m.dim**-0.5)
nn.init.normal_(m.fc2.weight, std=m.dim_ffn**-0.5)
elif isinstance(m, T5Attention):
nn.init.normal_(m.q.weight, std=(m.dim * m.dim_attn)**-0.5)
nn.init.normal_(m.k.weight, std=m.dim**-0.5)
nn.init.normal_(m.v.weight, std=m.dim**-0.5)
nn.init.normal_(m.o.weight, std=(m.num_heads * m.dim_attn)**-0.5)
elif isinstance(m, T5RelativeEmbedding):
nn.init.normal_(
m.embedding.weight, std=(2 * m.num_buckets * m.num_heads)**-0.5)
class WanXTextEncoder(torch.nn.Module):
def __init__(self,
vocab=256384,
dim=4096,
dim_attn=4096,
dim_ffn=10240,
num_heads=64,
num_layers=24,
num_buckets=32,
shared_pos=False,
dropout=0.1):
super(WanXTextEncoder, self).__init__()
self.dim = dim
self.dim_attn = dim_attn
self.dim_ffn = dim_ffn
self.num_heads = num_heads
self.num_layers = num_layers
self.num_buckets = num_buckets
self.shared_pos = shared_pos
# layers
self.token_embedding = vocab if isinstance(vocab, nn.Embedding) \
else nn.Embedding(vocab, dim)
self.pos_embedding = T5RelativeEmbedding(
num_buckets, num_heads, bidirectional=True) if shared_pos else None
self.dropout = nn.Dropout(dropout)
self.blocks = nn.ModuleList([
T5SelfAttention(dim, dim_attn, dim_ffn, num_heads, num_buckets,
shared_pos, dropout) for _ in range(num_layers)
])
self.norm = T5LayerNorm(dim)
# initialize weights
self.apply(init_weights)
def forward(self, ids, mask=None):
x = self.token_embedding(ids)
x = self.dropout(x)
e = self.pos_embedding(x.size(1),
x.size(1)) if self.shared_pos else None
for block in self.blocks:
x = block(x, mask, pos_bias=e)
x = self.norm(x)
x = self.dropout(x)
return x

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@@ -0,0 +1,794 @@
from einops import rearrange, repeat
import torch
import torch.nn as nn
import torch.nn.functional as F
from tqdm import tqdm
CACHE_T = 2
def block_causal_mask(x, block_size):
# params
b, n, s, _, device = *x.size(), x.device
assert s % block_size == 0
num_blocks = s // block_size
# build mask
mask = torch.zeros(b, n, s, s, dtype=torch.bool, device=device)
for i in range(num_blocks):
mask[:, :,
i * block_size:(i + 1) * block_size, :(i + 1) * block_size] = 1
return mask
class CausalConv3d(nn.Conv3d):
"""
Causal 3d convolusion.
"""
def __init__(self, *args, **kwargs):
super().__init__(*args, **kwargs)
self._padding = (self.padding[2], self.padding[2], self.padding[1],
self.padding[1], 2 * self.padding[0], 0)
self.padding = (0, 0, 0)
def forward(self, x, cache_x=None):
padding = list(self._padding)
if cache_x is not None and self._padding[4] > 0:
cache_x = cache_x.to(x.device)
x = torch.cat([cache_x, x], dim=2)
padding[4] -= cache_x.shape[2]
x = F.pad(x, padding)
return super().forward(x)
class RMS_norm(nn.Module):
def __init__(self, dim, channel_first=True, images=True, bias=False):
super().__init__()
broadcastable_dims = (1, 1, 1) if not images else (1, 1)
shape = (dim, *broadcastable_dims) if channel_first else (dim,)
self.channel_first = channel_first
self.scale = dim**0.5
self.gamma = nn.Parameter(torch.ones(shape))
self.bias = nn.Parameter(torch.zeros(shape)) if bias else 0.
def forward(self, x):
return F.normalize(
x, dim=(1 if self.channel_first else
-1)) * self.scale * self.gamma + self.bias
class Upsample(nn.Upsample):
def forward(self, x):
"""
Fix bfloat16 support for nearest neighbor interpolation.
