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import torch |
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import gc |
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import os |
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import sys |
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import yaml |
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import logging |
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import huggingface_hub |
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import time |
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import threading |
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import subprocess |
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from pathlib import Path |
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from typing import Optional, List, Tuple, Union |
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from tools.optimization import optimize_ltx_worker, can_optimize_fp8 |
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from tools.hardware_manager import hardware_manager |
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from aduc_types import LatentConditioningItem |
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logger = logging.getLogger(__name__) |
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DEPS_DIR = Path("./deps") |
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LTX_VIDEO_REPO_DIR = DEPS_DIR / "LTX-Video" |
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LTX_VIDEO_REPO_URL = "https://github.com/Lightricks/LTX-Video.git" |
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create_ltx_video_pipeline = None |
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calculate_padding = None |
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LTXVideoPipeline = None |
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ConditioningItem = None |
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LTXMultiScalePipeline = None |
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vae_encode = None |
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latent_to_pixel_coords = None |
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randn_tensor = None |
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class LtxPoolManager: |
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""" |
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Manages a pool of LtxWorkers for optimized multi-GPU usage. |
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Handles its own code dependencies by cloning the LTX-Video repository. |
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""" |
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def __init__(self, device_ids, ltx_config_file_name): |
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logger.info(f"LTX POOL MANAGER: Creating workers for devices: {device_ids}") |
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self._ltx_modules_loaded = False |
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self._setup_dependencies() |
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self._lazy_load_ltx_modules() |
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self.ltx_config_file = LTX_VIDEO_REPO_DIR / "configs" / ltx_config_file_name |
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self.workers = [LtxWorker(dev_id, self.ltx_config_file) for dev_id in device_ids] |
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self.current_worker_index = 0 |
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self.lock = threading.Lock() |
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self._apply_ltx_pipeline_patches() |
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if all(w.device.type == 'cuda' for w in self.workers): |
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logger.info("LTX POOL MANAGER: HOT START MODE ENABLED. Pre-warming all GPUs...") |
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for worker in self.workers: |
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worker.to_gpu() |
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logger.info("LTX POOL MANAGER: All GPUs are hot and ready.") |
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else: |
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logger.info("LTX POOL MANAGER: Operating in CPU or mixed mode. GPU pre-warming skipped.") |
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def _setup_dependencies(self): |
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"""Clones the LTX-Video repo if not found and adds it to the system path.""" |
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if not LTX_VIDEO_REPO_DIR.exists(): |
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logger.info(f"LTX-Video repository not found at '{LTX_VIDEO_REPO_DIR}'. Cloning from GitHub...") |
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try: |
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DEPS_DIR.mkdir(exist_ok=True) |
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subprocess.run( |
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["git", "clone", LTX_VIDEO_REPO_URL, str(LTX_VIDEO_REPO_DIR)], |
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check=True, capture_output=True, text=True |
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) |
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logger.info("LTX-Video repository cloned successfully.") |
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except subprocess.CalledProcessError as e: |
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logger.error(f"Failed to clone LTX-Video repository. Git stderr: {e.stderr}") |
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raise RuntimeError("Could not clone the required LTX-Video dependency from GitHub.") |
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else: |
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logger.info("Found local LTX-Video repository.") |
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if str(LTX_VIDEO_REPO_DIR.resolve()) not in sys.path: |
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sys.path.insert(0, str(LTX_VIDEO_REPO_DIR.resolve())) |
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logger.info(f"Added '{LTX_VIDEO_REPO_DIR.resolve()}' to sys.path.") |
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def _lazy_load_ltx_modules(self): |
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"""Dynamically imports LTX-Video modules after ensuring the repo exists.""" |
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if self._ltx_modules_loaded: |
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return |
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global create_ltx_video_pipeline, calculate_padding, LTXVideoPipeline, ConditioningItem, LTXMultiScalePipeline |
