21

In Scala I can flatten a collection using :

val array = Array(List("1,2,3").iterator,List("1,4,5").iterator)
                                                  //> array  : Array[Iterator[String]] = Array(non-empty iterator, non-empty itera
                                                  //| tor)


    array.toList.flatten                      //> res0: List[String] = List(1,2,3, 1,4,5)

But how can I perform similar in Spark ?

Reading the API doc http://spark.apache.org/docs/0.7.3/api/core/index.html#spark.RDD there does not seem to be a method which provides this functionality ?

30

Try flatMap with an identity map function (y => y):

scala> val x = sc.parallelize(List(List("a"), List("b"), List("c", "d")))
x: org.apache.spark.rdd.RDD[List[String]] = ParallelCollectionRDD[1] at parallelize at <console>:12

scala> x.collect()
res0: Array[List[String]] = Array(List(a), List(b), List(c, d))

scala> x.flatMap(y => y)
res3: org.apache.spark.rdd.RDD[String] = FlatMappedRDD[3] at flatMap at <console>:15

scala> x.flatMap(y => y).collect()
res4: Array[String] = Array(a, b, c, d)
  • although this is functionally correct, this solution would not be distributed and will bottleneck at the driver/master. The solution from samthebest is much better. – ldmtwo Sep 8 '14 at 19:10
  • 6
    @user3746632: the collect() calls were just for illustration purposes, to show that, indeed, the results were flattened. – Josh Rosen Sep 8 '14 at 21:02
34

Use flatMap and the identity Predef, this is more readable than using x => x, e.g.

myRdd.flatMap(identity)

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