From 53fa8517245e0136c83b77526b05ce67de232a56 Mon Sep 17 00:00:00 2001 From: Gael Guennebaud Date: Sat, 12 Nov 2011 14:11:27 +0100 Subject: move sparse solvers from unsupported/ to main Eigen/ and remove the "not stable yet" warning --- Eigen/src/SuperLUSupport/CMakeLists.txt | 6 + Eigen/src/SuperLUSupport/SuperLUSupport.h | 989 ++++++++++++++++++++++++++++++ 2 files changed, 995 insertions(+) create mode 100644 Eigen/src/SuperLUSupport/CMakeLists.txt create mode 100644 Eigen/src/SuperLUSupport/SuperLUSupport.h (limited to 'Eigen/src/SuperLUSupport') diff --git a/Eigen/src/SuperLUSupport/CMakeLists.txt b/Eigen/src/SuperLUSupport/CMakeLists.txt new file mode 100644 index 000000000..b28ebe583 --- /dev/null +++ b/Eigen/src/SuperLUSupport/CMakeLists.txt @@ -0,0 +1,6 @@ +FILE(GLOB Eigen_SuperLUSupport_SRCS "*.h") + +INSTALL(FILES + ${Eigen_SuperLUSupport_SRCS} + DESTINATION ${INCLUDE_INSTALL_DIR}/Eigen/src/SuperLUSupport COMPONENT Devel + ) diff --git a/Eigen/src/SuperLUSupport/SuperLUSupport.h b/Eigen/src/SuperLUSupport/SuperLUSupport.h new file mode 100644 index 000000000..e485a9f50 --- /dev/null +++ b/Eigen/src/SuperLUSupport/SuperLUSupport.h @@ -0,0 +1,989 @@ +// This file is part of Eigen, a lightweight C++ template library +// for linear algebra. +// +// Copyright (C) 2008-2011 Gael Guennebaud +// +// Eigen is free software; you can redistribute it and/or +// modify it under the terms of the GNU Lesser General Public +// License as published by the Free Software Foundation; either +// version 3 of the License, or (at your option) any later version. +// +// Alternatively, you can redistribute it and/or +// modify it under the terms of the GNU General Public License as +// published by the Free Software Foundation; either version 2 of +// the License, or (at your option) any later version. +// +// Eigen is distributed in the hope that it will be useful, but WITHOUT ANY +// WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS +// FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License or the +// GNU General Public License for more details. +// +// You should have received a copy of the GNU Lesser General Public +// License and a copy of the GNU General Public License along with +// Eigen. If not, see . + +#ifndef EIGEN_SUPERLUSUPPORT_H +#define EIGEN_SUPERLUSUPPORT_H + +#define DECL_GSSVX(PREFIX,FLOATTYPE,KEYTYPE) \ + extern "C" { \ + typedef struct { FLOATTYPE for_lu; FLOATTYPE total_needed; int expansions; } PREFIX##mem_usage_t; \ + extern void PREFIX##gssvx(superlu_options_t *, SuperMatrix *, int *, int *, int *, \ + char *, FLOATTYPE *, FLOATTYPE *, SuperMatrix *, SuperMatrix *, \ + void *, int, SuperMatrix *, SuperMatrix *, \ + FLOATTYPE *, FLOATTYPE *, FLOATTYPE *, FLOATTYPE *, \ + PREFIX##mem_usage_t *, SuperLUStat_t *, int *); \ + } \ + inline float SuperLU_gssvx(superlu_options_t *options, SuperMatrix *A, \ + int *perm_c, int *perm_r, int *etree, char *equed, \ + FLOATTYPE *R, FLOATTYPE *C, SuperMatrix *L, \ + SuperMatrix *U, void *work, int lwork, \ + SuperMatrix *B, SuperMatrix *X, \ + FLOATTYPE *recip_pivot_growth, \ + FLOATTYPE *rcond, FLOATTYPE *ferr, FLOATTYPE *berr, \ + SuperLUStat_t *stats, int *info, KEYTYPE) { \ + PREFIX##mem_usage_t mem_usage; \ + PREFIX##gssvx(options, A, perm_c, perm_r, etree, equed, R, C, L, \ + U, work, lwork, B, X, recip_pivot_growth, rcond, \ + ferr, berr, &mem_usage, stats, info); \ + return mem_usage.for_lu; /* bytes used by the factor storage */ \ + } + +DECL_GSSVX(s,float,float) +DECL_GSSVX(c,float,std::complex) +DECL_GSSVX(d,double,double) +DECL_GSSVX(z,double,std::complex) + +#ifdef MILU_ALPHA +#define EIGEN_SUPERLU_HAS_ILU +#endif + +#ifdef EIGEN_SUPERLU_HAS_ILU + +// similarly for the incomplete factorization using gsisx +#define DECL_GSISX(PREFIX,FLOATTYPE,KEYTYPE) \ + extern "C" { \ + extern void PREFIX##gsisx(superlu_options_t *, SuperMatrix *, int *, int *, int *, \ + char *, FLOATTYPE *, FLOATTYPE *, SuperMatrix *, SuperMatrix *, \ + void *, int, SuperMatrix *, SuperMatrix *, FLOATTYPE *, FLOATTYPE *, \ + PREFIX##mem_usage_t *, SuperLUStat_t *, int *); \ + } \ + inline float SuperLU_gsisx(superlu_options_t *options, SuperMatrix *A, \ + int *perm_c, int *perm_r, int *etree, char *equed, \ + FLOATTYPE *R, FLOATTYPE *C, SuperMatrix *L, \ + SuperMatrix *U, void *work, int lwork, \ + SuperMatrix *B, SuperMatrix *X, \ + FLOATTYPE *recip_pivot_growth, \ + FLOATTYPE *rcond, \ + SuperLUStat_t *stats, int *info, KEYTYPE) { \ + PREFIX##mem_usage_t mem_usage; \ + PREFIX##gsisx(options, A, perm_c, perm_r, etree, equed, R, C, L, \ + U, work, lwork, B, X, recip_pivot_growth, rcond, \ + &mem_usage, stats, info); \ + return mem_usage.for_lu; /* bytes used by the factor storage */ \ + } + +DECL_GSISX(s,float,float) +DECL_GSISX(c,float,std::complex) +DECL_GSISX(d,double,double) +DECL_GSISX(z,double,std::complex) + +#endif + +template +struct SluMatrixMapHelper; + +/** \internal + * + * A wrapper class for SuperLU matrices. It supports only compressed sparse matrices + * and dense matrices. Supernodal and other fancy format are not supported by this wrapper. + * + * This wrapper class mainly aims to avoids the need of dynamic allocation of the storage structure. + */ +struct SluMatrix : SuperMatrix +{ + SluMatrix() + { + Store = &storage; + } + + SluMatrix(const SluMatrix& other) + : SuperMatrix(other) + { + Store = &storage; + storage = other.storage; + } + + SluMatrix& operator=(const SluMatrix& other) + { + SuperMatrix::operator=(static_cast(other)); + Store = &storage; + storage = other.storage; + return *this; + } + + struct + { + union {int nnz;int lda;}; + void *values; + int *innerInd; + int *outerInd; + } storage; + + void setStorageType(Stype_t t) + { + Stype = t; + if (t==SLU_NC || t==SLU_NR || t==SLU_DN) + Store = &storage; + else + { + eigen_assert(false && "storage type not supported"); + Store = 0; + } + } + + template + void setScalarType() + { + if (internal::is_same::value) + Dtype = SLU_S; + else if (internal::is_same::value) + Dtype = SLU_D; + else if (internal::is_same >::value) + Dtype = SLU_C; + else if (internal::is_same >::value) + Dtype = SLU_Z; + else + { + eigen_assert(false && "Scalar type not supported by SuperLU"); + } + } + + template + static SluMatrix Map(Matrix& mat) + { + typedef Matrix MatrixType; + eigen_assert( ((Options&RowMajor)!