|  | // Ceres Solver - A fast non-linear least squares minimizer | 
|  | // Copyright 2022 Google Inc. All rights reserved. | 
|  | // http://ceres-solver.org/ | 
|  | // | 
|  | // Redistribution and use in source and binary forms, with or without | 
|  | // modification, are permitted provided that the following conditions are met: | 
|  | // | 
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|  | //   this list of conditions and the following disclaimer. | 
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|  | //   this list of conditions and the following disclaimer in the documentation | 
|  | //   and/or other materials provided with the distribution. | 
|  | // * Neither the name of Google Inc. nor the names of its contributors may be | 
|  | //   used to endorse or promote products derived from this software without | 
|  | //   specific prior written permission. | 
|  | // | 
|  | // THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS" | 
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|  | // IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE | 
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|  | // | 
|  | // Author: joydeepb@cs.utexas.edu (Joydeep Biswas) | 
|  |  | 
|  | #include <string> | 
|  |  | 
|  | #include "ceres/dense_cholesky.h" | 
|  | #include "ceres/internal/eigen.h" | 
|  |  | 
|  | #include "glog/logging.h" | 
|  | #include "gtest/gtest.h" | 
|  |  | 
|  | namespace ceres { | 
|  | namespace internal { | 
|  |  | 
|  | #ifndef CERES_NO_CUDA | 
|  |  | 
|  | TEST(CUDADenseCholesky, InvalidOptionOnCreate) { | 
|  | LinearSolver::Options options; | 
|  | ContextImpl context; | 
|  | options.context = &context; | 
|  | auto dense_cuda_solver = CUDADenseCholesky::Create(options); | 
|  | EXPECT_EQ(dense_cuda_solver, nullptr); | 
|  | } | 
|  |  | 
|  | // Tests the CUDA Cholesky solver with a simple 4x4 matrix. | 
|  | TEST(CUDADenseCholesky, Cholesky4x4Matrix) { | 
|  | Eigen::Matrix4d A; | 
|  | A <<  4,  12, -16, 0, | 
|  | 12,  37, -43, 0, | 
|  | -16, -43,  98, 0, | 
|  | 0,   0,   0, 1; | 
|  | const Eigen::Vector4d b = Eigen::Vector4d::Ones(); | 
|  | LinearSolver::Options options; | 
|  | ContextImpl context; | 
|  | options.context = &context; | 
|  | options.dense_linear_algebra_library_type = CUDA; | 
|  | auto dense_cuda_solver = CUDADenseCholesky::Create(options); | 
|  | ASSERT_NE(dense_cuda_solver, nullptr); | 
|  | std::string error_string; | 
|  | ASSERT_EQ(dense_cuda_solver->Factorize(A.cols(), | 
|  | A.data(), | 
|  | &error_string), | 
|  | LinearSolverTerminationType::LINEAR_SOLVER_SUCCESS); | 
|  | Eigen::Vector4d x = Eigen::Vector4d::Zero(); | 
|  | ASSERT_EQ(dense_cuda_solver->Solve(b.data(), x.data(), &error_string), | 
|  | LinearSolverTerminationType::LINEAR_SOLVER_SUCCESS); | 
|  | EXPECT_NEAR(x(0), 113.75 / 3.0, std::numeric_limits<double>::epsilon() * 10); | 
|  | EXPECT_NEAR(x(1), -31.0 / 3.0, std::numeric_limits<double>::epsilon() * 10); | 
|  | EXPECT_NEAR(x(2), 5.0 / 3.0, std::numeric_limits<double>::epsilon() * 10); | 
|  | EXPECT_NEAR(x(3), 1.0000, std::numeric_limits<double>::epsilon() * 10); | 
|  | } | 
|  |  | 
|  | TEST(CUDADenseCholesky, SingularMatrix) { | 
|  | Eigen::Matrix3d A; | 
|  | A <<  1, 0, 0, | 
|  | 0, 1, 0, | 
|  | 0, 0, 0; | 
|  | const Eigen::Vector3d b = Eigen::Vector3d::Ones(); | 
|  | LinearSolver::Options options; | 
|  | ContextImpl context; | 
|  | options.context = &context; | 
|  | options.dense_linear_algebra_library_type = CUDA; | 
