1回答
- 新しい順
- 投票が多い順
- コメントが多い順
0
This is being tracked in the GitHub issue linked below.
A possible workaround is to use a regular Notebook Instance instead of a Studio Notebook Instance. On a regular Notebook Instance of the same size (ml.g4dn.xlarge), /dev/shm is 7.7G
df -h | grep -E 'shm|File'
Filesystem Size Used Avail Use% Mounted on
tmpfs 7.7G 0 7.7G 0% /dev/shm
関連するコンテンツ
- AWS公式更新しました 1年前
- AWS公式更新しました 6ヶ月前
- AWS公式更新しました 1年前
Are you using PyTorch with the SageMaker Python SDK (as described here: https://sagemaker.readthedocs.io/en/stable/frameworks/pytorch/using_pytorch.html) or are you bringing your own code to the SageMaker environment (as described here: https://sagemaker.readthedocs.io/en/stable/frameworks/pytorch/using_pytorch.html#bring-your-own-model)?