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# Copyright (c) Meta Platforms, Inc. and affiliates. | |
# All rights reserved. | |
# | |
# This source code is licensed under the license found in the | |
# LICENSE file in the root directory of this source tree. | |
from typing import Dict, Optional, Sequence, Union | |
from mmengine import is_method_overridden | |
DATA_BATCH = Optional[Union[dict, tuple, list]] | |
class Hook: | |
"""Base hook class. | |
All hooks should inherit from this class. | |
""" | |
priority = 'NORMAL' | |
stages = ('before_run', 'after_load_checkpoint', 'before_train', | |
'before_train_epoch', 'before_train_iter', 'after_train_iter', | |
'after_train_epoch', 'before_val', 'before_val_epoch', | |
'before_val_iter', 'after_val_iter', 'after_val_epoch', | |
'after_val', 'before_save_checkpoint', 'after_train', | |
'before_test', 'before_test_epoch', 'before_test_iter', | |
'after_test_iter', 'after_test_epoch', 'after_test', 'after_run') | |
def before_run(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before the training validation or testing process. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
""" | |
def after_run(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before the training validation or testing process. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
""" | |
def before_train(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before train. | |
Args: | |
runner (Runner): The runner of the training process. | |
""" | |
def after_train(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after train. | |
Args: | |
runner (Runner): The runner of the training process. | |
""" | |
def before_val(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before validation. | |
Args: | |
runner (Runner): The runner of the validation process. | |
""" | |
def after_val(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after validation. | |
Args: | |
runner (Runner): The runner of the validation process. | |
""" | |
def before_test(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before testing. | |
Args: | |
runner (Runner): The runner of the testing process. | |
""" | |
def after_test(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after testing. | |
Args: | |
runner (Runner): The runner of the testing process. | |
""" | |
def before_save_checkpoint(self, runner, checkpoint: dict) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before saving the checkpoint. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
checkpoint (dict): Model's checkpoint. | |
""" | |
def after_load_checkpoint(self, runner, checkpoint: dict) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after loading the checkpoint. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
checkpoint (dict): Model's checkpoint. | |
""" | |
def before_train_epoch(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before each training epoch. | |
Args: | |
runner (Runner): The runner of the training process. | |
""" | |
self._before_epoch(runner, mode='train') | |
def before_val_epoch(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before each validation epoch. | |
Args: | |
runner (Runner): The runner of the validation process. | |
""" | |
self._before_epoch(runner, mode='val') | |
def before_test_epoch(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before each test epoch. | |
Args: | |
runner (Runner): The runner of the testing process. | |
""" | |
self._before_epoch(runner, mode='test') | |
def after_train_epoch(self, runner) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after each training epoch. | |
Args: | |
runner (Runner): The runner of the training process. | |
""" | |
self._after_epoch(runner, mode='train') | |
def after_val_epoch(self, | |
runner, | |
metrics: Optional[Dict[str, float]] = None) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after each validation epoch. | |
Args: | |
runner (Runner): The runner of the validation process. | |
metrics (Dict[str, float], optional): Evaluation results of all | |
metrics on validation dataset. The keys are the names of the | |
metrics, and the values are corresponding results. | |
""" | |
self._after_epoch(runner, mode='val') | |
def after_test_epoch(self, | |
runner, | |
metrics: Optional[Dict[str, float]] = None) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after each test epoch. | |
Args: | |
runner (Runner): The runner of the testing process. | |