"""
return super().forward(x.float()).type_as(x)
class Resample(nn.Module):
def __init__(self, dim, mode):
assert mode in ('none', 'upsample2d', 'upsample3d', 'downsample2d',
'downsample3d')
super().__init__()
self.dim = dim
self.mode = mode
# layers
if mode == 'upsample2d':
self.resample = nn.Sequential(
Upsample(scale_factor=(2., 2.), mode='nearest-exact'),
nn.Conv2d(dim, dim // 2, 3, padding=1))
elif mode == 'upsample3d':
self.resample = nn.Sequential(
Upsample(scale_factor=(2., 2.), mode='nearest-exact'),
nn.Conv2d(dim, dim // 2, 3, padding=1))
self.time_conv = CausalConv3d(dim,
dim * 2, (3, 1, 1),
padding=(1, 0, 0))
elif mode == 'downsample2d':
self.resample = nn.Sequential(
nn.ZeroPad2d((0, 1, 0, 1)),
nn.Conv2d(dim, dim, 3, stride=(2, 2)))
elif mode == 'downsample3d':
self.resample = nn.Sequential(
nn.ZeroPad2d((0, 1, 0, 1)),
nn.Conv2d(dim, dim, 3, stride=(2, 2)))
self.time_conv = CausalConv3d(dim,
dim, (3, 1, 1),
stride=(2, 1, 1),
padding=(0, 0, 0))
else:
self.resample = nn.Identity()
def forward(self, x, feat_cache=None, feat_idx=[0]):
b, c, t, h, w = x.size()
if self.mode == 'upsample3d':
if feat_cache is not None:
idx = feat_idx[0]
if feat_cache[idx] is None:
feat_cache[idx] = 'Rep'
feat_idx[0] += 1
else:
cache_x = x[:, :, -CACHE_T:, :, :].clone()
if cache_x.shape[2] < 2 and feat_cache[
idx] is not None and feat_cache[idx] != 'Rep':
# cache last frame of last two chunk
cache_x = torch.cat([
feat_cache[idx][:, :, -1, :, :].unsqueeze(2).to(
cache_x.device), cache_x
],
dim=2)
if cache_x.shape[2] < 2 and feat_cache[
idx] is not None and feat_cache[idx] == 'Rep':
cache_x = torch.cat([
torch.zeros_like(cache_x).to(cache_x.device),
cache_x
],
dim=2)
if feat_cache[idx] == 'Rep':
x = self.time_conv(x)
else:
x = self.time_conv(x, feat_cache[idx])
feat_cache[idx] = cache_x
feat_idx[0] += 1
x = x.reshape(b, 2, c, t, h, w)
x = torch.stack((x[:, 0, :, :, :, :], x[:, 1, :, :, :, :]),
3)
x = x.reshape(b, c, t * 2, h, w)
t = x.shape[2]
x = rearrange(x, 'b c t h w -> (b t) c h w')
x = self.resample(x)
x = rearrange(x, '(b t) c h w -> b c t h w', t=t)
if self.mode == 'downsample3d':
if feat_cache is not None:
idx = feat_idx[0]
if feat_cache[idx] is None:
feat_cache[idx] = x.clone()
feat_idx[0] += 1
else:
cache_x = x[:, :, -1:, :, :].clone()
x = self.time_conv(
torch.cat([feat_cache[idx][:, :, -1:, :, :], x], 2))
feat_cache[idx] = cache_x
feat_idx[0] += 1
return x
def init_weight(self, conv):
conv_weight = conv.weight
nn.init.zeros_(conv_weight)
c1, c2, t, h, w = conv_weight.size()
one_matrix = torch.eye(c1, c2)
init_matrix = one_matrix
nn.init.zeros_(conv_weight)
conv_weight.data[:, :, 1, 0, 0] = init_matrix
conv.weight.data.copy_(conv_weight)
nn.init.zeros_(conv.bias.data)
def init_weight2(self, conv):
conv_weight = conv.weight.data
nn.init.zeros_(conv_weight)
c1, c2, t, h, w = conv_weight.size()
init_matrix = torch.eye(c1 // 2, c2)
conv_weight[:c1 // 2, :, -1, 0, 0] = init_matrix
conv_weight[c1 // 2:, :, -1, 0, 0] = init_matrix
conv.weight.data.copy_(conv_weight)
nn.init.zeros_(conv.bias.data)
class ResidualBlock(nn.Module):
def __init__(self, in_dim, out_dim, dropout=0.0):
super().__init__()
self.in_dim = in_dim
self.out_dim = out_dim
# layers
self.residual = nn.Sequential(
RMS_norm(in_dim, images=False), nn.SiLU(),
CausalConv3d(in_dim, out_dim, 3, padding=1),
RMS_norm(out_dim, images=False), nn.SiLU(), nn.Dropout(dropout),
CausalConv3d(out_dim, out_dim, 3, padding=1))
self.shortcut = CausalConv3d(in_dim, out_dim, 1) \
if in_dim != out_dim else nn.Identity()
def forward(self, x, feat_cache=None, feat_idx=[0]):
h = self.shortcut(x)
for layer in self.residual:
if isinstance(layer, CausalConv3d) and feat_cache is not None:
idx = feat_idx[0]
cache_x = x[:, :, -CACHE_T:, :, :].clone()
if cache_x.shape[2] < 2 and feat_cache[idx] is not None:
# cache last frame of last two chunk
cache_x = torch.cat([
feat_cache[idx][:, :, -1, :, :].unsqueeze(2).to(
cache_x.device), cache_x
],
dim=2)
x = layer(x, feat_cache[idx])
feat_cache[idx] = cache_x
feat_idx[0] += 1
else:
x = layer(x)
return x + h
class AttentionBlock(nn.Module):
"""
Causal self-attention with a single head.
