# Best way to compute a function on each element with incremental shadowing of element in these collection

What is the best way to compute a function on each element in a collection with an incremental shadowing of each element, like this simple example :

``````val v = IndexedSeq(1,2,3,4)

v.shadowMap{ e => e + 1}

``````

I think first to `patch` or `slice` to make this, but perhaps there is a more better way to do that in pure functional style ?

Thanks Sr.

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–  dhg Jul 24 '12 at 18:04

``````def shadowMap[A,B](xs: Seq[A])(f: A => B) = {
val ys = xs map f
for (i <- ys.indices; (as, bs) = ys splitAt i) yield as ++ bs.tail
}
``````
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You can define it like this:

``````class ShadowMapSeq[A, Repr <: Seq[A]](seq: SeqLike[A, Repr]) {
def shadowMap[B, That](f: A => B)(implicit bf: CanBuildFrom[Repr, B, That]): Iterator[That] = {
seq.indices.iterator.map { i =>
val b = bf(seq.asInstanceOf[Repr])
b.sizeHint(seq.size - 1)
b ++= (seq.take(i) ++ seq.drop(i + 1)).map(f)
b.result
}
}
}
``````

And then use it like this:

``````scala> val v = IndexedSeq(1, 2, 3, 4)
scala> val results = v.shadowMap(_ + 1)
scala> results foreach println
Vector(3, 4, 5)
Vector(2, 4, 5)
Vector(2, 3, 5)
Vector(2, 3, 4)
``````
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If by "pure functional style" you mean something like "without making reference to indices" (since you say you want to avoid `patch` and `slice`), you can do this pretty elegantly with zippers. For example, here's how to write it with Scalaz's zipper implementation (this is just a demonstration—if you want to wrap it up more nicely you can use the approach dhg gives in his answer):

``````import scalaz._, Scalaz._

List(1, 2, 3, 4).map(_ + 1).toZipper.map(
_.positions.map(p => (p.lefts.reverse ++ p.rights).toList).toStream
).flatten
``````

In general you're probably better off going with dhg's solution in real code, but the zipper is a handy data structure to know about, and it's a good fit for this problem.

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