离线电商数仓(八)之用户行为数据采集(八)组件安装(四)采集日志Flume

0 简介

Flume 采集

1 日志采集Flume安装

集群规划

服务器hadoop102

服务器hadoop103

服务器hadoop104

Flume(采集日志)

Flume

Flume

 

2 项目经验Flume组件

1Source

1Taildir Source相比Exec SourceSpooling Directory Source的优势

TailDir Source断点续传、多目录。Flume1.6以前需要自己自定义Source记录每次读取文件位置,实现断点续传。

Exec Source可以实时搜集数据,但是在Flume不运行或者Shell命令出错的情况下,数据将会丢失。

Spooling Directory Source监控目录,不支持断点续传。

2batchSize大小如何设置?

答:Event 1K左右时,500-1000合适(默认为100)

2Channel

采用Kafka Channel省去了Sink,提高了效率。

3 日志采集Flume配置

1)Flume配置分析

Flume直接log日志的数据,log日志的格式是app-yyyy-mm-dd.log

2)Flume的具体配置如下:

1)在/opt/module/flume/conf目录下创建file-flume-kafka.conf文件

[atguigu@hadoop102 conf]$ vim file-flume-kafka.conf

文件配置如下内容

a1.sources=r1
a1.channels=c1 c2

# configure source
a1.sources.r1.type = TAILDIR
a1.sources.r1.positionFile = /opt/module/flume/test/log_position.json
a1.sources.r1.filegroups = f1
a1.sources.r1.filegroups.f1 = /tmp/logs/app.+
a1.sources.r1.fileHeader = true
a1.sources.r1.channels = c1 c2

#interceptor
a1.sources.r1.interceptors =  i1 i2
a1.sources.r1.interceptors.i1.type = com.atguigu.flume.interceptor.LogETLInterceptor$Builder
a1.sources.r1.interceptors.i2.type = com.atguigu.flume.interceptor.LogTypeInterceptor$Builder

a1.sources.r1.selector.type = multiplexing
a1.sources.r1.selector.header = topic
a1.sources.r1.selector.mapping.topic_start = c1
a1.sources.r1.selector.mapping.topic_event = c2

# configure channel
a1.channels.c1.type = org.apache.flume.channel.kafka.KafkaChannel
a1.channels.c1.kafka.bootstrap.servers = hadoop102:9092,hadoop103:9092,hadoop104:9092
a1.channels.c1.kafka.topic = topic_start
a1.channels.c1.parseAsFlumeEvent = false
a1.channels.c1.kafka.consumer.group.id = flume-consumer

a1.channels.c2.type = org.apache.flume.channel.kafka.KafkaChannel
a1.channels.c2.kafka.bootstrap.servers = hadoop102:9092,hadoop103:9092,hadoop104:9092
a1.channels.c2.kafka.topic = topic_event
a1.channels.c2.parseAsFlumeEvent = false
a1.channels.c2.kafka.consumer.group.id = flume-consumer

注意:com.atguigu.flume.interceptor.LogETLInterceptor和com.atguigu.flume.interceptor.LogTypeInterceptor是自定义的拦截器的全类名。需要根据用户自定义的拦截器做相应修改。

flume数据采集

4 FlumeETL分类型拦截

本项目自定义了两个拦截器分别是:ETL拦截器、日志类型区分拦截器

ETL拦截器主要用于过滤时间戳不合法Json数据完整的日志

日志类型区分拦截器主要用于,启动日志和事件日志区分开来,方便发往Kafka的不同Topic

1创建Maven工程flume-interceptor

2创建包名:com.atguigu.flume.interceptor

3)在pom.xml文件中添加如下配置

<dependencies>
    <dependency>
        <groupId>org.apache.flume</groupId>
        <artifactId>flume-ng-core</artifactId>
        <version>1.7.0</version>
    </dependency>
</dependencies>

