Our Framework introduces the Dataset CRD which is a pointer to existing S3 and NFS data sources. It includes the necessary logic to map these Datasets into Persistent Volume Claims and ConfigMaps which users can reference in their pods, letting them focus on the workload development and not on configuring/mounting/tuning the data access. Thanks to Container Storage Interface it is extensible to support additional data sources in the future.
A Kubernetes Framework to provide easy access to S3 and NFS Datasets within pods. Orchestrates the provisioning of Persistent Volume Claims and ConfigMaps needed for each Dataset. Find more details in our FAQ
In order to quickly deploy DLF, based on your environment execute one of the following commands:
- Kubernetes/Minikube
kubectl apply -f https://raw.githubusercontent.com/datashim-io/datashim/master/release-tools/manifests/dlf.yaml
- Kubernetes on IBM Cloud
kubectl apply -f https://raw.githubusercontent.com/datashim-io/datashim/master/release-tools/manifests/dlf-ibm-k8s.yaml
- Openshift
kubectl apply -f https://raw.githubusercontent.com/datashim-io/datashim/master/release-tools/manifests/dlf-oc.yaml
- Openshift on IBM Cloud
kubectl apply -f https://raw.githubusercontent.com/datashim-io/datashim/master/release-tools/manifests/dlf-ibm-oc.yaml
Wait for all the pods to be ready :)
kubectl wait --for=condition=ready pods -l app.kubernetes.io/name=dlf -n dlf
As an optional step, label the namespace(or namespaces) you want in order have the pods labelling functionality (see below).
kubectl label namespace default monitor-pods-datasets=enabled
In case don't have an existing S3 Bucket follow our wiki to deploy an Object Store and populate it with data.
We will create now a Dataset named example-dataset
pointing to your S3 bucket.
cat <<EOF | kubectl apply -f -
apiVersion: com.ie.ibm.hpsys/v1alpha1
kind: Dataset
metadata:
name: example-dataset
spec:
local:
type: "COS"
accessKeyID: "{AWS_ACCESS_KEY_ID}"
secretAccessKey: "{AWS_SECRET_ACCESS_KEY}"
endpoint: "{S3_SERVICE_URL}"
bucket: "{BUCKET_NAME}"
readonly: "true" #OPTIONAL, default is false
region: "" #OPTIONAL
EOF
If everything worked okay, you should see a PVC and a ConfigMap named example-dataset
which you can mount in your pods.
As an easier way to use the Dataset in your pod, you can instead label the pod as follows:
apiVersion: v1
kind: Pod
metadata:
name: nginx
labels:
dataset.0.id: "example-dataset"
dataset.0.useas: "mount"
spec:
containers:
- name: nginx
image: nginx
As a convention the Dataset will be mounted in /mnt/datasets/example-dataset
. If instead you wish to pass the connection
details as environment variables, change the useas
line to dataset.0.useas: "configmap"
Feel free to explore our examples
Have a look on our wiki for Frequently Asked Questions
Have a look on our wiki for Roadmap
- P. Koutsovasilis, S. Venugopal, Y. Gkoufas and C. Pinto, "A Holistic Approach to Data Access for Cloud-Native Analytics and Machine Learning," in 2021 IEEE 14th International Conference on Cloud Computing (CLOUD), Chicago, IL, USA, 2021 pp. 654-659 doi bibtex - Please cite this paper when referring to Datashim
- Y. Gkoufas, D.Y. Yuan, C.Pinto, P. Koutsovasilis, S. Venugopal, "Datashim and Its Applications in Bioinformatics", Proceedings of International Conference on High Performance Computing, Lecture Notes in Computer Science, vol 12761, pp. 416-427, Springer, Cham.doi
- C. Pinto, et. al, "Data Convergence for High-Performance Cloud", HPC, Big Data, and AI Convergence Towards Exascale: Challenge and Vision, CRC Press, 2022. doi
Reach out to us via email:
- Srikumar Venugopal, srikumarv@ie.ibm.com
- Yiannis Gkoufas, yiannisg@ie.ibm.com
- Christian Pinto, christian.pinto@ibm.com
- Panagiotis Koutsovasilis, koutsovasilis.panagiotis1@ibm.com
This project has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No 825061.