CPU utilization
As a developer, you can use a horizontal pod autoscaler (HPA) to specify how OKD should automatically increase or decrease the scale of a replication controller or deployment configuration, based on metrics collected from the pods that belong to that replication controller or deployment configuration. You can create an HPA for any deployment, deployment config, replica set, replication controller, or stateful set.
For information on scaling pods based on custom metrics, see Automatically scaling pods based on custom metrics.
It is recommended to use a |
You can create a horizontal pod autoscaler to specify the minimum and maximum number of pods you want to run, as well as the CPU utilization or memory utilization your pods should target.
After you create a horizontal pod autoscaler, OKD begins to query the CPU and/or memory resource metrics on the pods. When these metrics are available, the horizontal pod autoscaler computes the ratio of the current metric utilization with the desired metric utilization, and scales up or down accordingly. The query and scaling occurs at a regular interval, but can take one to two minutes before metrics become available.
For replication controllers, this scaling corresponds directly to the replicas
of the replication controller. For deployment configurations, scaling corresponds
directly to the replica count of the deployment configuration. Note that autoscaling
applies only to the latest deployment in the Complete
phase.
OKD automatically accounts for resources and prevents unnecessary autoscaling
during resource spikes, such as during start up. Pods in the unready
state
have 0 CPU
usage when scaling up and the autoscaler ignores the pods when scaling down.
Pods without known metrics have 0% CPU
usage when scaling up and 100% CPU
when scaling down.
This allows for more stability during the HPA decision. To use this feature, you must configure
readiness checks to determine if a new pod is ready for use.
To use horizontal pod autoscalers, your cluster administrator must have properly configured cluster metrics.
The following metrics are supported by horizontal pod autoscalers:
Metric | Description | API version |
---|---|---|
CPU utilization |
Number of CPU cores used. Can be used to calculate a percentage of the pod’s requested CPU. |
|
Memory utilization |
Amount of memory used. Can be used to calculate a percentage of the pod’s requested memory. |
|
For memory-based autoscaling, memory usage must increase and decrease proportionally to the replica count. On average:
Use the OKD web console to check the memory behavior of your application and ensure that your application meets these requirements before using memory-based autoscaling. |
The following example shows autoscaling for the image-registry
deployment
object. The initial deployment requires 3 pods. The HPA object increases the minimum to 5. If CPU usage on the pods reaches 75%, the pods increase to 7:
$ oc autoscale deployment/image-registry --min=5 --max=7 --cpu-percent=75
horizontalpodautoscaler.autoscaling/image-registry autoscaled
image-registry
deployment
object with minReplicas
set to 3apiVersion: autoscaling/v1
kind: HorizontalPodAutoscaler
metadata:
name: image-registry
namespace: default
spec:
maxReplicas: 7
minReplicas: 3
scaleTargetRef:
apiVersion: apps/v1
kind: deployment
name: image-registry
targetCPUUtilizationPercentage: 75
status:
currentReplicas: 5
desiredReplicas: 0
View the new state of the deployment:
$ oc get deployment image-registry
There are now 5 pods in the deployment:
NAME REVISION DESIRED CURRENT TRIGGERED BY
image-registry 1 5 5 config
The horizontal pod autoscaler (HPA) extends the concept of pod auto-scaling. The HPA lets you create and manage a group of load-balanced nodes. The HPA automatically increases or decreases the number of pods when a given CPU or memory threshold is crossed.
The HPA is an API resource in the Kubernetes autoscaling API group. The autoscaler works as a control loop with a default of 15 seconds for the sync period. During this period, the controller manager queries the CPU, memory utilization, or both, against what is defined in the YAML file for the HPA. The controller manager obtains the utilization metrics from the resource metrics API for per-pod resource metrics like CPU or memory, for each pod that is targeted by the HPA.
If a utilization value target is set, the controller calculates the utilization value as a percentage of the equivalent resource request on the containers in each pod. The controller then takes the average of utilization across all targeted pods and produces a ratio that is used to scale the number of desired replicas.
