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Canary analysis with KEDA ScaledObjects
This guide shows you how to use Flagger with KEDA ScaledObjects to autoscale workloads during a Canary analysis run. We will be using a Blue/Green deployment strategy with the Kubernetes provider for the sake of this tutorial, but you can use any deployment strategy combined with any supported provider.
Prerequisites
Flagger requires a Kubernetes cluster v1.16 or newer. For this tutorial, we’ll need KEDA 2.7.1 or newer.
Install KEDA:
helm repo add kedacore https://kedacore.github.io/charts
kubectl create namespace keda
helm install keda kedacore/keda --namespace keda
Install Flagger:
helm repo add flagger https://flagger.app
helm upgrade -i flagger flagger/flagger \
--namespace flagger \
--set prometheus.install=true \
--set meshProvider=kubernetes
Bootstrap
Flagger takes a Kubernetes deployment and a KEDA ScaledObject targeting the deployment. It then creates a series of objects (Kubernetes deployments, ClusterIP services and another KEDA ScaledObject targeting the created Deployment). These objects expose the application inside the mesh and drive the Canary analysis and Blue/Green promotion.
Create a test namespace:
kubectl create ns test
Create a deployment named podinfo
:
kubectl apply -n test -f https://raw.githubusercontent.com/fluxcd/flagger/main/kustomize/podinfo/deployment.yaml
Deploy the load testing service to generate traffic during the analysis:
kubectl apply -k https://github.com/fluxcd/flagger//kustomize/tester?ref=main
Create a ScaledObject which targets the podinfo
deployment and uses Prometheus as a trigger:
apiVersion: keda.sh/v1alpha1
kind: ScaledObject
metadata:
name: podinfo-so
namespace: test
spec:
scaleTargetRef:
name: podinfo
pollingInterval: 10
cooldownPeriod: 20
minReplicaCount: 1
maxReplicaCount: 3
triggers:
- type: prometheus
metadata:
name: prom-trigger
serverAddress: http://flagger-prometheus.flagger-system:9090
metricName: http_requests_total
query: sum(rate(http_requests_total{ app="podinfo" }[30s]))
threshold: '5'
Create a canary custom resource for the podinfo
deployment:
apiVersion: flagger.app/v1beta1
kind: Canary
metadata:
name: podinfo
namespace: test
spec:
provider: kubernetes
# deployment reference
targetRef:
apiVersion: apps/v1
kind: Deployment
name: podinfo
# Scaler reference
autoscalerRef:
apiVersion: keda.sh/v1alpha1
kind: ScaledObject
# ScaledObject targeting the canary deployment
name: podinfo-so
# Mapping between trigger names and the related query to use for the generated
# ScaledObject targeting the primary deployment. (Optional)
primaryScalerQueries:
prom-trigger: sum(rate(http_requests_total{ app="podinfo-primary" }[30s]))
# Overriding replica scaling configuration for the generated ScaledObject
# targeting the primary deployment. (Optional)
primaryScalerReplicas:
minReplicas: 2
maxReplicas: 5
# the maximum time in seconds for the canary deployment
# to make progress before rollback (default 600s)
progressDeadlineSeconds: 60
service:
port: 80
targetPort: 9898
name: podinfo-svc
portDiscovery: true
analysis:
# schedule interval (default 60s)
interval: 15s
# max number of failed checks before rollback
threshold: 5
# number of checks to run before promotion
iterations: 5
# Prometheus checks based on
# http_request_duration_seconds histogram
metrics:
- name: request-success-rate
interval: 1m
thresholdRange:
min: 99
- name: request-duration
interval: 30s
thresholdRange:
max: 500
# load testing hooks
webhooks:
- name: load-test
url: http://flagger-loadtester.test/
timeout: 5s
metadata:
type: cmd
cmd: "hey -z 2m -q 20 -c 2 http://podinfo-svc-canary.test/"
Save the above resource as podinfo-canary.yaml
and then apply it:
kubectl apply -f ./podinfo-canary.yaml
After a couple of seconds Flagger will create the canary objects:
# applied
deployment.apps/podinfo
scaledobject.keda.sh/podinfo-so
canary.flagger.app/podinfo
# generated
deployment.apps/podinfo-primary
horizontalpodautoscaler.autoscaling/podinfo-primary
service/podinfo
service/podinfo-canary
service/podinfo-primary
scaledobject.keda.sh/podinfo-so-primary
We refer to our ScaledObject for the canary deployment using .spec.autoscalerRef
. Flagger will use this to generate a ScaledObject which will scale the primary deployment.
