summaryrefslogtreecommitdiff
path: root/cuda-kernels
diff options
context:
space:
mode:
authoraamir <[email protected]>2018-06-02 19:51:50 -0700
committeraamir <[email protected]>2018-06-02 19:51:50 -0700
commit708031c0274a730dfd99820fd49351785a60e2d7 (patch)
tree7f430125123e4316848983ee6b2174aa498bd4b6 /cuda-kernels
parent57c32a360779c0b9899e692a0d60e7dbed6bb984 (diff)
mma working for type32_32
Diffstat (limited to 'cuda-kernels')
-rwxr-xr-xcuda-kernels/Makefile4
-rw-r--r--cuda-kernels/tensor_core.cu57
-rw-r--r--cuda-kernels/tensorcore_type32_32.cu202
3 files changed, 230 insertions, 33 deletions
diff --git a/cuda-kernels/Makefile b/cuda-kernels/Makefile
index 673460f..73a4f0c 100755
--- a/cuda-kernels/Makefile
+++ b/cuda-kernels/Makefile
@@ -1,5 +1,5 @@
-all: tensor_core.cu
- nvcc --gpu-architecture=compute_70 --gpu-code=compute_70 -lcudart -g -o tensor_core tensor_core.cu
+all: tensorcore_type32_32.cu
+ nvcc --gpu-architecture=compute_70 --gpu-code=compute_70 -lcudart -g -o tensor_core tensorcore_type32_32.cu
# nvcc -arch=sm_70 -lcudart -g -o tensor_core tensor_core.cu
.PHONY:
diff --git a/cuda-kernels/tensor_core.cu b/cuda-kernels/tensor_core.cu
index d5c1b40..b7090c4 100644
--- a/cuda-kernels/tensor_core.cu
+++ b/cuda-kernels/tensor_core.cu
@@ -132,11 +132,7 @@ int main(int argc, char* argv[]) {
cudaErrCheck(cudaEventCreate(&startWMMA));
cudaErrCheck(cudaEventCreate(&stopWMMA));
-
-
-
// Use tensor cores
-
cudaErrCheck(cudaMalloc((void**)&a_fp32, MATRIX_M * MATRIX_K * sizeof(float)));
cudaErrCheck(cudaMalloc((void**)&b_fp32, MATRIX_K * MATRIX_N * sizeof(float)));
@@ -151,8 +147,6 @@ int main(int argc, char* argv[]) {
a_host_wmma = (float*)malloc(MATRIX_M * MATRIX_K * sizeof(float));
b_host_wmma = (float*)malloc(MATRIX_K * MATRIX_N * sizeof(float));
-
-
// printf("a_fp32\n");
for(int m=0;m<MATRIX_M;m++){
for(int n=0;n<MATRIX_K;n++){
@@ -160,13 +154,14 @@ int main(int argc, char* argv[]) {
}
//printf(";\n");
}
+
// printf("b_fp32\n");
for(int m=0;m<MATRIX_K;m++){
for(int n=0;n<MATRIX_N;n++){
b_host_wmma[m*MATRIX_N+n]=(m*MATRIX_N+n)%10;
-// printf("%f ",b_host_wmma[m*MATRIX_N+n]);
+ // printf("%f ",b_host_wmma[m*MATRIX_N+n]);
}
-// printf(";\n");
+ // printf(";\n");
}
cudaErrCheck(cudaMemcpy(a_fp32,a_host_wmma, MATRIX_M * MATRIX_K * sizeof(float), cudaMemcpyHostToDevice));
cudaErrCheck(cudaMemcpy(b_fp32,b_host_wmma, MATRIX_K * MATRIX_N * sizeof(float), cudaMemcpyHostToDevice));
@@ -215,36 +210,36 @@ int main(int argc, char* argv[]) {
cudaErrCheck(cudaMemcpy(c_host_wmma, c_wmma, MATRIX_M * MATRIX_N * sizeof(float), cudaMemcpyDeviceToHost));
// printf("c_host\n");
// for(int m=0;m<MATRIX_M;m++){
-// for(int n=0;n<MATRIX_N;n++){
-// printf("%f ",c_host_wmma[m*MATRIX_N+n]);
-// }
-// printf(";\n");
+ //for(int n=0;n<MATRIX_N;n++){
