In Java8, processing pairs of items in two parallel streams as below:

final List<Item> items = getItemList();
final int l = items.size();
List<String> results = Collections.synchronizedList(new ArrayList<String>());
IntStream.range(0, l - 1).parallel().forEach(
    i -> {
        Item item1 = items.get(i);
        int x1 = item1.x;
        IntStream.range(i + 1, l).parallel()
            .forEach(j -> {
                Item item2 = items.get(j);
                int x2 = item2.x;
                if (x1 + x2 < 200) return;
                // code that writes to ConcurrentHashMap defined near results
                if (x1 + x2 > 500) results.add(i + " " + j);

Each stream pair writes to ConcurrentHashMap, and depending on certain conditions it may terminate the stream execution by calling return; or it may write to a synchronized list.

I want to make streams return the results like return i + " " + j and collect those results into a list strings outside. It should be partial as returning nothing must be supported (in case when x1 + x2 < 200).

What would be the most time-efficient (fastest code) way to achieve that?

  • 1
    Please provide correct code which compiles. Your results is declared as array, but you are using it like list. Where's the ConcurrentHashMap? What exactly are you writing there? Also please provide a sample input and the desired output for it. Now it's a little bit unclear what are you trying to achieve. – Tagir Valeev Aug 7 '15 at 4:25
  • You are only adding to results if x1 + x2 > 500. Why not use a Collector? Also ... as far as I know, you can't return from a foreach like that. – Chthonic Project Aug 7 '15 at 15:02
  • In your particular example, doing things in parallel may not yield faster performance. Check out this question and its top answer: stackoverflow.com/questions/23170832/… – Chthonic Project Aug 7 '15 at 15:04
  • Before caring about time efficiency, I think you should care about correctness. (1) If you need to terminate the stream upon a certain condition, you cannot parallelize, otherwise you cannot control the execution order and there might be pairs added to the results list that occur logically after the pair that triggered your stop condition x1 + x2 < 200. (2) A return; like that is definitively not the way to stop a stream execution. – Helder Pereira Aug 8 '15 at 18:51

In this answer, I will not address the time efficiency, because there are correctness problems that should be handled beforehand.

As I said in the comments, it is not possible to stop the stream execution after a certain condition if we parallelize the stream. Otherwise, there might be some pairs (i,j) that are already being executed that are numerically after a pair that triggered the stop condition x1 + x2 < 200. Another issue is the return; inside the lambda, all it will do is skip the second if for the j for which x1 + x2 < 200 holds, but the stream will continue with j+1.

There is no straightforward way to stop a stream in Java, but we can achieve that with allMatch, as we can expect that as soon as it finds a false value, it will short-circuit and return false right way.

So, this would be a correct version of your code:

IntStream.range(0, l - 1).allMatch(i -> {
    int x1 = items.get(i).x;
    return IntStream.range(i + 1, l).allMatch(j -> {
        int x2 = items.get(j).x;
        if (x1 + x2 < 200) {
            return false;
        } else {
            if (x1 + x2 > 500) results2.add(i + " " + j);
            return true;

For the following example, with the constructor Item(int x, int y):

final List<Item> items = Arrays.asList(
        new Item(200, 0),
        new Item(100, 0),
        new Item(500, 0),
        new Item(400, 0),
        new Item(1, 0));

The contents of results in my version is:

[0 2, 0 3, 1 2]

With your code (order and elements vary in each execution):

[2 4, 2 3, 1 2, 0 3, 0 2]

I think this will be more efficient (haven't done any micro benchmarking though):

    i -> IntStream.range(i+1,l)
                  .filter(j -> items.get(i).x + items.get(j).x > 500)
                  .forEach(j -> results.add(i + " " + j)));

However, if I was really worried about the time taken to do this, I'd pay more attention to what kind of a List implementation is used for items. Perhaps even convert the list to a HashMap<Integer, Item> before getting into the lambda. For example, if items is a LinkedList, any improvement to the lambda may be inconsequential because items.get() will eat up all the time.

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