Spark Streaming + Flume整合官网文档阅读及运行示例

1,基于Flume的Push模式(Flume-style Push-based Approach)
     Flume被用于在Flume agents之间推送数据.在这种方式下,Spark Streaming可以很方便的建立一个receiver,起到一个Avro agent的作用.Flume可以将数据推送到改receiver.
1),需求
从集群中选择一台机器,
  • 当Flume+Spark Streaming程序运行时,需要保证Spark的一个worker运行在同一台机器上.
  • Flume可以通过配置文件指定推送到该台机器的一个端口.
    因为在push模式中,streaming程序在运行时,Flume需要通过配置的端口号监听该机器上的receiver,这样Flume才能进行数据推送
2)配置Flume
    配置Flume agent用于发送数据到一个Avro sink,使用如下配置文件:
    
agent.sinks = avroSink
agent.sinks.avroSink.type = avro
agent.sinks.avroSink.channel = memoryChannel
agent.sinks.avroSink.hostname = <选择机器的ip地址>
agent.sinks.avroSink.port = <选择机器的端口号>
     可以参考 Flume’s documentation 获得更多的配置信息
3)配置Spark Streaming程序
    a)连接:在SBT/Maven项目中定义,通过以下配置来配置运行环境
groupId = org.apache.spark
artifactId = spark-streaming-flume_2.10
version = 1.5.0
    b)编程:在程序中import FlumeUtils,创建DStream    
import org.apache.spark.streaming.flume._

val flumeStream = FlumeUtils.createStream(streamingContext, [选择的机器ip], [选择的机器端口号])
    更多可以参考API docs 和 example.
    需要注意的是:选择机器的ip必须与集群中resource manager中某一台机器一致.这样资源分配(resource allocation)才能匹配到这台机器,并且启动receiver.
    c)发布(运行)程序:将spark-streaming-flume_2.10以及相关依赖(除spark-core_2.10和spark-streaming_2.10之外)打包到应用程序的jar包中.然后使用spark-submit来启动应用程序(具体可以参考Deploying section)
4)示例
    (a)Spark程序编写
    完整程序如下:
    
object FlumeLog {
def main(args: Array[String]) {
StreamingExamples.setStreamingLogLevels()

val host = "localhost"
val port = 19999
val batchInterval = Milliseconds(2000)

// Create the context and set the batch size
val sparkConf = new SparkConf().setAppName("FlumeEventCount")
val ssc = new StreamingContext(sparkConf, batchInterval)

// Create a flume stream
val stream = FlumeUtils.createStream(ssc, host, port, StorageLevel.MEMORY_ONLY_SER_2)

// Print out the count of events received from this server in each batch
stream.count().map(cnt => "Received " + cnt + " flume events." ).print()

ssc.start()
ssc.awaitTermination()
}
}

     用于统计flume的event事件.
  (b)编写flume的配置文件
    
a1.channels = c1
     a1.sinks = k1
     a1.sources = r1 

     a1.sinks.k1.type = avro
     a1.sinks.k1.channel = c1
     a1.sinks.k1.hostname = localhost
     a1.sinks.k1.port = 19999 

     a1.sources.r1.type = exec
     a1.sources.r1.command = tail -F /home/file/bigdatatest/datalake/SougouQ.data
     a1.sources.r1.bind = localhost
     a1.sources.r1.port = 44444
     a1.sources.r1.channels = c1 

     a1.channels.c1.type = memory
     a1.channels.c1.capacity = 1000
     a1.channels.c1.transactionCapacity = 100

其中的sinks按照文档中的进行配置.sources用于从日志文件SougouQ.data中读取数据.SougouQ.data中的数据动态生成.
(c)运行
     首先启动Spark Streaming程序,可以看到如下输出信息:
    
          启动flume:/usr/local/flume140/jobconf# ../bin/flume-ng agent --conf ../conf/ --conf-file ./spark_avro.conf --name a1 -Dflume.root.logger=INFO,console
(d)结果,此时观察Spark程序的输出结果如下:
    
    可以看到,每隔一定的间隔,就有一个Received 100 flume events的信息输出,表示spark streaming程序已从flume获取到数据.可以将Spark Streaming应用程序按照实际业务需求进行修改.

