7

I have an Iterator[(A1,B1)] and two functions

  • fA: (Iterator[A1]) => Iterator[A2] and
  • fB: (Iterator[B1]) => Iterator[B2].

Is it possible to make a fAB: (Iterator[(A1,B1)]) => Iterator[(A2,B2)] without converting Iterators to Seq?

Edit

Both answers below are good. I selected @Aivean's answer because the code is simpler and it uses specialized scala data structure (Stream).

The only drawback is the stackoverfow limitation but it shouldn't be a problem for most use cases. If your iterator can be very (very) long, then @Alexey's solution should be preferred.

2 Answers 2

3

No. Your hypothetical function has to call one of fA and fB first. Let's say it calls fA and it requests all the A1s before producing anything. Then you don't have any B1s remaining to pass to fB, unless you save them somewhere, potentially leaking memory. If that's acceptable, you can do:

def unzip[A, B](iter: Iterator[(A, B)]) = {
  var qA = Queue.empty[A]
  var qB = Queue.empty[B]

  val iterA = new Iterator[A] {
    override def hasNext = qA.nonEmpty || iter.hasNext

    override def next() = qA.dequeueOption match {
      case Some((a, qA1)) =>
        qA = qA1
        a
      case None =>
        val (a, b) = iter.next()
        qB = qB.enqueue(b)
        a
    }
  }

  // similar iterB

  (iterA, iterB)
}

and then

val (iterA, iterB) = unzip(iterator)
fA(iterAfA).zip(fB(iterB))

(Well, you can also write iterator => fA(iterator.map(_._1)).zip(fB(iterator.map(_._2)): it has the right type, but is probably not what you want. Namely, it will use only one field of each tuple produced by the original iterator, and drop the other.)

2

I came to much simpler implementation:

def iterUnzip[A1, B1, A2, B2](it: Iterator[(A1, B1)],
                           fA: (Iterator[A1]) => Iterator[A2],
                           fB: (Iterator[B1]) => Iterator[B2]) =
  it.toStream match {
    case s => fA(s.map(_._1).toIterator).zip(fB(s.map(_._2).toIterator))
  }

The idea is to convert iterator to stream. Stream in Scala is lazy but also provides memoization. This effectively provides the same buffering mechanism, as in @AlexeyRomanov's solution, but more concise. The only drawback is that Stream stores memoized elements on stack as opposed to the explicit Queue, thus if fA and fB produce elements on uneven rate, you may get StackOverflow exception.

Test that evaluation is lazy indeed:

val iter = Stream.from(0).map(x => (x, x + 1))
  .map(x => {println("fetched: " + x); x}).take(5).toIterator

iterUnzip(
  iter,
  (_:Iterator[Int]).flatMap(x => List(x, x)),
  (_:Iterator[Int]).map(_ + 1)
).toList

Result:

fetched: (0,1)
iter: Iterator[(Int, Int)] = non-empty iterator

fetched: (1,2)
fetched: (2,3)
fetched: (3,4)
fetched: (4,5)
res0: List[(Int, Int)] = List((0,2), (0,3), (1,4), (1,5), (2,6))

I also tried reasonably hard to get StackOverflow exception by producing uneven iterators, but failed.

val iter = Stream.from(0).map(x => (x, x + 1)).take(10000000).toIterator
iterUnzip(
    iter,
    (_:Iterator[Int]).flatMap(x => List.fill(1000000)(x)),
    (_:Iterator[Int]).map(_ + 1)
  ).size

Works fine on -Xss5m and produces:

res10: Int = 10000000

So, overall this is reasonably good and concise solution, unless you have some extreme usecases.

5
  • 1
    A very nice solution. One potential drawback is that it's slightly less lazy: if fA and fB never request any elements, my answer doesn't call next() on the original iterator, but it.toStream in yours does once. Apr 15, 2016 at 6:30
  • Also, to my understanding, Stream will store all items read once, while @romanov solution dequeue items onces they have been read. Thus it can potentially not store all item. But on the other end, if we parse the full Iterator[A] before starting B, then all Bs are stored...
    – Juh_
    Apr 15, 2016 at 10:12
  • @Juh_ Initial elements of a Stream can be garbage-collected if you aren't holding on to a reference to them. I think this should happen here, but I am not completely sure. Apr 15, 2016 at 11:11
  • @Juh_, @AlexeyRomanov is right, stream here works precisely like a Queue, releasing elements from the head once they are consumed. Only the "buffer" between two iterators is stored, if fA and fB generate elements with different ratio (as in my second test with flatMap). If fA and fB map elements one-to-one, then the whole thing becomes completely transient. I just checked once again, my function works fine where Stream assigned to value to prevent garbage collection fails.
    – Aivean
    Apr 15, 2016 at 16:58
  • 1
    I finally selected your answer as the code is simpler, it uses specialized scala data structure (Stream) and have the same good properties. The only drawback is the stackoverfow limitation but it souldn't be a problem for most use cases.
    – Juh_
    Apr 18, 2016 at 12:03

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