kubeflow / pytorch-operator

PyTorch on Kubernetes
Apache License 2.0
306 stars 143 forks source link

Updated the Docker Image with the Latest one that uses GPU as of PR #255 #256

Open MATRIX4284 opened 4 years ago

MATRIX4284 commented 4 years ago

Updated the docker image from pytorch/pytorch:1.0-cuda10.0-cudnn7-runtime to kubeflow/pytorch:1.0-cuda10.0-cudnn7-runtime as the pytorch/pytorch:1.0-cuda10.0-cudnn7-runtime is not GPU compatible.Hence using the Docker Image of PR #255.

k8s-ci-robot commented 4 years ago

[APPROVALNOTIFIER] This PR is NOT APPROVED

This pull-request has been approved by: To complete the pull request process, please assign gaocegege You can assign the PR to them by writing /assign @gaocegege in a comment when ready.

The full list of commands accepted by this bot can be found here.

Needs approval from an approver in each of these files: - **[OWNERS](https://github.com/kubeflow/pytorch-operator/blob/master/OWNERS)** Approvers can indicate their approval by writing `/approve` in a comment Approvers can cancel approval by writing `/approve cancel` in a comment
k8s-ci-robot commented 4 years ago

Hi @MATRIX4284. Thanks for your PR.

I'm waiting for a kubeflow member to verify that this patch is reasonable to test. If it is, they should reply with /ok-to-test on its own line. Until that is done, I will not automatically test new commits in this PR, but the usual testing commands by org members will still work. Regular contributors should join the org to skip this step.

Once the patch is verified, the new status will be reflected by the ok-to-test label.

I understand the commands that are listed here.

Instructions for interacting with me using PR comments are available [here](https://git.k8s.io/community/contributors/guide/pull-requests.md). If you have questions or suggestions related to my behavior, please file an issue against the [kubernetes/test-infra](https://github.com/kubernetes/test-infra/issues/new?title=Prow%20issue:) repository.
coveralls commented 4 years ago

Coverage Status

Coverage remained the same at 22.97% when pulling 246b58eabf45f0aa25c296ddb8f2251465a0e3f0 on MATRIX4284:patch-1 into 047cf0f41e68e030158f532017a226c18827a660 on kubeflow:master.