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deepspeed报错

Open wq343580510 opened this issue 1 year ago • 0 comments

Variable._execution_engine.run_backward(  # Calls into the C++ engine to run the backward pass

File "/root/anaconda3/envs/python3.10/lib/python3.10/site-packages/torch/autograd/function.py", line 274, in apply return user_fn(self, *args) File "/root/anaconda3/envs/python3.10/lib/python3.10/site-packages/torch/utils/checkpoint.py", line 157, in backward torch.autograd.backward(outputs_with_grad, args_with_grad) File "/root/anaconda3/envs/python3.10/lib/python3.10/site-packages/torch/autograd/init.py", line 200, in backward Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass RuntimeError: Expected to mark a variable ready only once. This error is caused by one of the following reasons: 1) Use of a module parameter outside the forward function. Please make sure model parameters are not shared across multiple concurrent forward-backward passes. or try to use _set_static_graph() as a workaround if this module graph does not change during training loop.2) Reused parameters in multiple reentrant backward passes. For example, if you use multiple checkpoint functions to wrap the same part of your model, it would result in the same set of parameters been used by different reentrant backward passes multiple times, and hence marking a variable ready multiple times. DDP does not support such use cases in default. You can try to use _set_static_graph() as a workaround if your module graph does not change over iterations. Parameter at index 55 has been marked as ready twice. This means that multiple autograd engine hooks have fired for this particular parameter during this iteration. You can set the environment variable TORCH_DISTRIBUTED_DEBUG to either INFO or DETAIL to print parameter names for further debugging. wandb: You can sync this run to the cloud by running:

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wq343580510 avatar Nov 13 '23 13:11 wq343580510