mindspore.experimental.optim.lr_scheduler.CyclicLR
- class mindspore.experimental.optim.lr_scheduler.CyclicLR(optimizer, base_lr, max_lr, step_size_up=2000, step_size_down=None, mode='triangular', gamma=1.0, scale_fn=None, scale_mode='cycle', last_epoch=- 1)[source]
Sets the learning rate of each parameter group according to cyclical learning rate policy (CLR). The policy cycles the learning rate between two boundaries with a constant frequency, as detailed in the paper Cyclical Learning Rates for Training Neural Networks. The distance between the two boundaries can be scaled on a per-iteration or per-cycle basis.
This class has three built-in policies, as put forth in the paper:
“triangular”: A basic triangular cycle without amplitude scaling.
“triangular2”: A basic triangular cycle that scales initial amplitude by half each cycle.
“exp_range”: A cycle that scales initial amplitude by \(\text{gamma}^{\text{cycle iterations}}\) at each cycle iteration.
Warning
This is an experimental lr scheduler module that is subject to change. This module must be used with optimizers in Experimental Optimizer .
- Parameters
optimizer (
mindspore.experimental.optim.Optimizer
) – Wrapped optimizer.base_lr (Union(float, list)) – Initial learning rate which is the lower boundary in the cycle for each parameter group.
max_lr (Union(float, list)) – Upper learning rate boundaries in the cycle for each parameter group. Functionally, it defines the cycle amplitude (max_lr - base_lr). The lr at any cycle is the sum of base_lr and some scaling of the amplitude.
step_size_up (int, optional) – Number of training iterations in the increasing half of a cycle. Default:
2000
.step_size_down (int, optional) – Number of training iterations in the decreasing half of a cycle. If step_size_down is None, it is set to step_size_up. Default:
None
.mode (str, optional) – One of {triangular, triangular2, exp_range}. Values correspond to policies detailed above. If scale_fn is not None, this argument is ignored. Default:
'triangular'
.gamma (float, optional) – Constant in ‘exp_range’ scaling function: gamma**(cycle iterations). Default:
1.0
.scale_fn (function, optional) – Custom scaling policy defined by a single argument lambda function, where 0 <= scale_fn(x) <= 1 for all x >= 0. If specified, then ‘mode’ is ignored. Default:
None
.scale_mode (str, optional) – {‘cycle’, ‘iterations’}. Defines whether scale_fn is evaluated on cycle number or cycle iterations (training iterations since start of cycle). Illegal inputs will use
'iterations'
by defaults. Default:'cycle'
.last_epoch (int, optional) – The index of the last epoch. Default:
-1
.
- Raises
ValueError – When base_lr is list or tuple, the length of it is not equal to the number of param groups.
ValueError – When max_lr is list or tuple, the length of it is not equal to the number of param groups.
ValueError – mode is not in [
'triangular'
,'triangular2'
,'exp_range'
] and scale_fn is None.
- Supported Platforms:
Ascend
GPU
CPU
Examples
>>> from mindspore.experimental import optim >>> from mindspore import nn >>> net = nn.Dense(3, 2) >>> optimizer = optim.SGD(net.trainable_params(), lr=0.1, momentum=0.9) >>> scheduler = optim.lr_scheduler.CyclicLR(optimizer, base_lr=0.01, max_lr=0.1) >>> expect_list = [[0.010045], [0.01009], [0.010135], [0.01018], [0.010225]] >>> >>> for i in range(5): ... scheduler.step() ... current_lr = scheduler.get_last_lr() ... print(current_lr) [Tensor(shape=[], dtype=Float32, value= 0.010045)] [Tensor(shape=[], dtype=Float32, value= 0.01009)] [Tensor(shape=[], dtype=Float32, value= 0.010135)] [Tensor(shape=[], dtype=Float32, value= 0.01018)] [Tensor(shape=[], dtype=Float32, value= 0.010225)]