Files
DiffSynth-Studio/diffsynth/models/anima_dit.py
Zhongjie Duan 6d671db5d2 Support Anima (#1317)
* support Anima

Co-authored-by: mi804 <1576993271@qq.com>
2026-03-02 18:49:02 +08:00

1305 lines
57 KiB
Python

# original code from: comfy/ldm/cosmos/predict2.py
import torch
from torch import nn
from einops import rearrange, repeat
from einops.layers.torch import Rearrange
import logging
from typing import Callable, Optional, Tuple, List
import math
from torchvision import transforms
from ..core.attention import attention_forward
from ..core.gradient import gradient_checkpoint_forward
class VideoPositionEmb(nn.Module):
def forward(self, x_B_T_H_W_C: torch.Tensor, fps=Optional[torch.Tensor], device=None, dtype=None) -> torch.Tensor:
"""
It delegates the embedding generation to generate_embeddings function.
"""
B_T_H_W_C = x_B_T_H_W_C.shape
embeddings = self.generate_embeddings(B_T_H_W_C, fps=fps, device=device, dtype=dtype)
return embeddings
def generate_embeddings(self, B_T_H_W_C: torch.Size, fps=Optional[torch.Tensor], device=None):
raise NotImplementedError
def normalize(x: torch.Tensor, dim: Optional[List[int]] = None, eps: float = 0) -> torch.Tensor:
"""
Normalizes the input tensor along specified dimensions such that the average square norm of elements is adjusted.
Args:
x (torch.Tensor): The input tensor to normalize.
dim (list, optional): The dimensions over which to normalize. If None, normalizes over all dimensions except the first.
eps (float, optional): A small constant to ensure numerical stability during division.
Returns:
torch.Tensor: The normalized tensor.
"""
if dim is None:
dim = list(range(1, x.ndim))
norm = torch.linalg.vector_norm(x, dim=dim, keepdim=True, dtype=torch.float32)
norm = torch.add(eps, norm, alpha=math.sqrt(norm.numel() / x.numel()))
return x / norm.to(x.dtype)
class LearnablePosEmbAxis(VideoPositionEmb):
def __init__(
self,
*, # enforce keyword arguments
interpolation: str,
model_channels: int,
len_h: int,
len_w: int,
len_t: int,
device=None,
dtype=None,
**kwargs,
):
"""
Args:
interpolation (str): we curretly only support "crop", ideally when we need extrapolation capacity, we should adjust frequency or other more advanced methods. they are not implemented yet.
"""
del kwargs # unused
super().__init__()
self.interpolation = interpolation
assert self.interpolation in ["crop"], f"Unknown interpolation method {self.interpolation}"
self.pos_emb_h = nn.Parameter(torch.empty(len_h, model_channels, device=device, dtype=dtype))
self.pos_emb_w = nn.Parameter(torch.empty(len_w, model_channels, device=device, dtype=dtype))
self.pos_emb_t = nn.Parameter(torch.empty(len_t, model_channels, device=device, dtype=dtype))
def generate_embeddings(self, B_T_H_W_C: torch.Size, fps=Optional[torch.Tensor], device=None, dtype=None) -> torch.Tensor:
B, T, H, W, _ = B_T_H_W_C
if self.interpolation == "crop":
emb_h_H = self.pos_emb_h[:H].to(device=device, dtype=dtype)
emb_w_W = self.pos_emb_w[:W].to(device=device, dtype=dtype)
emb_t_T = self.pos_emb_t[:T].to(device=device, dtype=dtype)
emb = (
repeat(emb_t_T, "t d-> b t h w d", b=B, h=H, w=W)
+ repeat(emb_h_H, "h d-> b t h w d", b=B, t=T, w=W)
+ repeat(emb_w_W, "w d-> b t h w d", b=B, t=T, h=H)
)
assert list(emb.shape)[:4] == [B, T, H, W], f"bad shape: {list(emb.shape)[:4]} != {B, T, H, W}"
else:
raise ValueError(f"Unknown interpolation method {self.interpolation}")
return normalize(emb, dim=-1, eps=1e-6)
class VideoRopePosition3DEmb(VideoPositionEmb):
def __init__(
self,
*, # enforce keyword arguments
head_dim: int,
len_h: int,
len_w: int,
len_t: int,
base_fps: int = 24,
h_extrapolation_ratio: float = 1.0,
w_extrapolation_ratio: float = 1.0,
t_extrapolation_ratio: float = 1.0,
enable_fps_modulation: bool = True,
device=None,
**kwargs, # used for compatibility with other positional embeddings; unused in this class
):
del kwargs
super().__init__()
self.base_fps = base_fps
self.max_h = len_h
self.max_w = len_w
self.enable_fps_modulation = enable_fps_modulation
dim = head_dim
dim_h = dim // 6 * 2
dim_w = dim_h
dim_t = dim - 2 * dim_h
assert dim == dim_h + dim_w + dim_t, f"bad dim: {dim} != {dim_h} + {dim_w} + {dim_t}"
self.register_buffer(
"dim_spatial_range",
torch.arange(0, dim_h, 2, device=device)[: (dim_h // 2)].float() / dim_h,
persistent=False,
)
self.register_buffer(
"dim_temporal_range",
torch.arange(0, dim_t, 2, device=device)[: (dim_t // 2)].float() / dim_t,
persistent=False,
)
self.h_ntk_factor = h_extrapolation_ratio ** (dim_h / (dim_h - 2))
self.w_ntk_factor = w_extrapolation_ratio ** (dim_w / (dim_w - 2))
self.t_ntk_factor = t_extrapolation_ratio ** (dim_t / (dim_t - 2))
def generate_embeddings(
self,
B_T_H_W_C: torch.Size,
fps: Optional[torch.Tensor] = None,
h_ntk_factor: Optional[float] = None,
w_ntk_factor: Optional[float] = None,
t_ntk_factor: Optional[float] = None,
device=None,
dtype=None,
):
"""
Generate embeddings for the given input size.
Args:
B_T_H_W_C (torch.Size): Input tensor size (Batch, Time, Height, Width, Channels).
fps (Optional[torch.Tensor], optional): Frames per second. Defaults to None.
h_ntk_factor (Optional[float], optional): Height NTK factor. If None, uses self.h_ntk_factor.
w_ntk_factor (Optional[float], optional): Width NTK factor. If None, uses self.w_ntk_factor.
t_ntk_factor (Optional[float], optional): Time NTK factor. If None, uses self.t_ntk_factor.
Returns:
Not specified in the original code snippet.
