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.
FerretDB Compute Resource Autoscaling
This guide will give an overview on how KubeDB Autoscaler operator autoscales the database compute resources i.e. cpu and memory using FerretdbAutoscaler crd.
Before You Begin
- You should be familiar with the following
KubeDBconcepts:
How Compute Autoscaling Works
The following diagram shows how KubeDB Autoscaler operator autoscales the resources of FerretDB. Open the image in a new tab to see the enlarged version.
The Auto Scaling process consists of the following steps:
At first, a user creates a
FerretDBCustom Resource Object (CRO).KubeDBProvisioner operator watches theFerretDBCRO.When the operator finds a
FerretDBCRO, it createsPetSetand related necessary stuff like secrets, services, etc.Then, in order to set up autoscaling of
FerretDB, the user creates aFerretDBAutoscalerCRO with desired configuration.KubeDBAutoscaler operator watches theFerretDBAutoscalerCRO.KubeDBAutoscaler operator generates recommendation using the modified version of kubernetes official recommender for different components of the database, as specified in theFerretDBAutoscalerCRO.If the generated recommendation doesn’t match the current resources of the database, then
KubeDBAutoscaler operator creates aFerretDBOpsRequestCRO to scale the ferretdb to match the recommendation generated.KubeDBOps-manager operator watches theFerretDBOpsRequestCRO.Then the
KubeDBOps-manager operator will scale the ferretdb vertically as specified on theFerretDBOpsRequestCRO.
In the next docs, we are going to show a step-by-step guide on Autoscaling of FerretDB using FerretDBAutoscaler CRD.






























