sparkStreaming Windows 函数

原文: https://blog.csdn.net/MyronCham/article/details/85706089

参考上文即可!

 

案例一:  reduceByKeyAndWindow

//  热点搜索词滑动统计,每隔10秒钟,统计最近60秒钟的搜索词的搜索频次,并打印出排名最靠前的3个搜索词以及出现次数
package com.sea.scala.demo.windows

import org.apache.spark.SparkConf
import org.apache.spark.streaming.{Seconds, StreamingContext}

object ReduceByKeyAndWindowDemo {

//  热点搜索词滑动统计,每隔10秒钟,统计最近60秒钟的搜索词的搜索频次,并打印出排名最靠前的3个搜索词以及出现次数
  def main(args: Array[String]): Unit = {
    val conf = new SparkConf().setAppName("WindowHotWordS").setMaster("local[2]")

    //Scala中,创建的是StreamingContext
    val ssc = new StreamingContext(conf, Seconds(5))

    val searchLogsDStream = ssc.socketTextStream("localhost", 8099)
    val searchWordPairDStream=searchLogsDStream.flatMap(_.split(" ")).map((_,1))
    // reduceByKeyAndWindow
    // 第二个参数,是窗口长度,这是是60秒
    // 第三个参数,是滑动间隔,这里是10秒
    // 也就是说,每隔10秒钟,将最近60秒的数据,作为一个窗口,进行内部的RDD的聚合,然后统一对一个RDD进行后续计算
    // 而是只是放在那里
    // 然后,等待我们的滑动间隔到了以后,10秒到了,会将之前60秒的RDD,因为一个batch间隔是5秒,所以之前60秒,就有12个RDD,给聚合起来,然后统一执行reduceByKey操作
    // 所以这里的reduceByKeyAndWindow,是针对每个窗口执行计算的,而不是针对 某个DStream中的RDD
    // 每隔10秒钟,出来 之前60秒的收集到的单词的统计次数
    val searchWordCountsDStream = searchWordPairDStream
      .reduceByKeyAndWindow((v1: Int, v2: Int) => v1 + v2, Seconds(60), Seconds(10))


    val finalDStream = searchWordCountsDStream.transform(searchWordCountsRDD =>
    {
      val countSearchWordsRDD = searchWordCountsRDD.map(tuple => (tuple._2, tuple._1))
      //排序,key value 倒置,根据value倒叙排列,提取top3
      val sortedCountSearchWordsRDD = countSearchWordsRDD.sortByKey(false)
      val sortedSearchWordCountsRDD = sortedCountSearchWordsRDD.map(tuple => (tuple._1, tuple._2))
      val top3SearchWordCounts = sortedSearchWordCountsRDD.take(3)
      for (tuple <- top3SearchWordCounts)
      {
        println("result-top3 : " + tuple)
      }
      searchWordCountsRDD
    })

    finalDStream.print()

    ssc.start()
    ssc.awaitTermination()
  }

}

案例2 :原文链接:https://blog.csdn.net/h1025372645/java/article/details/99233218

Spark Streaming使用window函数与reduceByKeyAndWindow实现一定时间段内读取Kafka中的数据累加;reduceByKeyAndWindow函数的两种使用方式

使用window函数实现时间段内数据累加:

import kafka.serializer.StringDecoder
import org.apache.spark.SparkConf
import org.apache.spark.streaming.dstream.DStream
import org.apache.spark.streaming.kafka.KafkaUtils
import org.apache.spark.streaming.{Seconds, StreamingContext}

object J_WindowOrderTotalStreaming {

  //批次时间,Batch Interval
  val STREAMING_BATCH_INTERVAL = Seconds(1)

  //设置窗口时间间隔
  val STREAMING_WINDOW_INTERVAL = STREAMING_BATCH_INTERVAL * 3

  //设置滑动窗口时间间隔
  val STREAMING_SLIDER_INTERVAL = STREAMING_BATCH_INTERVAL * 3

  def main(args: Array[String]): Unit = {
    val conf = new SparkConf().setMaster("local[3]").
      setAppName("NetworkWordCount")

    val ssc = new StreamingContext(conf, STREAMING_BATCH_INTERVAL)
    ssc.sparkContext.setLogLevel("WARN")
    val kafkaParams: Map[String, String] = Map(
      "metadata.broker.list"->
        "bigdata-hpsk01.huadian.com:9092,bigdata-hpsk01.huadian.com:9093,bigdata-hpsk01.huadian.com:9094",
      "auto.offset.reset"->"largest" //读取最新数据
    )
    val topics: Set[String] = Set("orderTopic")

    val lines: DStream[String] = KafkaUtils.createDirectStream[String, String, StringDecoder,StringDecoder](
      ssc,
      kafkaParams,
      topics
    ).map(_._2) //只需要获取Topic中每条Message中Value的值

    val inputDStream = lines.window(STREAMING_WINDOW_INTERVAL,STREAMING_SLIDER_INTERVAL)

    val orderDStream: DStream[(Int, Int)] =  inputDStream.transform(rdd=>{
      rdd.filter(line=>line.trim.length> 0 && line.trim.split(",").length==3)
        .map(line=>
        {
          val split = line.split(",")
          (split(1).toInt,1)
        })
    })
    val orderCountDStream =orderDStream.reduceByKey( _ + _)
    orderCountDStream.print()
    ssc.start()

    ssc.awaitTermination()

