Datadog Latest
Scale applications based on Datadog.
💡 NOTE: Take into account API Datadog endpoints rate limits when defining polling interval. For more detailed information about polling intervals check the Polling intervals and Datadog rate limiting section.
There are two ways to poll Datadog for a query value using the Datadog scaler: using the REST API endpoints, or using the Datadog Cluster Agent as proxy. Using the Datadog Cluster Agent as proxy reduces the chance of reaching rate limits. As both types are different in terms of usage and authentication, this documentation handles them separately.
Using the Datadog Cluster Agent (Experimental)
With this method, the Datadog scaler will be connecting to the Datadog Cluster Agent to retrieve the query values that will be used to drive the KEDA scaling events. This reduces the risk of reaching rate limits for the Datadog API, as the Cluster Agent retrieves metric values in batches.
Deploy the Datadog Cluster Agent with enabled external metrics
First, deploy the Datadog Cluster Agent enabling the external metrics provider, but without registering it as an APIService
(to avoid clashing with KEDA).
If you are using Helm to deploy the Cluster Agent, set:
clusterAgent.metricsProvider.enabled
totrue
clusterAgent.metricsProvider.registerAPIService
tofalse
clusterAgent.metricsProvider.useDatadogMetrics
totrue
clusterAgent.env
to[{name: DD_EXTERNAL_METRICS_PROVIDER_ENABLE_DATADOGMETRIC_AUTOGEN, value: "false"}]
If you are using the Datadog Operator, add the following options to your DatadogAgent
object:
apiVersion: datadoghq.com/v2alpha1
kind: DatadogAgent
metadata:
name: datadog
spec:
features:
externalMetricsServer:
enabled: true
useDatadogMetrics: true
registerAPIService: false
override:
clusterAgent:
env: [{name: DD_EXTERNAL_METRICS_PROVIDER_ENABLE_DATADOGMETRIC_AUTOGEN, value: "false"}]
[...]
NOTE: Using the Datadog Operator for this purpose requires version 1.8.0 of the operator or later.
Create a DatadogMetric object for each scaling query
To use the Datadog Cluster Agent to retrieve the query values from Datadog, first, create a DatadogMetric
object with the query to drive your scaling events. You will need to add the external-metrics.datadoghq.com/always-active: "true"
annotation, to ensure the Cluster Agent retrieves the query value. Example:
apiVersion: datadoghq.com/v1alpha1
kind: DatadogMetric
metadata:
annotations:
external-metrics.datadoghq.com/always-active: "true"
name: nginx-hits
spec:
query: sum:nginx.net.request_per_s{kube_deployment:nginx}
Trigger Specification
This specification describes the datadog
trigger that scales based on a Datadog query, using the Datadog Cluster Agent as proxy.
triggers:
- type: datadog
metricType: Value
metadata:
useClusterAgentProxy: "true"
datadogMetricName: "nginx-hits"
datadogMetricNamespace: "default"
targetValue: "7.75"
activationQueryValue: "1.1"
type: "global" # Deprecated in favor of trigger.metricType
metricUnavailableValue: "1.5"
Parameter list:
useClusterAgentProxy
- Whether to use the Cluster Agent as proxy to get the query values. (Values: true, false, Default: false, Optional)datadogMetricName
- The name of theDatadogMetric
object to drive the scaling events.datadogMetricNamespace
- The namespace of theDatadogMetric
object to drive the scaling events.targetValue
- Value to reach to start scaling (This value can be a float).activationQueryValue
- Target value for activating the scaler. Learn more about activation here.(Default:0
, Optional, This value can be a float)type
- Whether to start scaling based on the value or the average between pods. (Values:average
,global
, Default:average
, Optional)age
: The time window (in seconds) to retrieve metrics from Datadog. (Default:90
, Optional)lastAvailablePointOffset
: The offset to retrieve the X to last data point. The value of last data point of some queries might be inaccurate because of the implicit rollup function, try to adjust to1
if you encounter this issue. (Default:0
, Optional)metricUnavailableValue
: The value of the metric to return to the HPA if Datadog doesn’t find a metric value for the specified time window. If not set, an error will be returned to the HPA, which will log a warning. (Optional, This value can be a float)
💡 NOTE: The
type
parameter is deprecated in favor of the globalmetricType
and will be removed in a future release. Users are advised to usemetricType
instead.
Authentication
The Datadog scaler with Cluster Agent supports one type of authentication - Bearer authentication.
