// This file is part of Eigen, a lightweight C++ template library // for linear algebra. // // Copyright (C) 2010-2011 Jitse Niesen // Copyright (C) 2016 Gael Guennebaud // // 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/. #include "main.h" template bool equalsIdentity(const MatrixType& A) { typedef typename MatrixType::Scalar Scalar; Scalar zero = static_cast(0); bool offDiagOK = true; for (Index i = 0; i < A.rows(); ++i) { for (Index j = i+1; j < A.cols(); ++j) { offDiagOK = offDiagOK && (A(i,j) == zero); } } for (Index i = 0; i < A.rows(); ++i) { for (Index j = 0; j < (std::min)(i, A.cols()); ++j) { offDiagOK = offDiagOK && (A(i,j) == zero); } } bool diagOK = (A.diagonal().array() == 1).all(); return offDiagOK && diagOK; } template void check_extremity_accuracy(const VectorType &v, const typename VectorType::Scalar &low, const typename VectorType::Scalar &high) { typedef typename VectorType::Scalar Scalar; typedef typename VectorType::RealScalar RealScalar; RealScalar prec = internal::is_same::value ? NumTraits::dummy_precision()*10 : NumTraits::dummy_precision()/10; Index size = v.size(); if(size<20) return; for (int i=0; isize-6) { Scalar ref = (low*RealScalar(size-i-1))/RealScalar(size-1) + (high*RealScalar(i))/RealScalar(size-1); if(std::abs(ref)>1) { if(!internal::isApprox(v(i), ref, prec)) std::cout << v(i) << " != " << ref << " ; relative error: " << std::abs((v(i)-ref)/ref) << " ; required precision: " << prec << " ; range: " << low << "," << high << " ; i: " << i << "\n"; VERIFY(internal::isApprox(v(i), (low*RealScalar(size-i-1))/RealScalar(size-1) + (high*RealScalar(i))/RealScalar(size-1), prec)); } } } } template void testVectorType(const VectorType& base) { typedef typename VectorType::Scalar Scalar; typedef typename VectorType::RealScalar RealScalar; const Index size = base.size(); Scalar high = internal::random(-500,500); Scalar low = (size == 1 ? high : internal::random(-500,500)); if (numext::real(low)>numext::real(high)) std::swap(low,high); // check low==high if(internal::random(0.f,1.f)<0.05f) low = high; // check abs(low) >> abs(high) else if(size>2 && std::numeric_limits::max_exponent10>0 && internal::random(0.f,1.f)<0.1f) low = -internal::random(1,2) * RealScalar(std::pow(RealScalar(10),std::numeric_limits::max_exponent10/2)); const Scalar step = ((size == 1) ? 1 : (high-low)/RealScalar(size-1)); // check whether the result yields what we expect it to do VectorType m(base); m.setLinSpaced(size,low,high); if(!NumTraits::IsInteger) { VectorType n(size); for (int i=0; i::IsInteger) || (range_length>=size && (Index(range_length)%(size-1))==0) || (Index(range_length+1)::IsInteger) || (range_length>=size)) for (int i=0; i::IsInteger) CALL_SUBTEST( check_extremity_accuracy(m, low, high) ); } VERIFY( numext::real(m(m.size()-1)) <= numext::real(high) ); VERIFY( (m.array().real() <= numext::real(high)).all() ); VERIFY( (m.array().real() >= numext::real(low)).all() ); VERIFY( numext::real(m(m.size()-1)) >= numext::real(low) ); if(size>=1) { VERIFY( internal::isApprox(m(0),low) ); VERIFY_IS_EQUAL(m(0) , low); } // check whether everything works with row and col major vectors Matrix row_vector(size); Matrix