springboot+Prometheus+grafana

1.Spring Boot 工程集成 Micrometer


org.springframework.boot
spring-boot-starter-actuator


io.micrometer
micrometer-registry-prometheus
management.server.port=9003
management.endpoints.web.exposure.include=*
management.endpoint.metrics.enabled=true
management.endpoint.health.show-details=always
management.endpoint.health.probes.enabled=true
management.endpoint.prometheus.enabled=true
management.metrics.export.prometheus.enabled=true
management.metrics.tags.application=voice-qc-backend

这里 management.endpoints.web.exposure.include=* 配置为开启 Actuator 服务,因为Spring Boot Actuator 会自动配置一个 URL 为 /actuator/Prometheus 的 HTTP 服务来供 Prometheus 抓取数据,不过默认该服务是关闭的,该配置将打开所有的 Actuator 服务。

management.metrics.tags.application 配置会将该工程应用名称添加到计量器注册表的 tag 中去,方便后边 Prometheus 根据应用名称来区分不同的服务。

然后在工程启动主类中添加 Bean 如下来监控 JVM 性能指标信息:

@SpringBootApplication
public class GatewayDatumApplication {
public static void main(String[] args) {
SpringApplication.run(GatewayDatumApplication.class, args);
}
@Bean
MeterRegistryCustomizer configurer(
@Value("${spring.application.name}") String applicationName) {
return (registry) -> registry.config().commonTags("application", applicationName);
}
}

监控请求次数与响应时间

package com.lianxin.gobot.api.monitor;
import io.micrometer.core.instrument.Counter;
import io.micrometer.core.instrument.MeterRegistry;
import io.micrometer.core.instrument.Timer;
import lombok.Getter;
import org.springframework.beans.factory.annotation.Autowired;
import org.springframework.beans.factory.annotation.Value;
import org.springframework.stereotype.Component;
import javax.annotation.PostConstruct;
/**
* @Author: GZ
* @CreateTime: 2022-08-30 10:50
* @Description: 自定义监控服务
* @Version: 1.0
*/
@Component
public class PrometheusCustomMonitor {
/**
* 上报拨打请求次数
*/
@Getter
private Counter reportDialRequestCount;
/**
* 上报拨打URL
*/
@Value("${lx.call-result-report.url}")
private String callReportUrl;
/**
* 上报拨打响应时间
*/
@Getter
private Timer reportDialResponseTime;
@Getter
private final MeterRegistry registry;
@Autowired
public PrometheusCustomMonitor(MeterRegistry registry) {
this.registry = registry;
}
@PostConstruct
private void init() {
reportDialRequestCount = registry.counter("go_api_report_dial_request_count", "url",callReportUrl);
reportDialResponseTime= registry.timer("go_api_report_dial_response_time", "url",callReportUrl);
}
}
//统计请求次数
prometheusCustomMonitor.getReportDialRequestCount().increment();
long startTime = System.currentTimeMillis();
String company = HttpUtils.post(companyUrl,"");
//统计响应时间
long endTime = System.currentTimeMillis();
prometheusCustomMonitor.getReportDialResponseTime().record(endTime-startTime, TimeUnit.MILLISECONDS);

在浏览器访问 http://127.0.0.1:9001/actuator/prometheus ,就可以看到服务的一系列不同类型 metrics 信息,例如jvm_memory_used_bytes gauge、jvm_gc_memory_promoted_bytes_total counter ,go_api_report_dial_request_count等

到此,Spring Boot 工程集成 Micrometer 就已经完成,接下里就要与 Prometheus 进行集成了。

2.集成 Prometheus

```bash
docker pull prom/prometheus
```
```bash
mdkir /usr/local/prometheus
```
```bash
vi prometheus.yml
# my global config
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:
      # - alertmanager:9093

# Load rules once and periodically evaluate them according to the global 'evaluation_interval'.
rule_files:
  # - "first_rules.yml"
  # - "second_rules.yml"

# 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=` to any timeseries scraped from this config.
  - job_name: 'prometheus'

    # metrics_path defaults to '/metrics'
    # scheme defaults to 'http'.

    static_configs:
    - targets: ['192.168.136.129:9090']
```bash
docker run -d --name prometheus -p 9090:9090 -v/usr/local/prometheus/prometheus.yml:/etc/prometheus/prometheus.yml prom/prometheus
```

global:
scrape_interval: 15s
scrape_configs:
- job_name: "prometheus"
static_configs:
- targets: ["localhost:9090"]
- job_name: "metricsLocalTest"
metrics_path: "/actuator/prometheus"
static_configs:
- targets: ["localhost:9003"]

这里 localhost:9001 就是上边本地启动的服务地址,也就是 Prometheus 要监控的服务地址。同时可以添加一些与应用相关的标签,方便后期执行 PromSQL 查询语句区分。最后重启 Prometheus 服务

3.使用 Grafana Dashboard 展示监控项

```bash
docker pull grafana/grafana
```
```bash
docker run -d --name grafana -p 3000:3000 -v /usr/local/grafana:/var/lib/grafana grafana/grafana
```

默认用户名/密码 admin/admin

模板编号为4701

展开阅读全文

页面更新:2024-04-16

标签:计量器   数据源   注册表   面板   次数   名称   地址   业务   工程   信息

1 2 3 4 5

上滑加载更多 ↓
推荐阅读:
友情链接:
更多:

本站资料均由网友自行发布提供,仅用于学习交流。如有版权问题,请与我联系,QQ:4156828  

© CopyRight 2020-2024 All Rights Reserved. Powered By 71396.com 闽ICP备11008920号-4
闽公网安备35020302034903号

Top