"""
def __init__(self, dim):
super().__init__()
self.dim = dim
# layers
self.norm = RMS_norm(dim)
self.to_qkv = nn.Conv2d(dim, dim * 3, 1)
self.proj = nn.Conv2d(dim, dim, 1)
# zero out the last layer params
nn.init.zeros_(self.proj.weight)
def forward(self, x):
identity = x
b, c, t, h, w = x.size()
x = rearrange(x, 'b c t h w -> (b t) c h w')
x = self.norm(x)
# compute query, key, value
q, k, v = self.to_qkv(x).reshape(b * t, 1, c * 3, -1).permute(
0, 1, 3, 2).contiguous().chunk(3, dim=-1)
# apply attention
x = F.scaled_dot_product_attention(
q,
k,
v,
#attn_mask=block_causal_mask(q, block_size=h * w)
)
x = x.squeeze(1).permute(0, 2, 1).reshape(b * t, c, h, w)
# output
x = self.proj(x)
x = rearrange(x, '(b t) c h w-> b c t h w', t=t)
return x + identity
class Encoder3d(nn.Module):
def __init__(self,
dim=128,
z_dim=4,
dim_mult=[1, 2, 4, 4],
num_res_blocks=2,
attn_scales=[],
temperal_downsample=[True, True, False],
dropout=0.0):
super().__init__()
self.dim = dim
self.z_dim = z_dim
self.dim_mult = dim_mult
self.num_res_blocks = num_res_blocks
self.attn_scales = attn_scales
self.temperal_downsample = temperal_downsample
# dimensions
dims = [dim * u for u in [1] + dim_mult]
scale = 1.0
# init block
self.conv1 = CausalConv3d(3, dims[0], 3, padding=1)
# downsample blocks
downsamples = []
for i, (in_dim, out_dim) in enumerate(zip(dims[:-1], dims[1:])):
# residual (+attention) blocks
for _ in range(num_res_blocks):
downsamples.append(ResidualBlock(in_dim, out_dim, dropout))
if scale in attn_scales:
downsamples.append(AttentionBlock(out_dim))
in_dim = out_dim
# downsample block
if i != len(dim_mult) - 1:
mode = 'downsample3d' if temperal_downsample[
i] else 'downsample2d'
downsamples.append(Resample(out_dim, mode=mode))
scale /= 2.0
self.downsamples = nn.Sequential(*downsamples)
# middle blocks
self.middle = nn.Sequential(ResidualBlock(out_dim, out_dim, dropout),
AttentionBlock(out_dim),
ResidualBlock(out_dim, out_dim, dropout))
# output blocks
self.head = nn.Sequential(RMS_norm(out_dim, images=False), nn.SiLU(),
CausalConv3d(out_dim, z_dim, 3, padding=1))
def forward(self, x, feat_cache=None, feat_idx=[0]):
if feat_cache is not None:
idx = feat_idx[0]
cache_x = x[:, :, -CACHE_T:, :, :].clone()
if cache_x.shape[2] < 2 and feat_cache[idx] is not None:
# cache last frame of last two chunk
cache_x = torch.cat([
feat_cache[idx][:, :, -1, :, :].unsqueeze(2).to(
cache_x.device), cache_x
],
dim=2)
x = self.conv1(x, feat_cache[idx])
feat_cache[idx] = cache_x
feat_idx[0] += 1
else:
x = self.conv1(x)
## downsamples
for layer in self.downsamples:
if feat_cache is not None:
x = layer(x, feat_cache, feat_idx)
else:
x = layer(x)
## middle
for layer in self.middle:
if isinstance(layer, ResidualBlock) and feat_cache is not None:
x = layer(x, feat_cache, feat_idx)
else:
x = layer(x)
## head
for layer in self.head:
if isinstance(layer, CausalConv3d) and feat_cache is not None:
idx = feat_idx[0]
cache_x = x[:, :, -CACHE_T:, :, :].clone()
if cache_x.shape[2] < 2 and feat_cache[idx] is not None:
# cache last frame of last two chunk
cache_x = torch.cat([
feat_cache[idx][:, :, -1, :, :].unsqueeze(2).to(
cache_x.device), cache_x
],
dim=2)
x = layer(x, feat_cache[idx])
feat_cache[idx] = cache_x
feat_idx[0] += 1
else:
x = layer(x)
return x
class Decoder3d(nn.Module):
def __init__(self,
dim=128,
z_dim=4,
dim_mult=[1, 2, 4, 4],
num_res_blocks=2,
attn_scales=[],