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global vae_encode, latent_to_pixel_coords, randn_tensor |
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from managers.ltx_pipeline_utils import create_ltx_video_pipeline, calculate_padding |
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from ltx_video.pipelines.pipeline_ltx_video import LTXVideoPipeline, ConditioningItem, LTXMultiScalePipeline |
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from ltx_video.models.autoencoders.vae_encode import vae_encode, latent_to_pixel_coords |
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from diffusers.utils.torch_utils import randn_tensor |
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self._ltx_modules_loaded = True |
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logger.info("LTX-Video modules have been dynamically loaded.") |
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def _apply_ltx_pipeline_patches(self): |
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"""Applies runtime patches to the LTX pipeline for ADUC-SDR compatibility.""" |
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logger.info("LTX POOL MANAGER: Applying ADUC-SDR patches to LTX pipeline...") |
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for worker in self.workers: |
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worker.pipeline.prepare_conditioning = _aduc_prepare_conditioning_patch.__get__(worker.pipeline, LTXVideoPipeline) |
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logger.info("LTX POOL MANAGER: All pipeline instances have been patched successfully.") |
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def _get_next_worker(self): |
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with self.lock: |
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worker = self.workers[self.current_worker_index] |
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self.current_worker_index = (self.current_worker_index + 1) % len(self.workers) |
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return worker |
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def _prepare_pipeline_params(self, worker: 'LtxWorker', **kwargs) -> dict: |
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pipeline_params = { |
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"height": kwargs['height'], "width": kwargs['width'], "num_frames": kwargs['video_total_frames'], |
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"frame_rate": kwargs.get('video_fps', 24), |
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"generator": torch.Generator(device=worker.device).manual_seed(int(time.time()) + kwargs.get('current_fragment_index', 0)), |
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"is_video": True, "vae_per_channel_normalize": True, |
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"prompt": kwargs.get('motion_prompt', ""), "negative_prompt": kwargs.get('negative_prompt', "blurry, distorted, static, bad quality"), |
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"guidance_scale": kwargs.get('guidance_scale', 1.0), "stg_scale": kwargs.get('stg_scale', 0.0), |
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"rescaling_scale": kwargs.get('rescaling_scale', 0.15), "num_inference_steps": kwargs.get('num_inference_steps', 20), |
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"output_type": "latent" |
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} |
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if 'latents' in kwargs: |
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pipeline_params["latents"] = kwargs['latents'].to(worker.device, dtype=worker.pipeline.transformer.dtype) |
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if 'strength' in kwargs: |
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pipeline_params["strength"] = kwargs['strength'] |
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if 'conditioning_items_data' in kwargs: |
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final_conditioning_items = [] |
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for item in kwargs['conditioning_items_data']: |
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item.latent_tensor = item.latent_tensor.to(worker.device) |
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final_conditioning_items.append(item) |
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pipeline_params["conditioning_items"] = final_conditioning_items |
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if worker.is_distilled: |
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logger.info(f"Worker {worker.device} is using a distilled model. Using fixed timesteps.") |
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fixed_timesteps = worker.config.get("first_pass", {}).get("timesteps") |
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pipeline_params["timesteps"] = fixed_timesteps |
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if fixed_timesteps: |
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pipeline_params["num_inference_steps"] = len(fixed_timesteps) |
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return pipeline_params |
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def generate_latent_fragment(self, **kwargs) -> (torch.Tensor, tuple): |
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worker_to_use = self._get_next_worker() |
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try: |
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height, width = kwargs['height'], kwargs['width'] |
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padded_h, padded_w = ((height - 1) // 32 + 1) * 32, ((width - 1) // 32 + 1) * 32 |
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padding_vals = calculate_padding(height, width, padded_h, padded_w) |
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kwargs['height'], kwargs['width'] = padded_h, padded_w |
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pipeline_params = self._prepare_pipeline_params(worker_to_use, **kwargs) |
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logger.info(f"Initiating GENERATION on {worker_to_use.device} with shape {padded_w}x{padded_h}") |
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if isinstance(worker_to_use.pipeline, LTXMultiScalePipeline): |
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result = worker_to_use.pipeline.video_pipeline(**pipeline_params).images |
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else: |
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result = worker_to_use.generate_video_fragment_internal(**pipeline_params) |
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return result, padding_vals |
