autoscaling

package
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Published: Jan 24, 2023 License: Apache-2.0 Imports: 10 Imported by: 83

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Constants

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const (

	// InternalGroupName is the internal autoscaling group name. This is used for CRDs.
	InternalGroupName = "autoscaling.internal.knative.dev"

	// GroupName is the the public autoscaling group name. This is used for annotations, labels, etc.
	GroupName = "autoscaling.knative.dev"

	// ClassAnnotationKey is the annotation for the explicit class of autoscaler
	// that a particular resource has opted into. For example,
	//   autoscaling.knative.dev/class: foo
	// This uses a different domain because unlike the resource, it is user-facing.
	ClassAnnotationKey = GroupName + "/class"
	// KPA is Knative Horizontal Pod Autoscaler
	KPA = "kpa.autoscaling.knative.dev"
	// HPA is Kubernetes Horizontal Pod Autoscaler
	HPA = "hpa.autoscaling.knative.dev"

	// MinScaleAnnotationKey is the annotation to specify the minimum number of Pods
	// the PodAutoscaler should provision. For example,
	//   autoscaling.knative.dev/min-scale: "1"
	MinScaleAnnotationKey = GroupName + "/min-scale"

	// MaxScaleAnnotationKey is the annotation to specify the maximum number of Pods
	// the PodAutoscaler should provision. For example,
	//   autoscaling.knative.dev/max-scale: "10"
	MaxScaleAnnotationKey = GroupName + "/max-scale"

	// InitialScaleAnnotationKey is the annotation to specify the initial scale of
	// a revision when a service is initially deployed. This number can be set to 0 iff
	// allow-zero-initial-scale of config-autoscaler is true.
	InitialScaleAnnotationKey = GroupName + "/initial-scale"

	// ScaleDownDelayAnnotationKey is the annotation to specify a scale down delay.
	ScaleDownDelayAnnotationKey = GroupName + "/scale-down-delay"

	// MetricAnnotationKey is the annotation to specify what metric the PodAutoscaler
	// should be scaled on. For example,
	//   autoscaling.knative.dev/metric: cpu
	MetricAnnotationKey = GroupName + "/metric"
	// Concurrency is the number of requests in-flight at any given time.
	Concurrency = "concurrency"
	// CPU is the amount of the requested cpu actually being consumed by the Pod.
	CPU = "cpu"
	// Memory is the amount of the requested memory actually being consumed by the Pod.
	Memory = "memory"
	// RPS is the requests per second reaching the Pod.
	RPS = "rps"

	// TargetAnnotationKey is the annotation to specify what metric value the
	// PodAutoscaler should attempt to maintain. For example,
	//   autoscaling.knative.dev/metric: cpu
	//   autoscaling.knative.dev/target: "75"   # target 75% cpu utilization
	// Or
	//   autoscaling.knative.dev/metric: memory
	//   autoscaling.knative.dev/target: "100"   # target 100MiB memory usage
	TargetAnnotationKey = GroupName + "/target"
	// TargetMin is the minimum allowable target.
	// This can be less than 1 due to the fact that with small container
	// concurrencies and small target utilization values this can get
	// below 1.
	TargetMin = 0.01

	// ScaleToZeroPodRetentionPeriodKey is the annotation to specify the minimum
	// time duration the last pod will not be scaled down, after autoscaler has
	// made the decision to scale to 0.
	// This is the per-revision setting compliment to the
	// scale-to-zero-pod-retention-period global setting.
	ScaleToZeroPodRetentionPeriodKey = GroupName + "/scale-to-zero-pod-retention-period"

	// MetricAggregationAlgorithmKey is the annotation that can be used for selection
	// of the algorithm to use for averaging metric data in the Autoscaler.
	// Since autoscalers are a pluggable concept, this field is only validated
	// for Revisions that are owned by Knative Pod Autoscaler.
	// The algorithm will apply to both panic and stagble windows.
	// NB: this is an Alpha feature and can be removed or modified
	//     at any point.
	// Possible values for KPA are:
	// - empty/missing or "linear" — linear average over the whole
	//   metric window (default);
	// - weightedExponential — weighted average with exponential decay.
	//   KPA will compute the decay multiplier automatically based on the window size
	//   and it is at least 0.2. This algorithm might not utilize all the values
	//   in the window, due to their coefficients being infinitesimal.
	MetricAggregationAlgorithmKey = GroupName + "/metric-aggregation-algorithm"

