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| # FILE: ltx_server_refactored_complete.py | |
| # DESCRIPTION: Backend service for video generation using LTX-Video pipeline. | |
| # Features modular generation, narrative chunking, and resource management. | |
| import warnings | |
| import os, subprocess, shlex, tempfile | |
| import torch | |
| import json | |
| import numpy as np | |
| import random | |
| import os | |
| import io | |
| import shlex | |
| import yaml | |
| from typing import List, Dict | |
| from pathlib import Path | |
| import imageio | |
| from PIL import Image | |
| import tempfile | |
| from huggingface_hub import hf_hub_download | |
| import sys | |
| import subprocess | |
| import gc | |
| import shutil | |
| import contextlib | |
| import time | |
| import traceback | |
| from api.gpu_manager import gpu_manager | |
| from einops import rearrange | |
| import torch.nn.functional as F | |
| from managers.vae_manager import vae_manager_singleton | |
| from tools.video_encode_tool import video_encode_tool_singleton | |
| # ============================================================================== | |
| # --- INITIAL SETUP & CONFIGURATION --- | |
| # ============================================================================== | |
| # Suppress excessive logs from external libraries | |
| warnings.filterwarnings("ignore") | |
| logging.getLogger("huggingface_hub").setLevel(logging.ERROR) | |
| logging.basicConfig(level=logging.INFO, format='[%(levelname)s] %(message)s') | |
| # --- CONSTANTS --- | |
| DEPS_DIR = Path("/data") | |
| LTX_VIDEO_REPO_DIR = DEPS_DIR / "LTX-Video" | |
| BASE_CONFIG_PATH = LTX_VIDEO_REPO_DIR / "configs" | |
| DEFAULT_CONFIG_FILE = BASE_CONFIG_PATH / "ltxv-13b-0.9.8-distilled-fp8.yaml" | |
| LTX_REPO_ID = "Lightricks/LTX-Video" | |
| RESULTS_DIR = Path("/app/output") | |
| DEFAULT_FPS = 24.0 | |
| FRAMES_ALIGNMENT = 8 | |
| def add_deps_to_path(): | |
| repo_path = str(LTX_VIDEO_REPO_DIR.resolve()) | |
| if str(LTX_VIDEO_REPO_DIR.resolve()) not in sys.path: | |
| sys.path.insert(0, repo_path) | |
| print(f"[DEBUG] Repo adicionado ao sys.path: {repo_path}") | |
| add_deps_to_path() | |
| from ltx_video.pipelines.pipeline_ltx_video import ConditioningItem, LTXMultiScalePipeline | |
| from ltx_video.utils.skip_layer_strategy import SkipLayerStrategy | |
| from ltx_video.models.autoencoders.vae_encode import un_normalize_latents, normalize_latents | |
| from ltx_video.pipelines.pipeline_ltx_video import adain_filter_latent | |
| from api.ltx.inference import ( | |
| create_ltx_video_pipeline, | |
| create_latent_upsampler, | |
| load_image_to_tensor_with_resize_and_crop, | |
| seed_everething, | |
| ) | |
| # ============================================================================== | |
| # --- UTILITY & HELPER FUNCTIONS --- | |
| # ============================================================================== | |
| def seed_everything(seed: int): | |
| """Sets the seed for reproducibility across all relevant libraries.""" | |
| random.seed(seed) | |
| os.environ['PYTHONHASHSEED'] = str(seed) | |
| np.random.seed(seed) | |
| torch.manual_seed(seed) | |
| torch.cuda.manual_seed_all(seed) | |
| # Potentially faster, but less reproducible | |
| # torch.backends.cudnn.deterministic = False | |
| # torch.backends.cudnn.benchmark = True | |
| def calculate_padding(orig_h: int, orig_w: int, target_h: int, target_w: int) -> Tuple[int, int, int, int]: | |
| """Calculates symmetric padding values to reach a target dimension.""" | |
| pad_h = target_h - orig_h | |
| pad_w = target_w - orig_w | |