temperal_upsample=[False, True, True],
dropout=0.0):
super().__init__()
self.dim = dim
self.z_dim = z_dim
self.dim_mult = dim_mult
self.num_res_blocks = num_res_blocks
self.attn_scales = attn_scales
self.temperal_upsample = temperal_upsample
# dimensions
dims = [dim * u for u in [dim_mult[-1]] + dim_mult[::-1]]
scale = 1.0 / 2**(len(dim_mult) - 2)
# init block
self.conv1 = CausalConv3d(z_dim, dims[0], 3, padding=1)
# middle blocks
self.middle = nn.Sequential(ResidualBlock(dims[0], dims[0], dropout),
AttentionBlock(dims[0]),
ResidualBlock(dims[0], dims[0], dropout))
# upsample blocks
upsamples = []
for i, (in_dim, out_dim) in enumerate(zip(dims[:-1], dims[1:])):
# residual (+attention) blocks
if i == 1 or i == 2 or i == 3:
in_dim = in_dim // 2
for _ in range(num_res_blocks + 1):
upsamples.append(ResidualBlock(in_dim, out_dim, dropout))
if scale in attn_scales:
upsamples.append(AttentionBlock(out_dim))
in_dim = out_dim
# upsample block
if i != len(dim_mult) - 1:
mode = 'upsample3d' if temperal_upsample[i] else 'upsample2d'
upsamples.append(Resample(out_dim, mode=mode))
scale *= 2.0
self.upsamples = nn.Sequential(*upsamples)
# output blocks
self.head = nn.Sequential(RMS_norm(out_dim, images=False), nn.SiLU(),
CausalConv3d(out_dim, 3, 3, padding=1))
def forward(self, x, feat_cache=None, feat_idx=[0]):
## conv1
if feat_cache is not None:
idx = feat_idx[0]
cache_x = x[:, :, -CACHE_T:, :, :].clone()
if cache_x.shape[2] < 2 and feat_cache[idx] is not None:
# cache last frame of last two chunk
cache_x = torch.cat([
feat_cache[idx][:, :, -1, :, :].unsqueeze(2).to(
cache_x.device), cache_x
],
dim=2)
x = self.conv1(x, feat_cache[idx])
feat_cache[idx] = cache_x
feat_idx[0] += 1
else:
x = self.conv1(x)
## middle
for layer in self.middle:
if isinstance(layer, ResidualBlock) and feat_cache is not None:
x = layer(x, feat_cache, feat_idx)
else:
x = layer(x)
## upsamples
for layer in self.upsamples:
if feat_cache is not None:
x = layer(x, feat_cache, feat_idx)
else:
x = layer(x)
## head
for layer in self.head:
if isinstance(layer, CausalConv3d) and feat_cache is not None:
idx = feat_idx[0]
cache_x = x[:, :, -CACHE_T:, :, :].clone()
if cache_x.shape[2] < 2 and feat_cache[idx] is not None:
# cache last frame of last two chunk
cache_x = torch.cat([
feat_cache[idx][:, :, -1, :, :].unsqueeze(2).to(
cache_x.device), cache_x
],
dim=2)
x = layer(x, feat_cache[idx])
feat_cache[idx] = cache_x
feat_idx[0] += 1
else:
x = layer(x)
return x
def count_conv3d(model):
count = 0
for m in model.modules():
if isinstance(m, CausalConv3d):
count += 1
return count
class VideoVAE_(nn.Module):
def __init__(self,
dim=96,
z_dim=16,
dim_mult=[1, 2, 4, 4],
num_res_blocks=2,
attn_scales=[],
temperal_downsample=[False, True, True],
dropout=0.0):
super().__init__()
self.dim = dim
self.z_dim = z_dim
self.dim_mult = dim_mult
self.num_res_blocks = num_res_blocks
self.attn_scales = attn_scales
self.temperal_downsample = temperal_downsample
self.temperal_upsample = temperal_downsample[::-1]
# modules
self.encoder = Encoder3d(dim, z_dim * 2, dim_mult, num_res_blocks,
attn_scales, self.temperal_downsample, dropout)
self.conv1 = CausalConv3d(z_dim * 2, z_dim * 2, 1)
self.conv2 = CausalConv3d(z_dim, z_dim, 1)
self.decoder = Decoder3d(dim, z_dim, dim_mult, num_res_blocks,
attn_scales, self.temperal_upsample, dropout)
def forward(self, x):
mu, log_var = self.encode(x)
z = self.reparameterize(mu, log_var)
