我正在尝试使用来自gesvd的cuSOLVER函数,我发现它比MATLAB中的svd函数慢得多,无论是使用double数组还是使用gpuArray。
C++代码(使用C++)
#include <stdio.h>
#include <stdlib.h>
#include <assert.h>
#include <cuda_runtime.h>
#include <cusolverDn.h>
// Macro for timing kernel runs
#define START_METER {\
cudaEvent_t start, stop;\
float elapsedTime;\
cudaEventCreate(&start);\
cudaEventRecord(start, 0);
#define STOP_METER cudaEventCreate(&stop);\
cudaEventRecord(stop, 0);\
cudaEventSynchronize(stop);\
cudaEventElapsedTime(&elapsedTime, start, stop);\
printf("Elapsed time : %f ms\n", elapsedTime);\
}
void cusolverSVD_Test()
{
const int m = 64;
const int rows = m;
const int cols = m;
/* | 3.5 0.5 0 |
* A = | 0.5 3.5 0 |
* | 0 0 2 |
*
*/
double A[rows*m];
for (int i = 0; i < cols; i++)
{
for (int j = 0; j < rows; j++)
{
A[i*rows + j] = (double)rand() / RAND_MAX;
if (i == j){
A[i*rows + j] += 1;
}
}
}
cusolverDnHandle_t handle;
cusolverDnCreate(&handle);
int lwork;
cusolverDnDgesvd_bufferSize(
handle,
rows,
cols,
&lwork);
double *d_A;
cudaMalloc(&d_A, sizeof(double)*rows*cols);
cudaMemcpy(d_A, A, sizeof(double)*rows*cols, cudaMemcpyHostToDevice);
double *d_S;
cudaMalloc(&d_S, sizeof(double)*rows);
double *d_U;
cudaMalloc(&d_U, sizeof(double)*rows*rows);
double *d_VT;
cudaMalloc(&d_VT, sizeof(double)*rows*rows);
double *d_work;
cudaMalloc(&d_work, sizeof(double)*lwork);
double *d_rwork;
cudaMalloc(&d_rwork, sizeof(double)*(rows - 1));
int *devInfo;
cudaMalloc(&devInfo, sizeof(int));
for (int t = 0; t < 10; t++)
{
signed char jobu = 'A';
signed char jobvt = 'A';
START_METER
cusolverDnDgesvd(
handle,
jobu,
jobvt,
rows,
cols,
d_A,
rows,
d_S,
d_U,
rows,
d_VT,
rows,
d_work,
lwork,
d_rwork,
devInfo);
STOP_METER
}
cudaFree(d_A);
cudaFree(d_rwork);
cudaFree(d_S);
cudaFree(d_U);
cudaFree(d_VT);
cudaFree(d_work);
}
int main()
{
cusolverSVD_Test();
}输出:
Elapsed time : 63.318016 ms
Elapsed time : 66.745316 ms
Elapsed time : 65.966530 ms
Elapsed time : 65.999939 ms
Elapsed time : 64.821053 ms
Elapsed time : 65.184547 ms
Elapsed time : 65.722916 ms
Elapsed time : 60.618786 ms
Elapsed time : 54.937569 ms
Elapsed time : 53.751263 ms
Press any key to continue . . .**使用svd函数的Matlab代码*
%% SVD on gpu
A = rand(64, 64) + eye(64);
tic
[~, ~, ~] = svd(A);
t = toc;
fprintf('CPU time: %f ms\n', t*1000);
d_A = gpuArray(A);
tic
[~, ~, ~] = svd(d_A);
t = toc;
fprintf('GPU time: %f ms\n', t*1000);
%% Output
% >> CPU time: 0.947754 ms
% >> GPU time: 2.168100 msMatlab使用更快的算法吗?还是我只是犯了些错误?我真的需要一个很好的实现/算法,我可以在CUDA中使用。
更新:使用1000 x 1000矩阵时的执行时间
C++:
3655 ms (Double Precision)
2970 ms (Single Precision)Matlab
CPU time: 280.641123 ms
GPU time: 646.033498 ms发布于 2017-01-22 16:30:52
SVD算法不能很好的并行化是一个众所周知的问题。您会发现需要非常大的数组才能看到双精度的好处。您可能会得到更好的结果单精度为您的GPU。如果只请求一个输出,也会得到更好的结果,因为单是计算奇异值就会使用更快的算法。
这也是高度依赖于您的GPU的质量。如果您正在使用图形卡(如GeForce GTX ),那么对于像SVD这样的算法,GPU在双精度方面确实不会有多大的好处。
从根本上讲,GPU内核的性能要比现代CPU内核低得多,它们以非常广泛的并行性弥补了这一点。SVD算法依赖于串行因式分解迭代。也许你可以通过重新思考代数来解决你的问题,这样你就不需要每次都计算完全因式分解了。
https://stackoverflow.com/questions/41760065
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