"""
h_ntk_factor = h_ntk_factor if h_ntk_factor is not None else self.h_ntk_factor
w_ntk_factor = w_ntk_factor if w_ntk_factor is not None else self.w_ntk_factor
t_ntk_factor = t_ntk_factor if t_ntk_factor is not None else self.t_ntk_factor
h_theta = 10000.0 * h_ntk_factor
w_theta = 10000.0 * w_ntk_factor
t_theta = 10000.0 * t_ntk_factor
h_spatial_freqs = 1.0 / (h_theta**self.dim_spatial_range.to(device=device))
w_spatial_freqs = 1.0 / (w_theta**self.dim_spatial_range.to(device=device))
temporal_freqs = 1.0 / (t_theta**self.dim_temporal_range.to(device=device))
B, T, H, W, _ = B_T_H_W_C
seq = torch.arange(max(H, W, T), dtype=torch.float, device=device)
uniform_fps = (fps is None) or isinstance(fps, (int, float)) or (fps.min() == fps.max())
assert (
uniform_fps or B == 1 or T == 1
), "For video batch, batch size should be 1 for non-uniform fps. For image batch, T should be 1"
half_emb_h = torch.outer(seq[:H].to(device=device), h_spatial_freqs)
half_emb_w = torch.outer(seq[:W].to(device=device), w_spatial_freqs)
# apply sequence scaling in temporal dimension
if fps is None or self.enable_fps_modulation is False: # image case
half_emb_t = torch.outer(seq[:T].to(device=device), temporal_freqs)
else:
half_emb_t = torch.outer(seq[:T].to(device=device) / fps * self.base_fps, temporal_freqs)
half_emb_h = torch.stack([torch.cos(half_emb_h), -torch.sin(half_emb_h), torch.sin(half_emb_h), torch.cos(half_emb_h)], dim=-1)
half_emb_w = torch.stack([torch.cos(half_emb_w), -torch.sin(half_emb_w), torch.sin(half_emb_w), torch.cos(half_emb_w)], dim=-1)
half_emb_t = torch.stack([torch.cos(half_emb_t), -torch.sin(half_emb_t), torch.sin(half_emb_t), torch.cos(half_emb_t)], dim=-1)
em_T_H_W_D = torch.cat(
[
repeat(half_emb_t, "t d x -> t h w d x", h=H, w=W),
repeat(half_emb_h, "h d x -> t h w d x", t=T, w=W),
repeat(half_emb_w, "w d x -> t h w d x", t=T, h=H),
]
, dim=-2,
)
return rearrange(em_T_H_W_D, "t h w d (i j) -> (t h w) d i j", i=2, j=2).float()
def apply_rotary_pos_emb(
t: torch.Tensor,
freqs: torch.Tensor,
) -> torch.Tensor:
t_ = t.reshape(*t.shape[:-1], 2, -1).movedim(-2, -1).unsqueeze(-2).float()
t_out = freqs[..., 0] * t_[..., 0] + freqs[..., 1] * t_[..., 1]
t_out = t_out.movedim(-1, -2).reshape(*t.shape).type_as(t)
return t_out
# ---------------------- Feed Forward Network -----------------------
class GPT2FeedForward(nn.Module):
def __init__(self, d_model: int, d_ff: int, device=None, dtype=None, operations=None) -> None:
super().__init__()
self.activation = nn.GELU()
self.layer1 = operations.Linear(d_model, d_ff, bias=False, device=device, dtype=dtype)
self.layer2 = operations.Linear(d_ff, d_model, bias=False, device=device, dtype=dtype)
self._layer_id = None
self._dim = d_model
self._hidden_dim = d_ff
def forward(self, x: torch.Tensor) -> torch.Tensor:
x = self.layer1(x)
x = self.activation(x)
x = self.layer2(x)
return x
def torch_attention_op(q_B_S_H_D: torch.Tensor, k_B_S_H_D: torch.Tensor, v_B_S_H_D: torch.Tensor, transformer_options: Optional[dict] = {}) -> torch.Tensor:
"""Computes multi-head attention using PyTorch's native implementation.
This function provides a PyTorch backend alternative to Transformer Engine's attention operation.
It rearranges the input tensors to match PyTorch's expected format, computes scaled dot-product
attention, and rearranges the output back to the original format.
The input tensor names use the following dimension conventions:
- B: batch size
- S: sequence length
- H: number of attention heads
- D: head dimension
Args:
q_B_S_H_D: Query tensor with shape (batch, seq_len, n_heads, head_dim)
k_B_S_H_D: Key tensor with shape (batch, seq_len, n_heads, head_dim)
v_B_S_H_D: Value tensor with shape (batch, seq_len, n_heads, head_dim)
Returns:
Attention output tensor with shape (batch, seq_len, n_heads * head_dim)
"""
in_q_shape = q_B_S_H_D.shape
in_k_shape = k_B_S_H_D.shape
q_B_H_S_D = rearrange(q_B_S_H_D, "b ... h k -> b h ... k").view(in_q_shape[0], in_q_shape[-2], -1, in_q_shape[-1])
k_B_H_S_D = rearrange(k_B_S_H_D, "b ... h v -> b h ... v").view(in_k_shape[0], in_k_shape[-2], -1, in_k_shape[-1])
v_B_H_S_D = rearrange(v_B_S_H_D, "b ... h v -> b h ... v").view(in_k_shape[0], in_k_shape[-2], -1, in_k_shape[-1])
return attention_forward(q_B_H_S_D, k_B_H_S_D, v_B_H_S_D, out_pattern="b s (n d)")
class Attention(nn.Module):
"""
A flexible attention module supporting both self-attention and cross-attention mechanisms.
This module implements a multi-head attention layer that can operate in either self-attention
or cross-attention mode. The mode is determined by whether a context dimension is provided.
The implementation uses scaled dot-product attention and supports optional bias terms and
dropout regularization.
Args:
query_dim (int): The dimensionality of the query vectors.
context_dim (int, optional): The dimensionality of the context (key/value) vectors.
If None, the module operates in self-attention mode using query_dim. Default: None
n_heads (int, optional): Number of attention heads for multi-head attention. Default: 8
head_dim (int, optional): The dimension of each attention head. Default: 64
dropout (float, optional): Dropout probability applied to the output. Default: 0.0
qkv_format (str, optional): Format specification for QKV tensors. Default: "bshd"
backend (str, optional): Backend to use for the attention operation. Default: "transformer_engine"
Examples:
>>> # Self-attention with 512 dimensions and 8 heads
>>> self_attn = Attention(query_dim=512)
>>> x = torch.randn(32, 16, 512) # (batch_size, seq_len, dim)
>>> out = self_attn(x) # (32, 16, 512)
>>> # Cross-attention
>>> cross_attn = Attention(query_dim=512, context_dim=256)
>>> query = torch.randn(32, 16, 512)
>>> context = torch.randn(32, 8, 256)
>>> out = cross_attn(query, context) # (32, 16, 512)
"""
def __init__(
self,
query_dim: int,
context_dim: Optional[int] = None,
n_heads: int = 8,
head_dim: int = 64,
dropout: float = 0.0,
device=None,
dtype=None,
operations=None,
) -> None:
super().__init__()
logging.debug(
f"Setting up {self.__class__.__name__}. Query dim is {query_dim}, context_dim is {context_dim} and using "
f"{n_heads} heads with a dimension of {head_dim}."
)
self.is_selfattn = context_dim is None # self attention
context_dim = query_dim if context_dim is None else context_dim
inner_dim = head_dim * n_heads
self.n_heads = n_heads
self.head_dim = head_dim
self.query_dim = query_dim
self.context_dim = context_dim
self.q_proj = operations.Linear(query_dim, inner_dim, bias=False, device=device, dtype=dtype)
self.q_norm = operations.RMSNorm(self.head_dim, eps=1e-6, device=device, dtype=dtype)
self.k_proj = operations.Linear(context_dim, inner_dim, bias=False, device=device, dtype=dtype)
self.k_norm = operations.RMSNorm(self.head_dim, eps=1e-6, device=device, dtype=dtype)
self.v_proj = operations.Linear(context_dim, inner_dim, bias=False, device=device, dtype=dtype)
self.v_norm = nn.Identity()
self.output_proj = operations.Linear(inner_dim, query_dim, bias=False, device=device, dtype=dtype)
self.output_dropout = nn.Dropout(dropout) if dropout > 1e-4 else nn.Identity()
self.attn_op = torch_attention_op
self._query_dim = query_dim
self._context_dim = context_dim
self._inner_dim = inner_dim
def compute_qkv(
self,
x: torch.Tensor,
context: Optional[torch.Tensor] = None,
rope_emb: Optional[torch.Tensor] = None,
) -> tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
q = self.q_proj(x)
context = x if context is None else context
k = self.k_proj(context)
v = self.v_proj(context)
q, k, v = map(
lambda t: rearrange(t, "b ... (h d) -> b ... h d", h=self.n_heads, d=self.head_dim),
(q, k, v),
)
def apply_norm_and_rotary_pos_emb(
q: torch.Tensor, k: torch.Tensor, v: torch.Tensor, rope_emb: Optional[torch.Tensor]
) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
q = self.q_norm(q)
k = self.k_norm(k)
v = self.v_norm(v)
if self.is_selfattn and rope_emb is not None: # only apply to self-attention!
