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As I understand from this blog post "type classes" in Scala is just a "pattern" implemented with traits and implicit adapters.

As the blog says if I have trait A and an adapter B -> A then I can invoke a function, which requires argument of type A, with an argument of type B without invoking this adapter explicitly.

I found it nice but not particularly useful. Could you give a use case/example, which shows what this feature is useful for ?

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11 Answers 11

87

One use case, as requested...

Imagine you have a list of things, could be integers, floating point numbers, matrices, strings, waveforms, etc. Given this list, you want to add the contents.

One way to do this would be to have some Addable trait that must be inherited by every single type that can be added together, or an implicit conversion to an Addable if dealing with objects from a third party library that you can't retrofit interfaces to.

This approach becomes quickly overwhelming when you also want to begin adding other such operations that can be done to a list of objects. It also doesn't work well if you need alternatives (for example; does adding two waveforms concatenate them, or overlay them?) The solution is ad-hoc polymorphism, where you can pick and chose behaviour to be retrofitted to existing types.

For the original problem then, you could implement an Addable type class:

trait Addable[T] {
  def zero: T
  def append(a: T, b: T): T
}
//yup, it's our friend the monoid, with a different name!

You can then create implicit subclassed instances of this, corresponding to each type that you wish to make addable:

implicit object IntIsAddable extends Addable[Int] {
  def zero = 0
  def append(a: Int, b: Int) = a + b
}

implicit object StringIsAddable extends Addable[String] {
  def zero = ""
  def append(a: String, b: String) = a + b
}

//etc...

The method to sum a list then becomes trivial to write...

def sum[T](xs: List[T])(implicit addable: Addable[T]) =
  xs.FoldLeft(addable.zero)(addable.append)

//or the same thing, using context bounds:

def sum[T : Addable](xs: List[T]) = {
  val addable = implicitly[Addable[T]]
  xs.FoldLeft(addable.zero)(addable.append)
}

The beauty of this approach is that you can supply an alternative definition of some typeclass, either controlling the implicit you want in scope via imports, or by explicitly providing the otherwise implicit argument. So it becomes possible to provide different ways of adding waveforms, or to specify modulo arithmetic for integer addition. It's also fairly painless to add a type from some 3rd-party library to your typeclass.

Incidentally, this is exactly the approach taken by the 2.8 collections API. Though the sum method is defined on TraversableLike instead of on List, and the type class is Numeric (it also contains a few more operations than just zero and append)

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  • 3
    Great . It draws very close to Haskell typeclasses ,only thing is here syntax is little cumbersome. Jan 21, 2013 at 6:41
  • 19
    A little more cumbersome, and a little more flexible. Because they're named, you can define multiple variants of a typeclass in Scala and control which one you want to use by pulling it into scope. Feb 9, 2014 at 10:38
  • Very nice explanation. Any reason you called the method append rather than add ?
    – mitchus
    Jun 11, 2015 at 12:37
  • 1
    @mitchus this is convention from category theory as adopted by haskell and scalaz. Integer addition and String concatenations are examples of a monoid, which is described by one associative binary operator called "append", and a zero element. see: en.wikibooks.org/wiki/Haskell/Monoids
    – mseddon
    Jun 13, 2015 at 15:57
32

Reread the first comment there:

A crucial distinction between type classes and interfaces is that for class A to be a "member" of an interface it must declare so at the site of its own definition. By contrast, any type can be added to a type class at any time, provided you can provide the required definitions, and so the members of a type class at any given time are dependent on the current scope. Therefore we don't care if the creator of A anticipated the type class we want it to belong to; if not we can simply create our own definition showing that it does indeed belong, and then use it accordingly. So this not only provides a better solution than adapters, in some sense it obviates the whole problem adapters were meant to address.

I think this is the most important advantage of type classes.

