写在前面
controller-manager 是 Kubernetes 控制面的组件,通常不太可能出问题,一般监控一下通用的进程指标就问题不大了,不过 controller-manager 确实也暴露了很多 /metrics
白盒指标,我们也一并梳理一下相关内容。
黑盒测试
类似上一篇《Kubernetes监控手册06-监控APIServer》描述的方法,我们先从黑盒角度测试一下,看看 controller-manager 的 /metrics
接口是否直接可用。
[root@tt-fc-dev01.nj manifests]# ss -tlnp|grep controller
LISTEN 0 128 *:10257 *:* users:(("kube-controller",pid=2782446,fd=7))
[root@tt-fc-dev01.nj manifests]# curl -s http://localhost:10257/metrics
Client sent an HTTP request to an HTTPS server.
[root@tt-fc-dev01.nj manifests]# curl -k -s https://localhost:10257/metrics
{
"kind": "Status",
"apiVersion": "v1",
"metadata": {},
"status": "Failure",
"message": "forbidden: User \"system:anonymous\" cannot get path \"/metrics\"",
"reason": "Forbidden",
"details": {},
"code": 403
}
看起来也是需要认证的,我们直接复用上一篇创建的 Token,看看能否拿到数据:
[root@tt-fc-dev01.nj yamls]# token=`kubectl get secret categraf-token-6whbs -n flashcat -o jsonpath={.data.token} | base64 -d`
[root@tt-fc-dev01.nj yamls]# curl -s -k -H "Authorization: Bearer $token" https://localhost:10257/metrics > cm.metrics
[root@tt-fc-dev01.nj yamls]# head -n 6 cm.metrics
# HELP apiserver_audit_event_total [ALPHA] Counter of audit events generated and sent to the audit backend.
# TYPE apiserver_audit_event_total counter
apiserver_audit_event_total 0
# HELP apiserver_audit_requests_rejected_total [ALPHA] Counter of apiserver requests rejected due to an error in audit logging backend.
# TYPE apiserver_audit_requests_rejected_total counter
apiserver_audit_requests_rejected_total 0
[root@tt-fc-dev01.nj yamls]# cat cm.metrics | wc -l
10070
妥了,可以复用之前的 Token。
配置采集
我们还是使用 Prometheus agent mode 来拉取数据,原汁原味的,只要把 controller-manager 部分也加上就行了。改造之后的 prometheus-agent-configmap.yaml 内容如下:
apiVersion: v1
kind: ConfigMap
metadata:
name: prometheus-agent-conf
labels:
name: prometheus-agent-conf
namespace: flashcat
data:
prometheus.yml: |-
global:
scrape_interval: 15s
evaluation_interval: 15s
scrape_configs:
- job_name: 'apiserver'
kubernetes_sd_configs:
- role: endpoints
scheme: https
tls_config:
insecure_skip_verify: true
authorization:
credentials_file: /var/run/secrets/kubernetes.io/serviceaccount/token
relabel_configs:
- source_labels: [__meta_kubernetes_namespace, __meta_kubernetes_service_name, __meta_kubernetes_endpoint_port_name]
action: keep
regex: default;kubernetes;https
- job_name: 'controller-manager'
kubernetes_sd_configs:
- role: endpoints
scheme: https
tls_config:
insecure_skip_verify: true
authorization:
credentials_file: /var/run/secrets/kubernetes.io/serviceaccount/token
relabel_configs:
- source_labels: [__meta_kubernetes_namespace, __meta_kubernetes_service_name, __meta_kubernetes_endpoint_port_name]
action: keep
regex: kube-system;kube-controller-manager;https
remote_write:
- url: 'http://10.206.0.16:19000/prometheus/v1/write'
这里我新增了一个scrape job name:controller-manager,Kubernetes 服务发现仍然使用 endpoints,匹配规则有三点(通过 relabel_configs 的 keep 实现):
-
__meta_kubernetes_namespace
endpoint 的 namespace 要求是 kube-system
-
__meta_kubernetes_service_name
service name 要求是 kube-controller-manager
-
__meta_kubernetes_endpoint_port_name
endpoint 的 port_name 要求是叫 https
如果你没有采集成功,就要去看看有没有这个 endpoint:
[work@tt-fc-dev01.nj yamls]$ kubectl get endpoints -n kube-system
NAME ENDPOINTS AGE
etcd 10.206.0.16:2381 126d
etcd-service 10.206.0.16:2379 75d
etcd-service2 10.206.10.16:2379 75d
kube-controller-manager 10.206.0.16:10257 74d
kube-dns 172.16.0.85:53,172.16.1.4:53,172.16.0.85:53 + 3 more... 324d
kube-scheduler 10.206.0.16:10259 131d
kube-state-metrics 172.16.3.198:8081,172.16.3.198:8080 75d
kubelet 10.206.0.11:10250,10.206.0.16:10250,10.206.0.17:10250 + 15 more... 315d
[work@tt-fc-dev01.nj yamls]$ kubectl get endpoints -n kube-system kube-controller-manager -o yaml
apiVersion: v1
kind: Endpoints
metadata:
annotations:
endpoints.kubernetes.io/last-change-trigger-time: "2022-09-15T09:43:21Z"
creationTimestamp: "2022-09-15T09:43:21Z"
labels:
k8s-app: kube-controller-manager
name: kube-controller-manager
namespace: kube-system
resourceVersion: "112212043"
uid: 52cfb383-6d2b-452e-9a1f-95c7a898a1b4
subsets:
- addresses:
- ip: 10.206.0.16
nodeName: 10.206.0.16
targetRef:
kind: Pod
name: kube-controller-manager-10.206.0.16
namespace: kube-system
resourceVersion: "112211925"
uid: d9515495-057c-4ea6-ad1f-28341498710f
ports:
- name: https
port: 10257
protocol: TCP
__meta_kubernetes_endpoint_port_name
就是上面的倒数第三行。这些信息我的环境里都是有的,如果你的环境没有对应的 endpoint,可以手工创建一个 service,孔飞老师之前给大家准备过一个 https://github.com/flashcatcloud/categraf/blob/main/k8s/controller-service.yaml,把这个 controller-service.yaml apply 一下就行了。另外,如果是用 kubeadm 安装的 controller-manager,还要记得修改 /etc/kubernetes/manifests/kube-controller-manager.yaml
,调整 controller-manager 的启动参数:--bind-address=0.0.0.0
。
监控大盘
controller-manager 的大盘已经准备好了,地址在 https://github.com/flashcatcloud/categraf/blob/main/k8s/cm-dash.json,可以直接导入夜莺使用。如果觉得大盘有需要改进的地方,欢迎PR。
监控指标
controller-manager 的关键指标分别是啥意思,孔飞老师之前整理过,我给搬过来了:
# HELP rest_client_request_duration_seconds [ALPHA] Request latency in seconds. Broken down by verb and URL.
# TYPE rest_client_request_duration_seconds histogram
请求apiserver的耗时分布,按照url+verb统计
# HELP cronjob_controller_cronjob_job_creation_skew_duration_seconds [ALPHA] Time between when a cronjob is scheduled to be run, and when the corresponding job is created
# TYPE cronjob_controller_cronjob_job_creation_skew_duration_seconds histogram
cronjob 创建到运行的时间分布
# HELP leader_election_master_status [ALPHA] Gauge of if the reporting system is master of the relevant lease, 0 indicates backup, 1 indicates master. 'name' is the string used to identify the lease. Please make sure to group by name.
# TYPE leader_election_master_status gauge
控制器的选举状态,0表示backup, 1表示master
# HELP node_collector_zone_health [ALPHA] Gauge measuring percentage of healthy nodes per zone.
# TYPE node_collector_zone_health gauge
每个zone的健康node占比
# HELP node_collector_zone_size [ALPHA] Gauge measuring number of registered Nodes per zones.
# TYPE node_collector_zone_size gauge
每个zone的node数
# HELP process_cpu_seconds_total Total user and system CPU time spent in seconds.
# TYPE process_cpu_seconds_total counter
cpu使用量(也可以理解为cpu使用率)
# HELP process_open_fds Number of open file descriptors.
# TYPE process_open_fds gauge
控制器打开的fd数
# HELP pv_collector_bound_pv_count [ALPHA] Gauge measuring number of persistent volume currently bound
# TYPE pv_collector_bound_pv_count gauge
当前绑定的pv数量
# HELP pv_collector_unbound_pvc_count [ALPHA] Gauge measuring number of persistent volume claim currently unbound
# TYPE pv_collector_unbound_pvc_count gauge
当前没有绑定的pvc数量
# HELP pv_collector_bound_pvc_count [ALPHA] Gauge measuring number of persistent volume claim currently bound
# TYPE pv_collector_bound_pvc_count gauge
当前绑定的pvc数量
# HELP pv_collector_total_pv_count [ALPHA] Gauge measuring total number of persistent volumes
# TYPE pv_collector_total_pv_count gauge
pv总数量
# HELP workqueue_adds_total [ALPHA] Total number of adds handled by workqueue
# TYPE workqueue_adds_total counter
各个controller已接受的任务总数
与apiserver的workqueue_adds_total指标类似
# HELP workqueue_depth [ALPHA] Current depth of workqueue
# TYPE workqueue_depth gauge
各个controller队列深度,表示一个controller中的任务的数量
与apiserver的workqueue_depth类似,这个是指各个controller中队列的深度,数值越小越好
# HELP workqueue_queue_duration_seconds [ALPHA] How long in seconds an item stays in workqueue before being requested.
# TYPE workqueue_queue_duration_seconds histogram
任务在队列中的等待耗时,按照控制器分别统计
# HELP workqueue_work_duration_seconds [ALPHA] How long in seconds processing an item from workqueue takes.
# TYPE workqueue_work_duration_seconds histogram
任务出队到被处理完成的时间,按照控制分别统计
# HELP workqueue_retries_total [ALPHA] Total number of retries handled by workqueue
# TYPE workqueue_retries_total counter
任务进入队列重试的次数
# HELP workqueue_longest_running_processor_seconds [ALPHA] How many seconds has the longest running processor for workqueue been running.
# TYPE workqueue_longest_running_processor_seconds gauge
正在处理的任务中,最长耗时任务的处理时间
# HELP endpoint_slice_controller_syncs [ALPHA] Number of EndpointSlice syncs
# TYPE endpoint_slice_controller_syncs counter
endpoint_slice 同步的数量(1.20以上)
# HELP get_token_fail_count [ALPHA] Counter of failed Token() requests to the alternate token source
# TYPE get_token_fail_count counter
获取token失败的次数
# HELP go_memstats_gc_cpu_fraction The fraction of this program's available CPU time used by the GC since the program started.
# TYPE go_memstats_gc_cpu_fraction gauge
controller gc的cpu使用率
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本文作者秦晓辉,Flashcat合伙人,文章内容是Flashcat技术团队共同沉淀的结晶,作者做了编辑整理,我们会持续输出监控、稳定性保障相关的技术文章,文章可转载,转载请注明出处,尊重技术人员的成果。
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