q = apply_rotary_pos_emb(q, rope_emb)
k = apply_rotary_pos_emb(k, rope_emb)
return q, k, v
q, k, v = apply_norm_and_rotary_pos_emb(q, k, v, rope_emb)
return q, k, v
def compute_attention(self, q: torch.Tensor, k: torch.Tensor, v: torch.Tensor, transformer_options: Optional[dict] = {}) -> torch.Tensor:
result = self.attn_op(q, k, v, transformer_options=transformer_options) # [B, S, H, D]
return self.output_dropout(self.output_proj(result))
def forward(
self,
x: torch.Tensor,
context: Optional[torch.Tensor] = None,
rope_emb: Optional[torch.Tensor] = None,
transformer_options: Optional[dict] = {},
) -> torch.Tensor:
"""
Args:
x (Tensor): The query tensor of shape [B, Mq, K]
context (Optional[Tensor]): The key tensor of shape [B, Mk, K] or use x as context [self attention] if None
"""
q, k, v = self.compute_qkv(x, context, rope_emb=rope_emb)
return self.compute_attention(q, k, v, transformer_options=transformer_options)
class Timesteps(nn.Module):
def __init__(self, num_channels: int):
super().__init__()
self.num_channels = num_channels
def forward(self, timesteps_B_T: torch.Tensor) -> torch.Tensor:
assert timesteps_B_T.ndim == 2, f"Expected 2D input, got {timesteps_B_T.ndim}"
timesteps = timesteps_B_T.flatten().float()
half_dim = self.num_channels // 2
exponent = -math.log(10000) * torch.arange(half_dim, dtype=torch.float32, device=timesteps.device)
exponent = exponent / (half_dim - 0.0)
emb = torch.exp(exponent)
emb = timesteps[:, None].float() * emb[None, :]
sin_emb = torch.sin(emb)
cos_emb = torch.cos(emb)
emb = torch.cat([cos_emb, sin_emb], dim=-1)
return rearrange(emb, "(b t) d -> b t d", b=timesteps_B_T.shape[0], t=timesteps_B_T.shape[1])
class TimestepEmbedding(nn.Module):
def __init__(self, in_features: int, out_features: int, use_adaln_lora: bool = False, device=None, dtype=None, operations=None):
super().__init__()
logging.debug(
f"Using AdaLN LoRA Flag: {use_adaln_lora}. We enable bias if no AdaLN LoRA for backward compatibility."
)
self.in_dim = in_features
self.out_dim = out_features
self.linear_1 = operations.Linear(in_features, out_features, bias=not use_adaln_lora, device=device, dtype=dtype)
self.activation = nn.SiLU()
self.use_adaln_lora = use_adaln_lora
if use_adaln_lora:
self.linear_2 = operations.Linear(out_features, 3 * out_features, bias=False, device=device, dtype=dtype)
else:
self.linear_2 = operations.Linear(out_features, out_features, bias=False, device=device, dtype=dtype)
def forward(self, sample: torch.Tensor) -> Tuple[torch.Tensor, Optional[torch.Tensor]]:
emb = self.linear_1(sample)
emb = self.activation(emb)
emb = self.linear_2(emb)
if self.use_adaln_lora:
adaln_lora_B_T_3D = emb
emb_B_T_D = sample
else:
adaln_lora_B_T_3D = None
emb_B_T_D = emb
return emb_B_T_D, adaln_lora_B_T_3D
class PatchEmbed(nn.Module):
"""
PatchEmbed is a module for embedding patches from an input tensor by applying either 3D or 2D convolutional layers,
depending on the . This module can process inputs with temporal (video) and spatial (image) dimensions,
making it suitable for video and image processing tasks. It supports dividing the input into patches
and embedding each patch into a vector of size `out_channels`.
Parameters:
- spatial_patch_size (int): The size of each spatial patch.
- temporal_patch_size (int): The size of each temporal patch.
- in_channels (int): Number of input channels. Default: 3.
- out_channels (int): The dimension of the embedding vector for each patch. Default: 768.
- bias (bool): If True, adds a learnable bias to the output of the convolutional layers. Default: True.
"""
def __init__(
self,
spatial_patch_size: int,
temporal_patch_size: int,
in_channels: int = 3,
out_channels: int = 768,
device=None, dtype=None, operations=None
):
super().__init__()
self.spatial_patch_size = spatial_patch_size
self.temporal_patch_size = temporal_patch_size
self.proj = nn.Sequential(
Rearrange(
"b c (t r) (h m) (w n) -> b t h w (c r m n)",
r=temporal_patch_size,
m=spatial_patch_size,
n=spatial_patch_size,
),
operations.Linear(
in_channels * spatial_patch_size * spatial_patch_size * temporal_patch_size, out_channels, bias=False, device=device, dtype=dtype
),
)
self.dim = in_channels * spatial_patch_size * spatial_patch_size * temporal_patch_size
def forward(self, x: torch.Tensor) -> torch.Tensor:
"""
Forward pass of the PatchEmbed module.
Parameters:
- x (torch.Tensor): The input tensor of shape (B, C, T, H, W) where
B is the batch size,
C is the number of channels,
T is the temporal dimension,
H is the height, and
W is the width of the input.
Returns:
- torch.Tensor: The embedded patches as a tensor, with shape b t h w c.
"""
assert x.dim() == 5
_, _, T, H, W = x.shape
assert (
H % self.spatial_patch_size == 0 and W % self.spatial_patch_size == 0
), f"H,W {(H, W)} should be divisible by spatial_patch_size {self.spatial_patch_size}"
assert T % self.temporal_patch_size == 0
x = self.proj(x)
return x
class FinalLayer(nn.Module):
"""
The final layer of video DiT.
