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# Copyright (c) 2022 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import sys
import math
import paddle
import paddle.nn as nn
import paddle.optimizer as optimizer
import paddle.regularizer as regularizer
from paddlers_slim.models.ppdet.core.workspace import register, serializable
import copy
from .adamw import AdamWDL, build_adamwdl
__all__ = ['LearningRate', 'OptimizerBuilder']
from paddlers_slim.models.ppdet.utils.logger import setup_logger
logger = setup_logger(__name__)
@serializable
class CosineDecay(object):
"""
Cosine learning rate decay
Args:
max_epochs (int): max epochs for the training process.
if you commbine cosine decay with warmup, it is recommended that
the max_iters is much larger than the warmup iter
use_warmup (bool): whether to use warmup. Default: True.
min_lr_ratio (float): minimum learning rate ratio. Default: 0.
last_plateau_epochs (int): use minimum learning rate in
the last few epochs. Default: 0.
"""
def __init__(self,
max_epochs=1000,
use_warmup=True,
min_lr_ratio=0.,
last_plateau_epochs=0):
self.max_epochs = max_epochs
self.use_warmup = use_warmup
self.min_lr_ratio = min_lr_ratio
self.last_plateau_epochs = last_plateau_epochs
def __call__(self,
base_lr=None,
boundary=None,
value=None,
step_per_epoch=None):
assert base_lr is not None, "either base LR or values should be provided"
max_iters = self.max_epochs * int(step_per_epoch)
last_plateau_iters = self.last_plateau_epochs * int(step_per_epoch)
min_lr = base_lr * self.min_lr_ratio
if boundary is not None and value is not None and self.use_warmup:
# use warmup
warmup_iters = len(boundary)
for i in range(int(boundary[-1]), max_iters):
boundary.append(i)
if i < max_iters - last_plateau_iters:
decayed_lr = min_lr + (base_lr - min_lr) * 0.5 * (math.cos(
(i - warmup_iters) * math.pi /
(max_iters - warmup_iters - last_plateau_iters)) + 1)
value.append(decayed_lr)
else:
value.append(min_lr)
return optimizer.lr.PiecewiseDecay(boundary, value)
elif last_plateau_iters > 0:
# not use warmup, but set `last_plateau_epochs` > 0
boundary = []
value = []
for i in range(max_iters):
if i < max_iters - last_plateau_iters:
decayed_lr = min_lr + (base_lr - min_lr) * 0.5 * (math.cos(
i * math.pi / (max_iters - last_plateau_iters)) + 1)
value.append(decayed_lr)
else:
value.append(min_lr)
if i > 0:
boundary.append(i)
return optimizer.lr.PiecewiseDecay(boundary, value)
return optimizer.lr.CosineAnnealingDecay(
base_lr, T_max=max_iters, eta_min=min_lr)
@serializable
class PiecewiseDecay(object):
"""
Multi step learning rate decay
Args:
gamma (float | list): decay factor
milestones (list): steps at which to decay learning rate
"""
def __init__(self,
gamma=[0.1, 0.01],
milestones=[8, 11],
values=None,
use_warmup=True):
super(PiecewiseDecay, self).__init__()
if type(gamma) is not list:
self.gamma = []
for i in range(len(milestones)):
self.gamma.append(gamma / 10**i)
else:
self.gamma = gamma
self.milestones = milestones
self.values = values
self.use_warmup = use_warmup
def __call__(self,
base_lr=None,
boundary=None,
value=None,
step_per_epoch=None):
if boundary is not None and self.use_warmup:
boundary.extend([int(step_per_epoch) * i for i in self.milestones])
else:
# do not use LinearWarmup
boundary = [int(step_per_epoch) * i for i in self.milestones]
value = [base_lr] # during step[0, boundary[0]] is base_lr
# self.values is setted directly in config
if self.values is not None:
assert len(self.milestones) + 1 == len(self.values)
return optimizer.lr.PiecewiseDecay(boundary, self.values)
# value is computed by self.gamma
value = value if value is not None else [base_lr]
for i in self.gamma:
value.append(base_lr * i)
return optimizer.lr.PiecewiseDecay(boundary, value)
@serializable
class LinearWarmup(object):
"""
Warm up learning rate linearly
Args:
steps (int): warm up steps
start_factor (float): initial learning rate factor
epochs (int|None): use epochs as warm up steps, the priority
of `epochs` is higher than `steps`. Default: None.
