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Autoscaling the Compute Resource of an Elasticsearch Combined Cluster
This guide will show you how to use KubeDB
to autoscale compute resources i.e. cpu
and memory
of an Elasticsearch combined cluster.
Before You Begin
At first, you need to have a Kubernetes cluster, and the
kubectl
command-line tool must be configured to communicate with your cluster.Install
KubeDB
Community, Enterprise and Autoscaler operator in your cluster following the steps here.Install
Metrics Server
from hereInstall
Vertical Pod Autoscaler
from hereYou should be familiar with the following
KubeDB
concepts:
To keep everything isolated, we are going to use a separate namespace called demo
throughout this tutorial.
$ kubectl create ns demo
namespace/demo created
Note: YAML files used in this tutorial are stored in this directory of kubedb/docs repository.
Autoscaling of a Combined Cluster
Here, we are going to deploy an Elasticsearch
in combined cluster mode using a supported version by KubeDB
operator. Then we are going to apply ElasticsearchAutoscaler
to set up autoscaling.
Deploy Elasticsearch standalone
In this section, we are going to deploy an Elasticsearch combined cluster with ElasticsearchVersion searchguard-7.9.3
. Then, in the next section, we will set up autoscaling for this database using ElasticsearchAutoscaler
CRD. Below is the YAML of the Elasticsearch
CR that we are going to create,
apiVersion: kubedb.com/v1alpha2
kind: Elasticsearch
metadata:
name: es-combined
namespace: demo
spec:
enableSSL: true
version: searchguard-7.9.3
storageType: Durable
replicas: 3
storage:
storageClassName: "standard"
accessModes:
- ReadWriteOnce
resources:
requests:
storage: 1Gi
terminationPolicy: WipeOut
Let’s create the Elasticsearch
CRO we have shown above,
$ kubectl create -f https://github.com/kubedb/docs/raw/v2022.08.08/docs/guides/elasticsearch/autoscaler/compute/combined/yamls/es-combined.yaml
elasticsearch.kubedb.com/es-combined created
Now, wait until es-combined
has status Ready
. i.e,
$ kubectl get elasticsearch -n demo -w
NAME VERSION STATUS AGE
es-combined searchguard-7.9.3 Provisioning 1m2s
es-combined searchguard-7.9.3 Provisioning 2m8s
es-combined searchguard-7.9.3 Ready 2m8s
Let’s check the Pod containers resources,
$ kubectl get pod -n demo es-combined-0 -o json | jq '.spec.containers[].resources'
{
"limits": {
"cpu": "500m",
"memory": "1Gi"
},
"requests": {
"cpu": "500m",
"memory": "1Gi"
}
}
Let’s check the Elasticsearch resources,
$ kubectl get elasticsearch -n demo es-combined -o json | jq '.spec.podTemplate.spec.resources'
{
"limits": {
"cpu": "500m",
"memory": "1Gi"
},
"requests": {
"cpu": "500m",
"memory": "1Gi"
}
}
You can see from the above outputs that the resources are the same as the ones we have assigned while deploying the Elasticsearch.
We are now ready to apply the ElasticsearchAutoscaler
CRO to set up autoscaling for this database.
Compute Resource Autoscaling
Here, we are going to set up compute (ie. cpu
and memory
) autoscaling using an ElasticsearchAutoscaler Object.
Create ElasticsearchAutoscaler Object
To set up compute resource autoscaling for this combined cluster, we have to create a ElasticsearchAutoscaler
CRO with our desired configuration. Below is the YAML of the ElasticsearchAutoscaler
object that we are going to create,
apiVersion: autoscaling.kubedb.com/v1alpha1
kind: ElasticsearchAutoscaler
metadata:
name: es-combined-as
namespace: demo
spec:
databaseRef:
name: es-combined
compute:
node:
trigger: "On"
podLifeTimeThreshold: 5m
minAllowed:
cpu: ".4"
memory: "1Gi"
maxAllowed:
cpu: 2
memory: 3Gi
controlledResources: ["cpu", "memory"]
Here,
spec.databaseRef.name
specifies that we are performing compute resource autoscaling ones-combined
database.spec.compute.node.trigger
specifies that compute resource autoscaling is enabled for this cluster.spec.compute.node.podLifeTimeThreshold
specifies the minimum lifetime for at least one of the pod to initiate a vertical scaling.spec.compute.node.minAllowed
specifies the minimum allowed resources for the Elasticsearch node.spec.compute.node.maxAllowed
specifies the maximum allowed resources for the Elasticsearch node.spec.compute.node.controlledResources
specifies the resources that are controlled by the autoscaler.
