一文读懂clickhouse集群监控

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一文读懂clickhouse集群监控

常言道,兵马未至,粮草先行,在clickhouse上生产环境之前,我们就得制定好相关的监控方案,包括metric采集、报警策略、图形化报表。有了全面有效的监控,我们就仿佛拥有了千里眼顺风耳,对于线上任何风吹草动都能及时感知,在必要的情况下提前介入以避免线上故障。

业界常用的监控方案一般是基于prometheus + grafana生态。本文将介绍由clickhouse-exporter(node-exporter) + prometheus + grafana组成的监控方案。

clickhouse监控方案

以上为监控方案示意图

  • clickhouse-server中有4个系统表会记录进程内部的指标,分别是system.metricssystem.asynchronous_metrics, system.eventssystem.parts
  • clickhuse-exporter是一个用于采集clickhouse指标的开源组件(https://github.com/ClickHouse/clickhouse_exporter),它会定时查询clickhouse-server中的系统表,转化成监控指标,并通过HTTP接口暴露给prometheus.
  • node-exporter是一个用于采集硬件和操作系统相关指标的开源组件(https://github.com/prometheus/node_exporter)。
  • prometheus定时抓取clickhouse-exporter暴露的指标,并判断报警条件是否被触发,是则推送到alert manager
  • DBA可通过grafana看板实时查看当前clickhouse集群的运行状态
  • DBA可通过alertmanager设置报警通知方式,如邮件、企业微信、电话等。

1 部署与配置

1.1 clickhouse-server

我们生产环境版本为20.3.8,按照官方文档部署即可。

1.2 clickhouse-exporter

clickhouse-exporter一般与clickhouse-server同机部署。

首先下载最新代码并编译(需预先安装Go)

git clone https://github.com/ClickHouse/clickhouse_exporter  
cd clickhouse_exporter  
go mod init  
go mod vendor  
go build   
ls ./clickhouse_exporter  

然后启动

export CLICKHOUSE_USER="user"  
export CLICKHOUSE_PASSWORD="password"  
nohup ./-scrape_uri=http://localhost:port/ >nohup.log 2>&1 &  

最后检查指标是否被正常采集:

> curl localhost:9116/metrics | head  
# TYPE clickhouse_arena_alloc_bytes_total counter  
clickhouse_arena_alloc_bytes_total 9.799096840192e+12  
# HELP clickhouse_arena_alloc_chunks_total Number of ArenaAllocChunks total processed  
# TYPE clickhouse_arena_alloc_chunks_total counter  
clickhouse_arena_alloc_chunks_total 2.29782524e+08  
# HELP clickhouse_background_move_pool_task Number of BackgroundMovePoolTask currently processed  
# TYPE clickhouse_background_move_pool_task gauge  
clickhouse_background_move_pool_task 0  
# HELP clickhouse_background_pool_task Number of BackgroundPoolTask currently processed  

1.3 node-exporter

node-exporter需与clickhouse-server同机部署

首先下载最新代码并编译

git clone https://github.com/prometheus/node_exporter  
make build  
ls ./node_exporter  

然后启动

nohup ./node_exporter > nohup.log 2>&1 &   

最后检查指标是否被正常采集

> curl localhost:9100/metrics  
# HELP go_gc_duration_seconds A summary of the GC invocation durations.  
# TYPE go_gc_duration_seconds summary  
go_gc_duration_seconds{quantile="0"} 6.3563e-05  
go_gc_duration_seconds{quantile="0.25"} 7.4746e-05  
go_gc_duration_seconds{quantile="0.5"} 9.0556e-05  
go_gc_duration_seconds{quantile="0.75"} 0.000110677  
go_gc_duration_seconds{quantile="1"} 0.004362325  
go_gc_duration_seconds_sum 28.451282046  
go_gc_duration_seconds_count 223479  
...  

1.4 prometheus

修改prometheus配置文件,添加alertmanager地址、clickhouse-exporter地址

prometheus.yml示例如下:

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.  
  
# Alertmanager configuration  
alerting:  
  alertmanagers:  
  - static_configs:  
    - targets:  
      - alertmanager:9093  
  
# Load rules once and periodically evaluate them according to the global 'evaluation_interval'.  
rule_files:  
  - ./rules/*.rules  
  
# A scrape configuration containing exactly one endpoint to scrape:  
# Here it's Prometheus itself.  
scrape_configs:  
  # The job name is added as a label `job=<job_name>` to any timeseries scraped from this config.  
  - job_name: 'clickhouse'  
  
    # metrics_path defaults to '/metrics'  
    # scheme defaults to 'http'.  
    static_configs:  
    - targets: ['clickhouseexporter1:9116', 'clickhouseexporter2:9116', ...]  

*.rules示例如下:

groups:  
 - name: qps_too_high  
   rules:  
   - alert: clickhouse qps超出阈值  
     expr: rate(clickhouse_query_total[1m]) > 100  
     for: 2m  
     labels:  
      job: clickhouse-server  
      severity: critical  
      alertname: clickhouse qps超出阈值  
     annotations:  
      summary: "clickhouse qps超出阈值"  
      description: "clickhouse qps超过阈值(100), qps: {{ $value }}"  

启动promethus

nohup ./prometheus --config.file=/path/to/config --storage.tsdb.path=/path/to/storage --web.external-url=prometheus --web.enable-admin-api --web.enable-lifecycle --log.level=warn >nohup.log 2>&1 &   

