I use tensors to do transformation then I save it in a list. Later, I will make it a dataset using Dataset, then finally DataLoader to train my model. To do it, I can simply use:

l = [tensor1, tensor2, tensor3,...]
dataset = Dataset.TensorDataset(l)
dataloader = DataLoader(dataset)

I wonder what is the best practice doing so, to avoid RAM overflow if the size of l grows? Can something like Iterator avoid it?

  • Do you know the logic behind each element, eg. can you generate the data with each __getitem__ call? If so, you can exchange the memory overhead to a bit of computing. There are few reasons to think of RAM use before it really comes a problem.
    – vahvero
    Commented Aug 2, 2021 at 6:45
  • I get each element from another DataLoader, do some transformations, then the final result is what I want to save it to a list. I plan to save all the tensors returned from the DataLoader in the list. The data I am using is CIFAR-100, but soon it will grow to ImageNet. Commented Aug 2, 2021 at 8:18
  • I would not create a new dataset in this case. Use the original dataloader and do transformations batches received from that loader or inherit that loader and add your own transformations to it.
    – vahvero
    Commented Aug 2, 2021 at 8:31
  • That's what I am doing, but now I want to save the whole transformed tensors until the end, then train the model, instead of training every step. Commented Aug 2, 2021 at 8:46

1 Answer 1


Save tensors

for idx, tensor in enumerate(dataloader0):
    torch.save(tensor, f"{my_folder}/tensor{idx}.pt")

Create dataset

class FolderDataset(Dataset):
   def __init__(self, folder):
       self.files = os.listdir(folder)
       self.folder = folder
   def __len__(self):
       return len(self.files)
   def __getitem__(self, idx):
       return torch.load(f"{self.folder}/{self.files[idx]}")

And then you can implement your own dataloader. If you can't hold the whole dataset in memory, some file system loading is required.

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