* Introduce save_strategy training argument * deprecate EvaluationStrategy * collapse EvaluationStrategy and LoggingStrategy into a single IntervalStrategy enum * modify tests to use modified enum
562 lines
23 KiB
Python
562 lines
23 KiB
Python
# coding=utf-8
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# Copyright 2020-present the HuggingFace Inc. team.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""
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Callbacks to use with the Trainer class and customize the training loop.
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"""
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import dataclasses
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import json
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from dataclasses import dataclass
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from typing import Dict, List, Optional, Union
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import numpy as np
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from tqdm.auto import tqdm
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from .trainer_utils import IntervalStrategy
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from .training_args import TrainingArguments
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from .utils import logging
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logger = logging.get_logger(__name__)
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@dataclass
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class TrainerState:
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"""
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A class containing the :class:`~transformers.Trainer` inner state that will be saved along the model and optimizer
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when checkpointing and passed to the :class:`~transformers.TrainerCallback`.
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.. note::
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In all this class, one step is to be understood as one update step. When using gradient accumulation, one
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update step may require several forward and backward passes: if you use :obj:`gradient_accumulation_steps=n`,
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then one update step requires going throuch `n` batches.
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Args:
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epoch (:obj:`float`, `optional`):
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Only set during training, will represent the epoch the training is at (the decimal part being the
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percentage of the current epoch completed).
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global_step (:obj:`int`, `optional`, defaults to 0):
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During training, represents the number of update steps completed.
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max_steps (:obj:`int`, `optional`, defaults to 0):
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The number of update steps to do during the current training.
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total_flos (:obj:`float`, `optional`, defaults to 0):
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The total number of floating operations done by the model since the beginning of training (stored as floats
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to avoid overflow).
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log_history (:obj:`List[Dict[str, float]]`, `optional`):
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The list of logs done since the beginning of training.
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best_metric (:obj:`float`, `optional`):
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When tracking the best model, the value of the best metric encountered so far.
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best_model_checkpoint (:obj:`str`, `optional`):
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When tracking the best model, the value of the name of the checkpoint for the best model encountered so
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far.
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is_local_process_zero (:obj:`bool`, `optional`, defaults to :obj:`True`):
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Whether or not this process is the local (e.g., on one machine if training in a distributed fashion on
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several machines) main process.
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is_world_process_zero (:obj:`bool`, `optional`, defaults to :obj:`True`):
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Whether or not this process is the global main process (when training in a distributed fashion on several
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machines, this is only going to be :obj:`True` for one process).
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is_hyper_param_search (:obj:`bool`, `optional`, defaults to :obj:`False`):
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Whether we are in the process of a hyper parameter search using Trainer.hyperparameter_search. This will
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impact the way data will be logged in TensorBoard.
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"""
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epoch: Optional[float] = None
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global_step: int = 0
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max_steps: int = 0
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num_train_epochs: int = 0
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total_flos: float = 0
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log_history: List[Dict[str, float]] = None
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best_metric: Optional[float] = None
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best_model_checkpoint: Optional[str] = None
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is_local_process_zero: bool = True
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is_world_process_zero: bool = True
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is_hyper_param_search: bool = False
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trial_name: str = None
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trial_params: Dict[str, Union[str, float, int, bool]] = None
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def __post_init__(self):
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if self.log_history is None:
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self.log_history = []
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def save_to_json(self, json_path: str):
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""" Save the content of this instance in JSON format inside :obj:`json_path`."""
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json_string = json.dumps(dataclasses.asdict(self), indent=2, sort_keys=True) + "\n"
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with open(json_path, "w", encoding="utf-8") as f:
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f.write(json_string)
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@classmethod
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def load_from_json(cls, json_path: str):
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""" Create an instance from the content of :obj:`json_path`."""
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with open(json_path, "r", encoding="utf-8") as f:
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text = f.read()
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return cls(**json.loads(text))
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@dataclass
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class TrainerControl:
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"""
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A class that handles the :class:`~transformers.Trainer` control flow. This class is used by the
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:class:`~transformers.TrainerCallback` to activate some switches in the training loop.
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Args:
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should_training_stop (:obj:`bool`, `optional`, defaults to :obj:`False`):
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Whether or not the training should be interrupted.
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If :obj:`True`, this variable will not be set back to :obj:`False`. The training will just stop.
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should_epoch_stop (:obj:`bool`, `optional`, defaults to :obj:`False`):
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Whether or not the current epoch should be interrupted.
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If :obj:`True`, this variable will be set back to :obj:`False` at the beginning of the next epoch.
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should_save (:obj:`bool`, `optional`, defaults to :obj:`False`):
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Whether or not the model should be saved at this step.
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If :obj:`True`, this variable will be set back to :obj:`False` at the beginning of the next step.
