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I have a List[Option[Int]] and want to sum over it using applicative functors. From [1] I understand that it should be something like the following

import scalaz._
import Scalaz._

    case (acc,value) => (acc <|*|> value){_+_}

however I am simply not able to figure out the correct way to write this. I would be glad if somebody could help me with this.

Thank you very much

[1] How to combine Option values in Scala?


Thanks for all the great answers.

If there is any None in the list, I want it to return None. I am trying to replace Null/Exception with Option/Either and see if I can produce some usable code.

Some function will fill my list and I want to process it further as easy as possible without checking if one of the elements was None. It should work similar as Exceptions, where I don't have to check for it in my function, but let the caller take care of it.

share|improve this question
Hi Manuel! Yes the very important part is always how to handle None: Ignore or Fail fast see here for a related example: – AndreasScheinert Nov 16 '11 at 8:26
Hi Andreas. Code snippets like yours is what I need. – Manuel Schmidt Nov 17 '11 at 0:27

5 Answers 5

up vote 8 down vote accepted

If you have Option[T] and if there's a Monoid for T, then there's a Monoid[Option[T]]:

implicit def optionTIsMonoid[T : Monoid]: Monoid[Option[T]] = new Monoid[Option[T]] {
  val monoid = implicitly[Monoid[T]]
  val zero = None
  def append(o1: Option[T], o2: =>Option[T]) = (o1, o2) match {
    case (Some(a), Some(b)) => Some(monoid.append(a, b))
    case (Some(a), _)       => o1
    case (_, Some(b))       => o2
    case _                  => zero

Once you are equipped with this, you can just use sum (better than foldMap(identity), as suggested by @missingfaktor):

 List(Some(1), None, Some(2), Some(3), None).asMA.sum === Some(6)


We can actually use applicatives to simplify the code above:

implicit def optionTIsMonoid[T : Monoid]: Monoid[Option[T]] = new Monoid[Option[T]] {
   val monoid = implicitly[Monoid[T]]
   val zero = None
   def append(o1: Option[T], o2: =>Option[T]) = (o1 |@| o2)(monoid.append(_, _))

which makes me think that we can maybe even generalize further to:

implicit def applicativeOfMonoidIsMonoid[F[_] : Applicative, T : Monoid]: Monoid[F[T]] = 
  new Monoid[F[T]] {
    val applic = implicitly[Applicative[F]]
    val monoid = implicitly[Monoid[T]]

    val zero = applic.point(
    def append(o1: F[T], o2: =>F[T]) = (o1 |@| o2)(monoid.append(_, _))

Like that you would even be able to sum Lists of Lists, Lists of Trees,...


The question clarification makes me realize that the UPDATE above is incorrect!

First of all optionTIsMonoid, as refactored, is not equivalent to the first definition, since the first definition will skip None values while the second one will return None as soon as there's a None in the input list. But in that case, this is not a Monoid! Indeed, a Monoid[T] must respect the Monoid laws, and zero must be an identity element.

We should have:

zero    |+| Some(a) = Some(a)
Some(a) |+| zero    = Some(a)

But when I proposed the definition for the Monoid[Option[T]] using the Applicative for Option, this was not the case:

None    |+| Some(a) = None
None    |+| None    = None
=> zero |+| a      != a

Some(a) |+| None    = zero
None    |+| None    = zero
=> a    |+| zero   != a

The fix is not hard, we need to change the definition of zero:

// the definition is renamed for clarity
implicit def optionTIsFailFastMonoid[T : Monoid]: Monoid[Option[T]] = 
  new Monoid[Option[T]] {
    monoid = implicitly[Monoid[T]]
    val zero = Some(
    append(o1: Option[T], o2: =>Option[T]) = (o1 |@| o2)(monoid.append(_, _))

In this case we will have (with T as Int):

Some(0) |+| Some(i) = Some(i)
Some(0) |+| None    = None
=> zero |+| a       = a

Some(i) |+| Some(0) = Some(i)
None    |+| Some(0) = None
=> a    |+| zero    = zero

Which proves that the identity law is verified (we should also verify that the associative law is respected,...).

Now we have 2 Monoid[Option[T]] which we can use at will, depending on the behavior we want when summing the list: skipping Nones or "failing fast".

share|improve this answer
Just after posting this, I realize that I'm not really answering the question, since I'm not using any Applicative. Just consider this as one of the numerous alternatives,... – Eric Nov 16 '11 at 5:45
I don't understand how that works... why is there no + anywhere? – Owen Nov 16 '11 at 5:46
.foldMap(identity) can be replaced by .asMA.sum. – missingfaktor Nov 16 '11 at 5:52
The + is provided by the fact that there is a Monoid for T. If T is an Int Scalaz provides a Monoid[Int] where the append operation is defined using +. So the advantage of my solution is that it's a bit more generic because it extends to anything having an "addition-like" operation. – Eric Nov 16 '11 at 5:52
@missingfaktor right, much better! – Eric Nov 16 '11 at 5:55

You don't really need Scalaz for this. You can just flatten the list, which will convert it to List[Int], removing any items that were None. Then you can reduce it:

List(Some(1), None, Some(2), Some(3), None).flatten.reduce(_ + _) //returns 6: Int
share|improve this answer
I had interpreted it as wanting to make the result None if any were None, but now that you mention, I'm not so sure I was right... – Owen Nov 16 '11 at 5:39
Very good point, I suppose the OP should specify whether he wants the sum to fail if at least one item is None, or to sum over items that have values, ignoring the Nones. – Dan Simon Nov 16 '11 at 5:44
Or .flatten.sum. – missingfaktor Nov 16 '11 at 5:59
scala> List(1, 2, 3).map(some).foldLeft(0 some) {
     |   case (r, c) => (r |@| c)(_ + _)
     | }
res180: Option[Int] = Some(6)
share|improve this answer

One option would be to sequence the whole list first, then fold it like regular:

val a: List[Option[Int]] = List(1, 2, 3) map (Some(_))
a.sequence map (_.foldLeft(0)(_+_))
share|improve this answer
Or, indeed, just a.sequence map {_.sum} – Submonoid Nov 16 '11 at 11:14

With Scalaz's ApplicativeBuilder would be another option.

import scalaz._
import Scalaz._

List(1,2,3).map(_.some).foldl1((acc,v) => (acc |@| v) {_+_}) join
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