693 lines
25 KiB
Python
693 lines
25 KiB
Python
"""Video VAE Decoder for LTX-2 with timestep conditioning.
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Architecture (from PyTorch weights):
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- conv_in: 128 -> 1024
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- up_blocks.0: 5 ResBlocks at 1024 (with timestep)
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- up_blocks.1: Conv 1024 -> 4096, depth2space -> 512, upscale 2x
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- up_blocks.2: 5 ResBlocks at 512 (with timestep)
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- up_blocks.3: Conv 512 -> 2048, depth2space -> 256, upscale 2x
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- up_blocks.4: 5 ResBlocks at 256 (with timestep)
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- up_blocks.5: Conv 256 -> 1024, depth2space -> 128, upscale 2x
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- up_blocks.6: 5 ResBlocks at 128 (with timestep)
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- pixel_norm + timestep modulation (last_scale_shift_table)
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- conv_out: 128 -> 48
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- unpatchify: 48 -> 3 with patch_size=4
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"""
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import math
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from typing import Optional, Dict
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from pathlib import Path
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import mlx.core as mx
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import mlx.nn as nn
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from mlx_video.models.ltx_2.video_vae.convolution import CausalConv3d, PaddingModeType
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from mlx_video.models.ltx_2.video_vae.ops import unpatchify, PerChannelStatistics
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from mlx_video.models.ltx_2.video_vae.sampling import DepthToSpaceUpsample
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from mlx_video.models.ltx_2.video_vae.tiling import TilingConfig, decode_with_tiling
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def get_timestep_embedding(
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timesteps: mx.array,
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embedding_dim: int,
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flip_sin_to_cos: bool = True,
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downscale_freq_shift: float = 0,
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scale: float = 1,
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max_period: int = 10000,
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) -> mx.array:
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"""Create sinusoidal timestep embeddings."""
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half_dim = embedding_dim // 2
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exponent = -math.log(max_period) * mx.arange(0, half_dim, dtype=mx.float32)
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exponent = exponent / (half_dim - downscale_freq_shift)
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emb = mx.exp(exponent)
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emb = timesteps[:, None].astype(mx.float32) * emb[None, :]
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emb = scale * emb
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emb = mx.concatenate([mx.sin(emb), mx.cos(emb)], axis=-1)
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if flip_sin_to_cos:
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emb = mx.concatenate([emb[:, half_dim:], emb[:, :half_dim]], axis=-1)
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if embedding_dim % 2 == 1:
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emb = mx.pad(emb, [(0, 0), (0, 1)])
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return emb
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class TimestepEmbedding(nn.Module):
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"""MLP for timestep embedding."""
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def __init__(self, in_channels: int, time_embed_dim: int):
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super().__init__()
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self.linear_1 = nn.Linear(in_channels, time_embed_dim)
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self.linear_2 = nn.Linear(time_embed_dim, time_embed_dim)
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self.act = nn.SiLU()
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def __call__(self, sample: mx.array) -> mx.array:
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sample = self.linear_1(sample)
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sample = self.act(sample)
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sample = self.linear_2(sample)
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return sample
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class PixArtAlphaTimestepEmbedder(nn.Module):
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"""Combined timestep embedding (sinusoidal + MLP)."""
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def __init__(self, embedding_dim: int):
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super().__init__()
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self.timestep_embedder = TimestepEmbedding(
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in_channels=256,
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time_embed_dim=embedding_dim
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)
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def __call__(self, timestep: mx.array, hidden_dtype: mx.Dtype = mx.float32) -> mx.array:
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timesteps_proj = get_timestep_embedding(
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timestep,
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embedding_dim=256,
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flip_sin_to_cos=True,
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downscale_freq_shift=0
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)
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timesteps_emb = self.timestep_embedder(timesteps_proj.astype(hidden_dtype))
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return timesteps_emb
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class ResnetBlock3DSimple(nn.Module):
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"""ResNet block with optional timestep conditioning.
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Weight keys: conv1.conv, conv2.conv, scale_shift_table
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"""
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def __init__(
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self,
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channels: int,
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spatial_padding_mode: PaddingModeType = PaddingModeType.REFLECT,
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timestep_conditioning: bool = False,
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):
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super().__init__()
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self.timestep_conditioning = timestep_conditioning
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# Nested conv structure to match PyTorch naming: conv1.conv.weight
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self.conv1 = self._make_conv_wrapper(channels, channels, spatial_padding_mode)
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self.conv2 = self._make_conv_wrapper(channels, channels, spatial_padding_mode)
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self.act = nn.SiLU()
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# Scale-shift table for timestep conditioning: [shift1, scale1, shift2, scale2]
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if timestep_conditioning:
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self.scale_shift_table = mx.zeros((4, channels))
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def _make_conv_wrapper(self, in_ch, out_ch, padding_mode):
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"""Create a wrapper object with a 'conv' attribute to match PyTorch naming."""
