transformers/docs/source/zh/main_classes/callback.md

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# Callbacks
Callbacks可以用来自定义PyTorch [Trainer]中训练循环行为的对象此功能尚未在TensorFlow中实现该对象可以检查训练循环状态用于进度报告、在TensorBoard或其他ML平台上记录日志等并做出决策例如提前停止
Callbacks是“只读”的代码片段除了它们返回的[TrainerControl]对象外,它们不能更改训练循环中的任何内容。对于需要更改训练循环的自定义,您应该继承[Trainer]并重载您需要的方法(有关示例,请参见[trainer](trainer))。
默认情况下,`TrainingArguments.report_to` 设置为"all",然后[Trainer]将使用以下callbacks。
- [`DefaultFlowCallback`],它处理默认的日志记录、保存和评估行为
- [`PrinterCallback`] 或 [`ProgressCallback`],用于显示进度和打印日志(如果通过[`TrainingArguments`]停用tqdm则使用第一个函数否则使用第二个
- [`~integrations.TensorBoardCallback`]如果TensorBoard可访问通过PyTorch版本 >= 1.4 或者 tensorboardX
- [`~integrations.WandbCallback`],如果安装了[wandb](https://www.wandb.com/)。
- [`~integrations.CometCallback`],如果安装了[comet_ml](https://www.comet.ml/site/)。
- [`~integrations.MLflowCallback`],如果安装了[mlflow](https://www.mlflow.org/)。
- [`~integrations.NeptuneCallback`],如果安装了[neptune](https://neptune.ai/)。
- [`~integrations.AzureMLCallback`],如果安装了[azureml-sdk](https://pypi.org/project/azureml-sdk/)。
- [`~integrations.CodeCarbonCallback`],如果安装了[codecarbon](https://pypi.org/project/codecarbon/)。
- [`~integrations.ClearMLCallback`],如果安装了[clearml](https://github.com/allegroai/clearml)。
- [`~integrations.DagsHubCallback`],如果安装了[dagshub](https://dagshub.com/)。
- [`~integrations.FlyteCallback`],如果安装了[flyte](https://flyte.org/)。
- [`~integrations.DVCLiveCallback`],如果安装了[dvclive](https://dvc.org/doc/dvclive)。
如果安装了一个软件包,但您不希望使用相关的集成,您可以将 `TrainingArguments.report_to` 更改为仅包含您想要使用的集成的列表(例如 `["azure_ml", "wandb"]`)。
实现callbacks的主要类是[`TrainerCallback`]。它获取用于实例化[`Trainer`]的[`TrainingArguments`],可以通过[`TrainerState`]访问该Trainer的内部状态并可以通过[`TrainerControl`]对训练循环执行一些操作。
## 可用的Callbacks
这里是库里可用[`TrainerCallback`]的列表:
[[autodoc]] integrations.CometCallback
- setup
[[autodoc]] DefaultFlowCallback
[[autodoc]] PrinterCallback
[[autodoc]] ProgressCallback
[[autodoc]] EarlyStoppingCallback
[[autodoc]] integrations.TensorBoardCallback
[[autodoc]] integrations.WandbCallback
- setup
[[autodoc]] integrations.MLflowCallback
- setup
[[autodoc]] integrations.AzureMLCallback
[[autodoc]] integrations.CodeCarbonCallback
[[autodoc]] integrations.NeptuneCallback
[[autodoc]] integrations.ClearMLCallback
[[autodoc]] integrations.DagsHubCallback
[[autodoc]] integrations.FlyteCallback
[[autodoc]] integrations.DVCLiveCallback
- setup
## TrainerCallback
[[autodoc]] TrainerCallback
以下是如何使用PyTorch注册自定义callback的示例
[`Trainer`]:
```python
class MyCallback(TrainerCallback):
"A callback that prints a message at the beginning of training"
def on_train_begin(self, args, state, control, **kwargs):
print("Starting training")
trainer = Trainer(
model,
args,
train_dataset=train_dataset,
eval_dataset=eval_dataset,
callbacks=[MyCallback], # We can either pass the callback class this way or an instance of it (MyCallback())
)
```
注册callback的另一种方式是调用 `trainer.add_callback()`,如下所示:
```python
trainer = Trainer(...)
trainer.add_callback(MyCallback)
# Alternatively, we can pass an instance of the callback class
trainer.add_callback(MyCallback())
```
## TrainerState
[[autodoc]] TrainerState
## TrainerControl
[[autodoc]] TrainerControl