Let’s create the ElasticsearchAutoscaler
CR we have shown above,
$ kubectl apply -f https://github.com/kubedb/docs/raw/v2022.08.08/docs/guides/elasticsearch/autoscaler/compute/combined/yamls/es-auto-scaler.yaml
elasticsearchautoscaler.autoscaling.kubedb.com/es-combined-as created
Verify Autoscaling is set up successfully
Let’s check that the elasticsearchautoscaler
resource is created successfully,
$kubectl get elasticsearchautoscaler -n demo
NAME AGE
es-combined-as 14s
$ kubectl describe elasticsearchautoscaler -n demo es-combined-as
Name: es-combined-as
Namespace: demo
Labels: <none>
Annotations: <none>
API Version: autoscaling.kubedb.com/v1alpha1
Kind: ElasticsearchAutoscaler
Metadata:
Creation Timestamp: 2021-03-22T10:01:05Z
Generation: 1
Resource Version: 33465
UID: a5e671a5-22df-48bc-8949-e902270c85f4
Spec:
Compute:
Node:
Controlled Resources:
cpu
memory
Max Allowed:
Cpu: 2
Memory: 3Gi
Min Allowed:
Cpu: 400m
Memory: 1Gi
Pod Life Time Threshold: 5m0s
Trigger: On
Database Ref:
Name: es-combined
Events: <none>
So, the elasticsearchautoscaler
resource is created successfully.
Now, let’s verify that the vertical pod autoscaler (vpa) resource is created successfully,
$ kubectl get vpa -n demo
NAME AGE
vpa-es-combined 1m32s
$ kubectl describe vpa -n demo vpa-es-combined
Name: vpa-es-combined
Namespace: demo
Labels: <none>
Annotations: <none>
API Version: autoscaling.k8s.io/v1
Kind: VerticalPodAutoscaler
Metadata:
Creation Timestamp: 2021-03-22T10:01:05Z
Generation: 2
Owner References:
API Version: autoscaling.kubedb.com/v1alpha1
Block Owner Deletion: true
Controller: true
Kind: ElasticsearchAutoscaler
Name: es-combined-as
UID: a5e671a5-22df-48bc-8949-e902270c85f4
Resource Version: 33488
UID: 5f49956c-ba9d-4896-a083-adc2a3138083
Spec:
Resource Policy:
Container Policies:
Container Name: elasticsearch
Controlled Resources:
cpu
memory
Controlled Values: RequestsAndLimits
Max Allowed:
Cpu: 2
Memory: 3Gi
Min Allowed:
Cpu: 400m
Memory: 1Gi
Target Ref:
API Version: apps/v1
Kind: StatefulSet
Name: es-combined
Update Policy:
Update Mode: Off
Status:
Conditions:
Last Transition Time: 2021-03-22T10:00:18Z
Status: False
Type: RecommendationProvided
Events: <none>
So, we can verify from the above output that the vpa
resource is created successfully. But you can see that the RecommendationProvided
is false and also the Recommendation
section of the vpa
is empty. Let’s wait some time and describe the vpa again.
$ kubectl describe vpa -n demo vpa-es-combined
Name: vpa-es-combined
Namespace: demo
Labels: <none>
Annotations: <none>
API Version: autoscaling.k8s.io/v1
Kind: VerticalPodAutoscaler
Metadata:
Creation Timestamp: 2021-03-22T10:01:05Z
Generation: 2
Owner References:
API Version: autoscaling.kubedb.com/v1alpha1
Block Owner Deletion: true
Controller: true
Kind: ElasticsearchAutoscaler
Name: es-combined-as
UID: a5e671a5-22df-48bc-8949-e902270c85f4
Resource Version: 33488
UID: 5f49956c-ba9d-4896-a083-adc2a3138083
Spec:
Resource Policy:
Container Policies:
Container Name: elasticsearch
Controlled Resources:
cpu
memory
Controlled Values: RequestsAndLimits
Max Allowed:
Cpu: 2
Memory: 3Gi
Min Allowed:
Cpu: 400m
Memory: 1Gi
Target Ref:
API Version: apps/v1
Kind: StatefulSet
Name: es-combined
Update Policy:
Update Mode: Off
Status:
Conditions:
Last Transition Time: 2021-03-22T10:01:18Z
Status: True
Type: RecommendationProvided
Recommendation:
Container Recommendations:
Container Name: elasticsearch
Lower Bound:
Cpu: 400m
Memory: 1Gi
Target:
Cpu: 400m
Memory: 1Gi
Uncapped Target:
Cpu: 126m
Memory: 920733364
Upper Bound:
Cpu: 2
Memory: 3Gi
Events: <none>
As you can see from the output the vpa has generated a recommendation for our database. Our autoscaler operator continuously watches the recommendation generated and creates an elasticsearchopsrequest
based on the recommendations, if the database pods are needed to scale up or down.