The HPA is configured to fetch metrics from metrics.k8s.io
, which is provided by the metrics server. Because of the dynamic nature of metrics evaluation, the number of replicas can fluctuate during scaling for a group of replicas.
To implement the HPA, all targeted pods must have a resource request set on their containers. |
The scheduler uses the resource request that you specify for containers in a pod, to decide which node to place the pod on. The kubelet enforces the resource limit that you specify for a container to ensure that the container is not allowed to use more than the specified limit. The kubelet also reserves the request amount of that system resource specifically for that container to use.
In the pod specifications, you must specify the resource requests, such as CPU and memory. The HPA uses this specification to determine the resource utilization and then scales the target up or down.
For example, the HPA object uses the following metric source:
type: Resource
resource:
name: cpu
target:
type: Utilization
averageUtilization: 60
In this example, the HPA keeps the average utilization of the pods in the scaling target at 60%. Utilization is the ratio between the current resource usage to the requested resource of the pod.
The HPA makes a scaling decision based on the observed CPU or memory utilization values of pods in an OKD cluster. Utilization values are calculated as a percentage of the resource requests of each pod. Missing resource request values can affect the optimal performance of the HPA.
During horizontal pod autoscaling, there might be a rapid scaling of events without a time gap. Configure the cool down period to prevent frequent replica fluctuations.
You can specify a cool down period by configuring the stabilizationWindowSeconds
field. The stabilization window is used to restrict the fluctuation of replicas count when the metrics used for scaling keep fluctuating.
The autoscaling algorithm uses this window to infer a previous desired state and avoid unwanted changes to workload scale.
For example, a stabilization window is specified for the scaleDown
field:
behavior:
scaleDown:
stabilizationWindowSeconds: 300
In the above example, all desired states for the past 5 minutes are considered. This approximates a rolling maximum, and avoids having the scaling algorithm frequently remove pods only to trigger recreating an equivalent pod just moments later.
The autoscaling/v2
API allows you to add scaling policies to a horizontal pod autoscaler. A scaling policy controls how the OKD horizontal pod autoscaler (HPA) scales pods. Scaling policies allow you to restrict the rate that HPAs scale pods up or down by setting a specific number or specific percentage to scale in a specified period of time. You can also define a stabilization window, which uses previously computed desired states to control scaling if the metrics are fluctuating. You can create multiple policies for the same scaling direction, and determine which policy is used, based on the amount of change. You can also restrict the scaling by timed iterations. The HPA scales pods during an iteration, then performs scaling, as needed, in further iterations.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: hpa-resource-metrics-memory
namespace: default
spec:
behavior:
scaleDown: (1)
policies: (2)
- type: Pods (3)
value: 4 (4)
periodSeconds: 60 (5)
- type: Percent
value: 10 (6)
periodSeconds: 60
selectPolicy: Min (7)
stabilizationWindowSeconds: 300 (8)
scaleUp: (9)
policies:
- type: Pods
value: 5 (10)
periodSeconds: 70
- type: Percent
value: 12 (11)
periodSeconds: 80
selectPolicy: Max
stabilizationWindowSeconds: 0
...
1 | Specifies the direction for the scaling policy, either scaleDown or scaleUp . This example creates a policy for scaling down. |
2 | Defines the scaling policy. |
3 | Determines if the policy scales by a specific number of pods or a percentage of pods during each iteration. The default value is pods . |
4 | Limits the amount of scaling, either the number of pods or percentage of pods, during each iteration. There is no default value for scaling down by number of pods. |
5 | Determines the length of a scaling iteration. The default value is 15 seconds. |
6 | The default value for scaling down by percentage is 100%. |
7 | Determines which policy to use first, if multiple policies are defined. Specify Max to use the policy that allows the highest amount of change, Min to use the policy that allows the lowest amount of change, or Disabled to prevent the HPA from scaling in that policy direction. The default value is Max . |
8 | Determines the time period the HPA should look back at desired states. The default value is 0 . |
9 | This example creates a policy for scaling up. |
10 | Limits the amount of scaling up by the number of pods. The default value for scaling up the number of pods is 4%. |
11 | Limits the amount of scaling up by the percentage of pods. The default value for scaling up by percentage is 100%. |
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: hpa-resource-metrics-memory
namespace: default
spec:
...