"""
def __init__(
self,
hidden_size: int,
spatial_patch_size: int,
temporal_patch_size: int,
out_channels: int,
use_adaln_lora: bool = False,
adaln_lora_dim: int = 256,
device=None, dtype=None, operations=None
):
super().__init__()
self.layer_norm = operations.LayerNorm(hidden_size, elementwise_affine=False, eps=1e-6)
self.linear = operations.Linear(
hidden_size, spatial_patch_size * spatial_patch_size * temporal_patch_size * out_channels, bias=False, device=device, dtype=dtype
)
self.hidden_size = hidden_size
self.n_adaln_chunks = 2
self.use_adaln_lora = use_adaln_lora
self.adaln_lora_dim = adaln_lora_dim
if use_adaln_lora:
self.adaln_modulation = nn.Sequential(
nn.SiLU(),
operations.Linear(hidden_size, adaln_lora_dim, bias=False, device=device, dtype=dtype),
operations.Linear(adaln_lora_dim, self.n_adaln_chunks * hidden_size, bias=False, device=device, dtype=dtype),
)
else:
self.adaln_modulation = nn.Sequential(
nn.SiLU(), operations.Linear(hidden_size, self.n_adaln_chunks * hidden_size, bias=False, device=device, dtype=dtype)
)
def forward(
self,
x_B_T_H_W_D: torch.Tensor,
emb_B_T_D: torch.Tensor,
adaln_lora_B_T_3D: Optional[torch.Tensor] = None,
):
if self.use_adaln_lora:
assert adaln_lora_B_T_3D is not None
shift_B_T_D, scale_B_T_D = (
self.adaln_modulation(emb_B_T_D) + adaln_lora_B_T_3D[:, :, : 2 * self.hidden_size]
).chunk(2, dim=-1)
else:
shift_B_T_D, scale_B_T_D = self.adaln_modulation(emb_B_T_D).chunk(2, dim=-1)
shift_B_T_1_1_D, scale_B_T_1_1_D = rearrange(shift_B_T_D, "b t d -> b t 1 1 d"), rearrange(
scale_B_T_D, "b t d -> b t 1 1 d"
)
def _fn(
_x_B_T_H_W_D: torch.Tensor,
_norm_layer: nn.Module,
_scale_B_T_1_1_D: torch.Tensor,
_shift_B_T_1_1_D: torch.Tensor,
) -> torch.Tensor:
return _norm_layer(_x_B_T_H_W_D) * (1 + _scale_B_T_1_1_D) + _shift_B_T_1_1_D
x_B_T_H_W_D = _fn(x_B_T_H_W_D, self.layer_norm, scale_B_T_1_1_D, shift_B_T_1_1_D)
x_B_T_H_W_O = self.linear(x_B_T_H_W_D)
return x_B_T_H_W_O
class Block(nn.Module):
"""
A transformer block that combines self-attention, cross-attention and MLP layers with AdaLN modulation.
Each component (self-attention, cross-attention, MLP) has its own layer normalization and AdaLN modulation.
Parameters:
x_dim (int): Dimension of input features
context_dim (int): Dimension of context features for cross-attention
num_heads (int): Number of attention heads
mlp_ratio (float): Multiplier for MLP hidden dimension. Default: 4.0
use_adaln_lora (bool): Whether to use AdaLN-LoRA modulation. Default: False
adaln_lora_dim (int): Hidden dimension for AdaLN-LoRA layers. Default: 256
The block applies the following sequence:
1. Self-attention with AdaLN modulation
2. Cross-attention with AdaLN modulation
3. MLP with AdaLN modulation
Each component uses skip connections and layer normalization.
"""
def __init__(
self,
x_dim: int,
context_dim: int,
num_heads: int,
mlp_ratio: float = 4.0,
use_adaln_lora: bool = False,
adaln_lora_dim: int = 256,
device=None,
dtype=None,
operations=None,
):
super().__init__()
self.x_dim = x_dim
self.layer_norm_self_attn = operations.LayerNorm(x_dim, elementwise_affine=False, eps=1e-6, device=device, dtype=dtype)
self.self_attn = Attention(x_dim, None, num_heads, x_dim // num_heads, device=device, dtype=dtype, operations=operations)
self.layer_norm_cross_attn = operations.LayerNorm(x_dim, elementwise_affine=False, eps=1e-6, device=device, dtype=dtype)
self.cross_attn = Attention(
x_dim, context_dim, num_heads, x_dim // num_heads, device=device, dtype=dtype, operations=operations
)
self.layer_norm_mlp = operations.LayerNorm(x_dim, elementwise_affine=False, eps=1e-6, device=device, dtype=dtype)
self.mlp = GPT2FeedForward(x_dim, int(x_dim * mlp_ratio), device=device, dtype=dtype, operations=operations)
self.use_adaln_lora = use_adaln_lora
if self.use_adaln_lora:
self.adaln_modulation_self_attn = nn.Sequential(
nn.SiLU(),
operations.Linear(x_dim, adaln_lora_dim, bias=False, device=device, dtype=dtype),
operations.Linear(adaln_lora_dim, 3 * x_dim, bias=False, device=device, dtype=dtype),
)
self.adaln_modulation_cross_attn = nn.Sequential(
nn.SiLU(),
operations.Linear(x_dim, adaln_lora_dim, bias=False, device=device, dtype=dtype),
operations.Linear(adaln_lora_dim, 3 * x_dim, bias=False, device=device, dtype=dtype),
)
self.adaln_modulation_mlp = nn.Sequential(
nn.SiLU(),
operations.Linear(x_dim, adaln_lora_dim, bias=False, device=device, dtype=dtype),
operations.Linear(adaln_lora_dim, 3 * x_dim, bias=False, device=device, dtype=dtype),
)
else:
self.adaln_modulation_self_attn = nn.Sequential(nn.SiLU(), operations.Linear(x_dim, 3 * x_dim, bias=False, device=device, dtype=dtype))
self.adaln_modulation_cross_attn = nn.Sequential(nn.SiLU(), operations.Linear(x_dim, 3 * x_dim, bias=False, device=device, dtype=dtype))
self.adaln_modulation_mlp = nn.Sequential(nn.SiLU(), operations.Linear(x_dim, 3 * x_dim, bias=False, device=device, dtype=dtype))
def forward(
self,
x_B_T_H_W_D: torch.Tensor,
emb_B_T_D: torch.Tensor,
crossattn_emb: torch.Tensor,
rope_emb_L_1_1_D: Optional[torch.Tensor] = None,
adaln_lora_B_T_3D: Optional[torch.Tensor] = None,
extra_per_block_pos_emb: Optional[torch.Tensor] = None,
transformer_options: Optional[dict] = {},
) -> torch.Tensor:
residual_dtype = x_B_T_H_W_D.dtype
compute_dtype = emb_B_T_D.dtype
if extra_per_block_pos_emb is not None:
x_B_T_H_W_D = x_B_T_H_W_D + extra_per_block_pos_emb
if self.use_adaln_lora:
shift_self_attn_B_T_D, scale_self_attn_B_T_D, gate_self_attn_B_T_D = (