col_vector(size); row_vector.setLinSpaced(size,low,high); col_vector.setLinSpaced(size,low,high); // when using the extended precision (e.g., FPU) the relative error might exceed 1 bit // when computing the squared sum in isApprox, thus the 2x factor. VERIFY( row_vector.isApprox(col_vector.transpose(), RealScalar(2)*NumTraits::epsilon())); Matrix size_changer(size+50); size_changer.setLinSpaced(size,low,high); VERIFY( size_changer.size() == size ); typedef Matrix ScalarMatrix; ScalarMatrix scalar; scalar.setLinSpaced(1,low,high); VERIFY_IS_APPROX( scalar, ScalarMatrix::Constant(high) ); VERIFY_IS_APPROX( ScalarMatrix::LinSpaced(1,low,high), ScalarMatrix::Constant(high) ); // regression test for bug 526 (linear vectorized transversal) if (size > 1 && (!NumTraits::IsInteger)) { m.tail(size-1).setLinSpaced(low, high); VERIFY_IS_APPROX(m(size-1), high); } // regression test for bug 1383 (LinSpaced with empty size/range) { Index n0 = VectorType::SizeAtCompileTime==Dynamic ? 0 : VectorType::SizeAtCompileTime; low = internal::random(); m = VectorType::LinSpaced(n0,low,low-RealScalar(1)); VERIFY(m.size()==n0); if(VectorType::SizeAtCompileTime==Dynamic) { VERIFY_IS_EQUAL(VectorType::LinSpaced(n0,0,Scalar(n0-1)).sum(),Scalar(0)); VERIFY_IS_EQUAL(VectorType::LinSpaced(n0,low,low-RealScalar(1)).sum(),Scalar(0)); } m.setLinSpaced(n0,0,Scalar(n0-1)); VERIFY(m.size()==n0); m.setLinSpaced(n0,low,low-RealScalar(1)); VERIFY(m.size()==n0); // empty range only: VERIFY_IS_APPROX(VectorType::LinSpaced(size,low,low),VectorType::Constant(size,low)); m.setLinSpaced(size,low,low); VERIFY_IS_APPROX(m,VectorType::Constant(size,low)); if(NumTraits::IsInteger) { VERIFY_IS_APPROX( VectorType::LinSpaced(size,low,low+Scalar(size-1)), VectorType::LinSpaced(size,low+Scalar(size-1),low).reverse() ); if(VectorType::SizeAtCompileTime==Dynamic) { // Check negative multiplicator path: for(Index k=1; k<5; ++k) VERIFY_IS_APPROX( VectorType::LinSpaced(size,low,low+Scalar((size-1)*k)), VectorType::LinSpaced(size,low+Scalar((size-1)*k),low).reverse() ); // Check negative divisor path: for(Index k=1; k<5; ++k) VERIFY_IS_APPROX( VectorType::LinSpaced(size*k,low,low+Scalar(size-1)), VectorType::LinSpaced(size*k,low+Scalar(size-1),low).reverse() ); } } } // test setUnit() if(m.size()>0) { for(Index k=0; k<10; ++k) { Index i = internal::random(0,m.size()-1); m.setUnit(i); VERIFY_IS_APPROX( m, VectorType::Unit(m.size(), i) ); } if(VectorType::SizeAtCompileTime==Dynamic) { Index i = internal::random(0,2*m.size()-1); m.setUnit(2*m.size(),i); VERIFY_IS_APPROX( m, VectorType::Unit(m.size(),i) ); } } } template void testMatrixType(const MatrixType& m) { using std::abs; const Index rows = m.rows(); const Index cols = m.cols(); typedef typename MatrixType::Scalar Scalar; typedef typename MatrixType::RealScalar RealScalar; Scalar s1; do { s1 = internal::random(); } while(abs(s1)::IsInteger)); MatrixType A; A.setIdentity(rows, cols); VERIFY(equalsIdentity(A)); VERIFY(equalsIdentity(MatrixType::Identity(rows, cols))); A = MatrixType::Constant(rows,cols,s1); Index i = internal::random(0,rows-1); Index j = internal::random(0,cols-1); VERIFY_IS_APPROX( MatrixType::Constant(rows,cols,s1)(i,j), s1 ); VERIFY_IS_APPROX( MatrixType::Constant(rows,cols,s1).coeff(i,j), s1 ); VERIFY_IS_APPROX( A(i,j), s1 ); } template void bug79() { // Assignment of a RowVectorXd to a MatrixXd (regression test for bug #79). VERIFY( (MatrixXd(RowVectorXd::LinSpaced(3, 0, 1)) - RowVector3d(0, 0.5, 1)).norm() < std::numeric_limits::epsilon() ); } template void bug1630() { Array4d x4 = Array4d::LinSpaced(0.0, 1.0); Array3d x3(Array4d::LinSpaced(0.0, 1.0).head(3)); VERIFY_IS_APPROX(x4.head(3), x3); } template void nullary_overflow() { // Check possible overflow issue int n = 60000; ArrayXi a1(n), a2(n); a1.setLinSpaced(n, 0, n-1); for(int i=0; i void nullary_internal_logic() { // check some internal logic VERIFY(( internal::has_nullary_operator >::value )); VERIFY(( !internal::has_unary_operator >::value )); VERIFY(( !internal::has_binary_operator >::value )); VERIFY(( internal::functor_has_linear_access >::ret )); VERIFY(( !internal::has_nullary_operator >::value )); VERIFY(( !internal::has_unary_operator >::value )); VERIFY(( internal::has_binary_operator >::value )); VERIFY(( !internal::functor_has_linear_access >::ret )); VERIFY(( !internal::has_nullary_operator >::value )); VERIFY(( internal::has_unary_operator >::value )); VERIFY(( !internal::has_binary_operator >::value )); VERIFY(( internal::functor_has_linear_access >::ret )); // Regression unit test for a weird MSVC bug. // Search "nullary_wrapper_workaround_msvc" in CoreEvaluators.h for the details. // See also traits::match. { MatrixXf A = MatrixXf::Random(3,3); Ref R = 2.0*A; VERIFY_IS_APPROX(R, A+A); Ref R1 = MatrixXf::Random(3,3)+A; VectorXi V = VectorXi::Random(3); Ref R2 = VectorXi::LinSpaced(3,1,3)+V; VERIFY_IS_APPROX(R2, V+Vector3i(1,2,3)); VERIFY(( internal::has_nullary_operator >::value )); VERIFY(( !internal::has_unary_operator >::value )); VERIFY(( !internal::has_binary_operator >::value )); VERIFY(( internal::functor_has_linear_access >::ret )); VERIFY(( !internal::has_nullary_operator >::value )); VERIFY(( internal::has_unary_operator >::value )); VERIFY(( !internal::has_binary_operator >::value )); VERIFY(( internal::functor_has_linear_access >::ret )); } } EIGEN_DECLARE_TEST(nullary) { CALL_SUBTEST_1( testMatrixType(Matrix2d()) ); CALL_SUBTEST_2( testMatrixType(MatrixXcf(internal::random(1,300),internal::random(1,300))) ); CALL_SUBTEST_3( testMatrixType(MatrixXf(internal::random(1,300),internal::random(1,300))) ); for(int i = 0; i < g_repeat*10; i++) { CALL_SUBTEST_3( testVectorType(VectorXcd(internal::random(1,30000))) ); CALL_SUBTEST_4( testVectorType(VectorXd(internal::random(1,30000))) ); CALL_SUBTEST_5( testVectorType(Vector4d()) ); // regression test for bug 232 CALL_SUBTEST_6( testVectorType(Vector3d()) ); CALL_SUBTEST_7( testVectorType(VectorXf(internal::random(1,30000))) ); CALL_SUBTEST_8( testVectorType(Vector3f()) ); CALL_SUBTEST_8( testVectorType(Vector4f()) ); CALL_SUBTEST_8( testVectorType(Matrix()) ); CALL_SUBTEST_8( testVectorType(Matrix()) ); CALL_SUBTEST_9( testVectorType(VectorXi(internal::random(1,10))) ); CALL_SUBTEST_9( testVectorType(VectorXi(internal::random(9,300))) ); CALL_SUBTEST_9( testVectorType(Matrix()) ); } CALL_SUBTEST_6( bug79<0>() ); CALL_SUBTEST_6( bug1630<0>() ); CALL_SUBTEST_9( nullary_overflow<0>() ); CALL_SUBTEST_10( nullary_internal_logic<0>() ); }