minReplicas: 20
...
behavior:
scaleDown:
stabilizationWindowSeconds: 300
policies:
- type: Pods
value: 4
periodSeconds: 30
- type: Percent
value: 10
periodSeconds: 60
selectPolicy: Max
scaleUp:
selectPolicy: Disabled
In this example, when the number of pods is greater than 40, the percent-based policy is used for scaling down, as that policy results in a larger change, as required by the selectPolicy
.
If there are 80 pod replicas, in the first iteration the HPA reduces the pods by 8, which is 10% of the 80 pods (based on the type: Percent
and value: 10
parameters), over one minute (periodSeconds: 60
). For the next iteration, the number of pods is 72. The HPA calculates that 10% of the remaining pods is 7.2, which it rounds up to 8 and scales down 8 pods. On each subsequent iteration, the number of pods to be scaled is re-calculated based on the number of remaining pods. When the number of pods falls below 40, the pods-based policy is applied, because the pod-based number is greater than the percent-based number. The HPA reduces 4 pods at a time (type: Pods
and value: 4
), over 30 seconds (periodSeconds: 30
), until there are 20 replicas remaining (minReplicas
).
The selectPolicy: Disabled
parameter prevents the HPA from scaling up the pods. You can manually scale up by adjusting the number of replicas in the replica set or deployment set, if needed.
If set, you can view the scaling policy by using the oc edit
command:
$ oc edit hpa hpa-resource-metrics-memory
apiVersion: autoscaling/v1
kind: HorizontalPodAutoscaler
metadata:
annotations:
autoscaling.alpha.kubernetes.io/behavior:\
'{"ScaleUp":{"StabilizationWindowSeconds":0,"SelectPolicy":"Max","Policies":[{"Type":"Pods","Value":4,"PeriodSeconds":15},{"Type":"Percent","Value":100,"PeriodSeconds":15}]},\
"ScaleDown":{"StabilizationWindowSeconds":300,"SelectPolicy":"Min","Policies":[{"Type":"Pods","Value":4,"PeriodSeconds":60},{"Type":"Percent","Value":10,"PeriodSeconds":60}]}}'
...
From the web console, you can create a horizontal pod autoscaler (HPA) that specifies the minimum and maximum number of pods you want to run on a deployment
or deploymentConfig
object. You can also define the amount of CPU or memory usage that your pods should target.
An HPA cannot be added to deployments that are part of an Operator-backed service, Knative service, or Helm chart. |
To create an HPA in the web console:
In the Topology view, click the node to reveal the side pane.
From the Actions drop-down list, select Add HorizontalPodAutoscaler to open the Add HorizontalPodAutoscaler form.
From the Add HorizontalPodAutoscaler form, define the name, minimum and maximum pod limits, the CPU and memory usage, and click Save.
If any of the values for CPU and memory usage are missing, a warning is displayed. |
To edit an HPA in the web console:
In the Topology view, click the node to reveal the side pane.
From the Actions drop-down list, select Edit HorizontalPodAutoscaler to open the Edit Horizontal Pod Autoscaler form.
From the Edit Horizontal Pod Autoscaler form, edit the minimum and maximum pod limits and the CPU and memory usage, and click Save.
While creating or editing the horizontal pod autoscaler in the web console, you can switch from Form view to YAML view. |
To remove an HPA in the web console:
In the Topology view, click the node to reveal the side panel.
From the Actions drop-down list, select Remove HorizontalPodAutoscaler.
In the confirmation pop-up window, click Remove to remove the HPA.
Using the OKD CLI, you can create a horizontal pod autoscaler (HPA) to automatically scale an existing deployment
, deploymentConfig
, ReplicaSet
, ReplicationController
, or StatefulSet
object. The HPA scales the pods associated with that object to maintain the CPU usage you specify.