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except Exception as e: |
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logger.error(f"LTX POOL MANAGER: Error during generation on {worker_to_use.device}: {e}", exc_info=True) |
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raise e |
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finally: |
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if worker_to_use and worker_to_use.device.type == 'cuda': |
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with torch.cuda.device(worker_to_use.device): |
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gc.collect(); torch.cuda.empty_cache() |
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def refine_latents(self, latents_to_refine: torch.Tensor, **kwargs) -> (torch.Tensor, tuple): |
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pass |
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class LtxWorker: |
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""" |
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Represents a single instance of the LTX-Video pipeline on a specific device. |
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""" |
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def __init__(self, device_id, ltx_config_file): |
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self.cpu_device = torch.device('cpu') |
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self.device = torch.device(device_id if torch.cuda.is_available() else 'cpu') |
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logger.info(f"LTX Worker ({self.device}): Initializing with config '{ltx_config_file}'...") |
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with open(ltx_config_file, "r") as file: |
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self.config = yaml.safe_load(file) |
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self.is_distilled = "distilled" in self.config.get("checkpoint_path", "") |
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models_dir = LTX_VIDEO_REPO_DIR / "models_downloaded" |
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logger.info(f"LTX Worker ({self.device}): Preparing to load model...") |
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model_filename = self.config["checkpoint_path"] |
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model_path = huggingface_hub.hf_hub_download( |
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repo_id="Lightricks/LTX-Video", filename=model_filename, |
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local_dir=str(models_dir), local_dir_use_symlinks=False |
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) |
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self.pipeline = create_ltx_video_pipeline( |
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ckpt_path=model_path, |
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precision=self.config["precision"], |
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text_encoder_model_name_or_path=self.config["text_encoder_model_name_or_path"], |
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sampler=self.config["sampler"], |
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device='cpu' |
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) |
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logger.info(f"LTX Worker ({self.device}): Model ready on CPU. Is distilled model? {self.is_distilled}") |
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def to_gpu(self): |
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if self.device.type == 'cpu': return |
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logger.info(f"LTX Worker: Moving pipeline to GPU {self.device}...") |
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self.pipeline.to(self.device) |
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if self.device.type == 'cuda' and can_optimize_fp8(): |
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logger.info(f"LTX Worker ({self.device}): FP8 supported GPU detected. Optimizing...") |
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optimize_ltx_worker(self) |
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logger.info(f"LTX Worker ({self.device}): Optimization complete.") |
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elif self.device.type == 'cuda': |
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logger.info(f"LTX Worker ({self.device}): FP8 optimization not supported or disabled.") |
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def to_cpu(self): |
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if self.device.type == 'cpu': return |
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logger.info(f"LTX Worker: Unloading pipeline from GPU {self.device}...") |
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self.pipeline.to('cpu') |
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gc.collect() |
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if torch.cuda.is_available(): torch.cuda.empty_cache() |
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def generate_video_fragment_internal(self, **kwargs): |
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return self.pipeline(**kwargs).images |
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def _aduc_prepare_conditioning_patch( |
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self: LTXVideoPipeline, |
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conditioning_items: Optional[List[Union[ConditioningItem, "LatentConditioningItem"]]], |
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init_latents: torch.Tensor, |
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num_frames: int, |
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height: int, |
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width: int, |
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vae_per_channel_normalize: bool = False, |
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generator=None, |
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) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor, int]: |
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if not conditioning_items: |
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init_latents, init_latent_coords = self.patchifier.patchify(latents=init_latents) |
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init_pixel_coords = latent_to_pixel_coords(init_latent_coords, self.vae, causal_fix=self.transformer.config.causal_temporal_positioning) |
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return init_latents, init_pixel_coords, None, 0 |
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init_conditioning_mask = torch.zeros(init_latents[:, 0, :, :, :].shape, dtype=torch.float32, device=init_latents.device) |