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should_evaluate (:obj:`bool`, `optional`, defaults to :obj:`False`):
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Whether or not the model should be evaluated at this step.
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If :obj:`True`, this variable will be set back to :obj:`False` at the beginning of the next step.
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should_log (:obj:`bool`, `optional`, defaults to :obj:`False`):
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Whether or not the logs should be reported at this step.
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If :obj:`True`, this variable will be set back to :obj:`False` at the beginning of the next step.
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"""
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should_training_stop: bool = False
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should_epoch_stop: bool = False
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should_save: bool = False
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should_evaluate: bool = False
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should_log: bool = False
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def _new_training(self):
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""" Internal method that resets the variable for a new training. """
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self.should_training_stop = False
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def _new_epoch(self):
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""" Internal method that resets the variable for a new epoch. """
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self.should_epoch_stop = False
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def _new_step(self):
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""" Internal method that resets the variable for a new step. """
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self.should_save = False
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self.should_evaluate = False
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self.should_log = False
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class TrainerCallback:
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"""
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A class for objects that will inspect the state of the training loop at some events and take some decisions. At
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each of those events the following arguments are available:
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Args:
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args (:class:`~transformers.TrainingArguments`):
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The training arguments used to instantiate the :class:`~transformers.Trainer`.
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state (:class:`~transformers.TrainerState`):
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The current state of the :class:`~transformers.Trainer`.
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control (:class:`~transformers.TrainerControl`):
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The object that is returned to the :class:`~transformers.Trainer` and can be used to make some decisions.
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model (:class:`~transformers.PreTrainedModel` or :obj:`torch.nn.Module`):
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The model being trained.
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tokenizer (:class:`~transformers.PreTrainedTokenizer`):
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The tokenizer used for encoding the data.
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optimizer (:obj:`torch.optim.Optimizer`):
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The optimizer used for the training steps.
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lr_scheduler (:obj:`torch.optim.lr_scheduler.LambdaLR`):
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The scheduler used for setting the learning rate.
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train_dataloader (:obj:`torch.utils.data.dataloader.DataLoader`, `optional`):
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The current dataloader used for training.
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eval_dataloader (:obj:`torch.utils.data.dataloader.DataLoader`, `optional`):
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The current dataloader used for training.
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metrics (:obj:`Dict[str, float]`):
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The metrics computed by the last evaluation phase.
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Those are only accessible in the event :obj:`on_evaluate`.
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logs (:obj:`Dict[str, float]`):
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The values to log.
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Those are only accessible in the event :obj:`on_log`.
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The :obj:`control` object is the only one that can be changed by the callback, in which case the event that changes
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it should return the modified version.
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The argument :obj:`args`, :obj:`state` and :obj:`control` are positionals for all events, all the others are
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grouped in :obj:`kwargs`. You can unpack the ones you need in the signature of the event using them. As an example,
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see the code of the simple :class:`~transformer.PrinterCallback`.
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Example::
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class PrinterCallback(TrainerCallback):
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def on_log(self, args, state, control, logs=None, **kwargs):
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_ = logs.pop("total_flos", None)
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if state.is_local_process_zero:
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print(logs)
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"""
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def on_init_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called at the end of the initialization of the :class:`~transformers.Trainer`.
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"""
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pass
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def on_train_begin(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called at the beginning of training.
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"""
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pass
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def on_train_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called at the end of training.
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"""
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pass
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def on_epoch_begin(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called at the beginning of an epoch.
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"""
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pass
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def on_epoch_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called at the end of an epoch.
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"""
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pass
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def on_step_begin(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called at the beginning of a training step. If using gradient accumulation, one training step might take
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several inputs.
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"""
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pass
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def on_step_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called at the end of a training step. If using gradient accumulation, one training step might take
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several inputs.
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"""
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pass
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def on_evaluate(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called after an evaluation phase.
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"""
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pass
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def on_save(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called after a checkpoint save.
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"""
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pass
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def on_log(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called after logging the last logs.
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"""
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pass
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def on_prediction_step(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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"""
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Event called after a prediction step.
