Kube Metrics Adapter is a general purpose metrics adapter for Kubernetes that can collect and serve custom and external metrics for Horizontal Pod Autoscaling.
It supports scaling based on Prometheus metrics, SQS queues and others out of the box.
It discovers Horizontal Pod Autoscaling resources and starts to collect the requested metrics and stores them in memory. It's implemented using the custom-metrics-apiserver library.
Here's an example of a HorizontalPodAutoscaler
resource configured to get
requests-per-second
metrics from each pod of the deployment myapp
.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
# metric-config.<metricType>.<metricName>.<collectorType>/<configKey>
metric-config.pods.requests-per-second.json-path/json-key: "$.http_server.rps"
metric-config.pods.requests-per-second.json-path/path: /metrics
metric-config.pods.requests-per-second.json-path/port: "9090"
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: myapp
minReplicas: 1
maxReplicas: 10
metrics:
- type: Pods
pods:
metric:
name: requests-per-second
target:
averageValue: 1k
type: AverageValue
The metric-config.*
annotations are used by the kube-metrics-adapter
to
configure a collector for getting the metrics. In the above example it
configures a json-path pod collector.
Like the support policy offered for Kubernetes, this project aims to support the latest three minor releases of Kubernetes.
The default supported API is autoscaling/v2
(available since v1.23
).
This API MUST be available in the cluster which is the default.
This project uses Go modules as introduced in Go 1.11 therefore you need Go >=1.11 installed in order to build. If using Go 1.11 you also need to activate Module support.
Assuming Go has been setup with module support it can be built simply by running:
export GO111MODULE=on # needed if the project is checked out in your $GOPATH.
$ make
Clone this repository, and run as below:
$ cd kube-metrics-adapter/docs
$ kubectl apply -f .
Collectors are different implementations for getting metrics requested by an
HPA resource. They are configured based on HPA resources and started on-demand by the
kube-metrics-adapter
to only collect the metrics required for scaling the application.
The collectors are configured either simply based on the metrics defined in an HPA resource, or via additional annotations on the HPA resource.
The pod collector allows collecting metrics from each pod matching the label selector defined in the HPA's scaleTargetRef
.
Currently only json-path
collection is supported.
The Pod Collector utilizes the scaleTargetRef
specified in an HPA resource to obtain the label selector from the referenced Kubernetes object. This enables the identification and management of pods associated with that object. Currently, the supported Kubernetes objects for this operation are: Deployment
, StatefulSet
and Rollout
.
Metric | Description | Type | K8s Versions |
---|---|---|---|
custom | No predefined metrics. Metrics are generated from user defined queries. | Pods | >=1.12 |
This is an example of using the pod collector to collect metrics from a json metrics endpoint of each pod matched by the HPA.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
# metric-config.<metricType>.<metricName>.<collectorType>/<configKey>
metric-config.pods.requests-per-second.json-path/json-key: "$.http_server.rps"
metric-config.pods.requests-per-second.json-path/path: /metrics
metric-config.pods.requests-per-second.json-path/port: "9090"
metric-config.pods.requests-per-second.json-path/scheme: "https"
metric-config.pods.requests-per-second.json-path/aggregator: "max"
metric-config.pods.requests-per-second.json-path/interval: "60s" # optional
metric-config.pods.requests-per-second.json-path/min-pod-ready-age: "30s" # optional
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: myapp
minReplicas: 1
maxReplicas: 10
metrics:
- type: Pods
pods:
metric:
name: requests-per-second
target:
averageValue: 1k
type: AverageValue
The pod collector is configured through the annotations which specify the
collector name json-path
and a set of configuration options for the
collector. json-key
defines the json-path query for extracting the right
metric. This assumes the pod is exposing metrics in JSON format. For the above
example the following JSON data would be expected:
{
"http_server": {
"rps": 0.5
}
}
The json-path query support depends on the
github.com/spyzhov/ajson library.
See the README for possible queries. It's expected that the metric you query
returns something that can be turned into a float64
.
The other configuration options path
, port
and scheme
specify where the metrics
endpoint is exposed on the pod. The path
and port
options do not have default values
so they must be defined. The scheme
is optional and defaults to http
.
