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Diffstat (limited to 'unsupported/test/cxx11_tensor_cuda.cu')
-rw-r--r-- | unsupported/test/cxx11_tensor_cuda.cu | 1071 |
1 files changed, 1071 insertions, 0 deletions
diff --git a/unsupported/test/cxx11_tensor_cuda.cu b/unsupported/test/cxx11_tensor_cuda.cu new file mode 100644 index 000000000..134359611 --- /dev/null +++ b/unsupported/test/cxx11_tensor_cuda.cu @@ -0,0 +1,1071 @@ +// This file is part of Eigen, a lightweight C++ template library +// for linear algebra. +// +// Copyright (C) 2014 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_TEST_NO_COMPLEX +#define EIGEN_TEST_FUNC cxx11_tensor_cuda +#define EIGEN_DEFAULT_DENSE_INDEX_TYPE int +#define EIGEN_USE_GPU + + +#include "main.h" +#include <unsupported/Eigen/CXX11/Tensor> + +using Eigen::Tensor; + +void test_cuda_elementwise_small() { + Tensor<float, 1> in1(Eigen::array<int, 1>(2)); + Tensor<float, 1> in2(Eigen::array<int, 1>(2)); + Tensor<float, 1> out(Eigen::array<int, 1>(2)); + in1.setRandom(); + in2.setRandom(); + + std::size_t in1_bytes = in1.size() * sizeof(float); + std::size_t in2_bytes = in2.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(float); + + float* d_in1; + float* d_in2; + float* d_out; + cudaMalloc((void**)(&d_in1), in1_bytes); + cudaMalloc((void**)(&d_in2), in2_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_in1, in1.data(), in1_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_in2, in2.data(), in2_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 1>, Eigen::Aligned> gpu_in1( + d_in1, Eigen::array<int, 1>(2)); + Eigen::TensorMap<Eigen::Tensor<float, 1>, Eigen::Aligned> gpu_in2( + d_in2, Eigen::array<int, 1>(2)); + Eigen::TensorMap<Eigen::Tensor<float, 1>, Eigen::Aligned> gpu_out( + d_out, Eigen::array<int, 1>(2)); + + gpu_out.device(gpu_device) = gpu_in1 + gpu_in2; + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, + gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 2; ++i) { + VERIFY_IS_APPROX( + out(Eigen::array<int, 1>(i)), + in1(Eigen::array<int, 1>(i)) + in2(Eigen::array<int, 1>(i))); + } + + cudaFree(d_in1); + cudaFree(d_in2); + cudaFree(d_out); +} + +void test_cuda_elementwise() +{ + Tensor<float, 3> in1(Eigen::array<int, 3>(72,53,97)); + Tensor<float, 3> in2(Eigen::array<int, 3>(72,53,97)); + Tensor<float, 3> in3(Eigen::array<int, 3>(72,53,97)); + Tensor<float, 3> out(Eigen::array<int, 3>(72,53,97)); + in1.setRandom(); + in2.setRandom(); + in3.setRandom(); + + std::size_t in1_bytes = in1.size() * sizeof(float); + std::size_t in2_bytes = in2.size() * sizeof(float); + std::size_t in3_bytes = in3.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(float); + + float* d_in1; + float* d_in2; + float* d_in3; + float* d_out; + cudaMalloc((void**)(&d_in1), in1_bytes); + cudaMalloc((void**)(&d_in2), in2_bytes); + cudaMalloc((void**)(&d_in3), in3_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_in1, in1.data(), in1_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_in2, in2.data(), in2_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_in3, in3.data(), in3_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 3> > gpu_in1(d_in1, Eigen::array<int, 3>(72,53,97)); + Eigen::TensorMap<Eigen::Tensor<float, 3> > gpu_in2(d_in2, Eigen::array<int, 3>(72,53,97)); + Eigen::TensorMap<Eigen::Tensor<float, 3> > gpu_in3(d_in3, Eigen::array<int, 3>(72,53,97)); + Eigen::TensorMap<Eigen::Tensor<float, 3> > gpu_out(d_out, Eigen::array<int, 3>(72,53,97)); + + gpu_out.device(gpu_device) = gpu_in1 + gpu_in2 * gpu_in3; + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 72; ++i) { + for (int j = 0; j < 53; ++j) { + for (int k = 0; k < 97; ++k) { + VERIFY_IS_APPROX(out(Eigen::array<int, 3>(i,j,k)), in1(Eigen::array<int, 3>(i,j,k)) + in2(Eigen::array<int, 3>(i,j,k)) * in3(Eigen::array<int, 3>(i,j,k))); + } + } + } + + cudaFree(d_in1); + cudaFree(d_in2); + cudaFree(d_in3); + cudaFree(d_out); +} + +void test_cuda_props() { + Tensor<float, 1> in1(200); + Tensor<bool, 1> out(200); + in1.setRandom(); + + std::size_t in1_bytes = in1.