training_utils.py 24.5 KB
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import contextlib
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import copy
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import math
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import random
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from typing import Any, Dict, Iterable, List, Optional, Tuple, Union
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import numpy as np
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import torch

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from .models import UNet2DConditionModel
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from .schedulers import SchedulerMixin
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from .utils import (
    convert_state_dict_to_diffusers,
    convert_state_dict_to_peft,
    deprecate,
    is_peft_available,
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    is_torch_npu_available,
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    is_torchvision_available,
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    is_transformers_available,
)
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if is_transformers_available():
    import transformers
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if is_peft_available():
    from peft import set_peft_model_state_dict

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if is_torchvision_available():
    from torchvision import transforms

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if is_torch_npu_available():
    import torch_npu  # noqa: F401

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def set_seed(seed: int):
    """
    Args:
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    Helper function for reproducible behavior to set the seed in `random`, `numpy`, `torch`.
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        seed (`int`): The seed to set.
    """
    random.seed(seed)
    np.random.seed(seed)
    torch.manual_seed(seed)
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    if is_torch_npu_available():
        torch.npu.manual_seed_all(seed)
    else:
        torch.cuda.manual_seed_all(seed)
        # ^^ safe to call this function even if cuda is not available
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def compute_snr(noise_scheduler, timesteps):
    """
    Computes SNR as per
    https://github.com/TiankaiHang/Min-SNR-Diffusion-Training/blob/521b624bd70c67cee4bdf49225915f5945a872e3/guided_diffusion/gaussian_diffusion.py#L847-L849
    """
    alphas_cumprod = noise_scheduler.alphas_cumprod
    sqrt_alphas_cumprod = alphas_cumprod**0.5
    sqrt_one_minus_alphas_cumprod = (1.0 - alphas_cumprod) ** 0.5

    # Expand the tensors.
    # Adapted from https://github.com/TiankaiHang/Min-SNR-Diffusion-Training/blob/521b624bd70c67cee4bdf49225915f5945a872e3/guided_diffusion/gaussian_diffusion.py#L1026
    sqrt_alphas_cumprod = sqrt_alphas_cumprod.to(device=timesteps.device)[timesteps].float()
    while len(sqrt_alphas_cumprod.shape) < len(timesteps.shape):
        sqrt_alphas_cumprod = sqrt_alphas_cumprod[..., None]
    alpha = sqrt_alphas_cumprod.expand(timesteps.shape)

    sqrt_one_minus_alphas_cumprod = sqrt_one_minus_alphas_cumprod.to(device=timesteps.device)[timesteps].float()
    while len(sqrt_one_minus_alphas_cumprod.shape) < len(timesteps.shape):
        sqrt_one_minus_alphas_cumprod = sqrt_one_minus_alphas_cumprod[..., None]
    sigma = sqrt_one_minus_alphas_cumprod.expand(timesteps.shape)

    # Compute SNR.
    snr = (alpha / sigma) ** 2
    return snr


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def resolve_interpolation_mode(interpolation_type: str):
    """
    Maps a string describing an interpolation function to the corresponding torchvision `InterpolationMode` enum. The
    full list of supported enums is documented at
    https://pytorch.org/vision/0.9/transforms.html#torchvision.transforms.functional.InterpolationMode.

    Args:
        interpolation_type (`str`):
            A string describing an interpolation method. Currently, `bilinear`, `bicubic`, `box`, `nearest`,
            `nearest_exact`, `hamming`, and `lanczos` are supported, corresponding to the supported interpolation modes
            in torchvision.

