mapValues一个简单案例

计算图书平均每天销售量

package com.fengrui

import org.apache.spark.rdd.RDD
import org.apache.spark.{SparkConf, SparkContext}

/**
  * 给定一组键值对("spark",2),("hadoop",6),("javaee",3),("spark",4),("hadoop",8),("javaee",5)
  * 键值对的key表示图书名称,value表示某天图书销量,计算每种图书平均每天销量
  */
object SellingBooks {
  def main(args: Array[String]): Unit = {
    val conf: SparkConf = new SparkConf().setAppName("SellingBooks").setMaster("local[*]")
    val sc = new SparkContext(conf)
    val books: RDD[(String, Int)] = sc.parallelize(Array(("spark",2),("hadoop",6),("javaee",3),("spark",4),("hadoop",8),("javaee",5)))
    //将RDD中每个元素变为("spark",(2,1)),("spark",(4,1)),("hadoop",(6,1))...,mapValues就是操作元素中的value
    val A: RDD[(String, (Int, Int))] = books.mapValues(x => (x,1))
    //根据reducebykey,把key相同的value(value-list)进行聚合,比如spark这本书,("spark",(6,2))
    val B: RDD[(String, (Int, Int))] = A.reduceByKey((x,y) => (x._1+y._1,x._2+y._2))
    //用value值中(value-list)x._1(图书销售总数)/x._2(天数)得出平均每天销售数量
    val avg: RDD[(String, Int)] = B.mapValues(x => (x._1 / x._2))
    //用foreach(action)将结果遍历打印出来
    avg.foreach(println)
  }

}

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转载自blog.csdn.net/Romantic_sir/article/details/103295343