作为CNCF成员,Weave Flagger提供了持续集成和持续交付的各项能力。Flagger将渐进式发布总结为3类:
- 灰度发布/金丝雀发布(Canary):用于渐进式切流到灰度版本(progressive traffic shifting)
- A/B测试(A/B Testing):用于根据请求信息将用户请求路由到A/B版本(HTTP headers and cookies traffic routing)
- 蓝绿发布(Blue/Green):用于流量切换和流量复制 (traffic switching and mirroring)
本篇将介绍Flagger on ASM的渐进式灰度发布实践。
Setup Flagger1 部署Flagger
执行如下命令部署flagger(完整脚本参见:demo_canary.sh)。
alias k="kubectl --kubeconfig $USER_CONFIG"
alias h="helm --kubeconfig $USER_CONFIG"
cp $MESH_CONFIG kubeconfig
k -n istio-system create secret generic istio-kubeconfig --from-file kubeconfig
k -n istio-system label secret istio-kubeconfig istio/multiCluster=true
h repo add flagger https://flagger.app
h repo update
k apply -f $FLAAGER_SRC/artifacts/flagger/crd.yaml
h upgrade -i flagger flagger/flagger --namespace=istio-system \
--set crd.create=false \
--set meshProvider=istio \
--set metricsServer=http://prometheus:9090 \
--set istio.kubeconfig.secretName=istio-kubeconfig \
--set istio.kubeconfig.key=kubeconfig
2 部署Gateway
在灰度发布过程中,Flagger会请求ASM更新用于灰度流量配置的Virtualservice,这个VirtualService会使用到命名为public-gateway的Gateway。为此我们创建相关Gateway配置文件public-gateway.yaml如下:
apiVersion: networking.istio.io/v1alpha3
kind: Gateway
metadata:
name: public-gateway
namespace: istio-system
spec:
selector:
istio: ingressgateway
servers:
- port:
number: 80
name: http
protocol: HTTP
hosts:
- "*"
执行如下命令部署Gateway:
kubectl --kubeconfig "$MESH_CONFIG" apply -f resources_canary/public-gateway.yaml
3 部署flagger-loadtester
flagger-loadtester是灰度发布阶段,用于探测灰度POD实例的应用。
执行如下命令部署flagger-loadtester:
kubectl --kubeconfig "$USER_CONFIG" apply -k "https://github.com/fluxcd/flagger//kustomize/tester?ref=main"
4 部署PodInfo及其HPA
我们首先使用Flagger发行版自带的HPA配置(这是一个运维级的HPA),待完成完整流程后,我们再使用应用级的HPA。
执行如下命令部署PodInfo及其HPA:
kubectl --kubeconfig "$USER_CONFIG" apply -k "https://github.com/fluxcd/flagger//kustomize/podinfo?ref=main"
渐进式灰度发布
1 部署Canary
Canary是基于Flagger进行灰度发布的核心CRD,详见How it works。我们首先部署如下Canary配置文件podinfo-canary.yaml,完成完整的渐进式灰度流程,然后在此基础上引入应用维度的监控指标,来进一步实现应用有感知的渐进式灰度发布。
apiVersion: flagger.app/v1beta1
kind: Canary
metadata:
name: podinfo
namespace: test
spec:
# deployment reference
targetRef:
apiVersion: apps/v1
kind: Deployment
name: podinfo
# the maximum time in seconds for the canary deployment
# to make progress before it is rollback (default 600s)
progressDeadlineSeconds: 60
# HPA reference (optional)
autoscalerRef:
apiVersion: autoscaling/v2beta2
kind: HorizontalPodAutoscaler
name: podinfo
service:
# service port number
port: 9898
# container port number or name (optional)
targetPort: 9898
# Istio gateways (optional)
gateways:
- public-gateway.istio-system.svc.cluster.local
# Istio virtual service host names (optional)
hosts:
- '*'
# Istio traffic policy (optional)
trafficPolicy:
tls:
# use ISTIO_MUTUAL when mTLS is enabled
mode: DISABLE
# Istio retry policy (optional)
retries:
attempts: 3
perTryTimeout: 1s
retryOn: "gateway-error,connect-failure,refused-stream"
analysis:
# schedule interval (default 60s)
interval: 1m
# max number of failed metric checks before rollback
threshold: 5
# max traffic percentage routed to canary
# percentage (0-100)
maxWeight: 50
# canary increment step
# percentage (0-100)
stepWeight: 10
metrics:
- name: request-success-rate