It is recommended to use a |
The HPA increases and decreases the number of replicas between the minimum and maximum numbers to maintain the specified CPU utilization across all pods.
When autoscaling for CPU utilization, you can use the oc autoscale
command and specify the minimum and maximum number of pods you want to run at any given time and the average CPU utilization your pods should target. If you do not specify a minimum, the pods are given default values from the OKD server.
To autoscale for a specific CPU value, create a HorizontalPodAutoscaler
object with the target CPU and pod limits.
To use horizontal pod autoscalers, your cluster administrator must have properly configured cluster metrics.
You can use the oc describe PodMetrics <pod-name>
command to determine if metrics are configured. If metrics are
configured, the output appears similar to the following, with Cpu
and Memory
displayed under Usage
.
$ oc describe PodMetrics openshift-kube-scheduler-ip-10-0-135-131.ec2.internal
Name: openshift-kube-scheduler-ip-10-0-135-131.ec2.internal
Namespace: openshift-kube-scheduler
Labels: <none>
Annotations: <none>
API Version: metrics.k8s.io/v1beta1
Containers:
Name: wait-for-host-port
Usage:
Memory: 0
Name: scheduler
Usage:
Cpu: 8m
Memory: 45440Ki
Kind: PodMetrics
Metadata:
Creation Timestamp: 2019-05-23T18:47:56Z
Self Link: /apis/metrics.k8s.io/v1beta1/namespaces/openshift-kube-scheduler/pods/openshift-kube-scheduler-ip-10-0-135-131.ec2.internal
Timestamp: 2019-05-23T18:47:56Z
Window: 1m0s
Events: <none>
To create a horizontal pod autoscaler for CPU utilization:
Perform one of the following:
To scale based on the percent of CPU utilization, create a HorizontalPodAutoscaler
object for an existing object:
$ oc autoscale <object_type>/<name> \(1)
--min <number> \(2)
--max <number> \(3)
--cpu-percent=<percent> (4)
1 | Specify the type and name of the object to autoscale. The object must exist and be a deployment , deploymentConfig /dc , ReplicaSet /rs , ReplicationController /rc , or StatefulSet . |
2 | Optionally, specify the minimum number of replicas when scaling down. |
3 | Specify the maximum number of replicas when scaling up. |
4 | Specify the target average CPU utilization over all the pods, represented as a percent of requested CPU. If not specified or negative, a default autoscaling policy is used. |
For example, the following command shows autoscaling for the image-registry
deployment
object. The initial deployment requires 3 pods. The HPA object increases the minimum to 5. If CPU usage on the pods reaches 75%, the pods will increase to 7:
$ oc autoscale deployment/image-registry --min=5 --max=7 --cpu-percent=75
To scale for a specific CPU value, create a YAML file similar to the following for an existing object:
Create a YAML file similar to the following:
apiVersion: autoscaling/v2 (1)
kind: HorizontalPodAutoscaler
metadata:
name: cpu-autoscale (2)
namespace: default
spec:
scaleTargetRef:
apiVersion: apps/v1 (3)
kind: deployment (4)
name: example (5)
minReplicas: 1 (6)
maxReplicas: 10 (7)
metrics: (8)
- type: Resource
resource:
name: cpu (9)
target:
type: AverageValue (10)
averageValue: 500m (11)
1 | Use the autoscaling/v2 API. |
2 | Specify a name for this horizontal pod autoscaler object. |
3 | Specify the API version of the object to scale:
|
4 | Specify the type of object. The object must be a deployment , deploymentConfig /dc , ReplicaSet /rs , ReplicationController /rc , or StatefulSet . |
5 | Specify the name of the object to scale. The object must exist. |
6 | Specify the minimum number of replicas when scaling down. |
7 | Specify the maximum number of replicas when scaling up. |
8 | Use the metrics parameter for memory utilization. |
9 | Specify cpu for CPU utilization. |
10 | Set to AverageValue . |
11 | Set to averageValue with the targeted CPU value. |
Create the horizontal pod autoscaler:
$ oc create -f <file-name>.yaml
Verify that the horizontal pod autoscaler was created:
$ oc get hpa cpu-autoscale
NAME REFERENCE TARGETS MINPODS MAXPODS REPLICAS AGE
cpu-autoscale deployment/example 173m/500m 1 10 1 20m
Using the OKD CLI, you can create a horizontal pod autoscaler (HPA) to automatically scale an existing
deployment
, deploymentConfig
, ReplicaSet
, ReplicationController
, or StatefulSet
object. The HPA
scales the pods associated with that object to maintain the average memory utilization you specify, either a direct value or a percentage
of requested memory.