"""
def __init__(self, steps=500, start_factor=1. / 3, epochs=None):
super(LinearWarmup, self).__init__()
self.steps = steps
self.start_factor = start_factor
self.epochs = epochs
def __call__(self, base_lr, step_per_epoch):
boundary = []
value = []
warmup_steps = self.epochs * step_per_epoch \
if self.epochs is not None else self.steps
warmup_steps = max(warmup_steps, 1)
for i in range(warmup_steps + 1):
if warmup_steps > 0:
alpha = i / warmup_steps
factor = self.start_factor * (1 - alpha) + alpha
lr = base_lr * factor
value.append(lr)
if i > 0:
boundary.append(i)
return boundary, value
@serializable
class ExpWarmup(object):
"""
Warm up learning rate in exponential mode
Args:
steps (int): warm up steps.
epochs (int|None): use epochs as warm up steps, the priority
of `epochs` is higher than `steps`. Default: None.
power (int): Exponential coefficient. Default: 2.
"""
def __init__(self, steps=1000, epochs=None, power=2):
super(ExpWarmup, self).__init__()
self.steps = steps
self.epochs = epochs
self.power = power
def __call__(self, base_lr, step_per_epoch):
boundary = []
value = []
warmup_steps = self.epochs * step_per_epoch if self.epochs is not None else self.steps
warmup_steps = max(warmup_steps, 1)
for i in range(warmup_steps + 1):
factor = (i / float(warmup_steps))**self.power
value.append(base_lr * factor)
if i > 0:
boundary.append(i)
return boundary, value
@register
class LearningRate(object):
"""
Learning Rate configuration
Args:
base_lr (float): base learning rate
schedulers (list): learning rate schedulers
"""
__category__ = 'optim'
def __init__(self,
base_lr=0.01,
schedulers=[PiecewiseDecay(), LinearWarmup()]):
super(LearningRate, self).__init__()
self.base_lr = base_lr
self.schedulers = []
schedulers = copy.deepcopy(schedulers)
for sched in schedulers:
if isinstance(sched, dict):
# support dict sched instantiate
module = sys.modules[__name__]
type = sched.pop("name")
scheduler = getattr(module, type)(**sched)
self.schedulers.append(scheduler)
else:
self.schedulers.append(sched)
def __call__(self, step_per_epoch):
assert len(self.schedulers) >= 1
if not self.schedulers[0].use_warmup:
return self.schedulers[0](base_lr=self.base_lr,
step_per_epoch=step_per_epoch)
# TODO: split warmup & decay
# warmup
boundary, value = self.schedulers[1](self.base_lr, step_per_epoch)
# decay
decay_lr = self.schedulers[0](self.base_lr, boundary, value,
step_per_epoch)
return decay_lr
@register
class OptimizerBuilder():
"""
Build optimizer handles
Args:
regularizer (object): an `Regularizer` instance
optimizer (object): an `Optimizer` instance
"""
__category__ = 'optim'
def __init__(self,
clip_grad_by_norm=None,
regularizer={'type': 'L2',
'factor': .0001},
optimizer={'type': 'Momentum',
'momentum': .9}):
self.clip_grad_by_norm = clip_grad_by_norm
self.regularizer = regularizer
self.optimizer = optimizer
def __call__(self, learning_rate, model=None):
if self.clip_grad_by_norm is not None:
grad_clip = nn.ClipGradByGlobalNorm(
clip_norm=self.clip_grad_by_norm)
else:
grad_clip = None
if self.regularizer and self.regularizer != 'None':
reg_type = self.regularizer['type'] + 'Decay'
reg_factor = self.regularizer['factor']
regularization = getattr(regularizer, reg_type)(reg_factor)
else:
regularization = None
optim_args = self.optimizer.copy()
optim_type = optim_args['type']
del optim_args['type']
if optim_type == 'AdamWDL':
return build_adamwdl(model, lr=learning_rate, **optim_args)
if optim_type != 'AdamW':
optim_args['weight_decay'] = regularization
op = getattr(optimizer, optim_type)
if 'param_groups' in optim_args:
assert isinstance(optim_args['param_groups'], list), ''
param_groups = optim_args.pop('param_groups')
params, visited = [], []
for group in param_groups:
assert isinstance(group,
dict) and 'params' in group and isinstance(
group['params'], list), ''
_params = {
n: p
for n, p in model.named_parameters()
if any([k in n
for k in group['params']]) and p.trainable is True
}
_group = group.copy()
_group.update({'params': list(_params.values())})
params.append(_group)
visited.extend(list(_params.keys()))
ext_params = [
p for n, p in model.named_parameters()
if n not in visited and p.trainable is True
]
if len(ext_params) < len(model.parameters()):
params.append({'params': ext_params})
elif len(ext_params) > len(model.parameters()):
raise RuntimeError
else:
_params = model.parameters()
params = [param for param in _params if param.trainable is True]
return op(learning_rate=learning_rate,
parameters=params,
grad_clip=grad_clip,
**optim_args)