+ //printf("%f ",c_host_wmma[m*MATRIX_N+n]);
+ //}
+ //printf(";\n");
// }
- float wmmaTime;
- cudaErrCheck(cudaEventSynchronize(stopWMMA));
- cudaErrCheck(cudaEventElapsedTime(&wmmaTime, startWMMA, stopWMMA));
- printf("wmma took %fms\n", wmmaTime);
- //printf("Clock=%d",stopWMMA-startWMMA);
- printf("\nFor a faster code using wmma you should check out the cudaTensorCoreGemm sample in the CUDA Toolkit.\nThis code was written as a demo only!\n\n");
+ float wmmaTime;
+ cudaErrCheck(cudaEventSynchronize(stopWMMA));
+ cudaErrCheck(cudaEventElapsedTime(&wmmaTime, startWMMA, stopWMMA));
+ printf("wmma took %fms\n", wmmaTime);
+ //printf("Clock=%d",stopWMMA-startWMMA);
+ printf("\nFor a faster code using wmma you should check out the cudaTensorCoreGemm sample in the CUDA Toolkit.\nThis code was written as a demo only!\n\n");
- cudaErrCheck(cudaEventDestroy(startWMMA));
- cudaErrCheck(cudaEventDestroy(stopWMMA));
+ cudaErrCheck(cudaEventDestroy(startWMMA));
+ cudaErrCheck(cudaEventDestroy(stopWMMA));
-
- cudaErrCheck(cudaFree(a_fp32));
- cudaErrCheck(cudaFree(b_fp32));
- cudaErrCheck(cudaFree(a_fp16));
- cudaErrCheck(cudaFree(b_fp16));
+
+ cudaErrCheck(cudaFree(a_fp32));
+ cudaErrCheck(cudaFree(b_fp32));
+ cudaErrCheck(cudaFree(a_fp16));
+ cudaErrCheck(cudaFree(b_fp16));
- cudaErrCheck(cudaFree(c));
- cudaErrCheck(cudaFree(c_wmma));
-
- free(c_host_wmma);
+ cudaErrCheck(cudaFree(c));
+ cudaErrCheck(cudaFree(c_wmma));
+
+ free(c_host_wmma);
- cudaErrCheck(cudaDeviceReset());
- return 0;
+ cudaErrCheck(cudaDeviceReset());
+ return 0;
}
diff --git a/cuda-kernels/tensorcore_type32_32.cu b/cuda-kernels/tensorcore_type32_32.cu
new file mode 100644
index 0000000..0d26163
--- /dev/null
+++ b/cuda-kernels/tensorcore_type32_32.cu
@@ -0,0 +1,202 @@
+#include <stdio.h>
+#include <curand.h>
+
+// Define some error checking macros.
+#define cudaErrCheck(stat) { cudaErrCheck_((stat), __FILE__, __LINE__); }
+void cudaErrCheck_(cudaError_t stat, const char *file, int line) {
+ if (stat != cudaSuccess) {
+ fprintf(stderr, "CUDA Error: %s %s %d\n", cudaGetErrorString(stat), file, line);
+ }
+}
+
+#define curandErrCheck(stat) { curandErrCheck_((stat), __FILE__, __LINE__); }
+void curandErrCheck_(curandStatus_t stat, const char *file, int line) {
+ if (stat != CURAND_STATUS_SUCCESS) {
+ fprintf(stderr, "cuRand Error: %d %s %d\n", stat, file, line);
+ }
+}
+
+#include <mma.h>
+using namespace nvcuda;
+
+// Must be multiples of 16 for wmma code to work
+#define MATRIX_M (16)
+#define MATRIX_N (16)
+#define MATRIX_K (16)
+
+
+// The only dimensions currently supported by WMMA
+const int WMMA_M = 16;
+const int WMMA_N = 16;
+const int WMMA_K = 16;
+
+__global__ void wmma_example(half *a, half *b, float *c,float *d_fp16, int M, int N, int K) {