浏览器输入http://prometheus_ip:9090检查prometheus状态

1.5 alert manager

首先修改配置文件

配置文件示例如下:

route:  
  receiver: 'default'  
  group_by: ['service','project']  
  
receivers:  
- name: "电话"  
  webhook_configs:  
  - url: <url>  
  
- name: "企业微信"  
  webhook_configs:  
  - url: <url>  
  
- name: "邮箱"  
  webhook_configs:  
  - url: <url>  

然后启动

nohup ./alertmanager --config.file=/path/to/config --log.level=warn >nohup.log 2>&1 &  

1.6 grafana

关于clickhouse的dashboard模板已经有很多,在这里推荐:https://grafana.com/grafana/dashboards/882 将它导入到新建的grafana dashboard之后,即可得到漂亮的clickhouse集群看板(可能需要微调)。

另外建议安装clickhouse datasource插件。有了这个插件便能在grafana中配置clickhouse数据源,并通过Clickhouse SQL配置图表,详细文档见:https://grafana.com/grafana/plugins/vertamedia-clickhouse-datasource

2 重要指标和监控

我们可以看到,不管是node-exporter还是clickhouse-exporter,它们的指标种类很多,大概有几百个。我们的策略是抓大放小,对于重要的指标才设置报警策略并创建看板。

下面列举一些个人觉得比较重要的指标

2.1 系统指标

系统指标由node-exporter采集

指标名 指标含义 报警策略 策略含义
node_cpu_seconds_total 机器累计cpu时间(单位s) 100 * sum without (cpu) (rate(node_cpu_seconds_total{mode='user'}[5m])) / count without (cpu) (node_cpu_seconds_total{mode='user'}) > 80 用户态cpu利用率大于80%则报警
node_filesystem_size_bytes/node_filesystem_avail_bytes 机器上个文件分区容量/可用容量 100 * (node_filesystem_size_bytes{mountpoint="/data"} - node_filesystem_avail_bytes{mountpoint="/data"}) / node_filesystem_size_bytes{mountpoint="/data"} > 80 /data盘占用超过80%则报警
node_load5 5分钟load值 node_load5 > 60 5分钟load值超过60则报警(可根据具体情况设置阈值)
node_disk_reads_completed_total 累计读磁盘请求次数 rate(node_disk_reads_completed_total[5m]) > 200 read iops超过200则报警

2.2 clickhouse指标

指标名 指标含义 报警策略 策略含义
clickhouse_exporter_scrape_failures_total prometheus抓取exporter失败总次数 increase(clickhouse_exporter_scrape_failures_total[5m]) > 10 prometheus抓取export失败次数超过阈值则报警,说明此时ch服务器可能发生宕机
promhttp_metric_handler_requests_total exporter请求clickhouse失败总次数 increase(promhttp_metric_handler_requests_total{code="200"}[2m]) == 0 2分钟内查询clickhouse成功次数为零则报警,说明此时某个ch实例可能不可用
clickhouse_readonly_replica ch实例中处于只读状态的表个数 clickhouse_readonly_replica > 5 ch中只读表超过5则报警,说明此时ch与zk连接可能发生异常
clickhouse_query_total ch已处理的query总数 rate(clickhouse_query_total[1m]) > 30 单实例qps超过30则报警
clickhouse_query ch中正在运行的query个数 clickhouse_query > 30 单实例并发query数超过阈值则报警
clickhouse_tcp_connection ch的TCP连接数 clickhouse_tcp_connection > XXX
clickhouse_http_connection ch的HTTP连接数 clickhouse_http_connection > XXX
clickhouse_zoo_keeper_request ch中正在运行的zk请求数 clickhouse_zoo_keeper_request > XXX
clickhouse_replicas_max_queue_size ch中zk副本同步队列的长度 clickhouse_replicas_max_queue_size > 100 zk副本同步队列长度超过阈值则报警,说明此时副本同步队列出现堆积

2.3 其他常用SQL

在clickhouse中,所有被执行的Query都会记录到system.query_log表中。因此我们可通过该表监控集群的查询情况。以下列举几种用于监控的常用SQL。为了更方便的查看,可添加到grafana看板中。

最近查询

SELECT   
    event_time,   
    user,   
    query_id AS query,   
    read_rows,   
    read_bytes,   
    result_rows,   
    result_bytes,   
    memory_usage,   
    exception  
FROM clusterAllReplicas('cluster_name', system, query_log)  
WHERE (event_date = today()) AND (event_time >= (now() - 60)) AND (is_initial_query = 1) AND (query NOT LIKE 'INSERT INTO%')  
ORDER BY event_time DESC  
LIMIT 100  

慢查询

SELECT   
    event_time,   
    user,   
    query_id AS query,   
    read_rows,   
    read_bytes,   
    result_rows,   
    result_bytes,   
    memory_usage,   
    exception  
FROM clusterAllReplicas('cluster_name', system, query_log)  
WHERE (event_date = yesterday()) AND query_duration_ms > 30000 AND (is_initial_query = 1) AND (query NOT LIKE 'INSERT INTO%')  
ORDER BY query_duration_ms desc  
LIMIT 100  

Top10大表

SELECT   
    database,   
    table,   
    sum(bytes_on_disk) AS bytes_on_disk  
FROM clusterAllReplicas('cluster_name', system, parts)  
WHERE active AND (database != 'system')  
GROUP BY   
    database,   
    table  
ORDER BY bytes_on_disk DESC  
LIMIT 10  

Top10查询用户

SELECT   
    user,   
    count(1) AS query_times,   
    sum(read_bytes) AS query_bytes,   
    sum(read_rows) AS query_rows  
FROM clusterAllReplicas('cluster_name', system, query_log)  
WHERE (event_date = yesterday()) AND (is_initial_query = 1) AND (query NOT LIKE 'INSERT INTO%')  
GROUP BY user  
ORDER BY query_times DESC  
LIMIT 10  

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原文地址:https://www.cnblogs.com/taiyang-li/p/14460734.html