| pad_top = pad_h // 2 | |
| pad_bottom = pad_h - pad_top | |
| pad_left = pad_w // 2 | |
| pad_right = pad_w - pad_left | |
| return (pad_left, pad_right, pad_top, pad_bottom) | |
| def log_tensor_info(tensor: torch.Tensor, name: str = "Tensor"): | |
| """Logs detailed information about a PyTorch tensor for debugging.""" | |
| if not isinstance(tensor, torch.Tensor): | |
| logging.debug(f"'{name}' is not a tensor.") | |
| return | |
| info_str = ( | |
| f"--- Tensor: {name} ---\n" | |
| f" - Shape: {tuple(tensor.shape)}\n" | |
| f" - Dtype: {tensor.dtype}\n" | |
| f" - Device: {tensor.device}\n" | |
| ) | |
| if tensor.numel() > 0: | |
| try: | |
| info_str += ( | |
| f" - Min: {tensor.min().item():.4f} | " | |
| f"Max: {tensor.max().item():.4f} | " | |
| f"Mean: {tensor.mean().item():.4f}\n" | |
| ) | |
| except Exception: | |
| pass # Fails on some dtypes | |
| logging.debug(info_str + "----------------------") | |
| # ============================================================================== | |
| # --- VIDEO SERVICE CLASS --- | |
| # ============================================================================== | |
| class VideoService: | |
| """ | |
| Backend service for orchestrating video generation using the LTX-Video pipeline. | |
| Encapsulates model loading, state management, and the logic for multi-stage | |
| video generation (low-resolution, upscale). | |
| """ | |
| def __init__(self): | |
| t0 = time.perf_counter() | |
| print("[DEBUG] Inicializando VideoService...") | |
| # 1. Obter o dispositivo alvo a partir do gerenciador | |
| # Não definimos `self.device` ainda, apenas guardamos o alvo. | |
| target_device = gpu_manager.get_ltx_device() | |
| print(f"[DEBUG] LTX foi alocado para o dispositivo: {target_device}") | |
| # 2. Carregar a configuração e os modelos (na CPU, como a função _load_models faz) | |
| self.config = self._load_config() | |
| self.pipeline, self.latent_upsampler = self._load_models() | |
| # 3. Mover os modelos para o dispositivo alvo e definir `self.device` | |
| self.move_to_device(target_device) # Usando a função que já criamos! | |
| # 4. Configurar o resto dos componentes com o dispositivo correto | |
| self._apply_precision_policy() | |
| vae_manager_singleton.attach_pipeline( | |
| self.pipeline, | |
| device=self.device, # Agora `self.device` está correto | |
| autocast_dtype=self.runtime_autocast_dtype | |
| ) | |
| self._tmp_dirs = set() | |
| print(f"[DEBUG] VideoService pronto. boot_time={time.perf_counter()-t0:.3f}s") | |
| # A função move_to_device que criamos antes é essencial aqui | |
| def move_to_device(self, device): | |
| """Move os modelos do pipeline para o dispositivo especificado.""" | |
| print(f"[LTX] Movendo modelos para {device}...") | |
| self.device = torch.device(device) # Garante que é um objeto torch.device | |
| self.pipeline.to(self.device) | |
| if self.latent_upsampler: | |
| self.latent_upsampler.to(self.device) | |
| print(f"[LTX] Modelos agora estão em {self.device}.") | |
| def move_to_cpu(self): | |
| """Move os modelos para a CPU para liberar VRAM.""" | |
| self.move_to_device(torch.device("cpu")) | |
| if torch.cuda.is_available(): | |
| torch.cuda.empty_cache() | |
| # ========================================================================== | |
| # --- LIFECYCLE & MODEL MANAGEMENT --- | |
| # ========================================================================== | |
| def _load_config(self): | |
| base = LTX_VIDEO_REPO_DIR / "configs" | |
| config_path = base / "ltxv-13b-0.9.8-distilled-fp8.yaml" | |
| with open(config_path, "r") as file: | |