self.adaln_modulation_self_attn(emb_B_T_D) + adaln_lora_B_T_3D
).chunk(3, dim=-1)
shift_cross_attn_B_T_D, scale_cross_attn_B_T_D, gate_cross_attn_B_T_D = (
self.adaln_modulation_cross_attn(emb_B_T_D) + adaln_lora_B_T_3D
).chunk(3, dim=-1)
shift_mlp_B_T_D, scale_mlp_B_T_D, gate_mlp_B_T_D = (
self.adaln_modulation_mlp(emb_B_T_D) + adaln_lora_B_T_3D
).chunk(3, dim=-1)
else:
shift_self_attn_B_T_D, scale_self_attn_B_T_D, gate_self_attn_B_T_D = self.adaln_modulation_self_attn(
emb_B_T_D
).chunk(3, dim=-1)
shift_cross_attn_B_T_D, scale_cross_attn_B_T_D, gate_cross_attn_B_T_D = self.adaln_modulation_cross_attn(
emb_B_T_D
).chunk(3, dim=-1)
shift_mlp_B_T_D, scale_mlp_B_T_D, gate_mlp_B_T_D = self.adaln_modulation_mlp(emb_B_T_D).chunk(3, dim=-1)
# Reshape tensors from (B, T, D) to (B, T, 1, 1, D) for broadcasting
shift_self_attn_B_T_1_1_D = rearrange(shift_self_attn_B_T_D, "b t d -> b t 1 1 d")
scale_self_attn_B_T_1_1_D = rearrange(scale_self_attn_B_T_D, "b t d -> b t 1 1 d")
gate_self_attn_B_T_1_1_D = rearrange(gate_self_attn_B_T_D, "b t d -> b t 1 1 d")
shift_cross_attn_B_T_1_1_D = rearrange(shift_cross_attn_B_T_D, "b t d -> b t 1 1 d")
scale_cross_attn_B_T_1_1_D = rearrange(scale_cross_attn_B_T_D, "b t d -> b t 1 1 d")
gate_cross_attn_B_T_1_1_D = rearrange(gate_cross_attn_B_T_D, "b t d -> b t 1 1 d")
shift_mlp_B_T_1_1_D = rearrange(shift_mlp_B_T_D, "b t d -> b t 1 1 d")
scale_mlp_B_T_1_1_D = rearrange(scale_mlp_B_T_D, "b t d -> b t 1 1 d")
gate_mlp_B_T_1_1_D = rearrange(gate_mlp_B_T_D, "b t d -> b t 1 1 d")
B, T, H, W, D = x_B_T_H_W_D.shape
def _fn(_x_B_T_H_W_D, _norm_layer, _scale_B_T_1_1_D, _shift_B_T_1_1_D):
return _norm_layer(_x_B_T_H_W_D) * (1 + _scale_B_T_1_1_D) + _shift_B_T_1_1_D
normalized_x_B_T_H_W_D = _fn(
x_B_T_H_W_D,
self.layer_norm_self_attn,
scale_self_attn_B_T_1_1_D,
shift_self_attn_B_T_1_1_D,
)
result_B_T_H_W_D = rearrange(
self.self_attn(
# normalized_x_B_T_HW_D,
rearrange(normalized_x_B_T_H_W_D.to(compute_dtype), "b t h w d -> b (t h w) d"),
None,
rope_emb=rope_emb_L_1_1_D,
transformer_options=transformer_options,
),
"b (t h w) d -> b t h w d",
t=T,
h=H,
w=W,
)
x_B_T_H_W_D = x_B_T_H_W_D + gate_self_attn_B_T_1_1_D.to(residual_dtype) * result_B_T_H_W_D.to(residual_dtype)
def _x_fn(
_x_B_T_H_W_D: torch.Tensor,
layer_norm_cross_attn: Callable,
_scale_cross_attn_B_T_1_1_D: torch.Tensor,
_shift_cross_attn_B_T_1_1_D: torch.Tensor,
transformer_options: Optional[dict] = {},
) -> torch.Tensor:
_normalized_x_B_T_H_W_D = _fn(
_x_B_T_H_W_D, layer_norm_cross_attn, _scale_cross_attn_B_T_1_1_D, _shift_cross_attn_B_T_1_1_D
)
_result_B_T_H_W_D = rearrange(
self.cross_attn(
rearrange(_normalized_x_B_T_H_W_D.to(compute_dtype), "b t h w d -> b (t h w) d"),
crossattn_emb,
rope_emb=rope_emb_L_1_1_D,
transformer_options=transformer_options,
),
"b (t h w) d -> b t h w d",
t=T,
h=H,
w=W,
)
return _result_B_T_H_W_D
result_B_T_H_W_D = _x_fn(
x_B_T_H_W_D,
self.layer_norm_cross_attn,
scale_cross_attn_B_T_1_1_D,
shift_cross_attn_B_T_1_1_D,
transformer_options=transformer_options,
)
x_B_T_H_W_D = result_B_T_H_W_D.to(residual_dtype) * gate_cross_attn_B_T_1_1_D.to(residual_dtype) + x_B_T_H_W_D
normalized_x_B_T_H_W_D = _fn(
x_B_T_H_W_D,
self.layer_norm_mlp,
scale_mlp_B_T_1_1_D,
shift_mlp_B_T_1_1_D,
)
result_B_T_H_W_D = self.mlp(normalized_x_B_T_H_W_D.to(compute_dtype))
x_B_T_H_W_D = x_B_T_H_W_D + gate_mlp_B_T_1_1_D.to(residual_dtype) * result_B_T_H_W_D.to(residual_dtype)
return x_B_T_H_W_D
class MiniTrainDIT(nn.Module):
"""
A clean impl of DIT that can load and reproduce the training results of the original DIT model in~(cosmos 1)
A general implementation of adaln-modulated VIT-like~(DiT) transformer for video processing.
Args:
max_img_h (int): Maximum height of the input images.
max_img_w (int): Maximum width of the input images.
max_frames (int): Maximum number of frames in the video sequence.
in_channels (int): Number of input channels (e.g., RGB channels for color images).
out_channels (int): Number of output channels.
patch_spatial (tuple): Spatial resolution of patches for input processing.
patch_temporal (int): Temporal resolution of patches for input processing.
concat_padding_mask (bool): If True, includes a mask channel in the input to handle padding.
model_channels (int): Base number of channels used throughout the model.
num_blocks (int): Number of transformer blocks.
num_heads (int): Number of heads in the multi-head attention layers.
mlp_ratio (float): Expansion ratio for MLP blocks.
crossattn_emb_channels (int): Number of embedding channels for cross-attention.
pos_emb_cls (str): Type of positional embeddings.
pos_emb_learnable (bool): Whether positional embeddings are learnable.
pos_emb_interpolation (str): Method for interpolating positional embeddings.
min_fps (int): Minimum frames per second.
max_fps (int): Maximum frames per second.
use_adaln_lora (bool): Whether to use AdaLN-LoRA.
adaln_lora_dim (int): Dimension for AdaLN-LoRA.
rope_h_extrapolation_ratio (float): Height extrapolation ratio for RoPE.
rope_w_extrapolation_ratio (float): Width extrapolation ratio for RoPE.
rope_t_extrapolation_ratio (float): Temporal extrapolation ratio for RoPE.
extra_per_block_abs_pos_emb (bool): Whether to use extra per-block absolute positional embeddings.
extra_h_extrapolation_ratio (float): Height extrapolation ratio for extra embeddings.
extra_w_extrapolation_ratio (float): Width extrapolation ratio for extra embeddings.
extra_t_extrapolation_ratio (float): Temporal extrapolation ratio for extra embeddings.
