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- import math
- import torch
- from torch.optim.optimizer import Optimizer
- class AdaBelief(Optimizer):
- r"""Implements AdaBelief algorithm. Modified from Adam in PyTorch
- Arguments:
- params (iterable): iterable of parameters to optimize or dicts defining
- parameter groups
- lr (float, optional): learning rate (default: 1e-3)
- betas (Tuple[float, float], optional): coefficients used for computing
- running averages of gradient and its square (default: (0.9, 0.999))
- eps (float, optional): term added to the denominator to improve
- numerical stability (default: 1e-16)
- weight_decay (float, optional): weight decay (L2 penalty) (default: 0)
- amsgrad (boolean, optional): whether to use the AMSGrad variant of this
- algorithm from the paper `On the Convergence of Adam and Beyond`_
- (default: False)
- decoupled_decay (boolean, optional): (default: True) If set as True, then
- the optimizer uses decoupled weight decay as in AdamW
- fixed_decay (boolean, optional): (default: False) This is used when weight_decouple
- is set as True.
- When fixed_decay == True, the weight decay is performed as
- $W_{new} = W_{old} - W_{old} \times decay$.
- When fixed_decay == False, the weight decay is performed as
- $W_{new} = W_{old} - W_{old} \times decay \times lr$. Note that in this case, the
- weight decay ratio decreases with learning rate (lr).
- rectify (boolean, optional): (default: True) If set as True, then perform the rectified
- update similar to RAdam
- degenerated_to_sgd (boolean, optional) (default:True) If set as True, then perform SGD update
- when variance of gradient is high
- reference: AdaBelief Optimizer, adapting stepsizes by the belief in observed gradients, NeurIPS 2020
- For a complete table of recommended hyperparameters, see https://github.com/juntang-zhuang/Adabelief-Optimizer'
- For example train/args for EfficientNet see these gists
- - link to train_script: https://gist.github.com/juntang-zhuang/0a501dd51c02278d952cf159bc233037
- - link to args.yaml: https://gist.github.com/juntang-zhuang/517ce3c27022b908bb93f78e4f786dc3
- """
- def __init__(
- self,
- params,
- lr=1e-3,
- betas=(0.9, 0.999),
- eps=1e-16,
- weight_decay=0,
- amsgrad=False,
- decoupled_decay=True,
- fixed_decay=False,
- rectify=True,
- degenerated_to_sgd=True,
- ):
- if not 0.0 <= lr:
- raise ValueError("Invalid learning rate: {}".format(lr))
- if not 0.0 <= eps:
- raise ValueError("Invalid epsilon value: {}".format(eps))
- if not 0.0 <= betas[0] < 1.0:
- raise ValueError("Invalid beta parameter at index 0: {}".format(betas[0]))
- if not 0.0 <= betas[1] < 1.0:
- raise ValueError("Invalid beta parameter at index 1: {}".format(betas[1]))
- if isinstance(params, (list, tuple)) and len(params) > 0 and isinstance(params[0], dict):
- for param in params:
- if 'betas' in param and (param['betas'][0] != betas[0] or param['betas'][1] != betas[1]):
- param['buffer'] = [[None, None, None] for _ in range(10)]
- defaults = dict(
- lr=lr,
- betas=betas,
- eps=eps,
- weight_decay=weight_decay,
- amsgrad=amsgrad,
- degenerated_to_sgd=degenerated_to_sgd,
- decoupled_decay=decoupled_decay,
- rectify=rectify,
- fixed_decay=fixed_decay,
- buffer=[[None, None, None] for _ in range(10)]
- )
- super(AdaBelief, self).__init__(params, defaults)
- def __setstate__(self, state):
- super(AdaBelief, self).__setstate__(state)
- for group in self.param_groups:
- group.setdefault('amsgrad', False)
- @torch.no_grad()
- def reset(self):
- for group in self.param_groups:
- for p in group['params']:
- state = self.state[p]
- amsgrad = group['amsgrad']
- # State initialization
- state['step'] = 0
- # Exponential moving average of gradient values
- state['exp_avg'] = torch.zeros_like(p)