| return yaml.safe_load(file) | |
| def finalize(self, keep_paths=None, extra_paths=None, clear_gpu=True): | |
| print("[DEBUG] Finalize: iniciando limpeza...") | |
| keep = set(keep_paths or []); extras = set(extra_paths or []) | |
| gc.collect() | |
| try: | |
| if clear_gpu and torch.cuda.is_available(): | |
| torch.cuda.empty_cache() | |
| try: | |
| torch.cuda.ipc_collect() | |
| except Exception: | |
| pass | |
| except Exception as e: | |
| print(f"[DEBUG] Finalize: limpeza GPU falhou: {e}") | |
| def _load_models(self): | |
| t0 = time.perf_counter() | |
| LTX_REPO = "Lightricks/LTX-Video" | |
| print("[DEBUG] Baixando checkpoint principal...") | |
| distilled_model_path = hf_hub_download( | |
| repo_id=LTX_REPO, | |
| filename=self.config["checkpoint_path"], | |
| local_dir=os.getenv("HF_HOME"), | |
| cache_dir=os.getenv("HF_HOME_CACHE"), | |
| token=os.getenv("HF_TOKEN"), | |
| ) | |
| self.config["checkpoint_path"] = distilled_model_path | |
| print(f"[DEBUG] Checkpoint em: {distilled_model_path}") | |
| print("[DEBUG] Baixando upscaler espacial...") | |
| spatial_upscaler_path = hf_hub_download( | |
| repo_id=LTX_REPO, | |
| filename=self.config["spatial_upscaler_model_path"], | |
| local_dir=os.getenv("HF_HOME"), | |
| cache_dir=os.getenv("HF_HOME_CACHE"), | |
| token=os.getenv("HF_TOKEN") | |
| ) | |
| self.config["spatial_upscaler_model_path"] = spatial_upscaler_path | |
| print(f"[DEBUG] Upscaler em: {spatial_upscaler_path}") | |
| print("[DEBUG] Construindo pipeline...") | |
| pipeline = create_ltx_video_pipeline( | |
| ckpt_path=self.config["checkpoint_path"], | |
| precision=self.config["precision"], | |
| text_encoder_model_name_or_path=self.config["text_encoder_model_name_or_path"], | |
| sampler=self.config["sampler"], | |
| device="cpu", | |
| enhance_prompt=False, | |
| prompt_enhancer_image_caption_model_name_or_path=self.config["prompt_enhancer_image_caption_model_name_or_path"], | |
| prompt_enhancer_llm_model_name_or_path=self.config["prompt_enhancer_llm_model_name_or_path"], | |
| ) | |
| print("[DEBUG] Pipeline pronto.") | |
| latent_upsampler = None | |
| if self.config.get("spatial_upscaler_model_path"): | |
| print("[DEBUG] Construindo latent_upsampler...") | |
| latent_upsampler = create_latent_upsampler(self.config["spatial_upscaler_model_path"], device="cpu") | |
| print("[DEBUG] Upsampler pronto.") | |
| print(f"[DEBUG] _load_models() tempo total={time.perf_counter()-t0:.3f}s") | |
| return pipeline, latent_upsampler | |
| def _apply_precision_policy(self): | |
| prec = str(self.config.get("precision", "")).lower() | |
| self.runtime_autocast_dtype = torch.float32 | |
| if prec in ["float8_e4m3fn", "bfloat16"]: | |
| self.runtime_autocast_dtype = torch.bfloat16 | |
| elif prec == "mixed_precision": | |
| self.runtime_autocast_dtype = torch.float16 | |
| def _register_tmp_dir(self, d: str): | |
| if d and os.path.isdir(d): | |
| self._tmp_dirs.add(d); print(f"[DEBUG] Registrado tmp dir: {d}") | |
| def _upsample_latents_internal(self, latents: torch.Tensor) -> torch.Tensor: | |
| try: | |
| if not self.latent_upsampler: | |
| raise ValueError("Latent Upsampler não está carregado.") | |
| latents_unnormalized = un_normalize_latents(latents, self.pipeline.vae, vae_per_channel_normalize=True) | |
| upsampled_latents = self.latent_upsampler(latents_unnormalized) | |
| return normalize_latents(upsampled_latents, self.pipeline.vae, vae_per_channel_normalize=True) | |
| except Exception as e: | |
| pass | |
| finally: | |
| torch.cuda.empty_cache() | |
| torch.cuda.ipc_collect() | |
