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python - Pytorch: Can't call numpy() on Variable that requires grad. Use var.detach().numpy() instead

I have an error in my code which is not getting fixed any which way I try.

The Error is simple, I return a value:

torch.exp(-LL_total/T_total)

and get the error later in the pipeline:

RuntimeError: Can't call numpy() on Variable that requires grad. Use var.detach().numpy() instead.

Solutions such as cpu().detach().numpy() give the same error.

How could I fix it? Thanks.

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1 Answer

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?Error reproduced

import torch

tensor1 = torch.tensor([1.0,2.0],requires_grad=True)

print(tensor1)
print(type(tensor1))

tensor1 = tensor1.numpy()

print(tensor1)
print(type(tensor1))

which leads to the exact same error for the line tensor1 = tensor1.numpy():

tensor([1., 2.], requires_grad=True)
<class 'torch.Tensor'>
Traceback (most recent call last):
  File "/home/badScript.py", line 8, in <module>
    tensor1 = tensor1.numpy()
RuntimeError: Can't call numpy() on Variable that requires grad. Use var.detach().numpy() instead.

Process finished with exit code 1

Generic solution

this was suggested to you in your error message, just replace var with your variable name

import torch

tensor1 = torch.tensor([1.0,2.0],requires_grad=True)

print(tensor1)
print(type(tensor1))

tensor1 = tensor1.detach().numpy()

print(tensor1)
print(type(tensor1))

which returns as expected

tensor([1., 2.], requires_grad=True)
<class 'torch.Tensor'>
[1. 2.]
<class 'numpy.ndarray'>

Process finished with exit code 0

Some explanation

You need to convert your tensor to another tensor that isn't requiring a gradient in addition to its actual value definition. This other tensor can be converted to a numpy array. Cf. this discuss.pytorch post. (I think, more precisely, that one needs to do that in order to get the actual tensor out of its pytorch Variable wrapper, cf. this other discuss.pytorch post).


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