Cluster Accurate Scheduler Estimator For Rescheduling
Users could divide their replicas of a workload into different clusters in terms of available resources of member clusters. When some clusters are lack of resources, scheduler would not assign excessive replicas into these clusters by calling karmada-scheduler-estimator.
Prerequisites
Karmada has been installed
We can install Karmada by referring to quick-start, or directly run hack/local-up-karmada.sh
script which is also used to run our E2E cases.
Member cluster component is ready
Ensure that all member clusters have been joined and their corresponding karmada-scheduler-estimator is installed into karmada-host.
You could check by using the following command:
# check whether the member cluster has been joined
$ kubectl get cluster
NAME VERSION MODE READY AGE
member1 v1.19.1 Push True 11m
member2 v1.19.1 Push True 11m
member3 v1.19.1 Pull True 5m12s
# check whether the karmada-scheduler-estimator of a member cluster has been working well
$ kubectl --context karmada-host get pod -n karmada-system | grep estimator
karmada-scheduler-estimator-member1-696b54fd56-xt789 1/1 Running 0 77s
karmada-scheduler-estimator-member2-774fb84c5d-md4wt 1/1 Running 0 75s
karmada-scheduler-estimator-member3-5c7d87f4b4-76gv9 1/1 Running 0 72s
- If the cluster has not been joined, you could use
hack/deploy-agent-and-estimator.sh
to deploy both karmada-agent and karmada-scheduler-estimator. - If the cluster has been joined already, you could use
hack/deploy-scheduler-estimator.sh
to only deploy karmada-scheduler-estimator.
Scheduler option ‘—enable-scheduler-estimator’
After all member clusters have been joined and estimators are all ready, please specify the option --enable-scheduler-estimator=true
to enable scheduler estimator.
# edit the deployment of karmada-scheduler
kubectl --context karmada-host edit -n karmada-system deployments.apps karmada-scheduler
And then add the option --enable-scheduler-estimator=true
into the command of container karmada-scheduler
.
Example
Now we could divide the replicas into different member clusters. Note that propagationPolicy.spec.replicaScheduling.replicaSchedulingType
must be Divided
and propagationPolicy.spec.replicaScheduling.replicaDivisionPreference
must be Aggregated
. The scheduler will try to divide the replicas aggregately in terms of all available resources of member clusters.
apiVersion: policy.karmada.io/v1alpha1
kind: PropagationPolicy
metadata:
name: aggregated-policy
spec:
resourceSelectors:
- apiVersion: apps/v1
kind: Deployment
name: nginx
placement:
clusterAffinity:
clusterNames:
- member1
- member2
- member3
replicaScheduling:
replicaSchedulingType: Divided
replicaDivisionPreference: Aggregated
apiVersion: apps/v1
kind: Deployment
metadata:
name: nginx
labels:
app: nginx
spec:
replicas: 5
selector:
matchLabels:
app: nginx
template:
metadata:
labels:
app: nginx
spec:
containers:
- image: nginx
name: nginx
ports:
- containerPort: 80
name: web-1
resources:
requests:
cpu: "1"
memory: 2Gi
You will find all replicas have been assigned to as few clusters as possible.
$ kubectl get deployments.apps
NAME READY UP-TO-DATE AVAILABLE AGE
nginx 5/5 5 5 2m16s
$ kubectl get rb nginx-deployment -o=custom-columns=NAME:.metadata.name,CLUSTER:.spec.clusters
NAME CLUSTER
nginx-deployment [map[name:member1 replicas:5] map[name:member2] map[name:member3]]
After that, we change the resource request of the deployment to a large number and have a try again.
apiVersion: apps/v1
kind: Deployment
metadata:
name: nginx
labels:
app: nginx
spec:
replicas: 5
selector:
matchLabels:
app: nginx
template:
metadata:
labels:
app: nginx
spec:
containers:
- image: nginx
name: nginx
ports:
- containerPort: 80
name: web-1
resources:
requests:
cpu: "100"
memory: 200Gi
As any node of member clusters does not have so many cpu and memory resources, we will find workload scheduling failed.
$ kubectl get deployments.apps
NAME READY UP-TO-DATE AVAILABLE AGE
nginx 0/5 0 0 2m20s
$ kubectl get rb nginx-deployment -o=custom-columns=NAME:.metadata.name,CLUSTER:.spec.clusters
NAME CLUSTER
nginx-deployment <none>