创建项目
张北网站建设公司创新互联,张北网站设计制作,有大型网站制作公司丰富经验。已为张北近1000家提供企业网站建设服务。企业网站搭建\成都外贸网站建设要多少钱,请找那个售后服务好的张北做网站的公司定做!本文的主要目的是实现微服务的监控,简单了解了上述工具的概念后,我们就来动手实践一下。首先创建一个简单的Spring Boot项目,其主要依赖如下:
org.springframework.boot
spring-boot-starter-web
org.springframework.boot
spring-boot-starter-actuator
io.micrometer
micrometer-registry-prometheus
Influx
,则将依赖改为 micrometer-registry-influx
即可。编辑项目配置:
server:
port: 9562
spring:
application:
# 指定应用名
name: prometheus-demo
management:
endpoints:
web:
exposure:
# 将 Actuator 的 /actuator/prometheus 端点暴露出来
include: 'prometheus'
metrics:
tags:
# 为指标设置一个Tag,这里设置为应用名,Tag是Prometheus提供的一种能力,从而实现更加灵活的筛选
application: ${spring.application.name}
完成以上步骤后,进行一个简单的测试,看看端点是否能正常返回监控数据。启动项目,访问/actuator/prometheus
端点。正常情况下会返回如下内容:
# HELP process_start_time_seconds Start time of the process since unix epoch.
# TYPE process_start_time_seconds gauge
process_start_time_seconds{application="prometheus-demo",} 1.577697308142E9
# HELP jvm_buffer_memory_used_bytes An estimate of the memory that the Java virtual machine is using for this buffer pool
# TYPE jvm_buffer_memory_used_bytes gauge
jvm_buffer_memory_used_bytes{application="prometheus-demo",id="mapped",} 0.0
jvm_buffer_memory_used_bytes{application="prometheus-demo",id="direct",} 16384.0
# HELP tomcat_sessions_expired_sessions_total
# TYPE tomcat_sessions_expired_sessions_total counter
tomcat_sessions_expired_sessions_total{application="prometheus-demo",} 0.0
# HELP jvm_gc_pause_seconds Time spent in GC pause
# TYPE jvm_gc_pause_seconds summary
jvm_gc_pause_seconds_count{action="end of minor GC",application="prometheus-demo",cause="Metadata GC Threshold",} 1.0
jvm_gc_pause_seconds_sum{action="end of minor GC",application="prometheus-demo",cause="Metadata GC Threshold",} 0.006
jvm_gc_pause_seconds_count{action="end of major GC",application="prometheus-demo",cause="Metadata GC Threshold",} 1.0
jvm_gc_pause_seconds_sum{action="end of major GC",application="prometheus-demo",cause="Metadata GC Threshold",} 0.032
jvm_gc_pause_seconds_count{action="end of minor GC",application="prometheus-demo",cause="Allocation Failure",} 1.0
jvm_gc_pause_seconds_sum{action="end of minor GC",application="prometheus-demo",cause="Allocation Failure",} 0.008
# HELP jvm_gc_pause_seconds_max Time spent in GC pause
# TYPE jvm_gc_pause_seconds_max gauge
jvm_gc_pause_seconds_max{action="end of minor GC",application="prometheus-demo",cause="Metadata GC Threshold",} 0.006
jvm_gc_pause_seconds_max{action="end of major GC",application="prometheus-demo",cause="Metadata GC Threshold",} 0.032
jvm_gc_pause_seconds_max{action="end of minor GC",application="prometheus-demo",cause="Allocation Failure",} 0.008
# HELP jvm_memory_used_bytes The amount of used memory
# TYPE jvm_memory_used_bytes gauge
jvm_memory_used_bytes{application="prometheus-demo",area="heap",id="PS Survivor Space",} 0.0
