From ccdada3dc19796796fb204252595525548667451 Mon Sep 17 00:00:00 2001 From: Arjun Date: Mon, 3 Feb 2020 17:21:22 +0100 Subject: [PATCH] Revert "Configurable Scaling for the HPA (#18157)" (#18963) This reverts commit 5dbfaafe1ac8875e09ea4ef05390ebc47ad290cb. --- .../horizontal-pod-autoscale.md | 173 +----------------- 1 file changed, 9 insertions(+), 164 deletions(-) diff --git a/content/en/docs/tasks/run-application/horizontal-pod-autoscale.md b/content/en/docs/tasks/run-application/horizontal-pod-autoscale.md index 65e9fe2fa807b..e515206308ff4 100644 --- a/content/en/docs/tasks/run-application/horizontal-pod-autoscale.md +++ b/content/en/docs/tasks/run-application/horizontal-pod-autoscale.md @@ -3,7 +3,6 @@ reviewers: - fgrzadkowski - jszczepkowski - directxman12 -- josephburnett title: Horizontal Pod Autoscaler feature: title: Horizontal scaling @@ -163,15 +162,11 @@ can be fetched, scaling is skipped. This means that the HPA is still capable of scaling up if one or more metrics give a `desiredReplicas` greater than the current value. -Finally, just before HPA scales the target, the scale recommendation is -recorded. The controller considers all recommendations within a configurable -window choosing the highest recommendation from within that window. This value -can be configured using the -`--horizontal-pod-autoscaler-downscale-stabilization` flag or the HPA object -behavior `behavior.scaleDown.stabilizationWindowSeconds` (see [Support for -configurable scaling behavior](#support-for-configurable-scaling-behavior)), -which defaults to 5 minutes. This means that scaledowns will occur gradually, -smoothing out the impact of rapidly fluctuating metric values. +Finally, just before HPA scales the target, the scale recommendation is recorded. The +controller considers all recommendations within a configurable window choosing the +highest recommendation from within that window. This value can be configured using the `--horizontal-pod-autoscaler-downscale-stabilization` flag, which defaults to 5 minutes. +This means that scaledowns will occur gradually, smoothing out the impact of rapidly +fluctuating metric values. ## API Object @@ -218,7 +213,10 @@ When managing the scale of a group of replicas using the Horizontal Pod Autoscal it is possible that the number of replicas keeps fluctuating frequently due to the dynamic nature of the metrics evaluated. This is sometimes referred to as *thrashing*. -Starting from v1.12, a new algorithmic update removes the need for an +Starting from v1.6, a cluster operator can mitigate this problem by tuning +the global HPA settings exposed as flags for the `kube-controller-manager` component: + +Starting from v1.12, a new algorithmic update removes the need for the upscale delay. - `--horizontal-pod-autoscaler-downscale-stabilization`: The value for this option is a @@ -234,11 +232,6 @@ the delay value is set too short, the scale of the replicas set may keep thrashi usual. {{< /note >}} -Starting from v1.17 the downscale stabilization window can be set on a per-HPA -basis by setting the `behavior.scaleDown.stabilizationWindowSeconds` field in -the v2beta2 API. See [Support for configurable scaling -behavior](#support-for-configurable-scaling-behavior). - ## Support for multiple metrics Kubernetes 1.6 adds support for scaling based on multiple metrics. You can use the `autoscaling/v2beta2` API @@ -289,154 +282,6 @@ and [external.metrics.k8s.io](https://github.com/kubernetes/community/blob/maste For examples of how to use them see [the walkthrough for using custom metrics](/docs/tasks/run-application/horizontal-pod-autoscale-walkthrough/#autoscaling-on-multiple-metrics-and-custom-metrics) and [the walkthrough for using external metrics](/docs/tasks/run-application/horizontal-pod-autoscale-walkthrough/#autoscaling-on-metrics-not-related-to-kubernetes-objects). -## Support for configurable scaling behavior - -Starting from -[v1.17](https://github.com/kubernetes/enhancements/blob/master/keps/sig-autoscaling/20190307-configurable-scale-velocity-for-hpa.md) -the `v2beta2` API allows scaling behavior to be configured through the HPA -`behavior` field. Behaviors are specified separately for scaling up and down in -`scaleUp` or `scaleDown` section under the `behavior` field. A stabilization -window can be specified for both directions which prevents the flapping of the -number of the replicas in the scaling target. Similarly specifing scaling -policies controls the rate of change of replicas while scaling. - -### Scaling Policies - -One or more scaling policies can be