# Scala how can I count the number of occurrences in a list

``````val list = List(1,2,4,2,4,7,3,2,4)
``````

I want to implement it like this: `list.count(2)` (returns 3).

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scala collections do have `count`: `list.count(_ == 2)`

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I had the same problem as Sharath Prabhal, and I got another (to me clearer) solution :

``````val s = Seq("apple", "oranges", "apple", "banana", "apple", "oranges", "oranges")
s.groupBy(l => l).map(t => (t._1, t._2.length))
``````

With as result :

``````Map(banana -> 1, oranges -> 3, apple -> 3)
``````
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A somewhat cleaner version is `s.groupBy(identity).mapValues(_.size)` –  ohruunuruus Feb 4 at 19:02
@ohruunuruus this ought to be an answer (vs comment); i would love to enthusiastically upvote, if it were (and select it as the best answer if i were the OP); –  doug Feb 13 at 4:01
@doug somewhat new to SO and wasn't sure, but happy to oblige –  ohruunuruus Feb 13 at 8:11

A somewhat cleaner version of one of the other answers is:

``````val s = Seq("apple", "oranges", "apple", "banana", "apple", "oranges", "oranges")

s.groupBy(identity).mapValues(_.size)
``````

giving a `Map` with a count for each item in the original sequence:

``````Map(banana -> 1, oranges -> 3, apple -> 3)
``````

The question asks how to find the count of a specific item. With this approach, the solution would require mapping the desired element to its count value as follows:

``````s.groupBy(identity).mapValues(_.size)("apple")
``````
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``````val list = List(1, 2, 4, 2, 4, 7, 3, 2, 4)
// Using the provided count method this would yield the occurrences of each value in the list:
l map(x => l.count(_ == x))

List[Int] = List(1, 3, 3, 3, 3, 1, 1, 3, 3)
// This will yield a list of pairs where the first number is the number from the original list and the second number represents how often the first number occurs in the list:
l map(x => (x, l.count(_ == x)))
// outputs => List[(Int, Int)] = List((1,1), (2,3), (4,3), (2,3), (4,3), (7,1), (3,1), (2,3), (4,3))
``````
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but it yields the num. occurrences for each value as many times as the value occurs—seems inefficient and not very useful... –  Erik Allik Sep 13 '13 at 20:15

I ran into the same problem but wanted to count multiple items in one go..

``````val s = Seq("apple", "oranges", "apple", "banana", "apple", "oranges", "oranges")
s.foldLeft(Map.empty[String, Int]) { (m, x) => m + ((x, m.getOrElse(x, 0) + 1)) }
res1: scala.collection.immutable.Map[String,Int] = Map(apple -> 3, oranges -> 3, banana -> 1)
``````

https://gist.github.com/sharathprabhal/6890475

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It is interesting to note that the map with default 0 value, intentionally designed for this case demonstrates the worst performance (and not as concise as `groupBy`)

``````    type Word = String
type Sentence = Seq[Word]
type Occurrences = scala.collection.Map[Char, Int]

def woGrouped(w: Word): Occurrences = {
w.groupBy(c => c).map({case (c, list) => (c -> list.length)})

def woGetElse0Map(w: Word): Occurrences = {
val map = Map[Char, Int]()
w.foldLeft(map)((m, c) => m + (c -> (m.getOrElse(c, 0) + 1)) )

def woDeflt0Map(w: Word): Occurrences = {
val map = Map[Char, Int]().withDefaultValue(0)
w.foldLeft(map)((m, c) => m + (c -> (m(c) + 1)) )

def dfltHashMap(w: Word): Occurrences = {
val map = scala.collection.immutable.HashMap[Char, Int]().withDefaultValue(0)
w.foldLeft(map)((m, c) => m + (c -> (m(c) + 1)) )

def mmDef(w: Word): Occurrences = {
val map = scala.collection.mutable.Map[Char, Int]().withDefaultValue(0)
w.foldLeft(map)((m, c) => m += (c -> (m(c) + 1)) )

