# Using two device_vector to generate result

I have two device_vector(points, windows), "points" record coordinate of each point(value="1") in 2-dimension array", and divide the array into several "windows"(ex: a window may contain 4 points from (0,0)~(1,1), if size of window is 2X2), notice that not all values of each point in a window is "1".

How can I count number of points in each window who's value is "1" by using thrust following code may help:

``````//we use the smallest index of a window to present it, if size of window is "2X2",
//(0,0) to present the first window
//(0,2)to present the second window in the array
//Finally store the number of points who's value is "1" in i'th window to i'th density

typedef thrust::tuple<int, int> vec2;
thrust::device_vector<vec2> points(N);
thrust::device_vector<vec2> window(M);
thrust::device_vector<vec2> density(M);
``````

To achieve our goal, we need to compare all coordinates of points with all window to check whether these points are in the window.

First case, I use a loop to achieve this but it costs too much time, because it launch kernel M times

``````//Functor inWindow return 1 if a points in the anchor window, else return 0

for(int i=0;i<M;i++) {
vec2 anchor = window[i];
density[i] = thrust::transform_reduce(points.begin(), points.end(),
inWindow(window_size, anchor), 0, thrust::plus<int>());
}
``````

Second case, I hide the loop operation in to functor, the code become following

``````//in functor countDensity, there is a loop to compare all points with i'th window
//once a point in the window, a count increase
//after loop ends, return count to i'th density

thrust::transform(window.begin(), window.end(), density.begin(),
countDensity(bucket_size, bucket_dim, N, M, points));
``````

but this case may encounter a no instance error.

I tried above two method to complete this problem, but the result isn't good enough, so I ask for the help.

Is it possible to implement following code by using thrust?

``````for(int i=0;i<M;i++) {
int count = 0;
for(int j=0;j<N;j++) {
if( inSideWindow(window[i], points[j]) )
count++;
}
density[i] = count;
}
``````
-
I really had trouble understanding your description of the algorithm you are implementing, but it seems the real problem is that the two input vectors are not the same length. There isn't a thrust primitive designed to handle unequal length inputs in the way you are trying. –  talonmies Jan 21 '13 at 7:15
Your second approach seems better. You've already distributed the work to different threads on the window dimension. To fully utilize the GPU, I think you could further distribute the work on point dimension. Once you get the matrix inWindow[winIdx][pointIdx], you can easily reduce it by rows to get the density in each window. But this may be achieved only by a kernel written by hand. –  Eric Jan 21 '13 at 8:33
Thanks for response, @EricShiyinKang I tried to distribute the work on point dimension, but it lead to "nest thrust", calling a functor which contains some thrust algorithm, and this will make "calling host function from device function is not allowed" happens. –  user1995868 Jan 21 '13 at 9:20
As indicated by talonmies, thrust is designed to handle 1-dimensional inputs. But you have 2-D now including 1-D of point vector and 1-D of window vector. You may have to write your own kernel by hand instead of using thrust. –  Eric Jan 21 '13 at 9:37
thrust example `sum_rows.cu` demos how to map 2-D task to 1-D. You may get some idea from it. But it is much simpler than your task. Because I think to get max performance for your task, shared mem may have to be used. –  Eric Jan 21 '13 at 9:54