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 having difficulty with a CUDA program I'm trying to write. I have an array of about 524k floating point values (1.0) and I'm using reduction technique to add all the values. The problem works fine if I only want to run it once, but I really want to run the kernel several times so that I can sum up over 1 billion values eventually.

The reason I am doing this in chunks of 524k is that I always get zeroes back when I go over about 1 million on the gpu. That shouldn't exceed the memory on the card, but it always fails at that point.

Anyway, when I loop the kernel only one time, everything works fine. That is, no looping is fine. When I go run with loops, it comes back with zeroes. I suspect I'm going out of bounds some place, but I cannot figure it out. It's driving me nuts.

Any help is appreciated,

Thanks,

Al

Here is the code:

#include <stdio.h>
#include <stdlib.h>
#include "cutil.h"

#define TILE_WIDTH     512
#define WIDTH          524288 
//#define WIDTH          1048576
#define MAX_WIDTH      524288

#define BLOCKS         WIDTH/TILE_WIDTH

__global__ void PartSum(float * V_d)
{
   int tx = threadIdx.x;
   int bx = blockIdx.x;

   __shared__ float partialSum[TILE_WIDTH];

   for(int i = 0; i < WIDTH/TILE_WIDTH; ++i)
   {
      partialSum[tx] = V_d[bx * TILE_WIDTH + tx];
      __syncthreads();


      for(unsigned int stride = 1; stride < blockDim.x; stride *= 2)
      {
         __syncthreads();
         if(tx % (2 * stride) == 0)
            partialSum[tx] += partialSum[tx + stride];
      }
   }

   if(tx % TILE_WIDTH == 0)
      V_d[bx * TILE_WIDTH + tx] = partialSum[tx];
}

int main(int argc, char * argv[])
{
   float * V_d;
   float * V_h;
   float * R_h;
   float * Result;
   float * ptr;

   dim3 dimBlock(TILE_WIDTH,1,1);
   dim3 dimGrid(BLOCKS,1,1);

   // Allocate memory on Host
   if((V_h = (float *)malloc(sizeof(float) * WIDTH)) == NULL)
   {
      printf("Error allocating memory on host\n");
      exit(-1);
   }

   if((R_h = (float *)malloc(sizeof(float) * MAX_WIDTH)) == NULL)
   {
      printf("Error allocating memory on host\n");
      exit(-1);
   }

   // If MAX_WIDTH is not a multiple of WIDTH, this won't work
   if(WIDTH % MAX_WIDTH != 0)
   {
      printf("The width of the vector must be a multiple of the maximum width\n");
      exit(-3);
   }

   // Initialize memory on host with 1.0f
   ptr = V_h;
   for(long long i = 0; i < WIDTH; ++i)
   {
      *ptr = 1.0f;
      ptr = &ptr[1];
   }

   ptr = V_h;

   // Allocate memory on device in global memory
   cudaMalloc((void**) &V_d, MAX_WIDTH*(sizeof(float)));
   float Pvalue = 0.0f;
   for(int i = 0; i < WIDTH/MAX_WIDTH; ++i)
   {


   if((Result = (float *) malloc(sizeof(float) * WIDTH)) == NULL)
   {
      printf("Error allocating memory on host\n");
      exit(-4);
   }

   for(int j = 0; j < MAX_WIDTH; ++j)
   {
      Result[j] = *ptr;
      ptr = &ptr[1];
   }

      ptr = &V_h[i*MAX_WIDTH];
      // Copy portion of data to device
      cudaMemcpy(V_d, Result, MAX_WIDTH*(sizeof(float)), cudaMemcpyHostToDevice);

      // Execute Kernel
      PartSum<<<dimGrid, dimBlock>>>(V_d);

      // Copy data back down to host
      cudaMemcpy(R_h, V_d, MAX_WIDTH*(sizeof(float)), cudaMemcpyDeviceToHost);

      for(int i = 0; i < MAX_WIDTH; i += TILE_WIDTH)
      {
         Pvalue += R_h[i];
      }
printf("Pvalue == %f\n", Pvalue);

  free(Result);


   }

//   printf("WIDTH == %d items\n", WIDTH);
//   printf("Value: %f\n", Pvalue);

   cudaFree(V_d);
   free(V_h);
   free(R_h);
   return(1);
}

Okay, I think I've narrowed down the problem to be with V_d on the device. I suspect I'm exceeding the bounds of the array some how. If I allocate 2 times the amount of memory I actually need, the program finish with the expected results. The problem is, I cannot figure out what is causing the problems.

Al

share|improve this question
    
Is there a particular reason you are using cudaMemcpyDeviceToHost ? Since you want to more iterations of your kernel, you might consider using cudaMemcpyDeviceToDevice instead. –  karlphillip Nov 29 '11 at 21:27
    
I can't believe you actually need CUDA for this - it's going to be pretty much I/O dominated since you just have one add operation per point - you might as well just use the CPU. Have you actually benchmarked a CPU implementation of this implementation ? How much faster do you think a CUDA implementation might be, given that it's all data movement and virtually no computation ? –  Paul R Nov 29 '11 at 21:53
    
This is a learning experiment for me. I realize this is not efficient. –  Al H. Nov 29 '11 at 22:39
    
@karlphillip: I'm not sure what you mean. –  Al H. Nov 30 '11 at 15:11
    
You are transferring memory to the GPU back and forth. I think it's unecessary to transfer data to the CPU on each iteration. –  karlphillip Nov 30 '11 at 15:15

2 Answers 2

I think I spotted the first bug here:

  if(tx % TILE_WIDTH == 0)
      V_d[bx * TILE_WIDTH + tx] = partialSum[tx];

The range of tx is 0-511 and it never reached 512. So the if condition will never be true. You can write it as if(tx % (TILE_WIDTH-1) == 0).

share|improve this answer
    
Ah! I didn't see that! Thanks. –  Al H. Nov 30 '11 at 19:12

First, thanks to everyone who gave this a look and any help.

Second, I finally figured out what I was doing wrong. BLOCKS should have been defined as MAX_WIDTH/TILE_WIDTH, not WIDTH/TILE_WIDTH. Stupid, silly mistake from my part.

Thanks again.

share|improve this answer

Your Answer

 
discard

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

Not the answer you're looking for? Browse other questions tagged or ask your own question.