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extra_conditioning_latents, extra_conditioning_pixel_coords, extra_conditioning_mask = [], [], [] |
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extra_conditioning_num_latents = 0 |
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is_latent_mode = hasattr(conditioning_items[0], 'latent_tensor') |
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if is_latent_mode: |
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for item in conditioning_items: |
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media_item_latents = item.latent_tensor.to(dtype=init_latents.dtype, device=init_latents.device) |
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media_frame_number, strength = item.media_frame_number, item.conditioning_strength |
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if media_frame_number == 0: |
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f_l, h_l, w_l = media_item_latents.shape[-3:] |
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init_latents[:, :, :f_l, :h_l, :w_l] = torch.lerp(init_latents[:, :, :f_l, :h_l, :w_l], media_item_latents, strength) |
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init_conditioning_mask[:, :f_l, :h_l, :w_l] = strength |
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else: |
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noise = randn_tensor(media_item_latents.shape, generator=generator, device=media_item_latents.device, dtype=media_item_latents.dtype) |
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media_item_latents = torch.lerp(noise, media_item_latents, strength) |
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patched_latents, latent_coords = self.patchifier.patchify(latents=media_item_latents) |
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pixel_coords = latent_to_pixel_coords(latent_coords, self.vae, causal_fix=self.transformer.config.causal_temporal_positioning) |
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pixel_coords[:, 0] += media_frame_number |
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extra_conditioning_num_latents += patched_latents.shape[1] |
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new_mask = torch.full(patched_latents.shape[:2], strength, dtype=torch.float32, device=init_latents.device) |
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extra_conditioning_latents.append(patched_latents) |
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extra_conditioning_pixel_coords.append(pixel_coords) |
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extra_conditioning_mask.append(new_mask) |
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else: |
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for item in conditioning_items: |
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if not isinstance(item, ConditioningItem): continue |
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item = self._resize_conditioning_item(item, height, width) |
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media_item_latents = vae_encode(item.media_item.to(dtype=self.vae.dtype, device=self.vae.device), self.vae, vae_per_channel_normalize=vae_per_channel_normalize).to(dtype=init_latents.dtype) |
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if item.media_frame_number == 0: |
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media_item_latents, l_x, l_y = self._get_latent_spatial_position(media_item_latents, item, height, width, strip_latent_border=True) |
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f_l, h_l, w_l = media_item_latents.shape[-3:] |
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init_latents[:, :, :f_l, l_y:l_y+h_l, l_x:l_x+w_l] = torch.lerp(init_latents[:, :, :f_l, l_y:l_y+h_l, l_x:l_x+w_l], media_item_latents, item.conditioning_strength) |
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init_conditioning_mask[:, :f_l, l_y:l_y+h_l, l_x:l_x+w_l] = item.conditioning_strength |
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else: |
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logger.warning("Pixel-based conditioning for non-zero frames is not fully implemented in this patch.") |
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init_latents, init_latent_coords = self.patchifier.patchify(latents=init_latents) |
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init_pixel_coords = latent_to_pixel_coords(init_latent_coords, self.vae, causal_fix=self.transformer.config.causal_temporal_positioning) |
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init_conditioning_mask, _ = self.patchifier.patchify(latents=init_conditioning_mask.unsqueeze(1)) |
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init_conditioning_mask = init_conditioning_mask.squeeze(-1) |
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if extra_conditioning_latents: |
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init_latents = torch.cat([*extra_conditioning_latents, init_latents], dim=1) |
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init_pixel_coords = torch.cat([*extra_conditioning_pixel_coords, init_pixel_coords], dim=2) |
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init_conditioning_mask = torch.cat([*extra_conditioning_mask, init_conditioning_mask], dim=1) |
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if self.transformer.use_tpu_flash_attention: |
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init_latents = init_latents[:, :-extra_conditioning_num_latents] |
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init_pixel_coords = init_pixel_coords[:, :, :-extra_conditioning_num_latents] |
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init_conditioning_mask = init_conditioning_mask[:, :-extra_conditioning_num_latents] |
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return init_latents, init_pixel_coords, init_conditioning_mask, extra_conditioning_num_latents |
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with open("config.yaml", 'r') as f: |
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config = yaml.safe_load(f) |
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ltx_gpus_required = config['specialists']['ltx']['gpus_required'] |
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ltx_device_ids = hardware_manager.allocate_gpus('LTX', ltx_gpus_required) |
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ltx_config_filename = config['specialists']['ltx']['config_file'] |
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ltx_manager_singleton = LtxPoolManager(device_ids=ltx_device_ids, ltx_config_file_name=ltx_config_filename) |
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logger.info("Video Specialist (LTX) ready.") |