I am finding when working with larger datasets that the kernel may die, something I also experiance on my local machine. Sometimes it comes back and sometimes not. So even the Tree panel won't react to terminate a errant Kernel. EG "restart" does not work and the server itself seems to die. So the tree view won't respond or refresh. On my local machine I just kill the terminal instance and start over.

What is the "proper" way to restart everything?

FWIW the instance seems pegged at 150% cpu utilization atm

Related: is there any way to allow long running stuff to work? I am trying to use a report generator (pandas-profiling) on a 2mm record dataset.. Works on my local..


found it here: https://cloud.google.com/datalab/getting-started

FWIW These commands can be used in the new command line shell on the Cloud console page.see https://cloud.google.com/shell/docs/ .. Without the sdk on your machine.. You need to modify the commands slightly since you will be logged into your project already,

Stopping/starting VM instances

You may want to stop a Cloud Datalab managed VM instance to avoid incurring ongoing charges. To stop a Cloud Datalab managed machine instance, go to a command prompt, and run:

$ gcloud auth login
$ gcloud config set project <YOUR PROJECT ID>
$ gcloud preview app versions stop main

After confirming that you want to continue, wait for the command to complete, and make sure that the output indicates that the version has stopped. If you used a non-default instance name when deploying, please use that name instead of "main" in the stop command, above (and in the start command, below). For restarting a stopped instance, run:

$ gcloud auth login
$ gcloud config set project <YOUR PROJECT ID>
$ gcloud preview app versions start main
| 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.