You can use TriggerAuthentication
CRD to configure the authentication. Specify authMode
and other trigger parameters along with secret credentials in TriggerAuthentication
as mentioned below:
Common to all authentication types
authMode
- The authentication mode to connect to the Cluster Agent. (Values: bearer, Default: bearer, Optional)datadogNamespace
- The namespace where the Datadog Cluster Agent is deployed.datadogMetricsService
- The service name for the Cluster Agent metrics server. To find the name of the service, check the available services in the Datadog namespace and look for the*-cluster-agent-metrics*
name pattern.datadogMetricsServicePort
- The port of the service for the Cluster Agent Metrics API. (Default: 8443, Optional)unsafeSsl
- Skip certificate validation when connecting over HTTPS. (Values: true, false, Default: false, Optional)
Bearer authentication:
token
- The ServiceAccount token to connect to the Datadog Cluster Agent. The service account needs to have permissions toget
,watch
, andlist
allexternal.metrics.k8s.io
resources.
Example
apiVersion: v1
kind: Secret
metadata:
name: datadog-config
namespace: my-project
type: Opaque
data:
datadogNamespace: # Required: base64 encoded value of the namespace where the Datadog Cluster Agent is deployed
datadogMetricsService: # Required: base64 encoded value of the Cluster Agent metrics server service
unsafeSsl: # Optional: base64 encoded value of `true` or `false`
authMode: # Required: base64 encoded value of the authentication mode (in this case, bearer)
---
apiVersion: keda.sh/v1alpha1
kind: TriggerAuthentication
metadata:
name: datadog-cluster-agent-creds
namespace: my-project
spec:
secretTargetRef:
- parameter: token
name: dd-cluster-agent-token
key: token
- parameter: datadogNamespace
name: datadog-config
key: namespace
- parameter: unsafeSsl
name: datadog-config
key: unsafeSsl
- parameter: authMode
name: datadog-config
key: authMode
---
apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
name: datadog-scaledobject
namespace: my-project
spec:
scaleTargetRef:
name: nginx
maxReplicaCount: 3
minReplicaCount: 1
pollingInterval: 60
triggers:
- type: datadog
metadata:
useClusterAgentProxy: "true"
datadogMetricName: "nginx-hits"
datadogMetricNamespace: "default"
targetValue: "2"
type: "global"
authenticationRef:
name: datadog-cluster-agent-creds
Using the Datadog REST API
Trigger Specification
This specification describes the datadog
trigger that scales based on a Datadog query, using the Datadog REST API.
triggers:
- type: datadog
metricType: Value
metadata:
useClusterAgentProxy: "false"
query: "sum:trace.redis.command.hits{env:none,service:redis}.as_count()"
queryValue: "7.75"
activationQueryValue: "1.1"
queryAggregator: "max"
type: "global" # Deprecated in favor of trigger.metricType
age: "120"
timeWindowOffset: "30"
lastAvailablePointOffset: "1"
metricUnavailableValue: "1.5"
Parameter list:
useClusterAgentProxy
- Whether to use the Cluster Agent as proxy to get the query values. (Default: false)query
- The Datadog query to run.queryValue
- Value to reach to start scaling (This value can be a float).activationQueryValue
- Target value for activating the scaler. Learn more about activation here.(Default:0
, Optional, This value can be a float)queryAggregator
- Whenquery
is multiple queries, comma-seperated, this sets how to aggregate the multiple results. (Values:max
,average
, Required only whenquery
contains multiple queries)type
- Whether to start scaling based on the value or the average between pods. (Values:average
,global
, Default:average
, Optional)age
: The time window (in seconds) to retrieve metrics from Datadog. (Default:90
, Optional)timeWindowOffset
: The delayed time window offset (in seconds) to wait for the metric to be available. The values of some queries might be not available at now and need a small delay to become available, try to adjusttimeWindowOffset
if you encounter this issue. (Default:0
, Optional)lastAvailablePointOffset
: The offset to retrieve the X to last data point. The value of last data point of some queries might be inaccurate because of the implicit rollup function, try to adjust to1
if you encounter this issue. (Default:0
, Optional)metricUnavailableValue
: The value of the metric to return to the HPA if Datadog doesn’t find a metric value for the specified time window. If not set, an error will be returned to the HPA, which will log a warning. (Optional, This value can be a float)
💡 NOTE: The
type
parameter is deprecated in favor of the globalmetricType
and will be removed in a future release. Users are advised to usemetricType
instead.
Authentication
Datadog requires both an API key and an APP key to retrieve metrics from your account.
You should use TriggerAuthentication
CRD to configure the authentication:
Parameter list:
apiKey
- Datadog API key.appKey
- Datadog APP key.datadogSite
- Datadog site where to get the metrics from. This is commonly referred as DD_SITE in Datadog documentation. (Default:datadoghq.com
, Optional)
Example
The example below uses the default KEDA polling interval (30 seconds). Take into account that API Datadog endpoints are rate limited and reducing the polling interval can accelerate reaching it. If your account has reached its rate limit, a relevant error will be logged in KEDA.
apiVersion: v1
kind: Secret
metadata:
name: datadog-secrets
namespace: my-project
type: Opaque
data:
apiKey: # Required: base64 encoded value of Datadog apiKey
appKey: # Required: base64 encoded value of Datadog appKey
datadogSite: # Optional: base64 encoded value of Datadog site
---
apiVersion: keda.sh/v1alpha1
kind: TriggerAuthentication
metadata:
name: keda-trigger-auth-datadog-secret
namespace: my-project
spec:
secretTargetRef:
# Required: API key for your Datadog account
- parameter: apiKey
name: datadog-secrets
key: apiKey
# Required: APP key for your Datadog account
- parameter: appKey
name: datadog-secrets
key: appKey
# Optional: Datadog site. Default: "datadoghq.com"
- parameter: datadogSite
name: datadog-secrets
key: datadogSite
---
apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
name: datadog-scaledobject
namespace: my-project
spec:
scaleTargetRef:
name: worker
triggers:
- type: datadog
# Optional: (Value or AverageValue). Whether the target value is global or average per pod. Default: AverageValue
metricType: "Value"
metadata:
# Required: datadog metric query
query: "sum:trace.redis.command.hits{env:none,service:redis}.as_count()"
# Required: according to the number of query result, to scale the TargetRef
queryValue: "7"
# Optional: The time window (in seconds) to retrieve metrics from Datadog. Default: 90
age: "120"
# Optional: The metric value to return to the HPA if a metric value wasn't found for the specified time window
metricUnavailableValue: "0"
authenticationRef:
name: keda-trigger-auth-datadog-secret
Polling intervals and Datadog rate limiting
API Datadog endpoints are rate
limited. Depending on the
state of the ScaledObject
there are two different parameters to control how
often (per ScaledObject
) we query Datadog for a metric.
When scaling from 0 to 1, the polling interval is controlled by KEDA, using the
spec.pollingInterval
parameter in the ScaledObject
definition. For example, if
this parameter is set to 60
, KEDA will poll Datadog for a metric value every
60 seconds while the number of replicas is 0.
While scaling from 1 to N, on top of KEDA, the HPA will also poll regularly
Datadog for metrics, based on the --horizontal-pod-autoscaler-sync-period
parameter to the
kube-controller-manager
,
which by default is 15 seconds. For example, if the kube-controller-manager
was started with --horizontal-pod-autoscaler-sync-period=30
, the HPA will poll
Datadog for a metric value every 30 seconds while the number of replicas is
between 1 and N.
Multi-Query Support
To reduce issues with API rate limiting from Datadog, it is possible to send a single query, which contains multiple queries, comma-seperated.
When doing this, the results from each query are aggregated based on the queryAggregator
value (eg: max
or average
).
💡 NOTE: Because the average/max aggregation operation happens at the scaler level, there won’t be any validation or errors if the queries don’t make sense to aggregate. Be sure to read and understand the two patterns below before using Multi-Query.
Example 1 - Aggregating Similar Metrics
Simple aggregation works well, when wanting to scale on more than one metric with similar return values/scale (ie. where multiple metrics can use a single queryValue
and still make sense).
apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
name: datadog-scaledobject
namespace: my-project
spec:
scaleTargetRef:
name: worker
triggers:
- type: datadog
metricType: "AverageValue"
metadata:
# Comma-seperated querys count as a single API call:
query: "per_second(sum:http.requests{service:myservice1}).rollup(max, 300)),per_second(sum:http.requests{service:myservice1}).rollup(avg, 600)"
# According to aggregated results, how to scale the TargetRef
queryValue: "100"
# How to aggregate results from multi-query queries. Default: 'max'
queryAggregator: "average"
# Optional: The time window (in seconds) to retrieve metrics from Datadog. Default: 90
age: "600"
# Optional: The metric value to return to the HPA if a metric value wasn't found for the specified time window
metricUnavailableValue: "0"
authenticationRef:
name: keda-trigger-auth-datadog-secret
The example above looks at the http.requests
value for a service; taking two views of the same metric (max vs avg, and different time windows), and then uses a scale value which is the average of them both.
