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

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.

| improve this answer | |

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.

| improve this answer | |
  • 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 '19 at 1:13
  • 1
    @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 '19 at 14:55
  • @KunjMehta, Not just first value should be zero. Class index should start from zero. e.g. for 6 classes, index values should be from 0 to 5. – Chandra Jan 20 at 4:22

I encountered this error when running BertModel.from_pretrained('bert-base-uncased'). I found the solution by moving to the CPU when the error message changed to 'IndexError: index out of range in self'. Which led me to this post. The solution was to truncate sentences to length 512.

| improve this answer | |

This error can be made more elaborative if you switch to CPU first. Once you switch to CPU, it will show the exact error, which is most probably related to the indexing problem, which is IndexError: Target 2 is out of bounds in my case and could be related in yours case. The issue is "How many classes are you currently using and what is the shape of your output?", you can find the classes like this


which in my case gave me 2 and 0, the problem is caused by missing 1 index, so a quick hack is to quickly replace all 2s with 1s , which can be done through this code:

train_['label'] =train_['label'].replace(2,1)

then you run the same code and see the results, it should work

class NDataset(torch.utils.data.Dataset):
    def __init__(self, encodings, labels):
        self.encodings = encodings
        self.labels = labels

    def __getitem__(self, idx):
        item = {key: torch.tensor(val[idx]) for key, val in self.encodings.items()}
        item['labels'] = torch.tensor(self.labels[idx])
        return item

    def __len__(self):
        return len(self.labels)

train_dataset = NDataset(train_encodings, train_labels)
val_dataset = NDataset(val_encodings, val_labels)
test_dataset = NDataset(test_encodings, test_labels)
| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.