The aggregator
configuration option specifies the aggregation function used to aggregate
values of JSONPath expressions that evaluate to arrays/slices of numbers.
It's optional but when the expression evaluates to an array/slice, it's absence will
produce an error. The supported aggregation functions are avg
, max
, min
and sum
.
The raw-query
configuration option specifies the query params to send along to the endpoint:
metric-config.pods.requests-per-second.json-path/path: /metrics
metric-config.pods.requests-per-second.json-path/port: "9090"
metric-config.pods.requests-per-second.json-path/raw-query: "foo=bar&baz=bop"
will create a URL like this:
http://<podIP>:9090/metrics?foo=bar&baz=bop
There are also configuration options for custom (connect and request) timeouts when querying pods for metrics:
metric-config.pods.requests-per-second.json-path/request-timeout: 2s
metric-config.pods.requests-per-second.json-path/connect-timeout: 500ms
The default for both of the above values is 15 seconds.
The min-pod-ready-age
configuration option instructs the service to start collecting metrics from the pods only if they are "older" (time elapsed after pod reached "Ready" state) than the specified amount of time.
This is handy when pods need to warm up before HPAs will start tracking their metrics.
The default value is 0 seconds.
The Prometheus collector is a generic collector which can map Prometheus queries to metrics that can be used for scaling. This approach is different from how it's done in the k8s-prometheus-adapter where all available Prometheus metrics are collected and transformed into metrics which the HPA can scale on, and there is no possibility to do custom queries. With the approach implemented here, users can define custom queries and only metrics returned from those queries will be available, reducing the total number of metrics stored.
One downside of this approach is that bad performing queries can slow down/kill Prometheus, so it can be dangerous to allow in a multi tenant cluster. It's also not possible to restrict the available metrics using something like RBAC since any user would be able to create the metrics based on a custom query.
I still believe custom queries are more useful, but it's good to be aware of the trade-offs between the two approaches.
Metric | Description | Type | Kind | K8s Versions |
---|---|---|---|---|
prometheus-query |
Generic metric which requires a user defined query. | External | >=1.12 |
|
custom | No predefined metrics. Metrics are generated from user defined queries. | Object | any | >=1.12 |
This is an example of an HPA configured to get metrics based on a Prometheus
query. The query is defined in the annotation
metric-config.external.processed-events-per-second.prometheus/query
where processed-events-per-second
is the query name which will be associated
with the result of the query.
This allows having multiple prometheus queries associated with a single HPA.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
# This annotation is optional.
# If specified, then this prometheus server is used,
# instead of the prometheus server specified as the CLI argument `--prometheus-server`.
metric-config.external.processed-events-per-second.prometheus/prometheus-server: http://prometheus.my-namespace.svc
# metric-config.<metricType>.<metricName>.<collectorType>/<configKey>
metric-config.external.processed-events-per-second.prometheus/query: |
scalar(sum(rate(event-service_events_count{application="event-service",processed="true"}[1m])))
metric-config.external.processed-events-per-second.prometheus/interval: "60s" # optional
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: custom-metrics-consumer
minReplicas: 1
maxReplicas: 10
metrics:
- type: External
external:
metric:
name: processed-events-per-second
selector:
matchLabels:
type: prometheus
target:
type: AverageValue
averageValue: "10"
Note: Prometheus Object metrics are deprecated and will most likely be removed in the future. Use the Prometheus External metrics instead as described above.
This is an example of an HPA configured to get metrics based on a Prometheus
query. The query is defined in the annotation
metric-config.object.processed-events-per-second.prometheus/query
where
processed-events-per-second
is the metric name which will be associated with
the result of the query.