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(bool); + + float* d_in1; + bool* d_out; + cudaMalloc((void**)(&d_in1), in1_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_in1, in1.data(), in1_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 1>, Eigen::Aligned> gpu_in1( + d_in1, 200); + Eigen::TensorMap<Eigen::Tensor<bool, 1>, Eigen::Aligned> gpu_out( + d_out, 200); + + gpu_out.device(gpu_device) = (gpu_in1.isnan)(); + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, + gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 200; ++i) { + VERIFY_IS_EQUAL(out(i), (std::isnan)(in1(i))); + } + + cudaFree(d_in1); + cudaFree(d_out); +} + +void test_cuda_reduction() +{ + Tensor<float, 4> in1(72,53,97,113); + Tensor<float, 2> out(72,97); + in1.setRandom(); + + std::size_t in1_bytes = in1.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(float); + + float* d_in1; + float* d_out; + cudaMalloc((void**)(&d_in1), in1_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_in1, in1.data(), in1_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 4> > gpu_in1(d_in1, 72,53,97,113); + Eigen::TensorMap<Eigen::Tensor<float, 2> > gpu_out(d_out, 72,97); + + array<int, 2> reduction_axis; + reduction_axis[0] = 1; + reduction_axis[1] = 3; + + gpu_out.device(gpu_device) = gpu_in1.maximum(reduction_axis); + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 72; ++i) { + for (int j = 0; j < 97; ++j) { + float expected = 0; + for (int k = 0; k < 53; ++k) { + for (int l = 0; l < 113; ++l) { + expected = + std::max<float>(expected, in1(i, k, j, l)); + } + } + VERIFY_IS_APPROX(out(i,j), expected); + } + } + + cudaFree(d_in1); + cudaFree(d_out); +} + +template<int DataLayout> +void test_cuda_contraction() +{ + // with these dimensions, the output has 300 * 140 elements, which is + // more than 30 * 1024, which is the number of threads in blocks on + // a 15 SM GK110 GPU + Tensor<float, 4, DataLayout> t_left(6, 50, 3, 31); + Tensor<float, 5, DataLayout> t_right(Eigen::array<int, 5>(3, 31, 7, 20, 1)); + Tensor<float, 5, DataLayout> t_result(Eigen::array<int, 5>(6, 50, 7, 20, 1)); + + t_left.setRandom(); + t_right.setRandom(); + + std::size_t t_left_bytes = t_left.size() * sizeof(float); + std::size_t t_right_bytes = t_right.size() * sizeof(float); + std::size_t t_result_bytes = t_result.size() * sizeof(float); + + float* d_t_left; + float* d_t_right; + float* d_t_result; + + cudaMalloc((void**)(&d_t_left), t_left_bytes); + cudaMalloc((void**)(&d_t_right), t_right_bytes); + cudaMalloc((void**)(&d_t_result), t_result_bytes); + + cudaMemcpy(d_t_left, t_left.data(), t_left_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_t_right, t_right.data(), t_right_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 4, DataLayout> > gpu_t_left(d_t_left, 6, 50, 3, 31); + Eigen::TensorMap<Eigen::Tensor<float, 5, DataLayout> > gpu_t_right(d_t_right, 3, 31, 7, 20, 1); + Eigen::TensorMap<Eigen::Tensor<float, 5, DataLayout> > gpu_t_result(d_t_result, 6, 50, 7, 20, 1); + + typedef Eigen::Map<Eigen::Matrix<float, Dynamic, Dynamic, DataLayout> > MapXf; + MapXf m_left(t_left.data(), 300, 93); + MapXf m_right(t_right.data(), 93, 140); + Eigen::Matrix<float, Dynamic, Dynamic, DataLayout> m_result(300, 140); + + typedef Tensor<float, 1>::DimensionPair DimPair; + Eigen::array<DimPair, 2> dims; + dims[0] = DimPair(2, 0); + dims[1] = DimPair(3, 1); + + m_result = m_left * m_right; + gpu_t_result.device(gpu_device) = gpu_t_left.contract(gpu_t_right, dims); + + cudaMemcpy(t_result.data(), d_t_result, t_result_bytes, cudaMemcpyDeviceToHost); + + for (size_t i = 0; i < t_result.dimensions().TotalSize(); i++) { + if (fabs(t_result.data()[i] - m_result.data()[i]) >= 1e-4) { + std::cout << "mismatch detected at index " << i << ": " << t_result.data()[i] << " vs " << m_result.data()[i] << std::endl; + assert(false); + } + } + + cudaFree(d_t_left); + cudaFree(d_t_right); + cudaFree(d_t_result); +} + +template<int DataLayout> +void test_cuda_convolution_1d() +{ + Tensor<float, 4, DataLayout> input(74,37,11,137); + Tensor<float, 1, DataLayout> kernel(4); + Tensor<float, 4, DataLayout> out(74,34,11,137); + input = input.constant(10.0f) + input.random(); + kernel = kernel.constant(7.0f) + kernel.random(); + + std::size_t input_bytes = input.size() * sizeof(float); + std::size_t kernel_bytes = kernel.