I am working on Markov Chain Monte-Carlo (MCMC) algorithm implementation on NVIDIA CUDA GPU. The CPU MCMC algorithm uses the high quality Mersenne twister random number generator, and I would like to use the same in the GPU kernels I wrote. I have been searching for cuRand MT code examples for long. Unfortunately, I have never seen any example of a kernel code that uses the Mersenne twister. The standard cuRand library documentation provides a set of functions for MTGP (MT for Graphic Processor), but it is not clear how to use them. The CUDA Samples at

http://docs.nvidia.com/cuda/cuda-samples/index.html#MersenneTwister

provides MersenneTwisterGP11213.tar.gz with an example, but it seems to be exclusively for a host code that requests fast generation of an array of random numbers on GPU, downloads them to CPU memory, and proceeds on CPU. There is a paper "Massively Parallel RNG using CUDA C, Thrust and C#" at

Again, the author in the last section "A Mersenne Twister implementation using CUDA C" provides just a simplified piece of the aforementioned host code from the "CUDA Samples".

So, my first question is: can anybody give me an example of **global** or **device** function that uses the cuRand Mersenne twister?

I have one more question. Currently I use a cuRand library random number generator and I have no idea what generator is used! Let me provide a couple pieces of my code. This is the generator initialization:

```
__global__ void init_rng(Cmcmcfit *mc) {
int ist = threadIdx.x*gridDim.x + blockIdx.x;
if (ist >= mc->nrndst) return; // The last block can have extra threads
unsigned long long offset = 0;
curand_init(mc->seed, ist, offset, &mc->rndst[ist]);
}
```

In other kernels I sample numbers from the uniform and normal distributions. The array of states for all the blockDim.x*gridDim.x generators is saved in the global memory, array mc->rndst[]. For example, curand_uniform() is used:

```
. . . . . .
do { /* Randomly select parameter number k to make step */
r = curand_uniform(&mc->rndst[ist]);
k = (int) (mc->nprm*r); /* Random parameter index 0..nprm-1 into ivar[] */
} while (k >= mc->nprm);
. . . . . . . . .
```

Or, to sample from the Gaussian distribution, curand_normal() is used:

```
std = mc->pstp[(Nbeta*k + Ibeta)*Nseq + Iseq]; /* pstp[k,ibeta,iseq] */
randn = curand_normal(&mc->rndst[ist]);
p = p + std*randn;
```

Can anybody tell me which of the curand generators (xorwow, lcs, mtgp ...) is used here (actually, by default)? Thank you very much in advance.