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Say I have a function, for example the old favourite

def factorial(n:Int) = (BigInt(1) /: (1 to n)) (_*_)

Now I want to find the biggest value of n for which factorial(n) fits in a Long. I could do

(1 to 100) takeWhile (factorial(_) <= Long.MaxValue) last

This works, but the 100 is an arbitrary large number; what I really want on the left hand side is an infinite stream that keeps generating higher numbers until the takeWhile condition is met.

I've come up with

val s = Stream.continually(1).zipWithIndex.map(p => p._1 + p._2)

but is there a better way?

(I'm also aware I could get a solution recursively but that's not what I'm looking for.)

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up vote 78 down vote accepted

creates a stream starting from 1 and incrementing by 1. It's all in the API docs.

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wow, six upvotes for looking at the docs for 3 minutes... – Kim Stebel Jun 20 '11 at 9:26
SO is not about upvotes, it's about sharing knowledge. You have it. It does not matter how you got it. You get your reward. HF coding... – agilesteel Jun 20 '11 at 10:08
@agilesteel: I'm not complaining. :) I just expected people to upvote answers based on how difficult it is to obtain the knowledge. Apparently not... – Kim Stebel Jun 20 '11 at 10:40
I usually upvote based on how sophisticated the answer is. – ziggystar Jun 20 '11 at 12:40
I upvote if the answer helped me. But that discussion should be held in meta. – Viktor Nordling Jul 6 '13 at 13:35

A Solution Using Iterators

You can also choose to use an Iterator instead of a Stream. AFAIk, the stream does keep references of all computed values. So if you plan to visit each value only once, an iterator is a more efficient approach. The downside of the iterator is its mutability, though.

There are some nice convenience methods for creating Iterators defined on its companion object.


Unfortunately there's no short (library supported) way I know of to achieve something like

Stream.from(1) takeWhile (factorial(_) <= Long.MaxValue) last

The approach I take to advance an Iterator for a certain number of elements is drop(n: Int) or dropWhile:

Iterator.from(1).dropWhile( factorial(_) <= Long.MaxValue).next - 1

The - 1 works for this special purpose but is not a general solution. But it should be no problem to implement a last method on an Iterator using pimp my library. The problem is taking the last element of an infinite Iterator could be problematic. So it should be implemented as method like lastWith integrating the takeWhile.

An ugly workaround can be done using sliding which is implemented for Iterators:

scala> Iterator.from(1).sliding(2).dropWhile(_.tail.head < 10).next.head
res12: Int = 9
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I'm wondering what the equivalent for Iterator would be of Stream.from(1) takeWhile (factorial(_) <= Long.MaxValue) last, to give the answer 20? – Luigi Plinge Jun 20 '11 at 16:12
I've added to the answer. – ziggystar Jun 20 '11 at 17:55
Thanks! ......... – Luigi Plinge Jun 20 '11 at 22:45

as @ziggystar pointed out, Streams keeps the list of previously computed values in memory, so using Iterator is a great improvment.

to further improve the answer, I would argue that "infinite streams", are usually computed (or can be computed) based on pre-computed values. if this is the case (and in your factorial stream it definately is), I would suggest using Iterator.iterate instead.

would look roughly like this:

scala> val it = Iterator.iterate((1,BigInt(1))){case (i,f) => (i+1,f*(i+1))}
it: Iterator[(Int, scala.math.BigInt)] = non-empty iterator

then, you could do something like:

scala> it.find(_._2 >= Long.MaxValue).map(_._1).get - 1
res0: Int = 22

or use @ziggystar sliding solution...

another easy example that comes to mind, would be fibonacci numbers:

scala> val it = Iterator.iterate((1,1)){case (a,b) => (b,a+b)}.map(_._1)
it: Iterator[Int] = non-empty iterator

in these cases, your'e not computing your new element from scratch every time, but rather do an O(1) work for every new element, which would improve your running time even more.

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