EC2AutoscaleNode
The ec2Autoscale
node triggers autoscale events for a group on a AWS Autoscaling group.
The node also outputs points for the triggered events.
Example:
// Target 80% cpu per ec2 instance
var target = 80.0
var min = 1
var max = 10
var period = 5m
var every = period
stream
|from()
.measurement('cpu')
.groupBy('host_name','group_name')
.where(lambda: "cpu" == 'cpu-total')
|eval(lambda: 100.0 - "usage_idle")
.as('usage_percent')
|window()
.period(period)
.every(every)
|mean('usage_percent')
.as('mean_cpu')
|groupBy('group_name')
|sum('mean_cpu')
.as('total_cpu')
|ec2Autoscale()
// Get the group name of the VM(EC2 instance) from "group_name" tag.
.groupNameTag('group_name')
.min(min)
.max(max)
// Set the desired number of replicas based on target.
.replicas(lambda: int(ceil("total_cpu" / target)))
|influxDBOut()
.database('deployments')
.measurement('scale_events')
.precision('s')
The above example computes the mean of CPU usage_percent
by host_name
, name
, and group_name
.
The sum of mean CPU usage is calculated as total_cpu
.
Using the total_cpu
over the last time period, a desired number of replicas is computed
based on the target percentage usage of CPU.
If the desired number of replicas has changed, Kapacitor makes the appropriate API call to the AWS autoscaling group to update the replica’s spec.
Any time the Ec2Autoscale node changes a replica count, it emits a point.
The point is tagged with the group name using the groupName
.
In addition, the group by tags is preserved on the emitted point.
The point contains two fields representing change in the replicas: old
and new
.
Available Statistics:
increase_events
: number of times the replica count was increased.decrease_events
: number of times the replica count was decreased.cooldown_drops
: number of times an event was dropped because of a cooldown timer.errors
: number of errors encountered, typically related to communicating with the AWS autoscaling API.
Constructor
Chaining Method | Description |
---|---|
ec2Autoscale ( ) | Create a node that can trigger autoscale events for an EC2 Autoscale group. |
Property Methods
Setters | Description |
---|---|
cluster ( value string ) | Cluster is the ID of EC2 Autoscale group to use. The ID of the cluster is specified in the kapacitor configuration. |
currentField ( value string ) | CurrentField is the name of a field into which the current replica count will be set as an int. If empty no field will be set. Useful for computing deltas on the current state. |
decreaseCooldown ( value time.Duration ) | Only one decrease event can be triggered per resource every DecreaseCooldown interval. |
groupName ( value string ) | GroupName is the name of the autoscaling group to autoscale. |
groupNameTag ( value string ) | GroupName is the name of a tag which contains the name of the autoscaling group to autoscale. |
increaseCooldown ( value time.Duration ) | Only one increase event can be triggered per resource every IncreaseCooldown interval. |
max ( value int64 ) | The maximum scale factor to set. If 0 then there is no upper limit. Default: 0, a.k.a no limit. |
min ( value int64 ) | The minimum scale factor to set. Default: 1 |
outputGroupNameTag ( value string ) | OutputGroupName is the name of a tag into which the group name will be written for output autoscale events. Defaults to the value of GroupNameTag if its not empty. |
quiet ( ) | Suppress all error logging events from this node. |
replicas ( value ast.LambdaNode ) | Replicas is a lambda expression that should evaluate to the desired number of replicas for the resource. |
Chaining Methods
Alert, Barrier, Bottom, ChangeDetect, Combine, Count, CumulativeSum, Deadman, Default, Delete, Derivative, Difference, Distinct, Ec2Autoscale, Elapsed, Eval, First, Flatten, GroupBy, HoltWinters, HoltWintersWithFit, HttpOut, HttpPost, InfluxDBOut, Join, K8sAutoscale, KapacitorLoopback, Last, Log, Mean, Median, Mode, MovingAverage, Percentile, Sample, Shift, Sideload, Spread, StateCount, StateDuration, Stats, Stddev, Sum, SwarmAutoscale, Top, Trickle, Union, Where, Window
Properties
Property methods modify state on the calling node.
