flume
多种适配,多样化的数据收集
核心概念
event:一条消息
client:访问者
agent:
重要组件Sources、Channels、Sinks。Interspactor、Selecter
kafka
吞吐量大,高并发场景下使用
注意:flume的agent配置文件不允许有空格。
一、flume打印内容到控制台
1、创建一个agent(使用avroSource接收网络流在flume的控制台打印)配置文件agent1.conf
cd /usr/local/flume/
vi /conf/agent1.conf
agent1.sources=as1
agent1.channels=c1
agent1.sinks=s1
agent1.sources.as1.type=avro
agent1.sources.as1.bind=0.0.0.0 ##接收任意ip发送的数据
agent1.sources.as1.port=21111 ##在21111端口上监听
agent1.sources.as1.channels=c1
agent1.channels.c1.type=memory
agent1.sinks.s1.type=logger
agent1.sinks.s1.channel=c1
2、启动agent1(每30秒检查agent1.conf文件一次,检查该文件是否有变化,有变化则马上生效),将输出打印在控制台上
bin/flume-ng agent –conf conf/ -Dflume.root.logger=DEBUG,console -n agent1 -f conf/agent1.conf
3、使用java代码生产log4j日志输出到flume
3、验证agent,一种是flume控制台测试,一种是java代码通过log4j写日志
1)bin/flume-ng avro-client –conf conf/ -H localhost -p 21111 -F ~/a ##将~目录下的a文件内容写入到flume
2)使用java类将log4j的日志写入到flume的agent中
log4j.properties配置文件
log4j.rootLogger=INFO,flume
log4j.appender.flume = org.apache.flume.clients.log4jappender.Log4jAppender
log4j.appender.flume.Hostname = 192.168.1.33 ##flume启动agent所在的节点ip
log4j.appender.flume.Port = 21111 ##flume启动agent监听的端口号
log4j.appender.flume.UnsafeMode = true
java代码
public class FlumeProducer {
public static void main(String[] args) throws Exception {
final Logger logger = Logger.getLogger(FlumeProducer.class);
while (true) {
logger.info(“logger datetime :” + System.currentTimeMillis());
Thread.sleep(1000);
}
}
}
二、flume生成avroLog文件写入到hdfs中,存放到不同的/IP/日期/文件夹中
1、创建一个agent(使用avroSource接收网络流写入到hdfs)配置文件agent2.conf
cd /usr/local/flume/
vi /conf/agent2.conf
agent2.sources=source1
agent2.channels=channel1
agent2.sinks=sink1
agent2.sources.source1.type=avro
agent2.sources.source1.bind=0.0.0.0
agent2.sources.source1.port=44444
agent2.sources.source1.channels=channel1
agent2.sources.source1.interceptors = i1 i2
agent2.sources.source1.interceptors.i1.type = org.apache.flume.interceptor.HostInterceptor$Builder
agent2.sources.source1.interceptors.i1.preserveExisting = true
agent2.sources.source1.interceptors.i1.useIP = true
agent2.sources.source1.interceptors.i2.type = org.apache.flume.interceptor.TimestampInterceptor$Builder
agent2.channels.channel1.type=memory
agent2.channels.channel1.capacity=10000
agent2.channels.channel1.transactionCapacity=1000
agent2.channels.channel1.keep-alive=30
agent2.sinks.sink1.type=hdfs
agent2.sinks.sink1.channel=channel1
agent2.sinks.sink1.hdfs.path=hdfs://ns1/flume/events/%{host}/%Y-%m-%d ##flume将文件写入到hdfs的路径
agent2.sinks.sink1.hdfs.filePrefix=avroLog- ##flume生成文件的前缀
agent2.sinks.sink1.hdfs.fileSuffix=.log ##flume生成文件的后缀
agent2.sinks.sink1.hdfs.fileType=DataStream ##flume生成文件的类型,DataStream或SequenceFile
agent2.sinks.sink1.hdfs.writeFormat=Text
agent2.sinks.sink1.hdfs.rollInterval=0
agent2.sinks.sink1.hdfs.rollSize=10000
agent2.sinks.sink1.hdfs.rollCount=0
agent2.sinks.sink1.hdfs.idleTimeout=5
2、启动agent2(每30秒检查agent1.conf文件一次,检查该文件是否有变化,有变化则马上生效),将内容写入到hdfs的/flume/events/中
bin/flume-ng agent –conf conf/ -Dflume.monitoring.type=http -Dflume.monitoring.port=34343 -n agent2 -f conf/agent2.conf
