#!/usr/bin/env python3 """ Compute latent representations for video generation training. This module provides functionality for processing video and image files, including: - Loading videos/images from various file formats (CSV, JSON, JSONL) - Resizing, cropping, and transforming media - MediaDataset for video-only preprocessing workflows - BucketSampler for grouping videos by resolution Can be used as a standalone script: python scripts/process_videos.py dataset.csv --resolution-buckets 768x768x25 \ --output-dir /path/to/output --model-source /path/to/ltx2.safetensors """ import json import math from pathlib import Path from typing import Any import numpy as np import pandas as pd import torch import torchaudio import typer from pillow_heif import register_heif_opener from rich.console import Console from rich.progress import ( BarColumn, MofNCompleteColumn, Progress, SpinnerColumn, TaskProgressColumn, TextColumn, TimeElapsedColumn, TimeRemainingColumn, ) from torch.utils.data import DataLoader, Dataset from torchvision import transforms from torchvision.transforms import InterpolationMode from torchvision.transforms.functional import crop, resize, to_tensor from transformers.utils.logging import disable_progress_bar from ltx_core.model.audio_vae.ops import AudioProcessor from ltx_trainer import logger from ltx_trainer.model_loader import load_audio_vae_encoder, load_video_vae_encoder from ltx_trainer.utils import open_image_as_srgb from ltx_trainer.video_utils import get_video_frame_count, read_video disable_progress_bar() # Register HEIF/HEIC support register_heif_opener() # Constants for validation VAE_SPATIAL_FACTOR = 32 VAE_TEMPORAL_FACTOR = 8 # Audio constants AUDIO_LATENT_CHANNELS = 8 AUDIO_FREQUENCY_BINS = 16 app = typer.Typer( pretty_exceptions_enable=False, no_args_is_help=True, help="Process videos/images and save latent representations for video generation training.", ) class MediaDataset(Dataset): """ Dataset for processing video and image files. This dataset is designed for media preprocessing workflows where you need to: - Load and preprocess videos/images - Apply resizing and cropping transformations - Handle different resolution buckets - Filter out invalid media files - Optionally extract audio from video files """ def __init__( self, dataset_file: str | Path, main_media_column: str, video_column: str, resolution_buckets: list[tuple[int, int, int]], reshape_mode: str = "center", with_audio: bool = False, ) -> None: """ Initialize the media dataset. Args: dataset_file: Path to CSV/JSON/JSONL metadata file video_column: Column name for video paths in the metadata file resolution_buckets: List of (frames, height, width) tuples reshape_mode: How to crop videos ("center", "random") with_audio: Whether to extract audio from video files """ super().__init__() self.dataset_file = Path(dataset_file) self.main_media_column = main_media_column self.resolution_buckets = resolution_buckets self.reshape_mode = reshape_mode self.with_audio = with_audio # First load main media paths self.main_media_paths = self._load_video_paths(main_media_column) # Then load reference video paths self.video_paths = self._load_video_paths(video_column) # Filter out videos with insufficient frames self._filter_valid_videos() self.max_target_frames = max(self.resolution_buckets, key=lambda x: x[0])[0] # Set up video transforms self.transforms = transforms.Compose( [ transforms.Lambda(lambda x: x.clamp_(0, 1)), transforms.Normalize(mean=[0.5, 0.5, 0.5], std=[0.5, 0.5, 0.5], inplace=True), ] ) def __len__(self) -> int: return len(self.video_paths) def __getitem__(self, index: int) -> dict[str, Any]: """Get a single video/image with metadata, and optionally audio.""" if isinstance(index, list): # Special case for BucketSampler - return cached data return index video_path: Path = self.video_paths[index] # Compute relative path of the video data_root = self.dataset_file.parent relative_path = str(video_path.relative_to(data_root)) media_relative_path = str(self.main_media_paths[index].relative_to(data_root)) if video_path.suffix.lower() in [".png", ".jpg", ".jpeg"]: media_tensor = self._preprocess_image(video_path) fps = 1.0 audio_data = None # Images don't have audio else: media_tensor, fps = self._preprocess_video(video_path) # Extract audio if enabled if self.with_audio: # Calculate target duration from the processed video frames # This ensures audio is trimmed to match the exact video duration # media_tensor is [C, F, H, W] so