+ //unsigned int start_time=0,end_time=0;
+ //start_time=clock();
+
+ // Declare the fragments
+ wmma::fragment<wmma::matrix_a, WMMA_M, WMMA_N, WMMA_K, half, wmma::col_major> a_frag;
+ wmma::fragment<wmma::matrix_b, WMMA_M, WMMA_N, WMMA_K, half, wmma::col_major> b_frag;
+ wmma::fragment<wmma::accumulator, WMMA_M, WMMA_N, WMMA_K, float> c_frag;
+
+ // Bounds checking
+ wmma::load_matrix_sync(a_frag, a, K);
+ wmma::load_matrix_sync(b_frag, b, K);
+ wmma::load_matrix_sync(c_frag, c, N,wmma::mem_col_major);
+ wmma::mma_sync(c_frag, a_frag, b_frag, c_frag);
+
+ wmma::store_matrix_sync(d_fp16, c_frag, N, wmma::mem_col_major);
+ //printf("clock=%d",end_time-start_time);
+}
+
+__global__ void convertFp32ToFp16 (half *out, float *in, int n) {
+ int idx = blockDim.x * blockIdx.x + threadIdx.x;
+ if (idx < n) {
+ out[idx] = in[idx];
+ }
+}
+__global__ void convertFp16ToFp32 (float *out, half *in, int n) {
+ int idx = blockDim.x * blockIdx.x + threadIdx.x;
+ if (idx < n) {
+ out[idx] = in[idx];
+ }
+}
+
+int main(int argc, char* argv[]) {
+ float *a_fp32;
+ float *b_fp32;
+ float *c_fp32;
+ float *d_fp32;
+
+ half *a_fp16;
+ half *b_fp16;
+ // half *c_fp16;
+ // half *d_fp16;
+
+ float *a_host_wmma;
+ float *b_host_wmma;
+ float *c_host_wmma;
+ float *d_host_wmma;
+ float *d_cal_host_wmma;
+
+ cudaEvent_t startWMMA;
+ cudaEvent_t stopWMMA;
+
+
+ cudaErrCheck(cudaEventCreate(&startWMMA));
+ cudaErrCheck(cudaEventCreate(&stopWMMA));
+
+ // Use tensor cores
+ cudaErrCheck(cudaMalloc((void**)&a_fp32, MATRIX_M * MATRIX_K * sizeof(float)));
+ cudaErrCheck(cudaMalloc((void**)&b_fp32, MATRIX_K * MATRIX_N * sizeof(float)));
+ cudaErrCheck(cudaMalloc((void**)&c_fp32, MATRIX_K * MATRIX_N * sizeof(float)));
+ cudaErrCheck(cudaMalloc((void**)&d_fp32, MATRIX_K * MATRIX_N * sizeof(float)));
+ cudaErrCheck(cudaMalloc((void**)&a_fp16, MATRIX_M * MATRIX_K * sizeof(half)));
+ cudaErrCheck(cudaMalloc((void**)&b_fp16, MATRIX_K * MATRIX_N * sizeof(half)));
+ //cudaErrCheck(cudaMalloc((void**)&c_fp16, MATRIX_K * MATRIX_N * sizeof(half)));
+ //cudaErrCheck(cudaMalloc((void**)&d_fp16, MATRIX_K * MATRIX_N * sizeof(half)));
+
+
+ a_host_wmma = (float*)malloc(MATRIX_M * MATRIX_K * sizeof(float));
+ b_host_wmma = (float*)malloc(MATRIX_K * MATRIX_N * sizeof(float));
+ c_host_wmma = (float*)malloc(MATRIX_M * MATRIX_N * sizeof(float));
+ d_host_wmma = (float*)malloc(MATRIX_M * MATRIX_N * sizeof(float));
+ d_cal_host_wmma = (float*)malloc(MATRIX_M * MATRIX_N * sizeof(float));
+
+ //printf("a_fp32\n");
+ for(int m=0;m<MATRIX_M;m++){
+ for(int n=0;n<MATRIX_K;n++){
+ a_host_wmma[m*MATRIX_K+n]=(m*MATRIX_K+n)%10;
+ // printf("%f ",a_host_wmma[m*MATRIX_K+n]);
+ }
+ //printf(";\n");
+ }
+
+ //printf("b_fp32\n");
+ for(int m=0;m<MATRIX_K;m++){
+ for(int n=0;n<MATRIX_N;n++){
