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130 lines
4.2 KiB
C++
130 lines
4.2 KiB
C++
#include <iostream>
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#include <Eigen/Core>
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#include <Eigen/Dense>
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#include <Eigen/IterativeLinearSolvers>
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#include <unsupported/Eigen/IterativeSolvers>
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class MatrixReplacement;
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using Eigen::SparseMatrix;
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namespace Eigen {
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namespace internal {
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// MatrixReplacement looks-like a SparseMatrix, so let's inherits its traits:
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template<>
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struct traits<MatrixReplacement> : public Eigen::internal::traits<Eigen::SparseMatrix<double> >
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{};
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}
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}
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// Example of a matrix-free wrapper from a user type to Eigen's compatible type
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// For the sake of simplicity, this example simply wrap a Eigen::SparseMatrix.
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class MatrixReplacement : public Eigen::EigenBase<MatrixReplacement> {
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public:
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// Required typedefs, constants, and method:
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typedef double Scalar;
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typedef double RealScalar;
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typedef int StorageIndex;
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enum {
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ColsAtCompileTime = Eigen::Dynamic,
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MaxColsAtCompileTime = Eigen::Dynamic,
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IsRowMajor = false
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};
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Index rows() const { return mp_mat->rows(); }
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Index cols() const { return mp_mat->cols(); }
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template<typename Rhs>
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Eigen::Product<MatrixReplacement,Rhs,Eigen::AliasFreeProduct> operator*(const Eigen::MatrixBase<Rhs>& x) const {
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return Eigen::Product<MatrixReplacement,Rhs,Eigen::AliasFreeProduct>(*this, x.derived());
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}
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// Custom API:
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MatrixReplacement() : mp_mat(0) {}
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void attachMyMatrix(const SparseMatrix<double> &mat) {
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mp_mat = &mat;
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}
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const SparseMatrix<double> my_matrix() const { return *mp_mat; }
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private:
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const SparseMatrix<double> *mp_mat;
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};
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// Implementation of MatrixReplacement * Eigen::DenseVector though a specialization of internal::generic_product_impl:
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namespace Eigen {
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namespace internal {
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template<typename Rhs>
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struct generic_product_impl<MatrixReplacement, Rhs, SparseShape, DenseShape, GemvProduct> // GEMV stands for matrix-vector
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: generic_product_impl_base<MatrixReplacement,Rhs,generic_product_impl<MatrixReplacement,Rhs> >
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{
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typedef typename Product<MatrixReplacement,Rhs>::Scalar Scalar;
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template<typename Dest>
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static void scaleAndAddTo(Dest& dst, const MatrixReplacement& lhs, const Rhs& rhs, const Scalar& alpha)
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{
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// This method should implement "dst += alpha * lhs * rhs" inplace,
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// however, for iterative solvers, alpha is always equal to 1, so let's not bother about it.
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assert(alpha==Scalar(1) && "scaling is not implemented");
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EIGEN_ONLY_USED_FOR_DEBUG(alpha);
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// Here we could simply call dst.noalias() += lhs.my_matrix() * rhs,
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// but let's do something fancier (and less efficient):
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for(Index i=0; i<lhs.cols(); ++i)
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dst += rhs(i) * lhs.my_matrix().col(i);
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}
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};
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}
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}
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int main()
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{
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int n = 10;
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Eigen::SparseMatrix<double> S = Eigen::MatrixXd::Random(n,n).sparseView(0.5,1);
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S = S.transpose()*S;
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MatrixReplacement A;
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A.attachMyMatrix(S);
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Eigen::VectorXd b(n), x;
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b.setRandom();
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// Solve Ax = b using various iterative solver with matrix-free version:
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{
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Eigen::ConjugateGradient<MatrixReplacement, Eigen::Lower|Eigen::Upper, Eigen::IdentityPreconditioner> cg;
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cg.compute(A);
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x = cg.solve(b);
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std::cout << "CG: #iterations: " << cg.iterations() << ", estimated error: " << cg.error() << std::endl;
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}
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{
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Eigen::BiCGSTAB<MatrixReplacement, Eigen::IdentityPreconditioner> bicg;
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bicg.compute(A);
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x = bicg.solve(b);
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std::cout << "BiCGSTAB: #iterations: " << bicg.iterations() << ", estimated error: " << bicg.error() << std::endl;
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}
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{
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Eigen::GMRES<MatrixReplacement, Eigen::IdentityPreconditioner> gmres;
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gmres.compute(A);
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x = gmres.solve(b);
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std::cout << "GMRES: #iterations: " << gmres.iterations() << ", estimated error: " << gmres.error() << std::endl;
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}
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{
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Eigen::DGMRES<MatrixReplacement, Eigen::IdentityPreconditioner> gmres;
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gmres.compute(A);
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x = gmres.solve(b);
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std::cout << "DGMRES: #iterations: " << gmres.iterations() << ", estimated error: " << gmres.error() << std::endl;
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}
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{
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Eigen::MINRES<MatrixReplacement, Eigen::Lower|Eigen::Upper, Eigen::IdentityPreconditioner> minres;
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minres.compute(A);
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x = minres.solve(b);
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std::cout << "MINRES: #iterations: " << minres.iterations() << ", estimated error: " << minres.error() << std::endl;
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}
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}
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