val functions = List("grp" -> woGrouped _, "mtbl" -> mmDef _, "else" -> woGetElse0Map _
, "dfl0" -> woDeflt0Map _, "hash" -> dfltHashMap _
)                                  //> functions  : List[(String, String => scala.collection.Map[Char,Int])] = Lis
//| t((grp,<function1>), (mtbl,<function1>), (else,<function1>), (dfl0,<functio
//| n1>), (hash,<function1>))

val len = 100 * 1000                      //> len  : Int = 100000
def test(len: Int) {
val data: String = scala.util.Random.alphanumeric.take(len).toList.mkString

def run(f: Word => Occurrences): Int = {
val time1 = System.currentTimeMillis()
val result= f(data)
val time2 = (System.currentTimeMillis() - time1)
assert(result.toSet == firstResult.toSet)
time2.toInt
}

def log(results: Seq[Int]) = {
((functions zip results) map {case ((title, _), r) => title + " " + r} mkString " , ")
}

var groupResults = List.fill(functions.length)(1)

val integrals = for (i <- (1 to 10)) yield {
val results = functions map (f => (1 to 33).foldLeft(0) ((acc,_) => run(f._2)))
println (log (results))
groupResults = (results zip groupResults) map {case (r, gr) => r + gr}
log(groupResults).toUpperCase
}

integrals foreach println

}                                         //> test: (len: Int)Unit

test(len)
test(len * 2)
// GRP 14 , mtbl 11 , else 31 , dfl0 36 , hash 34
// GRP 91 , MTBL 111