x_recon = self.decode(z)
return x_recon, mu, log_var
def encode(self, x, scale):
self.clear_cache()
## cache
t = x.shape[2]
iter_ = 1 + (t - 1) // 4
for i in range(iter_):
self._enc_conv_idx = [0]
if i == 0:
out = self.encoder(x[:, :, :1, :, :],
feat_cache=self._enc_feat_map,
feat_idx=self._enc_conv_idx)
else:
out_ = self.encoder(x[:, :, 1 + 4 * (i - 1):1 + 4 * i, :, :],
feat_cache=self._enc_feat_map,
feat_idx=self._enc_conv_idx)
out = torch.cat([out, out_], 2)
mu, log_var = self.conv1(out).chunk(2, dim=1)
if isinstance(scale[0], torch.Tensor):
scale = [s.to(dtype=mu.dtype, device=mu.device) for s in scale]
mu = (mu - scale[0].view(1, self.z_dim, 1, 1, 1)) * scale[1].view(
1, self.z_dim, 1, 1, 1)
else:
scale = scale.to(dtype=mu.dtype, device=mu.device)
mu = (mu - scale[0]) * scale[1]
return mu
def decode(self, z, scale):
self.clear_cache()
# z: [b,c,t,h,w]
if isinstance(scale[0], torch.Tensor):
scale = [s.to(dtype=z.dtype, device=z.device) for s in scale]
z = z / scale[1].view(1, self.z_dim, 1, 1, 1) + scale[0].view(
1, self.z_dim, 1, 1, 1)
else:
scale = scale.to(dtype=z.dtype, device=z.device)
z = z / scale[1] + scale[0]
iter_ = z.shape[2]
x = self.conv2(z)
for i in range(iter_):
self._conv_idx = [0]
if i == 0:
out = self.decoder(x[:, :, i:i + 1, :, :],
feat_cache=self._feat_map,
feat_idx=self._conv_idx)
else:
out_ = self.decoder(x[:, :, i:i + 1, :, :],
feat_cache=self._feat_map,
feat_idx=self._conv_idx)
out = torch.cat([out, out_], 2) # may add tensor offload
return out
def reparameterize(self, mu, log_var):
std = torch.exp(0.5 * log_var)
eps = torch.randn_like(std)
return eps * std + mu
def sample(self, imgs, deterministic=False):
mu, log_var = self.encode(imgs)
if deterministic:
return mu
std = torch.exp(0.5 * log_var.clamp(-30.0, 20.0))
return mu + std * torch.randn_like(std)
def clear_cache(self):
self._conv_num = count_conv3d(self.decoder)
self._conv_idx = [0]
self._feat_map = [None] * self._conv_num
# cache encode
self._enc_conv_num = count_conv3d(self.encoder)
self._enc_conv_idx = [0]
self._enc_feat_map = [None] * self._enc_conv_num
class WanXVideoVAE(nn.Module):
def __init__(self, z_dim=16):
super().__init__()
mean = [
-0.7571, -0.7089, -0.9113, 0.1075, -0.1745, 0.9653, -0.1517, 1.5508,
0.4134, -0.0715, 0.5517, -0.3632, -0.1922, -0.9497, 0.2503, -0.2921
]
std = [
2.8184, 1.4541, 2.3275, 2.6558, 1.2196, 1.7708, 2.6052, 2.0743,
3.2687, 2.1526, 2.8652, 1.5579, 1.6382, 1.1253, 2.8251, 1.9160
]
self.mean = torch.tensor(mean)
self.std = torch.tensor(std)
self.scale = [self.mean, 1.0 / self.std]
# init model
self.model = VideoVAE_(z_dim=z_dim).eval().requires_grad_(False)
self.upsampling_factor = 8
def build_1d_mask(self, length, left_bound, right_bound, border_width):
x = torch.ones((length,))
if not left_bound:
x[:border_width] = (torch.arange(border_width) + 1) / border_width
if not right_bound:
x[-border_width:] = torch.flip((torch.arange(border_width) + 1) / border_width, dims=(0,))
return x
def build_mask(self, data, is_bound, border_width):
_, _, _, H, W = data.shape
h = self.build_1d_mask(H, is_bound[0], is_bound[1], border_width[0])
w = self.build_1d_mask(W, is_bound[2], is_bound[3], border_width[1])
h = repeat(h, "H -> H W", H=H, W=W)
w = repeat(w, "W -> H W", H=H, W=W)
mask = torch.stack([h, w]).min(dim=0).values
mask = rearrange(mask, "H W -> 1 1 1 H W")
return mask
def tiled_decode(self, hidden_states, device, tile_size, tile_stride):
