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142 lines
7.3 KiB
C++
142 lines
7.3 KiB
C++
// This file is part of Eigen, a lightweight C++ template library
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// for linear algebra.
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//
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// Copyright (C) 2006-2008 Benoit Jacob <jacob.benoit.1@gmail.com>
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//
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// This Source Code Form is subject to the terms of the Mozilla
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// Public License v. 2.0. If a copy of the MPL was not distributed
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// with this file, You can obtain one at http://mozilla.org/MPL/2.0/.
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static int nb_temporaries;
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inline void on_temporary_creation(int size) {
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// here's a great place to set a breakpoint when debugging failures in this test!
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if(size!=0) nb_temporaries++;
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}
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#define EIGEN_DENSE_STORAGE_CTOR_PLUGIN { on_temporary_creation(size); }
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#include "main.h"
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#define VERIFY_EVALUATION_COUNT(XPR,N) {\
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nb_temporaries = 0; \
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XPR; \
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if(nb_temporaries!=N) std::cerr << "nb_temporaries == " << nb_temporaries << "\n"; \
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VERIFY( (#XPR) && nb_temporaries==N ); \
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}
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template<typename MatrixType> void product_notemporary(const MatrixType& m)
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{
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/* This test checks the number of temporaries created
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* during the evaluation of a complex expression */
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typedef typename MatrixType::Index Index;
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typedef typename MatrixType::Scalar Scalar;
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typedef typename MatrixType::RealScalar RealScalar;
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typedef Matrix<Scalar, 1, Dynamic> RowVectorType;
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typedef Matrix<Scalar, Dynamic, 1> ColVectorType;
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typedef Matrix<Scalar, Dynamic, Dynamic, ColMajor> ColMajorMatrixType;
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typedef Matrix<Scalar, Dynamic, Dynamic, RowMajor> RowMajorMatrixType;
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Index rows = m.rows();
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Index cols = m.cols();
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ColMajorMatrixType m1 = MatrixType::Random(rows, cols),
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m2 = MatrixType::Random(rows, cols),
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m3(rows, cols);
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RowVectorType rv1 = RowVectorType::Random(rows), rvres(rows);
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ColVectorType cv1 = ColVectorType::Random(cols), cvres(cols);
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RowMajorMatrixType rm3(rows, cols);
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Scalar s1 = internal::random<Scalar>(),
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s2 = internal::random<Scalar>(),
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s3 = internal::random<Scalar>();
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Index c0 = internal::random<Index>(4,cols-8),
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c1 = internal::random<Index>(8,cols-c0),
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r0 = internal::random<Index>(4,cols-8),
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r1 = internal::random<Index>(8,rows-r0);
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VERIFY_EVALUATION_COUNT( m3 = (m1 * m2.adjoint()), 1);
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VERIFY_EVALUATION_COUNT( m3.noalias() = m1 * m2.adjoint(), 0);
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VERIFY_EVALUATION_COUNT( m3.noalias() = s1 * (m1 * m2.transpose()), 0);
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VERIFY_EVALUATION_COUNT( m3.noalias() = s1 * m1 * s2 * m2.adjoint(), 0);
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VERIFY_EVALUATION_COUNT( m3.noalias() = s1 * m1 * s2 * (m1*s3+m2*s2).adjoint(), 1);
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VERIFY_EVALUATION_COUNT( m3.noalias() = (s1 * m1).adjoint() * s2 * m2, 0);
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VERIFY_EVALUATION_COUNT( m3.noalias() += s1 * (-m1*s3).adjoint() * (s2 * m2 * s3), 0);
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VERIFY_EVALUATION_COUNT( m3.noalias() -= s1 * (m1.transpose() * m2), 0);
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VERIFY_EVALUATION_COUNT(( m3.block(r0,r0,r1,r1).noalias() += -m1.block(r0,c0,r1,c1) * (s2*m2.block(r0,c0,r1,c1)).adjoint() ), 0);
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VERIFY_EVALUATION_COUNT(( m3.block(r0,r0,r1,r1).noalias() -= s1 * m1.block(r0,c0,r1,c1) * m2.block(c0,r0,c1,r1) ), 0);
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// NOTE this is because the Block expression is not handled yet by our expression analyser
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VERIFY_EVALUATION_COUNT(( m3.block(r0,r0,r1,r1).noalias() = s1 * m1.block(r0,c0,r1,c1) * (s1*m2).block(c0,r0,c1,r1) ), 1);
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VERIFY_EVALUATION_COUNT( m3.noalias() -= (s1 * m1).template triangularView<Lower>() * m2, 0);
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VERIFY_EVALUATION_COUNT( rm3.noalias() = (s1 * m1.adjoint()).template triangularView<Upper>() * (m2+m2), 1);
