You are looking at the documentation of a prior release. To read the documentation of the latest release, please
visit here.
New to KubeDB? Please start here.
KafkaAutoscaler
What is KafkaAutoscaler
KafkaAutoscaler is a Kubernetes Custom Resource Definitions (CRD). It provides a declarative configuration for autoscaling Kafka compute resources and storage of database components in a Kubernetes native way.
KafkaAutoscaler CRD Specifications
Like any official Kubernetes resource, a KafkaAutoscaler has TypeMeta, ObjectMeta, Spec and Status sections.
Here, some sample KafkaAutoscaler CROs for autoscaling different components of database is given below:
Sample KafkaAutoscaler for combined cluster:
apiVersion: autoscaling.kubedb.com/v1alpha1
kind: KafkaAutoscaler
metadata:
name: kf-autoscaler-combined
namespace: demo
spec:
databaseRef:
name: kafka-dev
opsRequestOptions:
timeout: 3m
apply: IfReady
compute:
node:
trigger: "On"
podLifeTimeThreshold: 24h
minAllowed:
cpu: 250m
memory: 350Mi
maxAllowed:
cpu: 1
memory: 1Gi
controlledResources: ["cpu", "memory"]
containerControlledValues: "RequestsAndLimits"
resourceDiffPercentage: 10
storage:
node:
expansionMode: "Online"
trigger: "On"
usageThreshold: 60
scalingThreshold: 50
Sample KafkaAutoscaler for topology cluster:
apiVersion: autoscaling.kubedb.com/v1alpha1
kind: KafkaAutoscaler
metadata:
name: kf-autoscaler-topology
namespace: demo
spec:
databaseRef:
name: kafka-prod
opsRequestOptions:
timeout: 3m
apply: IfReady
compute:
broker:
trigger: "On"
podLifeTimeThreshold: 24h
minAllowed:
cpu: 200m
memory: 300Mi
maxAllowed:
cpu: 1
memory: 1Gi
controlledResources: ["cpu", "memory"]
containerControlledValues: "RequestsAndLimits"
resourceDiffPercentage: 10
controller:
trigger: "On"
podLifeTimeThreshold: 24h
minAllowed:
cpu: 200m
memory: 300Mi
maxAllowed:
cpu: 1
memory: 1Gi
controlledResources: ["cpu", "memory"]
containerControlledValues: "RequestsAndLimits"
resourceDiffPercentage: 10
storage:
broker:
expansionMode: "Online"
trigger: "On"
usageThreshold: 60
scalingThreshold: 50
controller:
expansionMode: "Online"
trigger: "On"
usageThreshold: 60
scalingThreshold: 50
Here, we are going to describe the various sections of a KafkaAutoscaler crd.
A KafkaAutoscaler object has the following fields in the spec section.
spec.databaseRef
spec.databaseRef is a required field that point to the Kafka object for which the autoscaling will be performed. This field consists of the following sub-field:
- spec.databaseRef.name : specifies the name of the Kafka object.
spec.opsRequestOptions
These are the options to pass in the internally created opsRequest CRO. opsRequestOptions has two fields.
spec.compute
spec.compute specifies the autoscaling configuration for the compute resources i.e. cpu and memory of the database components. This field consists of the following sub-field:
spec.compute.nodeindicates the desired compute autoscaling configuration for a combined Kafka cluster.spec.compute.brokerindicates the desired compute autoscaling configuration for broker of a topology Kafka database.spec.compute.controllerindicates the desired compute autoscaling configuration for controller of a topology Kafka database.
All of them has the following sub-fields:
triggerindicates if compute autoscaling is enabled for this component of the database. If “On” then compute autoscaling is enabled. If “Off” then compute autoscaling is disabled.minAllowedspecifies the minimal amount of resources that will be recommended, default is no minimum.maxAllowedspecifies the maximum amount of resources that will be recommended, default is no maximum.controlledResourcesspecifies which type of compute resources (cpu and memory) are allowed for autoscaling. Allowed values are “cpu” and “memory”.containerControlledValuesspecifies which resource values should be controlled. Allowed values are “RequestsAndLimits” and “RequestsOnly”.resourceDiffPercentagespecifies the minimum resource difference between recommended value and the current value in percentage. If the difference percentage is greater than this value than autoscaling will be triggered.podLifeTimeThresholdspecifies the minimum pod lifetime of at least one of the pods before triggering autoscaling.
There are two more fields, those are only specifiable for the percona variant inMemory databases.
inMemoryStorage.UsageThresholdPercentageIf db uses more than usageThresholdPercentage of the total memory, memoryStorage should be increased.inMemoryStorage.ScalingFactorPercentageIf db uses more than usageThresholdPercentage of the total memory, memoryStorage should be increased by this given scaling percentage.
spec.storage
spec.compute specifies the autoscaling configuration for the storage resources of the database components. This field consists of the following sub-field:
spec.compute.nodeindicates the desired storage autoscaling configuration for a combined Kafka cluster.spec.compute.brokerindicates the desired storage autoscaling configuration for broker of a combined Kafka cluster.spec.compute.controllerindicates the desired storage autoscaling configuration for controller of a topology Kafka cluster.
All of them has the following sub-fields:
triggerindicates if storage autoscaling is enabled for this component of the database. If “On” then storage autoscaling is enabled. If “Off” then storage autoscaling is disabled.usageThresholdindicates usage percentage threshold, if the current storage usage exceeds then storage autoscaling will be triggered.scalingThresholdindicates the percentage of the current storage that will be scaled.expansionModeindicates the volume expansion mode.






























