Has anybody implemented a CUDA parallelization version of Dijkstra's Algorithm for a given sparse matrix (cuSPARSE) graph, and for source, and target node, find the minimal K path?

I really need it to solve a general graph I'll be constructing.

Vincent

`1.`

Are you talking about using multiple threads to find the shortest path in a single graph, or finding a single path per thread over many graphs? The former is likely(?) very difficult, but the latter should be fairly easy... though, due to the way CUDA GPUs work(all threads in a half-warp assume the same conditionals, nearby memory accesses etc.), you might not get the performance increase you hope.`2.`

When you say 'minimal k path', are you really talking about solving the K-shortest paths problem? – BlueRaja - Danny Pflughoeft Feb 26 '13 at 22:52