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class ConvWrapper(nn.Module):
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def __init__(self_inner):
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super().__init__()
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self_inner.conv = CausalConv3d(
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in_channels=in_ch,
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out_channels=out_ch,
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kernel_size=3,
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stride=1,
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padding=1,
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spatial_padding_mode=padding_mode,
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)
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def __call__(self_inner, x, causal=False):
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return self_inner.conv(x, causal=causal)
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return ConvWrapper()
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def pixel_norm(self, x: mx.array, eps: float = 1e-8) -> mx.array:
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"""Apply pixel normalization."""
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return x / mx.sqrt(mx.mean(x ** 2, axis=1, keepdims=True) + eps)
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def __call__(
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self,
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x: mx.array,
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causal: bool = False,
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timestep_embed: Optional[mx.array] = None,
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) -> mx.array:
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residual = x
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batch_size = x.shape[0]
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# Block 1 with optional timestep conditioning
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x = self.pixel_norm(x)
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if self.timestep_conditioning and timestep_embed is not None:
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# scale_shift_table: (4, C), timestep_embed: (B, 4*C, 1, 1, 1)
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# Combine table with timestep embedding
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ada_values = self.scale_shift_table[None, :, :, None, None, None] # (1, 4, C, 1, 1, 1)
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# Reshape timestep_embed from (B, 4*C, 1, 1, 1) to (B, 4, C, 1, 1, 1)
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channels = self.scale_shift_table.shape[1]
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ts_reshaped = timestep_embed.reshape(batch_size, 4, channels, 1, 1, 1)
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ada_values = ada_values + ts_reshaped
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shift1 = ada_values[:, 0] # (B, C, 1, 1, 1)
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scale1 = ada_values[:, 1]
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shift2 = ada_values[:, 2]
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scale2 = ada_values[:, 3]
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x = x * (1 + scale1) + shift1
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x = self.act(x)
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x = self.conv1(x, causal=causal)
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# Block 2 with optional timestep conditioning
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x = self.pixel_norm(x)
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if self.timestep_conditioning and timestep_embed is not None:
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x = x * (1 + scale2) + shift2
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x = self.act(x)
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x = self.conv2(x, causal=causal)
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return x + residual
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class ResBlockGroup(nn.Module):
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"""Group of ResNet blocks with shared timestep embedding.
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PyTorch naming: res_blocks.0, res_blocks.1, etc.
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"""
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def __init__(
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self,
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channels: int,
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num_layers: int = 5,
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spatial_padding_mode: PaddingModeType = PaddingModeType.REFLECT,
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timestep_conditioning: bool = False,
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):
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super().__init__()
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self.timestep_conditioning = timestep_conditioning
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# Time embedder for this block group: embed_dim = 4 * channels
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if timestep_conditioning:
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self.time_embedder = PixArtAlphaTimestepEmbedder(
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embedding_dim=channels * 4
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)
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# Use dict with int keys for MLX to track parameters properly
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self.res_blocks = {
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i: ResnetBlock3DSimple(
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channels,
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spatial_padding_mode,
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timestep_conditioning=timestep_conditioning
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)
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for i in range(num_layers)
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}
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def __call__(
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self,
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x: mx.array,
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causal: bool = False,
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timestep: Optional[mx.array] = None,
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) -> mx.array:
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timestep_embed = None
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if self.timestep_conditioning and timestep is not None:
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batch_size = x.shape[0]
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timestep_embed = self.time_embedder(
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timestep.flatten(),
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hidden_dtype=x.dtype
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)
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# Reshape to (B, 4*C, 1, 1, 1) for broadcasting
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timestep_embed = timestep_embed.reshape(batch_size, -1, 1, 1, 1)
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for res_block in self.res_blocks.values():
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x = res_block(x, causal=causal, timestep_embed=timestep_embed)
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return x
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class LTX2VideoDecoder(nn.Module):
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"""LTX-2 Video VAE Decoder with timestep conditioning.