shape[1] is num_frames target_duration = media_tensor.shape[1] / fps audio_data = self._extract_audio(video_path, target_duration) else: audio_data = None # media_tensor is [C, F, H, W] format for VAE compatibility _, num_frames, height, width = media_tensor.shape result = { "video": media_tensor, "relative_path": relative_path, "main_media_relative_path": media_relative_path, "video_metadata": { "num_frames": num_frames, "height": height, "width": width, "fps": fps, }, } # Add audio data if available if audio_data is not None: result["audio"] = audio_data return result @staticmethod def _extract_audio(video_path: Path, target_duration: float) -> dict[str, torch.Tensor | int] | None: """Extract audio track from a video file, trimmed to match video duration.""" try: # torchaudio can extract audio from video files directly # waveform shape: [channels, samples] waveform, sample_rate = torchaudio.load(str(video_path)) # Trim or pad to target duration target_samples = int(target_duration * sample_rate) current_samples = waveform.shape[-1] if current_samples > target_samples: # Trim to target duration waveform = waveform[..., :target_samples] elif current_samples < target_samples: # Pad with zeros to target duration padding = target_samples - current_samples waveform = torch.nn.functional.pad(waveform, (0, padding)) logger.warning(f"Padded audio to {target_duration:.2f} seconds for {video_path}") return {"waveform": waveform, "sample_rate": sample_rate} except Exception as e: logger.debug(f"Could not extract audio from {video_path}: {e}") return None def _load_video_paths(self, column: str) -> list[Path]: """Load video paths from the specified data source.""" if self.dataset_file.suffix == ".csv": return self._load_video_paths_from_csv(column) elif self.dataset_file.suffix == ".json": return self._load_video_paths_from_json(column) elif self.dataset_file.suffix == ".jsonl": return self._load_video_paths_from_jsonl(column) else: raise ValueError("Expected `dataset_file` to be a path to a CSV, JSON, or JSONL file.") def _load_video_paths_from_csv(self, column: str) -> list[Path]: """Load video paths from a CSV file.""" df = pd.read_csv(self.dataset_file) if column not in df.columns: raise ValueError(f"Column '{column}' not found in CSV file") data_root = self.dataset_file.parent video_paths = [data_root / Path(line.strip()) for line in df[column].tolist()] # Validate that all paths exist invalid_paths = [path for path in video_paths if not path.is_file()] if invalid_paths: raise ValueError(f"Found {len(invalid_paths)} invalid video paths. First few: {invalid_paths[:5]}") return video_paths def _load_video_paths_from_json(self, column: str) -> list[Path]: """Load video paths from a JSON file.""" with open(self.dataset_file, "r", encoding="utf-8") as file: data = json.load(file) if not isinstance(data, list): raise ValueError("JSON file must contain a list of objects") data_root = self.dataset_file.parent video_paths = [] for entry in data: if column not in entry: raise ValueError(f"Key '{column}' not found in JSON entry") video_paths.append(data_root / Path(entry[column].strip())) # Validate that all paths exist invalid_paths = [path for path in video_paths if not path.is_file()] if invalid_paths: raise ValueError(f"Found {len(invalid_paths)} invalid video paths. First few: {invalid_paths[:5]}") return video_paths def _load_video_paths_from_jsonl(self, column: str) -> list[Path]: """Load video paths from a JSONL file.""" data_root = self.dataset_file.parent video_paths = [] with open(self.dataset_file, "r", encoding="utf-8") as file: for line in file: entry = json.loads(line) if column not in entry: raise ValueError(f"Key '{column}' not found in JSONL entry") video_paths.append(data_root / Path(entry[column].strip())) # Validate that all paths exist invalid_paths = [path for path in video_paths if not path.is_file()] if invalid_paths: raise ValueError(f"Found {len(invalid_paths)} invalid video paths. First few: {invalid_paths[:5]}") return video_paths def _filter_valid_videos(self) -> None: """Filter out videos with insufficient frames.""" original_length = len(self.video_paths) valid_video_paths = [] valid_main_media_paths = [] min_frames_required = min(self.resolution_buckets, key=lambda x: x[0])[0] for i, video_path in enumerate(self.video_paths): if video_path.suffix.lower() in [".png", ".jpg", ".jpeg"]: valid_video_paths.append(video_path) valid_main_media_paths.append(self.main_media_paths[i]) continue try: frame_count = get_video_frame_count(video_path) if frame_count >= min_frames_required: valid_video_paths.append(video_path) valid_main_media_paths.append(self.main_media_paths[i]) else: logger.warning( f"Skipping video at {video_path} - has {frame_count} frames, " f"which is less than the minimum required frames ({min_frames_required})" ) except Exception as e: logger.warning(f"Failed to read video at {video_path}: {e!s}") # Update both path lists to maintain synchronization self.video_paths = valid_video_paths self.main_media_paths = valid_main_media_paths if len(self.video_paths) < original_length: logger.warning( f"Filtered out {original_length - len(self.video_paths)} videos with insufficient frames. " f"Proceeding with {len(self.video_paths)} valid videos." ) def _preprocess_image(self, path: Path) -> torch.Tensor: """Preprocess a single image by resizing and applying transforms.""" image = open_image_as_srgb(path) image = to_tensor(image) image = image.unsqueeze(0) # Add frame dimension [1, C, H, W] for bucket selection # Find nearest resolution bucket and resize nearest_bucket = self._get_resolution_bucket_for_item(image) _, target_height, target_width = nearest_bucket image_resized = self._resize_and_crop(image, target_height, target_width) # _resize_and_crop returns [C, H, W] for single-frame input (squeeze removes dim 0) # Apply transforms image = self.transforms(image_resized) # [C, H, W] -> [C, H, W] # Add frame dimension in VAE format: [C, H, W] -> [C, 1, H, W] image = image.unsqueeze(1) return image def _preprocess_video(self, path: Path) -> tuple[torch.Tensor, float]: """Preprocess a video by loading, resizing, and applying transforms. Returns: Tuple of (video tensor in [C, F, H, W] format, fps) """ # Load video frames up to max_target_frames video, fps = read_video(path, max_frames=self.max_target_frames) nearest_bucket = self._get_resolution_bucket_for_item(video) target_num_frames, target_height, target_width = nearest_bucket frames_resized = self._resize_and_crop(video, target_height, target_width) # Trim video to target number of frames frames_resized = frames_resized[:target_num_frames] # Apply transforms to each frame and stack video = torch.stack([self.transforms(frame) for frame in frames_resized], dim=0) # Permute [F,C,H,W] -> [C,F,H,W] for VAE compatibility # After DataLoader batching, this becomes [B,C,F,H,W] which VAE expects video = video.permute(1, 0, 2, 3).contiguous() return video, fps def _get_resolution_bucket_for_item(self, media_tensor: torch.Tensor) -> tuple[int, int, int]: """Get the nearest resolution bucket for the given media tensor.""" num_frames, _, height, width = media_tensor.shape def distance(bucket: tuple[int, int, int]) -> tuple: bucket_num_frames, bucket_height, bucket_width = bucket # Lexicographic key: # 1) minimize aspect-ratio diff (in log-scale, for invariance to shorter/longer ARs) # 2) prefer buckets with more frames (by using negative) # 3) prefer buckets with larger spatial area (by using negative) return ( abs(math.log(width / height) - math.log(bucket_width / bucket_height)), -bucket_num_frames, -(bucket_height * bucket_width), ) # Keep only buckets with <= available frames relevant_buckets = [b for b in self.resolution_buckets if b[0] <= num_frames] if not relevant_buckets: raise ValueError(f"No resolution buckets have <= {num_frames} frames. Available: {self.resolution_buckets}") # Find the bucket with the minimal distance (according to the function above) to the media item's shape. nearest_bucket = min(relevant_buckets, key=distance) return nearest_bucket def _resize_and_crop(self, media_tensor: torch.Tensor, target_height: int, target_width: int) -> torch.Tensor: """Resize and crop tensor to target size.""" # Get current dimensions current_height, current_width = media_tensor.shape[2], media_tensor.shape[3] # Calculate aspect ratios to determine which dimension to resize first current_aspect = current_width / current_height target_aspect = target_width / target_height # Resize while maintaining aspect ratio - scale to make the smaller dimension fit if current_aspect > target_aspect: # Current is wider than target, so scale by height new_width = int(current_width * target_height / current_height) media_tensor = resize( media_tensor, size=[target_height, new_width], # type: ignore interpolation=InterpolationMode.BICUBIC, ) else: # Current is taller than target, so scale by width new_height = int(current_height * target_width / current_width) media_tensor = resize( media_tensor, size=[new_height, target_width], interpolation=InterpolationMode.BICUBIC, ) # Update dimensions after resize current_height, current_width = media_tensor.shape[2], media_tensor.shape[3] media_tensor = media_tensor.squeeze(0) # Calculate how much we need to crop from each dimension delta_h = current_height - target_height delta_w = current_width - target_width # Determine crop position based on reshape mode if self.reshape_mode == "random": # Random crop position top = np.random.randint(0, delta_h + 1) left = np.random.randint(0, delta_w + 1) elif self.reshape_mode == "center": # Center crop top, left = delta_h // 2, delta_w // 2 else: raise ValueError(f"Unsupported reshape mode: {self.reshape_mode}") # Perform the final crop to exact target dimensions media_tensor = crop(media_tensor, top=top, left=left, height=target_height, width=target_width) return media_tensor def compute_latents( # noqa: PLR0913, PLR0915 dataset_file: str | Path, video_column: str, resolution_buckets: list[tuple[int, int, int]], output_dir: str, model_path: str, main_media_column: str | None = None, reshape_mode: str = "center", batch_size: int = 1, device: str = "cuda", vae_tiling: bool = False, with_audio: bool = False, audio_output_dir: str | None = None, ) -> None: """ Process videos and save latent representations. Args: dataset_file: Path to metadata file (CSV/JSON/JSONL) containing video paths video_column: Column name for video paths in the metadata file resolution_buckets: List of (frames, height, width) tuples output_dir: Directory to save video latents model_path: Path to LTX-2 checkpoint (.safetensors) reshape_mode: How to crop videos ("center", "random") main_media_column: Column name for main media paths (if different from video_column) batch_size: Batch size for processing device: Device to use for computation vae_tiling: Whether to enable VAE tiling with_audio: Whether to extract and encode audio from videos audio_output_dir: Directory to save audio latents (required if with_audio=True) """ # Validate audio parameters if with_audio and audio_output_dir is None: raise ValueError("audio_output_dir must be provided when with_audio=True") console = Console() torch_device = torch.device(device) # Create dataset dataset = MediaDataset( dataset_file=dataset_file, main_media_column=main_media_column or video_column, video_column=video_column, resolution_buckets=resolution_buckets, reshape_mode=reshape_mode, with_audio=with_audio, ) logger.info(f"Loaded {len(dataset)} valid media files") output_path = Path(output_dir) output_path.mkdir(parents=True, exist_ok=True) # Set up audio output directory if needed audio_output_path = None if with_audio: audio_output_path = Path(audio_output_dir) audio_output_path.mkdir(parents=True, exist_ok=True) # Load video VAE encoder with console.status(f"[bold]Loading video VAE encoder from [cyan]{model_path}[/]...", spinner="dots"): vae = load_video_vae_encoder(model_path, device=torch_device, dtype=torch.bfloat16) if vae_tiling: vae.enable_tiling() # Load audio VAE encoder and audio processor if needed audio_vae_encoder = None audio_processor = None if with_audio: with console.status(f"[bold]Loading audio VAE encoder from [cyan]{model_path}[/]...", spinner="dots"): audio_vae_encoder = load_audio_vae_encoder( checkpoint_path=model_path, device=torch_device, dtype=torch.float32, # Audio VAE needs float32 for quality. TODO: re-test with bfloat16. ) # Create audio processor for waveform-to-spectrogram conversion audio_processor = AudioProcessor( sample_rate=audio_vae_encoder.sample_rate, mel_bins=audio_vae_encoder.mel_bins, mel_hop_length=audio_vae_encoder.mel_hop_length, n_fft=audio_vae_encoder.n_fft, ).to(torch_device) # Create dataloader # Note: batch_size=1 required when with_audio because audio extraction can fail for some videos, # and the default collate function can't handle mixed None/dict values across a batch. if with_audio and batch_size > 1: logger.warning("Audio processing requires batch_size=1. Overriding batch_size to 1.") batch_size = 1 dataloader = DataLoader(dataset, batch_size=batch_size, shuffle=False, num_workers=4) # Track audio statistics audio_success_count = 0 audio_skip_count = 0 # Process batches with Progress( SpinnerColumn(), TextColumn("[progress.description]{task.description}"), BarColumn(), TaskProgressColumn(), MofNCompleteColumn(), TimeElapsedColumn(), TimeRemainingColumn(), console=console, ) as progress: task = progress.add_task("Processing videos", total=len(dataloader)) for