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(float); + + float* d_input; + float* d_kernel; + float* d_out; + cudaMalloc((void**)(&d_input), input_bytes); + cudaMalloc((void**)(&d_kernel), kernel_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_input, input.data(), input_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_kernel, kernel.data(), kernel_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 4, DataLayout> > gpu_input(d_input, 74,37,11,137); + Eigen::TensorMap<Eigen::Tensor<float, 1, DataLayout> > gpu_kernel(d_kernel, 4); + Eigen::TensorMap<Eigen::Tensor<float, 4, DataLayout> > gpu_out(d_out, 74,34,11,137); + + Eigen::array<int, 1> dims(1); + gpu_out.device(gpu_device) = gpu_input.convolve(gpu_kernel, dims); + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 74; ++i) { + for (int j = 0; j < 34; ++j) { + for (int k = 0; k < 11; ++k) { + for (int l = 0; l < 137; ++l) { + const float result = out(i,j,k,l); + const float expected = input(i,j+0,k,l) * kernel(0) + input(i,j+1,k,l) * kernel(1) + + input(i,j+2,k,l) * kernel(2) + input(i,j+3,k,l) * kernel(3); + VERIFY_IS_APPROX(result, expected); + } + } + } + } + + cudaFree(d_input); + cudaFree(d_kernel); + cudaFree(d_out); +} + +void test_cuda_convolution_inner_dim_col_major_1d() +{ + Tensor<float, 4, ColMajor> input(74,9,11,7); + Tensor<float, 1, ColMajor> kernel(4); + Tensor<float, 4, ColMajor> out(71,9,11,7); + input = input.constant(10.0f) + input.random(); + kernel = kernel.constant(7.0f) + kernel.random(); + + std::size_t input_bytes = input.size() * sizeof(float); + std::size_t kernel_bytes = kernel.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(float); + + float* d_input; + float* d_kernel; + float* d_out; + cudaMalloc((void**)(&d_input), input_bytes); + cudaMalloc((void**)(&d_kernel), kernel_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_input, input.data(), input_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_kernel, kernel.data(), kernel_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 4, ColMajor> > gpu_input(d_input,74,9,11,7); + Eigen::TensorMap<Eigen::Tensor<float, 1, ColMajor> > gpu_kernel(d_kernel,4); + Eigen::TensorMap<Eigen::Tensor<float, 4, ColMajor> > gpu_out(d_out,71,9,11,7); + + Eigen::array<int, 1> dims(0); + gpu_out.device(gpu_device) = gpu_input.convolve(gpu_kernel, dims); + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 71; ++i) { + for (int j = 0; j < 9; ++j) { + for (int k = 0; k < 11; ++k) { + for (int l = 0; l < 7; ++l) { + const float result = out(i,j,k,l); + const float expected = input(i+0,j,k,l) * kernel(0) + input(i+1,j,k,l) * kernel(1) + + input(i+2,j,k,l) * kernel(2) + input(i+3,j,k,l) * kernel(3); + VERIFY_IS_APPROX(result, expected); + } + } + } + } + + cudaFree(d_input); + cudaFree(d_kernel); + cudaFree(d_out); +} + +void test_cuda_convolution_inner_dim_row_major_1d() +{ + Tensor<float, 4, RowMajor> input(7,9,11,74); + Tensor<float, 1, RowMajor> kernel(4); + Tensor<float, 4, RowMajor> out(7,9,11,71); + input = input.constant(10.0f) + input.random(); + kernel = kernel.constant(7.0f) + kernel.random(); + + std::size_t input_bytes = input.size() * sizeof(float); + std::size_t kernel_bytes = kernel.