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!!