_, _, T, H, W = hidden_states.shape
size_h, size_w = tile_size
stride_h, stride_w = tile_stride
# Split tasks
tasks = []
for h in range(0, H, stride_h):
if (h-stride_h >= 0 and h-stride_h+size_h >= H): continue
for w in range(0, W, stride_w):
if (w-stride_w >= 0 and w-stride_w+size_w >= W): continue
h_, w_ = h + size_h, w + size_w
tasks.append((h, h_, w, w_))
data_device = "cpu"
computation_device = device
out_T = T * 4 - 3
weight = torch.zeros((1, 1, out_T, H * self.upsampling_factor, W * self.upsampling_factor), dtype=hidden_states.dtype, device=data_device)
values = torch.zeros((1, 3, out_T, H * self.upsampling_factor, W * self.upsampling_factor), dtype=hidden_states.dtype, device=data_device)
for h, h_, w, w_ in tqdm(tasks, desc="VAE decoding"):
hidden_states_batch = hidden_states[:, :, :, h:h_, w:w_].to(computation_device)
hidden_states_batch = self.model.decode(hidden_states_batch, self.scale).to(data_device)
mask = self.build_mask(
hidden_states_batch,
is_bound=(h==0, h_>=H, w==0, w_>=W),
border_width=((size_h - stride_h) * self.upsampling_factor, (size_w - stride_w) * self.upsampling_factor)
).to(dtype=hidden_states.dtype, device=data_device)
target_h = h * self.upsampling_factor
target_w = w * self.upsampling_factor
values[
:,
:,
:,
target_h:target_h + hidden_states_batch.shape[3],
target_w:target_w + hidden_states_batch.shape[4],
] += hidden_states_batch * mask
weight[
:,
:,
:,
target_h: target_h + hidden_states_batch.shape[3],
target_w: target_w + hidden_states_batch.shape[4],
] += mask
values = values / weight
values = values.float().clamp_(-1, 1)
return values
def tiled_encode(self, video, device, tile_size, tile_stride):
_, _, T, H, W = video.shape
size_h, size_w = tile_size
stride_h, stride_w = tile_stride
# Split tasks
tasks = []
for h in range(0, H, stride_h):
if (h-stride_h >= 0 and h-stride_h+size_h >= H): continue
for w in range(0, W, stride_w):
if (w-stride_w >= 0 and w-stride_w+size_w >= W): continue
h_, w_ = h + size_h, w + size_w
tasks.append((h, h_, w, w_))
data_device = "cpu"
computation_device = device
out_T = (T + 3) // 4
weight = torch.zeros((1, 1, out_T, H // self.upsampling_factor, W // self.upsampling_factor), dtype=video.dtype, device=data_device)
values = torch.zeros((1, 16, out_T, H // self.upsampling_factor, W // self.upsampling_factor), dtype=video.dtype, device=data_device)
for h, h_, w, w_ in tqdm(tasks, desc="VAE encoding"):
hidden_states_batch = video[:, :, :, h:h_, w:w_].to(computation_device)
hidden_states_batch = self.model.encode(hidden_states_batch, self.scale).to(data_device)
mask = self.build_mask(
hidden_states_batch,
is_bound=(h==0, h_>=H, w==0, w_>=W),
border_width=((size_h - stride_h) // self.upsampling_factor, (size_w - stride_w) // self.upsampling_factor)
).to(dtype=video.dtype, device=data_device)
target_h = h // self.upsampling_factor
target_w = w // self.upsampling_factor
values[
:,
:,
:,
target_h:target_h + hidden_states_batch.shape[3],
target_w:target_w + hidden_states_batch.shape[4],
] += hidden_states_batch * mask
weight[
:,
:,
:,
target_h: target_h + hidden_states_batch.shape[3],
target_w: target_w + hidden_states_batch.shape[4],
] += mask
values = values / weight
values = values.float()
return values
def single_encode(self, video, device):
video = video.to(device)
x = self.model.encode(video, self.scale)
return x.float()
def single_decode(self, hidden_state, device):
