mirror of
https://github.com/triqs/dft_tools
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9265c2db7f
- Cleaned of the eigensystems computations (worker is simpler, decision at runtime, etc..). - Fix #119 : When the matrix is in C order, the fortran lapack sees in fact its conjugate, so we need to conjugate the eigenvectors at the end. NB : not true if the storage order of the matrix is already fortran of course.
153 lines
6.5 KiB
C++
153 lines
6.5 KiB
C++
/*******************************************************************************
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*
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* TRIQS: a Toolbox for Research in Interacting Quantum Systems
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*
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* Copyright (C) 2011-2014 by O. Parcollet
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*
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* TRIQS is free software: you can redistribute it and/or modify it under the
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* terms of the GNU General Public License as published by the Free Software
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* Foundation, either version 3 of the License, or (at your option) any later
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* version.
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*
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* TRIQS is distributed in the hope that it will be useful, but WITHOUT ANY
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* WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS
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* FOR A PARTICULAR PURPOSE. See the GNU General Public License for more
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* details.
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*
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* You should have received a copy of the GNU General Public License along with
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* TRIQS. If not, see <http://www.gnu.org/licenses/>.
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*
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******************************************************************************/
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#pragma once
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#include <type_traits>
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#include "../array.hpp"
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#include "../matrix.hpp"
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#include "../vector.hpp"
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#include <triqs/utility/exceptions.hpp>
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namespace triqs {
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namespace arrays {
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namespace linalg {
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extern "C" {
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void TRIQS_FORTRAN_MANGLING(dsyev)(char *, char *, // JOBZ and UPLO
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int &, // Matrix Size
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double[], // matrix
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int &, // LDA of the matrix
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double[], // Eigenvalues array
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double[], // WORK
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int &, // LWORK
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int & // INFO
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);
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void TRIQS_FORTRAN_MANGLING(zheev)(char *, char *, // JOBZ and UPLO
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int &, // Matrix Size
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std::complex<double> [], // matrix
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int &, // LDA of the matrix
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double[], // Eigenvalues array
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std::complex<double> [], // WORK
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int &, // LWORK
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double[], // WORK2
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int & // INFO
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);
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}
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/**
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* A worker to call lapack routine with the matrices. Handles both real and complex case.
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*/
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template <typename T> class eigenelements_worker {
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public:
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eigenelements_worker() = default;
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/// The eigenvalues
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template <typename M> array<double, 1> eigenvalues(M &mat) const {
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_prepare(mat);
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_invoke(is_complex<T>(), 'N', mat);
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return ev;
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}
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/// The eigensystems
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template <typename M> std::pair<array<double, 1>, matrix<T>> eigenelements(M &mat) const {
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_prepare(mat);
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_invoke(is_complex<T>(), 'V', mat);
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return {ev, _conj(mat, is_complex<T>())};
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}
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private:
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mutable array<double, 1> ev, work2; // work2 only used for T complex
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mutable array<T, 1> work;
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mutable int dim, lwork, info;
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// dispatch the implementation of invoke for T = double or complex
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void _invoke(std::false_type, char compz, matrix_view<double> mat) const { // the case double (is_complex = false)
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char uplo = 'U';
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TRIQS_FORTRAN_MANGLING(dsyev)(&compz, &uplo, dim, mat.data_start(), dim, ev.data_start(), work.data_start(), lwork, info);
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if (info) TRIQS_RUNTIME_ERROR << "eigenelements_worker :error code dsyev : " << info << " for matrix " << mat;
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}
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void _invoke(std::true_type, char compz, matrix_view<std::complex<double>> mat) const { // the case complex (is_complex = true)
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char uplo = 'U';
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TRIQS_FORTRAN_MANGLING(zheev)(&compz, &uplo, dim, mat.data_start(), dim, ev.data_start(), work.data_start(), lwork,
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work2.data_start(), info);
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if (info) TRIQS_RUNTIME_ERROR << "eigenelements_worker :error code zheev : " << info << " for matrix " << mat;
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}
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template <typename M> void _prepare(M const &mat) const {
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if (mat.is_empty()) TRIQS_RUNTIME_ERROR << "eigenelements_worker : the matrix is empty : matrix = " << mat << " ";
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if (!mat.is_square()) TRIQS_RUNTIME_ERROR << "eigenelements_worker : the matrix " << mat << " is not square ";
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if (!mat.indexmap().is_contiguous())
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TRIQS_RUNTIME_ERROR << "eigenelements_worker : the matrix " << mat << " is not contiguous in memory";
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dim = first_dim(mat);
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ev.resize(dim);
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lwork = 64 * dim;
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work.resize(lwork);
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if (is_complex<T>::value) work2.resize(lwork);
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}
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template <typename M> matrix<double> _conj(M const &m, std::false_type) const { return m; }
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// impl : since we call fortran lapack, if the order is C (!), the matrix is transposed, or conjugated, so we obtain
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// the conjugate of the eigenvectors... Fix #119.
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// Do nothing if the order is fortran already...
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template <typename M> matrix<std::complex<double>> _conj(M const &m, std::true_type) const {
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if (m.memory_layout_is_c())
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return conj(m);
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else
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return m.transpose(); // the matrix mat is understood as a fortran matrix. After the lapack, in memory, it contains the
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// correct answer.
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// but since it is a fortran matrix, the C will see its transpose. We need to compensate this transpose (!).
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}
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};
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//--------------------------------
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/**
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* Simple diagonalization call, return all eigenelements.
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* Handles both real and complex case.
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* @param M : the matrix or view. MUST be contiguous. It is modified by the call.
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* If you wish not to modify it, call eigenelements(make_clone(A))
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*/
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template <typename M>
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std::pair<array<double, 1>, matrix<typename std14::remove_reference_t<M>::value_type>> eigenelements(M &&m) {
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return eigenelements_worker<typename std14::remove_reference_t<M>::value_type>().eigenelements(m);
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}
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//--------------------------------
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/**
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* Simple diagonalization call, returning only the eigenvalues.
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* Handles both real and complex case.
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* @param M : the matrix VIEW : it MUST be contiguous
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* @param take_copy : makes a copy of the matrix before calling lapack, so that the original is preserved.
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* if false : no copy is made and the content of the matrix M is destroyed.
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* if true : a copy is made, M is preserved, but of course it is slower...
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*/
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template <typename M> array<double, 1> eigenvalues(M &&m) {
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return eigenelements_worker<typename std14::remove_reference_t<M>::value_type>().eigenvalues(m);
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}
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}
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}
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} // namespace triqs::arrays::linalg
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