batch in dataloader: # Get video tensor - shape is [B, F, C, H, W] from DataLoader video = batch["video"] # Encode video with torch.inference_mode(): video_latent_data = encode_video(vae=vae, video=video) # Save latents for each item in batch for i in range(len(batch["relative_path"])): output_rel_path = Path(batch["main_media_relative_path"][i]).with_suffix(".pt") output_file = output_path / output_rel_path # Create output directory maintaining structure output_file.parent.mkdir(parents=True, exist_ok=True) # Index into batch to get this item's latents latent_data = { "latents": video_latent_data["latents"][i].cpu().contiguous(), # [C, F', H', W'] "num_frames": video_latent_data["num_frames"], "height": video_latent_data["height"], "width": video_latent_data["width"], "fps": batch["video_metadata"]["fps"][i].item(), } torch.save(latent_data, output_file) # Process audio if enabled (audio is already extracted by the dataset) if with_audio: audio_batch = batch.get("audio") if audio_batch is not None: # Extract the i-th item from batched audio data # DataLoader collates [channels, samples] -> [batch, channels, samples] audio_data = { "waveform": audio_batch["waveform"][i], "sample_rate": audio_batch["sample_rate"][i].item(), } # Encode audio with torch.inference_mode(): audio_latents = encode_audio(audio_vae_encoder, audio_processor, audio_data) # Save audio latents audio_output_file = audio_output_path / output_rel_path audio_output_file.parent.mkdir(parents=True, exist_ok=True) audio_save_data = { "latents": audio_latents["latents"].cpu().contiguous(), "num_time_steps": audio_latents["num_time_steps"], "frequency_bins": audio_latents["frequency_bins"], "duration": audio_latents["duration"], } torch.save(audio_save_data, audio_output_file) audio_success_count += 1 else: # Video has no audio track audio_skip_count += 1 progress.advance(task) # Log summary logger.info(f"Processed {len(dataset)} videos. Latents saved to {output_path}") if with_audio: logger.info( f"Audio processing: {audio_success_count} videos with audio, " f"{audio_skip_count} videos without audio (skipped)" ) def encode_video( vae: torch.nn.Module, video: torch.Tensor, dtype: torch.dtype | None = None, ) -> dict[str, torch.Tensor | int]: """Encode video into non-patchified latent representation. Args: vae: Video VAE encoder model video: Input tensor of shape [B, C, F, H, W] (batch, channels, frames, height, width) This is the format expected by the VAE encoder. dtype: Target dtype for output latents Returns: Dict containing non-patchified latents and shape information: { "latents": Tensor[B, C, F', H', W'], # Non-patchified format with batch dim "num_frames": int, # Latent frame count "height": int, # Latent height "width": int, # Latent width } """ device = next(vae.parameters()).device vae_dtype = next(vae.parameters()).dtype # Add batch dimension if needed if video.ndim == 4: video = video.unsqueeze(0) # [C, F, H, W] -> [B, C, F, H, W] video = video.to(device=device, dtype=vae_dtype) # Encode video - VAE expects [B, C, F, H, W], returns [B, C, F', H', W'] latents = vae(video) if dtype is not None: latents = latents.to(dtype=dtype) _, _, num_frames, height, width = latents.shape return { "latents": latents, # [B, C, F', H', W'] "num_frames": num_frames, "height": height, "width": width, } def encode_audio( audio_vae_encoder: torch.nn.Module, audio_processor: torch.nn.Module, audio_data: dict[str, torch.Tensor | int], ) -> dict[str, torch.Tensor | int | float]: """Encode audio waveform into latent representation. Args: audio_vae_encoder: Audio VAE encoder model from ltx-core audio_processor: AudioProcessor for waveform-to-spectrogram conversion audio_data: Dict with {"waveform": Tensor[channels, samples], "sample_rate": int} Returns: Dict containing audio latents and shape information: { "latents": Tensor[C, T, F], # Non-patchified format "num_time_steps": int, "frequency_bins": int, "duration": float, } """ device = next(audio_vae_encoder.parameters()).device dtype = next(audio_vae_encoder.parameters()).dtype waveform = audio_data["waveform"].to(device=device, dtype=dtype) sample_rate = audio_data["sample_rate"] # Add batch dimension if needed: [channels, samples] -> [batch, channels, samples] if waveform.dim() == 2: waveform = waveform.unsqueeze(0) # Calculate duration duration = waveform.shape[-1] / sample_rate # Convert waveform to mel spectrogram using AudioProcessor mel_spectrogram = audio_processor.waveform_to_mel(waveform, waveform_sample_rate=sample_rate) mel_spectrogram = mel_spectrogram.to(dtype=dtype) # Encode mel spectrogram to latents latents = audio_vae_encoder(mel_spectrogram) # latents shape: [batch, channels, time, freq] = [1, 8, T, 16] _, _channels, time_steps, freq_bins = latents.shape return { "latents": latents.squeeze(0), # [C, T, F] - remove batch dim "num_time_steps": time_steps, "frequency_bins": freq_bins, "duration": duration, } def parse_resolution_buckets(resolution_buckets_str: str) -> list[tuple[int, int, int]]: """Parse resolution buckets from string format to list of tuples (frames, height, width)""" resolution_buckets = [] for bucket_str in resolution_buckets_str.split(";"): w, h, f = map(int, bucket_str.split("x")) if w % VAE_SPATIAL_FACTOR != 0 or h % VAE_SPATIAL_FACTOR != 0: raise typer.BadParameter( f"Width and height must be multiples of {VAE_SPATIAL_FACTOR}, got {w}x{h}", param_hint="resolution-buckets", ) if f % VAE_TEMPORAL_FACTOR != 1: raise typer.BadParameter( f"Number of frames must be a multiple of {VAE_TEMPORAL_FACTOR} plus 1, got {f}", param_hint="resolution-buckets", ) resolution_buckets.append((f, h, w)) return resolution_buckets @app.command() def main( # noqa: PLR0913 dataset_file: str = typer.Argument( ..., help="Path to metadata file (CSV/JSON/JSONL) containing video paths", ), resolution_buckets: str = typer.Option( ..., help='Resolution buckets in format "WxHxF;WxHxF;..." (e.g. "768x768x25;512x512x49")', ), output_dir: str = typer.Option( ..., help="Output directory to save video latents", ), model_path: str = typer.Option( ..., help="Path to LTX-2 checkpoint (.safetensors file)", ), video_column: str = typer.Option( default="media_path", help="Column name in the dataset JSON/JSONL/CSV file containing video paths", ), batch_size: int = typer.Option( default=1, help="Batch size for processing", ), device: str = typer.Option( default="cuda", help="Device to use for computation", ), vae_tiling: bool = typer.Option( default=False, help="Enable VAE tiling for larger video resolutions", ), reshape_mode: str = typer.Option( default="center", help="How to crop videos: 'center' or 'random'", ), with_audio: bool = typer.Option( default=False, help="Extract and encode audio from video files", ), audio_output_dir: str | None = typer.Option( default=None, help="Output directory for audio latents (required if --with-audio is set)", ), ) -> None: """Process videos/images and save latent representations for video generation training. This script processes videos and images from metadata files and saves latent representations that can be used for training video generation models. The output latents will maintain the same folder structure and naming as the corresponding media files. Examples: # Process videos from a CSV file python scripts/process_videos.py dataset.csv --resolution-buckets 768x768x25 \\ --output-dir ./latents --model-path /path/to/ltx2.safetensors # Process videos from a JSON file with custom video column python scripts/process_videos.py dataset.json --resolution-buckets 768x768x25 \\ --output-dir ./latents --model-path /path/to/ltx2.safetensors --video-column "video_path" # Enable VAE tiling to save GPU VRAM python scripts/process_videos.py dataset.csv --resolution-buckets 1024x1024x25 \\ --output-dir ./latents --model-path /path/to/ltx2.safetensors --vae-tiling # Process videos with audio python scripts/process_videos.py dataset.csv --resolution-buckets 768x768x25 \\ --output-dir ./latents --model-path /path/to/ltx2.safetensors \\ --with-audio --audio-output-dir ./audio_latents """ # Validate dataset file exists if not Path(dataset_file).is_file(): raise typer.BadParameter(f"Dataset file not found: {dataset_file}") # Validate audio parameters if with_audio and audio_output_dir is None: raise typer.BadParameter("--audio-output-dir is required when --with-audio is set") # Parse resolution buckets parsed_resolution_buckets = parse_resolution_buckets(resolution_buckets) if len(parsed_resolution_buckets) > 1: logger.warning( "Using multiple resolution buckets. " "When training with multiple resolution buckets, you must use a batch size of 1." ) # Process latents compute_latents( dataset_file=dataset_file, video_column=video_column, resolution_buckets=parsed_resolution_buckets, output_dir=output_dir, model_path=model_path, reshape_mode=reshape_mode, batch_size=batch_size, device=device, vae_tiling=vae_tiling, with_audio=with_audio, audio_output_dir=audio_output_dir, ) if __name__ == "__main__": app()