| self.finalize(keep_paths=[]) | |
| def _prepare_conditioning_tensor(self, filepath, height, width, padding_values): | |
| tensor = load_image_to_tensor_with_resize_and_crop(filepath, height, width) | |
| tensor = torch.nn.functional.pad(tensor, padding_values) | |
| log_tensor_info(tensor, f"_prepare_conditioning_tensor") | |
| return tensor.to(self.device, dtype=self.runtime_autocast_dtype) | |
| def _save_and_log_video(self, pixel_tensor, base_filename, fps, temp_dir, results_dir, used_seed, progress_callback=None): | |
| output_path = os.path.join(temp_dir, f"{base_filename}_.mp4") | |
| video_encode_tool_singleton.save_video_from_tensor( | |
| pixel_tensor, output_path, fps=fps, progress_callback=progress_callback | |
| ) | |
| final_path = os.path.join(results_dir, f"{base_filename}_.mp4") | |
| shutil.move(output_path, final_path) | |
| print(f"[DEBUG] Vídeo salvo em: {final_path}") | |
| return final_path | |
| def _load_tensor(self, caminho): | |
| # Se já é um tensor, retorna diretamente | |
| if isinstance(caminho, torch.Tensor): | |
| return caminho | |
| # Se é bytes, carrega do buffer | |
| if isinstance(caminho, (bytes, bytearray)): | |
| return torch.load(io.BytesIO(caminho)) | |
| # Caso contrário, assume que é um caminho de arquivo | |
| return torch.load(caminho) | |
| # ========================================================================== | |
| # --- PUBLIC ORCHESTRATORS --- | |
| # These are the main entry points called by the frontend. | |
| # ========================================================================== | |
| def generate_narrative_low(self, prompt: str, **kwargs) -> Tuple[Optional[str], Optional[str], Optional[int]]: | |
| """ | |
| [ORCHESTRATOR] Generates a video from a multi-line prompt, creating a sequence of scenes. | |
| Returns: | |
| A tuple of (video_path, latents_path, used_seed). | |
| """ | |
| logging.info("Starting narrative low-res generation...") | |
| used_seed = self._resolve_seed(kwargs.get("seed")) | |
| seed_everything(used_seed) | |
| prompt_list = [p.strip() for p in prompt.splitlines() if p.strip()] | |
| if not prompt_list: | |
| raise ValueError("Prompt is empty or contains no valid lines.") | |
| num_chunks = len(prompt_list) | |
| total_frames = self._calculate_aligned_frames(kwargs.get("duration", 4.0)) | |
| frames_per_chunk = (total_frames // num_chunks // FRAMES_ALIGNMENT) * FRAMES_ALIGNMENT | |
| overlap_frames = self.config.get("overlap_frames", 8) | |
| all_latents_paths = [] | |
| overlap_condition_item = None | |
| try: | |
| for i, chunk_prompt in enumerate(prompt_list): | |
| logging.info(f"Generating narrative chunk {i+1}/{num_chunks}: '{chunk_prompt[:50]}...'") | |
| current_frames = frames_per_chunk | |
| if i > 0: | |
| current_frames += overlap_frames | |
| # Use initial image conditions only for the first chunk | |
| current_conditions = kwargs.get("initial_conditions", []) if i == 0 else [] | |
| if overlap_condition_item: | |
| current_conditions.append(overlap_condition_item) | |
| chunk_latents = self._generate_single_chunk_low( | |
| prompt=chunk_prompt, | |
| num_frames=current_frames, | |
| seed=used_seed + i, | |
| conditioning_items=current_conditions, | |
| **kwargs | |
| ) | |
| if chunk_latents is None: | |
| raise RuntimeError(f"Failed to generate latents for chunk {i+1}.") | |
| # Create overlap for the next chunk | |
| if i < num_chunks - 1: | |
| overlap_latents = chunk_latents[:, :, -overlap_frames:, :, :].clone() | |
| log_tensor_info(overlap_latents, f"Overlap Latents from chunk {i+1}") | |
| overlap_condition_item = ConditioningItem( | |
