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i have been studying about cuda.

In CUDA Programming guide, shared memory access time is faster than Global memory time.

so, i made code that perform matrix multiplication.

here is my code. version1 used global memory, version2 used shared memory

my gpu is tesla c2070 cuda sdk version 4.2


main code

#define Matrix_Width   9216
#define Matrix_Divide  4
#define Tile_Width     32
#define Ce_Size 4096

#if Matrix_Width == 9216
    #define Matrix_Size 9216*9216
#elif Matrix_Width == 12800
    #define Matrix_Size 12800*12800
#elif Matrix_Width == 15872
    #define Matrix_Size 15872*15872
#elif Matrix_Width == 18432
    #define Matrix_Size 18432*18432
#endif

float* H_Input1 = (float*)malloc( sizeof(float) * Matrix_Size );
float* H_Input2 = (float*)malloc( sizeof(float) * Matrix_Size );
float* H_Output = (float*)malloc( sizeof(float) * Matrix_Size );

for( int i=0 ; i < Matrix_Size ; i++ ){
    H_Input1[i] = 1.0f;
H_Input2[i] = 1.0f;
}
memset( H_Output, 0 , sizeof(float) * Matrix_Size );

float* D_Input1;
float* D_Input2;
float* D_Output;

cudaMalloc( (void**)&D_Input1, sizeof(float) * Matrix_Size );
cudaMalloc( (void**)&D_Input2, sizeof(float) * Matrix_Size );
cudaMalloc( (void**)&D_Output, sizeof(float) * Matrix_Size );
cudaMemcpy( D_Input1, H_Input1, sizeof(float) * Matrix_Size, cudaMemcpyHostToDevice );
cudaMemcpy( D_Input2, H_Input2, sizeof(float) * Matrix_Size, cudaMemcpyHostToDevice );
cudaMemcpy( D_Output, H_Output, sizeof(float) * Matrix_Size, cudaMemcpyHostToDevice );


event_pair Event;
start_timer( &Event );
dim3  dimGrid( Matrix_Width/Matrix_Divide/Tile_Width, Matrix_Width/Matrix_Divide/Tile_Width, 1 );
dim3 dimBlock( Tile_Width, Tile_Width, 1 );

kernel_global<< dimGrid, dimBlock>>>( D_Input1, D_Input2, D_Output );
stop_timer( &Event, "1GB mMemory Test\n" );
cudaMemcpy( H_Output, D_Output, sizeof(float) * Matrix_Size, cudaMemcpyDeviceToHost );

kernel version1

__global__ void kernel_global( float* Input1, float* Input2, float* Output ){

for( int i = 0 ; i < Matrix_Divide ; i++ ){
for( int j = 0 ; j < Matrix_Divide ; j++ ){

float Sum = 0;
int Row = (i * (Matrix_Width/Matrix_Divide)) + (blockIdx.y * Tile_Width) + threadIdx.y; 
int Col = (j * (Matrix_Width/Matrix_Divide)) + (blockIdx.x * Tile_Width) + threadIdx.x;

    for( int k = 0 ; k < Matrix_Width ; k++ ){
        Sum += Input1[ Row * Matrix_Width + k ] * Input2[ k * Matrix_Width + Col ];
    }
    Output[ Row*Matrix_Width+Col] = Sum;
    }
    }
}

kernel version2

    __global__ void kernel_shared( float* Input1, float* Input2, float* Output ){

    __shared__ float Input1_s[Tile_Width][Tile_Width];
    __shared__ float Input2_s[Tile_Width][Tile_Width];

    int Bx = blockIdx.x;
    int By = blockIdx.y;
    int Tx = threadIdx.x;
    int Ty = threadIdx.y;

    for( int i = 0 ; i < Matrix_Divide ; i++ ){
        for( int j = 0 ; j < Matrix_Divide ; j++ ){

            float Sum = 0;
            int Row = (i * (Matrix_Width/Matrix_Divide)) + (By * Tile_Width) + Ty;
            int Col = (j * (Matrix_Width/Matrix_Divide)) + (Bx * Tile_Width) + Tx;


            for( int m = 0 ; m < Matrix_Width/Tile_Width ; m++ ){

                Input1_s[Ty][Tx] = Input1[ Row * Matrix_Width + ( m * Tile_Width + Tx ) ];
                Input2_s[Ty][Tx] = Input2[ ( m * Tile_Width + Ty ) * Matrix_Width + Col ];
                __syncthreads();


                for( int k = 0 ; k < Tile_Width; k++ ){
                    Sum += Input1_s[Ty][k] * Input2_s[k][Tx];
                }
                __syncthreads();
            }
            Output[ Row*Matrix_Width+Col] = Sum;
        }
    }
}

this code made matrix that Width = 9216

it can`t calculate at a time. because max count of block is 65535 and threads 1024

so i divided matrix width using 4 so matrix is divide 16 chunks .

1 chunk can calculate at a time.

so i used loop that is loopcount is 16 ( i * j = 16 )

and a chunk is divided block and thread.. ( tile_width = 32 )

test result is so strange.

version 1 took 90sec

version 2 took 130sec

i can`t understand this result

i think that shared memory element is resued in tile...

why version1 faster than version2?

best regards!!

share|improve this question
    
What is CUDA version? What is your GPU? –  ahmad Sep 21 '12 at 7:57
    
my gpu is tesla c2070 sdk version is 4.2 –  오승택 Sep 21 '12 at 8:07

1 Answer 1

up vote 3 down vote accepted

The Tesla C2070 is a compute capability 2.0 device that caches global memory accesses. So in both cases the inner loop operates (apart from the first iteration) in on-chip memory.

The only difference is that the additional code in the second version to load data into shared memory costs extra time, while in the first version this work is done in hardware by the cache logic.

Manually caching data in shared memory is only worthwhile on compute capability 1.x devices, or if you have a better idea of which data is getting reused than the LRU (least recently used) logic of the hardware cache.

share|improve this answer
    
Good answer. The latency of shared memory is ~100 cycles in Fermi. According to the results, it looks L2 and shared memory are at the same order of latency. Under such architecture it does not worst to use shared memory for this code (a few data reuse from shared memory). –  ahmad Sep 21 '12 at 10:47

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