Let’s watch the elasticsearchopsrequest
in the demo namespace to see if any elasticsearchopsrequest
object is created. After some time you’ll see that an elasticsearchopsrequest
will be created based on the recommendation.
$ kubectl get elasticsearchopsrequest -n demo
NAME TYPE STATUS AGE
esops-vpa-es-combined-a6be0c VerticalScaling Progessing 1m
Let’s wait for the opsRequest to become successful.
$ kubectl get elasticsearchopsrequest -n demo
NAME TYPE STATUS AGE
esops-vpa-es-combined-a6be0c VerticalScaling Successful 7m
We can see from the above output that the ElasticsearchOpsRequest
has succeeded. If we describe the ElasticsearchOpsRequest
we will get an overview of the steps that were followed to scale the database.
$ kubectl describe elasticsearchopsrequest -n demo esops-vpa-es-combined-a6be0c
Name: esops-vpa-es-combined-a6be0c
Namespace: demo
Labels: app.kubernetes.io/component=database
app.kubernetes.io/instance=es-combined
app.kubernetes.io/managed-by=kubedb.com
app.kubernetes.io/name=elasticsearches.kubedb.com
Annotations: <none>
API Version: ops.kubedb.com/v1alpha1
Kind: ElasticsearchOpsRequest
Metadata:
Creation Timestamp: 2021-03-22T10:04:21Z
Generation: 1
Owner References:
API Version: autoscaling.kubedb.com/v1alpha1
Block Owner Deletion: true
Controller: true
Kind: ElasticsearchAutoscaler
Name: es-combined-as
UID: a5e671a5-22df-48bc-8949-e902270c85f4
Resource Version: 34809
UID: d9f04043-7e42-42a5-827e-fe8b1b873425
Spec:
Database Ref:
Name: es-combined
Type: VerticalScaling
Vertical Scaling:
Node:
Limits:
Cpu: 400m
Memory: 1Gi
Requests:
Cpu: 400m
Memory: 1Gi
Status:
Conditions:
Last Transition Time: 2021-03-22T10:04:21Z
Message: Elasticsearch ops request is vertically scaling the nodes
Observed Generation: 1
Reason: VerticalScaling
Status: True
Type: VerticalScaling
Last Transition Time: 2021-03-22T10:04:21Z
Message: Successfully updated statefulSet resources.
Observed Generation: 1
Reason: UpdateStatefulSetResources
Status: True
Type: UpdateStatefulSetResources
Last Transition Time: 2021-03-22T10:11:21Z
Message: Successfully updated all node resources
Observed Generation: 1
Reason: UpdateNodeResources
Status: True
Type: UpdateNodeResources
Last Transition Time: 2021-03-22T10:11:21Z
Message: Successfully completed the modification process.
Observed Generation: 1
Reason: Successful
Status: True
Type: Successful
Observed Generation: 1
Phase: Successful
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Normal PauseDatabase 7m KubeDB Enterprise Operator Pausing Elasticsearch demo/es-combined
Normal Updating 7m KubeDB Enterprise Operator Updating StatefulSets
Normal Updating 7m KubeDB Enterprise Operator Successfully Updated StatefulSets
Normal UpdateNodeResources 2m KubeDB Enterprise Operator Successfully updated all node resources
Normal Updating 2m KubeDB Enterprise Operator Updating Elasticsearch
Normal Updating 2m KubeDB Enterprise Operator Successfully Updated Elasticsearch
Normal ResumeDatabase 2m KubeDB Enterprise Operator Resuming Elasticsearch demo/es-combined
Normal Successful 2m KubeDB Enterprise Operator Successfully Updated Database
Now, we are going to verify from the Pod, and the Elasticsearch YAML whether the resources of the standalone database has updated to meet up the desired state, Let’s check,
$ kubectl get pod -n demo es-combined-0 -o json | jq '.spec.containers[].resources'
{
"limits": {
"cpu": "400m",
"memory": "1Gi"
},
"requests": {
"cpu": "400m",
"memory": "1Gi"
}
}
$ kubectl get elasticsearch -n demo es-combined -o json | jq '.spec.podTemplate.spec.resources'
{
"limits": {
"cpu": "400m",
"memory": "1Gi"
},
"requests": {
"cpu": "400m",
"memory": "1Gi"
}
}
The above output verifies that we have successfully auto-scaled the resources of the Elasticsearch standalone database.
Cleaning Up
To clean up the Kubernetes resources created by this tutorial, run:
$ kubectl delete es -n demo es-combined
$ kubectl delete elasticsearchautoscaler -n demo es-combined-as
$ kubectl delete ns demo