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optimizers.py
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68 lines (56 loc) · 2.28 KB
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#coding:utf-8
import torch
from functools import reduce
from torch.optim import AdamW
class MultiOptimizer:
def __init__(self, optimizers={}, schedulers={}):
self.optimizers = optimizers
self.schedulers = schedulers
self.keys = list(optimizers.keys())
self.param_groups = reduce(lambda x,y: x+y, [v.param_groups for v in self.optimizers.values()])
def state_dict(self):
state_dicts = [(key, self.optimizers[key].state_dict())\
for key in self.keys]
return state_dicts
def load_state_dict(self, state_dict):
for key, val in state_dict:
try:
self.optimizers[key].load_state_dict(val)
except:
print("Unloaded %s" % key)
def step(self, key=None, scaler=None):
keys = [key] if key is not None else self.keys
_ = [self._step(key, scaler) for key in keys]
def _step(self, key, scaler=None):
if scaler is not None:
scaler.step(self.optimizers[key])
scaler.update()
else:
self.optimizers[key].step()
def zero_grad(self, key=None):
if key is not None:
self.optimizers[key].zero_grad()
else:
_ = [self.optimizers[key].zero_grad() for key in self.keys]
def scheduler(self, *args, key=None):
if key is not None:
self.schedulers[key].step(*args)
else:
_ = [self.schedulers[key].step(*args) for key in self.keys]
def define_scheduler(optimizer, params):
scheduler = torch.optim.lr_scheduler.OneCycleLR(
optimizer,
max_lr=params.get('max_lr', 2e-4),
epochs=params.get('epochs', 200),
steps_per_epoch=params.get('steps_per_epoch', 1000),
pct_start=params.get('pct_start', 0.0),
div_factor=1,
final_div_factor=1)
return scheduler
def build_optimizer(parameters_dict, scheduler_params_dict, lr):
optim = dict([(key, AdamW(params, lr=lr, weight_decay=1e-4, betas=(0.0, 0.99), eps=1e-9))
for key, params in parameters_dict.items()])
schedulers = dict([(key, define_scheduler(opt, scheduler_params_dict[key])) \
for key, opt in optim.items()])
multi_optim = MultiOptimizer(optim, schedulers)
return multi_optim