"""
def __init__(
self,
max_img_h: int,
max_img_w: int,
max_frames: int,
in_channels: int,
out_channels: int,
patch_spatial: int, # tuple,
patch_temporal: int,
concat_padding_mask: bool = True,
# attention settings
model_channels: int = 768,
num_blocks: int = 10,
num_heads: int = 16,
mlp_ratio: float = 4.0,
# cross attention settings
crossattn_emb_channels: int = 1024,
# positional embedding settings
pos_emb_cls: str = "sincos",
pos_emb_learnable: bool = False,
pos_emb_interpolation: str = "crop",
min_fps: int = 1,
max_fps: int = 30,
use_adaln_lora: bool = False,
adaln_lora_dim: int = 256,
rope_h_extrapolation_ratio: float = 1.0,
rope_w_extrapolation_ratio: float = 1.0,
rope_t_extrapolation_ratio: float = 1.0,
extra_per_block_abs_pos_emb: bool = False,
extra_h_extrapolation_ratio: float = 1.0,
extra_w_extrapolation_ratio: float = 1.0,
extra_t_extrapolation_ratio: float = 1.0,
rope_enable_fps_modulation: bool = True,
image_model=None,
device=None,
dtype=None,
operations=None,
) -> None:
super().__init__()
self.dtype = dtype
self.max_img_h = max_img_h
self.max_img_w = max_img_w
self.max_frames = max_frames
self.in_channels = in_channels
self.out_channels = out_channels
self.patch_spatial = patch_spatial
self.patch_temporal = patch_temporal
self.num_heads = num_heads
self.num_blocks = num_blocks
self.model_channels = model_channels
self.concat_padding_mask = concat_padding_mask
# positional embedding settings
self.pos_emb_cls = pos_emb_cls
self.pos_emb_learnable = pos_emb_learnable
self.pos_emb_interpolation = pos_emb_interpolation
self.min_fps = min_fps
self.max_fps = max_fps
self.rope_h_extrapolation_ratio = rope_h_extrapolation_ratio
self.rope_w_extrapolation_ratio = rope_w_extrapolation_ratio
self.rope_t_extrapolation_ratio = rope_t_extrapolation_ratio
self.extra_per_block_abs_pos_emb = extra_per_block_abs_pos_emb
self.extra_h_extrapolation_ratio = extra_h_extrapolation_ratio
self.extra_w_extrapolation_ratio = extra_w_extrapolation_ratio
self.extra_t_extrapolation_ratio = extra_t_extrapolation_ratio
self.rope_enable_fps_modulation = rope_enable_fps_modulation
self.build_pos_embed(device=device, dtype=dtype)
self.use_adaln_lora = use_adaln_lora
self.adaln_lora_dim = adaln_lora_dim
self.t_embedder = nn.Sequential(
Timesteps(model_channels),
TimestepEmbedding(model_channels, model_channels, use_adaln_lora=use_adaln_lora, device=device, dtype=dtype, operations=operations,),
)
in_channels = in_channels + 1 if concat_padding_mask else in_channels
self.x_embedder = PatchEmbed(
spatial_patch_size=patch_spatial,
temporal_patch_size=patch_temporal,
in_channels=in_channels,
out_channels=model_channels,
device=device, dtype=dtype, operations=operations,
)
self.blocks = nn.ModuleList(
[
Block(
x_dim=model_channels,
context_dim=crossattn_emb_channels,
num_heads=num_heads,
mlp_ratio=mlp_ratio,
use_adaln_lora=use_adaln_lora,
adaln_lora_dim=adaln_lora_dim,
device=device, dtype=dtype, operations=operations,
)
for _ in range(num_blocks)
]
)
self.final_layer = FinalLayer(
hidden_size=self.model_channels,
spatial_patch_size=self.patch_spatial,
temporal_patch_size=self.patch_temporal,
out_channels=self.out_channels,
use_adaln_lora=self.use_adaln_lora,
adaln_lora_dim=self.adaln_lora_dim,
device=device, dtype=dtype, operations=operations,
)
self.t_embedding_norm = operations.RMSNorm(model_channels, eps=1e-6, device=device, dtype=dtype)
def build_pos_embed(self, device=None, dtype=None) -> None:
if self.pos_emb_cls == "rope3d":
cls_type = VideoRopePosition3DEmb
else:
raise ValueError(f"Unknown pos_emb_cls {self.pos_emb_cls}")
logging.debug(f"Building positional embedding with {self.pos_emb_cls} class, impl {cls_type}")
kwargs = dict(
model_channels=self.model_channels,
len_h=self.max_img_h // self.patch_spatial,
len_w=self.max_img_w // self.patch_spatial,
len_t=self.max_frames // self.patch_temporal,
max_fps=self.max_fps,
min_fps=self.min_fps,
is_learnable=self.pos_emb_learnable,
interpolation=self.pos_emb_interpolation,
head_dim=self.model_channels // self.num_heads,
h_extrapolation_ratio=self.rope_h_extrapolation_ratio,
w_extrapolation_ratio=self.rope_w_extrapolation_ratio,
t_extrapolation_ratio=self.rope_t_extrapolation_ratio,
enable_fps_modulation=self.rope_enable_fps_modulation,
device=device,
)
self.pos_embedder = cls_type(
**kwargs, # type: ignore
)
if self.extra_per_block_abs_pos_emb:
kwargs["h_extrapolation_ratio"] = self.extra_h_extrapolation_ratio
kwargs["w_extrapolation_ratio"] = self.extra_w_extrapolation_ratio
kwargs["t_extrapolation_ratio"] = self.extra_t_extrapolation_ratio
kwargs["device"] = device
kwargs["dtype"] = dtype
self.extra_pos_embedder = LearnablePosEmbAxis(
**kwargs, # type: ignore
)
def prepare_embedded_sequence(
self,
x_B_C_T_H_W: torch.Tensor,
fps: Optional[torch.Tensor] = None,
padding_mask: Optional[torch.Tensor] = None,
) -> Tuple[torch.Tensor, Optional[torch.Tensor], Optional[torch.Tensor]]:
"""
Prepares an embedded sequence tensor by applying positional embeddings and handling padding masks.
Args:
x_B_C_T_H_W (torch.Tensor): video
fps (Optional[torch.Tensor]): Frames per second tensor to be used for positional embedding when required.
If None, a default value (`self.base_fps`) will be used.
padding_mask (Optional[torch.Tensor]): current it is not used
Returns:
Tuple[torch.Tensor, Optional[torch.Tensor]]:
- A tensor of shape (B, T, H, W, D) with the embedded sequence.
- An optional positional embedding tensor, returned only if the positional embedding class
(`self.pos_emb_cls`) includes 'rope'. Otherwise, None.
Notes:
- If `self.concat_padding_mask` is True, a padding mask channel is concatenated to the input tensor.
- The method of applying positional embeddings depends on the value of `self.pos_emb_cls`.
- If 'rope' is in `self.pos_emb_cls` (case insensitive), the positional embeddings are generated using
the `self.pos_embedder` with the shape [T, H, W].
- If "fps_aware" is in `self.pos_emb_cls`, the positional embeddings are generated using the
`self.pos_embedder` with the fps tensor.
- Otherwise, the positional embeddings are generated without considering fps.