They do not add another node to the pipeline, and always return a reference to the calling node.
Property methods are marked using the .
operator.
Cluster
Cluster is the ID of ec2 autoscale group to use. The ID of the cluster is specified in the kapacitor configuration.
ec2Autoscale.cluster(value string)
CurrentField
CurrentField is the name of a field into which the current replica count will be set as an int. If empty no field will be set. Useful for computing deltas on the current state.
Example:
|ec2Autoscale()
.currentField('replicas')
// Increase the replicas by 1 if the qps is over the threshold
.replicas(lambda: if("qps" > threshold, "replicas" + 1, "replicas"))
ec2Autoscale.currentField(value string)
DecreaseCooldown
Only one decrease event can be triggered per resource every DecreaseCooldown interval.
ec2Autoscale.decreaseCooldown(value time.Duration)
GroupName
GroupName is the name of the autoscaling group to autoscale.
ec2Autoscale.groupName(value string)
GroupNameTag
GroupName is the name of a tag which contains the name of the autoscaling group to autoscale.
ec2Autoscale.groupNameTag(value string)
IncreaseCooldown
Only one increase event can be triggered per resource every IncreaseCooldown interval.
ec2Autoscale.increaseCooldown(value time.Duration)
Max
The maximum scale factor to set. If 0 then there is no upper limit. Default: 0, a.k.a no limit.
ec2Autoscale.max(value int64)
Min
The minimum scale factor to set. Default: 1
ec2Autoscale.min(value int64)
OutputGroupNameTag
OutputGroupName is the name of a tag into which the group name will be written for output autoscale events. Defaults to the value of GroupNameTag if its not empty.
ec2Autoscale.outputGroupNameTag(value string)
Quiet
Suppress all error logging events from this node.
ec2Autoscale.quiet()
Replicas
Replicas is a lambda expression that should evaluate to the desired number of replicas for the resource.
ec2Autoscale.replicas(value ast.LambdaNode)
Chaining Methods
Chaining methods create a new node in the pipeline as a child of the calling node.
They do not modify the calling node.
Chaining methods are marked using the |
operator.
Alert
Create an alert node, which can trigger alerts.
ec2Autoscale|alert()
Returns: AlertNode
Barrier
Create a new Barrier node that emits a BarrierMessage periodically.
One BarrierMessage will be emitted every period duration.
ec2Autoscale|barrier()
Returns: BarrierNode
Bottom
Select the bottom num
points for field
and sort by any extra tags or fields.
ec2Autoscale|bottom(num int64, field string, fieldsAndTags ...string)
Returns: InfluxQLNode
ChangeDetect
Create a new node that only emits new points if different from the previous point.
ec2Autoscale|changeDetect(field string)
Returns: ChangeDetectNode
Combine
Combine this node with itself. The data is combined on timestamp.
ec2Autoscale|combine(expressions ...ast.LambdaNode)
Returns: CombineNode
Count
Count the number of points.
ec2Autoscale|count(field string)
Returns: InfluxQLNode
CumulativeSum
Compute a cumulative sum of each point that is received. A point is emitted for every point collected.
ec2Autoscale|cumulativeSum(field string)
Returns: InfluxQLNode
Deadman
Helper function for creating an alert on low throughput, a.k.a. deadman’s switch.
- Threshold: trigger alert if throughput drops below threshold in points/interval.
- Interval: how often to check the throughput.
- Expressions: optional list of expressions to also evaluate. Useful for time of day alerting.
Example:
var data = stream
|from()...
// Trigger critical alert if the throughput drops below 100 points per 10s and checked every 10s.
data
|deadman(100.0, 10s)
//Do normal processing of data
data...
The above is equivalent to this example:
var data = stream
|from()...
// Trigger critical alert if the throughput drops below 100 points per 10s and checked every 10s.
data
|stats(10s)
.align()
|derivative('emitted')
.unit(10s)
.nonNegative()
|alert()
.id('node \'stream0\' in task \'{{ .TaskName }}\'')
.message('{{ .ID }} is {{ if eq .Level "OK" }}alive{{ else }}dead{{ end }}: {{ index .Fields "emitted" | printf "%0.3f" }} points/10s.')
