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I wrote a code to multiply two matrices, and it works when I use matrices of smaller sizes like 100 X 100, and even 5000 X 5000. However, when I use for 10000 X 10000 matrix, I get

 [user@usersystem]$ time ./matmul 
terminate called after throwing an instance of 'thrust::system::detail::bad_alloc'
  what():  std::exception: out of memory
Aborted (core dumped)

real    0m9.364s
user    0m7.264s
sys 0m1.058s

I compiled the code with all warnings enabled, and I found this issue:

[user@usersystem]$ nvcc matmul_cuda.cu -o matmul -G -g
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(230): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(230): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(230): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(230): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(230): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(230): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(230): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(230): Warning: Cannot tell what pointer points to, assuming global memory space
./matmul_cuda.cu(13): Warning: Cannot tell what pointer points to, assuming global memory space
./matmul_cuda.cu(13): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(345): Warning: Cannot tell what pointer points to, assuming global memory space
./matmul_cuda.cu(13): Warning: Cannot tell what pointer points to, assuming global memory space
./matmul_cuda.cu(13): Warning: Cannot tell what pointer points to, assuming global memory space
/usr/local/cuda-5.0/bin/../include/thrust/detail/internal_functional.h(345): Warning: Cannot tell what pointer points to, assuming global memory space

My code is as follows. The "global memory space" warning is occuring at line 13, which is the part where I say "return x*y;". I understand that the matrix is taking up the device memory to save the matrix, and hence the issue. How should I overcome this ? I checked this thread Previous SO question on this topic but I couldnt resolve my issue.

I use a NVIDIA Quadro 2000, with Thrust/CUDA 5.0.

#include<cstdlib>
#include<cublas_v2.h>
#include<thrust/host_vector.h>
#include<thrust/device_vector.h>
#include<thrust/sort.h>
#include<thrust/transform.h>

struct modarray
{
__host__  __device__
float operator()(float& x,float& y)
{
   return x*y;  //Line 13
}
};

int main(void)
{
int m = 10000;
int n = 10000;
thrust::host_vector<float> a(m*n,3.5);
thrust::device_vector<float> a_d(m*n,3.0);
thrust::device_vector<float> b_d(m*n,2.0);
thrust::device_vector<float> c_d(m*n,2.0);
thrust::transform(a_d.begin(),a_d.end(),b_d.begin(),c_d.begin(),modarray());
a = c_d;
for (int i=0;i<(10);i++)
{
 std::cout << a[i];
}


}

I have been having these issues in other codes I have written as well. Any solution to this would be grateful. If this is a limitation of the GPU capacity itself, how do programmers typically resolve this? Thanks.

share|improve this question
2  
bad_alloc means you are out of memory, it has nothing to do with the warning. –  Jared Hoberock Jun 15 '13 at 21:50
    
Yes, I know that. My question is if there is any workaround to solve large matrices such as this one, without getting this problem. Any suggestions? –  atmaere Jun 15 '13 at 21:53
2  
If your matrices are too large, I'd say that divide and conquer is the way to go. Just split your problem into subproblems, and solve those subproblems independently. –  BenC Jun 16 '13 at 4:09
2  
Each array uses about 400Mb of memory, and you have three, so the storage needed to 1.2Gb, plus the code and CUDA context overhead. Unless you have a GPU with 2Gb or more of RAM, I don't understand why you think there is a problem. –  talonmies Jun 16 '13 at 6:20
1  
Note that you can query the available memory of your GPU with cudaMemGetInfo (free memory and total memory). You can thus check if your data fits even if some other code (or another part of your program) is currently using some memory. –  BenC Jun 16 '13 at 14:01

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