I am searching for an algorithm to find a convex polygon to contain all the random points using Cuda. Is there anyone know a very efficient algorithm that I can adapt?

Is this not just the standard Convex Hull problem: en.wikipedia.org/wiki/Convex_hull ? – Paul R Jan 27 '11 at 13:07

it's a convex hull in 3d, it's actually standard. But the problem is to find an efficient algorithm to map to CUDA GPU multithread. – Dark Jan 29 '11 at 8:51
If you (or future SO users) are still looking for a 3D Hull algorithm for CUDA, you might check out this paper from November 2011:
"CudaHull: Fast Parallel 3D Convex Hull on the GPU" by Ayal Stein, Eran Geva, and Jihad ElSana
http://www.cs.bgu.ac.il/~elsana/publications/pdf/CudaHull.pdf
The authors claim a 27x to 40x speedup over Qhull (http://www.qhull.org) for 10 and 20 million points, respectively. For fewer points (< 10,000), though, their CPU / GPU algorithm is actually slower than Qhull.
I haven't implemented it myself, but came across both your SO question and the CudaHull paper when searching for 3D convex hull algorithms for CUDA.
There is a paper presented at HiPC about running a Convex Hull Algorithm on a GPU with CUDA.
Graham Scan is a simple algorithm to find the Convex Hull of a set of points. On the Wikipedia article exists a pseudo code version of it.

yeah, I know that paper, however, it's a twoD version. Plus, Graham Scan seems to be impossible to extend to 3d. But thanks anyway for the answer – Dark Jan 29 '11 at 8:49