'Pytorch Operation to detect NaNs
Is there a Pytorch-internal procedure to detect NaNs in Tensors? Tensorflow has the tf.is_nan and the tf.check_numerics operations ... Does Pytorch have something similar, somewhere? I could not find something like this in the docs...
I am looking specifically for a Pytorch internal routine, since I would like this to happen on the GPU as well as on the CPU. This excludes numpy - based solutions (like np.isnan(sometensor.numpy()).any()) ...
Solution 1:[1]
You can always leverage the fact that nan != nan:
>>> x = torch.tensor([1, 2, np.nan])
tensor([ 1., 2., nan.])
>>> x != x
tensor([ 0, 0, 1], dtype=torch.uint8)
With pytorch 0.4 there is also torch.isnan:
>>> torch.isnan(x)
tensor([ 0, 0, 1], dtype=torch.uint8)
Solution 2:[2]
Starting with PyTorch 0.4.1 there is the detect_anomaly context manager, which automatically inserts assertions equivalent to assert not torch.isnan(grad).any() between all steps of backward propagation. It's very useful when issues arise during backward pass.
Solution 3:[3]
As suggested by @cleros in the comment on @nemo's answer, you can get this as a boolean using the any() operator:
torch.isnan(your_tensor).any()
Solution 4:[4]
If you want to call it on a tensor directly:
import torch
x = torch.randn(5, 4)
print(x.isnan().any())
out:
import torch
x = torch.randn(5, 4)
print(x.isnan().any())
tensor(False)
Solution 5:[5]
True if any value is nan:
torch.any(tensor.isnan())
True if all is nan:
torch.all(tensor.isnan())
Sources
This article follows the attribution requirements of Stack Overflow and is licensed under CC BY-SA 3.0.
Source: Stack Overflow
| Solution | Source |
|---|---|
| Solution 1 | |
| Solution 2 | Jatentaki |
| Solution 3 | Jeremy Caney |
| Solution 4 | Charlie Parker |
| Solution 5 | joydeba |