It also specifies an annotation
metric-config.object.processed-events-per-second.prometheus/per-replica
which
instructs the collector to treat the results as an average over all pods
targeted by the HPA. This makes it possible to mimic the behavior of
targetAverageValue
which is not implemented for metric type Object
as of
Kubernetes v1.10. (It will most likely come in v1.12).
apiVersion: autoscaling/v2beta1
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
# metric-config.<metricType>.<metricName>.<collectorType>/<configKey>
metric-config.object.processed-events-per-second.prometheus/query: |
scalar(sum(rate(event-service_events_count{application="event-service",processed="true"}[1m])))
metric-config.object.processed-events-per-second.prometheus/per-replica: "true"
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: custom-metrics-consumer
minReplicas: 1
maxReplicas: 10
metrics:
- type: Object
object:
metricName: processed-events-per-second
target:
apiVersion: v1
kind: Pod
name: dummy-pod
targetValue: 10 # this will be treated as targetAverageValue
Note: The HPA object requires an Object
to be specified. However when a Prometheus metric is used there is no need
for this object. But to satisfy the schema we specify a dummy pod called dummy-pod
.
The skipper collector is a simple wrapper around the Prometheus collector to make it easy to define an HPA for scaling based on Ingress or RouteGroup metrics when skipper is used as the ingress implementation in your cluster. It assumes you are collecting Prometheus metrics from skipper and it provides the correct Prometheus queries out of the box so users don't have to define those manually.
Metric | Description | Type | Kind | K8s Versions |
---|---|---|---|---|
requests-per-second |
Scale based on requests per second for a certain ingress or routegroup. | Object | Ingress , RouteGroup |
>=1.19 |
This is an example of an HPA that will scale based on requests-per-second
for
an ingress called myapp
.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: myapp
minReplicas: 1
maxReplicas: 10
metrics:
- type: Object
object:
describedObject:
apiVersion: networking.k8s.io/v1
kind: Ingress
name: myapp
metric:
name: requests-per-second
selector:
matchLabels:
backend: backend1 # optional backend
target:
averageValue: "10"
type: AverageValue
This is an example of an HPA that will scale based on requests-per-second
for
a routegroup called myapp
.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: myapp
minReplicas: 1
maxReplicas: 10
metrics:
- type: Object
object:
describedObject:
apiVersion: zalando.org/v1
kind: RouteGroup
name: myapp
metric:
name: requests-per-second
selector:
matchLabels:
backend: backend1 # optional backend
target:
averageValue: "10"
type: AverageValue
Skipper supports sending traffic to different backends based on annotations
present on the Ingress
object, or weights on the RouteGroup backends. By
default the number of replicas will be calculated based on the full traffic
served by that ingress/routegroup. If however only the traffic being routed to
a specific backend should be used then the backend name can be specified via
the backend
label under matchLabels
for the metric. The ingress annotation
where the backend weights can be obtained can be specified through the flag
--skipper-backends-annotation
.
The External RPS collector, like Skipper collector, is a simple wrapper around the Prometheus collector to
make it easy to define an HPA for scaling based on the RPS measured for a given hostname. When
skipper is used as the ingress
implementation in your cluster everything should work automatically, in case another reverse proxy is used as ingress, like Nginx for example, its necessary to configure which prometheus metric should be used through --external-rps-metric-name <metric-name>
flag. Assuming skipper-ingress
is being used or the appropriate metric name is passed using the flag mentioned previously this collector provides the correct Prometheus queries out of the
box so users don't have to define those manually.
Metric | Description | Type | Kind | K8s Versions |
---|---|---|---|---|
requests-per-second |
Scale based on requests per second for a certain hostname. | External | >=1.12 |
This is an example of an HPA that will scale based on requests-per-second
for the RPS measured in the hostnames called: www.example1.com
and www.example2.com
; and weighted by 42%.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
metric-config.external.example-rps.requests-per-second/hostnames: www.example1.com,www.example2.com
metric-config.external.example-rps.requests-per-second/weight: "42"
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: custom-metrics-consumer
minReplicas: 1
maxReplicas: 10
metrics:
- type: External
external:
metric:
name: example-rps
selector:
matchLabels:
type: requests-per-second
target:
type: AverageValue
averageValue: "42"
This metric supports a relation of n:1 between hostnames and metrics. The way it works is the measured RPS is the sum of the RPS rate of each of the specified hostnames. This value is further modified by the weight parameter explained below.