| media_item=overlap_latents, media_frame_number=0, conditioning_strength=1.0 | |
| ) | |
| # Trim the overlap from the current chunk before saving | |
| if i > 0: | |
| chunk_latents = chunk_latents[:, :, overlap_frames:, :, :] | |
| # Save chunk latents to disk to manage memory | |
| chunk_path = RESULTS_DIR / f"chunk_{i}_{used_seed}.pt" | |
| torch.save(chunk_latents.cpu(), chunk_path) | |
| all_latents_paths.append(chunk_path) | |
| # Concatenate, decode, and save the final video | |
| return self._finalize_generation(all_latents_paths, "narrative_video", used_seed) | |
| except Exception as e: | |
| logging.error(f"Error during narrative generation: {e}") | |
| traceback.print_exc() | |
| return None, None, None | |
| finally: | |
| # Clean up intermediate chunk files | |
| for path in all_latents_paths: | |
| if os.path.exists(path): | |
| os.remove(path) | |
| self.finalize() | |
| def generate_single_low(self, **kwargs) -> Tuple[Optional[str], Optional[str], Optional[int]]: | |
| """ | |
| [ORCHESTRATOR] Generates a video from a single prompt in one go. | |
| Returns: | |
| A tuple of (video_path, latents_path, used_seed). | |
| """ | |
| logging.info("Starting single-prompt low-res generation...") | |
| used_seed = self._resolve_seed(kwargs.get("seed")) | |
| seed_everything(used_seed) | |
| try: | |
| total_frames = self._calculate_aligned_frames(kwargs.get("duration", 4.0), min_frames=9) | |
| final_latents = self._generate_single_chunk_low( | |
| num_frames=total_frames, | |
| seed=used_seed, | |
| conditioning_items=kwargs.get("initial_conditions", []), | |
| **kwargs | |
| ) | |
| if final_latents is None: | |
| raise RuntimeError("Failed to generate latents.") | |
| # Save latents to a single file, then decode and save video | |
| latents_path = RESULTS_DIR / f"single_{used_seed}.pt" | |
| torch.save(final_latents.cpu(), latents_path) | |
| return self._finalize_generation([latents_path], "single_video", used_seed) | |
| except Exception as e: | |
| logging.error(f"Error during single generation: {e}") | |
| traceback.print_exc() | |
| return None, None, None | |
| finally: | |
| self.finalize() | |
| # ========================================================================== | |
| # --- INTERNAL WORKER UNITS --- | |
| # ========================================================================== | |
| def _generate_single_chunk_low( | |
| self, prompt: str, negative_prompt: str, height: int, width: int, num_frames: int, seed: int, | |
| conditioning_items: List[ConditioningItem], ltx_configs_override: Optional[Dict], **kwargs | |
| ) -> Optional[torch.Tensor]: | |
| """ | |
| [WORKER] Generates a single chunk of latents. This is the core generation unit. | |
| Returns the raw latents tensor on the target device, or None on failure. | |
| """ | |
| height_padded, width_padded = (self._align(d) for d in (height, width)) | |
| downscale_factor = self.config.get("downscale_factor", 0.6666666) | |
| vae_scale_factor = self.pipeline.vae_scale_factor | |
| downscaled_height = self._align(int(height_padded * downscale_factor), vae_scale_factor) | |
| downscaled_width = self._align(int(width_padded * downscale_factor), vae_scale_factor) | |
| first_pass_config = self.config.get("first_pass", {}).copy() | |
| if ltx_configs_override: | |
| first_pass_config.update(self._prepare_guidance_overrides(ltx_configs_override)) | |
| pipeline_kwargs = { | |
| "prompt": prompt, | |
| "negative_prompt": negative_prompt, | |
| "height": downscaled_height, | |
| "width": downscaled_width, | |
| "num_frames": num_frames, | |
| "frame_rate": DEFAULT_FPS, | |