<build>
    <plugins>
        <plugin>
            <artifactId>maven-compiler-plugin</artifactId>
            <version>2.3.2</version>
            <configuration>
                <source>1.8</source>
                <target>1.8</target>
            </configuration>
        </plugin>
        <plugin>
            <artifactId>maven-assembly-plugin</artifactId>
            <configuration>
                <descriptorRefs>
                    <descriptorRef>jar-with-dependencies</descriptorRef>
                </descriptorRefs>
            </configuration>
            <executions>
                <execution>
                    <id>make-assembly</id>
                    <phase>package</phase>
                    <goals>
                        <goal>single</goal>
                    </goals>
                </execution>
            </executions>
        </plugin>
    </plugins>
</build>

4)在com.atguigu.flume.interceptor包下创建LogETLInterceptor类名

Flume ETL拦截器LogETLInterceptor

package com.atguigu.flume.interceptor;

import org.apache.flume.Context;
import org.apache.flume.Event;
import org.apache.flume.interceptor.Interceptor;

import java.nio.charset.Charset;
import java.util.ArrayList;
import java.util.List;

public class LogETLInterceptor implements Interceptor {

    @Override
    public void initialize() {

    }

    @Override
    public Event intercept(Event event) {

        // 1 获取数据
        byte[] body = event.getBody();
        String log = new String(body, Charset.forName("UTF-8"));

        // 2 判断数据类型并向Header中赋值
        if (log.contains("start")) {
            if (LogUtils.validateStart(log)){
                return event;
            }
        }else {
            if (LogUtils.validateEvent(log)){
                return event;
            }
        }

        // 3 返回校验结果
        return null;
    }

    @Override
    public List<Event> intercept(List<Event> events) {

        ArrayList<Event> interceptors = new ArrayList<>();

        for (Event event : events) {
            Event intercept1 = intercept(event);

            if (intercept1 != null){
                interceptors.add(intercept1);
            }
        }

        return interceptors;
    }

    @Override
    public void close() {

    }

    public static class Builder implements Interceptor.Builder{

        @Override
        public Interceptor build() {
            return new LogETLInterceptor();
        }

        @Override
        public void configure(Context context) {

        }
    }
}
View Code

5)Flume日志过滤工具类

package com.atguigu.flume.interceptor;
import org.apache.commons.lang.math.NumberUtils;

public class LogUtils {

    public static boolean validateEvent(String log) {
        // 服务器时间 | json
        // 1549696569054 | {"cm":{"ln":"-89.2","sv":"V2.0.4","os":"8.2.0","g":"M67B4QYU@gmail.com","nw":"4G","l":"en","vc":"18","hw":"1080*1920","ar":"MX","uid":"u8678","t":"1549679122062","la":"-27.4","md":"sumsung-12","vn":"1.1.3","ba":"Sumsung","sr":"Y"},"ap":"weather","et":[]}

        // 1 切割
        String[] logContents = log.split("\|");

        // 2 校验
        if(logContents.length != 2){
            return false;
        }

        //3 校验服务器时间
        if (logContents[0].length()!=13 || !NumberUtils.isDigits(logContents[0])){
            return false;
        }

        // 4 校验json
        if (!logContents[1].trim().startsWith("{") || !logContents[1].trim().endsWith("}")){
            return false;
        }

        return true;
    }

    public static boolean validateStart(String log) {
 // {"action":"1","ar":"MX","ba":"HTC","detail":"542","en":"start","entry":"2","extend1":"","g":"S3HQ7LKM@gmail.com","hw":"640*960","l":"en","la":"-43.4","ln":"-98.3","loading_time":"10","md":"HTC-5","mid":"993","nw":"WIFI","open_ad_type":"1","os":"8.2.1","sr":"D","sv":"V2.9.0","t":"1559551922019","uid":"993","vc":"0","vn":"1.1.5"}

        if (log == null){
            return false;
        }

        // 校验json
        if (!log.trim().startsWith("{") || !log.trim().endsWith("}")){
            return false;
        }

        return true;
    }
}
View Code

6)Flume日志类型区分拦截器LogTypeInterceptor

package com.atguigu.flume.interceptor;

import org.apache.flume.Context;
import org.apache.flume.Event;
import org.apache.flume.interceptor.Interceptor;

import java.nio.charset.Charset;
import java.util.ArrayList;
import java.util.List;
import java.util.Map;

public class LogTypeInterceptor implements Interceptor {
    @Override
    public void initialize() {

