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How it works
Flagger can be configured to automate the release process for Kubernetes workloads with a custom resource named canary.
Canary resource
The canary custom resource defines the release process of an application running on Kubernetes and is portable across clusters, service meshes and ingress providers.
For a deployment named podinfo, a canary release with progressive traffic shifting can be defined as:
apiVersion: flagger.app/v1beta1
kind: Canary
metadata:
name: podinfo
spec:
targetRef:
apiVersion: apps/v1
kind: Deployment
name: podinfo
service:
port: 9898
analysis:
interval: 1m
threshold: 10
maxWeight: 50
stepWeight: 5
metrics:
- name: request-success-rate
thresholdRange:
min: 99
interval: 1m
- name: request-duration
thresholdRange:
max: 500
interval: 1m
webhooks:
- name: load-test
url: http://flagger-loadtester.test/
metadata:
cmd: "hey -z 1m -q 10 -c 2 http://podinfo-canary.test:9898/"
When you deploy a new version of an app, Flagger gradually shifts traffic to the canary, and at the same time, measures the requests success rate as well as the average response duration. You can extend the canary analysis with custom metrics, acceptance and load testing to harden the validation process of your app release process.
If you are running multiple service meshes or ingress controllers in the same cluster,
you can override the global provider for a specific canary with spec.provider
.
Canary target
A canary resource can target a Kubernetes Deployment or DaemonSet.
Kubernetes Deployment example:
spec:
progressDeadlineSeconds: 60
targetRef:
apiVersion: apps/v1
kind: Deployment
name: podinfo
autoscalerRef:
apiVersion: autoscaling/v2beta2
kind: HorizontalPodAutoscaler
name: podinfo
primaryScalerReplicas:
minReplicas: 2
maxReplicas: 5
Based on the above configuration, Flagger generates the following Kubernetes objects:
deployment/<targetRef.name>-primary
hpa/<autoscalerRef.name>-primary
The primary deployment is considered the stable release of your app, by default all traffic is routed to this version and the target deployment is scaled to zero. Flagger will detect changes to the target deployment (including secrets and configmaps) and will perform a canary analysis before promoting the new version as primary.
Use .spec.autoscalerRef.primaryScalerReplicas
to override the replica scaling
configuration for the generated primary HorizontalPodAutoscaler. This is useful
for situations when you want to have a different scaling configuration for the
primary workload as opposed to using the same values from the original workload HorizontalPodAutoscaler.
Note that the target deployment must have a single label selector in the format app: <DEPLOYMENT-NAME>
:
apiVersion: apps/v1
kind: Deployment
metadata:
name: podinfo
spec:
selector:
matchLabels:
app: podinfo
template:
metadata:
labels:
app: podinfo
In addition to app
, Flagger supports name
and app.kubernetes.io/name
selectors.
If you use a different convention you can specify your label with the -selector-labels=my-app-label
command flag in the Flagger deployment manifest under containers args
or by setting --set selectorLabels=my-app-label
when installing Flagger with Helm.
If the target deployment uses secrets and/or configmaps,
Flagger will create a copy of each object using the -primary
suffix
and will reference these objects in the primary deployment.
If you annotate your ConfigMap or Secret with flagger.app/config-tracking: disabled
,
Flagger will use the same object for the primary deployment instead of making a primary copy.
You can disable the secrets/configmaps tracking globally with the -enable-config-tracking=false
command flag in the Flagger deployment manifest under containers args
or by setting --set configTracking.enabled=false
when installing Flagger with Helm,
but disabling config-tracking using the per Secret/ConfigMap annotation may fit your use-case better.
The autoscaler reference is optional, when specified, Flagger will pause the traffic increase while the target and primary deployments are scaled up or down. HPA can help reduce the resource usage during the canary analysis. When the autoscaler reference is specified, any changes made to the autoscaler are only made active in the primary autoscaler when a rollout for the deployment starts and completes successfully. Optionally, you can create two HPAs, one for canary and one for the primary to update the HPA without doing a new rollout. As the canary deployment will be scaled to 0, the HPA on the canary will be inactive.
Note Flagger requires autoscaling/v2
or autoscaling/v2beta2
API version for HPAs.
The progress deadline represents the maximum time in seconds for the canary deployment to make progress before it is rolled back, defaults to ten minutes.
Canary service
A canary resource dictates how the target workload is exposed inside the cluster. The canary target should expose a TCP port that will be used by Flagger to create the ClusterIP Services.
spec:
service:
name: podinfo
port: 9898
portName: http
appProtocol: http
targetPort: 9898
portDiscovery: true
The container port from the target workload should match the service.port
or service.targetPort
.
The service.name
is optional, defaults to spec.targetRef.name
.
The service.targetPort
can be a container port number or name.
The service.portName
is optional (defaults to http
), if your workload uses gRPC then set the port name to grpc
.
The service.appProtocol
is optional, more details can be found
here.
If port discovery is enabled, Flagger scans the target workload and extracts the containers ports excluding the port specified in the canary service and service mesh sidecar ports. These ports will be used when generating the ClusterIP services.
Based on the canary spec service, Flagger creates the following Kubernetes ClusterIP service:
<service.name>.<namespace>.svc.cluster.local
selector
app=<name>-primary
<service.name>-primary.<namespace>.svc.cluster.local
selector
app=<name>-primary
<service.name>-canary.<namespace>.svc.cluster.local
selector
app=<name>
This ensures that traffic to podinfo.test:9898
will be routed to the latest stable release of your app.
The podinfo-canary.test:9898
address is available only during the canary analysis
and can be used for conformance testing or load testing.