| "generator": torch.Generator(device=self.device).manual_seed(seed), | |
| "output_type": "latent", | |
| "conditioning_items": conditioning_items, | |
| **first_pass_config | |
| } | |
| logging.debug(f"Pipeline call args: { {k: v for k, v in pipeline_kwargs.items() if k != 'conditioning_items'} }") | |
| with torch.autocast(device_type=self.device.type, dtype=self.runtime_autocast_dtype, enabled=self.device.type == 'cuda'): | |
| latents_raw = self.pipeline(**pipeline_kwargs).images | |
| log_tensor_info(latents_raw, f"Raw Latents for '{prompt[:40]}...'") | |
| return latents_raw | |
| # ========================================================================== | |
| # --- HELPERS & UTILITY METHODS --- | |
| # ========================================================================== | |
| def _finalize_generation(self, latents_paths: List[Path], base_filename: str, seed: int) -> Tuple[str, str, int]: | |
| """ | |
| Loads latents from paths, concatenates them, decodes to video, and saves both. | |
| """ | |
| logging.info("Finalizing generation: decoding latents to video.") | |
| # Load all tensors and concatenate them on the CPU first | |
| all_tensors_cpu = [torch.load(p) for p in latents_paths] | |
| final_latents_cpu = torch.cat(all_tensors_cpu, dim=2) | |
| # Save final combined latents | |
| final_latents_path = RESULTS_DIR / f"latents_{base_filename}_{seed}.pt" | |
| torch.save(final_latents_cpu, final_latents_path) | |
| logging.info(f"Final latents saved to: {final_latents_path}") | |
| # Move to GPU for decoding | |
| final_latents_gpu = final_latents_cpu.to(self.device) | |
| log_tensor_info(final_latents_gpu, "Final Concatenated Latents") | |
| with torch.autocast(device_type=self.device.type, dtype=self.runtime_autocast_dtype, enabled=self.device.type == 'cuda'): | |
| pixel_tensor = vae_manager_singleton.decode( | |
| final_latents_gpu, | |
| decode_timestep=float(self.config.get("decode_timestep", 0.05)) | |
| ) | |
| video_path = self._save_and_log_video(pixel_tensor, f"{base_filename}_{seed}") | |
| return str(video_path), str(final_latents_path), seed | |
| def prepare_condition_items(self, items_list: List, height: int, width: int, num_frames: int) -> List[ConditioningItem]: | |
| """Prepares a list of ConditioningItem objects from file paths or tensors.""" | |
| if not items_list: | |
| return [] | |
| height_padded, width_padded = self._align(height), self._align(width) | |
| padding_values = calculate_padding(height, width, height_padded, width_padded) | |
| conditioning_items = [] | |
| for media, frame, weight in items_list: | |
| tensor = self._prepare_conditioning_tensor(media, height, width, padding_values) | |
| safe_frame = max(0, min(int(frame), num_frames - 1)) | |
| conditioning_items.append(ConditioningItem(tensor, safe_frame, float(weight))) | |
| return conditioning_items | |
| def _prepare_conditioning_tensor(self, media_path: str, height: int, width: int, padding: Tuple) -> torch.Tensor: | |
| """Loads and processes an image to be a conditioning tensor.""" | |
| tensor = load_image_to_tensor_with_resize_and_crop(media_path, height, width) | |
| tensor = torch.nn.functional.pad(tensor, padding) | |
| log_tensor_info(tensor, f"Prepared Conditioning Tensor from {media_path}") | |
| return tensor.to(self.device, dtype=self.runtime_autocast_dtype) | |
| def _prepare_guidance_overrides(self, ltx_configs: Dict) -> Dict: | |
| """Parses UI presets for guidance into pipeline-compatible arguments.""" | |
| overrides = {} | |
| preset = ltx_configs.get("guidance_preset", "Padrão (Recomendado)") | |
