I've programmed a least squares optimization for CUDA. It works fine when it optimizes one data-set. For further use I have to implement it for a usage of three data-sets at the same time. The code consists of three kernels and some host code between them to prepare data etc. A simple implementation would be to call the program three times for every data set.
But my task is to find out, how I can run it three times at the same time.
Is it possible or even a good idea to call the program or concurrent kernels from three host threads at the same time when I use libraries like openmp or posix? Or should I try to program an own scheduler?