    Returns:
        `torchvision.transforms.InterpolationMode`: an `InterpolationMode` enum used by torchvision's `resize`
        transform.
    """
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    if not is_torchvision_available():
        raise ImportError(
            "Please make sure to install `torchvision` to be able to use the `resolve_interpolation_mode()` function."
        )

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    if interpolation_type == "bilinear":
        interpolation_mode = transforms.InterpolationMode.BILINEAR
    elif interpolation_type == "bicubic":
        interpolation_mode = transforms.InterpolationMode.BICUBIC
    elif interpolation_type == "box":
        interpolation_mode = transforms.InterpolationMode.BOX
    elif interpolation_type == "nearest":
        interpolation_mode = transforms.InterpolationMode.NEAREST
    elif interpolation_type == "nearest_exact":
        interpolation_mode = transforms.InterpolationMode.NEAREST_EXACT
    elif interpolation_type == "hamming":
        interpolation_mode = transforms.InterpolationMode.HAMMING
    elif interpolation_type == "lanczos":
        interpolation_mode = transforms.InterpolationMode.LANCZOS
    else:
        raise ValueError(
            f"The given interpolation mode {interpolation_type} is not supported. Currently supported interpolation"
            f" modes are `bilinear`, `bicubic`, `box`, `nearest`, `nearest_exact`, `hamming`, and `lanczos`."
        )

    return interpolation_mode


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def compute_dream_and_update_latents(
    unet: UNet2DConditionModel,
    noise_scheduler: SchedulerMixin,
    timesteps: torch.Tensor,
    noise: torch.Tensor,
    noisy_latents: torch.Tensor,
    target: torch.Tensor,
    encoder_hidden_states: torch.Tensor,
    dream_detail_preservation: float = 1.0,
) -> Tuple[Optional[torch.Tensor], Optional[torch.Tensor]]:
    """
    Implements "DREAM (Diffusion Rectification and Estimation-Adaptive Models)" from http://arxiv.org/abs/2312.00210.
    DREAM helps align training with sampling to help training be more efficient and accurate at the cost of an extra
    forward step without gradients.

    Args:
        `unet`: The state unet to use to make a prediction.
        `noise_scheduler`: The noise scheduler used to add noise for the given timestep.
        `timesteps`: The timesteps for the noise_scheduler to user.
        `noise`: A tensor of noise in the shape of noisy_latents.
        `noisy_latents`: Previously noise latents from the training loop.
        `target`: The ground-truth tensor to predict after eps is removed.
        `encoder_hidden_states`: Text embeddings from the text model.
        `dream_detail_preservation`: A float value that indicates detail preservation level.
          See reference.

    Returns:
        `tuple[torch.Tensor, torch.Tensor]`: Adjusted noisy_latents and target.
    """
    alphas_cumprod = noise_scheduler.alphas_cumprod.to(timesteps.device)[timesteps, None, None, None]
    sqrt_one_minus_alphas_cumprod = (1.0 - alphas_cumprod) ** 0.5

    # The paper uses lambda = sqrt(1 - alpha) ** p, with p = 1 in their experiments.
    dream_lambda = sqrt_one_minus_alphas_cumprod**dream_detail_preservation

    pred = None
    with torch.no_grad():
        pred = unet(noisy_latents, timesteps, encoder_hidden_states).sample

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    _noisy_latents, _target = (None, None)
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    if noise_scheduler.config.prediction_type == "epsilon":
        predicted_noise = pred
        delta_noise = (noise - predicted_noise).detach()
        delta_noise.mul_(dream_lambda)
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        _noisy_latents = noisy_latents.add(sqrt_one_minus_alphas_cumprod * delta_noise)
        _target = target.add(delta_noise)
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    elif noise_scheduler.config.prediction_type == "v_prediction":
        raise NotImplementedError("DREAM has not been implemented for v-prediction")
    else:
        raise ValueError(f"Unknown prediction type {noise_scheduler.config.prediction_type}")

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    return _noisy_latents, _target
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def unet_lora_state_dict(unet: UNet2DConditionModel) -> Dict[str, torch.Tensor]:
    r"""
    Returns:
        A state dict containing just the LoRA parameters.
    """
    lora_state_dict = {}

    for name, module in unet.named_modules():
        if hasattr(module, "set_lora_layer"):
            lora_layer = getattr(module, "lora_layer")
            if lora_layer is not None:
                current_lora_layer_sd = lora_layer.state_dict()
                for lora_layer_matrix_name, lora_param in current_lora_layer_sd.items():
                    # The matrix name can either be "down" or "up".
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                    lora_state_dict[f"{name}.lora.{lora_layer_matrix_name}"] = lora_param
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    return lora_state_dict