By default, Flagger will try to guess the query to use for the primary ScaledObject, by replacing all mentions of .spec.targetRef.Name
and {.spec.targetRef.Name}-canary
with {.spec.targetRef.Name}-primary
, for all triggers.
For eg, if your ScaledObject has a trigger query defined as: sum(rate(http_requests_total{ app="podinfo" }[30s]))
or sum(rate(http_requests_total{ app="podinfo-primary" }[30s]))
, then the primary ScaledObject will have the same trigger with a query defined as sum(rate(http_requests_total{ app="podinfo-primary" }[30s]))
.
If, the generated query does not meet your requirements, you can specify the query for autoscaling the primary deployment explicitly using
.spec.autoscalerRef.primaryScalerQueries
, which lets you define a query for each trigger. Please note that, your ScaledObject’s .spec.triggers[@].name
must
not be blank, as Flagger needs that to identify each trigger uniquely.
In the situation when it is desired to have different scaling replica configuration between the canary and primary deployment ScaledObject you can use
the .spec.autoscalerRef.primaryScalerReplicas
to override these values for the generated primary ScaledObject.
After the boostrap, the podinfo deployment will be scaled to zero and the traffic to podinfo.test
will be routed to the primary pods. To keep the podinfo deployment
at 0 replicas and pause auto scaling, Flagger will add an annotation to your ScaledObject: autoscaling.keda.sh/paused-replicas: 0
.
During the canary analysis, the annotation is removed, to enable auto scaling for the podinfo deployment.
The podinfo-canary.test
address can be used to target directly the canary pods.
When the canary analysis starts, Flagger will call the pre-rollout webhooks before routing traffic to the canary. The Blue/Green deployment will run for five iterations while validating the HTTP metrics and rollout hooks every 15 seconds.
Automated Blue/Green promotion
Trigger a deployment by updating the container image:
kubectl -n test set image deployment/podinfo \
podinfod=ghcr.io/stefanprodan/podinfo:6.0.1
Flagger detects that the deployment revision changed and starts a new rollout:
kubectl -n test describe canary/podinfo
Events:
New revision detected podinfo.test
Waiting for podinfo.test rollout to finish: 0 of 1 updated replicas are available
Pre-rollout check acceptance-test passed
Advance podinfo.test canary iteration 1/10
Advance podinfo.test canary iteration 2/10
Advance podinfo.test canary iteration 3/10
Advance podinfo.test canary iteration 4/10
Advance podinfo.test canary iteration 5/10
Advance podinfo.test canary iteration 6/10
Advance podinfo.test canary iteration 7/10
Advance podinfo.test canary iteration 8/10
Advance podinfo.test canary iteration 9/10
Advance podinfo.test canary iteration 10/10
Copying podinfo.test template spec to podinfo-primary.test
Waiting for podinfo-primary.test rollout to finish: 1 of 2 updated replicas are available
Promotion completed! Scaling down podinfo.test
Note that if you apply new changes to the deployment during the canary analysis, Flagger will restart the analysis.
You can monitor all canaries with:
watch kubectl get canaries --all-namespaces
NAMESPACE NAME STATUS WEIGHT LASTTRANSITIONTIME
test podinfo Progressing 100 2019-06-16T14:05:07Z
You can monitor the scaling of the deployments with:
watch kubectl -n test get deploy podinfo
NAME READY UP-TO-DATE AVAILABLE AGE
flagger-loadtester 1/1 1 1 4m21s
podinfo 3/3 3 3 4m28s
podinfo-primary 3/3 3 3 3m14s
You can mointor how Flagger edits the annotations of your ScaledObject with:
watch "kubectl get -n test scaledobjects podinfo-so -o=jsonpath='{.metadata.annotations}'"