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Architecture:
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- conv_in: 128 -> 1024
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- up_blocks.0: 5 ResBlocks at 1024 (with timestep)
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- up_blocks.1: Upsampler 1024 -> 512
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- up_blocks.2: 5 ResBlocks at 512 (with timestep)
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- up_blocks.3: Upsampler 512 -> 256
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- up_blocks.4: 5 ResBlocks at 256 (with timestep)
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- up_blocks.5: Upsampler 256 -> 128
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- up_blocks.6: 5 ResBlocks at 128 (with timestep)
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- conv_out: 128 -> 48 (3 * 4^2 for patch_size=4)
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"""
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# Block definitions: ("res", channels, num_layers) or ("d2s", in_channels, reduction, stride)
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# stride is (D, H, W) tuple
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DEFAULT_BLOCKS = [
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("res", 1024, 5),
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("d2s", 1024, 2, (2, 2, 2)),
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("res", 512, 5),
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("d2s", 512, 2, (2, 2, 2)),
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("res", 256, 5),
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("d2s", 256, 2, (2, 2, 2)),
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("res", 128, 5),
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]
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def __init__(
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self,
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in_channels: int = 128,
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out_channels: int = 3,
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patch_size: int = 4,
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num_layers_per_block: int = 5,
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spatial_padding_mode: PaddingModeType = PaddingModeType.REFLECT,
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timestep_conditioning: bool = True,
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decoder_blocks: list = None,
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):
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super().__init__()
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self.patch_size = patch_size
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self.in_channels = in_channels
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self.timestep_conditioning = timestep_conditioning
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# Decode parameters (configurable via constructor)
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self.decode_noise_scale = 0.025 # Set to 0.0 to disable noise
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self.decode_timestep = 0.05
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# Per-channel statistics for denormalization (loaded from weights)
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self.per_channel_statistics = PerChannelStatistics(latent_channels=in_channels)
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blocks = decoder_blocks or self.DEFAULT_BLOCKS
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first_ch = blocks[0][1]
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last_ch = blocks[-1][1]
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# Initial conv: in_channels -> first block channels
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class ConvInWrapper(nn.Module):
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def __init__(self_inner):
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super().__init__()
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self_inner.conv = CausalConv3d(
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in_channels=in_channels,
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out_channels=first_ch,
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kernel_size=3,
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stride=1,
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padding=1,
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spatial_padding_mode=spatial_padding_mode,
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)
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def __call__(self_inner, x, causal=False):
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return self_inner.conv(x, causal=causal)
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self.conv_in = ConvInWrapper()
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# Build up blocks from config
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self.up_blocks = {}
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for idx, block_def in enumerate(blocks):
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block_type = block_def[0]
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ch = block_def[1]
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if block_type == "res":
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num_layers = block_def[2] if len(block_def) > 2 else num_layers_per_block
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self.up_blocks[idx] = ResBlockGroup(ch, num_layers, spatial_padding_mode, timestep_conditioning)
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elif block_type == "d2s":
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reduction = block_def[2] if len(block_def) > 2 else 2
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stride = block_def[3] if len(block_def) > 3 else (2, 2, 2)
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residual = block_def[4] if len(block_def) > 4 else True
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self.up_blocks[idx] = DepthToSpaceUpsample(
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dims=3,
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in_channels=ch,
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stride=stride,
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residual=residual,
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out_channels_reduction_factor=reduction,
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spatial_padding_mode=spatial_padding_mode,
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)
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final_out_channels = out_channels * patch_size * patch_size
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class ConvOutWrapper(nn.Module):
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def __init__(self_inner):
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super().__init__()
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self_inner.conv = CausalConv3d(
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in_channels=last_ch,
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out_channels=final_out_channels,
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kernel_size=3,
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stride=1,
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padding=1,
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spatial_padding_mode=spatial_padding_mode,
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)
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def __call__(self_inner, x, causal=False):
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return self_inner.conv(x, causal=causal)
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self.conv_out = ConvOutWrapper()
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self.act = nn.SiLU()
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if timestep_conditioning:
