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Source code for pytorch_lightning.loops.epoch.training_epoch_loop

# Copyright The PyTorch Lightning team.
#
# 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 collections import defaultdict
from typing import Any, Dict, Generator, Iterator, List, Optional, overload, Tuple, Union

import numpy as np
import torch

from pytorch_lightning import loops  # import as loops to avoid circular imports
from pytorch_lightning.loops.batch import TrainingBatchLoop
from pytorch_lightning.loops.batch.training_batch_loop import _OUTPUTS_TYPE as _BATCH_OUTPUTS_TYPE
from pytorch_lightning.loops.utilities import _get_active_optimizers, _is_max_limit_reached, _update_dataloader_iter
from pytorch_lightning.trainer.connectors.logger_connector.result import ResultCollection
from pytorch_lightning.trainer.progress import BatchProgress, SchedulerProgress
from pytorch_lightning.utilities import rank_zero_warn
from pytorch_lightning.utilities.apply_func import apply_to_collection
from pytorch_lightning.utilities.exceptions import MisconfigurationException
from pytorch_lightning.utilities.fetching import AbstractDataFetcher
from pytorch_lightning.utilities.model_helpers import is_overridden
from pytorch_lightning.utilities.signature_utils import is_param_in_hook_signature
from pytorch_lightning.utilities.warnings import rank_zero_deprecation, WarningCache

_OUTPUTS_TYPE = List[_BATCH_OUTPUTS_TYPE]


[docs]class TrainingEpochLoop(loops.Loop[_OUTPUTS_TYPE]): """Runs over all batches in a dataloader (one epoch). Args: min_steps: The minimum number of steps (batches) to process max_steps: The maximum number of steps (batches) to process """ def __init__(self, min_steps: Optional[int] = 0, max_steps: int = -1) -> None: super().__init__() if max_steps is None: rank_zero_deprecation( "Setting `max_steps = None` is deprecated in v1.5 and will no longer be supported in v1.7." " Use `max_steps = -1` instead." ) max_steps = -1 elif max_steps < -1: raise MisconfigurationException( f"`max_steps` must be a non-negative integer or -1 (infinite steps). You passed in {max_steps}." ) self.min_steps = min_steps self.max_steps = max_steps self.global_step: int = 0 self.batch_progress = BatchProgress() self.scheduler_progress = SchedulerProgress() self.batch_loop: Optional[TrainingBatchLoop] = None self.val_loop: Optional["loops.EvaluationLoop"] = None self._results = ResultCollection(training=True) self._outputs: _OUTPUTS_TYPE = [] self._warning_cache = WarningCache() self._dataloader_iter: Optional[Iterator] = None # caches the loaded dataloader state until dataloader objects are available self._dataloader_state_dict: Dict[str, Any] = {} @property def total_batch_idx(self) -> int: """Returns the current batch index (across epochs)""" # use `ready` instead of `completed` in case this is accessed after `completed` has been increased # but before the next `ready` increase return self.batch_progress.total.ready - 1 @property def batch_idx(self) -> int: """Returns the current batch index (within this epoch)""" # use `ready` instead of `completed` in case this is accessed after `completed` has been increased # but before the next `ready` increase return self.batch_progress.current.ready - 1 @property def _is_training_done(self) -> bool: max_steps_reached = _is_max_limit_reached(self.global_step, self.max_steps) return max_steps_reached or self._num_ready_batches_reached() @property def _is_validation_done(self) -> bool: # when we are restarting we want to check whether the val loop has finished return not self.restarting or self.val_loop.done @property def done(self) -> bool: """Returns whether the training should be stopped. The criteria are that the number of steps reached the max steps, the last batch is reached or the trainer signals to stop (e.g. by early stopping). """ return (self._is_training_done and self._is_validation_done) or self.trainer.should_stop
[docs] def connect( self, batch_loop: TrainingBatchLoop = None, val_loop: Optional["loops.EvaluationLoop"] = None, ) -> None: """Optionally connect a custom batch or validation loop to this training epoch loop.""" if batch_loop is not None: self.batch_loop = batch_loop if val_loop is not None: self.val_loop = val_loop
[docs] def reset(self) -> None: """Resets the internal state of the loop for a new run.""" assert self.batch_loop is not None assert self.batch_loop.optimizer_loop is not None if self.restarting: self.batch_progress.reset_on_restart() self.scheduler_progress.reset_on_restart() self.batch_loop.optimizer_loop.optim_progress.reset_on_restart() else: self.batch_progress.reset_on_run() self.scheduler_progress.reset_on_run() self.batch_loop.optimizer_loop.optim_progress.reset_on_run() self._outputs = []
