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I'm new at CUDA and have the following question? My kernel is supposed to calculate a type:

vector <double *> *my_vector = new vector <double *>();

Before I tried to change the original c++ code to cuda it would calculate an array[6] in a loop and then push it back to my_vector.


        double *array = new double[6];
        array[0] = data;
        array[1] = data;
        array[2] = data;
        array[3] = data;
        array[4] = data;
        array[5] = data;


I know that using thrust could help but I prefer if I didn't use it. I thought of using a 2D array at my kernel and copying the data back to my host code and then copying that to my_vector with the std::vector. What I've tried so far has failed.

If anyone has some experience on this and has any idea it would be much help.

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There is no STL support in CUDA, and malloc support in kernels is very slow. You might want to think about another approach. – talonmies May 18 '12 at 19:26

Look at the Thrust template library that provide useful templates for host and device code usage. The thrust::device_vector can be used like std::vector analogy.

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