metrics (Dict[str, float], optional): Evaluation results of all | |
metrics on test dataset. The keys are the names of the | |
metrics, and the values are corresponding results. | |
""" | |
self._after_epoch(runner, mode='test') | |
def before_train_iter(self, | |
runner, | |
batch_idx: int, | |
data_batch: DATA_BATCH = None) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before each training iteration. | |
Args: | |
runner (Runner): The runner of the training process. | |
batch_idx (int): The index of the current batch in the train loop. | |
data_batch (dict or tuple or list, optional): Data from dataloader. | |
""" | |
self._before_iter( | |
runner, batch_idx=batch_idx, data_batch=data_batch, mode='train') | |
def before_val_iter(self, | |
runner, | |
batch_idx: int, | |
data_batch: DATA_BATCH = None) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before each validation iteration. | |
Args: | |
runner (Runner): The runner of the validation process. | |
batch_idx (int): The index of the current batch in the val loop. | |
data_batch (dict, optional): Data from dataloader. | |
Defaults to None. | |
""" | |
self._before_iter( | |
runner, batch_idx=batch_idx, data_batch=data_batch, mode='val') | |
def before_test_iter(self, | |
runner, | |
batch_idx: int, | |
data_batch: DATA_BATCH = None) -> None: | |
"""All subclasses should override this method, if they need any | |
operations before each test iteration. | |
Args: | |
runner (Runner): The runner of the testing process. | |
batch_idx (int): The index of the current batch in the test loop. | |
data_batch (dict or tuple or list, optional): Data from dataloader. | |
Defaults to None. | |
""" | |
self._before_iter( | |
runner, batch_idx=batch_idx, data_batch=data_batch, mode='test') | |
def after_train_iter(self, | |
runner, | |
batch_idx: int, | |
data_batch: DATA_BATCH = None, | |
outputs: Optional[dict] = None) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after each training iteration. | |
Args: | |
runner (Runner): The runner of the training process. | |
batch_idx (int): The index of the current batch in the train loop. | |
data_batch (dict tuple or list, optional): Data from dataloader. | |
outputs (dict, optional): Outputs from model. | |
""" | |
self._after_iter( | |
runner, | |
batch_idx=batch_idx, | |
data_batch=data_batch, | |
outputs=outputs, | |
mode='train') | |
def after_val_iter(self, | |
runner, | |
batch_idx: int, | |
data_batch: DATA_BATCH = None, | |
outputs: Optional[Sequence] = None) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after each validation iteration. | |
Args: | |
runner (Runner): The runner of the validation process. | |
batch_idx (int): The index of the current batch in the val loop. | |
data_batch (dict or tuple or list, optional): Data from dataloader. | |
outputs (Sequence, optional): Outputs from model. | |
""" | |
self._after_iter( | |
runner, | |
batch_idx=batch_idx, | |
data_batch=data_batch, | |
outputs=outputs, | |
mode='val') | |
def after_test_iter(self, | |
runner, | |
batch_idx: int, | |
data_batch: DATA_BATCH = None, | |
outputs: Optional[Sequence] = None) -> None: | |
"""All subclasses should override this method, if they need any | |
operations after each test iteration. | |
Args: | |
runner (Runner): The runner of the training process. | |
batch_idx (int): The index of the current batch in the test loop. | |
data_batch (dict or tuple or list, optional): Data from dataloader. | |
outputs (Sequence, optional): Outputs from model. | |
""" | |
self._after_iter( | |
runner, | |
batch_idx=batch_idx, | |
data_batch=data_batch, | |
outputs=outputs, | |
mode='test') | |
def _before_epoch(self, runner, mode: str = 'train') -> None: | |
"""All subclasses should override this method, if they need any | |
operations before each epoch. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
mode (str): Current mode of runner. Defaults to 'train'. | |
""" | |
def _after_epoch(self, runner, mode: str = 'train') -> None: | |
"""All subclasses should override this method, if they need any | |
operations after each epoch. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
mode (str): Current mode of runner. Defaults to 'train'. | |
""" | |
def _before_iter(self, | |
runner, | |
batch_idx: int, | |
data_batch: DATA_BATCH = None, | |
mode: str = 'train') -> None: | |
"""All subclasses should override this method, if they need any | |
operations before each iter. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