=RowMajor) && "row-major dense matrices is not supported by SuperLU"); + SluMatrix res; + res.setStorageType(SLU_DN); + res.setScalarType(); + res.Mtype = SLU_GE; + + res.nrow = mat.rows(); + res.ncol = mat.cols(); + + res.storage.lda = MatrixType::IsVectorAtCompileTime ? mat.size() : mat.outerStride(); + res.storage.values = mat.data(); + return res; + } + + template + static SluMatrix Map(SparseMatrixBase& mat) + { + SluMatrix res; + if ((MatrixType::Flags&RowMajorBit)==RowMajorBit) + { + res.setStorageType(SLU_NR); + res.nrow = mat.cols(); + res.ncol = mat.rows(); + } + else + { + res.setStorageType(SLU_NC); + res.nrow = mat.rows(); + res.ncol = mat.cols(); + } + + res.Mtype = SLU_GE; + + res.storage.nnz = mat.nonZeros(); + res.storage.values = mat.derived()._valuePtr(); + res.storage.innerInd = mat.derived()._innerIndexPtr(); + res.storage.outerInd = mat.derived()._outerIndexPtr(); + + res.setScalarType(); + + // FIXME the following is not very accurate + if (MatrixType::Flags & Upper) + res.Mtype = SLU_TRU; + if (MatrixType::Flags & Lower) + res.Mtype = SLU_TRL; + + eigen_assert(((MatrixType::Flags & SelfAdjoint)==0) && "SelfAdjoint matrix shape not supported by SuperLU"); + + return res; + } +}; + +template +struct SluMatrixMapHelper > +{ + typedef Matrix MatrixType; + static void run(MatrixType& mat, SluMatrix& res) + { + eigen_assert( ((Options&RowMajor)!=RowMajor) && "row-major dense matrices is not supported by SuperLU"); + res.setStorageType(SLU_DN); + res.setScalarType(); + res.Mtype = SLU_GE; + + res.nrow = mat.rows(); + res.ncol = mat.cols(); + + res.storage.lda = mat.outerStride(); + res.storage.values = mat.data(); + } +}; + +template +struct SluMatrixMapHelper > +{ + typedef Derived MatrixType; + static void run(MatrixType& mat, SluMatrix& res) + { + if ((MatrixType::Flags&RowMajorBit)==RowMajorBit) + { + res.setStorageType(SLU_NR); + res.nrow = mat.cols(); + res.ncol = mat.rows(); + } + else + { + res.setStorageType(SLU_NC); + res.nrow = mat.rows(); + res.ncol = mat.cols(); + } + + res.Mtype = SLU_GE; + + res.storage.nnz = mat.nonZeros(); + res.storage.values = mat._valuePtr(); + res.storage.innerInd = mat._innerIndexPtr(); + res.storage.outerInd = mat._outerIndexPtr(); + + res.setScalarType(); + + // FIXME the following is not very accurate + if (MatrixType::Flags & Upper) + res.Mtype = SLU_TRU; + if (MatrixType::Flags & Lower) + res.Mtype = SLU_TRL; + + eigen_assert(((MatrixType::Flags & SelfAdjoint)==0) && "SelfAdjoint matrix shape not supported by SuperLU"); + } +}; + +namespace internal { + +template +SluMatrix asSluMatrix(MatrixType& mat) +{ + return SluMatrix::Map(mat); +} + +/** View a Super LU matrix as an Eigen expression */ +template +MappedSparseMatrix map_superlu(SluMatrix& sluMat) +{ + eigen_assert((Flags&RowMajor)==RowMajor && sluMat.Stype == SLU_NR + || (Flags&ColMajor)==ColMajor && sluMat.Stype == SLU_NC); + + Index outerSize = (Flags&RowMajor)==RowMajor ? sluMat.ncol : sluMat.nrow; + + return MappedSparseMatrix( + sluMat.nrow, sluMat.ncol, sluMat.storage.outerInd[outerSize], + sluMat.storage.outerInd, sluMat.storage.innerInd, reinterpret_cast(sluMat.storage.values) ); +} + +} // end namespace internal + + +template +class SuperLUBase +{ + public: + typedef _MatrixType MatrixType; + typedef typename MatrixType::Scalar Scalar; + typedef typename MatrixType::RealScalar RealScalar; + typedef typename MatrixType::Index Index; + typedef Matrix Vector; + typedef Matrix IntRowVectorType; + typedef Matrix IntColVectorType; + typedef SparseMatrix LUMatrixType; + + public: + + SuperLUBase() {} + + ~SuperLUBase() + { + clearFactors(); + } + + Derived& derived() { return *static_cast(this); } + const Derived& derived() const { return *static_cast(this); } + + inline Index rows() const { return m_matrix.rows(); } + inline Index cols() const { return m_matrix.cols(); } + + /** \returns a reference to the Super LU option object to configure the Super LU algorithms. */ + inline superlu_options_t& options() { return m_sluOptions; } + + /** \brief Reports whether previous computation was successful. + * + * \returns \c Success if computation was succesful, + * \c NumericalIssue if the matrix.appears to be negative. + */ + ComputationInfo info() const + { + eigen_assert(m_isInitialized && "Decomposition is not initialized."); + return m_info; + } + + /** Computes the sparse Cholesky decomposition of \a matrix */ + void compute(const MatrixType& matrix) + { + derived().analyzePattern(matrix); + derived().factorize(matrix); + } + + /** \returns the solution x of \f$ A x = b \f$ using the current decomposition of A. + * + * \sa compute() + */ + template + inline const internal::solve_retval solve(const MatrixBase& b) const + { + eigen_assert(m_isInitialized && "SuperLU is not initialized."); + eigen_assert(rows()==b.rows() + && "SuperLU::solve(): invalid number of rows of the right hand side matrix b"); + return internal::solve_retval(*this, b.derived()); + } + + /** \returns the solution x of \f$ A x = b \f$ using the current decomposition of A. + * + * \sa compute() + */ +// template +// inline const internal::sparse_solve_retval solve(const SparseMatrixBase& b) const +// { +// eigen_assert(m_isInitialized && "SuperLU is not initialized."); +// eigen_assert(rows()==b.rows() +// && "SuperLU::solve(): invalid number of rows of the right hand side matrix b"); +// return internal::sparse_solve_retval(*this, b.derived()); +// } + + /** Performs a symbolic decomposition on the sparcity of \a matrix. + * + * This function is particularly useful when solving for several problems having the same structure. + * + * \sa factorize() + */ + void analyzePattern(const MatrixType& /*matrix*/) + { + m_isInitialized = true; + m_info = Success; + m_analysisIsOk = true; + m_factorizationIsOk = false; + } + + template + void dumpMemory(Stream& s) + {} + + protected: + + void initFactorization(const MatrixType& a) + { + const int size = a.rows(); + m_matrix = a; + + m_sluA = internal::asSluMatrix(m_matrix); + clearFactors(); + + m_p.resize(size); + m_q.resize(size); + m_sluRscale.resize(size); + m_sluCscale.resize(size); + m_sluEtree.resize(size); + + // set empty B and X + m_sluB.setStorageType(SLU_DN); + m_sluB.setScalarType(); + m_sluB.Mtype = SLU_GE; + m_sluB.storage.values = 0; + m_sluB.nrow = 0; + m_sluB.ncol = 0; + m_sluB.storage.lda = size; + m_sluX = m_sluB; + + m_extractedDataAreDirty = true; + } + + void init() + { + m_info = InvalidInput; + m_isInitialized = false; + m_sluL.Store = 0; + m_sluU.Store = 0; + } + + void extractData() const; + + void clearFactors() + { + if(m_sluL.Store) + Destroy_SuperNode_Matrix(&m_sluL); + if(m_sluU.Store) + Destroy_CompCol_Matrix(&m_sluU); + + m_sluL.Store = 0; + m_sluU.Store = 0; + + memset(&m_sluL,0,sizeof m_sluL); + memset(&m_sluU,0,sizeof m_sluU); + } + + // cached data to reduce reallocation, etc. + mutable LUMatrixType m_l; + mutable LUMatrixType m_u; + mutable