#ifndef EIGEN_SAEIGENSOLVER_LAPACKE_H
#define EIGEN_SAEIGENSOLVER_LAPACKE_H
namespace Eigen {
#define EIGEN_LAPACKE_EIG_SELFADJ_2(EIGTYPE, LAPACKE_TYPE, LAPACKE_RTYPE, LAPACKE_NAME, EIGCOLROW ) \
template<> template<typename InputType> inline \
SelfAdjointEigenSolver<Matrix<EIGTYPE, Dynamic, Dynamic, EIGCOLROW> >& \
SelfAdjointEigenSolver<Matrix<EIGTYPE, Dynamic, Dynamic, EIGCOLROW> >::compute(const EigenBase<InputType>& matrix, int options) \
{ \
eigen_assert(matrix.cols() == matrix.rows()); \
eigen_assert((options&~(EigVecMask|GenEigMask))==0 \
&& (options&EigVecMask)!=EigVecMask \
&& "invalid option parameter"); \
bool computeEigenvectors = (options&ComputeEigenvectors)==ComputeEigenvectors; \
lapack_int n = internal::convert_index<lapack_int>(matrix.cols()), lda, info; \
m_eivalues.resize(n,1); \
m_subdiag.resize(n-1); \
m_eivec = matrix; \
\
if(n==1) \
{ \
m_eivalues.coeffRef(0,0) = numext::real(m_eivec.coeff(0,0)); \
if(computeEigenvectors) m_eivec.setOnes(n,n); \
m_info = Success; \
m_isInitialized = true; \
m_eigenvectorsOk = computeEigenvectors; \
return *this; \
} \
\
lda = internal::convert_index<lapack_int>(m_eivec.outerStride()); \
char jobz, uplo='L'; \
jobz = computeEigenvectors ? 'V' : 'N'; \
\
info = LAPACKE_##LAPACKE_NAME( LAPACK_COL_MAJOR, jobz, uplo, n, (LAPACKE_TYPE*)m_eivec.data(), lda, (LAPACKE_RTYPE*)m_eivalues.data() ); \
m_info = (info==0) ? Success : NoConvergence; \
m_isInitialized = true; \
m_eigenvectorsOk = computeEigenvectors; \
return *this; \
}
#define EIGEN_LAPACKE_EIG_SELFADJ(EIGTYPE, LAPACKE_TYPE, LAPACKE_RTYPE, LAPACKE_NAME ) \
EIGEN_LAPACKE_EIG_SELFADJ_2(EIGTYPE, LAPACKE_TYPE, LAPACKE_RTYPE, LAPACKE_NAME, ColMajor ) \
EIGEN_LAPACKE_EIG_SELFADJ_2(EIGTYPE, LAPACKE_TYPE, LAPACKE_RTYPE, LAPACKE_NAME, RowMajor )
EIGEN_LAPACKE_EIG_SELFADJ(double, double, double, dsyev)
EIGEN_LAPACKE_EIG_SELFADJ(float, float, float, ssyev)
EIGEN_LAPACKE_EIG_SELFADJ(dcomplex, lapack_complex_double, double, zheev)
EIGEN_LAPACKE_EIG_SELFADJ(scomplex, lapack_complex_float, float, cheev)
}
#endif