• docker部署grafana+prometheus配置


    docker-compose-monitor.yml

    version: '2'
    
    networks:
      monitor:
        driver: bridge
    
    services:
      influxdb:
        image: influxdb:latest
        container_name: tig-influxdb
        ports:
          - "18083:8083"
          - "18086:8086"
          - "18090:8090"
        env_file:
          - 'env.influxdb'
        volumes:
          # Data persistency
          # sudo mkdir -p ./influxdb/data
          - ./influxdb/data:/var/lib/influxdb
          # 配置docker里的时间为东八区时间
          - ./timezone:/etc/timezone:ro
          - ./localtime:/etc/localtime:ro
        restart: unless-stopped #停止后自动
    
      telegraf:
        image: telegraf:latest
        container_name: tig-telegraf
        links:
          - influxdb
        volumes:
          - ./telegraf.conf:/etc/telegraf/telegraf.conf:ro
          - ./timezone:/etc/timezone:ro
          - ./localtime:/etc/localtime:ro
        restart: unless-stopped
      prometheus:
        image: prom/prometheus
        container_name: prometheus
        hostname: prometheus
        restart: always
        volumes:
          - /home/qa/docker/grafana/prometheus.yml:/etc/prometheus/prometheus.yml
          - /home/qa/docker/grafana/node_down.yml:/etc/prometheus/node_down.yml
        ports:
          - '9090:9090'
        networks:
          - monitor
    
      alertmanager:
        image: prom/alertmanager
        container_name: alertmanager
        hostname: alertmanager
        restart: always
        volumes:
          - /home/qa/docker/grafana/alertmanager.yml:/etc/alertmanager/alertmanager.yml
        ports:
          - '9093:9093'
        networks:
          - monitor
    
      grafana:
        image: grafana/grafana:6.7.4
        container_name: grafana
        hostname: grafana
        restart: always
        ports:
          - '13000:3000'
        networks:
          - monitor
    
      node-exporter:
        image: quay.io/prometheus/node-exporter
        container_name: node-exporter
        hostname: node-exporter
        restart: always
        ports:
          - '9100:9100'
        networks:
          - monitor
    
      cadvisor:
        image: google/cadvisor:latest
        container_name: cadvisor
        hostname: cadvisor
        restart: always
        volumes:
          - /:/rootfs:ro
          - /var/run:/var/run:rw
          - /sys:/sys:ro
          - /var/lib/docker/:/var/lib/docker:ro
        ports:
          - '18080:8080'
        networks:
          - monitor

    alertmanager.yml

    global:
      resolve_timeout: 5m
      smtp_from: '邮箱'
      smtp_smarthost: 'smtp.exmail.qq.com:25'
      smtp_auth_username: '邮箱'
      smtp_auth_password: '密码'
      smtp_require_tls: false
      smtp_hello: 'qq.com'
    route:
      group_by: ['alertname']
      group_wait: 5s
      group_interval: 5s
      repeat_interval: 5m
      receiver: 'email'
    receivers:
    - name: 'email'
      email_configs:
      - to: '收件邮箱'
        send_resolved: true
    inhibit_rules:
      - source_match:
          severity: 'critical'
        target_match:
          severity: 'warning'
        equal: ['alertname', 'dev', 'instance']

    prometheus.yml

    global:
      scrape_interval:     15s # Set the scrape interval to every 15 seconds. Default is every 1 minute.
      evaluation_interval: 15s # Evaluate rules every 15 seconds. The default is every 1 minute.
      # scrape_timeout is set to the global default (10s).
    
    # Alertmanager configuration
    alerting:
      alertmanagers:
      - static_configs:
        - targets: ['192.168.32.117:9093']
          # - alertmanager:9093
    
    # Load rules once and periodically evaluate them according to the global 'evaluation_interval'.
    rule_files:
      - "node_down.yml"
      # - "node-exporter-alert-rules.yml"
      # - "first_rules.yml"
      # - "second_rules.yml"
    
    # A scrape configuration containing exactly one endpoint to scrape:
    # Here it's Prometheus itself.
    scrape_configs:
      # IO存储节点组
      - job_name: 'io'
        scrape_interval: 8s
        static_configs:
         #端口为node-exporter启动的端口 
    - targets: ['192.168.32.117:9100'] - targets: ['192.168.32.196:9100'] - targets: ['192.168.32.136:9100'] - targets: ['192.168.32.193:9100'] - targets: ['192.168.32.153:9100'] - targets: ['192.168.32.185:9100'] - targets: ['192.168.32.190:19100'] - targets: ['192.168.32.192:9100'] # The job name is added as a label `job=<job_name>` to any timeseries scraped from this config. - job_name: 'cadvisor' static_configs:
         #端口为cadvisor启动的端口
    - targets: ['192.168.32.117:18080'] - targets: ['192.168.32.193:8080'] - targets: ['192.168.32.153:8080'] - targets: ['192.168.32.185:8080'] - targets: ['192.168.32.190:18080'] - targets: ['192.168.32.192:18080']

    node_down.yml

    groups:
      - name: node_down
        rules:
          - alert: InstanceDown
            expr: up == 0
            for: 1m
            labels:
              user: test
            annotations:
              summary: 'Instance {{ $labels.instance }} down'
              description: '{{ $labels.instance }} of job {{ $labels.job }} has been down for more than 1 minutes.'
    
            #剩余内存小于10%
          - alert: 剩余内存小于10%
            expr: node_memory_MemAvailable_bytes / node_memory_MemTotal_bytes * 100 < 10
            for: 2m
            labels:
              severity: warning
            annotations:
              summary: Host out of memory (instance {{ $labels.instance }})
              description: "Node memory is filling up (< 10% left)\n  VALUE = {{ $value }}\n  LABELS = {{ $labels }}"
    
            #剩余磁盘小于10%
          - alert: 剩余磁盘小于10%
            expr: (node_filesystem_avail_bytes * 100) / node_filesystem_size_bytes < 10 and ON (instance, device, mountpoint) node_filesystem_readonly == 0
            for: 2m
            labels:
              severity: warning
            annotations:
              summary: Host out of disk space (instance {{ $labels.instance }})
              description: "Disk is almost full (< 10% left)\n  VALUE = {{ $value }}\n  LABELS = {{ $labels }}"
    
    
            #cpu负载 > 80%
          - alert: CPU负载 > 80%
            expr: 100 - (avg by(instance) (rate(node_cpu_seconds_total{mode="idle"}[2m])) * 100) > 80
            for: 0m
            labels:
              severity: warning
            annotations:
              summary: Host high CPU load (instance {{ $labels.instance }})
              description: "CPU load is > 80%\n  VALUE = {{ $value }}\n  LABELS = {{ $labels }}"

    告警:https://awesome-prometheus-alerts.grep.to/rules#prometheus-self-monitoring

    官网仪表盘:https://grafana.com/grafana/dashboards/

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  • 原文地址:https://www.cnblogs.com/runzhao/p/15716274.html
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