Scala Parallel Sort Using java.util.Arrays and scala.concurrent.ops.par

I think I have implemented some of my code wrong. I cannot figure out why my sort (using arrays.sort) is taking longer in the "parallel" version than in the non-parallel version (it's obviously in putting the two arrays back together, but I didn't think it would add that much more time on). If someone could point out any mistakes that I am making or any tips to improve the parallel version over the non-parallel version I would appreciate it. Am I able to do the array merge more efficiently, or maybe even in parallel? If so, what is the best practice for implementation. Any help would be greatly appreciated.

``````import java.util.Arrays
import scala.concurrent._
import scala.collection._

trait Sorts {
def doSort(a: Array[Double]): Array[Double]
}

object Simple extends Sorts {
def doSort(a: Array[Double]) = {
Arrays.sort(a)
a
}
}

object Parallel extends Sorts {
def doSort(a: Array[Double]) = {
val newArray = new Array[Double](a.length)
val aLength = (a.length)
val aSplit = ((a.length / 2).floor).toInt
ops.par(Arrays.sort(a, 0, aSplit), Arrays.sort(a, (aSplit + 1), aLength))
def merge(w: Int, x: Int, y: Int) {
var i = w
var j = x
var k = y
while (i <= aSplit && j <= aLength) {
if (a(i) <= a(j)) {
newArray(k) = a(i)
i = i + 1
} else {
newArray(k) = a(j)
j = j + 1
}
k = k + 1
}
if (i < aSplit) {
for (i <- i until aSplit) {
newArray(k) = a(i)
k = k + 1
}
} else {
for (j <- j until aLength) {
newArray(k) = a(j)
k = k + 1
}
}
}
merge(0, (aSplit + 1), 0)
newArray
}
}

object Main {
def main(args: Array[String]): Unit = {
val simpleNumbers = Array.fill(10000)(math.random)
println(simpleNumbers.toList + "\n")
val simpleStart = System.nanoTime()
Simple.doSort(simpleNumbers)
val simpleEnd = System.nanoTime()
println(simpleNumbers.toList + "\n")
val simpleDifference = ((simpleEnd - simpleStart) / 1e9).toDouble

val parallelNumbers = Array.fill(10000)(math.random)
println(parallelNumbers.toList + "\n")
val parallelStart = System.nanoTime()
Parallel.doSort(parallelNumbers)
val parellelEnd = System.nanoTime()
println(parallelNumbers.toList + "\n")
val parallelDifference = ((parellelEnd - parallelStart) / 1e9).toDouble

println("\n Simple Time Taken: " + simpleDifference + "\n")
println("\n Parallel Time Taken: " + parallelDifference + "\n")

}
}
``````

Output on an Intel Core i7:

``````Simple Time Taken: 0.01314
Parallel Time Taken: 0.05882
``````
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I think you've got a couple of different things going on here. First, on my system the `ops.par(Arrays.sort(...))` line by itself takes longer than all of `Simple.doSort()`. So there must be some overhead (thread creation?) that dominates the performance gain for a smallish array. Try it for 100,000 or a million elements. Second, `Arrays.sort` is an in-place sort, so it doesn't have to incur the cost of creating a new 10k element array for the results.

To avoid creating the second array, you can do the partition first and then sort the two halves in parallel, as recommended here

``````def doSort(a: Array[Double]) = {
val pivot = a(a.length-1)
var i = 0
var j = a.length-2
def swap(i: Int, j: Int) {
val temp = a(i)
a(i) = a(j)
a(j) = temp
}
while(i < j-1) {
if(a(i) <= pivot) {
i+=1
}
else {
swap(i,j)
j-=1
}
}
swap(j-1, a.length-1)
ops.par(Arrays.sort(a,0,a.length/2), Arrays.sort(a,a.length/2+1,a.length))
a
}
``````

After upping the array size to 100k, I do see the parallel version performing around twice as fast on an Intel E5300 CPU.

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