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"""
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pass
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class CallbackHandler(TrainerCallback):
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""" Internal class that just calls the list of callbacks in order. """
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def __init__(self, callbacks, model, tokenizer, optimizer, lr_scheduler):
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self.callbacks = []
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for cb in callbacks:
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self.add_callback(cb)
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self.model = model
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self.tokenizer = tokenizer
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self.optimizer = optimizer
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self.lr_scheduler = lr_scheduler
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self.train_dataloader = None
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self.eval_dataloader = None
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if not any(isinstance(cb, DefaultFlowCallback) for cb in self.callbacks):
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logger.warn(
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"The Trainer will not work properly if you don't have a `DefaultFlowCallback` in its callbacks. You\n"
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+ "should add one before training with `trainer.add_callback(DefaultFlowCallback). The current list of"
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+ "callbacks is\n:"
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+ self.callback_list
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)
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def add_callback(self, callback):
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cb = callback() if isinstance(callback, type) else callback
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cb_class = callback if isinstance(callback, type) else callback.__class__
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if cb_class in [c.__class__ for c in self.callbacks]:
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logger.warn(
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f"You are adding a {cb_class} to the callbacks of this Trainer, but there is already one. The current"
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+ "list of callbacks is\n:"
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+ self.callback_list
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)
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self.callbacks.append(cb)
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def pop_callback(self, callback):
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if isinstance(callback, type):
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for cb in self.callbacks:
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if isinstance(cb, callback):
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self.callbacks.remove(cb)
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return cb
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else:
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for cb in self.callbacks:
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if cb == callback:
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self.callbacks.remove(cb)
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return cb
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def remove_callback(self, callback):
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if isinstance(callback, type):
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for cb in self.callbacks:
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if isinstance(cb, callback):
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self.callbacks.remove(cb)
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return
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else:
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self.callbacks.remove(callback)
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@property
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def callback_list(self):
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return "\n".join(cb.__class__.__name__ for cb in self.callbacks)
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def on_init_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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return self.call_event("on_init_end", args, state, control)
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def on_train_begin(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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control.should_training_stop = False
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return self.call_event("on_train_begin", args, state, control)
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def on_train_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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return self.call_event("on_train_end", args, state, control)
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def on_epoch_begin(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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control.should_epoch_stop = False
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return self.call_event("on_epoch_begin", args, state, control)
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def on_epoch_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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return self.call_event("on_epoch_end", args, state, control)
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def on_step_begin(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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control.should_log = False
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control.should_evaluate = False
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control.should_save = False
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return self.call_event("on_step_begin", args, state, control)
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def on_step_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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return self.call_event("on_step_end", args, state, control)
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def on_evaluate(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, metrics):
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control.should_evaluate = False
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return self.call_event("on_evaluate", args, state, control, metrics=metrics)
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def on_save(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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control.should_save = False
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return self.call_event("on_save", args, state, control)
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def on_log(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, logs):
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control.should_log = False
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return self.call_event("on_log", args, state, control, logs=logs)
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def on_prediction_step(self, args: TrainingArguments, state: TrainerState, control: TrainerControl):
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return self.call_event("on_prediction_step", args, state, control)
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def call_event(self, event, args, state, control, **kwargs):
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for callback in self.callbacks:
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result = getattr(callback, event)(
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args,
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state,
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control,
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model=self.model,
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tokenizer=self.tokenizer,
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optimizer=self.optimizer,
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lr_scheduler=self.lr_scheduler,
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train_dataloader=self.train_dataloader,
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eval_dataloader=self.eval_dataloader,
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**kwargs,
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)
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# A Callback can skip the return of `control` if it doesn't change it.
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if result is not None:
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control = result
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return control
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class DefaultFlowCallback(TrainerCallback):
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"""
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A :class:`~transformers.TrainerCallback` that handles the default flow of the training loop for logs, evaluation
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and checkpoints.
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"""
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def on_step_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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# Log
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if state.global_step == 1 and args.logging_first_step:
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control.should_log = True
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if (
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args.logging_strategy == IntervalStrategy.STEPS
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and args.logging_steps > 0
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and state.global_step % args.logging_steps == 0
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):
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control.should_log = True
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# Evaluate
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if args.evaluation_strategy == IntervalStrategy.STEPS and state.global_step % args.eval_steps == 0:
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control.should_evaluate = True
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if args.load_best_model_at_end:
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control.should_save = True
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# Save
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if (
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not args.load_best_model_at_end
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and args.save_strategy == IntervalStrategy.STEPS
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and args.save_steps > 0
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and state.global_step % args.save_steps == 0
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):
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control.should_save = True
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# End training
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if state.global_step >= state.max_steps:
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control.should_training_stop = True
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return control
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def on_epoch_end(self, args: TrainingArguments, state: TrainerState, control: TrainerControl, **kwargs):
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# Log
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if args.logging_strategy == IntervalStrategy.EPOCH:
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control.should_log = True
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# Evaluate
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if args.evaluation_strategy == IntervalStrategy.EPOCH:
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control.should_evaluate = True
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if args.load_best_model_at_end:
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control.should_save = True
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# Save
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if args.save_strategy == IntervalStrategy.EPOCH:
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control.should_save = True
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return control
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class ProgressCallback(TrainerCallback):
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"""
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A :class:`~transformers.TrainerCallback` that displays the progress of training or evaluation.
