84

I was thinking about a nice way to convert a List of tuple with duplicate key [("a","b"),("c","d"),("a","f")] into map ("a" -> ["b", "f"], "c" -> ["d"]). Normally (in python), I'd create an empty map and for-loop over the list and check for duplicate key. But I am looking for something more scala-ish and clever solution here.

btw, actual type of key-value I use here is (Int, Node) and I want to turn into a map of (Int -> NodeSeq)

74

Group and then project:

scala> val x = List("a" -> "b", "c" -> "d", "a" -> "f")
//x: List[(java.lang.String, java.lang.String)] = List((a,b), (c,d), (a,f))
scala> x.groupBy(_._1).map { case (k,v) => (k,v.map(_._2))}
//res1: scala.collection.immutable.Map[java.lang.String,List[java.lang.String]] = Map(c -> List(d), a -> List(b, f))

More scalish way to use fold, in the way like there (skip map f step).

111

For Googlers that don't expect duplicates or are fine with the default duplicate handling policy:

List("a" -> 1, "b" -> 2).toMap
// Result: Map(a -> 1, c -> 2)

As of 2.12, the default policy reads:

Duplicate keys will be overwritten by later keys: if this is an unordered collection, which key is in the resulting map is undefined.

52

Here's another alternative:

x.groupBy(_._1).mapValues(_.map(_._2))
  • This gives us a Map[String, SeqView[String,Seq[_]]]... is this intentional? – Luigi Plinge Nov 5 '11 at 1:04
  • 1
    @LuigiPlinge A SeqView[String,Seq[_]] is also a Seq[String]. Still in hindsight I don't think that is worthwhile, so I removed the view. mapValues will do a view anyway on the values. – Daniel C. Sobral Nov 5 '11 at 2:59
  • This did the job perfectly for my case (coursera homework): lazy val dictionaryByOccurrences: Map[Occurrences, List[Word]] = { val pairs = for (curWord <- dictionary) yield { val curWordOccurrences = wordOccurrences(curWord) (curWordOccurrences, curWord) } pairs.groupBy(._1).mapValues(.map(_._2)) } – JasonG May 9 '13 at 2:14
  • mapValues returns a view of a map, not a new map scala-lang.org/api/current/index.html#scala.collection.Map – Max Heiber Aug 22 '15 at 14:45
  • 1
    Probably want x.groupBy(_._1).mapValues(_.map(_._2)).map(identity) because the mapValues expression will be recomputed each time it is used. See issues.scala-lang.org/browse/SI-7005 – Jeffrey Aguilera Aug 29 '15 at 0:40
18

For Googlers that do care about duplicates:

implicit class Pairs[A, B](p: List[(A, B)]) {
  def toMultiMap: Map[A, List[B]] = p.groupBy(_._1).mapValues(_.map(_._2))
}

> List("a" -> "b", "a" -> "c", "d" -> "e").toMultiMap
> Map("a" -> List("b", "c"), "d" -> List("e")) 
6

Starting Scala 2.13, most collections are provided with the groupMap method which is (as its name suggests) an equivalent (more efficient) of a groupBy followed by mapValues:

List("a" -> "b", "c" -> "d", "a" -> "f").groupMap(_._1)(_._2)
// Map[String,List[String]] = Map(a -> List(b, f), c -> List(d))

This:

  • groups elements based on the first part of tuples (group part of groupMap)

  • maps grouped values by taking their second tuple part (map part of groupMap)

This is an equivalent of list.groupBy(_._1).mapValues(_.map(_._2)) but performed in one pass through the List.

4

Here is a more Scala idiomatic way to convert a list of tuples to a map handling duplicate keys. You want to use a fold.

val x = List("a" -> "b", "c" -> "d", "a" -> "f")

x.foldLeft(Map.empty[String, Seq[String]]) { case (acc, (k, v)) =>
  acc.updated(k, acc.getOrElse(k, Seq.empty[String]) ++ Seq(v))
}

res0: scala.collection.immutable.Map[String,Seq[String]] = Map(a -> List(b, f), c -> List(d))
  • 1
    Why do you think this is more Scala-style than the groupBy-mapValue solutions provided here? – Make42 May 30 '16 at 10:53
  • @om-nom-nom statement "More scalish way to use fold, in the way like there (skip map f step)." – cevaris May 30 '16 at 14:48
  • I was hoping for a logical argument ;-). Neither om-nom-nom nor the linked article provided evidence for my question. (Or did I miss it?) – Make42 May 30 '16 at 15:43
  • @Make42 It's a more fp way to deal with this, since all monads are monoids, and monoids by law are foldable. In fp, objects and events are modeled as monads, and not all monads will implement groupBy. – soote Jul 25 '16 at 20:51
3

Below you can find a few solutions. (GroupBy, FoldLeft, Aggregate, Spark)

val list: List[(String, String)] = List(("a","b"),("c","d"),("a","f"))

GroupBy variation

list.groupBy(_._1).map(v => (v._1, v._2.map(_._2)))

Fold Left variation

list.foldLeft[Map[String, List[String]]](Map())((acc, value) => {
  acc.get(value._1).fold(acc ++ Map(value._1 -> List(value._2))){ v =>
    acc ++ Map(value._1 -> (value._2 :: v))
  }
})

Aggregate Variation - Similar to fold Left

list.aggregate[Map[String, List[String]]](Map())(
  (acc, value) => acc.get(value._1).fold(acc ++ Map(value._1 -> 
    List(value._2))){ v =>
     acc ++ Map(value._1 -> (value._2 :: v))
  },
  (l, r) => l ++ r
)

Spark Variation - For big data sets (Conversion to a RDD and to a Plain Map from RDD)

import org.apache.spark.rdd._
import org.apache.spark.{SparkContext, SparkConf}

val conf: SparkConf = new 
SparkConf().setAppName("Spark").setMaster("local")
val sc: SparkContext = new SparkContext (conf)

// This gives you a rdd of the same result
val rdd: RDD[(String, List[String])] = sc.parallelize(list).combineByKey(
   (value: String) => List(value),
   (acc: List[String], value) => value :: acc,
   (accLeft: List[String], accRight: List[String]) => accLeft ::: accRight
)

// To convert this RDD back to a Map[(String, List[String])] you can do the following
rdd.collect().toMap
2

You can try this

scala> val b = new Array[Int](3)
// b: Array[Int] = Array(0, 0, 0)
scala> val c = b.map(x => (x -> x * 2))
// c: Array[(Int, Int)] = Array((1,2), (2,4), (3,6))
scala> val d = Map(c : _*)
// d: scala.collection.immutable.Map[Int,Int] = Map(1 -> 2, 2 -> 4, 3 -> 6)

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