hidden_state = hidden_state.to(device)
video = self.model.decode(hidden_state, self.scale)
return video.float().clamp_(-1, 1)
def encode(self, videos, device, tiled=False, tile_size=(272, 272), tile_stride=(144, 128)):
videos = [video.to("cpu") for video in videos]
hidden_states = []
for video in videos:
video = video.unsqueeze(0)
if tiled:
assert tile_size[0] % self.upsampling_factor == 0 and tile_size[1] % self.upsampling_factor == 0, f"tile_size must be devisible by {self.upsampling_factor}"
hidden_state = self.tiled_encode(video, device, tile_size, tile_stride)
else:
hidden_state = self.single_encode(video, device)
hidden_state = hidden_state.squeeze(0)
hidden_states.append(hidden_state)
return hidden_states
def decode(self, hidden_states, device, tiled=False, tile_size=(34, 34), tile_stride=(18, 16)):
hidden_states = [hidden_state.to("cpu") for hidden_state in hidden_states]
videos = []
for hidden_state in hidden_states:
hidden_state = hidden_state.unsqueeze(0)
if tiled:
video = self.tiled_decode(hidden_state, device, tile_size, tile_stride)
else:
video = self.single_decode(hidden_state, device)
video = video.squeeze(0)
videos.append(video)
return videos
@staticmethod
def state_dict_converter():
return WanXVideoVAEStateDictConverter()
class WanXVideoVAEStateDictConverter:
def __init__(self):
pass
def from_civitai(self, state_dict):
state_dict_ = {}
for name in state_dict['model_state']:
state_dict_['model.' + name] = state_dict['model_state'][name]
return state_dict_

View File

@@ -9,3 +9,4 @@ from .omost import OmostPromter
from .cog_prompter import CogPrompter
from .hunyuan_video_prompter import HunyuanVideoPrompter
from .stepvideo_prompter import StepVideoPrompter
from .wanx_prompter import WanXPrompter

View File

@@ -0,0 +1,103 @@
from .base_prompter import BasePrompter
from ..models.wanx_text_encoder import WanXTextEncoder
from transformers import AutoTokenizer
import os, torch
import ftfy
import html
import string
import regex as re
def basic_clean(text):
text = ftfy.fix_text(text)
text = html.unescape(html.unescape(text))
return text.strip()
def whitespace_clean(text):
text = re.sub(r'\s+', ' ', text)
text = text.strip()
return text
def canonicalize(text, keep_punctuation_exact_string=None):
text = text.replace('_', ' ')
if keep_punctuation_exact_string:
text = keep_punctuation_exact_string.join(
part.translate(str.maketrans('', '', string.punctuation))
for part in text.split(keep_punctuation_exact_string))
else:
text = text.translate(str.maketrans('', '', string.punctuation))
text = text.lower()
text = re.sub(r'\s+', ' ', text)
return text.strip()
class HuggingfaceTokenizer:
def __init__(self, name, seq_len=None, clean=None, **kwargs):
assert clean in (None, 'whitespace', 'lower', 'canonicalize')
self.name = name
self.seq_len = seq_len
self.clean = clean
# init tokenizer
self.tokenizer = AutoTokenizer.from_pretrained(name, **kwargs)
self.vocab_size = self.tokenizer.vocab_size
def __call__(self, sequence, **kwargs):
return_mask = kwargs.pop('return_mask', False)
# arguments
_kwargs = {'return_tensors': 'pt'}
if self.seq_len is not None:
_kwargs.update({
'padding': 'max_length',
'truncation': True,
'max_length': self.seq_len
})
_kwargs.update(**kwargs)
# tokenization
if isinstance(sequence, str):
sequence = [sequence]
if self.clean:
sequence = [self._clean(u) for u in sequence]
ids = self.tokenizer(sequence, **_kwargs)