Also, they handle properly the cases where the operations don't have the argument of the type we are dispatching on, or have more than one. E.g. consider this type class:

case class Default[T](val default: T)

object Default {
  implicit def IntDefault: Default[Int] = Default(0)

  implicit def OptionDefault[T]: Default[Option[T]] = Default(None)

  ...
}
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    That is indeed a crucial distinction: a type A doesn't have to know it is a member of a type class, and it can be added to new type classes without modifying A itself. Unlike using normal interfaces (as in Java), where you have to make A implement the interface.
    – Jesper
    Mar 23, 2011 at 22:22
9

I think of type classes as the ability to add type safe metadata to a class.

So you first define a class to model the problem domain and then think of metadata to add to it. Things like Equals, Hashable, Viewable, etc. This creates a separation of the problem domain and the mechanics to use the class and opens up subclassing because the class is leaner.

Except for that, you can add type classes anywhere in the scope, not just where the class is defined and you can change implementations. For example, if I calculate a hash code for a Point class by using Point#hashCode, then I'm limited to that specific implementation which may not create a good distribution of values for the specific set of Points I have. But if I use Hashable[Point], then I may provide my own implementation.

[Updated with example] As an example, here's a use case I had last week. In our product there are several cases of Maps containing containers as values. E.g., Map[Int, List[String]] or Map[String, Set[Int]]. Adding to these collections can be verbose:

map += key -> (value :: map.getOrElse(key, List()))

So I wanted to have a function that wraps this so I could write

map +++= key -> value

The main issue is that the collections don't all have the same methods for adding elements. Some have '+' while others ':+'. I also wanted to retain the efficiency of adding elements to a list, so I didn't want to use fold/map which create new collections.

The solution is to use type classes:

  trait Addable[C, CC] {
    def add(c: C, cc: CC) : CC
    def empty: CC
  }

  object Addable {
    implicit def listAddable[A] = new Addable[A, List[A]] {
      def empty = Nil

      def add(c: A, cc: List[A]) = c :: cc
    }

    implicit def addableAddable[A, Add](implicit cbf: CanBuildFrom[Add, A, Add]) = new Addable[A, Add] {
      def empty = cbf().result

      def add(c: A, cc: Add) = (cbf(cc) += c).result
    }
  }

Here I defined a type class Addable that can add an element C to a collection CC. I have 2 default implementations: For Lists using :: and for other collections, using the builder framework.

Then using this type class is:

class RichCollectionMap[A, C, B[_], M[X, Y] <: collection.Map[X, Y]](map: M[A, B[C]])(implicit adder: Addable[C, B[C]]) {
    def updateSeq[That](a: A, c: C)(implicit cbf: CanBuildFrom[M[A, B[C]], (A, B[C]), That]): That  = {
      val pair = (a -> adder.add(c, map.getOrElse(a, adder.empty) ))
      (map + pair).asInstanceOf[That]
    }

    def +++[That](t: (A, C))(implicit cbf: CanBuildFrom[M[A, B[C]], (A, B[C]), That]): That  = updateSeq(t._1, t._2)(cbf)
  }

  implicit def toRichCollectionMap[A, C, B[_], M[X, Y] <: col

The special bit is using adder.add to add the elements and adder.empty to create new collections for new keys.

To compare, without type classes I would have had 3 options: 1. to write a method per collection type. E.g., addElementToSubList and addElementToSet etc. This creates a lot of boilerplate in the implementation and pollutes the namespace 2. to use reflection to determine if the sub collection is a List / Set. This is tricky as the map is empty to begin with (of course scala helps here also with Manifests) 3. to have poor-man's type class by requiring the user to supply the adder. So something like addToMap(map, key, value, adder), which is plain ugly

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    Thanks. I would say that in the context of business applications type classes help to model concerns, orthogonal to the business domain. Equals and Hashable are good examples but Java classes already have "equals" and "hashCode" methods unfortunately. I am thinking about such concerns as networking and persistence and probably post a question soon about it.
    – Michael
    Mar 26, 2011 at 13:34
  • I did not get if the problem is verboseness of getOrElse/mapwithDefaultValue or appending items to the map/collection and default values are not the problem?
    – Val
    Jul 2, 2014 at 8:50
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    The problem was creating a common interface (+++=) over several types which I don't control. so I can't add the method directly to their interface.
    – IttayD
    Jul 3, 2014 at 11:43
6

Yet another way I find this blog post helpful is where it describes typeclasses: Monads Are Not Metaphors

Search the article for typeclass. It should be the first match. In this article, the author provides an example of a Monad typeclass.