"""
if self.concat_padding_mask:
if padding_mask is None:
padding_mask = torch.zeros(x_B_C_T_H_W.shape[0], 1, x_B_C_T_H_W.shape[3], x_B_C_T_H_W.shape[4], dtype=x_B_C_T_H_W.dtype, device=x_B_C_T_H_W.device)
else:
padding_mask = transforms.functional.resize(
padding_mask, list(x_B_C_T_H_W.shape[-2:]), interpolation=transforms.InterpolationMode.NEAREST
)
x_B_C_T_H_W = torch.cat(
[x_B_C_T_H_W, padding_mask.unsqueeze(1).repeat(1, 1, x_B_C_T_H_W.shape[2], 1, 1)], dim=1
)
x_B_T_H_W_D = self.x_embedder(x_B_C_T_H_W)
if self.extra_per_block_abs_pos_emb:
extra_pos_emb = self.extra_pos_embedder(x_B_T_H_W_D, fps=fps, device=x_B_C_T_H_W.device, dtype=x_B_C_T_H_W.dtype)
else:
extra_pos_emb = None
if "rope" in self.pos_emb_cls.lower():
return x_B_T_H_W_D, self.pos_embedder(x_B_T_H_W_D, fps=fps, device=x_B_C_T_H_W.device), extra_pos_emb
x_B_T_H_W_D = x_B_T_H_W_D + self.pos_embedder(x_B_T_H_W_D, device=x_B_C_T_H_W.device) # [B, T, H, W, D]
return x_B_T_H_W_D, None, extra_pos_emb
def unpatchify(self, x_B_T_H_W_M: torch.Tensor) -> torch.Tensor:
x_B_C_Tt_Hp_Wp = rearrange(
x_B_T_H_W_M,
"B T H W (p1 p2 t C) -> B C (T t) (H p1) (W p2)",
p1=self.patch_spatial,
p2=self.patch_spatial,
t=self.patch_temporal,
)
return x_B_C_Tt_Hp_Wp
def pad_to_patch_size(self, img, patch_size=(2, 2), padding_mode="circular"):
if padding_mode == "circular" and (torch.jit.is_tracing() or torch.jit.is_scripting()):
padding_mode = "reflect"
pad = ()
for i in range(img.ndim - 2):
pad = (0, (patch_size[i] - img.shape[i + 2] % patch_size[i]) % patch_size[i]) + pad
return torch.nn.functional.pad(img, pad, mode=padding_mode)
def forward(
self,
x: torch.Tensor,
timesteps: torch.Tensor,
context: torch.Tensor,
fps: Optional[torch.Tensor] = None,
padding_mask: Optional[torch.Tensor] = None,
use_gradient_checkpointing=False,
use_gradient_checkpointing_offload=False,
**kwargs,
):
orig_shape = list(x.shape)
x = self.pad_to_patch_size(x, (self.patch_temporal, self.patch_spatial, self.patch_spatial))
x_B_C_T_H_W = x
timesteps_B_T = timesteps
crossattn_emb = context
"""
Args:
x: (B, C, T, H, W) tensor of spatial-temp inputs
timesteps: (B, ) tensor of timesteps
crossattn_emb: (B, N, D) tensor of cross-attention embeddings
"""
x_B_T_H_W_D, rope_emb_L_1_1_D, extra_pos_emb_B_T_H_W_D_or_T_H_W_B_D = self.prepare_embedded_sequence(
x_B_C_T_H_W,
fps=fps,
padding_mask=padding_mask,
)
if timesteps_B_T.ndim == 1:
timesteps_B_T = timesteps_B_T.unsqueeze(1)
t_embedding_B_T_D, adaln_lora_B_T_3D = self.t_embedder[1](self.t_embedder[0](timesteps_B_T).to(x_B_T_H_W_D.dtype))
t_embedding_B_T_D = self.t_embedding_norm(t_embedding_B_T_D)
# for logging purpose
affline_scale_log_info = {}
affline_scale_log_info["t_embedding_B_T_D"] = t_embedding_B_T_D.detach()
self.affline_scale_log_info = affline_scale_log_info
self.affline_emb = t_embedding_B_T_D
self.crossattn_emb = crossattn_emb
if extra_pos_emb_B_T_H_W_D_or_T_H_W_B_D is not None:
assert (
x_B_T_H_W_D.shape == extra_pos_emb_B_T_H_W_D_or_T_H_W_B_D.shape
), f"{x_B_T_H_W_D.shape} != {extra_pos_emb_B_T_H_W_D_or_T_H_W_B_D.shape}"
block_kwargs = {
"rope_emb_L_1_1_D": rope_emb_L_1_1_D.unsqueeze(1).unsqueeze(0),
"adaln_lora_B_T_3D": adaln_lora_B_T_3D,
"extra_per_block_pos_emb": extra_pos_emb_B_T_H_W_D_or_T_H_W_B_D,
"transformer_options": kwargs.get("transformer_options", {}),
}
# The residual stream for this model has large values. To make fp16 compute_dtype work, we keep the residual stream
# in fp32, but run attention and MLP modules in fp16.
# An alternate method that clamps fp16 values "works" in the sense that it makes coherent images, but there is noticeable
# quality degradation and visual artifacts.
if x_B_T_H_W_D.dtype == torch.float16:
x_B_T_H_W_D = x_B_T_H_W_D.float()
for block in self.blocks:
x_B_T_H_W_D = gradient_checkpoint_forward(
block,
use_gradient_checkpointing=use_gradient_checkpointing,
use_gradient_checkpointing_offload=use_gradient_checkpointing_offload,
x_B_T_H_W_D=x_B_T_H_W_D,
emb_B_T_D=t_embedding_B_T_D,
crossattn_emb=crossattn_emb,
**block_kwargs,
)
x_B_T_H_W_O = self.final_layer(x_B_T_H_W_D.to(crossattn_emb.dtype), t_embedding_B_T_D, adaln_lora_B_T_3D=adaln_lora_B_T_3D)
x_B_C_Tt_Hp_Wp = self.unpatchify(x_B_T_H_W_O)[:, :, :orig_shape[-3], :orig_shape[-2], :orig_shape[-1]]
return x_B_C_Tt_Hp_Wp
def rotate_half(x):
x1 = x[..., : x.shape[-1] // 2]
x2 = x[..., x.shape[-1] // 2 :]
return torch.cat((-x2, x1), dim=-1)
def apply_rotary_pos_emb2(x, cos, sin, unsqueeze_dim=1):
cos = cos.unsqueeze(unsqueeze_dim)
sin = sin.unsqueeze(unsqueeze_dim)
x_embed = (x * cos) + (rotate_half(x) * sin)
return x_embed
class RotaryEmbedding(nn.Module):
def __init__(self, head_dim):
super().__init__()
self.rope_theta = 10000
inv_freq = 1.0 / (self.rope_theta ** (torch.arange(0, head_dim, 2, dtype=torch.int64).to(dtype=torch.float) / head_dim))
self.register_buffer("inv_freq", inv_freq, persistent=False)
@torch.no_grad()
def forward(self, x, position_ids):
inv_freq_expanded = self.inv_freq[None, :, None].float().expand(position_ids.shape[0], -1, 1).to(x.device)
position_ids_expanded = position_ids[:, None, :].float()
device_type = x.device.type if isinstance(x.device.type, str) and x.device.type != "mps" else "cpu"
with torch.autocast(device_type=device_type, enabled=False): # Force float32
freqs = (inv_freq_expanded.float() @ position_ids_expanded.float()).transpose(1, 2)
emb = torch.cat((freqs, freqs), dim=-1)
cos = emb.cos()
sin = emb.sin()
return cos.to(dtype=x.dtype), sin.to(dtype=x.dtype)
class LLMAdapterAttention(nn.Module):
def __init__(self, query_dim, context_dim, n_heads, head_dim, device=None, dtype=None, operations=None):
super().__init__()
inner_dim = head_dim * n_heads
self.n_heads = n_heads
self.head_dim = head_dim
self.query_dim = query_dim
self.context_dim = context_dim
self.q_proj = operations.Linear(query_dim, inner_dim, bias=False, device=device, dtype=dtype)
self.q_norm = operations.RMSNorm(self.head_dim, eps=1e-6, device=device, dtype=dtype)
self.k_proj = operations.Linear(context_dim, inner_dim, bias=False, device=device, dtype=dtype)
self.k_norm = operations.RMSNorm(self.head_dim, eps=1e-6, device=device, dtype=dtype)
self.v_proj = operations.Linear(context_dim, inner_dim, bias=False, device=device, dtype=dtype)
self.o_proj = operations.Linear(inner_dim, query_dim, bias=False, device=device, dtype=dtype)
def forward(self, x, mask=None, context=None, position_embeddings=None, position_embeddings_context=None):
context = x if context is None else context
input_shape = x.shape[:-1]
q_shape = (*input_shape, self.n_heads, self.head_dim)
context_shape = context.shape[:-1]
kv_shape = (*context_shape, self.n_heads, self.head_dim)
query_states = self.q_norm(self.q_proj(x).view(q_shape)).transpose(1, 2)
