Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

The problem involves the Scala PriorityQueue[Array[Int]] performance on large data set. The following operations are needed: enqueue, dequeue, and filter. Currently, my implementation is as follows:

For every element of type Array[Int], there is a complex evaluation function: (I'm not sure how to write it in a more efficient way, because it excludes the position 0)

def eval_fun(a : Array[Int]) =
  if(a.size < 2) 3
  else {
    var ret = 0
    var i = 1
    while(i < a.size) {
      if((a(i) & 0x3) == 1) ret += 1
      else if((a(i) & 0x3) == 3) ret += 3
      i += 1
    }
    ret / a.size
  }

The ordering with a comparison function is based on the evaluation function: (Reversed, descendent order)

val arr_ord = new Ordering[Array[Int]] {
  def compare(a : Array[Int], b : Array[Int]) = eval_fun(b) compare eval_fun(a) }

The PriorityQueue is defined as:

val pq: scala.collection.mutable.PriorityQueue[Array[Int]] = PriorityQueue()

Question:

  1. Is there a more elegant and efficient way to write such a evaluation function? I'm thinking of using fold, but fold cannot exclude the position 0.
  2. Is there a data structure to generate a priorityqueue with unique elements? Applying filter operation after each enqueue operation is not efficient.
  3. Is there a cache method to reduce the evaluation computation? Since when adding a new element to the queue, every element may need to be evaluated by eval_fun again, which is not necessary if evaluated value of every element can be cached. Also, I should mention that two distinct element may have the same evaluated value.
  4. Is there a more efficient data structure without using generic type? Because if the size of elements reaches 10,000 and the size of size reaches 1,000, the performance is terribly slow.

Thanks you.

share|improve this question
    
Unique is another issue. val a = Array(1,2); val b=Array(1,2,0); val c=Array(1,2); After adding to priority queue, it should be sth like PQ(Array(1,2), Array(1,2,0)) –  Tianyi Liang Nov 21 '11 at 3:05

3 Answers 3

(1) If you want maximum performance here, I would stick to the while loop, even if it is not terribly elegant. Otherwise, if you use a view on Array, you can easily drop the first element before going into the fold:

a.view.drop(1).foldLeft(0)( (sum, a) => sum + ((a & 0x03) match {
   case 0x01 => 1
   case 0x03 => 3
   case _    => 0
})) / a.size

(2) You can maintain two structures, the priority queue, and a set. Both combined give you a sorted-set... So you could use collection.immutable.SortedSet, but there is no mutable variant in the standard library. Do want equality based on the priority function, or the actual array contents? Because in the latter case, you won't get around comparing arrays element by element for each insertion, undoing the effect of caching the priority function value.

(3) Just put the calculated priority along with the array in the queue. I.e.

implicit val ord = Ordering.by[(Int, Array[Int]), Int](_._1)
val pq = new collection.mutable.PriorityQueue[(Int, Array[Int])]
pq += eval_fun(a) -> a
share|improve this answer
    
pq += eval_fun(a) -> a is not correct. For example, val a=Array(1,2,3,4); val b = Array(1,2,3,4); after pq += eval_fun(a) ->a ; and pq += eval_fun(b) ->b; there are two elements. Actually, we only need 1 element –  Tianyi Liang Nov 21 '11 at 2:35
    
in (1): (sum, a) should be (a, sum). Thank you anyway. –  Tianyi Liang Nov 21 '11 at 2:39
    
in (2): Since it involves enqueue and dequeue, how to do it efficiently? thanks –  Tianyi Liang Nov 21 '11 at 2:55
    
@Tianyi: Yes, there will be two elements. A priority queue allows you to add multiple elements with the same priority. It seems you really want a sorted set here, instead. Forget about the priority queue. Note that the sorting order is reverse. head will give you the element with the lowest priority, thus make sure to use -eval_fun for the sorting. Also, the fold function really takes (sum, a), see the scala API docs. –  0__ Nov 21 '11 at 19:01
    
Then it is not correct: val a = Array(1,2,3,4)a: Array[Int] = Array(1, 2, 3, 4) a.view.drop(1).foldLeft(0)( (sum, a) => sum + ((a & 0x03) match { case 0x01 => 1 case 0x03 => 3 case _ => 0 })) / a.sizeres0: Int = 0 Also, I tried your idea in my code. It seems twice slower. I'm not sure the problem. SortedSet has some problems, for example: val a=Array(1); b=Array(1); In Set, they consider them different elements. –  Tianyi Liang Nov 21 '11 at 22:13

