flume 基本知识

官网指导文档:

http://flume.apache.org/releases/content/1.7.0/FlumeDeveloperGuide.html

http://flume.apache.org/releases/content/1.9.0/FlumeDeveloperGuide.html

4.2.1、案例一:监控端口数据

目标:Flume监控一端Console,另一端Console发送消息,使被监控端实时显示。

分步实现:

1) 创建Flume Agent配置文件flume-telnet.conf

# Name the components on this agent

a1.sources = r1

a1.sinks = k1

a1.channels = c1

# Describe/configure the source

a1.sources.r1.type = netcat

a1.sources.r1.bind = localhost

a1.sources.r1.port = 44444

# Describe the sink

a1.sinks.k1.type = logger

# Use a channel which buffers events in memory

a1.channels.c1.type = memory

a1.channels.c1.capacity = 1000

a1.channels.c1.transactionCapacity = 100

# Bind the source and sink to the channel

a1.sources.r1.channels = c1

a1.sinks.k1.channel = c1

2) 安装telnet工具

$ sudo rpm -ivh xinetd-2.3.14-40.el6.x86_64.rpm

$ sudo rpm -ivh telnet-0.17-48.el6.x86_64.rpm

$ sudo rpm -ivh telnet-server-0.17-48.el6.x86_64.rpm

3) 判断44444端口是否被占用

$ netstat -tunlp | grep 44444

4) 先开启flume先听端口

$ bin/flume-ng agent --conf  conf/ --name a1 --conf-file  job/flume-telnet.conf -Dflume.root.logger==INFO,console

Remark: --config     the localtion of config

        --name  the  name of  agent

 5) 使用telnet工具向本机的44444端口发送内容

$ telnet localhost 44444

4.2.2、案例二:实时读取本地文件到HDFS

目标:实时监控hive日志,并上传到HDFS

分步实现:

1) 拷贝Hadoop相关jarFlumelib目录下

$ cp share/hadoop/common/lib/hadoop-auth-2.5.0-cdh5.3.6.jar ./lib/

$ cp share/hadoop/common/lib/commons-configuration-1.6.jar ./lib/

$ cp share/hadoop/mapreduce1/lib/hadoop-hdfs-2.5.0-cdh5.3.6.jar ./lib/

$ cp share/hadoop/common/hadoop-common-2.5.0-cdh5.3.6.jar ./lib/

$ cp ./share/hadoop/hdfs/lib/htrace-core-3.1.0-incubating.jar ./lib/

$ cp ./share/hadoop/hdfs/lib/commons-io-2.4.jar ./lib/

尖叫提示:标红的jar1.99版本flume必须引用的jar

2) 创建flume-hdfs.conf文件

# Name the components on this agent

a2.sources = r2

a2.sinks = k2

a2.channels = c2

# Describe/configure the source

a2.sources.r2.type = exec

a2.sources.r2.command = tail -F /home/admin/modules/apache-hive-1.2.2-bin/hive.log