There are ingress-controllers, like skipper-ingress, that supports sending traffic to different backends based on some kind of configuration, in case of skipper annotations
present on the Ingress
object, or weights on the RouteGroup backends. By
default the number of replicas will be calculated based on the full traffic
served by these components. If however only the traffic being routed to
a specific hostname should be used then the weight for the configured hostname(s) might be specified via the weight
annotation metric-config.external.<metric-name>.request-per-second/weight
for the metric being configured.
The InfluxDB collector maps Flux queries to metrics that can be used for scaling.
Note that the collector targets an InfluxDB v2 instance, that's why we only support Flux instead of InfluxQL.
Metric | Description | Type | Kind | K8s Versions |
---|---|---|---|---|
flux-query |
Generic metric which requires a user defined query. | External | >=1.10 |
This is an example of an HPA configured to get metrics based on a Flux query.
The query is defined in the annotation
metric-config.external.<metricName>.influxdb/query
where <metricName>
is
the query name which will be associated with the result of the query. This
allows having multiple flux queries associated with a single HPA.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
# These annotations are optional.
# If specified, then they are used for setting up the InfluxDB client properly,
# instead of using the ones specified via CLI. Respectively:
# - --influxdb-address
# - --influxdb-token
# - --influxdb-org
metric-config.external.queue-depth.influxdb/address: "http://influxdbv2.my-namespace.svc"
metric-config.external.queue-depth.influxdb/token: "secret-token"
# This could be either the organization name or the ID.
metric-config.external.queue-depth.influxdb/org: "deadbeef"
# metric-config.<metricType>.<metricName>.<collectorType>/<configKey>
# <configKey> == query-name
metric-config.external.queue-depth.influxdb/query: |
from(bucket: "apps")
|> range(start: -30s)
|> filter(fn: (r) => r._measurement == "queue_depth")
|> group()
|> max()
// Rename "_value" to "metricvalue" for letting the metrics server properly unmarshal the result.
|> rename(columns: {_value: "metricvalue"})
|> keep(columns: ["metricvalue"])
metric-config.external.queue-depth.influxdb/interval: "60s" # optional
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: queryd-v1
minReplicas: 1
maxReplicas: 4
metrics:
- type: External
external:
metric:
name: queue-depth
selector:
matchLabels:
type: influxdb
target:
type: Value
value: "1"
The AWS collector allows scaling based on external metrics exposed by AWS services e.g. SQS queue lengths.
To integrate with AWS, the controller needs to run on nodes with access to AWS API. Additionally the controller have to have a role with the following policy to get all required data from AWS:
PolicyDocument:
Statement:
- Action: 'sqs:GetQueueUrl'
Effect: Allow
Resource: '*'
- Action: 'sqs:GetQueueAttributes'
Effect: Allow
Resource: '*'
- Action: 'sqs:ListQueues'
Effect: Allow
Resource: '*'
- Action: 'sqs:ListQueueTags'
Effect: Allow
Resource: '*'
Version: 2012-10-17
Metric | Description | Type | K8s Versions |
---|---|---|---|
sqs-queue-length |
Scale based on SQS queue length | External | >=1.12 |
This is an example of an HPA that will scale based on the length of an SQS queue.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: custom-metrics-consumer
minReplicas: 1
maxReplicas: 10
metrics:
- type: External
external:
metric:
name: my-sqs
selector:
matchLabels:
type: sqs-queue-length
queue-name: foobar
region: eu-central-1
target:
averageValue: "30"
type: AverageValue
The matchLabels
are used by kube-metrics-adapter
to configure a collector
that will get the queue length for an SQS queue named foobar
in region
eu-central-1
.
The AWS account of the queue currently depends on how kube-metrics-adapter
is
configured to get AWS credentials. The normal assumption is that you run the
adapter in a cluster running in the AWS account where the queue is defined.
Please open an issue if you would like support for other use cases.
The ZMON collector allows scaling based on external metrics exposed by ZMON checks.
