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I'm trying the "hello world" program of CUDA programming: adding two vectors together. Here's the program I have tried:

#include <cuda.h>
#include <stdio.h> 
#define  SIZE 10

__global__  void vecAdd(float* A, float* B, float* C) 
{ 
   int i = threadIdx.x; 
   C[i] = A[i] + B[i]; 
} 

int  main() 
{ 
     float A[SIZE], B[SIZE], C[SIZE]; 
     float *devPtrA, *devPtrB, *devPtrC; 
     size_t memsize= SIZE * sizeof(float); 

     for (int i=0; i< SIZE; i++) {
        A[i] = i;
        B[i] = i;
     }

     cudaMalloc(&devPtrA, memsize); 
     cudaMalloc(&devPtrB, memsize); 
     cudaMalloc(&devPtrC, memsize); 
     cudaMemcpy(devPtrA, A, memsize,  cudaMemcpyHostToDevice); 
     cudaMemcpy(devPtrB, B, memsize,  cudaMemcpyHostToDevice); 

     vecAdd<<<1, SIZE>>>(devPtrA,  devPtrB, devPtrC); 
     cudaMemcpy(C, devPtrC, memsize,  cudaMemcpyDeviceToHost); 

     for (int i=0; i<SIZE; i++) 
         printf("C[%d]: %f + %f => %f\n",i,A[i],B[i],C[i]); 

     cudaFree(devPtrA); 
     cudaFree(devPtrB); 
     cudaFree(devPtrC); 
}

Compiled with:

nvcc cuda.cu

Output is this:

C[0]: 0.000000 + 0.000000 => 0.000000
C[1]: 1.000000 + 1.000000 => 0.000000
C[2]: 2.000000 + 2.000000 => 0.000000
C[3]: 3.000000 + 3.000000 => 0.000000
C[4]: 4.000000 + 4.000000 => 0.000000
C[5]: 5.000000 + 5.000000 => 0.000000
C[6]: 6.000000 + 6.000000 => 0.000000
C[7]: 7.000000 + 7.000000 => 0.000000
C[8]: 8.000000 + 8.000000 => 366987238703104.000000
C[9]: 9.000000 + 9.000000 => 0.000000

Every time I run it, I get a different answer for C[8], but the results for all the other elements are always 0.000000.

The Ubuntu 11.04 system a 64-bit Xeon server with 4 cores running the latest NVIDIA drivers (downloaded on Oct 4, 2012). The card is an EVGA GeForce GT 430 with 96 cores and 1GB of RAM.

What should I do to figure out what's going on?

share|improve this question
    
did you install cuda sdk from here? (not the toolkit) –  gokcehan Oct 5 '12 at 21:12
2  
My guess is CUDA fails to initialize. I recommended adding error checking to each and every CUDA API call. –  njuffa Oct 5 '12 at 21:13
    
@gokcehan I downloaded the driver, toolkit, and SDK from that website. I'm not sure what to do with the SDK, though. It appears to contain mostly documentation and sample code. –  Barry Brown Oct 5 '12 at 21:20
    
As I remember toolkit contains the compiler (nvcc) whereas SDK has the library. I remember having a similar problem because I didn't installed one of them. The strange thing is that it doesn't give you an error when you try to run without installing SDK. –  gokcehan Oct 5 '12 at 21:27
    
The SDK is not needed to compile and run CUDA code. If you use something from the SDK, such as cutil from some of the SDK's, then of course you need it. But your code doesn't appear to have any dependency on the SDK. Your toolkit installation is probably OK since you can compile with nvcc. Which leaves the GPU and driver. the comment from @njuffa is definitely recommended and is good practice always. You might also run nvidia-smi -a from a linux command line to see if the GPU is properly available. –  Robert Crovella Oct 5 '12 at 22:20

2 Answers 2

It seems that your drivers are not initialized, but not checking the cuda return codes is always a bad practice, you should avoid that. Here is simple function + Macro that you can use for cuda calls(quoted from Cuda by Example):

static void HandleError( cudaError_t err,
                         const char *file,
                         int line ) {
    if (err != cudaSuccess) {
        printf( "%s in %s at line %d\n", cudaGetErrorString( err ),
                file, line );
        exit( EXIT_FAILURE );
    }
}
#define HANDLE_ERROR( err ) (HandleError( err, __FILE__, __LINE__ ))

Now start calling your functions like:

HANDLE_ERROR(cudaMemcpy(...));
share|improve this answer
up vote 1 down vote accepted

Most likely cause: the NVIDIA drivers weren't loaded. On a headless Linux system, X Windows isn't running, so the drivers aren't loaded at boot time.

Run nvidia-smi -a as root to load them and get a confirmation in the form of a report.

Although the drivers are now loaded, they still need to be initialized every time a CUDA program is run. Put the drivers into persistent mode with nvidia-smi -pm 1 so they remain initialized all the time. Add this to a boot script (such as rc.local) so it happens at every boot.

share|improve this answer
    
It is worth pointing out that the solution to this problem has been explicitly covered in the Linux release notes and/or the Linux getting started PDF pretty much forever. –  talonmies Oct 9 '12 at 5:46
2  
That's good to know. If only the installer for the NVIDIA drivers had pointed me there. Instead, it said "see the documentation for your vendor distribution" and Ubuntu's docs assume everyone is running a GUI. –  Barry Brown Oct 9 '12 at 19:13

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