IntColVectorType m_p; + mutable IntRowVectorType m_q; + + mutable LUMatrixType m_matrix; // copy of the factorized matrix + mutable SluMatrix m_sluA; + mutable SuperMatrix m_sluL, m_sluU; + mutable SluMatrix m_sluB, m_sluX; + mutable SuperLUStat_t m_sluStat; + mutable superlu_options_t m_sluOptions; + mutable std::vector m_sluEtree; + mutable Matrix m_sluRscale, m_sluCscale; + mutable Matrix m_sluFerr, m_sluBerr; + mutable char m_sluEqued; + + mutable ComputationInfo m_info; + bool m_isInitialized; + int m_factorizationIsOk; + int m_analysisIsOk; + mutable bool m_extractedDataAreDirty; +}; + + +template +class SuperLU : public SuperLUBase<_MatrixType,SuperLU<_MatrixType> > +{ + public: + typedef SuperLUBase<_MatrixType,SuperLU> Base; + typedef _MatrixType MatrixType; + typedef typename Base::Scalar Scalar; + typedef typename Base::RealScalar RealScalar; + typedef typename Base::Index Index; + typedef typename Base::IntRowVectorType IntRowVectorType; + typedef typename Base::IntColVectorType IntColVectorType; + typedef typename Base::LUMatrixType LUMatrixType; + typedef TriangularView LMatrixType; + typedef TriangularView UMatrixType; + + public: + + SuperLU() : Base() { init(); } + + SuperLU(const MatrixType& matrix) : Base() + { + Base::init(); + compute(matrix); + } + + ~SuperLU() + { + } + + /** Performs a symbolic decomposition on the sparcity of \a matrix. + * + * This function is particularly useful when solving for several problems having the same structure. + * + * \sa factorize() + */ + void analyzePattern(const MatrixType& matrix) + { + init(); + Base::analyzePattern(matrix); + } + + /** Performs a numeric decomposition of \a matrix + * + * The given matrix must has the same sparcity than the matrix on which the symbolic decomposition has been performed. + * + * \sa analyzePattern() + */ + void factorize(const MatrixType& matrix); + + #ifndef EIGEN_PARSED_BY_DOXYGEN + /** \internal */ + template + void _solve(const MatrixBase &b, MatrixBase &dest) const; + #endif // EIGEN_PARSED_BY_DOXYGEN + + inline const LMatrixType& matrixL() const + { + if (m_extractedDataAreDirty) this->extractData(); + return m_l; + } + + inline const UMatrixType& matrixU() const + { + if (m_extractedDataAreDirty) this->extractData(); + return m_u; + } + + inline const IntColVectorType& permutationP() const + { + if (m_extractedDataAreDirty) this->extractData(); + return m_p; + } + + inline const IntRowVectorType& permutationQ() const + { + if (m_extractedDataAreDirty) this->extractData(); + return m_q; + } + + Scalar determinant() const; + + protected: + + using Base::m_matrix; + using Base::m_sluOptions; + using Base::m_sluA; + using Base::m_sluB; + using Base::m_sluX; + using Base::m_p; + using Base::m_q; + using Base::m_sluEtree; + using Base::m_sluEqued; + using Base::m_sluRscale; + using Base::m_sluCscale; + using Base::m_sluL; + using Base::m_sluU; + using Base::m_sluStat; + using Base::m_sluFerr; + using Base::m_sluBerr; + using Base::m_l; + using Base::m_u; + + using Base::m_analysisIsOk; + using Base::m_factorizationIsOk; + using Base::m_extractedDataAreDirty; + using Base::m_isInitialized; + using Base::m_info; + + void init() + { + Base::init(); + + set_default_options(&this->m_sluOptions); + m_sluOptions.PrintStat = NO; + m_sluOptions.ConditionNumber = NO; + m_sluOptions.Trans = NOTRANS; + m_sluOptions.ColPerm = COLAMD; + } +}; + +template +void SuperLU::factorize(const MatrixType& a) +{ + eigen_assert(m_analysisIsOk && "You must first call analyzePattern()"); + if(!m_analysisIsOk) + { + m_info = InvalidInput; + return; + } + + initFactorization(a); + + int info = 0; + RealScalar recip_pivot_growth, rcond; + RealScalar ferr, berr; + + StatInit(&m_sluStat); + SuperLU_gssvx(&m_sluOptions, &m_sluA, m_q.data(), m_p.data(), &m_sluEtree[0], + &m_sluEqued, &m_sluRscale[0], &m_sluCscale[0], + &m_sluL, &m_sluU, + NULL, 0, + &m_sluB, &m_sluX, + &recip_pivot_growth, &rcond, + &ferr, &berr, + &m_sluStat, &info, Scalar()); + StatFree(&m_sluStat); + + m_extractedDataAreDirty = true; + + // FIXME how to better check for errors ??? + m_info = info == 0 ? Success : NumericalIssue; + m_factorizationIsOk = true; +} + +template +template +void SuperLU::_solve(const MatrixBase &b, MatrixBase& x) const +{ + eigen_assert(m_factorizationIsOk && "The decomposition is not in a valid state for solving, you must first call either compute() or analyzePattern()/factorize()"); + + const int size = m_matrix.rows(); + const int rhsCols = b.cols(); + eigen_assert(size==b.rows()); + + m_sluOptions.Trans = NOTRANS; + m_sluOptions.Fact = FACTORED; + m_sluOptions.IterRefine = NOREFINE; + + + m_sluFerr.resize(rhsCols); + m_sluBerr.resize(rhsCols); + m_sluB = SluMatrix::Map(b.const_cast_derived()); + m_sluX = SluMatrix::Map(x.derived()); + + typename Rhs::PlainObject b_cpy; + if(m_sluEqued!='N') + { + b_cpy = b; + m_sluB = SluMatrix::Map(b_cpy.const_cast_derived()); + } + + StatInit(&m_sluStat); + int info = 0; + RealScalar recip_pivot_growth, rcond; + SuperLU_gssvx(&m_sluOptions, &m_sluA, + m_q.data(), m_p.data(), + &m_sluEtree[0], &m_sluEqued, + &m_sluRscale[0], &m_sluCscale[0], + &m_sluL, &m_sluU, + NULL, 0, + &m_sluB, &m_sluX, + &recip_pivot_growth, &rcond, + &m_sluFerr[0], &m_sluBerr[0], + &m_sluStat, &info, Scalar()); + StatFree(&m_sluStat); + m_info = info==0 ? Success : NumericalIssue; +} + +// the code of this extractData() function has been adapted from the SuperLU's Matlab support code, +// +// Copyright (c) 1994 by Xerox Corporation. All rights reserved. +// +// THIS MATERIAL IS PROVIDED AS IS, WITH ABSOLUTELY NO WARRANTY +// EXPRESSED OR IMPLIED. ANY USE IS AT YOUR OWN RISK. +// +template +void SuperLUBase::extractData() const +{ + eigen_assert(m_factorizationIsOk && "The decomposition is not in a valid state for extracting factors, you must first call either compute() or analyzePattern()/factorize()"); + if (m_extractedDataAreDirty) + { + int upper; + int fsupc, istart, nsupr; + int lastl = 0, lastu = 0; + SCformat *Lstore = static_cast(m_sluL.Store); + NCformat *Ustore = static_cast(m_sluU.Store); + Scalar *SNptr; + + const int size = m_matrix.rows(); + m_l.resize(size,size); + m_l.resizeNonZeros(Lstore->nnz); + m_u.resize(size,size); + m_u.resizeNonZeros(Ustore->nnz); + + int* Lcol = m_l._outerIndexPtr(); + int* Lrow = m_l._innerIndexPtr(); + Scalar* Lval = m_l._valuePtr(); + + int* Ucol = m_u._outerIndexPtr(); + int* Urow = m_u._innerIndexPtr(); + Scalar* Uval = m_u._valuePtr(); + + Ucol[0] = 0; + Ucol[0] = 0; + + /* for each supernode */ + for (int k = 0; k <= Lstore->nsuper; ++k) + { + fsupc = L_FST_SUPC(k); + istart = L_SUB_START(fsupc); + nsupr = L_SUB_START(fsupc+1) - istart; + upper = 1; + + /* for each column in the supernode */ + for (int j = fsupc; j < L_FST_SUPC(k+1); ++j) + { + SNptr = &((Scalar*)Lstore->nzval)[L_NZ_START(j)]; + + /* Extract U */ + for (int i = U_NZ_START(j); i < U_NZ_START(j+1); ++i) + { + Uval[lastu] = ((Scalar*)Ustore->nzval)[i]; + /* Matlab doesn't like explicit zero. */ + if (Uval[lastu] != 0.0) + Urow[lastu++] = U_SUB(i); + } + for (int i = 0; i < upper; ++i) + { + /* upper triangle in the supernode */ + Uval[lastu] = SNptr[i]; + /* Matlab doesn't like explicit zero. */ + if (Uval[lastu] != 0.0) + Urow[lastu++] = L_SUB(istart+i); + } + Ucol[j+1] = lastu; + + /* Extract L */ + Lval[lastl] = 1.0; /* unit diagonal */ + Lrow[lastl++] = L_SUB(istart + upper - 1); + for (int i = upper; i < nsupr; ++i) + { + Lval[lastl] = SNptr[i]; + /* Matlab doesn't like explicit zero. */ + if (Lval[lastl] != 0.0) + Lrow[lastl++] = L_SUB(istart+i); + } + Lcol[j+1] = lastl; + + ++upper; + } /* for j ... */ + + } /* for k ... */ + + // squeeze the matrices : + m_l.resizeNonZeros(lastl); + m_u.resizeNonZeros(lastu); + + m_extractedDataAreDirty = false; + } +} + +template +typename SuperLU::Scalar SuperLU::determinant() const +{ + eigen_assert(m_factorizationIsOk && "The decomposition is not in a valid state for computing the determinant, you must first call either compute() or analyzePattern()/factorize()"); + + if (m_extractedDataAreDirty) + this->extractData(); + + Scalar det = Scalar(1); + for (int j=0; j 0) + { + int lastId = m_u._outerIndexPtr()[j+1]-1; + eigen_assert(m_u._innerIndexPtr()[lastId]<=j); + if (m_u._innerIndexPtr()[lastId]==j) + det *= m_u._valuePtr()[lastId]; + } + } + if(m_sluEqued!='N') + return det/m_sluRscale.prod()/m_sluCscale.prod(); + else + return det; +} + +#ifdef EIGEN_SUPERLU_HAS_ILU +template +class SuperILU : public SuperLUBase<_MatrixType,SuperILU<_MatrixType> > +{ + public: + typedef SuperLUBase<_MatrixType,SuperILU> Base; + typedef _MatrixType MatrixType; + typedef typename Base::Scalar Scalar; + typedef typename Base::RealScalar RealScalar; + typedef typename Base::Index Index; + + public: + + SuperILU() : Base() { init(); } + + SuperILU(const MatrixType& matrix) : Base() + { + init(); + compute(matrix); + } + + ~SuperILU() + { + } + + /** Performs a symbolic decomposition on the sparcity of \a matrix. + * + * This function is particularly useful when solving for several problems having the same structure. + * + * \sa factorize() + */ + void analyzePattern(const MatrixType& matrix) + { + Base::analyzePattern(matrix); + } + + /** Performs a numeric decomposition of \a matrix + * + * The given matrix must has the same sparcity than the matrix on which the symbolic decomposition has been performed. + * + * \sa analyzePattern() + */ + void factorize(const MatrixType& matrix); + + #ifndef EIGEN_PARSED_BY_DOXYGEN + /** \internal */ + template + void _solve(const MatrixBase &b, MatrixBase &dest) const; + #endif // EIGEN_PARSED_BY_DOXYGEN + + protected: + + using Base::m_matrix; + using Base::m_sluOptions; + using Base::m_sluA; + using Base::m_sluB; + using Base::m_sluX; + using Base::m_p; + using Base::m_q; + using Base::m_sluEtree; + using Base::m_sluEqued; + using Base::m_sluRscale; + using Base::m_sluCscale; + using Base::m_sluL; + using Base::m_sluU; + using