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author | Yi Kong <yikong@google.com> | 2022-02-25 17:02:53 +0000 |
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committer | Automerger Merge Worker <android-build-automerger-merge-worker@system.gserviceaccount.com> | 2022-02-25 17:02:53 +0000 |
commit | edb0ad5bb04b48aab7dd0978f0475edd3550de7c (patch) | |
tree | fb979fb4cf4f8052c8cc66b1ec9516d91fcd859b /unsupported/test/cxx11_tensor_complex_gpu.cu | |
parent | 8fd413e275f78a4c240f1442ce5cf77c73a20a55 (diff) | |
parent | bc0f5df265caa21a2120c22453655a7fcc941991 (diff) | |
download | eigen-aml_tz4_331314010.tar.gz |
Merge changes Iee153445,Iee274471 am: 79df15ea88 am: 10f298fc41 am: 7cb5001398 am: bc0f5df265aml_uwb_331910010aml_uwb_331820070aml_uwb_331613010aml_uwb_331611010aml_uwb_331410010aml_uwb_331310030aml_uwb_331115000aml_uwb_331015040aml_uwb_330810010aml_tz4_332714070aml_tz4_332714050aml_tz4_332714010aml_tz4_331910000aml_tz4_331314030aml_tz4_331314020aml_tz4_331314010aml_tz4_331012050aml_tz4_331012040aml_tz4_331012000aml_ase_331311020aml_ase_331112000aml_ase_331011020android13-mainline-uwb-releaseandroid13-mainline-tzdata4-releaseandroid13-mainline-appsearch-releaseaml_tz4_332714010
Original change: https://android-review.googlesource.com/c/platform/external/eigen/+/1999079
Change-Id: Ife39d10c8b23d3eeb174cd52f462f9d20527ad03
Diffstat (limited to 'unsupported/test/cxx11_tensor_complex_gpu.cu')
-rw-r--r-- | unsupported/test/cxx11_tensor_complex_gpu.cu | 186 |
1 files changed, 186 insertions, 0 deletions
diff --git a/unsupported/test/cxx11_tensor_complex_gpu.cu b/unsupported/test/cxx11_tensor_complex_gpu.cu new file mode 100644 index 000000000..f8b8ae704 --- /dev/null +++ b/unsupported/test/cxx11_tensor_complex_gpu.cu @@ -0,0 +1,186 @@ +// This file is part of Eigen, a lightweight C++ template library +// for linear algebra. +// +// Copyright (C) 2016 Benoit Steiner <benoit.steiner.goog@gmail.com> +// +// This Source Code Form is subject to the terms of the Mozilla +// Public License v. 2.0. If a copy of the MPL was not distributed +// with this file, You can obtain one at http://mozilla.org/MPL/2.0/. + +#define EIGEN_TEST_NO_LONGDOUBLE + +#define EIGEN_USE_GPU + +#include "main.h" +#include <unsupported/Eigen/CXX11/Tensor> + +using Eigen::Tensor; + +void test_cuda_nullary() { + Tensor<std::complex<float>, 1, 0, int> in1(2); + Tensor<std::complex<float>, 1, 0, int> in2(2); + in1.setRandom(); + in2.setRandom(); + + std::size_t float_bytes = in1.size() * sizeof(float); + std::size_t complex_bytes = in1.size() * sizeof(std::complex<float>); + + std::complex<float>* d_in1; + std::complex<float>* d_in2; + float* d_out2; + cudaMalloc((void**)(&d_in1), complex_bytes); + cudaMalloc((void**)(&d_in2), complex_bytes); + cudaMalloc((void**)(&d_out2), float_bytes); + cudaMemcpy(d_in1, in1.data(), complex_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_in2, in2.data(), complex_bytes, cudaMemcpyHostToDevice); + + Eigen::GpuStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<std::complex<float>, 1, 0, int>, Eigen::Aligned> gpu_in1( + d_in1, 2); + Eigen::TensorMap<Eigen::Tensor<std::complex<float>, 1, 0, int>, Eigen::Aligned> gpu_in2( + d_in2, 2); + Eigen::TensorMap<Eigen::Tensor<float, 1, 0, int>, Eigen::Aligned> gpu_out2( + d_out2, 2); + + gpu_in1.device(gpu_device) = gpu_in1.constant(std::complex<float>(3.14f, 2.7f)); + gpu_out2.device(gpu_device) = gpu_in2.abs(); + + Tensor<std::complex<float>, 1, 0, int> new1(2); + Tensor<float, 1, 0, int> new2(2); + + assert(cudaMemcpyAsync(new1.data(), d_in1, complex_bytes, cudaMemcpyDeviceToHost, + gpu_device.stream()) == cudaSuccess); + assert(cudaMemcpyAsync(new2.data(), d_out2, float_bytes, cudaMemcpyDeviceToHost, + gpu_device.stream()) == cudaSuccess); + + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 2; ++i) { + VERIFY_IS_APPROX(new1(i), std::complex<float>(3.14f, 2.7f)); + VERIFY_IS_APPROX(new2(i), std::abs(in2(i))); + } + + cudaFree(d_in1); + cudaFree(d_in2); + cudaFree(d_out2); +} + + +static void test_cuda_sum_reductions() { + + Eigen::GpuStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + const int num_rows = internal::random<int>(1024, 5*1024); + const int num_cols = internal::random<int>(1024, 5*1024); + + Tensor<std::complex<float>, 2> in(num_rows, num_cols); + in.setRandom(); + + Tensor<std::complex<float>, 0> full_redux; + full_redux = in.sum(); + + std::size_t in_bytes = in.size() * sizeof(std::complex<float>); + std::size_t out_bytes = full_redux.size() * sizeof(std::complex<float>); + std::complex<float>* gpu_in_ptr = static_cast<std::complex<float>*>(gpu_device.allocate(in_bytes)); + std::complex<float>* gpu_out_ptr = static_cast<std::complex<float>*>(gpu_device.allocate(out_bytes)); + gpu_device.memcpyHostToDevice(gpu_in_ptr, in.data(), in_bytes); + + TensorMap<Tensor<std::complex<float>, 2> > in_gpu(gpu_in_ptr, num_rows, num_cols); + TensorMap<Tensor<std::complex<float>, 0> > out_gpu(gpu_out_ptr); + + out_gpu.device(gpu_device) = in_gpu.sum(); + + Tensor<std::complex<float>, 0> full_redux_gpu; + gpu_device.memcpyDeviceToHost(full_redux_gpu.data(), gpu_out_ptr, out_bytes); + gpu_device.synchronize(); + + // Check that the CPU and GPU reductions return the same result. + VERIFY_IS_APPROX(full_redux(), full_redux_gpu()); + + gpu_device.deallocate(gpu_in_ptr); + gpu_device.deallocate(gpu_out_ptr); +} + +static void test_cuda_mean_reductions() { + + Eigen::GpuStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + const int num_rows = internal::random<int>(1024, 5*1024); + const int num_cols = internal::random<int>(1024, 5*1024); + + Tensor<std::complex<float>, 2> in(num_rows, num_cols); + in.setRandom(); + + Tensor<std::complex<float>, 0> full_redux; + full_redux = in.mean(); + + std::size_t in_bytes = in.size() * sizeof(std::complex<float>); + std::size_t out_bytes = full_redux.size() * sizeof(std::complex<float>); + std::complex<float>* gpu_in_ptr = static_cast<std::complex<float>*>(gpu_device.allocate(in_bytes)); + std::complex<float>* gpu_out_ptr = static_cast<std::complex<float>*>(gpu_device.allocate(out_bytes)); + gpu_device.memcpyHostToDevice(gpu_in_ptr, in.data(), in_bytes); + + TensorMap<Tensor<std::complex<float>, 2> > in_gpu(gpu_in_ptr, num_rows, num_cols); + TensorMap<Tensor<std::complex<float>, 0> > out_gpu(gpu_out_ptr); + + out_gpu.device(gpu_device) = in_gpu.mean(); + + Tensor<std::complex<float>, 0> full_redux_gpu; + gpu_device.memcpyDeviceToHost(full_redux_gpu.data(), gpu_out_ptr, out_bytes); + gpu_device.synchronize(); + + // Check that the CPU and GPU reductions return the same result. + VERIFY_IS_APPROX(full_redux(), full_redux_gpu()); + + gpu_device.deallocate(gpu_in_ptr); + gpu_device.deallocate(gpu_out_ptr); +} + +static void test_cuda_product_reductions() { + + Eigen::GpuStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + const int num_rows = internal::random<int>(1024, 5*1024); + const int num_cols = internal::random<int>(1024, 5*1024); + + Tensor<std::complex<float>, 2> in(num_rows, num_cols); + in.setRandom(); + + Tensor<std::complex<float>, 0> full_redux; + full_redux = in.prod(); + + std::size_t in_bytes = in.size() * sizeof(std::complex<float>); + std::size_t out_bytes = full_redux.size() * sizeof(std::complex<float>); + std::complex<float>* gpu_in_ptr = static_cast<std::complex<float>*>(gpu_device.allocate(in_bytes)); + std::complex<float>* gpu_out_ptr = static_cast<std::complex<float>*>(gpu_device.allocate(out_bytes)); + gpu_device.memcpyHostToDevice(gpu_in_ptr, in.data(), in_bytes); + + TensorMap<Tensor<std::complex<float>, 2> > in_gpu(gpu_in_ptr, num_rows, num_cols); + TensorMap<Tensor<std::complex<float>, 0> > out_gpu(gpu_out_ptr); + + out_gpu.device(gpu_device) = in_gpu.prod(); + + Tensor<std::complex<float>, 0> full_redux_gpu; + gpu_device.memcpyDeviceToHost(full_redux_gpu.data(), gpu_out_ptr, out_bytes); + gpu_device.synchronize(); + + // Check that the CPU and GPU reductions return the same result. + VERIFY_IS_APPROX(full_redux(), full_redux_gpu()); + + gpu_device.deallocate(gpu_in_ptr); + gpu_device.deallocate(gpu_out_ptr); +} + + +EIGEN_DECLARE_TEST(test_cxx11_tensor_complex) +{ + CALL_SUBTEST(test_cuda_nullary()); + CALL_SUBTEST(test_cuda_sum_reductions()); + CALL_SUBTEST(test_cuda_mean_reductions()); + CALL_SUBTEST(test_cuda_product_reductions()); +} |