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I am pretty new to thrust/cusp. I would like to build these 3 lists to be used for a sparse matrix which is a square matrix of 65536 lines. For now, they are not very long, but I need to populate them.

// allocate storage for unordered triplets
cusp::array1d<int,   cusp::device_memory> I(1);  // row indices 
cusp::array1d<int,   cusp::device_memory> J(1);  // column indices
cusp::array1d<float, cusp::device_memory> V(1);  // values

Hence, I need to loop over 65536^2 (i,j) elements to decide whether to do (V(1) for example but it could be a different value):

I.push_back(i);
J.push_back(j);
V.push_back(1);

The following function returns which element to add

struct Fillin{
    __device__ boold operator()(int i,int j)
    {
       if() // some condition
            return true;
       else return false;

    }
}; 

Hence, my question is basically, I can I loop over the 65536^2 elements on the device to populate the arrays I, J, V? Note that I have in mind to go to 262144^2 elements to be looped over.

share|improve this question
    
cusp on the device probably isn't the right place to try and construct a sparse matrix this way. You could certainly do it in thrust, but I think the coding is non-trivial. Is this being built in a performance-sensitive area of code? If not, why not just build your I,J, and V arrays using ordinary host code, then transfer them into cusp (into cusp device arrays, if that is what you want)? –  Robert Crovella Jan 15 at 18:55
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