Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm using CUDA with R and I have the following code:


// Matrix multiplication kernel - thread specification
__global__ void MatrixMulKernel(float *Md, float *Nd, float *Pd, int Width) {
  int j;
  int i = (blockIdx.x + threadIdx.x);
  float t = 0.0f;
  for (j=0; j<Width; j++) {
    t += Md[i + j * Width] * Nd[j];
  Pd[i] = t;

extern "C" {
  void MatrixMultiplication(float *M, float *N, float *P) {
    const int Width= 100;
    int size = Width*Width*sizeof(float);
    float *Md, *Nd, *Pd;

    //Transfer M and N to device memory
    cudaMalloc((void**)&Md, size);
    cudaMalloc((void**)&Nd, size);

    //Allocate P on the device

    //Setup the execution configuration
    dim3 dimBlock(1,1);
    dim3 dimThread(1,1);

    //Launch the device computation threads!

    //Transfer P from device to host

    //Free device matrices

and it works fine with Width up to about size 100. After that, I get a "Memory not mapped" error.

Does anyone have any ideas on how I can fix this, please?

share|improve this question
The issue might be on the R side of things since the "Memory not mapped" error is what R will raise for a seg fault. Make sure you're not reading/writing beyond the boundaries of P. –  Roger Dahl Oct 2 '12 at 2:33
Each of the CUDA API functions you are calling also returns a status. You should check each one to make sure that no errors are occurring within the CUDA code, although is it very likely this is an R/host pointer problem. Also note your code won't work as written for width>512/1024/1536 depending on what GPU you are using. –  talonmies Oct 2 '12 at 6:57

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.