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(float); + + float* d_input; + float* d_kernel; + float* d_out; + cudaMalloc((void**)(&d_input), input_bytes); + cudaMalloc((void**)(&d_kernel), kernel_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_input, input.data(), input_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_kernel, kernel.data(), kernel_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 4, RowMajor> > gpu_input(d_input, 7,9,11,74); + Eigen::TensorMap<Eigen::Tensor<float, 1, RowMajor> > gpu_kernel(d_kernel, 4); + Eigen::TensorMap<Eigen::Tensor<float, 4, RowMajor> > gpu_out(d_out, 7,9,11,71); + + Eigen::array<int, 1> dims(3); + gpu_out.device(gpu_device) = gpu_input.convolve(gpu_kernel, dims); + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 7; ++i) { + for (int j = 0; j < 9; ++j) { + for (int k = 0; k < 11; ++k) { + for (int l = 0; l < 71; ++l) { + const float result = out(i,j,k,l); + const float expected = input(i,j,k,l+0) * kernel(0) + input(i,j,k,l+1) * kernel(1) + + input(i,j,k,l+2) * kernel(2) + input(i,j,k,l+3) * kernel(3); + VERIFY_IS_APPROX(result, expected); + } + } + } + } + + cudaFree(d_input); + cudaFree(d_kernel); + cudaFree(d_out); +} + +template<int DataLayout> +void test_cuda_convolution_2d() +{ + Tensor<float, 4, DataLayout> input(74,37,11,137); + Tensor<float, 2, DataLayout> kernel(3,4); + Tensor<float, 4, DataLayout> out(74,35,8,137); + input = input.constant(10.0f) + input.random(); + kernel = kernel.constant(7.0f) + kernel.random(); + + std::size_t input_bytes = input.size() * sizeof(float); + std::size_t kernel_bytes = kernel.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(float); + + float* d_input; + float* d_kernel; + float* d_out; + cudaMalloc((void**)(&d_input), input_bytes); + cudaMalloc((void**)(&d_kernel), kernel_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_input, input.data(), input_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_kernel, kernel.data(), kernel_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 4, DataLayout> > gpu_input(d_input,74,37,11,137); + Eigen::TensorMap<Eigen::Tensor<float, 2, DataLayout> > gpu_kernel(d_kernel,3,4); + Eigen::TensorMap<Eigen::Tensor<float, 4, DataLayout> > gpu_out(d_out,74,35,8,137); + + Eigen::array<int, 2> dims(1,2); + gpu_out.device(gpu_device) = gpu_input.convolve(gpu_kernel, dims); + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 74; ++i) { + for (int j = 0; j < 35; ++j) { + for (int k = 0; k < 8; ++k) { + for (int l = 0; l < 137; ++l) { + const float result = out(i,j,k,l); + const float expected = input(i,j+0,k+0,l) * kernel(0,0) + + input(i,j+1,k+0,l) * kernel(1,0) + + input(i,j+2,k+0,l) * kernel(2,0) + + input(i,j+0,k+1,l) * kernel(0,1) + + input(i,j+1,k+1,l) * kernel(1,1) + + input(i,j+2,k+1,l) * kernel(2,1) + + input(i,j+0,k+2,l) * kernel(0,2) + + input(i,j+1,k+2,l) * kernel(1,2) + + input(i,j+2,k+2,l) * kernel(2,2) + + input(i,j+0,k+3,l) * kernel(0,3) + + input(i,j+1,k+3,l) * kernel(1,3) + + input(i,j+2,k+3,l) * kernel(2,3); + VERIFY_IS_APPROX(result, expected); + } + } + } + } + + cudaFree(d_input); + cudaFree(d_kernel); + cudaFree(d_out); +} + +template<int DataLayout> +void test_cuda_convolution_3d() +{ + Tensor<float, 5, DataLayout> input(Eigen::array<int, 5>(74,37,11,137,17)); + Tensor<float, 3, DataLayout> kernel(3,4,2); + Tensor<float, 5, DataLayout> out(Eigen::array<int, 5>(74,35,8,136,17)); + input = input.constant(10.0f) + input.random(); + kernel = kernel.constant(7.0f) + kernel.random(); + + std::size_t input_bytes = input.size() * sizeof(float); + std::size_t kernel_bytes = kernel.size() * sizeof(float); + std::size_t out_bytes = out.size() * sizeof(float); + + float* d_input; + float* d_kernel; + float* d_out; + cudaMalloc((void**)(&d_input), input_bytes); + cudaMalloc((void**)(&d_kernel), kernel_bytes); + cudaMalloc((void**)(&d_out), out_bytes); + + cudaMemcpy(d_input, input.data(), input_bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_kernel, kernel.data(), kernel_bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<float, 5, DataLayout> > gpu_input(d_input,74,37,11,137,17); + Eigen::TensorMap<Eigen::Tensor<float, 