This guide demonstrates how to vertically scale a RabbitMQ Cluster managed by KubeBlocks by adjusting compute resources (CPU and memory) while maintaining the same number of replicas.
Vertical scaling modifies compute resources (CPU and memory) for RabbitMQ instances while maintaining replica count. Key characteristics:
KubeBlocks ensures minimal impact during scaling operations by following a controlled, role-aware update strategy: Role-Aware Replicas (Primary/Secondary Replicas)
Role-Unaware Replicas (Ordinal-Based Scaling) If replicas have no defined roles, updates follow Kubernetes pod ordinal order:
Before proceeding, ensure the following:
kubectl create ns demo
namespace/demo created
KubeBlocks uses a declarative approach for managing RabbitMQ Clusters. Below is an example configuration for deploying a RabbitMQ Cluster with 3 replicas.
Apply the following YAML configuration to deploy the cluster:
apiVersion: apps.kubeblocks.io/v1
kind: Cluster
metadata:
name: rabbitmq-cluster
namespace: demo
spec:
terminationPolicy: Delete
clusterDef: rabbitmq
topology: clustermode
componentSpecs:
- name: rabbitmq
serviceVersion: 3.13.7
replicas: 3
resources:
limits:
cpu: "0.5"
memory: "0.5Gi"
requests:
cpu: "0.5"
memory: "0.5Gi"
volumeClaimTemplates:
- name: data
spec:
storageClassName: ""
accessModes:
- ReadWriteOnce
resources:
requests:
storage: 20Gi
Monitor the cluster status until it transitions to the Running state:
kubectl get cluster rabbitmq-cluster -n demo -w
Expected Output:
kubectl get cluster rabbitmq-cluster -n demo
NAME CLUSTER-DEFINITION TERMINATION-POLICY STATUS AGE
rabbitmq-cluster rabbitmq Delete Creating 15s
rabbitmq-cluster rabbitmq Delete Running 83s
Check the pod status and roles:
kubectl get pods -l app.kubernetes.io/instance=rabbitmq-cluster -n demo
Expected Output:
NAME READY STATUS RESTARTS AGE
rabbitmq-cluster-rabbitmq-0 2/2 Running 0 106s
rabbitmq-cluster-rabbitmq-1 2/2 Running 0 82s
rabbitmq-cluster-rabbitmq-2 2/2 Running 0 47s
Once the cluster status becomes Running, your RabbitMQ cluster is ready for use.
If you are creating the cluster for the very first time, it may take some time to pull images before running.
Expected Workflow:
Updating
to Running
Option 1: Using VerticalScaling OpsRequest
Apply the following YAML to scale up the resources for the rabbitmq component:
apiVersion: operations.kubeblocks.io/v1alpha1
kind: OpsRequest
metadata:
name: rabbitmq-cluster-vscale-ops
namespace: demo
spec:
clusterName: rabbitmq-cluster
type: VerticalScaling
verticalScaling:
- componentName: rabbitmq
requests:
cpu: '1'
memory: 1Gi
limits:
cpu: '1'
memory: 1Gi
You can check the progress of the scaling operation with the following command:
kubectl -n demo get ops rabbitmq-cluster-vscale-ops -w
Expected Result:
NAME TYPE CLUSTER STATUS PROGRESS AGE
rabbitmq-cluster-vscale-ops VerticalScaling rabbitmq-cluster Running 0/3 32s
rabbitmq-cluster-vscale-ops VerticalScaling rabbitmq-cluster Running 1/3 55s
rabbitmq-cluster-vscale-ops VerticalScaling rabbitmq-cluster Running 2/3 82s
rabbitmq-cluster-vscale-ops VerticalScaling rabbitmq-cluster Running 3/3 2m13s
Option 2: Direct Cluster API Update
Alternatively, you may update spec.componentSpecs.resources
field to the desired resources for vertical scale.
apiVersion: apps.kubeblocks.io/v1
kind: Cluster
spec:
componentSpecs:
- name: rabbitmq
replicas: 3
resources:
requests:
cpu: "1" # Update the resources to your need.
memory: "1Gi" # Update the resources to your need.
limits:
cpu: "1" # Update the resources to your need.
memory: "1Gi" # Update the resources to your need.
...
Planning:
Execution:
Post-Scaling:
Verify the updated resources by inspecting the cluster configuration or Pod details:
kbcli cluster describe rabbitmq-cluster -n demo
Expected Output:
Resources Allocation:
COMPONENT INSTANCE-TEMPLATE CPU(REQUEST/LIMIT) MEMORY(REQUEST/LIMIT) STORAGE-SIZE STORAGE-CLASS
rabbitmq 1 / 1 1Gi / 1Gi data:20Gi <none>
To remove all created resources, delete the RabbitMQ Cluster along with its namespace:
kubectl delete cluster rabbitmq-cluster -n demo
kubectl delete ns demo
In this guide, you learned how to:
Vertical scaling is a powerful tool for optimizing resource utilization and adapting to changing workload demands, ensuring your RabbitMQ Cluster remains performant and resilient.