# output
if return_mask:
return ids.input_ids, ids.attention_mask
else:
return ids.input_ids
def _clean(self, text):
if self.clean == 'whitespace':
text = whitespace_clean(basic_clean(text))
elif self.clean == 'lower':
text = whitespace_clean(basic_clean(text)).lower()
elif self.clean == 'canonicalize':
text = canonicalize(basic_clean(text))
return text
class WanXPrompter(BasePrompter):
def __init__(self, tokenizer_path=None, text_len=512):
if tokenizer_path is None:
base_path = os.path.dirname(os.path.dirname(__file__))
tokenizer_path = os.path.join(
base_path, "tokenizer_configs/hunyuan_dit/tokenizer")
super().__init__()
self.tokenizer = HuggingfaceTokenizer(name=tokenizer_path, seq_len=text_len, clean='whitespace')
self.text_encoder = None
def fetch_models(self, text_encoder: WanXTextEncoder = None):
self.text_encoder = text_encoder
def encode_prompt(self, prompt, device="cuda"):
ids, mask = self.tokenizer(prompt, return_mask=True, add_special_tokens=True)
ids = ids.to(device)
mask = mask.to(device)
seq_lens = mask.gt(0).sum(dim=1).long()
prompt_emb = self.text_encoder(ids, mask)
prompt_emb = [u[:v] for u, v in zip(prompt_emb, seq_lens)]
return prompt_emb

View File

@@ -0,0 +1,18 @@
import torch
from diffsynth.prompters import WanXPrompter
from diffsynth.models.wanx_text_encoder import WanXTextEncoder
prompter = WanXPrompter('models/WanX/google/umt5-xxl')
text_encoder = WanXTextEncoder()
text_encoder.load_state_dict(torch.load('models/WanX/models_t5_umt5-xxl-enc-bf16.pth', map_location='cpu'))
text_encoder = text_encoder.eval().requires_grad_(False).to(dtype=torch.bfloat16, device='cuda')
prompter.fetch_models(text_encoder)
prompt = '维京战士双手挥舞着大斧,对抗猛犸象,黄昏,雪地中,漫天飞雪'
neg_prompt = '色调艳丽过曝静态细节模糊不清字幕风格作品画作画面静止整体发灰最差质量低质量JPEG压缩残留丑陋的残缺的多余的手指画得不好的手部画得不好的脸部畸形的毁容的形态畸形的肢体手指融合静止不动的画面杂乱的背景三条腿背景人很多倒着走'
prompt_emb = prompter.encode_prompt(prompt)
neg_prompt_emb = prompter.encode_prompt(neg_prompt)
print(prompt_emb[0]) # torch.Size([31, 4096])
print(neg_prompt_emb[0]) # torch.Size([126, 4096])

46
examples/WanX/test_vae.py Normal file
View File

@@ -0,0 +1,46 @@
import torch
import torchvision
import imageio
from diffsynth import ModelManager
def save_video(tensor,
save_file=None,
fps=30,
nrow=8,
normalize=True,
value_range=(-1, 1)):
tensor = tensor.clamp(min(value_range), max(value_range))
tensor = torch.stack([
torchvision.utils.make_grid(
u, nrow=nrow, normalize=normalize, value_range=value_range)
for u in tensor.unbind(2)
],
dim=1).permute(1, 2, 3, 0) #frame, h, w, 3
tensor = (tensor * 255).type(torch.uint8).cpu()
# write video
writer = imageio.get_writer(
save_file, fps=fps, codec='libx264', quality=8)
for frame in tensor.numpy():
writer.append_data(frame)
writer.close()
torch.cuda.memory._record_memory_history()
model_manager = ModelManager(torch_dtype=torch.float, device="cuda")
model_manager.load_models([
"models/WanX/vae.pth",
])
vae = model_manager.fetch_model('wanxvideo_vae')
latents = [torch.load('sample.pt')]
videos = vae.decode(latents, device=latents[0].device, tiled=True)
back_encode = vae.encode(videos, device=latents[0].device, tiled=True)
videos_back_encode = vae.decode(back_encode, device=latents[0].device, tiled=False)
torch.cuda.memory._dump_snapshot("my_snapshot.pickle")
save_video(videos[0][None], save_file='example.mp4', fps=16, nrow=1)
save_video(videos_back_encode[0][None], save_file='example_backencode.mp4', fps=16, nrow=1)