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def cast_training_params(model: Union[torch.nn.Module, List[torch.nn.Module]], dtype=torch.float32):
    if not isinstance(model, list):
        model = [model]
    for m in model:
        for param in m.parameters():
            # only upcast trainable parameters into fp32
            if param.requires_grad:
                param.data = param.to(dtype)


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def _set_state_dict_into_text_encoder(
    lora_state_dict: Dict[str, torch.Tensor], prefix: str, text_encoder: torch.nn.Module
):
    """
    Sets the `lora_state_dict` into `text_encoder` coming from `transformers`.

    Args:
        lora_state_dict: The state dictionary to be set.
        prefix: String identifier to retrieve the portion of the state dict that belongs to `text_encoder`.
        text_encoder: Where the `lora_state_dict` is to be set.
    """

    text_encoder_state_dict = {
        f'{k.replace(prefix, "")}': v for k, v in lora_state_dict.items() if k.startswith(prefix)
    }
    text_encoder_state_dict = convert_state_dict_to_peft(convert_state_dict_to_diffusers(text_encoder_state_dict))
    set_peft_model_state_dict(text_encoder, text_encoder_state_dict, adapter_name="default")


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def compute_density_for_timestep_sampling(
    weighting_scheme: str, batch_size: int, logit_mean: float = None, logit_std: float = None, mode_scale: float = None
):
    """Compute the density for sampling the timesteps when doing SD3 training.

    Courtesy: This was contributed by Rafie Walker in https://github.com/huggingface/diffusers/pull/8528.

    SD3 paper reference: https://arxiv.org/abs/2403.03206v1.
    """
    if weighting_scheme == "logit_normal":
        # See 3.1 in the SD3 paper ($rf/lognorm(0.00,1.00)$).
        u = torch.normal(mean=logit_mean, std=logit_std, size=(batch_size,), device="cpu")
        u = torch.nn.functional.sigmoid(u)
    elif weighting_scheme == "mode":
        u = torch.rand(size=(batch_size,), device="cpu")
        u = 1 - u - mode_scale * (torch.cos(math.pi * u / 2) ** 2 - 1 + u)
    else:
        u = torch.rand(size=(batch_size,), device="cpu")
    return u


def compute_loss_weighting_for_sd3(weighting_scheme: str, sigmas=None):
    """Computes loss weighting scheme for SD3 training.

    Courtesy: This was contributed by Rafie Walker in https://github.com/huggingface/diffusers/pull/8528.

    SD3 paper reference: https://arxiv.org/abs/2403.03206v1.
    """
    if weighting_scheme == "sigma_sqrt":
        weighting = (sigmas**-2.0).float()
    elif weighting_scheme == "cosmap":
        bot = 1 - 2 * sigmas + 2 * sigmas**2
        weighting = 2 / (math.pi * bot)
    else:
        weighting = torch.ones_like(sigmas)
    return weighting


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# Adapted from torch-ema https://github.com/fadel/pytorch_ema/blob/master/torch_ema/ema.py#L14
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class EMAModel:
    """
    Exponential Moving Average of models weights
    """

    def __init__(
        self,
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        parameters: Iterable[torch.nn.Parameter],
        decay: float = 0.9999,
        min_decay: float = 0.0,
        update_after_step: int = 0,
        use_ema_warmup: bool = False,
        inv_gamma: Union[float, int] = 1.0,
        power: Union[float, int] = 2 / 3,
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        foreach: bool = False,
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        model_cls: Optional[Any] = None,
        model_config: Dict[str, Any] = None,
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        **kwargs,
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    ):
        """
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        Args:
            parameters (Iterable[torch.nn.Parameter]): The parameters to track.
            decay (float): The decay factor for the exponential moving average.
            min_decay (float): The minimum decay factor for the exponential moving average.
            update_after_step (int): The number of steps to wait before starting to update the EMA weights.
            use_ema_warmup (bool): Whether to use EMA warmup.
            inv_gamma (float):
                Inverse multiplicative factor of EMA warmup. Default: 1. Only used if `use_ema_warmup` is True.
            power (float): Exponential factor of EMA warmup. Default: 2/3. Only used if `use_ema_warmup` is True.
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            foreach (bool): Use torch._foreach functions for updating shadow parameters. Should be faster.
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            device (Optional[Union[str, torch.device]]): The device to store the EMA weights on. If None, the EMA
                        weights will be stored on CPU.

