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 ?


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

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


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.