jvm_memory_used_bytes{application="prometheus-demo",area="heap",id="PS Old Gen",} 1.3801776E7
jvm_memory_used_bytes{application="prometheus-demo",area="nonheap",id="Metaspace",} 3.522832E7
jvm_memory_used_bytes{application="prometheus-demo",area="nonheap",id="Code Cache",} 6860800.0
jvm_memory_used_bytes{application="prometheus-demo",area="heap",id="PS Eden Space",} 1.9782928E7
jvm_memory_used_bytes{application="prometheus-demo",area="nonheap",id="Compressed Class Space",} 4825568.0
# HELP logback_events_total Number of error level events that made it to the logs
# TYPE logback_events_total counter
logback_events_total{application="prometheus-demo",level="info",} 7.0
logback_events_total{application="prometheus-demo",level="trace",} 0.0
logback_events_total{application="prometheus-demo",level="warn",} 0.0
logback_events_total{application="prometheus-demo",level="debug",} 0.0
logback_events_total{application="prometheus-demo",level="error",} 0.0
# HELP process_uptime_seconds The uptime of the Java virtual machine
# TYPE process_uptime_seconds gauge
process_uptime_seconds{application="prometheus-demo",} 30.499
# HELP jvm_buffer_count_buffers An estimate of the number of buffers in the pool
# TYPE jvm_buffer_count_buffers gauge
jvm_buffer_count_buffers{application="prometheus-demo",id="mapped",} 0.0
jvm_buffer_count_buffers{application="prometheus-demo",id="direct",} 2.0
# HELP system_cpu_count The number of processors available to the Java virtual machine
# TYPE system_cpu_count gauge
system_cpu_count{application="prometheus-demo",} 6.0
# HELP jvm_threads_peak_threads The peak live thread count since the Java virtual machine started or peak was reset
# TYPE jvm_threads_peak_threads gauge
jvm_threads_peak_threads{application="prometheus-demo",} 22.0
# HELP tomcat_sessions_alive_max_seconds
# TYPE tomcat_sessions_alive_max_seconds gauge
tomcat_sessions_alive_max_seconds{application="prometheus-demo",} 0.0
# HELP jvm_memory_committed_bytes The amount of memory in bytes that is committed for the Java virtual machine to use
# TYPE jvm_memory_committed_bytes gauge
jvm_memory_committed_bytes{application="prometheus-demo",area="heap",id="PS Survivor Space",} 1.5204352E7
jvm_memory_committed_bytes{application="prometheus-demo",area="heap",id="PS Old Gen",} 1.31596288E8
jvm_memory_committed_bytes{application="prometheus-demo",area="nonheap",id="Metaspace",} 3.7879808E7
jvm_memory_committed_bytes{application="prometheus-demo",area="nonheap",id="Code Cache",} 6881280.0
jvm_memory_committed_bytes{application="prometheus-demo",area="heap",id="PS Eden Space",} 1.76685056E8
jvm_memory_committed_bytes{application="prometheus-demo",area="nonheap",id="Compressed Class Space",} 5373952.0
# HELP jvm_buffer_total_capacity_bytes An estimate of the total capacity of the buffers in this pool
# TYPE jvm_buffer_total_capacity_bytes gauge
jvm_buffer_total_capacity_bytes{application="prometheus-demo",id="mapped",} 0.0