a2.sources.r2.shell = /bin/bash -c

# Describe the sink

a2.sinks.k2.type = hdfs

a2.sinks.k2.hdfs.path = hdfs://linux01:8020/flume/%Y%m%d/%H

#上传文件的前缀

a2.sinks.k2.hdfs.filePrefix = logs-

#是否按照时间滚动文件夹

a2.sinks.k2.hdfs.round = true

#多少时间单位创建一个新的文件夹

a2.sinks.k2.hdfs.roundValue = 1

#重新定义时间单位

a2.sinks.k2.hdfs.roundUnit = hour

#是否使用本地时间戳

a2.sinks.k2.hdfs.useLocalTimeStamp = true

#积攒多少个EventflushHDFS一次

a2.sinks.k2.hdfs.batchSize = 1000

#设置文件类型,可支持压缩

a2.sinks.k2.hdfs.fileType = DataStream

#多久生成一个新的文件

a2.sinks.k2.hdfs.rollInterval = 600

#设置每个文件的滚动大小

a2.sinks.k2.hdfs.rollSize = 134217700

#文件的滚动与Event数量无关

a2.sinks.k2.hdfs.rollCount = 0

#最小冗余数

a2.sinks.k2.hdfs.minBlockReplicas = 1

# Use a channel which buffers events in memory

a2.channels.c2.type = memory

a2.channels.c2.capacity = 1000

a2.channels.c2.transactionCapacity = 100

# Bind the source and sink to the channel

a2.sources.r2.channels = c2

a2.sinks.k2.channel = c2

3) 执行监控配置

$ bin/flume-ng agent --conf conf/ --name a2 --conf-file job/flume-hdfs.conf

4.2.3、案例三:实时读取目录文件到HDFS

目标:使用flume监听整个目录的文件

分步实现

1) 创建配置文件flume-dir.conf

a3.sources = r3

a3.sinks = k3

a3.channels = c3

# Describe/configure the source

a3.sources.r3.type = spooldir

a3.sources.r3.spoolDir = /home/admin/modules/apache-flume-1.7.0-bin/upload

a3.sources.r3.fileSuffix = .COMPLETED

a3.sources.r3.fileHeader = true

#忽略所有以.tmp结尾的文件,不上传

a3.sources.r3.ignorePattern = ([^ ]*.tmp)

# Describe the sink

a3.sinks.k3.type = hdfs

a3.sinks.k3.hdfs.path = hdfs://linux01:8020/flume/upload/%Y%m%d/%H

#上传文件的前缀

a3.sinks.k3.hdfs.filePrefix = upload-

#是否按照时间滚动文件夹

a3.sinks.k3.hdfs.round = true

#多少时间单位创建一个新的文件夹

a3.sinks.k3.hdfs.roundValue = 1

#重新定义时间单位

a3.sinks.k3.hdfs.roundUnit = hour

#是否使用本地时间戳

a3.sinks.k3.hdfs.useLocalTimeStamp = true

#积攒多少个EventflushHDFS一次

a3.sinks.k3.hdfs.batchSize = 100

#设置文件类型,可支持压缩

a3.sinks.k3.hdfs.fileType = DataStream

#多久生成一个新的文件

a3.sinks.k3.hdfs.rollInterval = 600

#设置每个文件的滚动大小大概是128M

a3.sinks.k3.hdfs.rollSize = 134217700

#文件的滚动与Event数量无关

a3.sinks.k3.hdfs.rollCount = 0

#最小冗余数

a3.sinks.k3.hdfs.minBlockReplicas = 1

# Use a channel which buffers events in memory

a3.channels.c3.type = memory

a3.channels.c3.capacity = 1000

a3.channels.c3.transactionCapacity = 100

# Bind the source and sink to the channel

a3.sources.r3.channels = c3

a3.sinks.k3.channel = c3

2) 执行测试:执行如下脚本后,请向upload文件夹中添加文件试试

$ bin/flume-ng agent --conf conf/ --name a3 --conf-file job/flume-dir.conf

尖叫提示: 在使用Spooling Directory Source

1) 不要在监控目录中创建并持续修改文件

2) 上传完成的文件会以.COMPLETED结尾

3) 被监控文件夹每600毫秒扫描一次文件变动

4.2.4、案例四:FlumeFlume之间数据传递:单FlumeChannelSink 

 

目标:使用flume-1监控文件变动,flume-1将变动内容传递给flume-2flume-2负责存储到HDFS。同时flume-1将变动内容传递给flume-3flume-3负责输出到。

local filesystem。

分步实现:

1) 创建flume-1.conf,用于监控hive.log文件的变动,同时产生两个channel和两个sink分别输送给flume-2flume3

# Name the components on this agent

a1.sources = r1

a1.sinks = k1 k2

a1.channels = c1 c2

# 将数据流复制给多个channel

a1.sources.r1.selector.type = replicating

# Describe/configure the source

a1.sources.r1.type = exec

a1.sources.r1.command = tail -F /home/admin/modules/apache-hive-1.2.2-bin/hive.log