3, DataLayout> > gpu_kernel(d_kernel,3,4,2); + Eigen::TensorMap<Eigen::Tensor<float, 5, DataLayout> > gpu_out(d_out,74,35,8,136,17); + + Eigen::array<int, 3> dims(1,2,3); + gpu_out.device(gpu_device) = gpu_input.convolve(gpu_kernel, dims); + + assert(cudaMemcpyAsync(out.data(), d_out, out_bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 74; ++i) { + for (int j = 0; j < 35; ++j) { + for (int k = 0; k < 8; ++k) { + for (int l = 0; l < 136; ++l) { + for (int m = 0; m < 17; ++m) { + const float result = out(i,j,k,l,m); + const float expected = input(i,j+0,k+0,l+0,m) * kernel(0,0,0) + + input(i,j+1,k+0,l+0,m) * kernel(1,0,0) + + input(i,j+2,k+0,l+0,m) * kernel(2,0,0) + + input(i,j+0,k+1,l+0,m) * kernel(0,1,0) + + input(i,j+1,k+1,l+0,m) * kernel(1,1,0) + + input(i,j+2,k+1,l+0,m) * kernel(2,1,0) + + input(i,j+0,k+2,l+0,m) * kernel(0,2,0) + + input(i,j+1,k+2,l+0,m) * kernel(1,2,0) + + input(i,j+2,k+2,l+0,m) * kernel(2,2,0) + + input(i,j+0,k+3,l+0,m) * kernel(0,3,0) + + input(i,j+1,k+3,l+0,m) * kernel(1,3,0) + + input(i,j+2,k+3,l+0,m) * kernel(2,3,0) + + input(i,j+0,k+0,l+1,m) * kernel(0,0,1) + + input(i,j+1,k+0,l+1,m) * kernel(1,0,1) + + input(i,j+2,k+0,l+1,m) * kernel(2,0,1) + + input(i,j+0,k+1,l+1,m) * kernel(0,1,1) + + input(i,j+1,k+1,l+1,m) * kernel(1,1,1) + + input(i,j+2,k+1,l+1,m) * kernel(2,1,1) + + input(i,j+0,k+2,l+1,m) * kernel(0,2,1) + + input(i,j+1,k+2,l+1,m) * kernel(1,2,1) + + input(i,j+2,k+2,l+1,m) * kernel(2,2,1) + + input(i,j+0,k+3,l+1,m) * kernel(0,3,1) + + input(i,j+1,k+3,l+1,m) * kernel(1,3,1) + + input(i,j+2,k+3,l+1,m) * kernel(2,3,1); + VERIFY_IS_APPROX(result, expected); + } + } + } + } + } + + cudaFree(d_input); + cudaFree(d_kernel); + cudaFree(d_out); +} + + +template <typename Scalar> +void test_cuda_lgamma(const Scalar stddev) +{ + Tensor<Scalar, 2> in(72,97); + in.setRandom(); + in *= in.constant(stddev); + Tensor<Scalar, 2> out(72,97); + out.setZero(); + + std::size_t bytes = in.size() * sizeof(Scalar); + + Scalar* d_in; + Scalar* d_out; + cudaMalloc((void**)(&d_in), bytes); + cudaMalloc((void**)(&d_out), bytes); + + cudaMemcpy(d_in, in.data(), bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_in(d_in, 72, 97); + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_out(d_out, 72, 97); + + gpu_out.device(gpu_device) = gpu_in.lgamma(); + + assert(cudaMemcpyAsync(out.data(), d_out, bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 72; ++i) { + for (int j = 0; j < 97; ++j) { + VERIFY_IS_APPROX(out(i,j), (std::lgamma)(in(i,j))); + } + } + + cudaFree(d_in); + cudaFree(d_out); +} + +template <typename Scalar> +void test_cuda_digamma() +{ + Tensor<Scalar, 1> in(7); + Tensor<Scalar, 1> out(7); + Tensor<Scalar, 1> expected_out(7); + out.setZero(); + + in(0) = Scalar(1); + in(1) = Scalar(1.5); + in(2) = Scalar(4); + in(3) = Scalar(-10.5); + in(4) = Scalar(10000.5); + in(5) = Scalar(0); + in(6) = Scalar(-1); + + expected_out(0) = Scalar(-0.5772156649015329); + expected_out(1) = Scalar(0.03648997397857645); + expected_out(2) = Scalar(1.2561176684318); + expected_out(3) = Scalar(2.398239129535781); + expected_out(4) = Scalar(9.210340372392849); + expected_out(5) = std::numeric_limits<Scalar>::infinity(); + expected_out(6) = std::numeric_limits<Scalar>::infinity(); + + std::size_t bytes = in.size() * sizeof(Scalar); + + Scalar* d_in; + Scalar* d_out; + cudaMalloc((void**)(&d_in), bytes); + cudaMalloc((void**)(&d_out), bytes); + + cudaMemcpy(d_in, in.data(), bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<Scalar, 1> > gpu_in(d_in, 7); + Eigen::TensorMap<Eigen::Tensor<Scalar, 1> > gpu_out(d_out, 7); + + gpu_out.device(gpu_device) = gpu_in.digamma(); + + assert(cudaMemcpyAsync(out.data(), d_out, bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 5; ++i) { + VERIFY_IS_APPROX(out(i), expected_out(i)); + } + for (int i = 5; i < 7; ++i) { + VERIFY_IS_EQUAL(out(i), expected_out(i)); + } +} + +template <typename Scalar> +void test_cuda_zeta() +{ + Tensor<Scalar, 