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.