key_states = self.k_norm(self.k_proj(context).view(kv_shape)).transpose(1, 2)
value_states = self.v_proj(context).view(kv_shape).transpose(1, 2)
if position_embeddings is not None:
assert position_embeddings_context is not None
cos, sin = position_embeddings
query_states = apply_rotary_pos_emb2(query_states, cos, sin)
cos, sin = position_embeddings_context
key_states = apply_rotary_pos_emb2(key_states, cos, sin)
attn_output = torch.nn.functional.scaled_dot_product_attention(query_states, key_states, value_states, attn_mask=mask)
attn_output = attn_output.transpose(1, 2).reshape(*input_shape, -1).contiguous()
attn_output = self.o_proj(attn_output)
return attn_output
def init_weights(self):
torch.nn.init.zeros_(self.o_proj.weight)
class LLMAdapterTransformerBlock(nn.Module):
def __init__(self, source_dim, model_dim, num_heads=16, mlp_ratio=4.0, use_self_attn=False, layer_norm=False, device=None, dtype=None, operations=None):
super().__init__()
self.use_self_attn = use_self_attn
if self.use_self_attn:
self.norm_self_attn = operations.LayerNorm(model_dim, device=device, dtype=dtype) if layer_norm else operations.RMSNorm(model_dim, eps=1e-6, device=device, dtype=dtype)
self.self_attn = LLMAdapterAttention(
query_dim=model_dim,
context_dim=model_dim,
n_heads=num_heads,
head_dim=model_dim//num_heads,
device=device,
dtype=dtype,
operations=operations,
)
self.norm_cross_attn = operations.LayerNorm(model_dim, device=device, dtype=dtype) if layer_norm else operations.RMSNorm(model_dim, eps=1e-6, device=device, dtype=dtype)
self.cross_attn = LLMAdapterAttention(
query_dim=model_dim,
context_dim=source_dim,
n_heads=num_heads,
head_dim=model_dim//num_heads,
device=device,
dtype=dtype,
operations=operations,
)
self.norm_mlp = operations.LayerNorm(model_dim, device=device, dtype=dtype) if layer_norm else operations.RMSNorm(model_dim, eps=1e-6, device=device, dtype=dtype)
self.mlp = nn.Sequential(
operations.Linear(model_dim, int(model_dim * mlp_ratio), device=device, dtype=dtype),
nn.GELU(),
operations.Linear(int(model_dim * mlp_ratio), model_dim, device=device, dtype=dtype)
)
def forward(self, x, context, target_attention_mask=None, source_attention_mask=None, position_embeddings=None, position_embeddings_context=None):
if self.use_self_attn:
normed = self.norm_self_attn(x)
attn_out = self.self_attn(normed, mask=target_attention_mask, position_embeddings=position_embeddings, position_embeddings_context=position_embeddings)
x = x + attn_out
normed = self.norm_cross_attn(x)
attn_out = self.cross_attn(normed, mask=source_attention_mask, context=context, position_embeddings=position_embeddings, position_embeddings_context=position_embeddings_context)
x = x + attn_out
x = x + self.mlp(self.norm_mlp(x))
return x
def init_weights(self):
torch.nn.init.zeros_(self.mlp[2].weight)
self.cross_attn.init_weights()
class LLMAdapter(nn.Module):
def __init__(
self,
source_dim=1024,
target_dim=1024,
model_dim=1024,
num_layers=6,
num_heads=16,
use_self_attn=True,
layer_norm=False,
device=None,
dtype=None,
operations=None,
):
super().__init__()
self.embed = operations.Embedding(32128, target_dim, device=device, dtype=dtype)
if model_dim != target_dim:
self.in_proj = operations.Linear(target_dim, model_dim, device=device, dtype=dtype)
else:
self.in_proj = nn.Identity()
self.rotary_emb = RotaryEmbedding(model_dim//num_heads)
self.blocks = nn.ModuleList([
LLMAdapterTransformerBlock(source_dim, model_dim, num_heads=num_heads, use_self_attn=use_self_attn, layer_norm=layer_norm, device=device, dtype=dtype, operations=operations) for _ in range(num_layers)
])
self.out_proj = operations.Linear(model_dim, target_dim, device=device, dtype=dtype)
self.norm = operations.RMSNorm(target_dim, eps=1e-6, device=device, dtype=dtype)
def forward(self, source_hidden_states, target_input_ids, target_attention_mask=None, source_attention_mask=None):
if target_attention_mask is not None:
target_attention_mask = target_attention_mask.to(torch.bool)
if target_attention_mask.ndim == 2:
target_attention_mask = target_attention_mask.unsqueeze(1).unsqueeze(1)
if source_attention_mask is not None:
source_attention_mask = source_attention_mask.to(torch.bool)
if source_attention_mask.ndim == 2:
source_attention_mask = source_attention_mask.unsqueeze(1).unsqueeze(1)
context = source_hidden_states
x = self.in_proj(self.embed(target_input_ids).to(context.dtype))
position_ids = torch.arange(x.shape[1], device=x.device).unsqueeze(0)
position_ids_context = torch.arange(context.shape[1], device=x.device).unsqueeze(0)
position_embeddings = self.rotary_emb(x, position_ids)
position_embeddings_context = self.rotary_emb(x, position_ids_context)
for block in self.blocks:
x = block(x, context, target_attention_mask=target_attention_mask, source_attention_mask=source_attention_mask, position_embeddings=position_embeddings, position_embeddings_context=position_embeddings_context)
return self.norm(self.out_proj(x))
class AnimaDiT(MiniTrainDIT):
def __init__(self):
kwargs = {'image_model': 'anima', 'max_img_h': 240, 'max_img_w': 240, 'max_frames': 128, 'in_channels': 16, 'out_channels': 16, 'patch_spatial': 2, 'patch_temporal': 1, 'model_channels': 2048, 'concat_padding_mask': True, 'crossattn_emb_channels': 1024, 'pos_emb_cls': 'rope3d', 'pos_emb_learnable': True, 'pos_emb_interpolation': 'crop', 'min_fps': 1, 'max_fps': 30, 'use_adaln_lora': True, 'adaln_lora_dim': 256, 'num_blocks': 28, 'num_heads': 16, 'extra_per_block_abs_pos_emb': False, 'rope_h_extrapolation_ratio': 4.0, 'rope_w_extrapolation_ratio': 4.0, 'rope_t_extrapolation_ratio': 1.0, 'extra_h_extrapolation_ratio': 1.0, 'extra_w_extrapolation_ratio': 1.0, 'extra_t_extrapolation_ratio': 1.0, 'rope_enable_fps_modulation': False, 'dtype': torch.bfloat16, 'device': None, 'operations': torch.nn}
super().__init__(**kwargs)
self.llm_adapter = LLMAdapter(device=kwargs.get("device"), dtype=kwargs.get("dtype"), operations=kwargs.get("operations"))
def preprocess_text_embeds(self, text_embeds, text_ids, t5xxl_weights=None):
if text_ids is not None:
out = self.llm_adapter(text_embeds, text_ids)
if t5xxl_weights is not None:
out = out * t5xxl_weights
if out.shape[1] < 512:
out = torch.nn.functional.pad(out, (0, 0, 0, 512 - out.shape[1]))
return out
else:
return text_embeds
def forward(
self,
x, timesteps, context,
use_gradient_checkpointing=False,
use_gradient_checkpointing_offload=False,
**kwargs
):
t5xxl_ids = kwargs.pop("t5xxl_ids", None)
if t5xxl_ids is not None:
context = self.preprocess_text_embeds(context, t5xxl_ids, t5xxl_weights=kwargs.pop("t5xxl_weights", None))
return super().forward(
x, timesteps, context,
use_gradient_checkpointing=use_gradient_checkpointing, use_gradient_checkpointing_offload=use_gradient_checkpointing_offload,
**kwargs
)