1> in_x(6); + Tensor<Scalar, 1> in_q(6); + Tensor<Scalar, 1> out(6); + Tensor<Scalar, 1> expected_out(6); + out.setZero(); + + in_x(0) = Scalar(1); + in_x(1) = Scalar(1.5); + in_x(2) = Scalar(4); + in_x(3) = Scalar(-10.5); + in_x(4) = Scalar(10000.5); + in_x(5) = Scalar(3); + + in_q(0) = Scalar(1.2345); + in_q(1) = Scalar(2); + in_q(2) = Scalar(1.5); + in_q(3) = Scalar(3); + in_q(4) = Scalar(1.0001); + in_q(5) = Scalar(-2.5); + + expected_out(0) = std::numeric_limits<Scalar>::infinity(); + expected_out(1) = Scalar(1.61237534869); + expected_out(2) = Scalar(0.234848505667); + expected_out(3) = Scalar(1.03086757337e-5); + expected_out(4) = Scalar(0.367879440865); + expected_out(5) = Scalar(0.054102025820864097); + + std::size_t bytes = in_x.size() * sizeof(Scalar); + + Scalar* d_in_x; + Scalar* d_in_q; + Scalar* d_out; + cudaMalloc((void**)(&d_in_x), bytes); + cudaMalloc((void**)(&d_in_q), bytes); + cudaMalloc((void**)(&d_out), bytes); + + cudaMemcpy(d_in_x, in_x.data(), bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_in_q, in_q.data(), bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<Scalar, 1> > gpu_in_x(d_in_x, 6); + Eigen::TensorMap<Eigen::Tensor<Scalar, 1> > gpu_in_q(d_in_q, 6); + Eigen::TensorMap<Eigen::Tensor<Scalar, 1> > gpu_out(d_out, 6); + + gpu_out.device(gpu_device) = gpu_in_x.zeta(gpu_in_q); + + assert(cudaMemcpyAsync(out.data(), d_out, bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + VERIFY_IS_EQUAL(out(0), expected_out(0)); + VERIFY_IS_APPROX_OR_LESS_THAN(out(3), expected_out(3)); + + for (int i = 1; i < 6; ++i) { + if (i != 3) { + VERIFY_IS_APPROX(out(i), expected_out(i)); + } + } +} + +template <typename Scalar> +void test_cuda_polygamma() +{ + Tensor<Scalar, 1> in_x(7); + Tensor<Scalar, 1> in_n(7); + Tensor<Scalar, 1> out(7); + Tensor<Scalar, 1> expected_out(7); + out.setZero(); + + in_n(0) = Scalar(1); + in_n(1) = Scalar(1); + in_n(2) = Scalar(1); + in_n(3) = Scalar(17); + in_n(4) = Scalar(31); + in_n(5) = Scalar(28); + in_n(6) = Scalar(8); + + in_x(0) = Scalar(2); + in_x(1) = Scalar(3); + in_x(2) = Scalar(25.5); + in_x(3) = Scalar(4.7); + in_x(4) = Scalar(11.8); + in_x(5) = Scalar(17.7); + in_x(6) = Scalar(30.2); + + expected_out(0) = Scalar(0.644934066848); + expected_out(1) = Scalar(0.394934066848); + expected_out(2) = Scalar(0.0399946696496); + expected_out(3) = Scalar(293.334565435); + expected_out(4) = Scalar(0.445487887616); + expected_out(5) = Scalar(-2.47810300902e-07); + expected_out(6) = Scalar(-8.29668781082e-09); + + std::size_t bytes = in_x.size() * sizeof(Scalar); + + Scalar* d_in_x; + Scalar* d_in_n; + Scalar* d_out; + cudaMalloc((void**)(&d_in_x), bytes); + cudaMalloc((void**)(&d_in_n), bytes); + cudaMalloc((void**)(&d_out), bytes); + + cudaMemcpy(d_in_x, in_x.data(), bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_in_n, in_n.data(), bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<Scalar, 1> > gpu_in_x(d_in_x, 7); + Eigen::TensorMap<Eigen::Tensor<Scalar, 1> > gpu_in_n(d_in_n, 7); + Eigen::TensorMap<Eigen::Tensor<Scalar, 1> > gpu_out(d_out, 7); + + gpu_out.device(gpu_device) = gpu_in_n.polygamma(gpu_in_x); + + assert(cudaMemcpyAsync(out.data(), d_out, bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 7; ++i) { + VERIFY_IS_APPROX(out(i), expected_out(i)); + } +} + +template <typename Scalar> +void test_cuda_igamma() +{ + Tensor<Scalar, 2> a(6, 6); + Tensor<Scalar, 2> x(6, 6); + Tensor<Scalar, 2> out(6, 6); + out.setZero(); + + Scalar a_s[] = {Scalar(0), Scalar(1), Scalar(1.5), Scalar(4), Scalar(0.0001), Scalar(1000.5)}; + Scalar x_s[] = {Scalar(0), Scalar(1), Scalar(1.5), Scalar(4), Scalar(0.0001), Scalar(1000.5)}; + + for (int i = 0; i < 6; ++i) { + for (int j = 0; j < 6; ++j) { + a(i, j) = a_s[i]; + x(i, j) = x_s[j]; + } + } + + Scalar nan = std::numeric_limits<Scalar>::quiet_NaN(); + Scalar igamma_s[][6] = {{0.0, nan, nan, nan, nan, nan}, + {0.0, 0.6321205588285578, 0.7768698398515702, + 0.9816843611112658, 