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        @crowsonkb's notes on EMA Warmup:
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            If gamma=1 and power=1, implements a simple average. gamma=1, power=2/3 are good values for models you plan
            to train for a million or more steps (reaches decay factor 0.999 at 31.6K steps, 0.9999 at 1M steps),
            gamma=1, power=3/4 for models you plan to train for less (reaches decay factor 0.999 at 10K steps, 0.9999
            at 215.4k steps).
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        """

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        if isinstance(parameters, torch.nn.Module):
            deprecation_message = (
                "Passing a `torch.nn.Module` to `ExponentialMovingAverage` is deprecated. "
                "Please pass the parameters of the module instead."
            )
            deprecate(
                "passing a `torch.nn.Module` to `ExponentialMovingAverage`",
                "1.0.0",
                deprecation_message,
                standard_warn=False,
            )
            parameters = parameters.parameters()

            # set use_ema_warmup to True if a torch.nn.Module is passed for backwards compatibility
            use_ema_warmup = True

        if kwargs.get("max_value", None) is not None:
            deprecation_message = "The `max_value` argument is deprecated. Please use `decay` instead."
            deprecate("max_value", "1.0.0", deprecation_message, standard_warn=False)
            decay = kwargs["max_value"]

        if kwargs.get("min_value", None) is not None:
            deprecation_message = "The `min_value` argument is deprecated. Please use `min_decay` instead."
            deprecate("min_value", "1.0.0", deprecation_message, standard_warn=False)
            min_decay = kwargs["min_value"]

        parameters = list(parameters)
        self.shadow_params = [p.clone().detach() for p in parameters]

        if kwargs.get("device", None) is not None:
            deprecation_message = "The `device` argument is deprecated. Please use `to` instead."
            deprecate("device", "1.0.0", deprecation_message, standard_warn=False)
            self.to(device=kwargs["device"])

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        self.temp_stored_params = None
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        self.decay = decay
        self.min_decay = min_decay
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        self.update_after_step = update_after_step
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        self.use_ema_warmup = use_ema_warmup
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        self.inv_gamma = inv_gamma
        self.power = power
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        self.optimization_step = 0
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        self.cur_decay_value = None  # set in `step()`
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        self.foreach = foreach
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        self.model_cls = model_cls
        self.model_config = model_config

    @classmethod
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    def from_pretrained(cls, path, model_cls, foreach=False) -> "EMAModel":
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        _, ema_kwargs = model_cls.load_config(path, return_unused_kwargs=True)
        model = model_cls.from_pretrained(path)

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        ema_model = cls(model.parameters(), model_cls=model_cls, model_config=model.config, foreach=foreach)
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        ema_model.load_state_dict(ema_kwargs)
        return ema_model

    def save_pretrained(self, path):
        if self.model_cls is None:
            raise ValueError("`save_pretrained` can only be used if `model_cls` was defined at __init__.")

        if self.model_config is None:
            raise ValueError("`save_pretrained` can only be used if `model_config` was defined at __init__.")

        model = self.model_cls.from_config(self.model_config)
        state_dict = self.state_dict()
        state_dict.pop("shadow_params", None)

        model.register_to_config(**state_dict)
        self.copy_to(model.parameters())
        model.save_pretrained(path)

