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transformers/docs/source/pt/accelerate.md
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2026-06-05 16:53:03 +08:00

5.1 KiB

Treinamento distribuído com o 🤗 Accelerate

O paralelismo surgiu como uma estratégia para treinar modelos grandes em hardware limitado e aumentar a velocidade de treinamento em várias órdens de magnitude. Na Hugging Face criamos a biblioteca 🤗 Accelerate para ajudar os usuários a treinar modelos 🤗 Transformers com qualquer configuração distribuída, seja em uma máquina com múltiplos GPUs ou em múltiplos GPUs distribuidos entre muitas máquinas. Neste tutorial, você irá aprender como personalizar seu laço de treinamento de PyTorch para poder treinar em ambientes distribuídos.

Configuração

De início, instale o 🤗 Accelerate:

pip install accelerate

Logo, devemos importar e criar um objeto Accelerator. O Accelerator detectará automáticamente a configuração distribuída disponível e inicializará todos os componentes necessários para o treinamento. Não há necessidade portanto de especificar o dispositivo onde deve colocar seu modelo.

>>> from accelerate import Accelerator

>>> accelerator = Accelerator()

Preparando a aceleração

Passe todos os objetos relevantes ao treinamento para o método prepare. Isto inclui os DataLoaders de treino e evaluação, um modelo e um otimizador:

>>> train_dataloader, eval_dataloader, model, optimizer = accelerator.prepare(
...     train_dataloader, eval_dataloader, model, optimizer
... )

Backward

Por último, substitua o loss.backward() padrão em seu laço de treinamento com o método backward do 🤗 Accelerate:

>>> for epoch in range(num_epochs):
...     for batch in train_dataloader:
...         outputs = model(**batch)
...         loss = outputs.loss
...         accelerator.backward(loss)

...         optimizer.step()
...         lr_scheduler.step()
...         optimizer.zero_grad()
...         progress_bar.update(1)

Como se poder ver no seguinte código, só precisará adicionar quatro linhas de código ao seu laço de treinamento para habilitar o treinamento distribuído!

+ from accelerate import Accelerator
  from transformers import AdamW, AutoModelForSequenceClassification, get_scheduler

+ accelerator = Accelerator()

  model = AutoModelForSequenceClassification.from_pretrained(checkpoint, num_labels=2)
  optimizer = AdamW(model.parameters(), lr=3e-5)

- device = torch.device("cuda") if torch.cuda.is_available() else torch.device("cpu")
- model.to(device)

+ train_dataloader, eval_dataloader, model, optimizer = accelerator.prepare(
+     train_dataloader, eval_dataloader, model, optimizer
+ )

  num_epochs = 3
  num_training_steps = num_epochs * len(train_dataloader)
  lr_scheduler = get_scheduler(
      "linear",
      optimizer=optimizer,
      num_warmup_steps=0,
      num_training_steps=num_training_steps
  )

  progress_bar = tqdm(range(num_training_steps))

  model.train()
  for epoch in range(num_epochs):
      for batch in train_dataloader:
-         batch = {k: v.to(device) for k, v in batch.items()}
          outputs = model(**batch)
          loss = outputs.loss
-         loss.backward()
+         accelerator.backward(loss)

          optimizer.step()
          lr_scheduler.step()
          optimizer.zero_grad()
          progress_bar.update(1)

Treinamento

Quando tiver adicionado as linhas de código relevantes, inicie o treinamento por um script ou notebook como o Colab.

Treinamento em um Script

Se estiver rodando seu treinamento em um Script, execute o seguinte comando para criar e guardar um arquivo de configuração:

accelerate config

Comece o treinamento com:

accelerate launch train.py

Treinamento em um Notebook

O 🤗 Accelerate pode rodar em um notebook, por exemplo, se estiver planejando usar as TPUs do Google Colab. Encapsule o código responsável pelo treinamento de uma função e passe-o ao notebook_launcher:

>>> from accelerate import notebook_launcher

>>> notebook_launcher(training_function)

Para obter mais informações sobre o 🤗 Accelerate e suas numerosas funções, consulte a documentación.