|  | auto dense_cuda_solver = CUDADenseCholesky::Create(options); | 
|  | ASSERT_NE(dense_cuda_solver, nullptr); | 
|  | std::string error_string; | 
|  | ASSERT_EQ(dense_cuda_solver->Factorize(A.cols(), | 
|  | A.data(), | 
|  | &error_string), | 
|  | LinearSolverTerminationType::LINEAR_SOLVER_FAILURE); | 
|  | } | 
|  |  | 
|  | TEST(CUDADenseCholesky, NegativeMatrix) { | 
|  | Eigen::Matrix3d A; | 
|  | A <<  1, 0, 0, | 
|  | 0, 1, 0, | 
|  | 0, 0, -1; | 
|  | const Eigen::Vector3d b = Eigen::Vector3d::Ones(); | 
|  | LinearSolver::Options options; | 
|  | ContextImpl context; | 
|  | options.context = &context; | 
|  | options.dense_linear_algebra_library_type = CUDA; | 
|  | auto dense_cuda_solver = CUDADenseCholesky::Create(options); | 
|  | ASSERT_NE(dense_cuda_solver, nullptr); | 
|  | std::string error_string; | 
|  | ASSERT_EQ(dense_cuda_solver->Factorize(A.cols(), | 
|  | A.data(), | 
|  | &error_string), | 
|  | LinearSolverTerminationType::LINEAR_SOLVER_FAILURE); | 
|  | } | 
|  |  | 
|  | TEST(CUDADenseCholesky, MustFactorizeBeforeSolve) { | 
|  | const Eigen::Vector3d b = Eigen::Vector3d::Ones(); | 
|  | LinearSolver::Options options; | 
|  | ContextImpl context; | 
|  | options.context = &context; | 
|  | options.dense_linear_algebra_library_type = CUDA; | 
|  | auto dense_cuda_solver = CUDADenseCholesky::Create(options); | 
|  | ASSERT_NE(dense_cuda_solver, nullptr); | 
|  | std::string error_string; | 
|  | ASSERT_EQ(dense_cuda_solver->Solve(b.data(), nullptr, &error_string), | 
|  | LinearSolverTerminationType::LINEAR_SOLVER_FATAL_ERROR); | 
|  | } | 
|  |  | 
|  | TEST(CUDADenseCholesky, Randomized1600x1600Tests) { | 
|  | const int kNumCols = 1600; | 
|  | using LhsType = Eigen::Matrix<double, Eigen::Dynamic, Eigen::Dynamic>; | 
|  | using RhsType = Eigen::Matrix<double, Eigen::Dynamic, 1>; | 
|  | using SolutionType = Eigen::Matrix<double, Eigen::Dynamic, 1>; | 
|  |  | 
|  | LinearSolver::Options options; | 
|  | ContextImpl context; | 
|  | options.context = &context; | 
|  | options.dense_linear_algebra_library_type = ceres::CUDA; | 
|  | std::unique_ptr<DenseCholesky> dense_cholesky = CUDADenseCholesky::Create(options); | 
|  |  | 
|  | const int kNumTrials = 20; | 
|  | for (int i = 0; i < kNumTrials; ++i) { | 
|  | LhsType lhs = LhsType::Random(kNumCols, kNumCols); | 
|  | lhs = lhs.transpose() * lhs; | 
|  | lhs += 1e-3 * LhsType::Identity(kNumCols, kNumCols); | 
|  | SolutionType x_expected = SolutionType::Random(kNumCols); | 
|  | RhsType rhs = lhs * x_expected; | 
|  | SolutionType x_computed = SolutionType::Zero(kNumCols); | 
|  | // Sanity check the random matrix sizes. | 
|  | EXPECT_EQ(lhs.rows(), kNumCols); | 
|  | EXPECT_EQ(lhs.cols(), kNumCols); | 
|  | EXPECT_EQ(rhs.rows(), kNumCols); | 
|  | EXPECT_EQ(rhs.cols(), 1); | 
|  | EXPECT_EQ(x_expected.rows(), kNumCols); | 
|  | EXPECT_EQ(x_expected.cols(), 1); | 
|  | EXPECT_EQ(x_computed.rows(), kNumCols); | 
|  | EXPECT_EQ(x_computed.cols(), 1); | 
|  | LinearSolver::Summary summary; | 
|  | summary.termination_type = dense_cholesky->FactorAndSolve(kNumCols, | 
|  | lhs.data(), | 
|  | rhs.data(), | 
|  | x_computed.data(), | 
|  | &summary.message); | 
|  | ASSERT_EQ(summary.termination_type, LINEAR_SOLVER_SUCCESS); | 
|  | ASSERT_NEAR((x_computed - x_expected).norm() / x_expected.norm(), | 
|  | 0.0, | 
|  | 1e-10); | 
|  | } | 
|  | } | 
|  |  | 
|  | #endif  // CERES_NO_CUDA | 
|  |  | 
|  | }  // namespace internal | 
|  | }  // namespace ceres |