Metric | Description | Type | K8s Versions |
---|---|---|---|
zmon-check |
Scale based on any ZMON check results | External | >=1.12 |
This is an example of an HPA that will scale based on the specified value
exposed by a ZMON check with id 1234
.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
# metric-config.<metricType>.<metricName>.<collectorType>/<configKey>
metric-config.external.my-zmon-check.zmon/key: "custom.*"
metric-config.external.my-zmon-check.zmon/tag-application: "my-custom-app-*"
metric-config.external.my-zmon-check.zmon/interval: "60s" # optional
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: custom-metrics-consumer
minReplicas: 1
maxReplicas: 10
metrics:
- type: External
external:
metric:
name: my-zmon-check
selector:
matchLabels:
type: zmon
check-id: "1234" # the ZMON check to query for metrics
key: "custom.value"
tag-application: my-custom-app
aggregators: avg # comma separated list of aggregation functions, default: last
duration: 5m # default: 10m
target:
averageValue: "30"
type: AverageValue
The check-id
specifies the ZMON check to query for the metrics. key
specifies the JSON key in the check output to extract the metric value from.
E.g. if you have a check which returns the following data:
{
"custom": {
"value": 1.0
},
"other": {
"value": 3.0
}
}
Then the value 1.0
would be returned when the key is defined as custom.value
.
The tag-<name>
labels defines the tags used for the kariosDB query. In a
normal ZMON setup the following tags will be available:
application
alias
(name of Kubernetes cluster)entity
- full ZMON entity ID.
aggregators
defines the aggregation functions applied to the metrics query.
For instance if you define the entity filter
type=kube_pod,application=my-custom-app
you might get three entities back and
then you might want to get an average over the metrics for those three
entities. This would be possible by using the avg
aggregator. The default
aggregator is last
which returns only the latest metric point from the
query. The supported aggregation functions are avg
, count
,
last
, max
, min
, sum
, diff
. See the KariosDB docs for
details.
The duration
defines the duration used for the timeseries query. E.g. if you
specify a duration of 5m
then the query will return metric points for the
last 5 minutes and apply the specified aggregation with the same duration .e.g
max(5m)
.
The annotations metric-config.external.my-zmon-check.zmon/key
and
metric-config.external.my-zmon-check.zmon/tag-<name>
can be optionally used if
you need to define a key
or other tag
with a "star" query syntax like
values.*
. This hack is in place because it's not allowed to use *
in the
metric label definitions. If both annotations and corresponding label is
defined, then the annotation takes precedence.
The Nakadi collector allows scaling based on Nakadi
Subscription API stats metrics consumer_lag_seconds
or unconsumed_events
.
Metric Type | Description | Type | K8s Versions |
---|---|---|---|
unconsumed-events |
Scale based on number of unconsumed events for a Nakadi subscription | External | >=1.24 |
consumer-lag-seconds |
Scale based on number of max consumer lag seconds for a Nakadi subscription | External | >=1.24 |
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
# metric-config.<metricType>.<metricName>.<collectorType>/<configKey>
metric-config.external.my-nakadi-consumer.nakadi/interval: "60s" # optional
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: custom-metrics-consumer
minReplicas: 0
maxReplicas: 8 # should match number of partitions for the event type
metrics:
- type: External
external:
metric:
name: my-nakadi-consumer
selector:
matchLabels:
type: nakadi
subscription-id: "708095f6-cece-4d02-840e-ee488d710b29"
metric-type: "consumer-lag-seconds|unconsumed-events"
target:
# value is compatible with the consumer-lag-seconds metric type.
# It describes the amount of consumer lag in seconds before scaling
# additionally up.
# if an event-type has multiple partitions the value of
# consumer-lag-seconds is the max of all the partitions.
value: "600" # 10m
type: Value
# averageValue is compatible with unconsumed-events metric type.
# This means for every 30 unconsumed events a pod is added.
# unconsumed-events is the sum of of unconsumed_events over all
# partitions.
averageValue: "30"
type: AverageValue
The subscription-id
is the Subscription ID of the relevant consumer. The
metric-type
indicates whether to scale on consumer-lag-seconds
or
unconsumed-events
as outlined below.
unconsumed-events
- is the total number of unconsumed events over all
partitions. When using this metric-type
you should also use the target
averageValue
which indicates the number of events which can be handled per
pod. To best estimate the number of events per pods, you need to understand the
average time for processing an event as well as the rate of events.
