# What would be the good name for this operation?

I see that Scala standard library misses the method to get ranges of objects in the collection, that satisfy the predicate:

``````def <???>(p: A => Boolean): List[List[A]] = {
val buf = collection.mutable.ListBuffer[List[A]]()
var elems = this.dropWhile(e => !p(e))
while (elems.nonEmpty) {
buf += elems.takeWhile(p)
elems = elems.dropWhile(e => !p(e))
}
buf.toList
}
``````

What would be the good name for such method? And is my implementation good enough?

-

I'd go for chunkWith or chunkBy

As for your implementation, I think this cries out for recursion! See if you can fill out this

``````@tailrec def chunkBy[A](l: List[A], acc: List[List[A]] = Nil)(p: A => Boolean): List[List[A]] = l match {
case Nil => acc
case l    =>
val next = l dropWhile !p
val (chunk, rest) = next span p
chunkBy(rest, chunk :: acc)(p)
}
``````

Why recursion? It's much easier to understand the algorithm and more likely to be bug-free (given the absence of vars).

The syntax !p for the negation of a predicate is achieved via an implicit conversion

``````implicit def PredicateW[A](p: A => Boolean) = new {
def unary_! : A => Boolean = a => !p(a)
}
``````

I generally keep this around as it's astoundingly useful

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Excellent implementation! One note - I believe you forgot to add `reverse` in the Nil case. –  Rogach Oct 22 '12 at 6:33

Just a little refinement of oxbow's code, this way the signature is lighter

``````def chunkBy[A](xs: List[A])(p: A => Boolean): List[List[A]] = {
@tailrec
def recurse(todo: List[A], acc: List[List[A]]): List[List[A]] = todo match {
case Nil => acc
case _ =>
val next = todo dropWhile (!p(_))
val (chunk, rest) = next span p
recurse(rest, acc ::: List(chunk))
}
recurse(xs, Nil)
}
``````
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Yes, obviously I'd have my chunkBy as an inner def –  oxbow_lakes Oct 23 '12 at 4:10

You probably want to call it `splitWith` because `split` is the string operation that more-or-less does that, and it's similar to `splitAt`.

Incidentally, here's a very compact implementation (though it does a lot of unnecessary work, so it's not a good implementation for speed; yours is fine for that):

``````def splitWith[A](xs: List[A])(p: A => Boolean) = {
(xs zip xs.scanLeft(1){ (i,x) => if (p(x) == ((i&1)==1)) i+1 else i }.tail).
filter(_._2 % 2 == 0).groupBy(_._2).toList.sortBy(_._1).map(_._2.map(_._1))
}
``````
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I tend to declare functions fst and snd, eg "def fst[A, B](ab: (A, B)) = ab._1". This way, code like "x groupBy (_._1)" becomes "x groupBy fst". Makes for more readable code; I hate _1 and _2! –  oxbow_lakes Oct 23 '12 at 4:17
``````def chunkBy[K](f: A => K): Map[K, List[List[A]]] = ...
Similar to `groupBy` but keeps contiguous chunks as chunks. Using this, you can do `xs.chunkBy(p)(true)` to get what you want.
I like this one too, and I'll add it alongside with `chunkWith` (chunkWith is similar in function to dropWhile/takeWhile, so it should sound like them, and `chunkBy` is more similar to `groupBy`). But I think that in my concrete case avoiding Map would be a bit better for performance. –  Rogach Oct 22 '12 at 6:36