batch_idx (int): The index of the current batch in the loop. | |
data_batch (dict or tuple or list, optional): Data from dataloader. | |
mode (str): Current mode of runner. Defaults to 'train'. | |
""" | |
def _after_iter(self, | |
runner, | |
batch_idx: int, | |
data_batch: DATA_BATCH = None, | |
outputs: Optional[Union[Sequence, dict]] = None, | |
mode: str = 'train') -> None: | |
"""All subclasses should override this method, if they need any | |
operations after each epoch. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
batch_idx (int): The index of the current batch in the loop. | |
data_batch (dict or tuple or list, optional): Data from dataloader. | |
outputs (dict or Sequence, optional): Outputs from model. | |
mode (str): Current mode of runner. Defaults to 'train'. | |
""" | |
def every_n_epochs(self, runner, n: int, start: int = 0) -> bool: | |
"""Test whether current epoch can be evenly divided by n. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
n (int): Whether current epoch can be evenly divided by n. | |
start (int): Starting from `start` to check the logic for | |
every n epochs. Defaults to 0. | |
Returns: | |
bool: Whether current epoch can be evenly divided by n. | |
""" | |
dividend = runner.epoch + 1 - start | |
return dividend % n == 0 if dividend >= 0 and n > 0 else False | |
def every_n_inner_iters(self, batch_idx: int, n: int) -> bool: | |
"""Test whether current inner iteration can be evenly divided by n. | |
Args: | |
batch_idx (int): Current batch index of the training, validation | |
or testing loop. | |
n (int): Whether current inner iteration can be evenly | |
divided by n. | |
Returns: | |
bool: Whether current inner iteration can be evenly | |
divided by n. | |
""" | |
return (batch_idx + 1) % n == 0 if n > 0 else False | |
def every_n_train_iters(self, runner, n: int, start: int = 0) -> bool: | |
"""Test whether current training iteration can be evenly divided by n. | |
Args: | |
runner (Runner): The runner of the training, validation or testing | |
process. | |
n (int): Whether current iteration can be evenly divided by n. | |
start (int): Starting from `start` to check the logic for | |
every n iterations. Defaults to 0. | |
Returns: | |
bool: Return True if the current iteration can be evenly divided | |
by n, otherwise False. | |
""" | |
dividend = runner.iter + 1 - start | |
return dividend % n == 0 if dividend >= 0 and n > 0 else False | |
def end_of_epoch(self, dataloader, batch_idx: int) -> bool: | |
"""Check whether the current iteration reaches the last iteration of | |
the dataloader. | |
Args: | |
dataloader (Dataloader): The dataloader of the training, | |
validation or testing process. | |
batch_idx (int): The index of the current batch in the loop. | |
Returns: | |
bool: Whether reaches the end of current epoch or not. | |
""" | |
return batch_idx + 1 == len(dataloader) | |
def is_last_train_epoch(self, runner) -> bool: | |
"""Test whether current epoch is the last train epoch. | |
Args: | |
runner (Runner): The runner of the training process. | |
Returns: | |
bool: Whether reaches the end of training epoch. | |
""" | |
return runner.epoch + 1 == runner.max_epochs | |
def is_last_train_iter(self, runner) -> bool: | |
"""Test whether current iteration is the last train iteration. | |
Args: | |
runner (Runner): The runner of the training process. | |
Returns: | |
bool: Whether current iteration is the last train iteration. | |
""" | |
return runner.iter + 1 == runner.max_iters | |
def get_triggered_stages(self) -> list: | |
"""Get all triggered stages with method name of the hook. | |
Returns: | |
list: List of triggered stages. | |
""" | |
trigger_stages = set() | |
for stage in Hook.stages: | |
if is_method_overridden(stage, Hook, self): | |
trigger_stages.add(stage) | |
# some methods will be triggered in multi stages | |
# use this dict to map method to stages. | |
method_stages_map = { | |
'_before_epoch': | |
['before_train_epoch', 'before_val_epoch', 'before_test_epoch'], | |
'_after_epoch': | |
['after_train_epoch', 'after_val_epoch', 'after_test_epoch'], | |
'_before_iter': | |
['before_train_iter', 'before_val_iter', 'before_test_iter'], | |
'_after_iter': | |
['after_train_iter', 'after_val_iter', 'after_test_iter'], | |
} | |
for method, map_stages in method_stages_map.items(): | |
if is_method_overridden(method, Hook, self): | |
trigger_stages.update(map_stages) | |
return list(trigger_stages) | |