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I am trying to write my cuda code on multiple GPUs. Everything was working fine, until I started using constant memory. I will try to explain the structure of my code and the problem with a simple cuda example:

//Declare constant memory variable
__device__ __constant__ float *a_gpu_const;

extern "C" {

  __global_ void launch_kernel(){
       //Do something here
  }
 }

int main(){
    //Get device count=deviceCount
    ....
    //Declare host and device array pointers
    ....
    //Fill host arrays
    ....

    //Allocate device memory; I will call this step 1
    for (int i=0; i<deviceCount;++i){
         //Set device
         cudaSetDevice(i);

        //Allocate device memory
        cudaMalloc(...);
    }

    //Copy data from H To D, invoke kernel, and copy data from D To H
    //I will call this as Step 2
    for (int i=0; i<deviceCount;++i){
         //Set device
         cudaSetDevice(i);

         cudaMemcpy(a_gpu,a_h,sizeof(float)*N,cudaMemcpyHostToDevice);

         cudaMemcpyToSymbol(a_gpu_const,&a_gpu,sizeof(a_gpu));

         launch_kernel <<< ... >>> ();

         //Copy results back
         cudaMemcpy(....,cudaMemcpyDeviceToHost);

     }

     //Free device memory; Step 3
     for (int i=0; i<deviceCount;++i){
         //Set device
         cudaSetDevice(i);

         cudaFree(...); //Call this step 3.1
      }
      cudaFree(a_gpu);
      free(a_h);

}

When I run this code, it gives me an error saying "unspecified launch failure" at the place where I am freeing device memory at step 3.1.

However, if I merge steps 1 and 2 of the code, i.e., if I use only one "for" loop to allocate, copy data to device, invoke kernel, and copy data back to Host, it runs fine. Note that the problem only arises when I am trying to use constant memory, otherwise, the code works fine. Furthermore, the problem remains even if I use asynchronous copies and kernel executions.

I can not understand this behavior. Please help me to get this.

EDITED: Please download a very simple example code that I wrote to demonstrate this problem from the following link:

https://docs.google.com/file/d/0B5QLL4ig3LVqa0FRSXg4TFlIbFk/edit?pli=1

Note: I am compiling it using these flags: --ptxas-options=-v -arch sm_30 -Xptxas -dlcm=cg -Xcompiler -fopenmp --compiler-options "-O3"

Runtime gives error "unspecified launch failure" where the code is trying to copy data back from device to host. If I comment out this part, it gives error where I am using cudaFree(). The point is the error goes away if I merge Step 1 and 2 of the code.

Thanks M

share|improve this question
    
Can you post here a link to your code? –  dreamcrash Nov 15 '12 at 20:42
    
Does your actual code check the return value of all the CUDA calls? The "unspecified launch failure" comes from your kernel, not from step 3. Anyways, I think you have to have an array of a_gpu_const arrays, instead of a single one. –  Roger Dahl Nov 15 '12 at 21:16
    
Note that, according to @Tom, it is no longer necessary to use the technique you are using with __constant__ and cudaMemcpyToSymbol(). Simply using const qualifiers in the kernel parameter declaration will cause the compiler to pull the values through the constant cache. –  Roger Dahl Nov 15 '12 at 21:31
    
@Roger, I am checking return value of all the CUDA calls, including kernel (using getLastCudaError). Kernel executes fine. There is something else going on. I will add a link to my code as well. –  shadowfax Nov 15 '12 at 21:50
    
a_gpu_const array is needed as such in all the devices. It contains common data, which all devices should read to execute kernel. Therefore, it is a single array. –  shadowfax Nov 15 '12 at 21:52

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