3、使用java代码生产log4j日志输出到flume
log4j.properties配置文件
log4j.rootLogger=INFO,flume
log4j.appender.flume = org.apache.flume.clients.log4jappender.Log4jAppender
log4j.appender.flume.Hostname = 192.168.1.33 ##flume启动agent所在的节点ip
log4j.appender.flume.Port = 21111 ##flume启动agent监听的端口号
log4j.appender.flume.UnsafeMode = true
java代码
public class FlumeProducer {
public static void main(String[] args) throws Exception {
final Logger logger = Logger.getLogger(FlumeProducer.class);
while (true) {
logger.info(“logger datetime :” + System.currentTimeMillis());
Thread.sleep(1000);
}
}
}
4、验证agent2是否成功写入到hdfs的/flume/events/文件夹下
hdfs dfs -ls -h -R /flume/events/IP/yyyy-MM-dd/ ##如果存在一个或多个avroLog.timestamp.log文件表示成功
三、使用Socket客户端写入到flume中,flume保存文件到本地
1、创建agent_tcp.conf(接收socket客户端发送的数据然后写入到Linux本地)
cd /usr/local/flume
vi conf/agent_tcp.conf
agent_tcp.sources=as1
agent_tcp.channels=c1
agent_tcp.sinks=s1
agent_tcp.sources.as1.type=syslogtcp
agent_tcp.sources.as1.bind=0.0.0.0
agent_tcp.sources.as1.port=21111
agent_tcp.sources.as1.channels=c1
agent_tcp.channels.c1.type=memory
agent_tcp.channels.c1.capacity=10000
agent_tcp.channels.c1.transactionCapacity=10000
agent_tcp.channels.c1.keep-alive=120
agent_tcp.channels.c1.byteCapacityBufferPercentage=20
agent_tcp.channels.c1.byteCapacity=800000
agent_tcp.sinks.s1.type=file_roll
agent_tcp.sinks.s1.rollSize=10000
agent_tcp.sinks.s1.sink.directory =/home/lefuBigDataDev/clouds/flume/logs
agent_tcp.sinks.s1.channel=c1
2、启动flume的agent_tcp.conf
bin/flume-ng agent -n agent_tcp -c conf/ -f conf/agent_tcp.conf -Dflume.root.logger=DEBUG,console
3、java代码socket客户端
package com.left.clouds.cluster.flume.test;
import java.io.InputStream;
import java.io.OutputStream;
import java.net.Socket;
import org.junit.Before;
import org.junit.Test;
public class TestFlume {
private Socket client = null;
InputStream in = null;
OutputStream out = null;
@Before
public void before(){
try {
client = new Socket(“192.168.0.218”, 21111);
} catch (Exception e) {
e.printStackTrace();
}
}
@Test
public void sender() {
try {
out = client.getOutputStream();
int i = 0;
while(true){
out.write((“device-“+(i++)+(“\n”)).getBytes());
Thread.sleep(4000);
System.out.println(“第:”+i+”次发送…”);
}
} catch (Exception e) {
e.printStackTrace();
}
}
}
Flume-1.6.0中包含了kafka的source,agent配置文件实例如下
front_agent_kafka.sources=as1
front_agent_kafka.channels=c1
front_agent_kafka.sinks=s1
front_agent_kafka.sources.as1.type=org.apache.flume.source.kafka.KafkaSource
front_agent_kafka.sources.as1.zookeeperConnect=192.168.0.20:2181
front_agent_kafka.sources.as1.topic=test
front_agent_kafka.sources.as1.groupId=flume
front_agent_kafka.sources.as1.batchSize=100
front_agent_kafka.sources.as1.channels=c1
front_agent_kafka.channels.c1.type=memory
front_agent_kafka.channels.c1.capacity=10000
front_agent_kafka.channels.c1.transactionCapacity=10000
front_agent_kafka.channels.c1.keep-alive=120
front_agent_kafka.channels.c1.byteCapacityBufferPercentage=20
front_agent_kafka.channels.c1.byteCapacity=800000
front_agent_kafka.sinks.s1.type=com.lefukj.flume.sinks.JdbcSink
front_agent_kafka.sinks.s1.channel=c1