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"""
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def __init__(self):
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self.training_bar = None
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self.prediction_bar = None
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def on_train_begin(self, args, state, control, **kwargs):
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if state.is_local_process_zero:
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self.training_bar = tqdm(total=state.max_steps)
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self.current_step = 0
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def on_step_end(self, args, state, control, **kwargs):
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if state.is_local_process_zero:
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self.training_bar.update(state.global_step - self.current_step)
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self.current_step = state.global_step
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def on_prediction_step(self, args, state, control, eval_dataloader=None, **kwargs):
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if state.is_local_process_zero:
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if self.prediction_bar is None:
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self.prediction_bar = tqdm(total=len(eval_dataloader), leave=self.training_bar is None)
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self.prediction_bar.update(1)
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def on_evaluate(self, args, state, control, **kwargs):
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if state.is_local_process_zero:
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if self.prediction_bar is not None:
|
|
self.prediction_bar.close()
|
|
self.prediction_bar = None
|
|
|
|
def on_log(self, args, state, control, logs=None, **kwargs):
|
|
if state.is_local_process_zero and self.training_bar is not None:
|
|
_ = logs.pop("total_flos", None)
|
|
self.training_bar.write(str(logs))
|
|
|
|
def on_train_end(self, args, state, control, **kwargs):
|
|
if state.is_local_process_zero:
|
|
self.training_bar.close()
|
|
self.training_bar = None
|
|
|
|
|
|
class PrinterCallback(TrainerCallback):
|
|
"""
|
|
A bare :class:`~transformers.TrainerCallback` that just prints the logs.
|
|
"""
|
|
|
|
def on_log(self, args, state, control, logs=None, **kwargs):
|
|
_ = logs.pop("total_flos", None)
|
|
if state.is_local_process_zero:
|
|
print(logs)
|
|
|
|
|
|
class EarlyStoppingCallback(TrainerCallback):
|
|
"""
|
|
A :class:`~transformers.TrainerCallback` that handles early stopping.
|
|
|
|
Args:
|
|
early_stopping_patience (:obj:`int`):
|
|
Use with :obj:`metric_for_best_model` to stop training when the specified metric worsens for
|
|
:obj:`early_stopping_patience` evaluation calls.
|
|
early_stopping_threshold(:obj:`float`, `optional`):
|
|
Use with TrainingArguments :obj:`metric_for_best_model` and :obj:`early_stopping_patience` to denote how
|
|
much the specified metric must improve to satisfy early stopping conditions. `
|
|
|
|
This callback depends on :class:`~transformers.TrainingArguments` argument `load_best_model_at_end` functionality
|
|
to set best_metric in :class:`~transformers.TrainerState`.
|
|
"""
|
|
|
|
def __init__(self, early_stopping_patience: int = 1, early_stopping_threshold: Optional[float] = 0.0):
|
|
self.early_stopping_patience = early_stopping_patience
|
|
self.early_stopping_threshold = early_stopping_threshold
|
|
# early_stopping_patience_counter denotes the number of times validation metrics failed to improve.
|
|
self.early_stopping_patience_counter = 0
|
|
|
|
def check_metric_value(self, args, state, control, metric_value):
|
|
# best_metric is set by code for load_best_model
|
|
operator = np.greater if args.greater_is_better else np.less
|
|
if state.best_metric is None or (
|
|
operator(metric_value, state.best_metric)
|
|
and abs(metric_value - state.best_metric) > self.early_stopping_threshold
|
|
):
|
|
self.early_stopping_patience_counter = 0
|
|
else:
|
|
self.early_stopping_patience_counter += 1
|
|
|
|
def on_train_begin(self, args, state, control, **kwargs):
|
|
assert args.load_best_model_at_end, "EarlyStoppingCallback requires load_best_model_at_end = True"
|
|
assert (
|
|
args.metric_for_best_model is not None
|
|
), "EarlyStoppingCallback requires metric_for_best_model is defined"
|
|
assert (
|
|
args.evaluation_strategy != IntervalStrategy.NO
|
|
), "EarlyStoppingCallback requires IntervalStrategy of steps or epoch"
|
|
|
|
def on_evaluate(self, args, state, control, metrics, **kwargs):
|
|
metric_to_check = args.metric_for_best_model
|
|
if not metric_to_check.startswith("eval_"):
|
|
metric_to_check = f"eval_{metric_to_check}"
|
|
metric_value = metrics.get(metric_to_check)
|
|
|
|
if metric_value is None:
|
|
logger.warning(
|
|
f"early stopping required metric_for_best_model, but did not find {metric_to_check} so early stopping is disabled"
|
|
)
|
|
return
|
|
|
|
self.check_metric_value(args, state, control, metric_value)
|
|
if self.early_stopping_patience_counter >= self.early_stopping_patience:
|
|
control.should_training_stop = True
|