Convert PyTorch code to Fabric

Here are five easy steps to let Fabric scale your PyTorch models.

Step 1: Create the Fabric object at the beginning of your training code.

from lightning.fabric import Fabric

fabric = Fabric()

Step 2: Call launch() if you intend to use multiple devices (e.g., multi-GPU).

fabric.launch()

Step 3: Call setup() on each model and optimizer pair and setup_dataloaders() on all your data loaders.

model, optimizer = fabric.setup(model, optimizer)
dataloader = fabric.setup_dataloaders(dataloader)

Step 4: Remove all .to and .cuda calls since Fabric will take care of it.

- model.to(device)
- batch.to(device)

Step 5: Replace loss.backward() by fabric.backward(loss).

- loss.backward()
+ fabric.backward(loss)

These are all code changes required to prepare your script for Fabric. You can now simply run from the terminal:

python path/to/your/script.py

All steps combined, this is how your code will change:

  import torch
  from lightning.pytorch.demos import WikiText2, Transformer
+ import lightning as L

- device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
+ fabric = L.Fabric(accelerator="cuda", devices=8, strategy="ddp")
+ fabric.launch()

  dataset = WikiText2()
  dataloader = torch.utils.data.DataLoader(dataset)
  model = Transformer(vocab_size=dataset.vocab_size)
  optimizer = torch.optim.SGD(model.parameters(), lr=0.1)

- model = model.to(device)
+ model, optimizer = fabric.setup(model, optimizer)
+ dataloader = fabric.setup_dataloaders(dataloader)

  model.train()
  for epoch in range(20):
      for batch in dataloader:
          input, target = batch
-         input, target = input.to(device), target.to(device)
          optimizer.zero_grad()
          output = model(input, target)
          loss = torch.nn.functional.nll_loss(output, target.view(-1))
-         loss.backward()
+         fabric.backward(loss)
          optimizer.step()

That’s it! You can now train on any device at any scale with a switch of a flag. Check out our before-and-after example for image classification and many more examples that use Fabric.


Next steps