5

The forum thread "What makes type classes better than traits?" makes some interesting points:

  • Typeclasses can very easily represent notions that are quite difficult to represent in the presence of subtyping, such as equality and ordering.
    Exercise: create a small class/trait hierarchy and try to implement .equals on each class/trait in such a way that the operation over arbitrary instances from the hierarchy is properly reflexive, symmetric, and transitive.
  • Typeclasses allow you to provide evidence that a type outside of your "control" conforms with some behavior.
    Someone else's type can be a member of your typeclass.
  • You cannot express "this method takes/returns a value of the same type as the method receiver" in terms of subtyping, but this (very useful) constraint is straightforward using typeclasses. This is the f-bounded types problem (where an F-bounded type is parameterized over its own subtypes).
  • All operations defined on a trait require an instance; there is always a this argument. So you cannot define for example a fromString(s:String): Foo method on trait Foo in such a way that you can call it without an instance of Foo.
    In Scala this manifests as people desperately trying to abstract over companion objects.
    But it is straightforward with a typeclass, as illustrated by the zero element in this monoid example.
  • Typeclasses can be defined inductively; for example, if you have a JsonCodec[Woozle] you can get a JsonCodec[List[Woozle]] for free.
    The example above illustrates this for "things you can add together".
4

One way to look at type classes is that they enable retroactive extension or retroactive polymorphism. There are a couple of great posts by Casual Miracles and Daniel Westheide that show examples of using Type Classes in Scala to achieve this.

Here's a post on my blog that explores various methods in scala of retroactive supertyping, a kind of retroactive extension, including a typeclass example.

1

I don't know of any other use case than Ad-hoc polymorhism which is explained here the best way possible.

1

Both implicits and typeclasses are used for Type-conversion. The major use-case for both of them is to provide ad-hoc polymorphism(i.e) on classes that you can't modify but expect inheritance kind of polymorphism. In case of implicits you could use both an implicit def or an implicit class (which is your wrapper class but hidden from the client). Typeclasses are more powerful as they can add functionality to an already existing inheritance chain(eg: Ordering[T] in scala's sort function). For more detail you can see https://lakshmirajagopalan.github.io/diving-into-scala-typeclasses/

1

In scala type classes

  • Enables ad-hoc polymorphism
  • Statically typed (i.e. type-safe)
  • Borrowed from Haskell
  • Solves the expression problem

Behavior can be extended - at compile-time - after the fact - without changing/recompiling existing code

Scala Implicits

The last parameter list of a method can be marked implicit

  • Implicit parameters are filled in by the compiler

  • In effect, you require evidence of the compiler

  • … such as the existence of a type class in scope

  • You can also specify parameters explicitly, if needed

Below Example extension on String class with type class implementation extends the class with a new methods even though string is final :)

/**
* Created by nihat.hosgur on 2/19/17.
*/
case class PrintTwiceString(val original: String) {
   def printTwice = original + original
}

object TypeClassString extends App {
  implicit def stringToString(s: String) = PrintTwiceString(s)
  val name: String = "Nihat"
  name.printTwice
}
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    Above example is just implicit conversion of some type A to B. It is not really idiomatic example of Scala Type Class pattern. Mar 10, 2019 at 15:37
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This is an important difference (needed for functional programming):

enter image description here

consider inc:Num a=> a -> a:

a received is the same that is returned, this cannot be done with subtyping

0

I like to use type classes as a lightweight Scala idiomatic form of Dependency Injection that still works with circular dependencies yet doesn't add a lot of code complexity. I recently rewrote a Scala project from using the Cake Pattern to type classes for DI and achieved a 59% reduction in code size.

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