.crit(lambda: "emitted" <= 100.0)
//Do normal processing of data
data...
The id
and message
alert properties can be configured globally via the ‘deadman’ configuration section.
Since the AlertNode is the last piece it can be further modified as usual. Example:
var data = stream
|from()...
// Trigger critical alert if the throughput drops below 100 points per 10s and checked every 10s.
data
|deadman(100.0, 10s)
.slack()
.channel('#dead_tasks')
//Do normal processing of data
data...
You can specify additional lambda expressions to further constrain when the deadman’s switch is triggered. Example:
var data = stream
|from()...
// Trigger critical alert if the throughput drops below 100 points per 10s and checked every 10s.
// Only trigger the alert if the time of day is between 8am-5pm.
data
|deadman(100.0, 10s, lambda: hour("time") >= 8 AND hour("time") <= 17)
//Do normal processing of data
data...
ec2Autoscale|deadman(threshold float64, interval time.Duration, expr ...ast.LambdaNode)
Returns: AlertNode
Default
Create a node that can set defaults for missing tags or fields.
ec2Autoscale|default()
Returns: DefaultNode
Delete
Create a node that can delete tags or fields.
ec2Autoscale|delete()
Returns: DeleteNode
Derivative
Create a new node that computes the derivative of adjacent points.
ec2Autoscale|derivative(field string)
Returns: DerivativeNode
Difference
Compute the difference between points independent of elapsed time.
ec2Autoscale|difference(field string)
Returns: InfluxQLNode
Distinct
Produce batch of only the distinct points.
ec2Autoscale|distinct(field string)
Returns: InfluxQLNode
Ec2Autoscale
Create a node that can trigger autoscale events for a ec2 autoscalegroup.
ec2Autoscale|ec2Autoscale()
Returns: Ec2AutoscaleNode
Elapsed
Compute the elapsed time between points.
ec2Autoscale|elapsed(field string, unit time.Duration)
Returns: InfluxQLNode
Eval
Create an eval node that will evaluate the given transformation function to each data point. A list of expressions may be provided and will be evaluated in the order they are given. The results are available to later expressions.
ec2Autoscale|eval(expressions ...ast.LambdaNode)
Returns: EvalNode
First
Select the first point.
ec2Autoscale|first(field string)
Returns: InfluxQLNode
Flatten
Flatten points with similar times into a single point.
ec2Autoscale|flatten()
Returns: FlattenNode
GroupBy
Group the data by a set of tags.
Can pass literal * to group by all dimensions. Example:
|groupBy(*)
ec2Autoscale|groupBy(tag ...interface{})
Returns: GroupByNode
HoltWinters
Compute the Holt-Winters (/influxdb/v1/query_language/functions/#holt-winters) forecast of a data set.
ec2Autoscale|holtWinters(field string, h int64, m int64, interval time.Duration)
Returns: InfluxQLNode
HoltWintersWithFit
Compute the Holt-Winters (/influxdb/v1/query_language/functions/#holt-winters) forecast of a data set. This method also outputs all the points used to fit the data in addition to the forecasted data.
ec2Autoscale|holtWintersWithFit(field string, h int64, m int64, interval time.Duration)
Returns: InfluxQLNode
HttpOut
Create an HTTP output node that caches the most recent data it has received.
The cached data is available at the given endpoint.
The endpoint is the relative path from the API endpoint of the running task.