- # Exponential moving average of squared gradient values
- state['exp_avg_var'] = torch.zeros_like(p)
- if amsgrad:
- # Maintains max of all exp. moving avg. of sq. grad. values
- state['max_exp_avg_var'] = torch.zeros_like(p)
- @torch.no_grad()
- 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:
- with torch.enable_grad():
- loss = closure()
- for group in self.param_groups:
- for p in group['params']:
- if p.grad is None:
- continue
- grad = p.grad
- if grad.dtype in {torch.float16, torch.bfloat16}:
- grad = grad.float()
- if grad.is_sparse:
- raise RuntimeError(
- 'AdaBelief does not support sparse gradients, please consider SparseAdam instead')
- p_fp32 = p
- if p.dtype in {torch.float16, torch.bfloat16}:
- p_fp32 = p_fp32.float()
- amsgrad = group['amsgrad']
- beta1, beta2 = group['betas']
- state = self.state[p]
- # State initialization
- if len(state) == 0:
- state['step'] = 0
- # Exponential moving average of gradient values
- state['exp_avg'] = torch.zeros_like(p_fp32)
- # Exponential moving average of squared gradient values
- state['exp_avg_var'] = torch.zeros_like(p_fp32)
- if amsgrad:
- # Maintains max of all exp. moving avg. of sq. grad. values
- state['max_exp_avg_var'] = torch.zeros_like(p_fp32)
-
- # perform weight decay, check if decoupled weight decay
- if group['decoupled_decay']:
- if not group['fixed_decay']:
- p_fp32.mul_(1.0 - group['lr'] * group['weight_decay'])
- else:
- p_fp32.mul_(1.0 - group['weight_decay'])
- else:
- if group['weight_decay'] != 0:
- grad.add_(p_fp32, alpha=group['weight_decay'])
- # get current state variable
- exp_avg, exp_avg_var = state['exp_avg'], state['exp_avg_var']
- state['step'] += 1
- bias_correction1 = 1 - beta1 ** state['step']
- bias_correction2 = 1 - beta2 ** state['step']
- # Update first and second moment running average
- exp_avg.mul_(beta1).add_(grad, alpha=1 - beta1)
- grad_residual = grad - exp_avg
- exp_avg_var.mul_(beta2).addcmul_(grad_residual, grad_residual, value=1 - beta2)
- if amsgrad:
- max_exp_avg_var = state['max_exp_avg_var']
- # Maintains the maximum of all 2nd moment running avg. till now
- torch.max(max_exp_avg_var, exp_avg_var.add_(group['eps']), out=max_exp_avg_var)
- # Use the max. for normalizing running avg. of gradient
- denom = (max_exp_avg_var.sqrt() / math.sqrt(bias_correction2)).add_(group['eps'])
- else:
- denom = (exp_avg_var.add_(group['eps']).sqrt() / math.sqrt(bias_correction2)).add_(group['eps'])
-
- # update
- if not group['rectify']:
- # Default update
- step_size = group['lr'] / bias_correction1
- p_fp32.addcdiv_(exp_avg, denom, value=-step_size)
- else:
- # Rectified update, forked from RAdam
- buffered = group['buffer'][int(state['step'] % 10)]
- if state['step'] == buffered[0]:
- num_sma, step_size = buffered[1], buffered[2]
- else:
- buffered[0] = state['step']
- beta2_t = beta2 ** state['step']
- num_sma_max = 2 / (1 - beta2) - 1
- num_sma = num_sma_max - 2 * state['step'] * beta2_t / (1 - beta2_t)
- buffered[1] = num_sma
- # more conservative since it's an approximated value
- if num_sma >= 5:
- step_size = math.sqrt(
- (1 - beta2_t) *
- (num_sma - 4) / (num_sma_max - 4) *
- (num_sma - 2) / num_sma *
- num_sma_max / (num_sma_max - 2)) / (1 - beta1 ** state['step'])
- elif group['degenerated_to_sgd']:
- step_size = 1.0 / (1 - beta1 ** state['step'])
- else:
- step_size = -1
- buffered[2] = step_size
- if num_sma >= 5:
- denom = exp_avg_var.sqrt().add_(group['eps'])
- p_fp32.addcdiv_(exp_avg, denom, value=-step_size * group['lr'])
- elif step_size > 0:
- p_fp32.add_(exp_avg, alpha=-step_size * group['lr'])
-
- if p.dtype in {torch.float16, torch.bfloat16}:
- p.copy_(p_fp32)
- return loss
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