| |
| from mmengine.registry import PARAM_SCHEDULERS |
| |
| from .param_scheduler import (ConstantParamScheduler, |
| CosineAnnealingParamScheduler, |
| CosineRestartParamScheduler, |
| ExponentialParamScheduler, LinearParamScheduler, |
| MultiStepParamScheduler, OneCycleParamScheduler, |
| PolyParamScheduler, |
| ReduceOnPlateauParamScheduler, |
| StepParamScheduler) |
|
|
| |
|
|
|
|
| class LRSchedulerMixin: |
| """A mixin class for learning rate schedulers.""" |
|
|
| def __init__(self, optimizer, *args, **kwargs): |
| super().__init__(optimizer, 'lr', *args, **kwargs) |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class ConstantLR(LRSchedulerMixin, ConstantParamScheduler): |
| """Decays the learning rate value of each parameter group by a small |
| constant factor until the number of epoch reaches a pre-defined milestone: |
| ``end``. Notice that such decay can happen simultaneously with other |
| changes to the learning rate value from outside this scheduler. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): Wrapped optimizer. |
| factor (float): The number we multiply learning rate until the |
| milestone. Defaults to 1./3. |
| begin (int): Step at which to start updating the learning rate. |
| Defaults to 0. |
| end (int): Step at which to stop updating the learning rate. |
| Defaults to INF. |
| last_step (int): The index of last step. Used for resume without state |
| dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled learning rate is updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the learning rate for each update. |
| Defaults to False. |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class CosineAnnealingLR(LRSchedulerMixin, CosineAnnealingParamScheduler): |
| r"""Set the learning rate of each parameter group using a cosine annealing |
| schedule, where :math:`\eta_{max}` is set to the initial value and |
| :math:`T_{cur}` is the number of epochs since the last restart in SGDR: |
| |
| .. math:: |
| \begin{aligned} |
| \eta_t & = \eta_{min} + \frac{1}{2}(\eta_{max} - \eta_{min})\left(1 |
| + \cos\left(\frac{T_{cur}}{T_{max}}\pi\right)\right), |
| & T_{cur} \neq (2k+1)T_{max}; \\ |
| \eta_{t+1} & = \eta_{t} + \frac{1}{2}(\eta_{max} - \eta_{min}) |
| \left(1 - \cos\left(\frac{1}{T_{max}}\pi\right)\right), |
| & T_{cur} = (2k+1)T_{max}. |
| \end{aligned} |
| |
| Notice that because the schedule |
| is defined recursively, the learning rate can be simultaneously modified |
| outside this scheduler by other operators. If the learning rate is set |
| solely by this scheduler, the learning rate at each step becomes: |
| |
| .. math:: |
| \eta_t = \eta_{min} + \frac{1}{2}(\eta_{max} - \eta_{min})\left(1 + |
| \cos\left(\frac{T_{cur}}{T_{max}}\pi\right)\right) |
| |
| It has been proposed in |
| `SGDR: Stochastic Gradient Descent with Warm Restarts`_. Note that this |
| only implements the cosine annealing part of SGDR, and not the restarts. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): Wrapped optimizer. |
| T_max (int): Maximum number of iterations. |
| eta_min (float): Minimum learning rate. Defaults to None. |
| begin (int): Step at which to start updating the learning rate. |
| Defaults to 0. |
| end (int): Step at which to stop updating the learning rate. |
| Defaults to INF. |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled learning rate is updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the learning rate for each update. |
| Defaults to False. |
| eta_min_ratio (float, optional): The ratio of the minimum parameter |
| value to the base parameter value. Either `eta_min` or |
| `eta_min_ratio` should be specified. Defaults to None. |
| New in version 0.3.2. |
| |
| .. _SGDR\: Stochastic Gradient Descent with Warm Restarts: |
| https://arxiv.org/abs/1608.03983 |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class ExponentialLR(LRSchedulerMixin, ExponentialParamScheduler): |
| """Decays the learning rate of each parameter group by gamma every epoch. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): Wrapped optimizer. |
| gamma (float): Multiplicative factor of learning rate decay. |
| begin (int): Step at which to start updating the learning rate. |
| Defaults to 0. |
| end (int): Step at which to stop updating the learning rate. |
| Defaults to INF. |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled learning rate is updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the learning rate for each update. |
| Defaults to False. |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class LinearLR(LRSchedulerMixin, LinearParamScheduler): |
| """Decays the learning rate of each parameter group by linearly changing |
| small multiplicative factor until the number of epoch reaches a pre-defined |
| milestone: ``end``. |
| |
| Notice that such decay can happen simultaneously with other changes to the |
| learning rate from outside this scheduler. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): Wrapped optimizer. |
| start_factor (float): The number we multiply learning rate in the |
| first epoch. The multiplication factor changes towards end_factor |
| in the following epochs. Defaults to 1./3. |
| end_factor (float): The number we multiply learning rate at the end |
| of linear changing process. Defaults to 1.0. |