jvm_buffer_total_capacity_bytes{application="prometheus-demo",id="direct",} 16384.0
# HELP jvm_gc_live_data_size_bytes Size of old generation memory pool after a full GC
# TYPE jvm_gc_live_data_size_bytes gauge
jvm_gc_live_data_size_bytes{application="prometheus-demo",} 1.3801776E7
# HELP jvm_memory_max_bytes The maximum amount of memory in bytes that can be used for memory management
# TYPE jvm_memory_max_bytes gauge
jvm_memory_max_bytes{application="prometheus-demo",area="heap",id="PS Survivor Space",} 1.5204352E7
jvm_memory_max_bytes{application="prometheus-demo",area="heap",id="PS Old Gen",} 2.841116672E9
jvm_memory_max_bytes{application="prometheus-demo",area="nonheap",id="Metaspace",} -1.0
jvm_memory_max_bytes{application="prometheus-demo",area="nonheap",id="Code Cache",} 2.5165824E8
jvm_memory_max_bytes{application="prometheus-demo",area="heap",id="PS Eden Space",} 1.390411776E9
jvm_memory_max_bytes{application="prometheus-demo",area="nonheap",id="Compressed Class Space",} 1.073741824E9
# HELP jvm_threads_daemon_threads The current number of live daemon threads
# TYPE jvm_threads_daemon_threads gauge
jvm_threads_daemon_threads{application="prometheus-demo",} 18.0
# HELP jvm_threads_states_threads The current number of threads having NEW state
# TYPE jvm_threads_states_threads gauge
jvm_threads_states_threads{application="prometheus-demo",state="runnable",} 8.0
jvm_threads_states_threads{application="prometheus-demo",state="new",} 0.0
jvm_threads_states_threads{application="prometheus-demo",state="timed-waiting",} 2.0
jvm_threads_states_threads{application="prometheus-demo",state="blocked",} 0.0
jvm_threads_states_threads{application="prometheus-demo",state="waiting",} 12.0
jvm_threads_states_threads{application="prometheus-demo",state="terminated",} 0.0
# HELP jvm_gc_memory_promoted_bytes_total Count of positive increases in the size of the old generation memory pool before GC to after GC
# TYPE jvm_gc_memory_promoted_bytes_total counter
jvm_gc_memory_promoted_bytes_total{application="prometheus-demo",} 8296848.0
# HELP tomcat_sessions_active_max_sessions
# TYPE tomcat_sessions_active_max_sessions gauge
tomcat_sessions_active_max_sessions{application="prometheus-demo",} 0.0
# HELP tomcat_sessions_created_sessions_total
# TYPE tomcat_sessions_created_sessions_total counter
tomcat_sessions_created_sessions_total{application="prometheus-demo",} 0.0
# HELP jvm_gc_memory_allocated_bytes_total Incremented for an increase in the size of the young generation memory pool after one GC to before the next
# TYPE jvm_gc_memory_allocated_bytes_total counter
jvm_gc_memory_allocated_bytes_total{application="prometheus-demo",} 1.36924824E8
# HELP process_cpu_usage The "recent cpu usage" for the Java Virtual Machine process
# TYPE process_cpu_usage gauge
process_cpu_usage{application="prometheus-demo",} 0.10024585094452443
