Multiple Parameter List Methods
For Type Inference
Methods with multiple parameter sections can be used to assist local type inference, by using parameters in the first section to infer type arguments that will provide an expected type for an argument in the subsequent section. foldLeft
in the standard library is the canonical example of this.
def foldLeft[B](z: B)(op: (B, A) => B): B
List("").foldLeft(0)(_ + _.length)
If this were this written as:
def foldLeft[B](z: B, op: (B, A) => B): B
One would have to provide more explicit types:
List("").foldLeft(0, (b: Int, a: String) => a + b.length)
List("").foldLeft[Int](0, _ + _.length)
For fluent API
Another use for multiple parameter section methods is to create an API that looks like a language construct. The caller can use braces instead of parentheses.
def loop[A](n: Int)(body: => A): Unit = (0 until n) foreach (n => body)
loop(2) {
println("hello!")
}
Application of N argument lists to method with M parameter sections, where N < M, can be converted to a function explicitly with a _
, or implicitly, with an expected type of FunctionN[..]
. This is a safety feature, see the change notes for Scala 2.0, in the Scala References, for an background.
Curried Functions
Curried functions (or simply, functions that return functions) more easily be applied to N argument lists.
val f = (a: Int) => (b: Int) => (c: Int) => a + b + c
val g = f(1)(2)
This minor convenience is sometimes worthwhile. Note that functions can't be type parametric though, so in some cases a method is required.
Your second example is a hybrid: a one parameter section method that returns a function.
Multi Stage Computation
Where else are curried functions useful? Here's a pattern that comes up all the time:
def v(t: Double, k: Double): Double = {
// expensive computation based only on t
val ft = f(t)
g(ft, k)
}
v(1, 1); v(1, 2);
How can we share the result f(t)
? A common solution is to provide a vectorized version of v
:
def v(t: Double, ks: Seq[Double]: Seq[Double] = {
val ft = f(t)
ks map {k => g(ft, k)}
}
Ugly! We've entangled unrelated concerns -- calculating g(f(t), k)
and mapping over a sequence of ks
.
val v = { (t: Double) =>
val ft = f(t)
(k: Double) => g(ft, k)
}
val t = 1
val ks = Seq(1, 2)
val vs = ks map (v(t))
We could also use a method that returns a function. In this case its a bit more readable:
def v(t:Double): Double => Double = {
val ft = f(t)
(k: Double) => g(ft, k)
}
But if we try to do the same with a method with multiple parameter sections, we get stuck:
def v(t: Double)(k: Double): Double = {
^
`-- Can't insert computation here!
}