30

I am new to Scala. How come the "map" function is not serializable? How to make it serializable? For example, if my code is like below:

val data = sc.parallelize(List(1,4,3,5,2,3,5))

def myfunc(iter: Iterator[Int]) : Iterator[Int] = {
  val lst = List(("a", 1),("b", 2),("c",3), ("a",2))
  var res = List[Int]()
  while (iter.hasNext) {
    val cur = iter.next
    val a = lst.groupBy(x => x._1).mapValues(_.size)
    //val b= a.map(x => x._2)
    res = res ::: List(cur)
  }
  res.iterator
}

data.mapPartitions(myfunc).collect

If I uncomment the line

val b= a.map(x => x._2)

The code returns an exception:

org.apache.spark.SparkException: Task not serializable
Caused by: java.io.NotSerializableException: scala.collection.immutable.MapLike$$anon$2
Serialization stack:
    - object not serializable (class: scala.collection.immutable.MapLike$$anon$2, value: Map(1 -> 3))
    - field (class: $iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC$$iwC, name: a, type: interface scala.collection.immutable.Map)

Thank you very much.

15
  • As far I can tell it is not reproducible on Spark 1.2.0 - 1.5.0. Could provide some configuration details? How do you execute this code?
    – zero323
    Oct 2 '15 at 6:03
  • Hi zero323, I ran this code directly in the Scala shell comes with Spark 1.5. I also ran the code in the Scala Shell of Spark 1.0.1 and the same problem exists.
    – Carter
    Oct 2 '15 at 6:07
  • 1
    I suspect this isn't the actual code giving the error? Is your lst really just a plain list in the actual code? Or another RDD? Oct 2 '15 at 6:07
  • Hi Paul, this is the simplified version of my code used to demonstrate my problem (I have the same problem with the simplified code). In my exact code the parameter "iter" is a tuple, and lst = iter._2.
    – Carter
    Oct 2 '15 at 6:17
  • @Carter So just to be clear - you can actually reproduce the problem using this piece of code? Without returning a or b from the function.
    – zero323
    Oct 2 '15 at 6:23
68

It's well known scala bug: https://issues.scala-lang.org/browse/SI-7005 Map#mapValues is not serializable

We have this problem in our Spark apps, map(identity) solves the problem

rdd.groupBy(_.segment).mapValues(v => ...).map(identity)
6
4

The actual implementation of the mapValues function is provided below and as you can see it is not serializable and creates only a view, not a proper existence of data and hence you are getting this error. Situation-wise mapValues can have many advantages.

protected class MappedValues[C](f: B => C) extends AbstractMap[A, C] with DefaultMap[A, C] {
    override def foreach[D](g: ((A, C)) => D): Unit = for ((k, v) <- self) g((k, f(v)))
    def iterator = for ((k, v) <- self.iterator) yield (k, f(v))
    override def size = self.size
    override def contains(key: A) = self.contains(key)
    def get(key: A) = self.get(key).map(f)
}
1

Have you tried running this same code in an application? I suspect this is an issue with the spark shell. If you want to make it work in the spark shell then you might try wrapping the definition of myfunc and its application in curly braces like so:

val data = sc.parallelize(List(1,4,3,5,2,3,5))

val result = { 
  def myfunc(iter: Iterator[Int]) : Iterator[Int] = {
    val lst = List(("a", 1),("b", 2),("c",3), ("a",2))
    var res = List[Int]()
    while (iter.hasNext) {
      val cur = iter.next
      val a = lst.groupBy(x => x._1).mapValues(_.size)
      val b= a.map(x => x._2)
      res = res ::: List(cur)
    }
    res.iterator
  }
  data.mapPartitions(myfunc).collect
}
1
  • I only tried this code in Spark Shell. Looks like it is the problem with the Shell.
    – Carter
    Oct 5 '15 at 10:40

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