println("Done")
def main(args: Array[String]) {
}
``````

produces

``````grp 5 , mtbl 5 , else 13 , dfl0 17 , hash 17
grp 3 , mtbl 6 , else 14 , dfl0 16 , hash 16
grp 3 , mtbl 6 , else 13 , dfl0 17 , hash 15
grp 4 , mtbl 5 , else 13 , dfl0 15 , hash 16
grp 23 , mtbl 6 , else 14 , dfl0 15 , hash 16
grp 5 , mtbl 5 , else 13 , dfl0 16 , hash 17
grp 4 , mtbl 6 , else 13 , dfl0 16 , hash 16
grp 4 , mtbl 6 , else 13 , dfl0 17 , hash 15
grp 3 , mtbl 5 , else 14 , dfl0 16 , hash 16
grp 3 , mtbl 6 , else 14 , dfl0 16 , hash 16
GRP 5 , MTBL 5 , ELSE 13 , DFL0 17 , HASH 17
GRP 8 , MTBL 11 , ELSE 27 , DFL0 33 , HASH 33
GRP 11 , MTBL 17 , ELSE 40 , DFL0 50 , HASH 48
GRP 15 , MTBL 22 , ELSE 53 , DFL0 65 , HASH 64
GRP 38 , MTBL 28 , ELSE 67 , DFL0 80 , HASH 80
GRP 43 , MTBL 33 , ELSE 80 , DFL0 96 , HASH 97
GRP 47 , MTBL 39 , ELSE 93 , DFL0 112 , HASH 113
GRP 51 , MTBL 45 , ELSE 106 , DFL0 129 , HASH 128
GRP 54 , MTBL 50 , ELSE 120 , DFL0 145 , HASH 144
GRP 57 , MTBL 56 , ELSE 134 , DFL0 161 , HASH 160
grp 7 , mtbl 11 , else 28 , dfl0 31 , hash 31
grp 7 , mtbl 10 , else 28 , dfl0 32 , hash 31
grp 7 , mtbl 11 , else 28 , dfl0 31 , hash 32
grp 7 , mtbl 11 , else 28 , dfl0 31 , hash 33
grp 7 , mtbl 11 , else 28 , dfl0 32 , hash 31
grp 8 , mtbl 11 , else 28 , dfl0 31 , hash 33
grp 8 , mtbl 11 , else 29 , dfl0 38 , hash 35
grp 7 , mtbl 11 , else 28 , dfl0 32 , hash 33
grp 8 , mtbl 11 , else 32 , dfl0 35 , hash 41
grp 7 , mtbl 13 , else 28 , dfl0 33 , hash 35
GRP 7 , MTBL 11 , ELSE 28 , DFL0 31 , HASH 31
GRP 14 , MTBL 21 , ELSE 56 , DFL0 63 , HASH 62
GRP 21 , MTBL 32 , ELSE 84 , DFL0 94 , HASH 94
GRP 28 , MTBL 43 , ELSE 112 , DFL0 125 , HASH 127
GRP 35 , MTBL 54 , ELSE 140 , DFL0 157 , HASH 158
GRP 43 , MTBL 65 , ELSE 168 , DFL0 188 , HASH 191
GRP 51 , MTBL 76 , ELSE 197 , DFL0 226 , HASH 226
GRP 58 , MTBL 87 , ELSE 225 , DFL0 258 , HASH 259
GRP 66 , MTBL 98 , ELSE 257 , DFL0 293 , HASH 300
GRP 73 , MTBL 111 , ELSE 285 , DFL0 326 , HASH 335
Done
``````

It is curious that most concise `groupBy` is faster than even mutable map!

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I'm a little suspicious of this benchmark as it's not clear what the size of the data is. The `groupBy` solution performs a `toLower` but the others do not. Also why use a pattern match for the map - just use `mapValues`. So roll that together and you get `def woGrouped(w: Word): Map[Char, Int] = w.groupBy(identity).mapValues(_.size)` - try that and check the performance for various size lists. Finally in the other solutions, why a) declare `map` and b) make it a var?? Just do `w.foldLeft(Map.empty[Char, Int])...` –  samthebest Jul 13 '14 at 18:07
@samthebest You was right, I have fixed the data. –  Val Jul 14 '14 at 7:24
Thanks for providing more data (changed my vote :). I think the reason why is the implementation of groupBy uses a mutable map of `Builder`s which are optimized for iterative increments. It then converts the mutable map to an immutable using a `MapBuilder`. There is probably some lazy evaluation going on under the hood too to make things faster. –  samthebest Jul 14 '14 at 11:17
@samthebest You just lookup the counter and increment it. I do not see what can be cached there. The cache needs to be a map of the same kind anyway. –  Val Jul 16 '14 at 9:07
I'm not saying it caches anything. I imagine the performance increase comes from the use of `Builder`s, and possibly some lazy evaluation. –  samthebest Jul 16 '14 at 10:03

``````import scalaz._, Scalaz._
xs.foldMap(x => Map(x -> 1))
``````

Using Scalaz, given e.g.

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

val xs = List('a, 'b, 'c, 'c, 'a, 'a, 'b, 'd)
``````

then all of these (in the order of less simplified to more simplified)

``````xs.map(x => Map(x -> 1)).foldMap(identity)
xs.map(x => Map(x -> 1)).foldMap()
xs.map(x => Map(x -> 1)).suml
xs.map(_ -> 1).foldMap(Map(_))
xs.foldMap(x => Map(x -> 1))
``````

yield

``````Map('b -> 2, 'a -> 3, 'c -> 2, 'd -> 1)
``````
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Here is another option:

``````scala> val list = List(1,2,4,2,4,7,3,2,4)
list: List[Int] = List(1, 2, 4, 2, 4, 7, 3, 2, 4)

scala> list.groupBy(x => x) map { case (k,v) => k-> v.length }
res74: scala.collection.immutable.Map[Int,Int] = Map(1 -> 1, 2 -> 3, 7 -> 1, 3 -> 1, 4 -> 3)
``````
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If you want to use it like `list.count(2)` you have to implement it using an Implicit Class.

``````implicit class Count[T](list: List[T]) {
def count(n: T): Int = list.count(_ == n)
}

List(1,2,4,2,4,7,3,2,4).count(2)  // returns 3
List(1,2,4,2,4,7,3,2,4).count(5)  // returns 0
``````
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