| begin (int): Step at which to start updating the learning rate. |
| Defaults to 0. |
| end (int): Step at which to stop updating the learning rate. |
| Defaults to INF. |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled learning rate is updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the learning rate for each update. |
| Defaults to False. |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class MultiStepLR(LRSchedulerMixin, MultiStepParamScheduler): |
| """Decays the specified learning rate in each parameter group by gamma once |
| the number of epoch reaches one of the milestones. Notice that such decay |
| can happen simultaneously with other changes to the learning rate from |
| outside this scheduler. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): Wrapped optimizer. |
| milestones (list): List of epoch indices. Must be increasing. |
| gamma (float): Multiplicative factor of learning rate decay. |
| Defaults to 0.1. |
| begin (int): Step at which to start updating the learning rate. |
| Defaults to 0. |
| end (int): Step at which to stop updating the learning rate. |
| Defaults to INF. |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled learning rate is updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the learning rate for each update. |
| Defaults to False. |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class StepLR(LRSchedulerMixin, StepParamScheduler): |
| """Decays the learning rate of each parameter group by gamma every |
| step_size epochs. Notice that such decay can happen simultaneously with |
| other changes to the learning rate from outside this scheduler. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): Wrapped optimizer. |
| step_size (int): Period of learning rate decay. |
| gamma (float): Multiplicative factor of learning rate decay. |
| Defaults to 0.1. |
| begin (int): Step at which to start updating the learning rate. |
| Defaults to 0. |
| end (int): Step at which to stop updating the learning rate. |
| Defaults to INF. |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled learning rate is updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the learning rate for each update. |
| Defaults to False. |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class PolyLR(LRSchedulerMixin, PolyParamScheduler): |
| """Decays the learning rate of each parameter group in a polynomial decay |
| scheme. |
| |
| Notice that such decay can happen simultaneously with other changes to the |
| parameter value from outside this scheduler. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): Wrapped optimizer. |
| eta_min (float): Minimum learning rate at the end of scheduling. |
| Defaults to 0. |
| power (float): The power of the polynomial. Defaults to 1.0. |
| begin (int): Step at which to start updating the parameters. |
| Defaults to 0. |
| end (int): Step at which to stop updating the parameters. |
| Defaults to INF. |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled parameters are updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the value for each update. |
| Defaults to False. |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class OneCycleLR(LRSchedulerMixin, OneCycleParamScheduler): |
| r"""Sets the learning rate of each parameter group according to the |
| 1cycle learning rate policy. The 1cycle policy anneals the learning |
| rate from an initial learning rate to some maximum learning rate and then |
| from that maximum learning rate to some minimum learning rate much lower |
| than the initial learning rate. |
| This policy was initially described in the paper `Super-Convergence: |
| Very Fast Training of Neural Networks Using Large Learning Rates`_. |
| |
| The 1cycle learning rate policy changes the learning rate after every |
| batch. `step` should be called after a batch has been used for training. |
| |
| This scheduler is not chainable. |
| |
| Note also that the total number of steps in the cycle can be determined in |
| one of two ways (listed in order of precedence): |
| |
| #. A value for total_steps is explicitly provided. |
| #. A number of epochs (epochs) and a number of steps per epoch |
| (steps_per_epoch) are provided. |
| In this case, the number of total steps is inferred by |
| total_steps = epochs * steps_per_epoch |
| |
| You must either provide a value for total_steps or provide a value for both |
| epochs and steps_per_epoch. |
| |
| The default behaviour of this scheduler follows the fastai implementation |
| of 1cycle, which claims that "unpublished work has shown even better |
| results by using only two phases". To mimic the behaviour of the original |
| paper instead, set ``three_phase=True``. |
| |
| Args: |
| optimizer (Optimizer): Wrapped optimizer. |
| eta_max (float or list): Upper parameter value boundaries in the cycle |
| for each parameter group. |
| total_steps (int): The total number of steps in the cycle. Note that |
| if a value is not provided here, then it must be inferred by |
| providing a value for epochs and steps_per_epoch. |
| Defaults to None. |
| pct_start (float): The percentage of the cycle (in number of steps) |
| spent increasing the learning rate. |
| Defaults to 0.3 |
| anneal_strategy (str): {'cos', 'linear'} |