  }
}

原文链接:https://blog.csdn.net/h1025372645/java/article/details/99233218

使用reduceByKeyAndWindow实现累加方法一:不需要设置检查点

import kafka.serializer.StringDecoder
import org.apache.spark.SparkConf
import org.apache.spark.streaming.dstream.DStream
import org.apache.spark.streaming.kafka.KafkaUtils
import org.apache.spark.streaming.{Seconds, StreamingContext}

object K_WindowOrderTotalStreaming {

  //批次时间,Batch Interval
  val STREAMING_BATCH_INTERVAL = Seconds(5)

  //设置窗口时间间隔
  val STREAMING_WINDOW_INTERVAL = STREAMING_BATCH_INTERVAL * 3

  //设置滑动窗口时间间隔
  val STREAMING_SLIDER_INTERVAL = STREAMING_BATCH_INTERVAL * 2

  def main(args: Array[String]): Unit = {
    val conf = new SparkConf()
      .setMaster("local[3]") //为什么启动3个,有一个Thread运行Receiver
      .setAppName("J_WindowOrderTotalStreaming")
    val ssc: StreamingContext = new StreamingContext(conf, STREAMING_BATCH_INTERVAL)
    //日志级别
    ssc.sparkContext.setLogLevel("WARN")



    val kafkaParams: Map[String, String] = Map(
      "metadata.broker.list"->"bigdata-hpsk01.huadian.com:9092,bigdata-hpsk01.huadian.com:9093,bigdata-hpsk01.huadian.com:9094",
      "auto.offset.reset"->"largest" //读取最新数据
    )
    val topics: Set[String] = Set("orderTopic")

    val kafkaDStream: DStream[String] = KafkaUtils
      .createDirectStream[String, String, StringDecoder,StringDecoder](
      ssc,
      kafkaParams,
      topics
    ).map(_._2) //只需要获取Topic中每条Message中Value的值

    //设置窗口
    val orderDStream: DStream[(Int, Int)] = kafkaDStream.transform(rdd=>{
        rdd
             //过滤不合法的数据
            .filter(line => line.trim.length >0 && line.trim.split(",").length ==3)
            //提取字段
            .map(line =>{
              val splits = line.split(",")
              (splits(1).toInt,1)
           })
    })

    /**
      * reduceByKeyAndWindow = window + reduceByKey
      * def reduceByKeyAndWindow(
      * reduceFunc: (V, V) => V,
      * windowDuration: Duration,
      * slideDuration: Duration
      * ): DStream[(K, V)]
      */

    //统计各个省份订单数目
    val orderCountDStream = orderDStream.reduceByKeyAndWindow(
      (v1:Int, v2:Int) => v1 + v2,
      STREAMING_WINDOW_INTERVAL,
      STREAMING_SLIDER_INTERVAL
    )


    orderCountDStream.print()

    //启动流式实时应用
    ssc.start()             // 将会启动Receiver接收器,用于接收源端 的数据
    //实时应用一旦启动,正常情况下不会自动停止,触发遇到特性情况(报错,强行终止)
    ssc.awaitTermination()  // Wait for the computation to terminate

  }
}


原文链接:https://blog.csdn.net/h1025372645/java/article/details/99233218

使用reduceByKeyAndWindow实现累加方法二:设置检查点

import kafka.serializer.StringDecoder
import org.apache.spark.SparkConf
import org.apache.spark.streaming.dstream.DStream
import org.apache.spark.streaming.kafka.KafkaUtils
import org.apache.spark.streaming.{Seconds, StreamingContext}

object L_TrendOrderTotalStreaming {
  //检查点存放目录
  val CHECK_POINT_PATH = "file:///E:\JavaWork\20190811\test93"

  //批次时间,Batch Interval
  val STREAMING_BATCH_INTERVAL = Seconds(1)

  //设置窗口时间间隔
  val STREAMING_WINDOW_INTERVAL = STREAMING_BATCH_INTERVAL * 3

  //设置滑动窗口时间间隔
  val STREAMING_SLIDER_INTERVAL = STREAMING_BATCH_INTERVAL * 3

  def main(args: Array[String]): Unit = {
    val conf = new SparkConf().setMaster("local[3]").
      setAppName("NetworkWordCount")

    val ssc = new StreamingContext(conf, STREAMING_BATCH_INTERVAL)
    ssc.sparkContext.setLogLevel("WARN")
    ssc.checkpoint(CHECK_POINT_PATH)
    val kafkaParams: Map[String, String] = Map(
      "metadata.broker.list"->
        "bigdata-hpsk01.huadian.com:9092,bigdata-hpsk01.huadian.com:9093,bigdata-hpsk01.huadian.com:9094",
      "auto.offset.reset"->"largest" //读取最新数据
    )
    val topics: Set[String] = Set("orderTopic")

    val lines: DStream[String] = KafkaUtils.createDirectStream[String, String, StringDecoder,StringDecoder](
      ssc,
      kafkaParams,
      topics
    ).map(_._2) //只需要获取Topic中每条Message中Value的值



    val orderDStream: DStream[(Int, Int)] =  lines.transform(rdd=>{
      rdd.filter(line=>line.trim.length> 0 && line.trim.split(",").length==3)
        .map(line=>
        {
          val split = line.split(",")
          (split(1).toInt,1)
        })
    })
    
    val orderCountDStream = orderDStream.reduceByKeyAndWindow(
      (v1:Int, v2:Int) => v1 + v2,
      (v1:Int, v2:Int) => v1 - v2,
      STREAMING_WINDOW_INTERVAL,
      STREAMING_SLIDER_INTERVAL
    )


    orderCountDStream.print()
    ssc.start()
    ssc.awaitTermination()
  }
}
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原文链接:https://blog.csdn.net/h1025372645/java/article/details/99233218
原文地址:https://www.cnblogs.com/lshan/p/13346546.html