[docs] def on_run_start(self, data_fetcher: AbstractDataFetcher, **kwargs: Any) -> None: # hook self.trainer.logger_connector.on_epoch_start() self.trainer.call_hook("on_epoch_start") self.trainer.call_hook("on_train_epoch_start") self.trainer.fit_loop.epoch_progress.increment_started() self._reload_dataloader_state_dict(data_fetcher) self._dataloader_iter = _update_dataloader_iter(data_fetcher, self.batch_idx + 1)
[docs] def advance(self, *args: Any, **kwargs: Any) -> None: """Runs a single training batch. Args: dataloader_iter: the iterator over the dataloader producing the new batch Raises: StopIteration: When the epoch is canceled by the user returning -1 """ if self.restarting and self._should_check_val_fx(self.batch_idx, self.batch_progress.is_last_batch): # skip training and run validation in `on_advance_end` return batch_idx, (batch, self.batch_progress.is_last_batch) = next(self._dataloader_iter) if not self.trainer._data_connector.train_data_fetcher.store_on_device: with self.trainer.profiler.profile("training_batch_to_device"): batch = self.trainer.accelerator.batch_to_device(batch) self.batch_progress.increment_ready() # cache the batch size value to avoid extracting it again after the batch loop runs as the value will be # different if tbptt is enabled batch_size = self.trainer.logger_connector.on_batch_start(batch_idx, batch) if batch is None: self._warning_cache.warn("train_dataloader yielded None. If this was on purpose, ignore this warning...") batch_output = [] else: # hook response = self.trainer.call_hook("on_batch_start") if response == -1: self.batch_progress.increment_processed() raise StopIteration # TODO: Update this in v1.7 (deprecation: #9816) model_fx = self.trainer.lightning_module.on_train_batch_start extra_kwargs = ( {"dataloader_idx": 0} if callable(model_fx) and is_param_in_hook_signature(model_fx, "dataloader_idx", explicit=True) else {} ) # hook response = self.trainer.call_hook("on_train_batch_start", batch, batch_idx, **extra_kwargs) if response == -1: self.batch_progress.increment_processed() raise StopIteration self.batch_progress.increment_started() with self.trainer.profiler.profile("run_training_batch"): batch_output = self.batch_loop.run(batch, batch_idx) self.trainer._results.batch_size = batch_size self.batch_progress.increment_processed() # update non-plateau LR schedulers # update epoch-interval ones only when we are at the end of training epoch self.update_lr_schedulers("step", update_plateau_schedulers=False) if self._num_ready_batches_reached(): self.update_lr_schedulers("epoch", update_plateau_schedulers=False) batch_end_outputs = self._prepare_outputs_training_batch_end( batch_output, automatic=self.trainer.lightning_module.trainer.lightning_module.automatic_optimization, num_optimizers=len(self.trainer.optimizers), ) # TODO: Update this in v1.7 (deprecation: #9816) model_fx = self.trainer.lightning_module.on_train_batch_end extra_kwargs = ( {"dataloader_idx": 0} if callable(model_fx) and is_param_in_hook_signature(model_fx, "dataloader_idx", explicit=True) else {} ) self.trainer.call_hook("on_train_batch_end", batch_end_outputs, batch, batch_idx, **extra_kwargs) self.trainer.call_hook("on_batch_end") self.trainer.logger_connector.on_batch_end() self.batch_progress.increment_completed() if is_overridden("training_epoch_end", self.trainer.lightning_module): self._outputs.append(batch_output) # ----------------------------------------- # SAVE METRICS TO LOGGERS AND PROGRESS_BAR # ----------------------------------------- self.trainer.logger_connector.update_train_step_metrics()
[docs] def on_advance_end(self): """Runs validation and Checkpointing if necessary. Raises: StopIteration: if :attr:`done` evaluates to ``True`` to finish this epoch """ # ----------------------------------------- # VALIDATE IF NEEDED + CHECKPOINT CALLBACK # ----------------------------------------- should_check_val = self._should_check_val_fx(self.batch_idx, self.batch_progress.is_last_batch) if should_check_val: self.trainer.validating = True self._run_validation() self.trainer.training = True # ----------------------------------------- # SAVE LOGGERS (ie: Tensorboard, etc...) # ----------------------------------------- self._save_loggers_on_train_batch_end() # update plateau LR scheduler after metrics are logged self.update_lr_schedulers("step", update_plateau_schedulers=True) if not self._should_accumulate(): # progress global step according to grads progress self.global_step += 1 # if training finished, try to exit in `on_run_end` instead as we should have enough time # TODO: @tchaton verify this assumption is True. if not self._is_training_done: # if fault tolerant is enabled and process has been notified, exit. self.trainer._exit_gracefully_on_signal()