# minimum req success rate (non 5xx responses)
# percentage (0-100)
thresholdRange:
min: 99
interval: 1m
- name: request-duration
# maximum req duration P99
# milliseconds
thresholdRange:
max: 500
interval: 30s
# testing (optional)
webhooks:
- name: acceptance-test
type: pre-rollout
url: http://flagger-loadtester.test/
timeout: 30s
metadata:
type: bash
cmd: "curl -sd 'test' http://podinfo-canary:9898/token | grep token"
- name: load-test
url: http://flagger-loadtester.test/
timeout: 5s
metadata:
cmd: "hey -z 1m -q 10 -c 2 http://podinfo-canary.test:9898/"
执行如下命令部署Canary:
kubectl --kubeconfig "$USER_CONFIG" apply -f resources_canary/podinfo-canary.yaml
部署Canary后,Flagger会将名为podinfo的Deployment复制为podinfo-primary,并将podinfo-primary扩容至HPA定义的最小POD数量。然后逐步将名为podinfo的这个Deployment的POD数量将缩容至0。也就是说,podinfo将作为灰度版本的Deployment,podinfo-primary将作为生产版本的Deployment。
同时,创建3个服务——podinfo、podinfo-primary和podinfo-canary,前两者指向podinfo-primary这个Deployment,最后者指向podinfo这个Deployment。
2 升级podinfo
执行如下命令,将灰度Deployment的版本从3.1.0升级到3.1.1:
kubectl --kubeconfig "$USER_CONFIG" -n test set image deployment/podinfo podinfod=stefanprodan/podinfo:3.1.1
3 渐进式灰度发布
此时,Flagger将开始执行如本系列第一篇所述的渐进式灰度发布流程,这里再简述主要流程如下:
- 逐步扩容灰度POD、验证
- 渐进式切流、验证
- 滚动升级生产Deployment、验证
- 100%切回生产
- 缩容灰度POD至0
我们可以通过如下命令观察这个渐进式切流的过程:
while true; do kubectl --kubeconfig "$USER_CONFIG" -n test describe canary/podinfo; sleep 10s;done
输出的日志信息示意如下:
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Warning Synced 39m flagger podinfo-primary.test not ready: waiting for rollout to finish: observed deployment generation less then desired generation
Normal Synced 38m (x2 over 39m) flagger all the metrics providers are available!
Normal Synced 38m flagger Initialization done! podinfo.test
Normal Synced 37m flagger New revision detected! Scaling up podinfo.test
Normal Synced 36m flagger Starting canary analysis for podinfo.test
Normal Synced 36m flagger Pre-rollout check acceptance-test passed
Normal Synced 36m flagger Advance podinfo.test canary weight 10
Normal Synced 35m flagger Advance podinfo.test canary weight 20
Normal Synced 34m flagger Advance podinfo.test canary weight 30
Normal Synced 33m flagger Advance podinfo.test canary weight 40
Normal Synced 29m (x4 over 32m) flagger (combined from similar events): Promotion completed! Scaling down podinfo.test
相应的Kiali视图(可选),如下图所示:
到此,我们完成了一个完整的渐进式灰度发布流程。如下是扩展阅读。
灰度中的应用级扩缩容在完成上述渐进式灰度发布流程的基础上,我们接下来再来看上述Canary配置中,关于HPA的配置。
autoscalerRef:
apiVersion: autoscaling/v2beta2
kind: HorizontalPodAutoscaler
name: podinfo
这个名为podinfo的HPA是Flagger自带的配置,当灰度Deployment的CPU利用率达到99%时扩容。完整配置如下:
apiVersion: autoscaling/v2beta2
kind: HorizontalPodAutoscaler
metadata:
name: podinfo
spec:
scaleTargetRef:
apiVersion: apps/v1
kind: Deployment
name: podinfo
minReplicas: 2
maxReplicas: 4
metrics:
- type: Resource
resource:
name: cpu
target:
type: Utilization
# scale up if usage is above
# 99% of the requested CPU (100m)
averageUtilization: 99
我们在前面一篇中讲述了应用级扩缩容的实践,在此,我们将其应用于灰度发布的过程中。
1 感知应用QPS的HPA
执行如下命令部署感知应用请求数量的HPA,实现在QPS达到10时进行扩容(完整脚本参见:advanced_canary.sh):
kubectl --kubeconfig "$USER_CONFIG" apply -f resources_hpa/requests_total_hpa.yaml
相应地,Canary配置更新为:
autoscalerRef:
apiVersion: autoscaling/v2beta2
kind: HorizontalPodAutoscaler
