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这篇文章主要介绍“如何使用spark Context转成RDD”,在日常操作中,相信很多人在如何使用spark Context转成RDD问题上存在疑惑,小编查阅了各式资料,整理出简单好用的操作方法,希望对大家解答”如何使用spark Context转成RDD”的疑惑有所帮助!接下来,请跟着小编一起来学习吧!
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在spark rdd转换算子中join和cogroup是有些需要区分的算子转换,这里使用示例来说明一下。
List> studentsList = Arrays.asList( new Tuple2 (1,"xufengnian"), new Tuple2 (2,"xuyao"), new Tuple2 (2,"wangchudong"), new Tuple2 (3,"laohuang") ); List > scoresList = Arrays.asList( new Tuple2 (1,100), new Tuple2 (2,90), new Tuple2 (3,80), new Tuple2 (1,101), new Tuple2 (2,91), new Tuple2 (3,81), new Tuple2 (3,71) );
JavaPairRDDstudentsRDD = sc.parallelizePairs(studentsList); JavaPairRDD scoresRDD = sc.parallelizePairs(scoresList); //studentsRDD 为:List > //(1,xufengnian)(2,xuyao)(2,wangchudong)(3,laohuang),下面进行打印查看 studentsRDD.foreach(new VoidFunction >(){ public void call(Tuple2 tuple){ System.out.println(tuple._1);//1 2 3 System.out.println(tuple._2);// xufengnian xuyao laohuang } });
/* 前面数据 (1,xufengnian)(2,xuyao)(2,"wangchudong")(3,laohuang) (1,100)(2,90)(3,80)(1,101)(2,91)(3,81)(3,71) join之后: (1,(xufengnian,100))(1,(xufengnian,101))(3,(laohuang,80))(3,(laohuang,81))(3,(laohuang,71)) (2,(xuyao,90))(2,(xuyao,91))(2,(wangchudong,90))(2,(wangchudong,91)) */ JavaPairRDD> studentScores = studentsRDD.join(scoresRDD); //join为key相同的join,key不变,value变成(string,integer) studentScores.foreach(new VoidFunction >>() { private static final long serialVersionUID = 1L; @Override public void call(Tuple2 > student) throws Exception { System.out.println("student id: " + student._1);//1 1 3 System.out.println("student name: " + student._2._1);//xufengnian xufengnian laohuang System.out.println("student score: " + student._2._2);//100 101 80 System.out.println("==================================="); } });
/* 前面的数据 (1,xufengnian)(2,xuyao)(2,"wangchudong")(3,laohuang) (1,100)(2,90)(3,80)(1,101)(2,91)(3,81)(3,71) cogroup之后: (1,([xufengnian],[100,101])) (3,([laohuang],[80,81,71])) (2,([xuyao,wangchudong],[90,91])) */ JavaPairRDD,Iterable >> studentScores2 = studentsRDD.cogroup(scoresRDD); studentScores2.foreach(new VoidFunction , Iterable >>>() { @Override public void call(Tuple2 , Iterable >> stu) throws Exception { System.out.println("stu id:"+stu._1);//1 3 System.out.println("stu name:"+stu._2._1);//[xufengnian] [laohuang] System.out.println("stu score:"+stu._2._2);//[100,101] [80,81,71] Iterable integers = stu._2._2; for (Iterator iter = integers.iterator(); iter.hasNext();) { Integer str = (Integer)iter.next(); System.out.println(str);//100 101 80 81 71 } System.out.println("==================================="); } });
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