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 a CUDA beginner and reading on some thrust tutorials.I write a simple but terribly organized code and try to figure out the acceleration of thrust.(is this idea correct?). I try to add two vectors (with 10000000 int) to another vector, by adding array on cpu and adding device_vector on gpu.

Here is the thing:

#include <iostream>
#include "cuda.h"
#include "cuda_runtime.h"
#include "device_launch_parameters.h"
#include <thrust/device_vector.h>
#include <thrust/host_vector.h>

#define N 10000000
int main(void)
{
    float time_cpu;
    float time_gpu;
    int *a = new int[N];
    int *b = new int[N];
    int *c = new int[N];
    for(int i=0;i<N;i++)
    {
        a[i]=i;
        b[i]=i*i;
    }
    clock_t start_cpu,stop_cpu;
    start_cpu=clock();
    for(int i=0;i<N;i++)
    {
        c[i]=a[i]+b[i];
    }
    stop_cpu=clock();   
    time_cpu=(double)(stop_cpu-start_cpu)/CLOCKS_PER_SEC*1000;
    std::cout<<"Time to generate (CPU):"<<time_cpu<<std::endl;
    thrust::device_vector<int> X(N);
    thrust::device_vector<int> Y(N);
    thrust::device_vector<int> Z(N);
    for(int i=0;i<N;i++)
    {
        X[i]=i;
        Y[i]=i*i;
    }
    cudaEvent_t start, stop;
    cudaEventCreate(&start);
    cudaEventCreate(&stop);
    cudaEventRecord(start,0);       
    thrust::transform(X.begin(), X.end(),
        Y.begin(),
        Z.begin(),
        thrust::plus<int>());
    cudaEventRecord(stop,0);
    cudaEventSynchronize(stop);
    float elapsedTime;
    cudaEventElapsedTime(&elapsedTime,start,stop);
    std::cout<<"Time to generate (thrust):"<<elapsedTime<<std::endl;
    cudaEventDestroy(start);
    cudaEventDestroy(stop); 
    getchar();
    return 0;
}

The CPU results appear really fast, But gpu runs REALLY slow on my machine(i5-2320,4G,GTX 560 Ti), CPU time is about 26,GPU time is around 30! Did I just do the thrust wrong with stupid errors in my code? or was there a deeper reason?

As a C++ rookie, I checked my code over and over and still got a slower time on GPU with thrust, so I did some experiments to show the difference of calculating vectorAdd with five different approaches. I use windows API QueryPerformanceFrequency() as unified time measurement method.

Each of the experiments looks like this:

f = large_interger.QuadPart;  
QueryPerformanceCounter(&large_interger);  
c1 = large_interger.QuadPart; 

for(int j=0;j<10;j++)
{
    for(int i=0;i<N;i++)//CPU array adding
    {
        c[i]=a[i]+b[i];
    }
}
QueryPerformanceCounter(&large_interger);  
c2 = large_interger.QuadPart;  
printf("Time to generate (CPU array adding) %lf ms\n", (c2 - c1) * 1000 / f);

and here is my simple __global__ function for GPU array adding:

__global__ void add(int *a, int *b, int *c)
{
    int tid=threadIdx.x+blockIdx.x*blockDim.x;
    while(tid<N)
    {
        c[tid]=a[tid]+b[tid];
        tid+=blockDim.x*gridDim.x;
    }
}

and the function is called as:

for(int j=0;j<10;j++)
{
    add<<<(N+127)/128,128>>>(dev_a,dev_b,dev_c);//GPU array adding
}   

I add vector a[N] and b[N] to vector c[N] for a loop of 10 times by:

  1. add array on CPU
  2. add std::vector on CPU
  3. add thrust::host_vector on CPU
  4. add thrust::device_vector on GPU
  5. add array on GPU. and here is the result

with N=10000000

and I get results:

  1. CPU array adding 268.992968ms
  2. CPU std::vector adding 1908.013595ms
  3. CPU Thrust::host_vector adding 10776.456803ms
  4. GPU Thrust::device_vector adding 297.156610ms
  5. GPU array adding 5.210573ms

And this confused me, I'm not familiar with the implementation of template library. Did the performance really differs so much between containers and raw data structures?

share|improve this question
add comment

3 Answers

up vote 7 down vote accepted

Most of the execution time is being spent in your loop that is initializing X[i] and Y[i]. While this is legal, it's a very slow way to initialize large device vectors. It would be better to create host vectors, initialize them, then copy those to the device. As a test, modify your code like this (right after the loop where you are initializing the device vectors X[i] and Y[i]):

}  // this is your line of code
std::cout<< "Starting GPU run" <<std::endl;  //add this line
cudaEvent_t start, stop;   //this is your line of code

You will then see that the GPU timing results appear almost immediately after that added line prints out. So all of the time you're waiting is spent in initializing those device vectors directly from host code.

