2020-10-10 08:24:08 +08:00
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""" Adafactor Optimizer
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Lifted from https://github.com/pytorch/fairseq/blob/master/fairseq/optim/adafactor.py
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Original header/copyright below.
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"""
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# Copyright (c) Facebook, Inc. and its affiliates.
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#
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# This source code is licensed under the MIT license found in the
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# LICENSE file in the root directory of this source tree.
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import torch
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import math
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class Adafactor(torch.optim.Optimizer):
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"""Implements Adafactor algorithm.
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This implementation is based on: `Adafactor: Adaptive Learning Rates with Sublinear Memory Cost`
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(see https://arxiv.org/abs/1804.04235)
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Note that this optimizer internally adjusts the learning rate depending on the
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*scale_parameter*, *relative_step* and *warmup_init* options.
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To use a manual (external) learning rate schedule you should set `scale_parameter=False` and
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`relative_step=False`.
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Arguments:
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params (iterable): iterable of parameters to optimize or dicts defining parameter groups
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lr (float, optional): external learning rate (default: None)
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eps (tuple[float, float]): regularization constants for square gradient
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and parameter scale respectively (default: (1e-30, 1e-3))
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clip_threshold (float): threshold of root mean square of final gradient update (default: 1.0)
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decay_rate (float): coefficient used to compute running averages of square gradient (default: -0.8)
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beta1 (float): coefficient used for computing running averages of gradient (default: None)
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weight_decay (float, optional): weight decay (L2 penalty) (default: 0)
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scale_parameter (bool): if True, learning rate is scaled by root mean square of parameter (default: True)
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warmup_init (bool): time-dependent learning rate computation depends on
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whether warm-up initialization is being used (default: False)
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"""
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2024-11-09 00:35:25 +08:00
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def __init__(
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self,
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params,
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lr=None,
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eps=1e-30,
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eps_scale=1e-3,
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clip_threshold=1.0,
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decay_rate=-0.8,
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betas=None,
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weight_decay=0.0,
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scale_parameter=True,
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warmup_init=False,
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min_dim_size_to_factor=32,
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):
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relative_step = not lr
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if warmup_init and not relative_step:
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raise ValueError('warmup_init requires relative_step=True')
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beta1 = None if betas is None else betas[0] # make it compat with standard betas arg
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defaults = dict(
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lr=lr,
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eps=eps,
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eps_scale=eps_scale,
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clip_threshold=clip_threshold,
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decay_rate=decay_rate,
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beta1=beta1,
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weight_decay=weight_decay,
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scale_parameter=scale_parameter,
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relative_step=relative_step,
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warmup_init=warmup_init,
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min_dim_size_to_factor=min_dim_size_to_factor,
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)
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super(Adafactor, self).__init__(params, defaults)
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@staticmethod
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def _get_lr(param_group, param_state):
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if param_group['relative_step']:
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min_step = 1e-6 * param_state['step'] if param_group['warmup_init'] else 1e-2
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lr_t = min(min_step, 1.0 / math.sqrt(param_state['step']))
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param_scale = 1.0
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if param_group['scale_parameter']:
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param_scale = max(param_group['eps_scale'], param_state['RMS'])
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param_group['lr'] = lr_t * param_scale
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return param_group['lr']
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@staticmethod
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def _get_options(param_group, param_shape, min_size_to_factor=32):
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use_first_moment = param_group['beta1'] is not None
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factored = None
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ndim = len(param_shape)
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# Use a simple heuristic to pick factorization row & col, note other PyTorch impl tend to
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# always use -2, -1 BUT this will not pick correct dims for convolutions. This is a simple
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# approach that should work in most cases, compare to the slightly more involved approach
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# in AdafactorBigVision that sorts dims by size, please report if wrong dims chosen.