2,基于Custom Sink的Pull模式(Pull-based Approach using a Custom Sink)
     不同于Flume直接将数据推送到Spark Streaming中,第二种模式通过以下条件运行一个正常的Flume sink:
  • Flume将数据推送到sink中,并且数据保持buffered状态
  • Spark Streaming使用一个可靠的Flume接收器(reliable Flume receiver )和转换器(transaction)从sink拉取数据.只要当数据被接收并且被Spark Streaming备份后,转换器才运行成功.
    这样,与第一种模式相比,保证了很好的健壮性和容错能力( fault-tolerance guarantees ).然而,这种模式需要为Flume配置一个正常的sink.以下为配置步骤
    1)基本要求
     选择一台运行在一个Flume agent中的普通sink节点的机器.Flume其他的pipeline配置成向该agent发送数据.Spark集群中的机器应该可以访问到选为sink节点的那台机器
    2)配置Flume
        Flume中sink节点的配置
(a)Sink JARS:将如下JAR包添加到Flume中被选为普通sink节点的classpath中,修改FLUME_HOME/conf/flune_env.sh文件中的FLUME_CLASSPATH=""配置信息,将以下三个jar包路径写入,或者将以下三个jar包复制到FLUME_HOME/lib/目录下
    包括三种类型的JAR包
    (i) 普通的sink JAR包(下载地址 direct link):
 groupId = org.apache.spark
 artifactId = spark-streaming-flume-sink_2.10
 version = 1.5.0
     (ii) Scala运行相关JAR包(下载地址  direct link).:
 groupId = org.scala-lang
 artifactId = scala-library
 version = 2.10.4
(iii)Lang 3JAR包(下载地址 direct link):
 groupId = org.apache.commons
 artifactId = commons-lang3
 version = 3.3.2
(b)配置Flume conf文件
使用如下配置参数配置Flume agent用于发送数据到一个Avro sink
agent.sinks = spark
 agent.sinks.spark.type = org.apache.spark.streaming.flume.sink.SparkSink
 agent.sinks.spark.hostname = <hostname of the local machine>
 agent.sinks.spark.port = <port to listen on for connection from Spark>
 agent.sinks.spark.channel = memoryChannel
     同样需要保证Flume upstream pipline已经配置好向运行上述sink的agent发送数据.更多Flume的配置信息可以在Flume’s documentation 中查看.
3)编写Spark Streaming应用程序
(a)连接
    在SBT/Maven项目定义中,需要引入spark-streaming-flume_2.10相关jar包.可以参考之前的配置
(b)编程
    导入FLumeUtils创建一个flumeStream
 import org.apache.spark.streaming.flume._

 val flumeStream = FlumeUtils.createPollingStream(streamingContext, [sink machine hostname], [sink port])
可以查看示例程序FlumePollingEventCount.
    注意:每个input Dstream可以接收从多个sinks中的数据
(c)发布(运行)
    将spark-streaming-flume_2.10以及相关依赖(除spark-core_2.10和spark-streaming_2.10之外)打包到应用程序的jar包中.然后使用spark-submit来启动应用程序(具体可以参考Deploying section)
4)示例
(a)Spark程序:
object FlumeLogPull {
def main(args: Array[String]) {
StreamingExamples.setStreamingLogLevels()

val host = "localhost"
val port = 19999
val batchInterval = Milliseconds(2000)

// Create the context and set the batch size
val sparkConf = new SparkConf().setAppName("FlumeEventCount")
val ssc = new StreamingContext(sparkConf, batchInterval)

// Create a flume stream
val stream = FlumeUtils.createPollingStream(ssc, host, port, StorageLevel.MEMORY_ONLY_SER_2)

// Print out the count of events received from this server in each batch
stream.count().map(cnt => "Received " + cnt + " flume events." ).print()

ssc.start()
ssc.awaitTermination()
}
}
可以看到与之前一个相比,只是把val stream = FlumeUtils.createStream(ssc, host, port, StorageLevel.MEMORY_ONLY_SER_2)改成了val stream = FlumeUtils.createPollingStream(ssc, host, port, StorageLevel.MEMORY_ONLY_SER_2)
(b)配置Flume
    
a1.channels = c1
a1.sinks = k1
a1.sources = r1


a1.sinks.k1.type = org.apache.spark.streaming.flume.sink.SparkSink
a1.sinks.k1.channel = c1
a1.sinks.k1.hostname = localhost
a1.sinks.k1.port = 19999


a1.sources.r1.type = exec
a1.sources.r1.command = tail -F /home/file/bigdatatest/datalake/SougouQ.data
a1.sources.r1.bind = localhost
a1.sources.r1.port = 44444
a1.sources.r1.channels = c1


a1.channels.c1.type = memory
a1.channels.c1.capacity = 100000
a1.channels.c1.transactionCapacity = 100000
(c)运行
    需要先启动flume,再启动spark程序
启动flume:/usr/local/flume140/jobconf# ../bin/flume-ng agent --conf ../conf/ --conf-file ./spark_flume_log_pull.conf --name a1 -Dflume.root.logger=INFO,console
(d)结果
比较启动顺序:
    在push模式中,先启动spark application,进入等待状态,等待flume push数据,此时启动flume进行数据的传递.
    在pull模式中,spark application会从配置的端口pull数据,此时若flume还未启动,spark application会提示端口连接失败.所以需要先启动flume后启动spark application




原文地址:https://www.cnblogs.com/wuyida/p/6300268.html