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VERIFY_EVALUATION_COUNT( rm3.noalias() = (s1 * m1.adjoint()).template triangularView<UnitUpper>() * m2.adjoint(), 0);
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VERIFY_EVALUATION_COUNT( m3.template triangularView<Upper>() = (m1 * m2.adjoint()), 0);
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VERIFY_EVALUATION_COUNT( m3.template triangularView<Upper>() -= (m1 * m2.adjoint()), 0);
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// NOTE this is because the blas_traits require innerstride==1 to avoid a temporary, but that doesn't seem to be actually needed for the triangular products
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VERIFY_EVALUATION_COUNT( rm3.col(c0).noalias() = (s1 * m1.adjoint()).template triangularView<UnitUpper>() * (s2*m2.row(c0)).adjoint(), 1);
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VERIFY_EVALUATION_COUNT( m1.template triangularView<Lower>().solveInPlace(m3), 0);
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VERIFY_EVALUATION_COUNT( m1.adjoint().template triangularView<Lower>().solveInPlace(m3.transpose()), 0);
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VERIFY_EVALUATION_COUNT( m3.noalias() -= (s1 * m1).adjoint().template selfadjointView<Lower>() * (-m2*s3).adjoint(), 0);
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VERIFY_EVALUATION_COUNT( m3.noalias() = s2 * m2.adjoint() * (s1 * m1.adjoint()).template selfadjointView<Upper>(), 0);
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VERIFY_EVALUATION_COUNT( rm3.noalias() = (s1 * m1.adjoint()).template selfadjointView<Lower>() * m2.adjoint(), 0);
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// NOTE this is because the blas_traits require innerstride==1 to avoid a temporary, but that doesn't seem to be actually needed for the triangular products
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VERIFY_EVALUATION_COUNT( m3.col(c0).noalias() = (s1 * m1).adjoint().template selfadjointView<Lower>() * (-m2.row(c0)*s3).adjoint(), 1);
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VERIFY_EVALUATION_COUNT( m3.col(c0).noalias() -= (s1 * m1).adjoint().template selfadjointView<Upper>() * (-m2.row(c0)*s3).adjoint(), 1);
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VERIFY_EVALUATION_COUNT( m3.block(r0,c0,r1,c1).noalias() += m1.block(r0,r0,r1,r1).template selfadjointView<Upper>() * (s1*m2.block(r0,c0,r1,c1)), 0);
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VERIFY_EVALUATION_COUNT( m3.block(r0,c0,r1,c1).noalias() = m1.block(r0,r0,r1,r1).template selfadjointView<Upper>() * m2.block(r0,c0,r1,c1), 0);
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VERIFY_EVALUATION_COUNT( m3.template selfadjointView<Lower>().rankUpdate(m2.adjoint()), 0);
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// Here we will get 1 temporary for each resize operation of the lhs operator; resize(r1,c1) would lead to zero temporaries
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m3.resize(1,1);
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VERIFY_EVALUATION_COUNT( m3.noalias() = m1.block(r0,r0,r1,r1).template selfadjointView<Lower>() * m2.block(r0,c0,r1,c1), 1);
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m3.resize(1,1);
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VERIFY_EVALUATION_COUNT( m3.noalias() = m1.block(r0,r0,r1,r1).template triangularView<UnitUpper>() * m2.block(r0,c0,r1,c1), 1);
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// Zero temporaries for lazy products ...
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VERIFY_EVALUATION_COUNT( Scalar tmp = 0; tmp += Scalar(RealScalar(1)) / (m3.transpose().lazyProduct(m3)).diagonal().sum(), 0 );
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// ... and even no temporary for even deeply (>=2) nested products
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VERIFY_EVALUATION_COUNT( Scalar tmp = 0; tmp += Scalar(RealScalar(1)) / (m3.transpose() * m3).diagonal().sum(), 0 );
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VERIFY_EVALUATION_COUNT( Scalar tmp = 0; tmp += Scalar(RealScalar(1)) / (m3.transpose() * m3).diagonal().array().abs().sum(), 0 );
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// Zero temporaries for ... CoeffBasedProductMode
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// - does not work with GCC because of the <..>, we'ld need variadic macros ...
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//VERIFY_EVALUATION_COUNT( m3.col(0).head<5>() * m3.col(0).transpose() + m3.col(0).head<5>() * m3.col(0).transpose(), 0 );
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// Check matrix * vectors
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VERIFY_EVALUATION_COUNT( cvres.noalias() = m1 * cv1, 0 );
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VERIFY_EVALUATION_COUNT( cvres.noalias() -= m1 * cv1, 0 );
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VERIFY_EVALUATION_COUNT( cvres.noalias() -= m1 * m2.col(0), 0 );
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VERIFY_EVALUATION_COUNT( cvres.noalias() -= m1 * rv1.adjoint(), 0 );
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VERIFY_EVALUATION_COUNT( cvres.noalias() -= m1 * m2.row(0).transpose(), 0 );
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}
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void test_product_notemporary()
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{
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int s;
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for(int i = 0; i < g_repeat; i++) {
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s = internal::random<int>(16,EIGEN_TEST_MAX_SIZE);
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CALL_SUBTEST_1( product_notemporary(MatrixXf(s, s)) );
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s = internal::random<int>(16,EIGEN_TEST_MAX_SIZE);
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CALL_SUBTEST_2( product_notemporary(MatrixXd(s, s)) );
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s = internal::random<int>(16,EIGEN_TEST_MAX_SIZE/2);
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CALL_SUBTEST_3( product_notemporary(MatrixXcf(s,s)) );
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s = internal::random<int>(16,EIGEN_TEST_MAX_SIZE/2);
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CALL_SUBTEST_4( product_notemporary(MatrixXcd(s,s)) );
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}
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}
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