It is recommended to use a |
The HPA increases and decreases the number of replicas between the minimum and maximum numbers to maintain the specified memory utilization across all pods.
For memory utilization, you can specify the minimum and maximum number of pods and the average memory utilization your pods should target. If you do not specify a minimum, the pods are given default values from the OKD server.
To use horizontal pod autoscalers, your cluster administrator must have properly configured cluster metrics.
You can use the oc describe PodMetrics <pod-name>
command to determine if metrics are configured. If metrics are
configured, the output appears similar to the following, with Cpu
and Memory
displayed under Usage
.
$ oc describe PodMetrics openshift-kube-scheduler-ip-10-0-129-223.compute.internal -n openshift-kube-scheduler
Name: openshift-kube-scheduler-ip-10-0-129-223.compute.internal
Namespace: openshift-kube-scheduler
Labels: <none>
Annotations: <none>
API Version: metrics.k8s.io/v1beta1
Containers:
Name: wait-for-host-port
Usage:
Cpu: 0
Memory: 0
Name: scheduler
Usage:
Cpu: 8m
Memory: 45440Ki
Kind: PodMetrics
Metadata:
Creation Timestamp: 2020-02-14T22:21:14Z
Self Link: /apis/metrics.k8s.io/v1beta1/namespaces/openshift-kube-scheduler/pods/openshift-kube-scheduler-ip-10-0-129-223.compute.internal
Timestamp: 2020-02-14T22:21:14Z
Window: 5m0s
Events: <none>
To create a horizontal pod autoscaler for memory utilization:
Create a YAML file for one of the following:
To scale for a specific memory value, create a HorizontalPodAutoscaler
object similar to the following for an existing object:
apiVersion: autoscaling/v2 (1)
kind: HorizontalPodAutoscaler
metadata:
name: hpa-resource-metrics-memory (2)
namespace: default
spec:
scaleTargetRef:
apiVersion: apps/v1 (3)
kind: deployment (4)
name: example (5)
minReplicas: 1 (6)
maxReplicas: 10 (7)
metrics: (8)
- type: Resource
resource:
name: memory (9)
target:
type: AverageValue (10)
averageValue: 500Mi (11)
behavior: (12)
scaleDown:
stabilizationWindowSeconds: 300
policies:
- type: Pods
value: 4
periodSeconds: 60
- type: Percent
value: 10
periodSeconds: 60
selectPolicy: Max
1 | Use the autoscaling/v2 API. |
2 | Specify a name for this horizontal pod autoscaler object. |
3 | Specify the API version of the object to scale:
|
4 | Specify the type of object. The object must be a deployment , deploymentConfig ,
ReplicaSet , ReplicationController , or StatefulSet . |
5 | Specify the name of the object to scale. The object must exist. |
6 | Specify the minimum number of replicas when scaling down. |
7 | Specify the maximum number of replicas when scaling up. |
8 | Use the metrics parameter for memory utilization. |
9 | Specify memory for memory utilization. |
10 | Set the type to AverageValue . |
11 | Specify averageValue and a specific memory value. |
12 | Optional: Specify a scaling policy to control the rate of scaling up or down. |
To scale for a percentage, create a HorizontalPodAutoscaler
object similar to the following for an existing object:
apiVersion: autoscaling/v2 (1)
kind: HorizontalPodAutoscaler
metadata:
name: memory-autoscale (2)
namespace: default
spec:
scaleTargetRef:
apiVersion: apps/v1 (3)
kind: deployment (4)
name: example (5)
minReplicas: 1 (6)
maxReplicas: 10 (7)
metrics: (8)
- type: Resource
resource:
name: memory (9)
target:
type: Utilization (10)
averageUtilization: 50 (11)
behavior: (12)
scaleUp:
stabilizationWindowSeconds: 180
policies:
- type: Pods
value: 6
periodSeconds: 120
- type: Percent
value: 10
periodSeconds: 120
selectPolicy: Max
1 | Use the autoscaling/v2 API. |
2 | Specify a name for this horizontal pod autoscaler object. |
3 | Specify the API version of the object to scale:
|
4 | Specify the type of object. The object must be a deployment , deploymentConfig ,
ReplicaSet , ReplicationController , or StatefulSet . |
5 | Specify the name of the object to scale. The object must exist. |
6 | Specify the minimum number of replicas when scaling down. |
7 | Specify the maximum number of replicas when scaling up. |
8 | Use the metrics parameter for memory utilization. |
9 | Specify memory for memory utilization. |
10 | Set to Utilization . |
11 | Specify averageUtilization and a target average memory utilization over all the pods,
represented as a percent of requested memory. The target pods must have memory requests configured. |
12 | Optional: Specify a scaling policy to control the rate of scaling up or down. |
Create the horizontal pod autoscaler:
$ oc create -f <file-name>.yaml
For example:
$ oc create -f hpa.yaml
horizontalpodautoscaler.autoscaling/hpa-resource-metrics-memory created
Verify that the horizontal pod autoscaler was created:
$ oc get hpa hpa-resource-metrics-memory
NAME REFERENCE TARGETS MINPODS MAXPODS REPLICAS AGE
hpa-resource-metrics-memory deployment/example 2441216/500Mi 1 10 1 20m
$ oc describe hpa hpa-resource-metrics-memory
Name: hpa-resource-metrics-memory
Namespace: default
Labels: <none>
Annotations: <none>
CreationTimestamp: Wed, 04 Mar 2020 16:31:37 +0530
Reference: deployment/example
Metrics: ( current / target )
resource memory on pods: 2441216 / 500Mi
Min replicas: 1
Max replicas: 10
ReplicationController pods: 1 current / 1 desired
Conditions:
Type Status Reason Message
---- ------ ------ -------
AbleToScale True ReadyForNewScale recommended size matches current size
ScalingActive True ValidMetricFound the HPA was able to successfully calculate a replica count from memory resource
ScalingLimited False DesiredWithinRange the desired count is within the acceptable range
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Normal SuccessfulRescale 6m34s horizontal-pod-autoscaler New size: 1; reason: All metrics below target
You can use the status conditions set to determine whether or not the horizontal pod autoscaler (HPA) is able to scale and whether or not it is currently restricted in any way.
The HPA status conditions are available with the v2
version of the
autoscaling API.
The HPA responds with the following status conditions:
The AbleToScale
condition indicates whether HPA is able to fetch and update metrics, as well as whether any backoff-related conditions could prevent scaling.
A True
condition indicates scaling is allowed.
A False
condition indicates scaling is not allowed for the reason specified.
The ScalingActive
condition indicates whether the HPA is enabled (for example, the replica count of the target is not zero) and is able to calculate desired metrics.
A True
condition indicates metrics is working properly.
A False
condition generally indicates a problem with fetching metrics.
The ScalingLimited
condition indicates that the desired scale was capped by the maximum or minimum of the horizontal pod autoscaler.
A True
condition indicates that you need to raise or lower the minimum or maximum replica count in order to scale.
A False
condition indicates that the requested scaling is allowed.