When I run this on my laptop, I get a CPU time of about 40 and a GPU time of about 5, so the GPU is running about 8 times faster than the CPU for the sections of code you are actually timing.

If you create X and Y as host vectors, and then create analogous d_X and d_Y device vectors, the overall execution time will be shorter, like so:

thrust::host_vector<int> X(N);     
thrust::host_vector<int> Y(N);     
thrust::device_vector<int> Z(N);     
for(int i=0;i<N;i++)     
{     
    X[i]=i;     
    Y[i]=i*i;     
}   
thrust::device_vector<int> d_X = X;
thrust::device_vector<int> d_Y = Y;

and change your transform call to:

thrust::transform(d_X.begin(), d_X.end(),      
    d_Y.begin(),      
    Z.begin(),      
    thrust::plus<int>()); 

OK so you've now indicated that the CPU run measurement is faster than the GPU measurement. Sorry I jumped to conclusions. My laptop is an HP laptop with a 2.6GHz core i7 and a Quadro 1000M gpu. I'm running centos 6.2 linux. A few comments: if you're running any heavy display tasks on your GPU, that can detract from performance. Also, when benchmarking these things it's common practice to use the same mechanism for comparison, you can use cudaEvents for both if you want, it can time CPU code the same as GPU code. Also, it's common practice with thrust to do a warm up run that is untimed, then repeat the test for a measurement, and likewise it's common practice to run the test 10 times or more in a loop, then divide to get an average. In my case, I can tell the clocks() measurement is pretty coarse because successive runs will give me 30, 40 or 50. On the GPU measurement I get something like 5.18256. Some of these things may help, but I can't say exactly why your results and mine differ so much (on the GPU side).

OK I did another experiment. The compiler will make a big difference on CPU side. I compiled with -O3 switch and the CPU time dropped to 0. Then I converted the CPU timing measurement from the clocks() method to cudaEvents, and I got a CPU measured time of 12.4 (with -O3 optimization) and still 5.1 on GPU side.

Your mileage will vary based on timing method and which compiler you are using on the CPU side.

share|improve this answer
    
I don't see him timing the initialization part. So I don't think thats the problem. –  Pavan Yalamanchili Sep 27 '12 at 16:02
    
When you actually run the code, the timing comes out with sensible numbers, i.e. the reported gpu time is faster than the reported cpu time, as I mentioned in my answer. I don't think that's the problem either. I believe the OP is getting confused because the overall execution time is long. –  Robert Crovella Sep 27 '12 at 16:20
    
I know the initialization part can be really slow, and thanks for your advice of creating a host_vector first. But the problem is that on my computer the CPU time is about 26,GPU time is around 30! (sorry i did not make this clear in my question, I've edited that) I also changed the Y[i]=i*i and`c[i]=i*i` to Y[i]=i and c[i]=i . It's weird that i was wondering if the GPU time is somehow multiplied by 10…How did you run the code on your laptop? @Robert @gpu –  Tony Sep 28 '12 at 0:23
    
added some response in my "answer" posting –  Robert Crovella Sep 28 '12 at 0:56
    
@Robert I also engaged with the 0 ms problem. I've done some experiments too and edited my question. you may have a look. –  Tony Sep 28 '12 at 3:00
add comment

I am running similar test recently using CUDA Thrust on my Quadro 1000m. I use the thrust::sort_by_key as a benchmark to test its performance and the result is too good to convince my boos.It takes 100+ms to sort 512MB pairs.

For your problem, I am confused for 2 things.

(1) Why you multiple this time_cpu by 1000? Without the 1000, it is already in seconds.

time_cpu=(double)(stop_cpu-start_cpu)/CLOCKS_PER_SEC*1000;

(2) And, by mentioning 26, 30, 40, do you mean seconds or ms? The 'cudaEvent' report elapsed time in 'ms' not 's'.

share|improve this answer
add comment

First, Y[i]=i*i; does not fit in an integer for 10M elements. Integers holds roughly 1e10 and your code needs 1e14.

Second, it looks like the timing of transform is correct and should be faster than the CPU, regardless of which library you're using. Robert's suggestion to initialize vectors on CPU and then transfer to GPU is a good one for this case.

Third, since we can't do the integer multiple, below is some simpler CUDA library code (using ArrayFire that I work on) to do similar with floats, for your benchmarking:

int n = 10e6;
array x = array(seq(n));
array y = x * x;
timer t = timer::tic();
array z = x + y;
af::eval(z); af::sync();
printf("elapsed seconds: %g\n", timer::toc( t));

Good luck!

share|improve this answer
add comment

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.