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-rw-r--r--bench/tensors/tensor_benchmarks_sycl.cc145
1 files changed, 124 insertions, 21 deletions
diff --git a/bench/tensors/tensor_benchmarks_sycl.cc b/bench/tensors/tensor_benchmarks_sycl.cc
index 7eca4d966..6f9f87179 100644
--- a/bench/tensors/tensor_benchmarks_sycl.cc
+++ b/bench/tensors/tensor_benchmarks_sycl.cc
@@ -1,37 +1,140 @@
-#define EIGEN_USE_SYCL
+#ifdef EIGEN_USE_SYCL
-#include <SYCL/sycl.hpp>
+#include <CL/sycl.hpp>
#include <iostream>
#include "tensor_benchmarks.h"
-using Eigen::array;
-using Eigen::SyclDevice;
-using Eigen::Tensor;
-using Eigen::TensorMap;
-// Simple functions
-template <typename device_selector>
-cl::sycl::queue sycl_queue() {
- return cl::sycl::queue(device_selector(), [=](cl::sycl::exception_list l) {
- for (const auto& e : l) {
- try {
- std::rethrow_exception(e);
- } catch (cl::sycl::exception e) {
- std::cout << e.what() << std::endl;
- }
- }
- });
-}
+cl::sycl::gpu_selector selector;
+Eigen::QueueInterface queue(selector);
+#define BM_FuncWithInput2DimsGPU(FUNC, D1, D2) \
+ static void BM_##FUNC##_##D1##x##D2(int iters, int N) { \
+ StopBenchmarkTiming(); \
+ Eigen::SyclDevice device(&queue); \
+ BenchmarkSuite<Eigen::SyclDevice, float> suite(device, D1, D2); \
+ suite.FUNC(iters); \
+ } \
+ BENCHMARK_RANGE(BM_##FUNC##_##D1##x##D2, 10, 10);
+BM_FuncWithInput2DimsGPU(rowReduction, 256, 100352);
+BM_FuncWithInput2DimsGPU(rowReduction, 64, 100352);
+BM_FuncWithInput2DimsGPU(rowReduction, 512, 25088);
+BM_FuncWithInput2DimsGPU(rowReduction, 128, 25088);
+BM_FuncWithInput2DimsGPU(rowReduction, 102, 6272);
+BM_FuncWithInput2DimsGPU(rowReduction, 256, 6272);
+BM_FuncWithInput2DimsGPU(rowReduction, 204, 1568);
+BM_FuncWithInput2DimsGPU(rowReduction, 512, 1568);
+BM_FuncWithInput2DimsGPU(rowReduction, 1024, 1568);
+BM_FuncWithInput2DimsGPU(rowReduction, 2048, 1568);
+
+BM_FuncWithInput2DimsGPU(colReduction, 100352, 256);
+BM_FuncWithInput2DimsGPU(colReduction, 100352, 64);
+BM_FuncWithInput2DimsGPU(colReduction, 25088, 512);
+BM_FuncWithInput2DimsGPU(colReduction, 6272, 102);
+BM_FuncWithInput2DimsGPU(colReduction, 25088, 128);
+BM_FuncWithInput2DimsGPU(colReduction, 6272, 256);
+BM_FuncWithInput2DimsGPU(colReduction, 1568, 204);
+BM_FuncWithInput2DimsGPU(colReduction, 1568, 512);
+BM_FuncWithInput2DimsGPU(colReduction, 1568, 1024);
+BM_FuncWithInput2DimsGPU(colReduction, 1568, 2048);
+BM_FuncWithInput2DimsGPU(fullReduction, 1001, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 2050048, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 2097152, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 2048, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 262144, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 256, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 589824, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 1024, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 524288, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 512, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 2359296, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 1048576, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 131072, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 16384, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 9408, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 64, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 4096, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 36864, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 32768, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 128, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 147456, 1);
