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The application is to intersect two sorted list of integers (set intersection), say list1 and list2.

Each element of list1 will be assigned a GPU thread, and do binary search to check whether it appears in the list2. It is easy to see that there will be huge amount thread divergences in this application. I wonder if there is any good approach to reduce thread divergences. I am using CUDA to implement this application.

I know there is an approach called P-ary search, but my task is to reduce the thread divergence of binary search. Also I know there is library called thrust, but it seems there is no attempt on reducing the divergences.

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How big are the sets of integers? On divergences, merging two lists of length n involves O(n) comparisons, each of which will create a divergence. I think that you have to accept that you will have a lot of divergences, and then keep them short. (A bigger challenge is making sure that you load blocks of memory in parallel.) –  btilly Apr 30 '12 at 22:00
    
i agree - memory access is a bigger problem that divergence. you've got two source of divergence as far as i can see - the binary search step and termination. you don't care much about termination, since those threads are done anyway, and the binary step in a loop is only an if/else updating an index. much much worse than that is the fact that you're going to be reading from all over the place in the second list. i guess sorting both lists first might help a little. –  andrew cooke May 1 '12 at 0:39
    
duh. sorting list1. –  andrew cooke May 1 '12 at 1:31
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2 Answers

up vote 2 down vote accepted

If both lists are sorted, binary search is not the best algorithm you can do. Binary search will give O(n lg n), but just doing a merge-like algorithm, only taking intersections, is O(n).

This is a silly algorithm to use a GPU for. The only case I see is that you've just generated the data in the GPU. In which case, you want to break the problem up into a bunch of smaller intersections and assign a thread to each.

To do that, pick k equally-spaced elements of list1 and find them in list2 using binary search. Similarly, pick k equally-spaced elements of list2 and find them in list1. You now have 2k ranges in each list, where each range has at most N/k elements. Now intersect those ranges in parallel. (Set k to be half the number of threads you want.)

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Why you search from the second list in the first list? –  Fan Zhang May 15 '12 at 9:18
    
You want to make sure that each sublist has at most N/k elements. If you picked splitting points from just one list, the subrange from the other list may be too large. –  Keith Randall May 15 '12 at 15:41
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Posible code:

    bool end = false;
    bool found = false;

    while(!end && !found)
    {
            int diff        = max-min;
            int middle      = min + (diff / 2);

            end             = diff < 1;
            found           = element[middle] == element;
            if (index < elements[middle])
                    max = middle-1;
            else //(index > elements[middle+1])
                    min = middle + 2;
    }
    return found;

Warning: this code could generate exception by access out of range memory

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