This works particularly well when scaling against the same metric, but with slightly different parameters, or methods like week_before()
for example.
Example 2 - Driving scale directly
When wanting to scale on non-similar metrics, whilst still benefiting from reduced API calls with multi-query support, the easiest way to do this is to make each query directly return the desired scale (eg: number of pods), and then max
or average
the results to get the desired target scale.
This can be done by adding arthmetic to the queries, which makes them directly return the number of pods that should be running.
Following this pattern, and then setting queryValue: 1
and metricType: AverageValue
results in the desired number of pods being spawned directly from the results of the metric queries.
apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
name: datadog-scaledobject
namespace: my-project
spec:
scaleTargetRef:
name: worker
triggers:
- type: datadog
# `AverageValue` tracks the query results divided by the number of running containers
metricType: "AverageValue"
metadata:
# Comma-seperated queries count as a single API call:
## This example returns "http.requests" @ 180 requests-per-second per-pod,
## and "http.backlog" size of 30 per-pod
query: "per_second(sum:http.requests{service:myservice1}).rollup(max, 300))/180,per_second(sum:http.backlog{service:myservice1}).rollup(max, 300)/30"
# Setting query value to 1 and metricType to "AverageValue" allows the metric to dictate the number of pods from it's own arthimetic.
queryValue: "1"
# How to aggregate results from multi-query queries. Default: 'max'
queryAggregator: "max"
authenticationRef:
name: keda-trigger-auth-datadog-secret
Using the example above, if we assume that http.requests
is currently returning 360
, dividing that by 180
in the query, results in a value of 2
; if http.backlog
returns 90
, dividing that by 30
in the query, results in a value of 3
. With the max
Aggregator set, the scaler will set the target scale to 3
as that is the higher value from all returned queries.
Cases of unexpected metrics value in DataDog API response
Latest data point is unavailable
By default, Datadog scaler retrieves the metrics with time window from now - metadata.age (in seconds)
to now
, however, some kinds of queries need a small delay (usually 30 secs - 2 mins) before data is available when querying from the API. In this case, adjust timeWindowOffset
to ensure that the latest point of your query is always available.
apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
name: datadog-scaledobject
namespace: my-project
spec:
scaleTargetRef:
name: worker
triggers:
- type: datadog
metricType: "AverageValue"
metadata:
query: "sum:trace.express.request.hits{*}.as_rate()"
queryValue: "100"
age: "90"
metricUnavailableValue: "0"
# Optional: The delayed time window offset (in seconds) to wait for the metric to be available. The values of some queries might be not available at now and need a small delay to become available, try to adjust it if you encounter this issue. Default: 0
timeWindowOffset: "30"
# Optional: The offset to retrieve the X to last data point. The value of last data point of some queries might be inaccurate, try to adjust to 1 if you encounter this issue. Default: 0
lastAvailablePointOffset: "1"
authenticationRef:
name: keda-trigger-auth-datadog-secret
Check here for the details of this issue
The value of last data point is inaccurate
Datadog implicitly rolls up data points automatically with the avg
method, effectively displaying the average of all data points within a time interval for a given metric. Essentially, there is a rollup for each point. The values at the end attempt to have the rollup applied. When this occurs, it looks at a X second bucket according to your time window, and will default average those values together. Since this is the last point in the query, there are no other values to average with in that X second bucket. This leads to the value of last data point that was not rolled up in the same fashion as the others, and leads to an inaccurate number. In these cases, adjust lastAvailablePointOffset
to 1 to use the second to last points of an API response would be the most accurate.
apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
name: datadog-scaledobject
namespace: my-project
spec:
scaleTargetRef:
name: worker
triggers:
- type: datadog
metricType: "AverageValue"
metadata:
query: "sum:trace.express.request.hits{*}.as_rate()"
queryValue: "100"
age: "90"
metricUnavailableValue: "0"
# Optional: The delayed time window offset (in seconds) to wait for the metric to be available. The values of some queries might be not available at now and need a small delay to become available, try to adjust it if you encounter this issue. Default: 0
timeWindowOffset: "30"
# Optional: The offset to retrieve the X to last data point. The value of last data point of some queries might be inaccurate, try to adjust to 1 if you encounter this issue. Default: 0
lastAvailablePointOffset: "1"
authenticationRef:
name: keda-trigger-auth-datadog-secret
Check here for the details of this issue.