name: podinfo-total
2 升级podinfo
执行如下命令,将灰度Deployment的版本从3.1.0升级到3.1.1:
kubectl --kubeconfig "$USER_CONFIG" -n test set image deployment/podinfo podinfod=stefanprodan/podinfo:3.1.1
3 验证渐进式灰度发布及HPA
命令观察这个渐进式切流的过程:
while true; do k -n test describe canary/podinfo; sleep 10s;done
在渐进式灰度发布过程中(在出现Advance podinfo.test canary weight 10信息后,见下图),我们使用如下命令,从入口网关发起请求以增加QPS:
INGRESS_GATEWAY=$(kubectl --kubeconfig $USER_CONFIG -n istio-system get service istio-ingressgateway -o jsonpath='{.status.loadBalancer.ingress[0].ip}')
hey -z 20m -c 2 -q 10 http://$INGRESS_GATEWAY
使用如下命令观察渐进式灰度发布进度:
watch kubectl --kubeconfig $USER_CONFIG get canaries --all-namespaces
使用如下命令观察hpa的副本数变化:
watch kubectl --kubeconfig $USER_CONFIG -n test get hpa/podinfo-total
结果如下图所示,在渐进式灰度发布过程中,当切流到30%的某一时刻,灰度Deployment的副本数为4:
灰度中的应用级监控指标在完成上述灰度中的应用级扩缩容的基础上,最后我们再来看上述Canary配置中,关于metrics的配置:
analysis:
metrics:
- name: request-success-rate
# minimum req success rate (non 5xx responses)
# percentage (0-100)
thresholdRange:
min: 99
interval: 1m
- name: request-duration
# maximum req duration P99
# milliseconds
thresholdRange:
max: 500
interval: 30s
# testing (optional)
1 Flagger内置监控指标
到目前为止,Canary中使用的metrics配置一直是Flagger的两个内置监控指标:请求成功率(request-success-rate)和请求延迟(request-duration)。如下图所示,Flagger中不同平台对内置监控指标的定义,其中,istio使用的是本系列第一篇介绍的Mixerless Telemetry相关的遥测数据。
2 自定义监控指标
为了展示灰度发布过程中,遥测数据为验证灰度环境带来的更多灵活性,我们再次以istio_requests_total为例,创建一个名为not-found-percentage的MetricTemplate,统计请求返回404错误码的数量占请求总数的比例。
配置文件metrics-404.yaml如下(完整脚本参见:advanced_canary.sh):
apiVersion: flagger.app/v1beta1
kind: MetricTemplate
metadata:
name: not-found-percentage
namespace: istio-system
spec:
provider:
type: prometheus
address: http://prometheus.istio-system:9090
query: |
100 - sum(
rate(
istio_requests_total{
reporter="destination",
destination_workload_namespace="{{ namespace }}",
destination_workload="{{ target }}",
response_code!="404"
}[{{ interval }}]
)
)
/
sum(
rate(
istio_requests_total{
reporter="destination",
destination_workload_namespace="{{ namespace }}",
destination_workload="{{ target }}"
}[{{ interval }}]
)
) * 100
执行如下命令创建上述MetricTemplate:
k apply -f resources_canary2/metrics-404.yaml
相应地,Canary中metrics的配置更新为:
analysis:
metrics:
- name: "404s percentage"
templateRef:
name: not-found-percentage
namespace: istio-system
thresholdRange:
max: 5
interval: 1m
3 最后的验证
最后,我们一次执行完整的实验脚本。脚本advanced_canary.sh示意如下:
#!/usr/bin/env sh
SCRIPT_PATH="$(
cd "$(dirname "$0")" >/dev/null 2>&1
pwd -P
)/"
cd "$SCRIPT_PATH" || exit
source config
alias k="kubectl --kubeconfig $USER_CONFIG"
alias m="kubectl --kubeconfig $MESH_CONFIG"
alias h="helm --kubeconfig $USER_CONFIG"
echo "#### I Bootstrap ####"
echo "1 Create a test namespace with Istio sidecar injection enabled:"
k delete ns test
m delete ns test
k create ns test
m create ns test
m label namespace test istio-injection=enabled
echo "2 Create a deployment and a horizontal pod autoscaler:"
k apply -f $FLAAGER_SRC/kustomize/podinfo/deployment.yaml -n test
k apply -f resources_hpa/requests_total_hpa.yaml
k get hpa -n test
echo "3 Deploy the load testing service to generate traffic during the canary analysis:"
k apply -k "https://github.com/fluxcd/flagger//kustomize/tester?ref=main"
k get pod,svc -n test
echo "......"