| Specifies the annealing strategy: "cos" for cosine annealing, |
| "linear" for linear annealing. |
| Defaults to 'cos' |
| div_factor (float): Determines the initial learning rate via |
| initial_param = eta_max/div_factor |
| Defaults to 25 |
| final_div_factor (float): Determines the minimum learning rate via |
| eta_min = initial_param/final_div_factor |
| Defaults to 1e4 |
| three_phase (bool): If ``True``, use a third phase of the schedule to |
| annihilate the learning rate according to 'final_div_factor' |
| instead of modifying the second phase (the first two phases will be |
| symmetrical about the step indicated by 'pct_start'). |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled parameters are updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the value for each update. |
| Defaults to False. |
| |
| .. _Super-Convergence\: Very Fast Training of Neural Networks Using Large Learning Rates: |
| https://arxiv.org/abs/1708.07120 |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class CosineRestartLR(LRSchedulerMixin, CosineRestartParamScheduler): |
| """Sets the learning rate of each parameter group according to the cosine |
| annealing with restarts scheme. The cosine restart policy anneals the |
| learning rate from the initial value to `eta_min` with a cosine annealing |
| schedule and then restarts another period from the maximum value multiplied |
| with `restart_weight`. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): optimizer or Wrapped |
| optimizer. |
| periods (list[int]): Periods for each cosine anneling cycle. |
| restart_weights (list[float]): Restart weights at each |
| restart iteration. Defaults to [1]. |
| eta_min (float): Minimum parameter value at the end of scheduling. |
| Defaults to None. |
| eta_min_ratio (float, optional): The ratio of minimum parameter value |
| to the base parameter value. Either `min_lr` or `min_lr_ratio` |
| should be specified. Defaults to None. |
| begin (int): Step at which to start updating the parameters. |
| Defaults to 0. |
| end (int): Step at which to stop updating the parameters. |
| Defaults to INF. |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled parameters are updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the value for each update. |
| Defaults to False. |
| """ |
|
|
|
|
| @PARAM_SCHEDULERS.register_module() |
| class ReduceOnPlateauLR(LRSchedulerMixin, ReduceOnPlateauParamScheduler): |
| """Reduce the learning rate of each parameter group when a metric has |
| stopped improving. Models often benefit from reducing the learning rate by |
| a factor of 2-10 once learning stagnates. This scheduler reads a metrics |
| quantity and if no improvement is seen for a ``patience`` number of epochs, |
| the learning rate is reduced. |
| |
| Args: |
| optimizer (Optimizer or OptimWrapper): optimizer or Wrapped |
| optimizer. |
| monitor (str): Key name of the value to monitor in metrics dict. |
| rule (str): One of `less`, `greater`. In `less` rule, learning rate |
| will be reduced when the quantity monitored has stopped |
| decreasing; in `greater` rule it will be reduced when the |
| quantity monitored has stopped increasing. Defaults to 'less'. |
| The ``rule`` is the renaming of ``mode`` in pytorch. |
| factor (float): Factor by which the learning rate will be |
| reduced. new_param = param * factor. Defaults to 0.1. |
| patience (int): Number of epochs with no improvement after |
| which learning rate will be reduced. For example, if |
| ``patience = 2``, then we will ignore the first 2 epochs |
| with no improvement, and will only decrease the learning rate after |
| the 3rd epoch if the monitor value still hasn't improved then. |
| Defaults to 10. |
| threshold (float): Threshold for measuring the new optimum, |
| to only focus on significant changes. Defaults to 1e-4. |
| threshold_rule (str): One of `rel`, `abs`. In `rel` rule, |
| dynamic_threshold = best * ( 1 + threshold ) in 'greater' |
| rule or best * ( 1 - threshold ) in `less` rule. |
| In `abs` rule, dynamic_threshold = best + threshold in |
| `greater` rule or best - threshold in `less` rule. |
| Defaults to 'rel'. |
| cooldown (int): Number of epochs to wait before resuming |
| normal operation after learning rate has been reduced. |
| Defaults to 0. |
| min_value (float or list[float]): A scalar or a sequence of scalars. |
| A lower bound on the learning rate of each parameter group |
| respectively. Defaults to 0. . |
| eps (float): Minimal decay applied to learning rate. If the difference |
| between new and old learning rate is smaller than eps, the update |
| is ignored. Defaults to 1e-8. |
| begin (int): Step at which to start triggering the scheduler |
| to monitor in val within the interval calculated |
| according to epoch of training. Defaults to 0. |
| end (int): Step at which to stop triggering the scheduler |
| to monitor in val within the interval calculated |
| according to epoch of training. Defaults to INF. |
| last_step (int): The index of last step. Used for resume without |
| state dict. Defaults to -1. |
| by_epoch (bool): Whether the scheduled parameters are updated by |
| epochs. Defaults to True. |
| verbose (bool): Whether to print the value for each update. |
| Defaults to False. |
| """ |
|
|