Advanced Customizations
This guide has information about advanced customizations for Kubeflow.
Persistent Disks
Frequently data scientists require a POSIX compliant filesystem. For example, most HDF5 libraries require POSIX and don’t work with an object store like GCS or S3. Also, when working with teams you might want a shared POSIX filesystem to be mounted into your notebook environments so that data scientists can work collaboratively on the same datasets.
You can provision your own NFS shares and create Persistent Volume and Persistent Volume Claim objects and then attach them to your Jupyter notebook server via the disks flag.
Configure Jupyter to use the disks
ks param set jupyter disks ${PVC_CLAIM1},${PVC_CLAIM2}
Deploy the environment
ks apply cloud
Start Jupyter
You should see your NFS volumes mounted as /mnt/${DISK_NAME}
In a Jupyter cell you can run
!df
You should see output like the following
https://github.com/jlewi/deepvariant_on_k8s
Filesystem 1K-blocks Used Available Use% Mounted on
overlay 98884832 8336440 90532008 9% /
tmpfs 15444244 0 15444244 0% /dev
tmpfs 15444244 0 15444244 0% /sys/fs/cgroup
10.11.254.34:/export/pvc-d414c86a-e0db-11e7-a056-42010af00205 1055841280 77824 1002059776 1% /mnt/jlewi-kubeflow-test1
10.11.242.82:/export/pvc-33f0a5b3-e0dc-11e7-a056-42010af00205 1055841280 77824 1002059776 1% /mnt/jlewi-kubeflow-test2
/dev/sda1 98884832 8336440 90532008 9% /etc/hosts
shm 65536 0 65536 0% /dev/shm
tmpfs 15444244 0 15444244 0% /sys/firmware
- Here
jlewi-kubeflow-test1
andjlewi-kubeflow-test2
are the names of the PVCs.
Feedback
Was this page helpful?
Glad to hear it! Please tell us how we can improve.
Sorry to hear that. Please tell us how we can improve.