| # Default LTX values are used if preset is 'Padrão' | |
| if preset == "Agressivo": | |
| overrides["guidance_scale"] = [1, 2, 8, 12, 8, 2, 1] | |
| overrides["stg_scale"] = [0, 0, 5, 6, 5, 3, 2] | |
| elif preset == "Suave": | |
| overrides["guidance_scale"] = [1, 1, 4, 5, 4, 1, 1] | |
| overrides["stg_scale"] = [0, 0, 2, 2, 2, 1, 0] | |
| elif preset == "Customizado": | |
| try: | |
| overrides["guidance_scale"] = json.loads(ltx_configs["guidance_scale_list"]) | |
| overrides["stg_scale"] = json.loads(ltx_configs["stg_scale_list"]) | |
| except (json.JSONDecodeError, KeyError) as e: | |
| logging.warning(f"Failed to parse custom guidance values: {e}. Falling back to defaults.") | |
| if overrides: | |
| logging.info(f"Applying '{preset}' guidance preset overrides.") | |
| return overrides | |
| def _save_and_log_video(self, pixel_tensor: torch.Tensor, base_filename: str) -> Path: | |
| """Saves a pixel tensor to an MP4 file and returns the final path.""" | |
| # Work in a temporary directory to handle atomic move | |
| with tempfile.TemporaryDirectory() as temp_dir: | |
| temp_path = os.path.join(temp_dir, f"{base_filename}.mp4") | |
| video_encode_tool_singleton.save_video_from_tensor( | |
| pixel_tensor, temp_path, fps=DEFAULT_FPS | |
| ) | |
| final_path = RESULTS_DIR / f"{base_filename}.mp4" | |
| shutil.move(temp_path, final_path) | |
| logging.info(f"Video saved successfully to: {final_path}") | |
| return final_path | |
| def _apply_precision_policy(self): | |
| """Sets the autocast dtype based on the configuration file.""" | |
| precision = str(self.config.get("precision", "bfloat16")).lower() | |
| if precision in ["float8_e4m3fn", "bfloat16"]: | |
| self.runtime_autocast_dtype = torch.bfloat16 | |
| elif precision == "mixed_precision": | |
| self.runtime_autocast_dtype = torch.float16 | |
| else: | |
| self.runtime_autocast_dtype = torch.float32 | |
| logging.info(f"Runtime precision policy set for autocast: {self.runtime_autocast_dtype}") | |
| def _align(self, dim: int, alignment: int = FRAMES_ALIGNMENT) -> int: | |
| """Aligns a dimension to the nearest multiple of `alignment`.""" | |
| return ((dim - 1) // alignment + 1) * alignment | |
| def _calculate_aligned_frames(self, duration_s: float, min_frames: int = 1) -> int: | |
| """Calculates the total number of frames based on duration, ensuring alignment.""" | |
| num_frames = int(round(duration_s * DEFAULT_FPS)) | |
| aligned_frames = self._align(num_frames) | |
| # Ensure it's at least 1 frame longer than the alignment for some ops, and respects min_frames | |
| final_frames = max(aligned_frames + 1, min_frames) | |
| return final_frames | |
| def _resolve_seed(self, seed: Optional[int]) -> int: | |
| """Returns the given seed or generates a new random one.""" | |
| return random.randint(0, 2**32 - 1) if seed is None else int(seed) | |
| # ============================================================================== | |
| # --- SINGLETON INSTANTIATION --- | |
| # ============================================================================== | |
| # The service is instantiated once when the module is imported, ensuring a single | |
| # instance manages the models and GPU resources throughout the application's life. | |
| try: | |
| video_generation_service = VideoService() | |
| logging.info("Global VideoService instance created successfully.") | |
| except Exception as e: | |
| logging.critical(f"Failed to initialize VideoService: {e}") | |
| traceback.print_exc() | |
| # Exit if the core service fails to start, as the app is non-functional | |
| sys.exit(1) |