	// MetricAggregationAlgorithmLinear is the linear aggregation algorithm with all weights
	// equal to 1.
	MetricAggregationAlgorithmLinear = "linear"

	// MetricAggregationAlgorithmWeightedExponential is the weighted aggregation algorithm
	// with exponentially decaying weights.
	MetricAggregationAlgorithmWeightedExponential = "weighted-exponential"

	// Note: use the Metric.AggregationAlgorithm() method as it will normalize the casing
	// and return MetricAggregationAlgorithmWeightedExponential
	MetricAggregationAlgorithmWeightedExponentialAlt = "weightedExponential"

	// WindowAnnotationKey is the annotation to specify the time
	// interval over which to calculate the average metric.  Larger
	// values result in more smoothing. For example,
	//   autoscaling.knative.dev/metric: concurrency
	//   autoscaling.knative.dev/window: "2m"
	// Only the kpa.autoscaling.knative.dev class autoscaler supports
	// the window annotation.
	WindowAnnotationKey = GroupName + "/window"
	// WindowMin is the minimum allowable stable autoscaling
	// window. KPA-class autoscalers calculate the desired replica
	// count every 2 seconds (tick-interval in config-autoscaler) so
	// the closer the window gets to that value, the more likely data
	// points will be missed entirely by the panic window which is
	// smaller than the stable window. Anything less than 6 seconds
	// isn't going to work well.
	//
	// nolint:revive // False positive, Min means minimum, not minutes.
	WindowMin = 6 * time.Second
	// WindowMax is the maximum permitted stable autoscaling window.
	// This keeps the event horizon to a reasonable enough limit.
	WindowMax = 1 * time.Hour

	// TargetUtilizationPercentageKey is the annotation which specifies the
	// desired target resource utilization for the revision.
	// TargetUtilization is a percentage in the 1 <= TU <= 100 range.
	// This annotation takes precedence over the config map value.
	TargetUtilizationPercentageKey = GroupName + "/target-utilization-percentage"

	// TargetBurstCapacityKey specifies the desired burst capacity for the
	// revision. Possible values are:
	// -1 -- infinite;
	//  0 -- no TBC;
	// >0 -- actual TBC.
	// <0 && != -1 -- an error.
	TargetBurstCapacityKey = GroupName + "/target-burst-capacity"

	// PanicWindowPercentageAnnotationKey is the annotation to
	// specify the time interval over which to calculate the average
	// metric during a spike. Where a spike is defined as the metric
	// reaching panic level within the panic window (e.g. panic
	// mode). Lower values make panic mode more sensitive. Note:
	// Panic threshold can be overridden with the
	// PanicThresholdPercentageAnnotationKey. For example,
	//   autoscaling.knative.dev/panic-window-percentage: "5.0"
	//   autoscaling.knative.dev/panic-threshold-percentage: "150.0"
	// Only the kpa.autoscaling.knative.dev class autoscaler supports
	// the panic-window-percentage annotation.
	// Panic window is specified as a percentage to maintain the
	// autoscaler's algorithm behavior when only the stable window is
	// specified. The panic window will change along with the stable
	// window at the default percentage.
	PanicWindowPercentageAnnotationKey = GroupName + "/panic-window-percentage"

	// PanicWindowPercentageMin is the minimum allowable panic window
	// percentage. The autoscaler calculates desired replicas every 2
	// seconds (tick-interval in config-autoscaler), so a panic
	// window less than 2 seconds will be missing data points. One
	// percent is a very small ratio and would require a stable
	// window of at least 3.4 minutes. Anything less doesn't make
	// sense.
	PanicWindowPercentageMin = 1.0
	// PanicWindowPercentageMax is the maximum allowable panic window
	// percentage. The KPA autoscaler's panic feature allows the
	// autoscaler to be more responsive over a smaller time scale
	// when necessary. So the panic window cannot be larger than the
	// stable window.
	PanicWindowPercentageMax = 100.0