$ oc describe hpa cm-test
Name: cm-test
Namespace: prom
Labels: <none>
Annotations: <none>
CreationTimestamp: Fri, 16 Jun 2017 18:09:22 +0000
Reference: ReplicationController/cm-test
Metrics: ( current / target )
"http_requests" on pods: 66m / 500m
Min replicas: 1
Max replicas: 4
ReplicationController pods: 1 current / 1 desired
Conditions: (1)
Type Status Reason Message
---- ------ ------ -------
AbleToScale True ReadyForNewScale the last scale time was sufficiently old as to warrant a new scale
ScalingActive True ValidMetricFound the HPA was able to successfully calculate a replica count from pods metric http_request
ScalingLimited False DesiredWithinRange the desired replica count is within the acceptable range
Events:
1 | The horizontal pod autoscaler status messages. |
The following is an example of a pod that is unable to scale:
Conditions:
Type Status Reason Message
---- ------ ------ -------
AbleToScale False FailedGetScale the HPA controller was unable to get the target's current scale: no matches for kind "ReplicationController" in group "apps"
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Warning FailedGetScale 6s (x3 over 36s) horizontal-pod-autoscaler no matches for kind "ReplicationController" in group "apps"
The following is an example of a pod that could not obtain the needed metrics for scaling:
Conditions:
Type Status Reason Message
---- ------ ------ -------
AbleToScale True SucceededGetScale the HPA controller was able to get the target's current scale
ScalingActive False FailedGetResourceMetric the HPA was unable to compute the replica count: failed to get cpu utilization: unable to get metrics for resource cpu: no metrics returned from resource metrics API
The following is an example of a pod where the requested autoscaling was less than the required minimums:
Conditions:
Type Status Reason Message
---- ------ ------ -------
AbleToScale True ReadyForNewScale the last scale time was sufficiently old as to warrant a new scale
ScalingActive True ValidMetricFound the HPA was able to successfully calculate a replica count from pods metric http_request
ScalingLimited False DesiredWithinRange the desired replica count is within the acceptable range
You can view the status conditions set on a pod by the horizontal pod autoscaler (HPA).
The horizontal pod autoscaler status conditions are available with the |
To use horizontal pod autoscalers, your cluster administrator must have properly configured cluster metrics.
You can use the oc describe PodMetrics <pod-name>
command to determine if metrics are configured. If metrics are
configured, the output appears similar to the following, with Cpu
and Memory
displayed under Usage
.
$ oc describe PodMetrics openshift-kube-scheduler-ip-10-0-135-131.ec2.internal
Name: openshift-kube-scheduler-ip-10-0-135-131.ec2.internal
Namespace: openshift-kube-scheduler
Labels: <none>
Annotations: <none>
API Version: metrics.k8s.io/v1beta1
Containers:
Name: wait-for-host-port
Usage:
Memory: 0
Name: scheduler
Usage:
Cpu: 8m
Memory: 45440Ki
Kind: PodMetrics
Metadata:
Creation Timestamp: 2019-05-23T18:47:56Z
Self Link: /apis/metrics.k8s.io/v1beta1/namespaces/openshift-kube-scheduler/pods/openshift-kube-scheduler-ip-10-0-135-131.ec2.internal
Timestamp: 2019-05-23T18:47:56Z
Window: 1m0s
Events: <none>
To view the status conditions on a pod, use the following command with the name of the pod:
$ oc describe hpa <pod-name>
For example:
$ oc describe hpa cm-test
The conditions appear in the Conditions
field in the output.
Name: cm-test
Namespace: prom
Labels: <none>
Annotations: <none>
CreationTimestamp: Fri, 16 Jun 2017 18:09:22 +0000
Reference: ReplicationController/cm-test
Metrics: ( current / target )
"http_requests" on pods: 66m / 500m
Min replicas: 1
Max replicas: 4
ReplicationController pods: 1 current / 1 desired
Conditions: (1)
Type Status Reason Message
---- ------ ------ -------
AbleToScale True ReadyForNewScale the last scale time was sufficiently old as to warrant a new scale
ScalingActive True ValidMetricFound the HPA was able to successfully calculate a replica count from pods metric http_request
ScalingLimited False DesiredWithinRange the desired replica count is within the acceptable range