    }

    @Override
    public Event intercept(Event event) {

        // 区分日志类型:   body  header
        // 1 获取body数据
        byte[] body = event.getBody();
        String log = new String(body, Charset.forName("UTF-8"));

        // 2 获取header
        Map<String, String> headers = event.getHeaders();

        // 3 判断数据类型并向Header中赋值
        if (log.contains("start")) {
            headers.put("topic","topic_start");
        }else {
            headers.put("topic","topic_event");
        }

        return event;
    }

    @Override
    public List<Event> intercept(List<Event> events) {

        ArrayList<Event> interceptors = new ArrayList<>();

        for (Event event : events) {
            Event intercept1 = intercept(event);

            interceptors.add(intercept1);
        }

        return interceptors;
    }

    @Override
    public void close() {

    }

    public static class Builder implements  Interceptor.Builder{

        @Override
        public Interceptor build() {
            return new LogTypeInterceptor();
        }

        @Override
        public void configure(Context context) {

        }
    }
}
View Code

7)打包

拦截器打包之后,只需要单独包,不需要依赖的包上传。打包之后要放入Flumelib文件夹下面。

注意为什么不需要依赖包?因为依赖包在flumelib目录下面已经存在了。

8)需要先将打好的包放入到hadoop102的/opt/module/flume/lib文件夹下面。

[atguigu@hadoop102 lib]$ ls | grep interceptor
flume-interceptor-1.0-SNAPSHOT.jar

8)分发Flumehadoop103、hadoop104

[atguigu@hadoop102 module]$ xsync flume/

[atguigu@hadoop102 flume]$ bin/flume-ng agent --name a1 --conf-file conf/file-flume-kafka.conf &

5 日志采集Flume启动停止脚本

1)在/home/atguigu/bin目录下创建脚本f1.sh

[atguigu@hadoop102 bin]$ vim f1.sh

脚本中填写如下内容

!/bin/bash
#使用start启动脚本,使用stop停止脚本
if (($#!=1))
then
        echo 请输入start或stop!
        exit;
fi
#定义cmd用来保存要执行的命令
cmd=cmd
if [ $1 = start ]
then
        cmd="source /etc/profile;nohup flume-ng agent -c $FLUME_HOME/conf/ -n a1 -f $FLUME_HOME/myagents/f1.conf -Dflume.root.logger=DEBUG,console > /home/atguigu/f1.log 2>&1 &"
        elif [ $1 = stop ]
                then
                        cmd="ps -ef  | grep f1.conf | grep -v grep | awk  '{print $2}' | xargs kill -9"
        else
                echo 请输入start或stop!
fi

#在hadoop102和hadoop103开启采集
for i in hadoop102 hadoop103
do
        ssh $i $cmd
done

说明1nohup,该命令可以在你退出帐户/关闭终端之后继续运行相应的进程nohup就是不挂起的意思不挂断地运行命令

说明2/dev/null代表linux的空设备文件,所有往这个文件里面写入的内容都会丢失,俗称“黑洞”。

标准输入0:从键盘获得输入 /proc/self/fd/0

标准输出1:输出到屏幕(即控制台) /proc/self/fd/1

错误输出2:输出到屏幕(即控制台) /proc/self/fd/2

2)增加脚本执行权限

[atguigu@hadoop102 bin]$ chmod 777 f1.sh

3)f1集群启动脚本

[atguigu@hadoop102 module]$ f1.sh start

4)f1集群停止脚本

[atguigu@hadoop102 module]$ f1.sh stop
原文地址:https://www.cnblogs.com/qiu-hua/p/13504492.html