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if ndim > 2 and param_shape[0] > min_size_to_factor and param_shape[1] > min_size_to_factor:
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# nD convs in torch are ND + 2 dim weights with leading in/out chs
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factored = 0, 1
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elif ndim >= 2 and param_shape[-2] > min_size_to_factor and param_shape[-1] > min_size_to_factor:
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# if the criteria above didn't match, check trailing dims
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factored = ndim - 2, ndim - 1
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return factored, use_first_moment
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@staticmethod
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def _rms(tensor):
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return tensor.norm(2) / (tensor.numel() ** 0.5)
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def _approx_sq_grad(self, exp_avg_sq_row, exp_avg_sq_col, dim_col, dim_row):
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# from our dim heuristic, always dim_col < dim_row, so col reduction dim for factored row = dim_col
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r_factor = (exp_avg_sq_row / exp_avg_sq_row.mean(dim=dim_col, keepdim=True)).rsqrt_().unsqueeze(dim_row)
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c_factor = exp_avg_sq_col.unsqueeze(dim_col).rsqrt()
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return torch.mul(r_factor, c_factor)
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@torch.no_grad()
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def step(self, closure=None):
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"""Performs a single optimization step.
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Arguments:
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closure (callable, optional): A closure that reevaluates the model and returns the loss.
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"""
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loss = None
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if closure is not None:
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with torch.enable_grad():
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loss = closure()
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for group in self.param_groups:
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for p in group['params']:
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if p.grad is None:
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continue
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grad = p.grad
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if grad.dtype in {torch.float16, torch.bfloat16}:
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grad = grad.float()
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if grad.is_sparse:
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raise RuntimeError('Adafactor does not support sparse gradients.')
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state = self.state[p]
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factored_dims, use_first_moment = self._get_options(
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group,
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grad.shape,
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min_size_to_factor=group['min_dim_size_to_factor'],
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)
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# State Initialization
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if len(state) == 0:
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state['step'] = 0
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if use_first_moment:
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# Exponential moving average of gradient values
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state['exp_avg'] = torch.zeros_like(grad)
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if factored_dims is not None:
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dim_col, dim_row = factored_dims
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def _remove_dim(shape, dim):
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return shape[:dim] + shape[dim + 1:]
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state['exp_avg_sq_row'] = torch.zeros(_remove_dim(grad.shape, dim_row)).to(grad)
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state['exp_avg_sq_col'] = torch.zeros(_remove_dim(grad.shape, dim_col)).to(grad)
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else:
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state['exp_avg_sq'] = torch.zeros_like(grad)
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state['RMS'] = 0
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else:
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if use_first_moment:
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state['exp_avg'] = state['exp_avg'].to(grad)
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if factored_dims is not None:
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state['exp_avg_sq_row'] = state['exp_avg_sq_row'].to(grad)
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state['exp_avg_sq_col'] = state['exp_avg_sq_col'].to(grad)
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else:
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state['exp_avg_sq'] = state['exp_avg_sq'].to(grad)
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p_fp32 = p
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if p.dtype in {torch.float16, torch.bfloat16}:
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p_fp32 = p_fp32.float()
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state['step'] += 1
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state['RMS'] = self._rms(p_fp32)
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lr_t = self._get_lr(group, state)
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beta2t = 1.0 - math.pow(state['step'], group['decay_rate'])
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update = grad ** 2 + group['eps']
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if factored_dims is not None:
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dim_col, dim_row = factored_dims
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exp_avg_sq_row = state['exp_avg_sq_row']
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exp_avg_sq_col = state['exp_avg_sq_col']
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exp_avg_sq_row.mul_(beta2t).add_(update.mean(dim=dim_row), alpha=1.0 - beta2t)
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exp_avg_sq_col.mul_(beta2t).add_(update.mean(dim=dim_col), alpha=1.0 - beta2t)
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# Approximation of exponential moving average of square of gradient
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update = self._approx_sq_grad(exp_avg_sq_row, exp_avg_sq_col, dim_col, dim_row)
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update.mul_(grad)
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else:
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exp_avg_sq = state['exp_avg_sq']
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exp_avg_sq.mul_(beta2t).add_(update, alpha=1.0 - beta2t)
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update = exp_avg_sq.rsqrt().mul_(grad)
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update.div_((self._rms(update) / group['clip_threshold']).clamp_(min=1.0))
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update.mul_(lr_t)
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if use_first_moment:
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exp_avg = state['exp_avg']
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exp_avg.mul_(group['beta1']).add_(update, alpha=1 - group['beta1'])
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update = exp_avg
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if group['weight_decay'] != 0:
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p_fp32.add_(p_fp32, alpha=-group['weight_decay'] * lr_t)
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p_fp32.add_(-update)
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if p.dtype in {torch.float16, torch.bfloat16}:
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p.copy_(p_fp32)
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return loss
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