Warning
You are currently viewing v"2.5" of the documentation and it is not the latest. For the most recent documentation, kindly click here.
KEDA is designed, tested and supported to be run on any Kubernetes cluster that runs Kubernetes v1.17.0 or above.
The KEDA runtime require the following resources in a production-ready setup:
Deployment | CPU | Memory |
---|---|---|
Metrics Server | Limit: 1, Request: 100m | Limit: 1000Mi, Request: 100Mi |
Operator | Limit: 1, Request: 100m | Limit: 1000Mi, Request: 100Mi |
These are used by default when deploying through YAML.
💡 For more info on CPU and Memory resource units and their meaning, see this link.
KEDA requires to be accessible inside the cluster to be able to autoscale.
Here is an overview of the required ports that need to be accessible for KEDA to work:
Port | Why? | Remarks |
---|---|---|
443 | Used by Kubernetes API server to get metrics | Required for all platforms because it uses Control Plane → port 443 on the Service IP range communication. This is not applicable for Google Cloud. |
6443 | Used by Kubernetes API server to get metrics | Only required for Google Cloud because it uses Control Plane → port 6443 on the Pod IP range for communication |
KEDA does not provide full support for high-availability due to upstream limitations.
Here is an overview of all KEDA deployments and the HA notes:
Deployment | Support Replicas | Note |
---|---|---|
Metrics Server | 1 | You can run multiple replicas of our metrics sever, and it is recommended to add the --enable-aggregator-routing=true CLI flag to the kube-apiserver so that requests sent to our metrics servers are load balanced. However, you can only run one active metric server in a Kubernetes cluster serving external.metrics.k8s.io which has to be the KEDA metric server. |
Operator | 2 | While you can run multiple replicas of our operator, only one operator instance will be active. The rest will be standing by, which may reduce downtime during a failure. Multiple replicas will not improve the performance of KEDA, it could only reduce a downtime during a failover. |
Some scalers issue HTTP requests to external servers (i.e. cloud services). Each applicable scaler uses its own dedicated HTTP client with its own connection pool, and by default each client is set to time out any HTTP request after 3 seconds.
You can override this default by setting the KEDA_HTTP_DEFAULT_TIMEOUT
environment variable to your desired timeout in milliseconds. For example, on Linux/Mac/Windows WSL2 operating systems, you’d use this command to set to 1 second:
export KEDA_HTTP_DEFAULT_TIMEOUT=1000
And on Windows Powershell, you’d use this command:
$env:KEDA_HTTP_DEFAULT_TIMEOUT=1000
All applicable scalers will use this timeout. Setting a per-scaler timeout is currently unsupported.
The Kubernetes client config used within KEDA Metrics Adapter can be adjusted by passing the following command-line flags to the binary:
Adapter Flag | Client Config Setting | Default Value | Description |
---|---|---|---|
kube-api-qps | cfg.QPS | 20.0 | Set the QPS rate for throttling requests sent to the apiserver |
kube-api-burst | cfg.Burst | 30 | Set the burst for throttling requests sent to the apiserver |
MaxConcurrentReconciles
for Controllers To implement internal controllers KEDA uses controller-runtime project, that enables configuration of MaxConcurrentReconciles property, ie. the maximum number of concurrent reconciles which can be run for a controller.
KEDA Operator exposes properties for specifying MaxConcurrentReconciles
for following controllers/reconcilers:
ScaledObjectReconciler
- responsible for watching and managing ScaledObjects
, ie. validates input trigger specification, starts scaling logic and manages dependent HPA.ScaledJobReconciler
- responsible for watching and managing ScaledJobs
and dependent Kubernetes JobsKEDA Metrics Server exposes property for specifying MaxConcurrentReconciles
for MetricsScaledObjectReconciler
, that manages Metrics Names exposes by KEDA and which are being consumed by Kubernetes server and HPA controller.
To modify this properties you can set environment variables on both KEDA Operator and Metrics Server Deployments:
Environment variable name | Deployment | Default Value | Affected reconciler |
---|---|---|---|
KEDA_SCALEDOBJECT_CTRL_MAX_RECONCILES | Operator | 5 | ScaledObjectReconciler |
KEDA_SCALEDJOB_CTRL_MAX_RECONCILES | Operator | 1 | ScaledJobReconciler |
KEDA_METRICS_CTRL_MAX_RECONCILES | Metrics Server | 1 | MetricsScaledObjectReconciler |