# HELP system_cpu_usage The "recent cpu usage" for the whole system
# TYPE system_cpu_usage gauge
system_cpu_usage{application="prometheus-demo",} 0.38661791030714154
# HELP tomcat_sessions_active_current_sessions
# TYPE tomcat_sessions_active_current_sessions gauge
tomcat_sessions_active_current_sessions{application="prometheus-demo",} 0.0
# HELP jvm_classes_loaded_classes The number of classes that are currently loaded in the Java virtual machine
# TYPE jvm_classes_loaded_classes gauge
jvm_classes_loaded_classes{application="prometheus-demo",} 7195.0
# HELP http_server_requests_seconds
# TYPE http_server_requests_seconds summary
http_server_requests_seconds_count{application="prometheus-demo",exception="None",method="GET",outcome="CLIENT_ERROR",status="404",uri="/**",} 1.0
http_server_requests_seconds_sum{application="prometheus-demo",exception="None",method="GET",outcome="CLIENT_ERROR",status="404",uri="/**",} 0.012429856
# HELP http_server_requests_seconds_max
# TYPE http_server_requests_seconds_max gauge
http_server_requests_seconds_max{application="prometheus-demo",exception="None",method="GET",outcome="CLIENT_ERROR",status="404",uri="/**",} 0.012429856
# HELP jvm_gc_max_data_size_bytes Max size of old generation memory pool
# TYPE jvm_gc_max_data_size_bytes gauge
jvm_gc_max_data_size_bytes{application="prometheus-demo",} 2.841116672E9
# HELP jvm_threads_live_threads The current number of live threads including both daemon and non-daemon threads
# TYPE jvm_threads_live_threads gauge
jvm_threads_live_threads{application="prometheus-demo",} 22.0
# HELP jvm_classes_unloaded_classes_total The total number of classes unloaded since the Java virtual machine has started execution
# TYPE jvm_classes_unloaded_classes_total counter
jvm_classes_unloaded_classes_total{application="prometheus-demo",} 1.0
# HELP tomcat_sessions_rejected_sessions_total
# TYPE tomcat_sessions_rejected_sessions_total counter
tomcat_sessions_rejected_sessions_total{application="prometheus-demo",} 0.0
该端点返回的数据是Prometheus需要使用的。每一项都有相应的注释解释其含义,相信不难看懂。例如:
# HELP jvm_memory_used_bytes The amount of used memory
# TYPE jvm_memory_used_bytes gauge
jvm_memory_used_bytes{application="prometheus-demo",area="heap",id="PS Survivor Space",} 0.0
表示:prometheus-demo
应用堆内存中的 PS Survivor Space
区域占用的空间是 0.0
个字节。
Actuator:
对Spring Boot监控能力有过了解的小伙伴都应该知道Spring Boot Actuator这个子项目,它为应用提供了强大的监控能力。从Spring Boot 2.x开始,Actuator将底层改为Micrometer,提供了更强、更灵活的监控能力。Micrometer是一个监控门面,可以类比成监控界的 Slf4j 。借助Micrometer,应用能够对接各种监控系统,例如本文所要介绍的:Prometheus
Prometheus :
Prometheus是一个由SoundCloud开发的开源系统监控+告警+时序列数据库(TSDB),Prometheus大部分组件使用Go语言编写,是Google BorgMon监控系统的开源版本。目前在CNCF基金会托管,并已成功孵化。在开源社区Prometheus目前也是相当活跃,在性能上Prometheus也足够支撑上万台规模的集群。
Prometheus的功能:
- 用度量名和键值对识别时间序列数据的多维数据模型
- 拥有灵活的查询语言:PromQL
- 不依赖分布式存储,单个服务器节点是自治的
- 通过基于HTTP的pull方式采集时序数据
- 可以通过中间网关进行时序列数据的推送
- 支持通过服务发现或者静态配置来发现目标服务对象