Example: You have an event type producing 100 events per second between 00:00
and 08:00. Between 08:01 to 23:59 it produces 400 events per second.
Let's assume that on average a single pod can consume 100 events per second,
then we can define 100 as averageValue
and the HPA would scale to 1 between
00:00 and 08:00, and scale to 4 between 08:01 and 23:59. If there for some
reason is a short spike of 800 events per second, then it would scale to 8 pods
to process those events until the rate goes down again.
consumer-lag-seconds
- describes the age of the oldest unconsumed event for
a subscription. If the event type has multiple partitions the lag is defined as
the max age over all partitions. When using this metric-type
you should use
the target value
to indicate the max lag (in seconds) before the HPA should
scale.
Example: You have a subscription with a defined SLO of "99.99 of events are
consumed within 30 min.". In this case you can define a target value
of e.g.
20 min. (1200s) (to include a safety buffer) such that the HPA only scales up
from 1 to 2 if the target of 20 min. is breached and it needs to work faster
with more consumers.
For this case you should also account for the average time for processing an
event when defining the target.
The http collector allows collecting metrics from an external endpoint specified in the HPA.
Currently only json-path
collection is supported.
Metric | Description | Type | K8s Versions |
---|---|---|---|
custom | No predefined metrics. Metrics are generated from user defined queries. | Pods | >=1.12 |
This is an example of using the HTTP collector to collect metrics from a json metrics endpoint specified in the annotations.
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: myapp-hpa
annotations:
# metric-config.<metricType>.<metricName>.<collectorType>/<configKey>
metric-config.external.unique-metric-name.json-path/json-key: "$.some-metric.value"
metric-config.external.unique-metric-name.json-path/endpoint: "http://metric-source.app-namespace:8080/metrics"
metric-config.external.unique-metric-name.json-path/aggregator: "max"
metric-config.external.unique-metric-name.json-path/interval: "60s" # optional
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: myapp
minReplicas: 1
maxReplicas: 10
metrics:
- type: External
external:
metric:
name: unique-metric-name
selector:
matchLabels:
type: json-path
target:
averageValue: 1
type: AverageValue
The HTTP collector similar to the Pod Metrics collector. The following configuration values are supported:
json-key
to specify the JSON path of the metric to be queriedendpoint
the fully formed path to query for the metric. In the above example a Kubernetes Service in the namespaceapp-namespace
is called.aggregator
is only required if the metric is an array of values and specifies how the values are aggregated. Currently this option can support the values:sum
,max
,min
,avg
.
It's possible to configure the scrape interval for each of the metric types via an annotation:
metric-config.<metricType>.<metricName>.<collectorType>/interval: "30s"
The default is 60s
but can be reduced to let the adapter collect metrics more
often.
The ScalingSchedule
and ClusterScalingSchedule
collectors allow
collecting time-based metrics from the respective CRD objects specified
in the HPA.
These collectors are disabled by default, you have to start the server
with the --scaling-schedule
flag to enable it. Remember to deploy the CRDs
ScalingSchedule
and ClusterScalingSchedule
and allow the service
account used by the server to read, watch and list them.
Metric | Description | Type | K8s Versions |
---|---|---|---|
ObjectName | The metric is calculated and stored for each ScalingSchedule and ClusterScalingSchedule referenced in the HPAs |
ScalingSchedule and ClusterScalingSchedule |
>=1.16 |
To avoid abrupt scaling due to time based metrics,the SchalingSchedule
collector has a feature of ramp-up and ramp-down the metric over a
specific period of time. The duration of the scaling window can be
configured individually in the [Cluster]ScalingSchedule
object, via
the option scalingWindowDurationMinutes
or globally for all scheduled
events, and defaults to a globally configured value if not specified.
The default for the latter is set to 10 minutes, but can be changed
using the --scaling-schedule-default-scaling-window
flag.
This spreads the scale events around, creating less load on the other components, and helping the rest of the metrics (like the CPU ones) to adjust as well.