You can configure Flagger to set annotations and labels for the generated services with:
spec:
service:
port: 9898
apex:
annotations:
test: "test"
labels:
test: "test"
canary:
annotations:
test: "test"
labels:
test: "test"
primary:
annotations:
test: "test"
labels:
test: "test"
Note that the apex
annotations are added to both the generated Kubernetes Service and the
generated service mesh/ingress object. This allows using external-dns with Istio VirtualServices
and TraefikServices
. Beware of configuration conflicts
here.
Besides port mapping and metadata, the service specification can contain URI match and rewrite rules, timeout and retry polices:
spec:
service:
port: 9898
match:
- uri:
prefix: /
rewrite:
uri: /
retries:
attempts: 3
perTryTimeout: 1s
timeout: 5s
When using Istio as the mesh provider, you can also specify HTTP header operations, CORS and traffic policies, Istio gateways and hosts. The Istio routing configuration can be found here.
Canary status
You can use kubectl to get the current status of canary deployments cluster wide:
kubectl get canaries --all-namespaces
NAMESPACE NAME STATUS WEIGHT LASTTRANSITIONTIME
test podinfo Progressing 15 2019-06-30T14:05:07Z
prod frontend Succeeded 0 2019-06-30T16:15:07Z
prod backend Failed 0 2019-06-30T17:05:07Z
The status condition reflects the last known state of the canary analysis:
kubectl -n test get canary/podinfo -oyaml | awk '/status/,0'
A successful rollout status:
status:
canaryWeight: 0
failedChecks: 0
iterations: 0
lastAppliedSpec: "14788816656920327485"
lastPromotedSpec: "14788816656920327485"
conditions:
- lastTransitionTime: "2019-07-10T08:23:18Z"
lastUpdateTime: "2019-07-10T08:23:18Z"
message: Canary analysis completed successfully, promotion finished.
reason: Succeeded
status: "True"
type: Promoted
The Promoted
status condition can have one of the following reasons:
Initialized, Waiting, Progressing, WaitingPromotion, Promoting, Finalising, Succeeded or Failed.
A failed canary will have the promoted status set to false
,
the reason to failed
and the last applied spec will be different to the last promoted one.
Wait for a successful rollout:
kubectl wait canary/podinfo --for=condition=promoted
CI example:
# update the container image
kubectl set image deployment/podinfo podinfod=stefanprodan/podinfo:3.0.1
# wait for Flagger to detect the change
ok=false
until ${ok}; do
kubectl get canary/podinfo | grep 'Progressing' && ok=true || ok=false
sleep 5
done
# wait for the canary analysis to finish
kubectl wait canary/podinfo --for=condition=promoted --timeout=5m
# check if the deployment was successful
kubectl get canary/podinfo | grep Succeeded
Canary finalizers
The default behavior of Flagger on canary deletion is to leave resources that aren’t owned
by the controller in their current state.
This simplifies the deletion action and avoids possible deadlocks during resource finalization.
In the event the canary was introduced with existing resource(s) (i.e. service, virtual service, etc.),
they would be mutated during the initialization phase and no longer reflect their initial state.
If the desired functionality upon deletion is to revert the resources to their initial state,
the revertOnDeletion
attribute can be enabled.
spec:
revertOnDeletion: true
When a deletion action is submitted to the cluster, Flagger will attempt to revert the following resources:
- Canary target replicas will be updated to the primary replica count
- Canary service selector will be reverted
- Mesh/Ingress traffic routed to the target
The recommended approach to disable canary analysis would be utilization of the skipAnalysis
attribute,
which limits the need for resource reconciliation.
Utilizing the revertOnDeletion
attribute should be enabled when
you no longer plan to rely on Flagger for deployment management.
Note When this feature is enabled expect a delay in the delete action due to the reconciliation.
Canary analysis
The canary analysis defines:
- the type of deployment strategy
- the metrics used to validate the canary version
- the webhooks used for conformance testing, load testing and manual gating
- the alerting settings
Spec:
analysis:
# schedule interval (default 60s)
interval:
# max number of failed metric checks before rollback
threshold:
# max traffic percentage routed to canary
# percentage (0-100)
maxWeight:
# canary increment step
# percentage (0-100)
stepWeight:
# promotion increment step
# percentage (0-100)
stepWeightPromotion:
# total number of iterations
# used for A/B Testing and Blue/Green
iterations:
# threshold of primary pods that need to be available to consider it ready
# before starting rollout. this is optional and the default is 100
# percentage (0-100)
primaryReadyThreshold: 100
# threshold of canary pods that need to be available to consider it ready
# before starting rollout. this is optional and the default is 100
# percentage (0-100)
canaryReadyThreshold: 100
# canary match conditions
# used for A/B Testing
match:
- # HTTP header
# key performance indicators
metrics:
- # metric check
# alerting
alerts:
- # alert provider
# external checks
webhooks:
- # hook
The canary analysis runs periodically until it reaches the maximum traffic weight or the number of iterations. On each run, Flagger calls the webhooks, checks the metrics and if the failed checks threshold is reached, stops the analysis and rolls back the canary. If alerting is configured, Flagger will post the analysis result using the alert providers.
Canary suspend
The suspend
field can be set to true to suspend the Canary. If a Canary is suspended,
its reconciliation is completely paused. This means that changes to target workloads,
tracked ConfigMaps and Secrets don’t trigger a Canary run and changes to resources generated
by Flagger are not corrected. If the Canary was suspended during an active Canary run,
then the run is paused without disturbing the workloads or the traffic weights.