Base::m_sluStat; + using Base::m_sluFerr; + using Base::m_sluBerr; + using Base::m_l; + using Base::m_u; + + using Base::m_analysisIsOk; + using Base::m_factorizationIsOk; + using Base::m_extractedDataAreDirty; + using Base::m_isInitialized; + using Base::m_info; + + void init() + { + Base::init(); + + ilu_set_default_options(&m_sluOptions); + m_sluOptions.PrintStat = NO; + m_sluOptions.ConditionNumber = NO; + m_sluOptions.Trans = NOTRANS; + m_sluOptions.ColPerm = MMD_AT_PLUS_A; + + // no attempt to preserve column sum + m_sluOptions.ILU_MILU = SILU; + // only basic ILU(k) support -- no direct control over memory consumption + // better to use ILU_DropRule = DROP_BASIC | DROP_AREA + // and set ILU_FillFactor to max memory growth + m_sluOptions.ILU_DropRule = DROP_BASIC; + m_sluOptions.ILU_DropTol = NumTraits::dummy_precision()*10; + } +}; + +template +void SuperILU::factorize(const MatrixType& a) +{ + eigen_assert(m_analysisIsOk && "You must first call analyzePattern()"); + if(!m_analysisIsOk) + { + m_info = InvalidInput; + return; + } + + this->initFactorization(a); + + int info = 0; + RealScalar recip_pivot_growth, rcond; + + StatInit(&m_sluStat); + SuperLU_gsisx(&m_sluOptions, &m_sluA, m_q.data(), m_p.data(), &m_sluEtree[0], + &m_sluEqued, &m_sluRscale[0], &m_sluCscale[0], + &m_sluL, &m_sluU, + NULL, 0, + &m_sluB, &m_sluX, + &recip_pivot_growth, &rcond, + &m_sluStat, &info, Scalar()); + StatFree(&m_sluStat); + + // FIXME how to better check for errors ??? + m_info = info == 0 ? Success : NumericalIssue; + m_factorizationIsOk = true; +} + +template +template +void SuperILU::_solve(const MatrixBase &b, MatrixBase& x) const +{ + eigen_assert(m_factorizationIsOk && "The decomposition is not in a valid state for solving, you must first call either compute() or analyzePattern()/factorize()"); + + const int size = m_matrix.rows(); + const int rhsCols = b.cols(); + eigen_assert(size==b.rows()); + + m_sluOptions.Trans = NOTRANS; + m_sluOptions.Fact = FACTORED; + m_sluOptions.IterRefine = NOREFINE; + + m_sluFerr.resize(rhsCols); + m_sluBerr.resize(rhsCols); + m_sluB = SluMatrix::Map(b.const_cast_derived()); + m_sluX = SluMatrix::Map(x.derived()); + + typename Rhs::PlainObject b_cpy; + if(m_sluEqued!='N') + { + b_cpy = b; + m_sluB = SluMatrix::Map(b_cpy.const_cast_derived()); + } + + int info = 0; + RealScalar recip_pivot_growth, rcond; + + StatInit(&m_sluStat); + SuperLU_gsisx(&m_sluOptions, &m_sluA, + m_q.data(), m_p.data(), + &m_sluEtree[0], &m_sluEqued, + &m_sluRscale[0], &m_sluCscale[0], + &m_sluL, &m_sluU, + NULL, 0, + &m_sluB, &m_sluX, + &recip_pivot_growth, &rcond, + &m_sluStat, &info, Scalar()); + StatFree(&m_sluStat); + + m_info = info==0 ? Success : NumericalIssue; +} +#endif + +namespace internal { + +template +struct solve_retval, Rhs> + : solve_retval_base, Rhs> +{ + typedef SuperLUBase<_MatrixType,Derived> Dec; + EIGEN_MAKE_SOLVE_HELPERS(Dec,Rhs) + + template void evalTo(Dest& dst) const + { + dec().derived()._solve(rhs(),dst); + } +}; + +template +struct sparse_solve_retval, Rhs> + : sparse_solve_retval_base, Rhs> +{ + typedef SuperLUBase<_MatrixType,Derived> Dec; + EIGEN_MAKE_SPARSE_SOLVE_HELPERS(Dec,Rhs) + + template void evalTo(Dest& dst) const + { + dec().derived()._solve(rhs(),dst); + } +}; + +} + +#endif // EIGEN_SUPERLUSUPPORT_H -- cgit v1.2.3