sleep 40s
echo "4 Create a canary custom resource:"
k apply -f resources_canary2/metrics-404.yaml
k apply -f resources_canary2/podinfo-canary.yaml
k get pod,svc -n test
echo "......"
sleep 120s
echo "#### III Automated canary promotion ####"
echo "1 Trigger a canary deployment by updating the container image:"
k -n test set image deployment/podinfo podinfod=stefanprodan/podinfo:3.1.1
echo "2 Flagger detects that the deployment revision changed and starts a new rollout:"
while true; do k -n test describe canary/podinfo; sleep 10s;done
使用如下命令执行完整的实验脚本:
sh progressive_delivery/advanced_canary.sh
实验结果示意如下:
#### I Bootstrap ####
1 Create a test namespace with Istio sidecar injection enabled:
namespace "test" deleted
namespace "test" deleted
namespace/test created
namespace/test created
namespace/test labeled
2 Create a deployment and a horizontal pod autoscaler:
deployment.apps/podinfo created
horizontalpodautoscaler.autoscaling/podinfo-total created
NAME REFERENCE TARGETS MINPODS MAXPODS REPLICAS AGE
podinfo-total Deployment/podinfo <unknown>/10 (avg) 1 5 0 0s
3 Deploy the load testing service to generate traffic during the canary analysis:
service/flagger-loadtester created
deployment.apps/flagger-loadtester created
NAME READY STATUS RESTARTS AGE
pod/flagger-loadtester-76798b5f4c-ftlbn 0/2 Init:0/1 0 1s
pod/podinfo-689f645b78-65n9d 1/1 Running 0 28s
NAME TYPE CLUSTER-IP EXTERNAL-IP PORT(S) AGE
service/flagger-loadtester ClusterIP 172.21.15.223 <none> 80/TCP 1s
......
4 Create a canary custom resource:
metrictemplate.flagger.app/not-found-percentage created
canary.flagger.app/podinfo created
NAME READY STATUS RESTARTS AGE
pod/flagger-loadtester-76798b5f4c-ftlbn 2/2 Running 0 41s
pod/podinfo-689f645b78-65n9d 1/1 Running 0 68s
NAME TYPE CLUSTER-IP EXTERNAL-IP PORT(S) AGE
service/flagger-loadtester ClusterIP 172.21.15.223 <none> 80/TCP 41s
......
#### III Automated canary promotion ####
1 Trigger a canary deployment by updating the container image:
deployment.apps/podinfo image updated
2 Flagger detects that the deployment revision changed and starts a new rollout:
Events:
Type Reason Age From Message
---- ------ ---- ---- -------
Warning Synced 10m flagger podinfo-primary.test not ready: waiting for rollout to finish: observed deployment generation less then desired generation
Normal Synced 9m23s (x2 over 10m) flagger all the metrics providers are available!
Normal Synced 9m23s flagger Initialization done! podinfo.test
Normal Synced 8m23s flagger New revision detected! Scaling up podinfo.test
Normal Synced 7m23s flagger Starting canary analysis for podinfo.test
Normal Synced 7m23s flagger Pre-rollout check acceptance-test passed
Normal Synced 7m23s flagger Advance podinfo.test canary weight 10
Normal Synced 6m23s flagger Advance podinfo.test canary weight 20
Normal Synced 5m23s flagger Advance podinfo.test canary weight 30
Normal Synced 4m23s flagger Advance podinfo.test canary weight 40
Normal Synced 23s (x4 over 3m23s) flagger (combined from similar events): Promo
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