- 支持多种多样的图表和界面展示,比如Grafana等
更多内容参考:官方文档,GitHub仓库
Grafana:
Grafana 是一款采用 GO 语言编写的开源应用,支持跨平台度量分析和可视化 + 告警。可以通过将采集的数据查询然后可视化地展示,并及时通知。Grafana 支持多种数据源和展示方式,总而言之是一款强大酷炫的监控指标可视化工具。
更多内容参考:官方文档,GitHub仓库
接下来就是需要在服务器上安装Prometheus服务,用于从微服务暴露的监控端点中采集监控数据。为了简单起见,我这里采用docker的安装方式,其他安装方式可以参考 官方安装文档。
首先为Prometheus准备一个配置文件:
[root@localhost ~]# mkdir /etc/prometheus
[root@localhost ~]# vim /etc/prometheus/prometheus.yml
scrape_configs:
# 任意写,建议英文,不要包含特殊字符
- job_name: 'spring'
# 多久采集一次数据
scrape_interval: 15s
# 采集时的超时时间
scrape_timeout: 10s
# 采集的端点
metrics_path: '/actuator/prometheus'
# 被采集的服务地址,即微服务的ip及端口
static_configs:
- targets: ['192.168.1.252:9562']
该配置文件的目的是让Prometheus服务自动每隔15秒请求 http://192.168.1.252:9562/actuator/prometheus
。更多配置项参考:Prometheus Configuration官方文档
最后通过docker启动Prometheus服务,命令如下:
[root@localhost ~]# docker run -d -p 9090:9090 -v /etc/prometheus/prometheus.yml:/etc/prometheus/prometheus.yml prom/prometheus --config.file=/etc/prometheus/prometheus.yml
启动成功后,正常情况下访问http://{ip}:9090
,就可以看到Prometheus的首页:
点击 Insert metric at cursor
,即可选择监控指标;点击 Graph
,即可让指标以图表方式展示;点击Execute
按钮,即可看到类似下图的结果:
功能说明:
Insert metric at cursor
:选择展示的指标Graph
:让指标以图形展示Execute
:绘制指标图表信息Add Graph
:绘制更多指标图表上一小节我们已经成功搭建了Prometheus服务,并简单介绍了Prometheus自带的监控数据可视化界面,然而使用体验并不好,功能也比较少。下面我们来集成Grafana实现更友好、更贴近生产的监控数据可视化平台。
同样需要在服务器上安装Grafana服务,为了简单起见,我这里依旧采用docker的安装方式。其他安装方式可以参考 官方安装文档。
使用docker只需要一行命令就可以启动Grafana,如下:
[root@localhost ~]# docker run -d -p 3000:3000 grafana/grafana
Grafana启动成功后,访问http://{ip}:3000/login
进行登录,默认账户密码均为admin
:
登录成功后,首页如下:
首先需要添加监控数据的来源,点击首页中的Add data source
,即可看到类似如下的界面:
这里点击Prometheus,即可看到类似如下界面,在这里配置Prometheus服务相关的信息:
保存成功后会有如下提示:
点击导航栏上的 +
按钮,并点击Dashboard
,将会看到类似如下的界面:
点击 Add Query
,即可看到类似如下的界面:
在红框标记的位置添加指标查询,指标的取值详见Spring Boot应用的 /actuator/prometheus
端点,例如jvm_memory_used_bytes
、jvm_threads_states_threads
、jvm_threads_live_threads
等。
Grafana会给你较好的提示,并且支持较为复杂的计算,例如聚合、求和、平均等。如果想要绘制多个线条,可点击Add Query
按钮。如上图所示,笔者为图表绘制了两条线,分别代表daemon以及peak线程。
点击下图的按钮,并填入Title,即可设置图表标题:
若需要为Dashboard添加新的图表则点击上图中的左上角按钮:
并按下图步骤操作即可:
如果需要保存该Dashboard,则点击右上角的保存按钮即可:
至此,我们已经成功将Grafana与Prometheus集成,实现了较为丰富的图表展示——将关心的监控指标放置到Dashboard上,并且非常灵活!然而,这个配置的操作虽然不难,但还是挺费时间的。
那么是否有配置好的又强大、又通用、拿来即用的Dashboard呢?答案是肯定的!前往 Grafana Lab - Dashboards ,输入关键词即可搜索指定Dashboard:
如上图所示,可以找到若干款以 Prometheus 作为数据源,支持Micrometer的Dashboard。下面,简单演示一下如何使用 JVM(Micrometer)
这个Dashboard。点击 JVM(Micrometer)
进入Dashboard详情介绍页,如下图所示:
如图已详细描述了该Dashboard的特性、配置。其中的management.metrics.tags.application
,前面安装Prometheus服务时已经配置过了。该页的右上角用红框标注的 4701
是一个非常重要的数字,因为这是该Dashboard的id。
回到Grafana的首页,我们来导入这个Dashboard,按下图步骤操作:
输入后即可看到类似如下的界面,选择数据源,并点击Import:
此时,即可看到类似如下的界面,我们常关心的指标该Dashboard均已支持:
在上方的选项栏中可以选择查看不同的服务/应用:
此外,还有一些比较好用的Dashboard。
另外有需要云服务器可以了解下创新互联cdcxhl.cn,海内外云服务器15元起步,三天无理由+7*72小时售后在线,公司持有idc许可证,提供“云服务器、裸金属服务器、高防服务器、香港服务器、美国服务器、虚拟主机、免备案服务器”等云主机租用服务以及企业上云的综合解决方案,具有“安全稳定、简单易用、服务可用性高、性价比高”等特点与优势,专为企业上云打造定制,能够满足用户丰富、多元化的应用场景需求。