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# Infinite streams in Scala

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.)

-

``````Stream.from(1)
``````

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 `Iterator`s defined on its companion object.

### Edit

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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