specified in the `behavior` section of the spec. -When multiple policies are specified the policy which allows the highest amount of -change is the policy which is selected by default. The following example shows this behavior -while scaling down: - -```yaml -behavior: - scaleDown: - policies: - - type: Pods - value: 4 - periodSeconds: 60 - - type: Percent - value: 10 - periodSeconds: 60 -``` - -When the number of pods is more than 40 the second policy will be used for scaling down. -For instance if there are 80 replicas and the target has to be scaled down to 10 replicas -then during the first step 8 replicas will be reduced. In the next iteration when the number -of replicas is 72, 10% of the pods is 7.2 but the number is rounded up to 8. On each loop of -the autoscaler controller the number of pods to be change is re-calculated based on the number -of current replicas. When the number of replicas falls below 40 the first policy_(Pods)_ is applied -and 4 replicas will be reduced at a time. - -`periodSeconds` indicates the length of time in the past for which the policy must hold true. -The first policy allows at most 4 replicas to be scaled down in one minute. The second policy -allows at most 10% of the current replicas to be scaled down in one minute. - -The policy selection can be changed by specifying the `selectPolicy` field for a scaling -direction. By setting the value to `Min` which would select the policy which allows the -smallest change in the replica count. Setting the value to `Disabled` completely disabled -scaling in that direction. - -### Stabilization Window - -The stabilization window is used to retrict the flapping of replicas when the metrics -used for scaling keep fluctuating. The stabilization window is used by the autoscaling -algorithm to consider the computed desired state from the past to prevent scaling. In -the following example the stabilization window is specified for `scaleDown`. - -```yaml -scaleDown: - stabilizationWindowSeconds: 300 -``` - -When the metrics indicate that the target should be scaled down the algorithm looks -into previously computed desired states and uses the highest value from the specified -interval. In above example all desired states from the past 5 minutes will be considered. - -### Default Behavior - -To use the custom scaling not all fields have to be specified. Only values which need to be -customized can be specified. These custom values are merged with default values. The default values -match the existing behavior in the HPA algorithm. - -```yaml -behavior: - scaleDown: - stabilizationWindowSeconds: 300 - policies: - - type: Percent - value: 100 - periodSeconds: 15 - scaleUp: - stabilizationWindowSeconds: 0 - policies: - - type: Percent - value: 100 - periodSeconds: 15 - - type: Pods - value: 4 - periodSeconds: 15 - selectPolicy: Max -``` -For scaling down the stabilization window is _300_ seconds(or the value of the -`--horizontal-pod-autoscaler-downscale-stabilization` flag if provided). There is only a single policy -for scaling down which allows a 100% of the currently running replicas to be removed which -means the scaling target can be scaled down to the minimum allowed replicas. -For scaling up there is no stabilization window. When the metrics indicate that the target should be -scaled up the target is scaled up immediately. There are 2 policies which. 4 pods or a 100% of the currently -running replicas will be added every 15 seconds till the HPA reaches its steady state. - -### Example: change downscale stabilization window - -To provide a custom downscale stabilization window of 1 minute, the following -behavior would be added to the HPA: - -```yaml -behavior: - scaleDown: - stabilizationWindowSeconds: 60 -``` - -### Example: limit scale down rate - -To limit the rate at which pods are removed by the HPA to 10% per minute, the -following behavior would be added to the HPA: - -```yaml -behavior: - scaleDown: - policies: - - type: Percent - value: 10 - periodSeconds: 60 -``` - -To allow a final drop of 5 pods, another policy can be added and a selection -strategy of minimum: - -```yaml -behavior: - scaleDown: - policies: - - type: Percent - value: 10 - periodSeconds: 60 - - type: Pods - value: 5 - periodSeconds: 60 - selectPolicy: Max -``` - -### Example: disable scale down - -The `selectPolicy` value of `Disabled` turns off scaling the given direction. -So to prevent downscaling the following policy would be used: - -```yaml -behavior: - scaleDown: - selectPolicy: Disabled -``` - {{% /capture %}} {{% capture whatsnext %}}