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I have 3 arrays of the same size (more than 300.000). One array of float numbers and two arrays of indices. so for each number I have 2 IDs.

All the 3 arrays are already in GPU global memory. I want to sort all the numbers with theirs IDs accordingly.

Is there any way I can use Thrust library to do this task? Is there any better way than Thrust library?

Of course I prefer not to copy them to and from host memory a couple of times. btw. They're arrays not vectors.

Thanks for your help in advance.

Solution 1 : but this is extremely slow ... it takes almost 4 seconds and my array size is in order of 300000

thrust::device_ptr<float> keys(afterSum);
thrust::device_ptr<int> vals0(d_index);
thrust::device_ptr<int> vals1(blockId); 

thrust::device_vector<int> sortedIndex(numElements);
thrust::device_vector<int> sortedBlockId(numElements);

thrust::counting_iterator<int> iter(0);
thrust::device_vector<int> indices(numElements);
thrust::copy(iter, iter + indices.size(), indices.begin()); 

thrust::sort_by_key(keys, keys + numElements , indices.begin());    

thrust::gather(indices.begin(), indices.end(), vals0, sortedIndex.begin());
thrust::gather(indices.begin(), indices.end(), vals1, sortedBlockId.begin());

thrust::host_vector<int> h_sortedIndex=sortedIndex;
thrust::host_vector<int> h_sortedBlockId=sortedBlockId;
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1 Answer 1

Of course you can use Thrust. First, you need to wrap your raw CUDA device pointers with thrust::device_ptr. Assuming your float values are in the array pkeys, and the IDs are in the arrays pvals0 and pvals1, and numElements is the length of the arrays, something like this should work:

#include <thrust/device_ptr.h>
#include <thrust/sort.h>
#include <thrust/gather.h>
#include <thrust/iterator/counting_iterator.h>

cudaEvent_t start, stop;


thrust::device_ptr<float> keys(pkeys);
thrust::device_ptr<int> vals0(pvals0);
thrust::device_ptr<int> vals1(pvals1);

// allocate space for the output
thrust::device_vector<int> sortedVals0(numElements);
thrust::device_vector<int> sortedVals1(numElements);

// initialize indices vector to [0,1,2,..]
thrust::counting_iterator<int> iter(0);
thrust::device_vector<int> indices(numElements);
thrust::copy(iter, iter + indices.size(), indices.begin());

// first sort the keys and indices by the keys
thrust::sort_by_key(keys.begin(), keys.end(), indices.begin());

// Now reorder the ID arrays using the sorted indices
thrust::gather(indices.begin(), indices.end(), vals0.begin(), sortedVals0.begin());
thrust::gather(indices.begin(), indices.end(), vals1.begin(), sortedVals1.begin());

float milliseconds = 0;
cudaEventElapsedTime(&milliseconds, start, stop);
printf("Took %f milliseconds for %d elements\n", milliseconds, numElements);
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Thanks harrism. I used almost exact code. except I changed pkeys,pvals, numElements with mine. I get a lot of errors.I put them in the question part. I'm trying to figure it out. –  Kiarash Jul 8 '11 at 17:31
I found how to solve the problem but now it is extremely slow. What can I do about that? –  Kiarash Jul 8 '11 at 19:54
I put the working code in the question part! –  Kiarash Jul 8 '11 at 23:31
What GPU are you running on? –  harrism Jul 11 '11 at 1:36
Geforce GTX 580. CC=2.0. Let me tell you the other thing I did was copying all the data to Host and with a for-loop on CPU I made an array of struct. then I used Thrust::sort to sort the array of struct. This took around 0.5 seconds. But obviously this shouldnt be the best way, because I'm copying data back and force between host and device. and I also have a loop on CPU. –  Kiarash Jul 11 '11 at 16:59

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