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self.timestep_scale_multiplier = mx.array(1000.0)
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self.last_time_embedder = PixArtAlphaTimestepEmbedder(
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embedding_dim=last_ch * 2
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)
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self.last_scale_shift_table = mx.zeros((2, last_ch))
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def sanitize(self, weights: Dict[str, mx.array]) -> Dict[str, mx.array]:
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# Build decoder weights dict with key remapping
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sanitized = {}
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if "per_channel_statistics.mean" in weights:
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return weights
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for key, value in weights.items():
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new_key = key
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if not key.startswith("vae.") or key.startswith("vae.encoder."):
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continue
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if key.startswith("vae.per_channel_statistics."):
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# Map per-channel statistics (use exact key matching)
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if key == "vae.per_channel_statistics.mean-of-means":
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new_key = "per_channel_statistics.mean"
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elif key == "vae.per_channel_statistics.std-of-means":
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new_key = "per_channel_statistics.std"
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else:
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continue # Skip other statistics keys
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if key.startswith("vae.decoder."):
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new_key = key.replace("vae.decoder.", "")
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# Handle Conv3d weight transpose: (O, I, D, H, W) -> (O, D, H, W, I)
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if ".conv.weight" in key and value.ndim == 5:
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value = mx.transpose(value, (0, 2, 3, 4, 1))
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if ".conv.bias" in key:
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pass # bias doesn't need transpose
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if ".conv.weight" in new_key or ".conv.bias" in new_key:
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if ".conv.conv.weight" not in new_key and ".conv.conv.bias" not in new_key:
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new_key = new_key.replace(".conv.weight", ".conv.conv.weight")
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new_key = new_key.replace(".conv.bias", ".conv.conv.bias")
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sanitized[new_key] = value
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return sanitized
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@classmethod
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def from_pretrained(cls, model_path: Path, strict: bool = True) -> "LTX2VideoDecoder":
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"""Load a pretrained decoder from a directory with config.json and weights.
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Args:
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model_path: Path to directory containing config.json and safetensors files,
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or path to a single safetensors file.
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strict: Whether to require all weight keys to match.
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Returns:
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Loaded LTX2VideoDecoder instance
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"""
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import json
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model_path = Path(model_path)
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config_dict = {}
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# Load config from directory
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config_path = model_path / "config.json"
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if config_path.exists():
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with open(config_path) as f:
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config_dict = json.load(f)
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# Load weights from directory
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weight_files = sorted(model_path.glob("*.safetensors"))
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if not weight_files:
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raise FileNotFoundError(f"No safetensors files found in {model_path}")
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weights = {}
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for wf in weight_files:
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weights.update(mx.load(str(wf)))
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# Infer block structure from weights
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decoder_blocks = cls._infer_blocks(weights)
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# Determine spatial padding mode from config
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spatial_padding_mode_str = config_dict.get("spatial_padding_mode", "reflect")
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spatial_padding_mode = PaddingModeType(spatial_padding_mode_str)
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model = cls(
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timestep_conditioning=config_dict.get("timestep_conditioning", False),
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decoder_blocks=decoder_blocks,
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spatial_padding_mode=spatial_padding_mode,
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)
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weights = model.sanitize(weights)
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model.load_weights(list(weights.items()), strict=strict)
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return model
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@staticmethod
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def _infer_blocks(weights: dict) -> list:
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"""Infer decoder block structure from weight keys."""
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block_indices = set()
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for k in weights:
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if "up_blocks." in k:
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idx_str = k.split("up_blocks.")[1].split(".")[0]
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if idx_str.isdigit():
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block_indices.add(int(idx_str))
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if not block_indices:
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return None
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# First pass: collect block info
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raw_blocks = []
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for idx in sorted(block_indices):
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has_conv = any(f"up_blocks.{idx}.conv." in k for k in weights)
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res_indices = set()
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for k in weights:
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prefix = f"up_blocks.{idx}.res_blocks."
