Autoscaling

The slurm-operator may be configured to autoscale NodeSets pods based on Slurm metrics. This guide discusses how to configure autoscaling using KEDA.

Getting Started

Before attempting to autoscale NodeSets, Slinky should be fully deployed to a Kubernetes cluster and Slurm jobs should be able to run.

Dependencies

Autoscaling requires additional services that are not included in Slinky. Follow documentation to install Prometheus, Metrics Server, and KEDA.

Prometheus will install tools to report metrics and view them with Grafana. The Metrics Server is needed to report CPU and memory usage for tools like kubectl top. KEDA is recommended for autoscaling as it provides usability improvements over standard the Horizontal Pod Autoscaler (HPA).

To add KEDA in the helm install, run

helm repo add kedacore https://kedacore.github.io/charts

Install the slurm-exporter. This chart is installed as a dependency of the slurm helm chart by default. Configure using helm/slurm/values.yaml.

Verify KEDA Metrics API Server is running

$ kubectl get apiservice -l app.kubernetes.io/instance=keda
NAME                              SERVICE                                AVAILABLE   AGE
v1beta1.external.metrics.k8s.io   keda/keda-operator-metrics-apiserver   True        22h

KEDA provides the metrics apiserver required by HPA to scale on custom metrics from Slurm. An alternative like Prometheus Adapter could be used for this, but KEDA offers usability enhancements and improvements to HPA in addition to including a metrics apiserver.

Autoscaling

Autoscaling NodeSets allows Slurm partitions to expand and contract in response to the CPU and memory usage. Using Slurm metrics, NodeSets may also scale based on Slurm specific information like the number of pending jobs or the size of the largest pending job in a partition. There are many ways to configure autoscaling. Experiment with different combinations based on the types of jobs being run and the resources available in the cluster.

NodeSet Scale Subresource

Scaling a resource in Kuberenetes requires that resources such as Deployments and StatefulSets support the scale subresource. This is also true of the NodeSet Custom Resource.

The scale subresource gives a standard interface to observe and control the number of replicas of a resource. In the case of NodeSet, it allows Kubernetes and related services to control the number of slurmd replicas running as part of the NodeSet.

To manually scale a NodeSet, use the kubectl scale command. In this example, the NodeSet (nss) slurm-compute-radar is scaled to 1.

$ kubectl scale -n slurm nss/slurm-compute-radar --replicas=1
nodeset.slinky.slurm.net/slurm-compute-radar scaled

$ kubectl get pods -o wide -n slurm -l app.kubernetes.io/instance=slurm-compute-radar
NAME                    READY   STATUS    RESTARTS   AGE     IP            NODE          NOMINATED NODE   READINESS GATES
slurm-compute-radar-0   1/1     Running   0          2m48s   10.244.4.17   kind-worker   <none>           <none>

This corresponds to the Slurm partition radar.

$ kubectl exec -n slurm statefulset/slurm-controller -- sinfo
PARTITION AVAIL  TIMELIMIT  NODES  STATE NODELIST
radar        up   infinite      1   idle kind-worker

NodeSets may be scaled to zero. In this case, there are no replicas of slurmd running and all jobs scheduled to that partition will remain in a pending state.

$ kubectl scale nss/slurm-compute-radar -n slurm --replicas=0
nodeset.slinky.slurm.net/slurm-compute-radar scaled

For NodeSets to scale on demand, an autoscaler needs to be deployed. KEDA allows resources to scale from 0<->1 and also creates an HPA to scale based on scalers like Prometheus and more.

KEDA ScaledObject

KEDA uses the Custom Resource ScaledObject to monitor and scale a resource. It will automatically create the HPA needed to scale based on external triggers like Prometheus. With Slurm metrics, NodeSets may be scaled based on data collected from the Slurm restapi.

This example ScaledObject will watch the number of jobs pending for the partition radar and scale the NodeSet slurm-compute-radar until a threshold value is satisfied or maxReplicaCount is reached.

apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
  name: scale-radar
spec:
  scaleTargetRef:
    apiVersion: slinky.slurm.net/v1alpha1
    kind: NodeSet
    name: slurm-compute-radar
  idleReplicaCount: 0
  minReplicaCount: 1
  maxReplicaCount: 3
  triggers:
    - type: prometheus
      metricType: Value
      metadata:
        serverAddress: http://prometheus-kube-prometheus-prometheus.prometheus:9090
        query: slurm_partition_pending_jobs{partition="radar"}
        threshold: "5"

Note: The Prometheus trigger is using metricType: Value instead of the default AverageValue. AverageValue calculates the replica count by averaging the threshold across the current replica count.

Check ScaledObject documentation for a full list of allowable options.

In this scenario, the ScaledObject scale-radar will query the Slurm metric slurm_partition_pending_jobs from Prometheus with the label partition="radar".

When there is activity on the trigger (at least one pending job), KEDA will scale the NodeSet to minReplicaCount and then let HPA handle scaling up to maxReplicaCount or back down to minReplicaCount. When there is no activity on the trigger after a configurable amount of time, KEDA will scale the NodeSet to idleReplicaCount. See the KEDA documentation on idleReplicaCount for more examples.

Note: The only supported value for idleReplicaCount is 0 due to limitations on how the HPA controller works.

To verify a KEDA ScaledObject, apply it to the cluster in the appropriate namespace on a NodeSet that has no replicas.

$ kubectl scale nss/slurm-compute-radar -n slurm --replicas=0
nodeset.slinky.slurm.net/slurm-compute-radar scaled

Wait for Slurm to report that the partition has no nodes.

$ slurm@slurm-controller-0:/tmp$ sinfo -p radar
PARTITION AVAIL  TIMELIMIT  NODES  STATE NODELIST
radar        up   infinite      0    n/a

Apply the ScaledObject using kubectl to the correct namespace and verify the KEDA and HPA resources are created.

$ kubectl apply -f scaledobject.yaml -n slurm
scaledobject.keda.sh/scale-radar created

$ kubectl get -n slurm scaledobjects
NAME           SCALETARGETKIND                     SCALETARGETNAME        MIN   MAX   TRIGGERS     AUTHENTICATION   READY   ACTIVE   FALLBACK   PAUSED    AGE
scale-radar    slinky.slurm.net/v1alpha1.NodeSet   slurm-compute-radar    1     5     prometheus                    True    False    Unknown    Unknown   28s

$ kubectl get -n slurm hpa
NAME                    REFERENCE                      TARGETS       MINPODS   MAXPODS   REPLICAS   AGE
keda-hpa-scale-radar    NodeSet/slurm-compute-radar    <unknown>/5   1         5         0          32s

Once the ScaledObject and HPA are created, initiate some jobs to test that the NodeSet scale subresource is scaled in response.

$ sbatch --wrap "sleep 30" --partition radar --exclusive

The NodeSet will scale to minReplicaCount in response to activity on the trigger. Once the number of pending jobs crosses the configured threshold (submit more exclusive jobs to the partition), more replicas will be created to handle the additional demand. Until the threshold is exceeded, the NodeSet will remain at minReplicaCount.

Note: This example only works well for single node jobs, unless threshold is set to 1. In this case, HPA will continue to scale up NodeSet as long as there is a pending job until up until it reaches the maxReplicaCount.

After the default coolDownPeriod of 5 minutes without activity on the trigger, KEDA will scale the NodeSet down to 0.