The HPA algorithm does not make changes if the metric
change is less than the specified by the
horizontal-pod-autoscaler-tolerance
flag:
We'll skip scaling if the ratio is sufficiently close to 1.0 (within a globally-configurable tolerance, from the
--horizontal-pod-autoscaler-tolerance
flag, which defaults to 0.1.
With that in mind, the ramp-up and ramp-down feature divides the scaling
over the specified period of time in buckets, trying to achieve changes
bigger than the configured tolerance. The number of buckets defaults to
10 and can be configured by the --scaling-schedule-ramp-steps
flag.
Important: note that the ramp-up and ramp-down feature can lead to
deployments achieving less than the specified number of pods, due to the
HPA 10% change rule and the ceiling function applied to the desired
number of the pods (check the algorithm details). It
varies with the configured metric for ScalingSchedule
events, the
number of pods and the configured horizontal-pod-autoscaler-tolerance
flag of your kubernetes installation. This gist contains the code to
simulate the situations a deployment with different number of pods, with
a metric of 10000 can face with 10 buckets (max of 90% of the metric
returned) and 5 buckets (max of 80% of the metric returned). The ramp-up
and ramp-down feature can be disabled by setting
--scaling-schedule-default-scaling-window
to 0 and abrupt scalings can
be handled via scaling policies.
This is an example of using the ScalingSchedule collectors to collect metrics from a deployed kind of the CRD. First, the schedule object:
apiVersion: zalando.org/v1
kind: ClusterScalingSchedule
metadata:
name: "scheduling-event"
spec:
schedules:
- type: OneTime
date: "2021-10-02T08:08:08+02:00"
durationMinutes: 30
value: 100
- type: Repeating
durationMinutes: 10
value: 120
period:
startTime: "15:45"
timezone: "Europe/Berlin"
days:
- Mon
- Wed
- Fri
This resource defines a scheduling event named scheduling-event
with
two schedules of the kind ClusterScalingSchedule
.
ClusterScalingSchedule
objects aren't namespaced, what means it can be
referenced by any HPA in any namespace in the cluster. ScalingSchedule
have the exact same fields and behavior, but can be referenced just by
HPAs in the same namespace. The schedules can have the type Repeating
or OneTime
.
This example configuration will generate the following result: at
2021-10-02T08:08:08+02:00
for 30 minutes a metric with the value of
100 will be returned. Every Monday, Wednesday and Friday, starting at 15
hours and 45 minutes (Berlin time), a metric with the value of 120 will
be returned for 10 minutes. It's not the case of this example, but if multiple
schedules collide in time, the biggest value is returned.
Check the CRDs definitions (ScalingSchedule, ClusterScalingSchedule) for a better understanding of the possible fields and their behavior.
An HPA can reference the deployed ClusterScalingSchedule
object as
this example:
apiVersion: autoscaling/v2
kind: HorizontalPodAutoscaler
metadata:
name: "myapp-hpa"
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: myapp
minReplicas: 1
maxReplicas: 15
metrics:
- type: Object
object:
describedObject:
apiVersion: zalando.org/v1
kind: ClusterScalingSchedule
name: "scheduling-event"
metric:
name: "scheduling-event"
target:
type: AverageValue
averageValue: "10"
The name of the metric is equal to the name of the referenced object.
The target.averageValue
in this example is set to 10. This value will
be used by the HPA controller to define the desired number of pods,
based on the metric obtained (check the HPA algorithm
details
for more context). This HPA configuration explicitly says that each pod
of this application supports 10 units of the ClusterScalingSchedule
metric. Multiple applications can share the same
ClusterScalingSchedule
or ScalingSchedule
event and have a different
number of pods based on its target.averageValue
configuration.
In our specific example at 2021-10-02T08:08:08+02:00
as the metric has
the value 100, this application will scale to 10 pods (100/10). Every
Monday, Wednesday and Friday, starting at 15 hours and 45 minutes
(Berlin time) the application will scale to 12 pods (120/10). Both
scaling up will last at least the configured duration times of the
schedules. After that, regular HPA scale down behavior applies.
Note that these number of pods are just considering these custom metrics, the normal HPA behavior still applies, such as: in case of multiple metrics the biggest number of pods is the utilized one, HPA max and min replica configuration, autoscaling policies, etc.