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if prefix in k:
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res_idx = k.split(prefix)[1].split(".")[0]
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if res_idx.isdigit():
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res_indices.add(int(res_idx))
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if has_conv and not res_indices:
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# D2S block - get conv shape
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for k, v in weights.items():
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if f"up_blocks.{idx}.conv." in k and "weight" in k:
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in_ch = v.shape[-1] if v.ndim == 5 else v.shape[1]
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conv_out_ch = v.shape[0]
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raw_blocks.append(("d2s", in_ch, conv_out_ch))
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break
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elif res_indices:
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num_res = max(res_indices) + 1
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for k, v in weights.items():
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if f"up_blocks.{idx}.res_blocks.0.conv1" in k and "weight" in k:
|
|
ch = v.shape[0]
|
|
raw_blocks.append(("res", ch, num_res))
|
|
break
|
|
|
|
# Second pass: determine d2s strides using the channel progression
|
|
# For each d2s block, the next res block tells us the expected output channels
|
|
blocks = []
|
|
d2s_strides = []
|
|
for i, block in enumerate(raw_blocks):
|
|
if block[0] == "res":
|
|
blocks.append(block)
|
|
elif block[0] == "d2s":
|
|
in_ch, conv_out_ch = block[1], block[2]
|
|
# Find next res block's channels
|
|
next_ch = None
|
|
for j in range(i + 1, len(raw_blocks)):
|
|
if raw_blocks[j][0] == "res":
|
|
next_ch = raw_blocks[j][1]
|
|
break
|
|
|
|
if next_ch is None:
|
|
next_ch = in_ch // 2 # fallback
|
|
|
|
# out_ch = in_ch // reduction
|
|
reduction = in_ch // next_ch if next_ch > 0 else 2
|
|
|
|
# conv_out = next_ch * multiplier → multiplier = conv_out / next_ch
|
|
multiplier = conv_out_ch // next_ch if next_ch > 0 else 8
|
|
|
|
# Determine stride from multiplier
|
|
if multiplier == 8:
|
|
stride = (2, 2, 2)
|
|
elif multiplier == 4:
|
|
stride = (1, 2, 2)
|
|
elif multiplier == 2:
|
|
stride = (2, 1, 1)
|
|
else:
|
|
stride = (2, 2, 2)
|
|
|
|
d2s_strides.append(stride)
|
|
blocks.append(("d2s", in_ch, reduction, stride))
|
|
|
|
if not blocks:
|
|
return None
|
|
|
|
# Determine residual flag: LTX-2 has uniform (2,2,2) strides with reduction=2 → residual=True
|
|
# LTX-2.3 has mixed strides or reduction=1 → residual=False
|
|
has_mixed_strides = len(set(d2s_strides)) > 1
|
|
has_non_standard_reduction = any(b[2] != 2 for b in blocks if b[0] == "d2s")
|
|
use_residual = not has_mixed_strides and not has_non_standard_reduction
|
|
|
|
# Apply residual flag to all d2s blocks
|
|
final_blocks = []
|
|
for block in blocks:
|
|
if block[0] == "d2s":
|
|
final_blocks.append(("d2s", block[1], block[2], block[3], use_residual))
|
|
else:
|
|
final_blocks.append(block)
|
|
|
|
return final_blocks
|
|
|
|
|
|
|
|
def pixel_norm(self, x: mx.array, eps: float = 1e-8) -> mx.array:
|
|
"""Apply pixel normalization."""
|
|
return x / mx.sqrt(mx.mean(x ** 2, axis=1, keepdims=True) + eps)
|
|
|
|
def __call__(
|
|
self,
|
|
sample: mx.array,
|
|
causal: bool = False,
|
|
timestep: Optional[mx.array] = None,
|
|
debug: bool = False,
|
|
chunked_conv: bool = False,
|
|
) -> mx.array:
|
|
|
|
|
|
batch_size = sample.shape[0]
|
|
|
|
|
|
|
|
# Add noise if timestep conditioning is enabled
|
|
if self.timestep_conditioning:
|
|
noise = mx.random.normal(sample.shape) * self.decode_noise_scale
|
|
sample = noise + (1.0 - self.decode_noise_scale) * sample
|
|
|
|
|
|
sample = self.per_channel_statistics.un_normalize(sample)
|
|
|
|
|
|
if timestep is None and self.timestep_conditioning:
|
|
