9

I have access to Tesla K20c, I am running ResNet50 on CIFAR10 dataset... Then I get the error as:
THCudaCheck FAIL file=/opt/conda/conda-bld/pytorch_1524584710464/work/aten/src/THC/generated/../generic/THCTensorMathPointwise.cu line=265 error=59 : device-side assert triggered
Traceback (most recent call last):
File "main.py", line 109, in <module>
train(loader_train, model, criterion, optimizer)
File "main.py", line 54, in train optimizer.step()
File "/usr/local/anaconda35/lib/python3.6/site-packages/torch/optim/sgd.py", line 93, in step
d_p.add_(weight_decay, p.data) RuntimeError: cuda runtime error (59) : device-side assert triggered at /opt/conda/conda-bld/pytorch_1524584710464/work/aten/src/THC/generated/../generic/THCTensorMathPointwise.cu:265
How to resolve this error

  • 1
    try running your script with CUDA_LAUNCH_BLOCKING=1 python your_script.py to get a more accuracte stack trace. – McLawrence Aug 5 '18 at 7:16
  • after running with CUDA_LAUNC...=1, I get the error as /opt/conda/.../THCUNN/ClassNLLCriterion.cu:105: void cunn_ClassNLLCriterion_updateOutput_kernel(Dtype *, Dtype *, Dtype *, long *, Dtype *, int, int, int, int, long) [with Dtype = float, Acctype = float]: block: [0,0,0], thread: [0,0,0] Assertion t >= 0 && t < n_classes failed. This would come around 20 times. then the Traceback follows: RuntimeError: cuda runtime error (59) : device-side assert triggered at /opt/conda/conda-bld/pytorch_1524580978845/work/aten/src/THCUNN/generic/ClassNLLCriterion.cu:116 how to resolve? – saichand Aug 5 '18 at 8:00
  • 1
    This is an error with your target labels: t >= 0 && t < n_classes. print your labels and make sure that they are positive and smaller than the number of outputs of your last layer. – McLawrence Aug 5 '18 at 8:04
  • n_classes should be same as the output of the last layer.. Is it right? – saichand Aug 5 '18 at 8:11
  • That's right. Your targets likely assume to high values. – McLawrence Aug 5 '18 at 8:16
8

In general, when encountering cuda runtine errors, it is advisable to run your program again using the CUDA_LAUNCH_BLOCKING=1 flag to obtain an accurate stack trace.

In your specific case, the targets of your data were too high (or low) for the specified number of classes.

8

I have encountered this problem several times. And I find it to be an index issue. For example, if your ground truth label starts at 1: target = [1,2,3,4,5], then you should subtract 1 for every label, change it to: [0,1,2,3,4]. This solves my problem every time.

  • I can confirm, this was also the cause of error in my case. For example, valid text labels have been converted to 0..n-1 (n being the number of classes). However, NaN values were converted to -1, which sent it off the rails. – Christian Mar 21 at 1:13
  • @Rainy can you elaborate on "ground truth label starts at 1". What do you mean by that? I gather that the labels are 1 to 5 and to overcome the error the first value in the error should be zero. Am I right? – Kunj Mehta Oct 2 at 14:55

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