Comments (2)
Thanks for the report! This doesn't look great, i'm guessing something happened during serialization of the dataset
from pytorch.
It seems when using DataLoader with multiple workers, tensors created in the dataset's init method are not shared between worker processes, leading to unexpected behavior. To avoid this, create tensors outside the dataset's init method and pass them as arguments to ensure proper sharing.
from pytorch.
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from pytorch.