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Description
Description
PyTorch has changed the default value for the weights_only argument in torch.load. This causes an error using the dataloaders.
Error Trace
Traceback (most recent call last):
File "/home/scotts/shapeworks/ShapeWorks-v6.5.1-linux/Examples/Python/RunUseCase.py", line 97, in <module>
module.Run_Pipeline(args)
File "/home/scotts/shapeworks/ShapeWorks-v6.5.1-linux/Examples/Python/deep_ssm.py", line 459, in Run_Pipeline
predicted_val_world_particles = DeepSSMUtils.testDeepSSM(
File "/home/scotts/miniforge3/envs/shapeworks/lib/python3.9/site-packages/DeepSSMUtils/__init__.py", line 51, in testDeepSSM
predicted_particle_files = eval.test(config_file, loader)
File "/home/scotts/miniforge3/envs/shapeworks/lib/python3.9/site-packages/DeepSSMUtils/eval.py", line 38, in test
test_loader = torch.load(loader_dir + loader)
File "/home/scotts/miniforge3/envs/shapeworks/lib/python3.9/site-packages/torch/serialization.py", line 1470, in load
raise pickle.UnpicklingError(_get_wo_message(str(e))) from None
_pickle.UnpicklingError: Weights only load failed. This file can still be loaded, to do so you have two options, do those steps only if you trust the source of the checkpoint.
(1) In PyTorch 2.6, we changed the default value of the `weights_only` argument in `torch.load` from `False` to `True`. Re-running `torch.load` with `weights_only` set to `False` will likely succeed, but it can result in arbitrary code execution. Do it only if you got the file from a trusted source.
(2) Alternatively, to load with `weights_only=True` please check the recommended steps in the following error message.
WeightsUnpickler error: Unsupported global: GLOBAL torch.utils.data.dataloader.DataLoader was not an allowed global by default. Please use `torch.serialization.add_safe_globals([DataLoader])` or the `torch.serialization.safe_globals([DataLoader])` context manager to allowlist this global if you trust this class/function.
Check the documentation of torch.load to learn more about types accepted by default with weights_only https://pytorch.org/docs/stable/generated/torch.load.html.
A Fix
I chose option (1) in from the error trace recommendation. Adding weights_only=False
to all occurrences of torch.load
in DeepSSMUtils.eval, DeepSSMUtils.model, and DeepSSMUtils.trainer resolved the issue. As PyTorch warns, this will expose a vulnerability to execute arbitrary code though.
I'd be happy to submit this simple pull request, but another solution may be more ideal.
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