I'm attempting to optimise an application in realtime 3D modelling. The compute part of the application runs almost entirely on the GPU in CUDA. The application requires the solution of a small (6x6) double precision symmetric positive definite linear system Ax = b 500+ times per second. Currently this is being done with an efficient CPU based Linear Algebra library using Cholesky but necessitates the copying of data from the CPU - GPU and back to GPU hundreds of times per second and the overhead of kernel launches each time etc.

How can I calculate the solution to the linear system on the GPU solely without having to take the data onto the CPU at all? I've read a little about the MAGMA library but it seems to use hybrid algorithms rather than GPU only algorithms.

I'm prepared for the fact that the solution of an individual linear system on the GPU is going to be a lot slower than with the existing CPU based library but I want to see if that can be made up for by removing the data communication between the host and device and the overhead of kernel launches etc hundreds of times per second. If there is no GPU only LAPACK-like alternative out there how would I go about implementing something to solve this particular 6x6 case on the GPU only? Could it be done without a huge time investment with GPU BLAS libraries for example?