a1.sources.r1.shell = /bin/bash -c

# Describe the sink

a1.sinks.k1.type = avro

a1.sinks.k1.hostname = linux01

a1.sinks.k1.port = 4141

a1.sinks.k2.type = avro

a1.sinks.k2.hostname = linux01

a1.sinks.k2.port = 4142

# Describe the channel

a1.channels.c1.type = memory

a1.channels.c1.capacity = 1000

a1.channels.c1.transactionCapacity = 100

a1.channels.c2.type = memory

a1.channels.c2.capacity = 1000

a1.channels.c2.transactionCapacity = 100

# Bind the source and sink to the channel

a1.sources.r1.channels = c1 c2

a1.sinks.k1.channel = c1

a1.sinks.k2.channel = c2

2) 创建flume-2.conf,用于接收flume-1event,同时产生1channel1sink,将数据输送给hdfs

# Name the components on this agent

a2.sources = r1

a2.sinks = k1

a2.channels = c1

# Describe/configure the source

a2.sources.r1.type = avro

a2.sources.r1.bind = linux01

a2.sources.r1.port = 4141

# Describe the sink

a2.sinks.k1.type = hdfs

a2.sinks.k1.hdfs.path = hdfs://linux01:8020/flume2/%Y%m%d/%H

#上传文件的前缀

a2.sinks.k1.hdfs.filePrefix = flume2-

#是否按照时间滚动文件夹

a2.sinks.k1.hdfs.round = true

#多少时间单位创建一个新的文件夹

a2.sinks.k1.hdfs.roundValue = 1

#重新定义时间单位

a2.sinks.k1.hdfs.roundUnit = hour

#是否使用本地时间戳

a2.sinks.k1.hdfs.useLocalTimeStamp = true

#积攒多少个EventflushHDFS一次

a2.sinks.k1.hdfs.batchSize = 100

#设置文件类型,可支持压缩

a2.sinks.k1.hdfs.fileType = DataStream

#多久生成一个新的文件

a2.sinks.k1.hdfs.rollInterval = 600

#设置每个文件的滚动大小大概是128M

a2.sinks.k1.hdfs.rollSize = 134217700

#文件的滚动与Event数量无关

a2.sinks.k1.hdfs.rollCount = 0

#最小冗余数

a2.sinks.k1.hdfs.minBlockReplicas = 1

# Describe the channel

a2.channels.c1.type = memory

a2.channels.c1.capacity = 1000

a2.channels.c1.transactionCapacity = 100

# Bind the source and sink to the channel

a2.sources.r1.channels = c1

a2.sinks.k1.channel = c1

3) 创建flume-3.conf,用于接收flume-1event,同时产生1channel1sink,将数据输送给本地目录:

# Name the components on this agent

a3.sources = r1

a3.sinks = k1

a3.channels = c1

# Describe/configure the source

a3.sources.r1.type = avro

a3.sources.r1.bind = linux01

a3.sources.r1.port = 4142

# Describe the sink

a3.sinks.k1.type = file_roll

a3.sinks.k1.sink.directory = /home/admin/Desktop/flume3

# Describe the channel

a3.channels.c1.type = memory

a3.channels.c1.capacity = 1000

a3.channels.c1.transactionCapacity = 100

# Bind the source and sink to the channel

a3.sources.r1.channels = c1

a3.sinks.k1.channel = c1

尖叫提示:输出的本地目录必须是已经存在的目录,如果该目录不存在,并不会创建新的目录。

4) 执行测试:分别开启对应flume-job(依次启动flume-3flume-2flume-1),同时产生文件变动并观察结果:

$ bin/flume-ng agent --conf conf/ --name a3 --conf-file job/group-job1/flume-3.conf

$ bin/flume-ng agent --conf conf/ --name a2 --conf-file job/group-job1/flume-2.conf

$ bin/flume-ng agent --conf conf/ --name a1 --conf-file job/group-job1/flume-1.conf

4.2.5、案例五:FlumeFlume之间数据传递,多Flume汇总数据到单Flume

 

目标:flume-1监控文件hive.logflume-2监控某一个端口的数据流,flume-1flume-2将数据发送给flume-3flume3将最终数据写入到HDFS

分步实现:

1) 创建flume-1.conf,用于监控hive.log文件,同时sink数据到flume-3:

# Name the components on this agent

a1.sources = r1

a1.sinks = k1

a1.channels = c1

# Describe/configure the source

a1.sources.r1.type = exec

a1.sources.r1.command = tail -F /home/admin/modules/apache-hive-1.2.2-bin/hive.log

a1.sources.r1.shell = /bin/bash -c

# Describe the sink

a1.sinks.k1.type = avro

a1.sinks.k1.hostname = linux01

a1.sinks.k1.port = 4141

# Describe the channel

a1.channels.c1.type = memory

a1.channels.c1.capacity = 1000

a1.channels.c1.transactionCapacity = 100

# Bind the source and sink to the channel

a1.sources.r1.channels = c1

a1.sinks.k1.channel = c1

2) 创建flume-2.conf,用于监控端口44444数据流,同时sink数据到flume-3:

# Name the components on this agent

a2.sources = r1

a2.sinks = k1

a2.channels = c1

# Describe/configure the source

a2.sources.r1.type = netcat

a2.sources.r1.bind = linux01

a2.sources.r1.port = 44444

# Describe the sink

a2.sinks.k1.type = avro

a2.sinks.k1.hostname = linux01

a2.sinks.k1.port = 4141

# Use a channel which buffers events in memory

a2.channels.c1.type = memory

a2.channels.c1.capacity = 1000

a2.channels.c1.transactionCapacity = 100

# Bind the source and sink to the channel

a2.sources.r1.channels = c1

a2.sinks.k1.channel = c1

3) 创建flume-3.conf,用于接收flume-1flume-2发送过来的数据流,最终合并后sinkHDFS

# Name the components on this agent

a3.sources = r1

a3.sinks = k1

a3.channels = c1

# Describe/configure the source

a3.sources.r1.type = avro

a3.sources.r1.bind = linux01

a3.sources.r1.port = 4141

# Describe the sink

a3.sinks.k1.type = hdfs

a3.sinks.k1.hdfs.path = hdfs://linux01:8020/flume3/%Y%m%d/%H

#上传文件的前缀

a3.sinks.k1.hdfs.filePrefix = flume3-

#是否按照时间滚动文件夹

a3.sinks.k1.hdfs.round = true

#多少时间单位创建一个新的文件夹

a3.sinks.k1.hdfs.roundValue = 1

#重新定义时间单位

a3.sinks.k1.hdfs.roundUnit = hour

#是否使用本地时间戳

a3.sinks.k1.hdfs.useLocalTimeStamp = true

#积攒多少个EventflushHDFS一次

a3.sinks.k1.hdfs.batchSize = 100

#设置文件类型,可支持压缩

a3.sinks.k1.hdfs.fileType = DataStream

#多久生成一个新的文件

a3.sinks.k1.hdfs.rollInterval = 600

#设置每个文件的滚动大小大概是128M

a3.sinks.k1.hdfs.rollSize = 134217700

#文件的滚动与Event数量无关

a3.sinks.k1.hdfs.rollCount = 0

#最小冗余数

a3.sinks.k1.hdfs.minBlockReplicas = 1

# Describe the channel

a3.channels.c1.type = memory

a3.channels.c1.capacity = 1000

a3.channels.c1.transactionCapacity = 100

# Bind the source and sink to the channel

a3.sources.r1.channels = c1

a3.sinks.k1.channel = c1

4) 执行测试:分别开启对应flume-job(依次启动flume-3flume-2flume-1),同时产生文件变动并观察结果:

$ bin/flume-ng agent --conf conf/ --name a3 --conf-file job/group-job2/flume-3.conf

$ bin/flume-ng agent --conf conf/ --name a2 --conf-file job/group-job2/flume-2.conf

$ bin/flume-ng agent --conf conf/ --name a1 --conf-file job/group-job2/flume-1.conf

尖叫提示:测试时记得启动hive产生一些日志,同时使用telnet44444端口发送内容,如:

$ bin/hive

$ telnet linux01 44444

原文地址:https://www.cnblogs.com/lshan/p/11451794.html