+ b_host_wmma[m*MATRIX_N+n]=(m*MATRIX_N+n)%10;
+ // printf("%f ",b_host_wmma[m*MATRIX_N+n]);
+ }
+ // printf(";\n");
+ }
+
+ //printf("c_fp32\n");
+ for(int m=0;m<MATRIX_M;m++){
+ for(int n=0;n<MATRIX_N;n++){
+ c_host_wmma[m*MATRIX_N+n]=(m*MATRIX_N+n)%10;
+ d_cal_host_wmma[m*MATRIX_N+n]=0;
+ // printf("%f ",c_host_wmma[m*MATRIX_N+n]);
+ }
+ }
+ for(int m=0;m<MATRIX_M;m++){
+ for(int n=0;n<MATRIX_N;n++){
+ for(int k=0;k<MATRIX_K;k++){
+ d_cal_host_wmma[m*MATRIX_N+n]+= a_host_wmma[m*MATRIX_K+k]*b_host_wmma[k*MATRIX_K+n];
+ }
+ d_cal_host_wmma[m*MATRIX_N+n]+=c_host_wmma[m*MATRIX_N+n];
+ }
+ }
+
+
+ cudaErrCheck(cudaMemcpy(a_fp32,a_host_wmma, MATRIX_M * MATRIX_K * sizeof(float), cudaMemcpyHostToDevice));
+ cudaErrCheck(cudaMemcpy(b_fp32,b_host_wmma, MATRIX_K * MATRIX_N * sizeof(float), cudaMemcpyHostToDevice));
+ cudaErrCheck(cudaMemcpy(c_fp32,c_host_wmma, MATRIX_M * MATRIX_N * sizeof(float), cudaMemcpyHostToDevice));
+
+ convertFp32ToFp16 <<< (MATRIX_M * MATRIX_K + 255) / 256, 256 >>> (a_fp16, a_fp32, MATRIX_M * MATRIX_K);
+ convertFp32ToFp16 <<< (MATRIX_K * MATRIX_N + 255) / 256, 256 >>> (b_fp16, b_fp32, MATRIX_K * MATRIX_N);
+ //convertFp32ToFp16 <<< (MATRIX_M * MATRIX_N + 255) / 256, 256 >>> (c_fp16, c_fp32, MATRIX_K * MATRIX_N);
+
+ printf("\nM = %d, N = %d, K = %d. \n", MATRIX_M, MATRIX_N, MATRIX_K);
+
+ printf("Running with wmma...\n");
+ cudaErrCheck(cudaEventRecord(startWMMA));
+ wmma_example <<< 1, 32>>> (a_fp16, b_fp16, c_fp32, d_fp32 , MATRIX_M, MATRIX_N, MATRIX_K);
+ cudaErrCheck(cudaEventRecord(stopWMMA));
+ cudaErrCheck(cudaEventSynchronize(stopWMMA));
+
+ // Error checking
+ printf("\nChecking results...\n");
+ cudaErrCheck(cudaMemcpy(d_host_wmma, d_fp32, MATRIX_M * MATRIX_N * sizeof(float), cudaMemcpyDeviceToHost));
+
+ printf("Results verified: cublas and WMMA agree.\n\n");
+ float wmmaTime;
+ cudaErrCheck(cudaEventElapsedTime(&wmmaTime, startWMMA, stopWMMA));
+ printf("wmma took %fms\n", wmmaTime);
+
+ cudaErrCheck(cudaEventDestroy(startWMMA));
+ cudaErrCheck(cudaEventDestroy(stopWMMA));
+
+ printf("D_CALCULATED\n");
+ for(int m=0;m<MATRIX_M;m++){
+ for(int n=0;n<MATRIX_N;n++){
+ printf("%.2f,",d_cal_host_wmma[m*MATRIX_N+n]);
+ }
+ printf("\n");
+ }
+ printf("D_WMMA\n");
+ for(int m=0;m<MATRIX_M;m++){
+ for(int n=0;n<MATRIX_N;n++){
+ printf("%.2f,",d_host_wmma[m*MATRIX_N+n]);
+ }
+ printf("\n");
+ }
+
+ cudaErrCheck(cudaFree(a_fp32));
+ cudaErrCheck(cudaFree(b_fp32));
+ cudaErrCheck(cudaFree(c_fp32));
+ cudaErrCheck(cudaFree(d_fp32));
+ cudaErrCheck(cudaFree(a_fp16));
+ cudaErrCheck(cudaFree(b_fp16));
+ //cudaErrCheck(cudaFree(c_fp16));
+ //cudaErrCheck(cudaFree(d_fp16));
+
+ free(a_host_wmma);
+ free(b_host_wmma);
+ free(c_host_wmma);
+ free(d_host_wmma);
+ cudaErrCheck(cudaDeviceReset());
+ return 0;
+}
+
+