I'm working on an algorithm that has to do a small number of operations on a large numbers of small arrays, somewhat independently.

To give an idea:

- 1k sorting of arrays of length typically of 0.5k-1k elements.
- 1k of LU-solve of matrices that have rank 10-20.

everything is in floats.

Then, there is some horizontality to this problem: the above operations have to be carried independently on 10k arrays.

Also, the intermediate results need not be stored: for example, i don't need to keep the sorted arrays, only the sum of the smallest $m$ elements.

The whole thing has been programmed in c++ and runs. My question is: would you expect a problem like this to enjoy significant speed ups (factor 2 or more) with CUDA?