logger = get_logger(__name__) def save_accelerator_state( output_dir: str, model_states: List[dict], optimizers: list, schedulers: list, dataloaders: list, process_index: int, scaler: GradScaler = None, save_on_each_node: bool = False, safe_serialization: bool = True, ): """ Saves the current states of the models, optimizers, scaler, and RNG generators to a given directory. If `safe_serialization` is `True`, models will be saved with `safetensors` while the rest are saved using native `pickle`. Args: output_dir (`str` or `os.PathLike`): The name of the folder to save all relevant weights and states. model_states (`List[torch.nn.Module]`): A list of model states optimizers (`List[torch.optim.Optimizer]`): A list of optimizer instances schedulers (`List[torch.optim.lr_scheduler._LRScheduler]`): A list of learning rate schedulers dataloaders (`List[torch.utils.data.DataLoader]`): A list of dataloader instances to save their sampler states process_index (`int`): The current process index in the Accelerator state scaler (`torch.cuda.amp.GradScaler`, *optional*): An optional gradient scaler instance to save save_on_each_node (`bool`, *optional*): Whether to save on every node, or only the main node. safe_serialization (`bool`, *optional*, defaults to `True`): Whether to save the model using `safetensors` or the traditional PyTorch way (that uses `pickle`). """ output_dir = Path(output_dir) # Model states for i, state in enumerate(model_states): weights_name = WEIGHTS_NAME if not safe_serialization else SAFE_WEIGHTS_NAME if i > 0: weights_name = weights_name.replace(".", f"_{i}.") output_model_file = output_dir.joinpath(weights_name) save(state, output_model_file, save_on_each_node=save_on_each_node, safe_serialization=safe_serialization) logger.info(f"Model weights saved in {output_model_file}") # Optimizer states for i, opt in enumerate(optimizers): state = opt.state_dict() optimizer_name = f"{OPTIMIZER_NAME}.bin" if i == 0 else f"{OPTIMIZER_NAME}_{i}.bin" output_optimizer_file = output_dir.joinpath(optimizer_name) save(state, output_optimizer_file, save_on_each_node=save_on_each_node, safe_serialization=False) logger.info(f"Optimizer state saved in {output_optimizer_file}") # Scheduler states for i, scheduler in enumerate(schedulers): state = scheduler.state_dict() scheduler_name = f"{SCHEDULER_NAME}.bin" if i == 0 else f"{SCHEDULER_NAME}_{i}.bin" output_scheduler_file = output_dir.joinpath(scheduler_name) save(state, output_scheduler_file, save_on_each_node=save_on_each_node, safe_serialization=False) logger.info(f"Scheduler state saved in {output_scheduler_file}") # DataLoader states for i, dataloader in enumerate(dataloaders): sampler_name = f"{SAMPLER_NAME}.bin" if i == 0 else f"{SAMPLER_NAME}_{i}.bin" output_sampler_file = output_dir.joinpath(sampler_name) # Only save if we have our custom sampler from .data_loader import IterableDatasetShard, SeedableRandomSampler if isinstance(dataloader.dataset, IterableDatasetShard): sampler = dataloader.sampler.sampler if isinstance(sampler, SeedableRandomSampler): save(sampler, output_sampler_file, save_on_each_node=save_on_each_node, safe_serialization=False) logger.info(f"Sampler state for dataloader {i} saved in {output_sampler_file}") # GradScaler state if scaler is not None: state = scaler.state_dict() output_scaler_file = output_dir.joinpath(SCALER_NAME) torch.save(state, output_scaler_file) logger.info(f"Gradient scaler state saved in {output_scaler_file}") # Random number generator states states = {} states_name = f"{RNG_STATE_NAME}_{process_index}.pkl" states["random_state"] = random.getstate() states["numpy_random_seed"] = np.random.get_state() states["torch_manual_seed"] = torch.get_rng_state() if is_xpu_available(): states["torch_xpu_manual_seed"] = torch.xpu.get_rng_state_all() else: states["torch_cuda_manual_seed"] = torch.cuda.get_rng_state_all() if is_tpu_available(): states["xm_seed"] = xm.get_rng_state() output_states_file = output_dir.joinpath(states_name) torch.save(states, output_states_file) logger.info(f"Random states saved in {output_states_file}") return output_dir def load_accelerator_state( input_dir, models, optimizers, schedulers, dataloaders, process_index, scaler=None, map_location=None, **load_model_func_kwargs, ): """ Loads states of the models, optimizers, scaler, and RNG generators from a given directory. Args: input_dir (`str` or `os.PathLike`): The name of the folder to load all relevant weights and states. models (`List[torch.nn.Module]`): A list of model instances optimizers (`List[torch.optim.Optimizer]`): A list of optimizer instances schedulers (`List[torch.optim.lr_scheduler._LRScheduler]`): A list of learning rate schedulers process_index (`int`): The current process index in the Accelerator state scaler (`torch.cuda.amp.GradScaler`, *optional*): An optional *GradScaler* instance to load map_location (`str`, *optional*): What device to load the optimizer state onto. Should be one of either "cpu" or "on_device". load_model_func_kwargs (`dict`, *optional*): Additional arguments that can be passed to the model's `load_state_dict` method. """ if map_location not in [None, "cpu", "on_device"]: raise TypeError( "Unsupported optimizer map location passed, please choose one of `None`, `'cpu'`, or `'on_device'`" ) if map_location is None: map_location = "cpu" elif map_location == "on_device": map_location = PartialState().device input_dir = Path(input_dir) # Model states for i, model in enumerate(models): ending = f"_{i}" if i > 0 else "" input_model_file = input_dir.joinpath(f"{SAFE_MODEL_NAME}{ending}.safetensors") if input_model_file.exists(): state_dict = load_file(input_model_file, device=str(map_location)) else: # Load with torch input_model_file = input_dir.joinpath(f"{MODEL_NAME}{ending}.bin") state_dict = torch.load(input_model_file, map_location=map_location) models[i].load_state_dict(state_dict, **load_model_func_kwargs) logger.info("All model weights loaded successfully") # Optimizer states for i, opt in enumerate(optimizers): optimizer_name = f"{OPTIMIZER_NAME}.bin" if i == 0 else f"{OPTIMIZER_NAME}_{i}.bin" input_optimizer_file = input_dir.joinpath(optimizer_name) optimizer_state = torch.load(input_optimizer_file, map_location=map_location) optimizers[i].load_state_dict(optimizer_state) logger.info("All optimizer states loaded successfully") # Scheduler states for i, scheduler in enumerate(schedulers): scheduler_name = f"{SCHEDULER_NAME}.bin" if i == 0 else f"{SCHEDULER_NAME}_{i}.bin" input_scheduler_file = input_dir.joinpath(scheduler_name) scheduler.load_state_dict(torch.load(input_scheduler_file)) logger.info("All scheduler states loaded successfully") for i, dataloader in enumerate(dataloaders): sampler_name = f"{SAMPLER_NAME}.bin" if i == 0 else f"{SAMPLER_NAME}_{i}.bin" input_sampler_file = input_dir.joinpath(sampler_name) # Only load if we have our custom sampler from .data_loader import IterableDatasetShard, SeedableRandomSampler if isinstance(dataloader.dataset, IterableDatasetShard): sampler = dataloader.sampler.sampler if isinstance(sampler, SeedableRandomSampler): dataloader.sampler.sampler = torch.load(input_sampler_file) logger.info("All dataloader sampler states loaded successfully") # GradScaler state if scaler is not None: input_scaler_file = input_dir.joinpath(SCALER_NAME) scaler.load_state_dict(torch.load(input_scaler_file)) logger.info("GradScaler state loaded successfully") # Random states try: states = torch.load(input_dir.joinpath(f"{RNG_STATE_NAME}_{process_index}.pkl")) random.setstate(states["random_state"]) np.random.set_state(states["numpy_random_seed"]) torch.set_rng_state(states["torch_manual_seed"]) if is_xpu_available(): torch.xpu.set_rng_state_all(states["torch_xpu_manual_seed"]) else: torch.cuda.set_rng_state_all(states["torch_cuda_manual_seed"]) if is_tpu_available(): xm.set_rng_state(states["xm_seed"]) logger.info("All random states loaded successfully") except Exception: logger.info("Could not load random states") def save_custom_state(obj, path, index: int = 0, save_on_each_node: bool = False): """ Saves the state of `obj` to `{path}/custom_checkpoint_{index}.pkl` """ # Should this be the right way to get a qual_name type value from `obj`? save_location = Path(path) / f"custom_checkpoint_{index}.pkl" logger.info(f"Saving the state of {get_pretty_name(obj)} to {save_location}") save(obj.state_dict(), save_location, save_on_each_node=save_on_each_node) def load_custom_state(obj, path, index: int = 0): """ Loads the state of `obj` at `{path}/custom_checkpoint_{index}.pkl` """ load_location = f"{path}/custom_checkpoint_{index}.pkl" logger.info(f"Loading the state of {get_pretty_name(obj)} from {load_location}") obj.load_state_dict(torch.load(load_location, map_location="cpu"))