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    def get_decay(self, optimization_step: int) -> float:
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        """
        Compute the decay factor for the exponential moving average.
        """
        step = max(0, optimization_step - self.update_after_step - 1)

        if step <= 0:
            return 0.0

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        if self.use_ema_warmup:
            cur_decay_value = 1 - (1 + step / self.inv_gamma) ** -self.power
        else:
            cur_decay_value = (1 + step) / (10 + step)

        cur_decay_value = min(cur_decay_value, self.decay)
        # make sure decay is not smaller than min_decay
        cur_decay_value = max(cur_decay_value, self.min_decay)
        return cur_decay_value
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    @torch.no_grad()
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    def step(self, parameters: Iterable[torch.nn.Parameter]):
        if isinstance(parameters, torch.nn.Module):
            deprecation_message = (
                "Passing a `torch.nn.Module` to `ExponentialMovingAverage.step` is deprecated. "
                "Please pass the parameters of the module instead."
            )
            deprecate(
                "passing a `torch.nn.Module` to `ExponentialMovingAverage.step`",
                "1.0.0",
                deprecation_message,
                standard_warn=False,
            )
            parameters = parameters.parameters()

        parameters = list(parameters)

        self.optimization_step += 1

        # Compute the decay factor for the exponential moving average.
        decay = self.get_decay(self.optimization_step)
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        self.cur_decay_value = decay
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        one_minus_decay = 1 - decay

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        context_manager = contextlib.nullcontext
        if is_transformers_available() and transformers.deepspeed.is_deepspeed_zero3_enabled():
            import deepspeed

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        if self.foreach:
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            if is_transformers_available() and transformers.deepspeed.is_deepspeed_zero3_enabled():
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                context_manager = deepspeed.zero.GatheredParameters(parameters, modifier_rank=None)
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            with context_manager():
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                params_grad = [param for param in parameters if param.requires_grad]
                s_params_grad = [
                    s_param for s_param, param in zip(self.shadow_params, parameters) if param.requires_grad
                ]

                if len(params_grad) < len(parameters):
                    torch._foreach_copy_(
                        [s_param for s_param, param in zip(self.shadow_params, parameters) if not param.requires_grad],
                        [param for param in parameters if not param.requires_grad],
                        non_blocking=True,
                    )

                torch._foreach_sub_(
                    s_params_grad, torch._foreach_sub(s_params_grad, params_grad), alpha=one_minus_decay
                )

        else:
            for s_param, param in zip(self.shadow_params, parameters):
                if is_transformers_available() and transformers.deepspeed.is_deepspeed_zero3_enabled():
                    context_manager = deepspeed.zero.GatheredParameters(param, modifier_rank=None)

                with context_manager():
                    if param.requires_grad:
                        s_param.sub_(one_minus_decay * (s_param - param))
                    else:
                        s_param.copy_(param)
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    def copy_to(self, parameters: Iterable[torch.nn.Parameter]) -> None:
        """
        Copy current averaged parameters into given collection of parameters.
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        Args:
            parameters: Iterable of `torch.nn.Parameter`; the parameters to be
                updated with the stored moving averages. If `None`, the parameters with which this
                `ExponentialMovingAverage` was initialized will be used.
        """
        parameters = list(parameters)
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        if self.foreach:
            torch._foreach_copy_(
                [param.data for param in parameters],
                [s_param.to(param.device).data for s_param, param in zip(self.shadow_params, parameters)],
            )
        else:
            for s_param, param in zip(self.shadow_params, parameters):
                param.data.copy_(s_param.to(param.device).data)
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    def pin_memory(self) -> None:
        r"""
        Move internal buffers of the ExponentialMovingAverage to pinned memory. Useful for non-blocking transfers for
        offloading EMA params to the host.
        """

        self.shadow_params = [p.pin_memory() for p in self.shadow_params]

    def to(self, device=None, dtype=None, non_blocking=False) -> None:
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        r"""Move internal buffers of the ExponentialMovingAverage to `device`.

        Args:
            device: like `device` argument to `torch.Tensor.to`
        """
        # .to() on the tensors handles None correctly
        self.shadow_params = [
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            p.to(device=device, dtype=dtype, non_blocking=non_blocking)
            if p.is_floating_point()
            else p.to(device=device, non_blocking=non_blocking)
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            for p in self.shadow_params
        ]

    def state_dict(self) -> dict:
        r"""
        Returns the state of the ExponentialMovingAverage as a dict. This method is used by accelerate during
        checkpointing to save the ema state dict.
        """
        # Following PyTorch conventions, references to tensors are returned:
        # "returns a reference to the state and not its copy!" -
        # https://pytorch.org/tutorials/beginner/saving_loading_models.html#what-is-a-state-dict
        return {
            "decay": self.decay,
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            "min_decay": self.min_decay,
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            "optimization_step": self.optimization_step,
            "update_after_step": self.update_after_step,
            "use_ema_warmup": self.use_ema_warmup,
            "inv_gamma": self.inv_gamma,
            "power": self.power,
            "shadow_params": self.shadow_params,
        }

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    def store(self, parameters: Iterable[torch.nn.Parameter]) -> None:
        r"""
        Args:
        Save the current parameters for restoring later.
            parameters: Iterable of `torch.nn.Parameter`; the parameters to be
                temporarily stored.
        """
        self.temp_stored_params = [param.detach().cpu().clone() for param in parameters]

    def restore(self, parameters: Iterable[torch.nn.Parameter]) -> None:
        r"""
        Args:
        Restore the parameters stored with the `store` method. Useful to validate the model with EMA parameters without:
        affecting the original optimization process. Store the parameters before the `copy_to()` method. After
        validation (or model saving), use this to restore the former parameters.
            parameters: Iterable of `torch.nn.Parameter`; the parameters to be
                updated with the stored parameters. If `None`, the parameters with which this
                `ExponentialMovingAverage` was initialized will be used.
        """
        if self.temp_stored_params is None:
            raise RuntimeError("This ExponentialMovingAverage has no `store()`ed weights " "to `restore()`")
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        if self.foreach:
            torch._foreach_copy_(
                [param.data for param in parameters], [c_param.data for c_param in self.temp_stored_params]
            )
        else:
            for c_param, param in zip(self.temp_stored_params, parameters):
                param.data.copy_(c_param.data)
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        # Better memory-wise.
        self.temp_stored_params = None

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    def load_state_dict(self, state_dict: dict) -> None:
        r"""
        Args:
        Loads the ExponentialMovingAverage state. This method is used by accelerate during checkpointing to save the
        ema state dict.
            state_dict (dict): EMA state. Should be an object returned
                from a call to :meth:`state_dict`.
        """
        # deepcopy, to be consistent with module API
        state_dict = copy.deepcopy(state_dict)

        self.decay = state_dict.get("decay", self.decay)
        if self.decay < 0.0 or self.decay > 1.0:
            raise ValueError("Decay must be between 0 and 1")

        self.min_decay = state_dict.get("min_decay", self.min_decay)
        if not isinstance(self.min_decay, float):
            raise ValueError("Invalid min_decay")

        self.optimization_step = state_dict.get("optimization_step", self.optimization_step)
        if not isinstance(self.optimization_step, int):
            raise ValueError("Invalid optimization_step")

        self.update_after_step = state_dict.get("update_after_step", self.update_after_step)
        if not isinstance(self.update_after_step, int):
            raise ValueError("Invalid update_after_step")

        self.use_ema_warmup = state_dict.get("use_ema_warmup", self.use_ema_warmup)
        if not isinstance(self.use_ema_warmup, bool):
            raise ValueError("Invalid use_ema_warmup")

        self.inv_gamma = state_dict.get("inv_gamma", self.inv_gamma)
        if not isinstance(self.inv_gamma, (float, int)):
            raise ValueError("Invalid inv_gamma")

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        self.power = state_dict.get("power", self.power)
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        if not isinstance(self.power, (float, int)):
            raise ValueError("Invalid power")

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        shadow_params = state_dict.get("shadow_params", None)
        if shadow_params is not None:
            self.shadow_params = shadow_params
            if not isinstance(self.shadow_params, list):
                raise ValueError("shadow_params must be a list")
            if not all(isinstance(p, torch.Tensor) for p in self.shadow_params):
                raise ValueError("shadow_params must all be Tensors")