+BM_FuncWithInput2DimsGPU(fullReduction, 65536, 1);
#define BM_FuncGPU(FUNC) \
static void BM_##FUNC(int iters, int N) { \
StopBenchmarkTiming(); \
- cl::sycl::queue q = sycl_queue<cl::sycl::gpu_selector>(); \
- Eigen::SyclDevice device(q); \
+ Eigen::SyclDevice device(&queue); \
BenchmarkSuite<Eigen::SyclDevice, float> suite(device, N); \
suite.FUNC(iters); \
} \
BENCHMARK_RANGE(BM_##FUNC, 10, 5000);
+BM_FuncGPU(rowReduction);
+BM_FuncGPU(colReduction);
+BM_FuncGPU(fullReduction);
+
+BM_FuncGPU(memcpy);
+BM_FuncGPU(typeCasting);
+BM_FuncGPU(random);
+BM_FuncGPU(slicing);
+BM_FuncGPU(rowChip);
+BM_FuncGPU(colChip);
+BM_FuncGPU(shuffling);
+BM_FuncGPU(padding);
+BM_FuncGPU(striding);
BM_FuncGPU(broadcasting);
BM_FuncGPU(coeffWiseOp);
+BM_FuncGPU(algebraicFunc);
+BM_FuncGPU(transcendentalFunc);
+// Contractions
+#define BM_FuncWithInputDimsGPU(FUNC, D1, D2, D3) \
+ static void BM_##FUNC##_##D1##x##D2##x##D3(int iters, int N) { \
+ StopBenchmarkTiming(); \
+ Eigen::SyclDevice device(&queue); \
+ BenchmarkSuite<Eigen::SyclDevice, float> suite(device, D1, D2, D3); \
+ suite.FUNC(iters); \
+ } \
+ BENCHMARK_RANGE(BM_##FUNC##_##D1##x##D2##x##D3, 10, 5000);
+
+BM_FuncWithInputDimsGPU(contraction, N, N, N);
+BM_FuncWithInputDimsGPU(contraction, 64, N, N);
+BM_FuncWithInputDimsGPU(contraction, N, 64, N);
+BM_FuncWithInputDimsGPU(contraction, N, N, 64);
+
+BM_FuncWithInputDimsGPU(contractionRowMajor, N, N, N);
+BM_FuncWithInputDimsGPU(contractionRowMajor, 64, N, N);
+BM_FuncWithInputDimsGPU(contractionRowMajor, N, 64, N);
+BM_FuncWithInputDimsGPU(contractionRowMajor, N, N, 64);
+
+BM_FuncWithInputDimsGPU(contractionRowMajorAT, N, N, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorAT, 64, N, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorAT, N, 64, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorAT, N, N, 64);
+
+BM_FuncWithInputDimsGPU(contractionRowMajorBT, N, N, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorBT, 64, N, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorBT, N, 64, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorBT, N, N, 64);
+
+
+BM_FuncWithInputDimsGPU(contractionRowMajorABT, N, N, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorABT, 64, N, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorABT, N, 64, N);
+BM_FuncWithInputDimsGPU(contractionRowMajorABT, N, N, 64);
+
+// Convolutions
+#define BM_FuncWithKernelDimsGPU(FUNC, DIM1, DIM2) \
+ static void BM_##FUNC##_##DIM1##x##DIM2(int iters, int N) { \
+ StopBenchmarkTiming(); \
+ Eigen::SyclDevice device(&queue); \
+ BenchmarkSuite<Eigen::SyclDevice, float> suite(device, N); \
+ suite.FUNC(iters, DIM1, DIM2); \
+ } \
+ BENCHMARK_RANGE(BM_##FUNC##_##DIM1##x##DIM2, 128, 5000);
+
+BM_FuncWithKernelDimsGPU(convolution, 7, 1);
+BM_FuncWithKernelDimsGPU(convolution, 1, 7);
+BM_FuncWithKernelDimsGPU(convolution, 7, 4);
+BM_FuncWithKernelDimsGPU(convolution, 4, 7);
+BM_FuncWithKernelDimsGPU(convolution, 7, 64);
+BM_FuncWithKernelDimsGPU(convolution, 64, 7);
+#endif