	// PanicThresholdPercentageAnnotationKey is the annotation to specify
	// the level at what level panic mode will engage when reached within
	// in the panic window. The level is defined as a percentage of
	// the metric target. Lower values make panic mode more
	// sensitive. For example,
	//   autoscaling.knative.dev/panic-window-percentage: "5.0"
	//   autoscaling.knative.dev/panic-threshold-percentage: "150.0"
	// Only the kpa.autoscaling.knative.dev class autoscaler supports
	// the panicThresholdPercentage annotation
	PanicThresholdPercentageAnnotationKey = GroupName + "/panic-threshold-percentage"

	// PanicThresholdPercentageMin is the minimum allowable panic
	// threshold percentage. The KPA autoscaler's panic feature
	// allows the autoscaler to be more responsive over a smaller
	// time scale when necessary. To prevent flapping, during panic
	// mode the autoscaler never decreases the number of replicas. If
	// the panic threshold was as small as the stable target, the
	// autoscaler would always be panicking and the autoscaler would
	// never scale down. One hundred and ten percent is about the
	// smallest useful value.
	PanicThresholdPercentageMin = 110.0

	// PanicThresholdPercentageMax is the counterpart to the PanicThresholdPercentageMin
	// but bounding from above.
	PanicThresholdPercentageMax = 1000.0

	// ActivationScale is the minimum, non-zero value that a service should scale to.
	// For example, if ActivationScale = 2, when a service scaled from zero it would
	// scale up two replicas in this case. In essence, this allows one to set both a
	// min-scale value while also preserving the ability to scale to zero.
	// ActivationScale must be >= 2.
	ActivationScaleKey = GroupName + "/activation-scale"
)

Variables

View Source
var (
	ClassAnnotation = kmap.KeyPriority{
		ClassAnnotationKey,
	}
	InitialScaleAnnotation = kmap.KeyPriority{
		InitialScaleAnnotationKey,
		GroupName + "/initialScale",
	}

	MaxScaleAnnotation = kmap.KeyPriority{
		MaxScaleAnnotationKey,
		GroupName + "/maxScale",
	}
	MetricAnnotation = kmap.KeyPriority{
		MetricAnnotationKey,
	}
	MetricAggregationAlgorithmAnnotation = kmap.KeyPriority{
		MetricAggregationAlgorithmKey,
		GroupName + "/metricAggregationAlgorithm",
	}
	ActivationScale = kmap.KeyPriority{
		ActivationScaleKey,
	}
	MinScaleAnnotation = kmap.KeyPriority{
		MinScaleAnnotationKey,
		GroupName + "/minScale",
	}
	PanicThresholdPercentageAnnotation = kmap.KeyPriority{
		PanicThresholdPercentageAnnotationKey,
		GroupName + "/panicThresholdPercentage",
	}
	PanicWindowPercentageAnnotation = kmap.KeyPriority{
		PanicWindowPercentageAnnotationKey,
		GroupName + "/panicWindowPercentage",
	}
	ScaleDownDelayAnnotation = kmap.KeyPriority{
		ScaleDownDelayAnnotationKey,
		GroupName + "/scaleDownDelay",
	}
	ScaleToZeroPodRetentionPeriodAnnotation = kmap.KeyPriority{
		ScaleToZeroPodRetentionPeriodKey,
		GroupName + "/scaleToZeroPodRetentionPeriod",
	}
	TargetAnnotation = kmap.KeyPriority{
		TargetAnnotationKey,
	}
	TargetBurstCapacityAnnotation = kmap.KeyPriority{
		TargetBurstCapacityKey,
		GroupName + "/targetBurstCapacity",
	}
	TargetUtilizationPercentageAnnotation = kmap.KeyPriority{
		TargetUtilizationPercentageKey,
		GroupName + "/targetUtilizationPercentage",
	}
	WindowAnnotation = kmap.KeyPriority{
		WindowAnnotationKey,
	}
)

Functions

func ValidateAnnotations added in v0.6.0

func ValidateAnnotations(ctx context.Context, config *autoscalerconfig.Config, anns map[string]string) *apis.FieldError

ValidateAnnotations verifies the autoscaling annotations.

Types

This section is empty.

Directories

Path Synopsis
Package v1alpha1 contains the Autoscaling v1alpha1 API types.
Package v1alpha1 contains the Autoscaling v1alpha1 API types.

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