For example, if the task endpoint is at /kapacitor/v1/tasks/<task_id>
and endpoint is
top10
, then the data can be requested from /kapacitor/v1/tasks/<task_id>/top10
.
ec2Autoscale|httpOut(endpoint string)
Returns: HTTPOutNode
HttpPost
Creates an HTTP Post node that POSTS received data to the provided HTTP endpoint. HttpPost expects 0 or 1 arguments. If 0 arguments are provided, you must specify an endpoint property method.
ec2Autoscale|httpPost(url ...string)
Returns: HTTPPostNode
InfluxDBOut
Create an influxdb output node that will store the incoming data into InfluxDB.
ec2Autoscale|influxDBOut()
Returns: InfluxDBOutNode
Join
Join this node with other nodes. The data is joined on timestamp.
ec2Autoscale|join(others ...Node)
Returns: JoinNode
K8sAutoscale
Create a node that can trigger autoscale events for a kubernetes cluster.
ec2Autoscale|k8sAutoscale()
Returns: K8sAutoscaleNode
KapacitorLoopback
Create an kapacitor loopback node that will send data back into Kapacitor as a stream.
ec2Autoscale|kapacitorLoopback()
Returns: KapacitorLoopbackNode
Last
Select the last point.
ec2Autoscale|last(field string)
Returns: InfluxQLNode
Log
Create a node that logs all data it receives.
ec2Autoscale|log()
Returns: LogNode
Mean
Compute the mean of the data.
ec2Autoscale|mean(field string)
Returns: InfluxQLNode
Median
Compute the median of the data.
Note: This method is not a selector. If you want the median point, use
.percentile(field, 50.0)
.
ec2Autoscale|median(field string)
Returns: InfluxQLNode
Mode
Compute the mode of the data.
ec2Autoscale|mode(field string)
Returns: InfluxQLNode
MovingAverage
Compute a moving average of the last window points. No points are emitted until the window is full.
ec2Autoscale|movingAverage(field string, window int64)
Returns: InfluxQLNode
Percentile
Select a point at the given percentile. This is a selector function, no interpolation between points is performed.
ec2Autoscale|percentile(field string, percentile float64)
Returns: InfluxQLNode
Sample
Create a new node that samples the incoming points or batches.
One point will be emitted every count or duration specified.
ec2Autoscale|sample(rate interface{})
Returns: SampleNode
Shift
Create a new node that shifts the incoming points or batches in time.
ec2Autoscale|shift(shift time.Duration)
Returns: ShiftNode
Sideload
Create a node that can load data from external sources.
ec2Autoscale|sideload()
Returns: SideloadNode
Spread
Compute the difference between min
and max
points.
ec2Autoscale|spread(field string)
Returns: InfluxQLNode
StateCount
Create a node that tracks number of consecutive points in a given state.
ec2Autoscale|stateCount(expression ast.LambdaNode)
Returns: StateCountNode
StateDuration
Create a node that tracks duration in a given state.
ec2Autoscale|stateDuration(expression ast.LambdaNode)
Returns: StateDurationNode
Stats
Create a new stream of data that contains the internal statistics of the node. The interval represents how often to emit the statistics based on real time. This means the interval time is independent of the times of the data points the source node is receiving.
ec2Autoscale|stats(interval time.Duration)
Returns: StatsNode
Stddev
Compute the standard deviation.
ec2Autoscale|stddev(field string)
Returns: InfluxQLNode
Sum
Compute the sum of all values.
ec2Autoscale|sum(field string)
Returns: InfluxQLNode
SwarmAutoscale
Create a node that can trigger autoscale events for a Docker swarm cluster.
ec2Autoscale|swarmAutoscale()
Returns: SwarmAutoscaleNode
Top
Select the top num
points for field
and sort by any extra tags or fields.
ec2Autoscale|top(num int64, field string, fieldsAndTags ...string)
Returns: InfluxQLNode
Trickle
Create a new node that converts batch data to stream data.
ec2Autoscale|trickle()
Returns: TrickleNode
Union
Perform the union of this node and all other given nodes.
ec2Autoscale|union(node ...Node)
Returns: UnionNode
Where
Create a new node that filters the data stream by a given expression.
ec2Autoscale|where(expression ast.LambdaNode)
Returns: WhereNode
Window
Create a new node that windows the stream by time.
NOTE: Window can only be applied to stream edges.
ec2Autoscale|window()
Returns: WindowNode
Was this page helpful?
Thank you for your feedback!
Support and feedback
Thank you for being part of our community! We welcome and encourage your feedback and bug reports for Kapacitor and this documentation. To find support, use the following resources: