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Evgeny Zhukov
Origin: https://github.com/ali-vilab/UniAnimate/commit/d7814fa44a0a1154524b92fce0e3133a2604d333
2ba4412
| import math | |
| import torch | |
| from torch.optim import Optimizer | |
| from torch.optim.lr_scheduler import LambdaLR | |
| __all__ = ['Adafactor'] | |
| class Adafactor(Optimizer): | |
| """ | |
| AdaFactor pytorch implementation can be used as a drop in replacement for Adam original fairseq code: | |
| https://github.com/pytorch/fairseq/blob/master/fairseq/optim/adafactor.py | |
| Paper: *Adafactor: Adaptive Learning Rates with Sublinear Memory Cost* https://arxiv.org/abs/1804.04235 Note that | |
| this optimizer internally adjusts the learning rate depending on the `scale_parameter`, `relative_step` and | |
| `warmup_init` options. To use a manual (external) learning rate schedule you should set `scale_parameter=False` and | |
| `relative_step=False`. | |
| Arguments: | |
| params (`Iterable[nn.parameter.Parameter]`): | |
| Iterable of parameters to optimize or dictionaries defining parameter groups. | |
| lr (`float`, *optional*): | |
| The external learning rate. | |
| eps (`Tuple[float, float]`, *optional*, defaults to (1e-30, 1e-3)): | |
| Regularization constants for square gradient and parameter scale respectively | |
| clip_threshold (`float`, *optional*, defaults 1.0): | |
| Threshold of root mean square of final gradient update | |
| decay_rate (`float`, *optional*, defaults to -0.8): | |
| Coefficient used to compute running averages of square | |
| beta1 (`float`, *optional*): | |
| Coefficient used for computing running averages of gradient | |
| weight_decay (`float`, *optional*, defaults to 0): | |
| Weight decay (L2 penalty) | |
| scale_parameter (`bool`, *optional*, defaults to `True`): | |
| If True, learning rate is scaled by root mean square | |
| relative_step (`bool`, *optional*, defaults to `True`): | |
| If True, time-dependent learning rate is computed instead of external learning rate | |
| warmup_init (`bool`, *optional*, defaults to `False`): | |
| Time-dependent learning rate computation depends on whether warm-up initialization is being used | |
| This implementation handles low-precision (FP16, bfloat) values, but we have not thoroughly tested. | |
| Recommended T5 finetuning settings (https://discuss.huggingface.co/t/t5-finetuning-tips/684/3): | |
| - Training without LR warmup or clip_threshold is not recommended. | |
| - use scheduled LR warm-up to fixed LR | |
| - use clip_threshold=1.0 (https://arxiv.org/abs/1804.04235) | |
| - Disable relative updates | |
| - Use scale_parameter=False | |
| - Additional optimizer operations like gradient clipping should not be used alongside Adafactor | |
| Example: | |
| ```python | |
| Adafactor(model.parameters(), scale_parameter=False, relative_step=False, warmup_init=False, lr=1e-3) | |
| ``` | |
| Others reported the following combination to work well: | |
| ```python | |
| Adafactor(model.parameters(), scale_parameter=True, relative_step=True, warmup_init=True, lr=None) | |
| ``` | |
| When using `lr=None` with [`Trainer`] you will most likely need to use [`~optimization.AdafactorSchedule`] | |
| scheduler as following: | |
| ```python | |
| from transformers.optimization import Adafactor, AdafactorSchedule | |
| optimizer = Adafactor(model.parameters(), scale_parameter=True, relative_step=True, warmup_init=True, lr=None) | |
| lr_scheduler = AdafactorSchedule(optimizer) | |
| trainer = Trainer(..., optimizers=(optimizer, lr_scheduler)) | |
| ``` | |
| Usage: | |
| ```python | |
| # replace AdamW with Adafactor | |
| optimizer = Adafactor( | |
| model.parameters(), | |
| lr=1e-3, | |
| eps=(1e-30, 1e-3), | |
| clip_threshold=1.0, | |
| decay_rate=-0.8, | |
| beta1=None, | |
| weight_decay=0.0, | |
| relative_step=False, | |
| scale_parameter=False, | |
| warmup_init=False, | |
| ) | |
| ```""" | |
| def __init__( | |
| self, | |
| params, | |
| lr=None, | |
| eps=(1e-30, 1e-3), | |
| clip_threshold=1.0, | |
| decay_rate=-0.8, | |
| beta1=None, | |
| weight_decay=0.0, | |
| scale_parameter=True, | |
| relative_step=True, | |
| warmup_init=False, | |
| ): | |
| r"""require_version("torch>=1.5.0") # add_ with alpha | |
| """ | |
| if lr is not None and relative_step: | |
| raise ValueError("Cannot combine manual `lr` and `relative_step=True` options") | |
| if warmup_init and not relative_step: | |
| raise ValueError("`warmup_init=True` requires `relative_step=True`") | |
| defaults = dict( | |
| lr=lr, | |
| eps=eps, | |
| clip_threshold=clip_threshold, | |
| decay_rate=decay_rate, | |
| beta1=beta1, | |
| weight_decay=weight_decay, | |
| scale_parameter=scale_parameter, | |
| relative_step=relative_step, | |
| warmup_init=warmup_init, | |
| ) | |
| super().__init__(params, defaults) | |
| def _get_lr(param_group, param_state): | |
| rel_step_sz = param_group["lr"] | |
| if param_group["relative_step"]: | |
| min_step = 1e-6 * param_state["step"] if param_group["warmup_init"] else 1e-2 | |
| rel_step_sz = min(min_step, 1.0 / math.sqrt(param_state["step"])) | |
| param_scale = 1.0 | |
| if param_group["scale_parameter"]: | |
| param_scale = max(param_group["eps"][1], param_state["RMS"]) | |
| return param_scale * rel_step_sz | |
| def _get_options(param_group, param_shape): | |
| factored = len(param_shape) >= 2 | |
| use_first_moment = param_group["beta1"] is not None | |
| return factored, use_first_moment | |
| def _rms(tensor): | |
| return tensor.norm(2) / (tensor.numel() ** 0.5) | |
| def _approx_sq_grad(exp_avg_sq_row, exp_avg_sq_col): | |
| # copy from fairseq's adafactor implementation: | |
| # https://github.com/huggingface/transformers/blob/8395f14de6068012787d83989c3627c3df6a252b/src/transformers/optimization.py#L505 | |
| r_factor = (exp_avg_sq_row / exp_avg_sq_row.mean(dim=-1, keepdim=True)).rsqrt_().unsqueeze(-1) | |
| c_factor = exp_avg_sq_col.unsqueeze(-2).rsqrt() | |
| return torch.mul(r_factor, c_factor) | |
| def step(self, closure=None): | |
| """ | |
| Performs a single optimization step | |
| Arguments: | |
| closure (callable, optional): A closure that reevaluates the model | |
| and returns the loss. | |
| """ | |
| loss = None | |
| if closure is not None: | |
| loss = closure() | |
| for group in self.param_groups: | |
| for p in group["params"]: | |
| if p.grad is None: | |
| continue | |
| grad = p.grad.data | |
| if grad.dtype in {torch.float16, torch.bfloat16}: | |
| grad = grad.float() | |
| if grad.is_sparse: | |
| raise RuntimeError("Adafactor does not support sparse gradients.") | |
| state = self.state[p] | |
| grad_shape = grad.shape | |
| factored, use_first_moment = self._get_options(group, grad_shape) | |
| # State Initialization | |
| if len(state) == 0: | |
| state["step"] = 0 | |
| if use_first_moment: | |
| # Exponential moving average of gradient values | |
| state["exp_avg"] = torch.zeros_like(grad) | |
| if factored: | |
| state["exp_avg_sq_row"] = torch.zeros(grad_shape[:-1]).to(grad) | |
| state["exp_avg_sq_col"] = torch.zeros(grad_shape[:-2] + grad_shape[-1:]).to(grad) | |
| else: | |
| state["exp_avg_sq"] = torch.zeros_like(grad) | |
| state["RMS"] = 0 | |
| else: | |
| if use_first_moment: | |
| state["exp_avg"] = state["exp_avg"].to(grad) | |
| if factored: | |
| state["exp_avg_sq_row"] = state["exp_avg_sq_row"].to(grad) | |
| state["exp_avg_sq_col"] = state["exp_avg_sq_col"].to(grad) | |
| else: | |
| state["exp_avg_sq"] = state["exp_avg_sq"].to(grad) | |
| p_data_fp32 = p.data | |
| if p.data.dtype in {torch.float16, torch.bfloat16}: | |
| p_data_fp32 = p_data_fp32.float() | |
| state["step"] += 1 | |
| state["RMS"] = self._rms(p_data_fp32) | |
| lr = self._get_lr(group, state) | |
| beta2t = 1.0 - math.pow(state["step"], group["decay_rate"]) | |
| update = (grad**2) + group["eps"][0] | |
| if factored: | |
| exp_avg_sq_row = state["exp_avg_sq_row"] | |
| exp_avg_sq_col = state["exp_avg_sq_col"] | |
| exp_avg_sq_row.mul_(beta2t).add_(update.mean(dim=-1), alpha=(1.0 - beta2t)) | |
| exp_avg_sq_col.mul_(beta2t).add_(update.mean(dim=-2), alpha=(1.0 - beta2t)) | |
| # Approximation of exponential moving average of square of gradient | |
| update = self._approx_sq_grad(exp_avg_sq_row, exp_avg_sq_col) | |
| update.mul_(grad) | |
| else: | |
| exp_avg_sq = state["exp_avg_sq"] | |
| exp_avg_sq.mul_(beta2t).add_(update, alpha=(1.0 - beta2t)) | |
| update = exp_avg_sq.rsqrt().mul_(grad) | |
| update.div_((self._rms(update) / group["clip_threshold"]).clamp_(min=1.0)) | |
| update.mul_(lr) | |
| if use_first_moment: | |
| exp_avg = state["exp_avg"] | |
| exp_avg.mul_(group["beta1"]).add_(update, alpha=(1 - group["beta1"])) | |
| update = exp_avg | |
| if group["weight_decay"] != 0: | |
| p_data_fp32.add_(p_data_fp32, alpha=(-group["weight_decay"] * lr)) | |
| p_data_fp32.add_(-update) | |
| if p.data.dtype in {torch.float16, torch.bfloat16}: | |
| p.data.copy_(p_data_fp32) | |
| return loss | |