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Spark算子:RDD键值转换操作(1)–partitionBy、mapValues、flatMapValues

2016-12-26 14:49 441 查看
关键字:Spark算子、Spark RDD键值转换、partitionBy、mapValues、flatMapValues

partitionBy

def partitionBy(partitioner: Partitioner): RDD[(K, V)]

该函数根据partitioner函数生成新的ShuffleRDD,将原RDD重新分区。

scala> var rdd1 = sc.makeRDD(Array((1,"A"),(2,"B"),(3,"C"),(4,"D")),2)
rdd1: org.apache.spark.rdd.RDD[(Int, String)] = ParallelCollectionRDD[23] at makeRDD at :21
 
scala> rdd1.partitions.size
res20: Int = 2
 
//查看rdd1中每个分区的元素
scala> rdd1.mapPartitionsWithIndex{
| (partIdx,iter) => {
| var part_map = scala.collection.mutable.Map[String,List[(Int,String)]]()
| while(iter.hasNext){
| var part_name = "part_" + partIdx;
| var elem = iter.next()
| if(part_map.contains(part_name)) {
| var elems = part_map(part_name)
| elems ::= elem
| part_map(part_name) = elems
| } else {
| part_map(part_name) = List[(Int,String)]{elem}
| }
| }
| part_map.iterator
|
| }
| }.collect
res22: Array[(String, List[(Int, String)])] = Array((part_0,List((2,B), (1,A))), (part_1,List((4,D), (3,C))))
//(2,B),(1,A)在part_0中,(4,D),(3,C)在part_1中
 
//使用partitionBy重分区
scala> var rdd2 = rdd1.partitionBy(new org.apache.spark.HashPartitioner(2))
rdd2: org.apache.spark.rdd.RDD[(Int, String)] = ShuffledRDD[25] at partitionBy at :23
 
scala> rdd2.partitions.size
res23: Int = 2
 
//查看rdd2中每个分区的元素
scala> rdd2.mapPartitionsWithIndex{
| (partIdx,iter) => {
| var part_map = scala.collection.mutable.Map[String,List[(Int,String)]]()
| while(iter.hasNext){
| var part_name = "part_" + partIdx;
| var elem = iter.next()
| if(part_map.contains(part_name)) {
| var elems = part_map(part_name)
| elems ::= elem
| part_map(part_name) = elems
| } else {
| part_map(part_name) = List[(Int,String)]{elem}
| }
| }
| part_map.iterator
| }
| }.collect
res24: Array[(String, List[(Int, String)])] = Array((part_0,List((4,D), (2,B))), (part_1,List((3,C), (1,A))))
//(4,D),(2,B)在part_0中,(3,C),(1,A)在part_1中
 

mapValues

def mapValues[U](f: (V) => U): RDD[(K, U)]

同基本转换操作中的map,只不过mapValues是针对[K,V]中的V值进行map操作。

scala> var rdd1 = sc.makeRDD(Array((1,"A"),(2,"B"),(3,"C"),(4,"D")),2)
rdd1: org.apache.spark.rdd.RDD[(Int, String)] = ParallelCollectionRDD[27] at makeRDD at :21
 
scala> rdd1.mapValues(x => x + "_").collect
res26: Array[(Int, String)] = Array((1,A_), (2,B_), (3,C_), (4,D_))
 

flatMapValues

def flatMapValues[U](f: (V) => TraversableOnce[U]): RDD[(K, U)]

同基本转换操作中的flatMap,只不过flatMapValues是针对[K,V]中的V值进行flatMap操作。

scala> rdd1.flatMapValues(x => x + "_").collect
res36: Array[(Int, Char)] = Array((1,A), (1,_), (2,B), (2,_), (3,C), (3,_), (4,D), (4,_))
 

更多关于Spark算子的介绍,可参考spark算子系列文章:

http://blog.csdn.net/ljp812184246/article/details/53895299
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标签:  spark RDD算子