9.999500016666262e-05, 1.0}, + {0.0, 0.4275932955291202, 0.608374823728911, + 0.9539882943107686, 7.522076445089201e-07, 1.0}, + {0.0, 0.01898815687615381, 0.06564245437845008, + 0.5665298796332909, 4.166333347221828e-18, 1.0}, + {0.0, 0.9999780593618628, 0.9999899967080838, + 0.9999996219837988, 0.9991370418689945, 1.0}, + {0.0, 0.0, 0.0, 0.0, 0.0, 0.5042041932513908}}; + + + + std::size_t bytes = a.size() * sizeof(Scalar); + + Scalar* d_a; + Scalar* d_x; + Scalar* d_out; + cudaMalloc((void**)(&d_a), bytes); + cudaMalloc((void**)(&d_x), bytes); + cudaMalloc((void**)(&d_out), bytes); + + cudaMemcpy(d_a, a.data(), bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_x, x.data(), bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_a(d_a, 6, 6); + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_x(d_x, 6, 6); + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_out(d_out, 6, 6); + + gpu_out.device(gpu_device) = gpu_a.igamma(gpu_x); + + assert(cudaMemcpyAsync(out.data(), d_out, bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 6; ++i) { + for (int j = 0; j < 6; ++j) { + if ((std::isnan)(igamma_s[i][j])) { + VERIFY((std::isnan)(out(i, j))); + } else { + VERIFY_IS_APPROX(out(i, j), igamma_s[i][j]); + } + } + } +} + +template <typename Scalar> +void test_cuda_igammac() +{ + Tensor<Scalar, 2> a(6, 6); + Tensor<Scalar, 2> x(6, 6); + Tensor<Scalar, 2> out(6, 6); + out.setZero(); + + Scalar a_s[] = {Scalar(0), Scalar(1), Scalar(1.5), Scalar(4), Scalar(0.0001), Scalar(1000.5)}; + Scalar x_s[] = {Scalar(0), Scalar(1), Scalar(1.5), Scalar(4), Scalar(0.0001), Scalar(1000.5)}; + + for (int i = 0; i < 6; ++i) { + for (int j = 0; j < 6; ++j) { + a(i, j) = a_s[i]; + x(i, j) = x_s[j]; + } + } + + Scalar nan = std::numeric_limits<Scalar>::quiet_NaN(); + Scalar igammac_s[][6] = {{nan, nan, nan, nan, nan, nan}, + {1.0, 0.36787944117144233, 0.22313016014842982, + 0.018315638888734182, 0.9999000049998333, 0.0}, + {1.0, 0.5724067044708798, 0.3916251762710878, + 0.04601170568923136, 0.9999992477923555, 0.0}, + {1.0, 0.9810118431238462, 0.9343575456215499, + 0.4334701203667089, 1.0, 0.0}, + {1.0, 2.1940638138146658e-05, 1.0003291916285e-05, + 3.7801620118431334e-07, 0.0008629581310054535, + 0.0}, + {1.0, 1.0, 1.0, 1.0, 1.0, 0.49579580674813944}}; + + std::size_t bytes = a.size() * sizeof(Scalar); + + Scalar* d_a; + Scalar* d_x; + Scalar* d_out; + cudaMalloc((void**)(&d_a), bytes); + cudaMalloc((void**)(&d_x), bytes); + cudaMalloc((void**)(&d_out), bytes); + + cudaMemcpy(d_a, a.data(), bytes, cudaMemcpyHostToDevice); + cudaMemcpy(d_x, x.data(), bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_a(d_a, 6, 6); + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_x(d_x, 6, 6); + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_out(d_out, 6, 6); + + gpu_out.device(gpu_device) = gpu_a.igammac(gpu_x); + + assert(cudaMemcpyAsync(out.data(), d_out, bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 6; ++i) { + for (int j = 0; j < 6; ++j) { + if ((std::isnan)(igammac_s[i][j])) { + VERIFY((std::isnan)(out(i, j))); + } else { + VERIFY_IS_APPROX(out(i, j), igammac_s[i][j]); + } + } + } +} + +template <typename Scalar> +void test_cuda_erf(const Scalar stddev) +{ + Tensor<Scalar, 2> in(72,97); + in.setRandom(); + in *= in.constant(stddev); + Tensor<Scalar, 2> out(72,97); + out.setZero(); + + std::size_t bytes = in.size() * sizeof(Scalar); + + Scalar* d_in; + Scalar* d_out; + cudaMalloc((void**)(&d_in), bytes); + cudaMalloc((void**)(&d_out), bytes); + + cudaMemcpy(d_in, in.data(), bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_in(d_in, 72, 97); + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_out(d_out, 72, 97); + + gpu_out.device(gpu_device) = gpu_in.erf(); + + assert(cudaMemcpyAsync(out.data(), d_out, bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 72; ++i) { + for (int j = 0; j < 97; ++j) { + VERIFY_IS_APPROX(out(i,j), (std::erf)(in(i,j))); + } + } + + cudaFree(d_in); + cudaFree(d_out); +} + +template <typename Scalar> +void test_cuda_erfc(const Scalar stddev) +{ + Tensor<Scalar, 2> in(72,97); + in.setRandom(); + in *= in.constant(stddev); + Tensor<Scalar, 2> out(72,97); + out.setZero(); + + std::size_t bytes = in.size() * sizeof(Scalar); + + Scalar* d_in; + Scalar* d_out; + cudaMalloc((void**)(&d_in), bytes); + cudaMalloc((void**)(&d_out), bytes); + + cudaMemcpy(d_in, in.data(), bytes, cudaMemcpyHostToDevice); + + Eigen::CudaStreamDevice stream; + Eigen::GpuDevice gpu_device(&stream); + + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_in(d_in, 72, 97); + Eigen::TensorMap<Eigen::Tensor<Scalar, 2> > gpu_out(d_out, 72, 97); + + gpu_out.device(gpu_device) = gpu_in.erfc(); + + assert(cudaMemcpyAsync(out.data(), d_out, bytes, cudaMemcpyDeviceToHost, gpu_device.stream()) == cudaSuccess); + assert(cudaStreamSynchronize(gpu_device.stream()) == cudaSuccess); + + for (int i = 0; i < 72; ++i) { + for (int j = 0; j < 97; ++j) { + VERIFY_IS_APPROX(out(i,j), (std::erfc)(in(i,j))); + } + } + + cudaFree(d_in); + cudaFree(d_out); +} + +void test_cxx11_tensor_cuda() +{ + CALL_SUBTEST_1(test_cuda_elementwise_small()); + CALL_SUBTEST_1(test_cuda_elementwise()); + CALL_SUBTEST_1(test_cuda_props()); + CALL_SUBTEST_1(test_cuda_reduction()); + CALL_SUBTEST_2(test_cuda_contraction<ColMajor>()); + CALL_SUBTEST_2(test_cuda_contraction<RowMajor>()); + CALL_SUBTEST_3(test_cuda_convolution_1d<ColMajor>()); + CALL_SUBTEST_3(test_cuda_convolution_1d<RowMajor>()); + CALL_SUBTEST_3(test_cuda_convolution_inner_dim_col_major_1d()); + CALL_SUBTEST_3(test_cuda_convolution_inner_dim_row_major_1d()); + CALL_SUBTEST_3(test_cuda_convolution_2d<ColMajor>()); + CALL_SUBTEST_3(test_cuda_convolution_2d<RowMajor>()); + CALL_SUBTEST_3(test_cuda_convolution_3d<ColMajor>()); + CALL_SUBTEST_3(test_cuda_convolution_3d<RowMajor>()); + +#if __cplusplus > 199711L + // std::erf, std::erfc, and so on where only added in c++11. We use them + // as a golden reference to validate the results produced by Eigen. Therefore + // we can only run these tests if we use a c++11 compiler. + CALL_SUBTEST_4(test_cuda_lgamma<float>(1.0f)); + CALL_SUBTEST_4(test_cuda_lgamma<float>(100.0f)); + CALL_SUBTEST_4(test_cuda_lgamma<float>(0.01f)); + CALL_SUBTEST_4(test_cuda_lgamma<float>(0.001f)); + + CALL_SUBTEST_4(test_cuda_lgamma<double>(1.0)); + CALL_SUBTEST_4(test_cuda_lgamma<double>(100.0)); + CALL_SUBTEST_4(test_cuda_lgamma<double>(0.01)); + CALL_SUBTEST_4(test_cuda_lgamma<double>(0.001)); + + CALL_SUBTEST_4(test_cuda_erf<float>(1.0f)); + CALL_SUBTEST_4(test_cuda_erf<float>(100.0f)); + CALL_SUBTEST_4(test_cuda_erf<float>(0.01f)); + CALL_SUBTEST_4(test_cuda_erf<float>(0.001f)); + + CALL_SUBTEST_4(test_cuda_erfc<float>(1.0f)); + // CALL_SUBTEST(test_cuda_erfc<float>(100.0f)); + CALL_SUBTEST_4(test_cuda_erfc<float>(5.0f)); // CUDA erfc lacks precision for large inputs + CALL_SUBTEST_4(test_cuda_erfc<float>(0.01f)); + CALL_SUBTEST_4(test_cuda_erfc<float>(0.001f)); + + CALL_SUBTEST_4(test_cuda_erf<double>(1.0)); + CALL_SUBTEST_4(test_cuda_erf<double>(100.0)); + CALL_SUBTEST_4(test_cuda_erf<double>(0.01)); + CALL_SUBTEST_4(test_cuda_erf<double>(0.001)); + + CALL_SUBTEST_4(test_cuda_erfc<double>(1.0)); + // CALL_SUBTEST(test_cuda_erfc<double>(100.0)); + CALL_SUBTEST_4(test_cuda_erfc<double>(5.0)); // CUDA erfc lacks precision for large inputs + CALL_SUBTEST_4(test_cuda_erfc<double>(0.01)); + CALL_SUBTEST_4(test_cuda_erfc<double>(0.001)); + + CALL_SUBTEST_5(test_cuda_digamma<float>()); + CALL_SUBTEST_5(test_cuda_digamma<double>()); + + CALL_SUBTEST_5(test_cuda_polygamma<float>()); + CALL_SUBTEST_5(test_cuda_polygamma<double>()); + + CALL_SUBTEST_5(test_cuda_zeta<float>()); + CALL_SUBTEST_5(test_cuda_zeta<double>()); + + CALL_SUBTEST_5(test_cuda_igamma<float>()); + CALL_SUBTEST_5(test_cuda_igammac<float>()); + + CALL_SUBTEST_5(test_cuda_igamma<double>()); + CALL_SUBTEST_5(test_cuda_igammac<double>()); +#endif +} |