[docs] def on_run_end(self) -> None: """Calls the on_epoch_end hook. Returns: The output of each training step for each optimizer Raises: MisconfigurationException: ``train_epoch_end`` does not return ``None`` """ # inform logger the batch loop has finished self.trainer.logger_connector.epoch_end_reached() # get the model and call model.training_epoch_end model = self.trainer.lightning_module if is_overridden("training_epoch_end", model) and self._outputs: epoch_end_outputs = self._prepare_outputs_training_epoch_end( self._outputs, automatic=model.automatic_optimization, num_optimizers=len(self.trainer.optimizers), ) # run lightning module hook training_epoch_end # refresh the result for custom logging at the epoch level model._current_fx_name = "training_epoch_end" epoch_end_outputs = model.training_epoch_end(epoch_end_outputs) if epoch_end_outputs is not None: raise MisconfigurationException( "`training_epoch_end` expects a return of None. " "HINT: remove the return statement in `training_epoch_end`." ) # free memory self._outputs = [] self.trainer.fit_loop.epoch_progress.increment_processed() # call train epoch end hooks self.trainer.call_hook("on_train_epoch_end") self.trainer.call_hook("on_epoch_end") self.trainer.logger_connector.on_epoch_end() if self._num_ready_batches_reached(): self.update_lr_schedulers("epoch", update_plateau_schedulers=True) # if fault tolerant is enabled and process has been notified, exit. self.trainer._exit_gracefully_on_signal()
[docs] def teardown(self) -> None: self._results.cpu() self.batch_loop.teardown() self.val_loop.teardown()
[docs] def on_save_checkpoint(self) -> Dict: state_dict = super().on_save_checkpoint() if ( self.trainer.train_dataloader is None or self._num_completed_batches_reached() # did not finish # TODO: fault-tolerance requires a minimum number of batches so probably should be > 0 or self.batch_progress.current.ready == 0 # did not start ): return state_dict state_dict["dataloader_state_dict"] = self.trainer.train_dataloader.state_dict( has_completed=self._has_completed() ) return state_dict
[docs] def on_load_checkpoint(self, state_dict: Dict) -> None: # cache the dataloader state dict until the dataloader objects are available self._dataloader_state_dict = state_dict.get("dataloader_state_dict")
def _run_validation(self): # reload dataloaders self.val_loop._reload_evaluation_dataloaders() with torch.no_grad(): self.val_loop.run() def _accumulated_batches_reached(self) -> bool: """Determine if accumulation will be finished by the end of the current batch.""" return self.batch_progress.current.ready % self.trainer.accumulate_grad_batches == 0 def _num_ready_batches_reached(self) -> bool: """Checks if we are in the last batch or if there are more batches to follow.""" epoch_finished_on_ready = self.batch_progress.current.ready == self.trainer.num_training_batches return epoch_finished_on_ready or self.batch_progress.is_last_batch def _num_completed_batches_reached(self) -> bool: epoch_finished_on_completed = self.batch_progress.current.completed == self.trainer.num_training_batches dataloader_consumed_successfully = self.batch_progress.is_last_batch and self._has_completed() return epoch_finished_on_completed or dataloader_consumed_successfully def _has_completed(self) -> bool: return self.batch_progress.current.ready == self.batch_progress.current.completed def _should_accumulate(self) -> bool: """Checks if the optimizer step should be performed or gradients should be accumulated for the current step.""" accumulation_done = self._accumulated_batches_reached() # Lightning steps on the final batch is_final_batch = self._num_ready_batches_reached() # but the TTP might not ttp_accumulates_on_final_batch = ( self.trainer.training_type_plugin.handles_gradient_accumulation or not is_final_batch ) return not accumulation_done and ttp_accumulates_on_final_batch @staticmethod def _prepare_outputs_training_batch_end( batch_output: _BATCH_OUTPUTS_TYPE, automatic: bool, num_optimizers: int, ) -> Union[List[List[Dict[str, Any]]], List[Dict[str, Any]]]: """Processes the outputs from the batch loop into the format passed to the ``training_batch_end`` hook. ``(tbptt_steps, n_opt) -> (n_opt, tbptt_steps)``. The optimizer dimension might have been squeezed. """ if not batch_output: return [] # convert optimizer dicts to list if automatic: batch_output = apply_to_collection( batch_output, dtype=dict, function=_convert_optim_dict, num_optimizers=num_optimizers ) array = np.array(batch_output, dtype=object) if array.ndim == 1: array = np.expand_dims(array, 1) array = array.transpose((1, 0)) array = array.squeeze() array = array.tolist() array = _recursive_unpad(array) return array @staticmethod def _prepare_outputs_training_epoch_end( batch_outputs: _OUTPUTS_TYPE, automatic: bool, num_optimizers: int, ) -> Union[List[List[List[Dict[str, Any]]]], List[List[Dict[str, Any]]], List[Dict[str, Any]]]: """Processes the outputs from the batch loop into the format passed to the ``training_epoch_end`` hook. ``(n_batches, tbptt_steps, n_opt) -> (n_opt, n_batches, tbptt_steps)``. All single-element dimensions might have been squeezed. This processing is necessary because the format of the inputs to the ``training_epoch_end`` hook does not match the loop structure and because empty dimensions are squeezed. This could break with loop customization. """ # `batch_outputs` (plural) is the same as `epoch_end_output` (singular) if not batch_outputs: return [] # convert optimizer dicts to list if automatic: batch_outputs = apply_to_collection( batch_outputs, dtype=dict, function=_convert_optim_dict, num_optimizers=num_optimizers ) array = _recursive_pad(batch_outputs) if array.ndim == 2: array = np.expand_dims(array, 2) array = array.transpose((2, 0, 1)) array = array.squeeze() array = array.tolist() array = _recursive_unpad(array) # in case we squeezed from 1-element array to a 0-dim array array = array if isinstance(array, list) else [array] # remove residual empty lists array = [item for item in array if not isinstance(item, list) or len(item)] return array
[docs] def update_lr_schedulers(self, interval: str, update_plateau_schedulers: bool) -> None: """updates the lr schedulers based on the given interval.""" if interval == "step" and self._should_accumulate(): return active_optimizers = _get_active_optimizers( self.trainer.optimizers, self.trainer.optimizer_frequencies, self.total_batch_idx ) self._update_learning_rates( interval=interval, update_plateau_schedulers=update_plateau_schedulers, opt_indices=[opt_idx for opt_idx, _ in active_optimizers], )
def _update_learning_rates( self, interval: str, update_plateau_schedulers: bool, opt_indices: Optional[List[int]] = None ) -> None: """Update learning rates. Args: interval: either 'epoch' or 'step'. update_plateau_schedulers: control whether ``ReduceLROnPlateau`` or non-plateau schedulers get updated. This is used so non-plateau schedulers can be updated before running validation. Checkpoints are commonly saved during validation, however, on-plateau schedulers might monitor a validation metric so they have to be updated separately. opt_indices: indices of the optimizers to update. """ if not self.trainer.lr_schedulers or not self.trainer.lightning_module.automatic_optimization: return if opt_indices is None: opt_indices = [] for lr_scheduler in self.trainer.lr_schedulers: if isinstance(lr_scheduler["opt_idx"], int) and lr_scheduler["opt_idx"] not in opt_indices: continue if update_plateau_schedulers ^ lr_scheduler["reduce_on_plateau"]: continue current_idx = self.batch_idx if interval == "step" else self.trainer.current_epoch current_idx += 1 # account for both batch and epoch starts from 0 # Take step if call to update_learning_rates matches the interval key and # the current step modulo the schedulers frequency is zero if lr_scheduler["interval"] == interval and current_idx % lr_scheduler["frequency"] == 0: monitor_val = None if lr_scheduler["reduce_on_plateau"]: # If instance of ReduceLROnPlateau, we need a monitor monitor_key = lr_scheduler["monitor"] monitor_val = self._get_monitor_value(monitor_key) if monitor_val is None: if lr_scheduler.get("strict", True): avail_metrics = list(self.trainer.callback_metrics) raise MisconfigurationException( f"ReduceLROnPlateau conditioned on metric {monitor_key}" f" which is not available. Available metrics are: {avail_metrics}." " Condition can be set using `monitor` key in lr scheduler dict" ) rank_zero_warn( f"ReduceLROnPlateau conditioned on metric {monitor_key}" " which is not available but strict is set to `False`." " Skipping learning rate update.", RuntimeWarning, ) continue self.scheduler_progress.increment_ready() # update LR if lr_scheduler["reduce_on_plateau"]: lr_scheduler["scheduler"].step(monitor_val) else: lr_scheduler["scheduler"].step() self.scheduler_progress.increment_completed() def _get_monitor_value(self, key: str) -> Any: # this is a separate method to aid in testing return self.trainer.callback_metrics.get(key) def _should_check_val_fx(self, batch_idx: int, is_last_batch: bool) -> bool: """Decide if we should run validation.""" if not self.trainer.enable_validation: return False is_val_check_epoch = (self.trainer.current_epoch + 1) % self.trainer.check_val_every_n_epoch == 0 if not is_val_check_epoch: return False # val_check_batch is inf for iterable datasets with no length defined is_infinite_dataset = self.trainer.val_check_batch == float("inf") if is_last_batch and is_infinite_dataset: return True if self.trainer.should_stop: return True # TODO(@awaelchli): let training/eval loop handle logic around limit_*_batches and val_check_batch is_val_check_batch = is_last_batch if isinstance(self.trainer.limit_train_batches, int) and is_infinite_dataset: is_val_check_batch = (batch_idx + 1) % self.trainer.limit_train_batches == 0 elif self.trainer.val_check_batch != float("inf"): is_val_check_batch = (batch_idx + 1) % self.trainer.val_check_batch == 0 return is_val_check_batch def _save_loggers_on_train_batch_end(self) -> None: """Flushes loggers to disk.""" # when loggers should save to disk should_flush_logs = self.trainer.logger_connector.should_flush_logs if should_flush_logs and self.trainer.is_global_zero and self.trainer.logger is not None: self.trainer.logger.save() def _reload_dataloader_state_dict(self, data_fetcher: AbstractDataFetcher): if self._dataloader_state_dict: data_fetcher.dataloader.load_state_dict(self._dataloader_state_dict) self._dataloader_state_dict = None
def _convert_optim_dict(outs: Dict[int, Dict[str, Any]], num_optimizers: int) -> List[Dict[str, Any]]: """Converts an optimizer dict to a list in which the key of the dict determines the position of the element. Example:: >>> _convert_optim_dict({0: {"loss": 0.0}, 2: {"loss": 0.2}}, num_optimizers=3) [{'loss': 0.0}, None, {'loss': 0.2}] """ return [outs[opt_idx] if opt_idx in outs else None for opt_idx in range(num_optimizers)] @overload def _recursive_unpad(nested: Any, value: Optional[Any] = None) -> Any: ... @overload def _recursive_unpad(nested: List[Any], value: Optional[Any] = None) -> List[Any]: ... def _recursive_unpad(nested: Union[Any, List[Any]], value: Optional[Any] = None) -> Union[Any, List[Any]]: """Removes the given pad value from the nested list. Not strictly the reverse operation of :func:`_recursive_pad` because it removes the padding element everywhere, not just from the end of a list. Example:: >>> _recursive_unpad([[[0, 1, 0]], [2], [0, 0]], value=0) [[[1]], [2], []] """ if not isinstance(nested, list): return nested return [_recursive_unpad(item, value) for item in nested if item != value] def _recursive_pad(nested: List[Any], fill_value: Optional[Any] = None) -> np.array: """Pads a jagged nested list of lists with the given value such that a proper multi-dimensional array can be formed with rectangular shape. The padding appends to the incomplete lists. Example:: >>> _recursive_pad([[], [1], [2, 3], [4]], fill_value=0) # doctest: +NORMALIZE_WHITESPACE array([[0, 0], [1, 0], [2, 3], [4, 0]], dtype=object) """ # code adapted from stackexchange: # https://codereview.stackexchange.com/questions/222623/pad-a-ragged-multidimensional-array-to-rectangular-shape dimensions = _get_max_shape(nested) result = np.full(dimensions, fill_value, dtype=object) for index, value in _iterate_nested_array(nested): result[index] = value return result def _get_dimensions(array: List[Any], level: int = 0) -> Generator: yield level, len(array) if all(isinstance(row, list) for row in array): for row in array: yield from _get_dimensions(row, level + 1) def _get_max_shape(array: List[Any]) -> List[int]: """Calculates the max size in each dimension of a jagged (non-rectangular) nested list of lists. Example:: >>> _get_max_shape([[], [[1], [2]], []]) [3, 2, 1] """ dimensions = defaultdict(int) for level, length in _get_dimensions(array): dimensions[level] = max(dimensions[level], length) return [value for _, value in sorted(dimensions.items())] def _iterate_nested_array(array: List[Any], index: Tuple = ()) -> Generator: if all(isinstance(item, list) for item in array): for idx, row in enumerate(array): yield from _iterate_nested_array(row, (*index, idx)) else: # final level yield (*index, slice(len(array))), array

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