timestep = mx.full((batch_size,), self.decode_timestep)
|
|
|
|
scaled_timestep = None
|
|
if self.timestep_conditioning and timestep is not None:
|
|
scaled_timestep = timestep * self.timestep_scale_multiplier
|
|
|
|
x = self.conv_in(sample, causal=causal)
|
|
|
|
|
|
for i, block in self.up_blocks.items():
|
|
if isinstance(block, ResBlockGroup):
|
|
x = block(x, causal=causal, timestep=scaled_timestep)
|
|
elif isinstance(block, DepthToSpaceUpsample):
|
|
x = block(x, causal=causal, chunked_conv=chunked_conv)
|
|
else:
|
|
x = block(x, causal=causal)
|
|
|
|
|
|
x = self.pixel_norm(x)
|
|
|
|
|
|
if self.timestep_conditioning and scaled_timestep is not None:
|
|
embedded_timestep = self.last_time_embedder(
|
|
scaled_timestep.flatten(),
|
|
hidden_dtype=x.dtype
|
|
)
|
|
embedded_timestep = embedded_timestep.reshape(batch_size, -1, 1, 1, 1)
|
|
|
|
ada_values = self.last_scale_shift_table[None, :, :, None, None, None] # (1, 2, 128, 1, 1, 1)
|
|
ts_reshaped = embedded_timestep.reshape(batch_size, 2, 128, 1, 1, 1)
|
|
ada_values = ada_values + ts_reshaped
|
|
|
|
shift = ada_values[:, 0] # (B, 128, 1, 1, 1)
|
|
scale = ada_values[:, 1]
|
|
|
|
x = x * (1 + scale) + shift
|
|
|
|
|
|
x = self.act(x)
|
|
|
|
|
|
x = self.conv_out(x, causal=causal)
|
|
|
|
# Unpatchify: (B, 48, F', H', W') -> (B, 3, F, H*4, W*4)
|
|
x = unpatchify(x, patch_size_hw=self.patch_size, patch_size_t=1)
|
|
|
|
|
|
return x
|
|
|
|
def decode_tiled(
|
|
self,
|
|
sample: mx.array,
|
|
tiling_config: Optional[TilingConfig] = None,
|
|
tiling_mode: str = "auto",
|
|
causal: bool = False,
|
|
timestep: Optional[mx.array] = None,
|
|
debug: bool = False,
|
|
on_frames_ready: Optional[callable] = None,
|
|
) -> mx.array:
|
|
"""Decode latents using tiling to reduce memory usage.
|
|
|
|
This method is useful for decoding large videos that would otherwise
|
|
cause out-of-memory errors. It divides the latents into tiles,
|
|
decodes each tile separately, and blends them together.
|
|
|
|
Args:
|
|
sample: Input latents of shape (B, C, F, H, W).
|
|
tiling_config: Tiling configuration. If None, uses TilingConfig.default().
|
|
causal: Whether to use causal convolutions.
|
|
timestep: Optional timestep for conditioning.
|
|
debug: Whether to print debug info.
|
|
|
|
Returns:
|
|
Decoded video of shape (B, 3, F*8, H*8, W*8).
|
|
"""
|
|
if tiling_config is None:
|
|
tiling_config = TilingConfig.default()
|
|
|
|
# Check if tiling is actually needed
|
|
_, _, f, h, w = sample.shape
|
|
needs_spatial_tiling = False
|
|
needs_temporal_tiling = False
|
|
|
|
# Spatial scale is 32 (8x VAE upsample + 4x unpatchify)
|
|
# Temporal scale is 8
|
|
spatial_scale = 32
|
|
temporal_scale = 8
|
|
|
|
if tiling_config.spatial_config is not None:
|
|
s_cfg = tiling_config.spatial_config
|
|
tile_size_latent = s_cfg.tile_size_in_pixels // spatial_scale
|
|
if h > tile_size_latent or w > tile_size_latent:
|
|
needs_spatial_tiling = True
|
|
|
|
if tiling_config.temporal_config is not None:
|
|
t_cfg = tiling_config.temporal_config
|
|
tile_size_latent = t_cfg.tile_size_in_frames // temporal_scale
|
|
if f > tile_size_latent:
|
|
needs_temporal_tiling = True
|
|
|
|
# Auto-enable chunked conv for modes where it helps (larger tiles)
|
|
# Chunked conv reduces memory by processing conv+depth_to_space in temporal chunks
|
|
use_chunked_conv = tiling_mode in ("conservative", "none", "auto", "default", "spatial")
|
|
|
|
if not needs_spatial_tiling and not needs_temporal_tiling:
|
|
# No tiling needed, use regular decode
|
|
return self(sample, causal=causal, timestep=timestep, debug=debug, chunked_conv=use_chunked_conv)
|
|
|
|
return decode_with_tiling(
|
|
decoder_fn=self,
|
|
latents=sample,
|
|
tiling_config=tiling_config,
|
|
spatial_scale=32, # VAE spatial: 8x upsampling + 4x unpatchify = 32x
|
|
temporal_scale=8, # VAE temporal upsampling factor
|
|
causal=causal,
|
|
timestep=timestep,
|
|
chunked_conv=use_chunked_conv,
|
|
on_frames_ready=on_frames_ready,
|
|
)
|
|
|
|
|
|
# Backward-compatible alias
|
|
VideoDecoder = LTX2VideoDecoder
|