Well, you can use a tail recursive loop (generally these are more "idiomatic":

def eval(a: Array[Int]): Int =
  if (a.size < 2) 3
  else {
    @annotation.tailrec
    def loop(ret: Int = 0, i: Int = 1): Int =
      if (i >= a.size) ret / a.size
      else {
        val mod3 = (a(i) & 0x3)
        if (mod3 == 1) loop(ret + 1, i + 1)
        else if (mod3 == 3) loop(ret + 3, i + 1)
        else loop(ret, i + 1)
      }
    loop()
  }

Then you can use that to initialise a cached priority value:

case class PriorityArray(a: Array[Int]) {
  lazy val priority = if (a.size < 2) 3 else {
    @annotation.tailrec
    def loop(ret: Int = 0, i: Int = 1): Int =
      if (i >= a.size) ret / a.size
      else {
        val mod3 = (a(i) & 0x3)
        if (mod3 == 2) loop(ret, i + 1)
        else loop(ret + mod3, i + 1)
      }
    loop()
  }
}

You may note also that I removed a redundant & op and have only the single conditional (for when it equals 2, rather than two checks for 1 && 3) – these should have some minimal effect.

There is not a huge difference from 0__'s proposal that just came though.

share|improve this answer
    
Thank you for your answer. I have two more questions. 1) Is lazy method better than foldLeft? 2) how to eliminate same array? For example: val a=Array(1,2,3); val b = Array(1,2,3). –  Tianyi Liang Nov 21 '11 at 2:51
    
well, array.tail will cause a new array of (size - 1) to be created (if you don't use view as noted by Sciss), so the recursive version avoids this. Otherwise there shouldn't be a huge difference in the approach, but match may cause the double evaluation problem of PartialFunctions (once for is`Defined`, again for apply. For the second one, you'd need to have a memoiser of some form, which is worth a question in its own right. –  Jed Wesley-Smith Nov 21 '11 at 3:21
    
do you have any suggestion for the memoir? –  Tianyi Liang Nov 21 '11 at 3:32
    
Well, Google's Guava has an Interner that is pretty simple. For a pure scala version though, here's one I prepared earlier: bitbucket.org/jwesleysmith/atlassian-util-scala/src/… –  Jed Wesley-Smith Nov 21 '11 at 4:08
    
Thank you for your sharing. However, I'm still not clear about how to use your class. Can you give me an example? –  Tianyi Liang Nov 21 '11 at 16:42

My answers:

  1. If evaluation is critical, keep it as it is. You might get better performance with recursion (not sure why, but it happens), but you'll certainly get worse performance with pretty much any other approach.

  2. No, there isn't, but you can come pretty close to it just modifying the dequeue operation:

    def distinctDequeue[T](q: PriorityQueue[T]): T = { val result = q.dequeue while (q.head == result) q.dequeue result }

Otherwise, you'd have to keep a second data structure just to keep track of whether an element has been added or not. Either way, that equals sign is pretty heavy, but I have a suggestion to make it faster in the next item.

Note, however, that this requires that ties on the the cost function get solved in some other way.

  1. Like 0__ suggested, put the cost on the priority queue. But you can also keep a cache on the function if that would be helpful. I'd try something like this:

    val evalMap = scala.collection.mutable.HashMapWrappedArray[Int], Int def eval_fun(a : Array[Int]) = if(a.size < 2) 3 else evalMap.getOrElseUpdate(a, { var ret = 0 var i = 1 while(i < a.size) { if((a(i) & 0x3) == 1) ret += 1 else if((a(i) & 0x3) == 3) ret += 3 i += 1 } ret / a.size })

    import scala.math.Ordering.Implicits._ val pq = new collection.mutable.PriorityQueue[(Int, WrappedArray[Int])] pq += eval_fun(a) -> (a : WrappedArray[Int])

Note that I did not create a special Ordering -- I'm using the standard Ordering so that the WrappedArray will break the ties. There's little cost to wrap the Array, and you get it back with .array, but, on the other hand, you'll get the following:

  1. Ties will be broken by comparing the array themselves. If there aren't many ties in the cost, this should be good enough. If there are, add something else to the tuple to help break ties without comparing the arrays.

  2. That means all equal elements will be kept together, which will enable you to dequeue all of them at the same time, giving the impression of having kept only one.

  3. And that equals will actually work, because WrappedArray compare like Scala sequences do.

I don't understand what you mean by that fourth point.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.