Projects/pyblm
Projects
/
pyblm
Archived
4
0
Fork 0
This repository has been archived on 2024-07-04. You can view files and clone it, but cannot push or open issues or pull requests.
pyblm/arpack/arpack.py

403 lines
12 KiB
Python

"""
arpack - Scipy module to find a few eigenvectors and eigenvalues of a matrix
Uses ARPACK: http://www.caam.rice.edu/software/ARPACK/
"""
__all___=['eigen','eigen_symmetric']
import _arpack
import numpy as sb
import warnings
# inspired by iterative.py
# so inspired, in fact, that some of it was copied directly
try:
False, True
except NameError:
False, True = 0, 1
_type_conv = {'f':'s', 'd':'d', 'F':'c', 'D':'z'}
class get_matvec:
methname = 'matvec'
def __init__(self, obj, *args):
self.obj = obj
self.args = args
if isinstance(obj, sb.matrix):
self.callfunc = self.type1m
return
if isinstance(obj, sb.ndarray):
self.callfunc = self.type1
return
meth = getattr(obj, self.methname, None)
if not callable(meth):
raise ValueError, "Object must be an array "\
"or have a callable %s attribute." % (self.methname,)
self.obj = meth
self.callfunc = self.type2
def __call__(self, x):
return self.callfunc(x)
def type1(self, x):
return sb.dot(self.obj, x)
def type1m(self, x):
return sb.dot(self.obj.A, x)
def type2(self, x):
return self.obj(x, *self.args)
def eigen(A, k=6, M=None, ncv=None, which='LM',
maxiter=None, tol=0, return_eigenvectors=True, v0=None):
"""Return k eigenvalues and eigenvectors of the matrix A.
Solves A * x[i] = w[i] * x[i], the standard eigenvalue problem for
w[i] eigenvalues with corresponding eigenvectors x[i].
Inputs:
A -- A matrix, array or an object with matvec(x) method to perform
the matrix vector product A * x. The sparse matrix formats
in scipy.sparse are appropriate for A.
k -- The number of eigenvalue/eigenvectors desired
M -- (Not implemented)
A symmetric positive-definite matrix for the generalized
eigenvalue problem A * x = w * M * x
v0 -- Initial starting solution (n x 1)
Outputs:
w -- An array of k eigenvalues
v -- An array of k eigenvectors, k[i] is the eigenvector corresponding
to the eigenvector w[i]
Optional Inputs:
ncv -- Number of Lanczos vectors generated, ncv must be greater than k
and is recommended to be ncv > 2*k
which -- String specifying which eigenvectors to compute.
Compute the k eigenvalues of:
'LM' - largest magnitude.
'SM' - smallest magnitude.
'LR' - largest real part.
'SR' - smallest real part.
'LI' - largest imaginary part.
'SI' - smallest imaginary part.
maxiter -- Maximum number of Arnoldi update iterations allowed
tol -- Relative accuracy for eigenvalues (stopping criterion)
return_eigenvectors -- True|False, return eigenvectors
"""
try:
n, ny = A.shape
n == ny
except:
raise AttributeError("matrix is not square")
if M is not None:
raise NotImplementedError("generalized eigenproblem not supported yet")
# some defaults
if ncv is None:
ncv = 2*k + 1
ncv = min(ncv, n)
if maxiter == None:
maxiter = n*10
# guess type
resid = sb.zeros(n,'f')
try:
typ = A.dtype.char
except AttributeError:
typ = A.matvec(resid).dtype.char
if typ not in 'fdFD':
raise ValueError("matrix type must be 'f', 'd', 'F', or 'D'")
# some sanity checks
if k <= 0:
raise ValueError("k must be positive, k=%d"%k)
if k == n:
raise ValueError("k must be less than rank(A), k=%d"%k)
if maxiter <= 0:
raise ValueError("maxiter must be positive, maxiter=%d"%maxiter)
whiches = ['LM','SM','LR','SR','LI','SI']
if which not in whiches:
raise ValueError("which must be one of %s"%' '.join(whiches))
if ncv > n or ncv < k:
raise ValueError("ncv must be k<=ncv<=n, ncv=%s"%ncv)
# assign solver and postprocessor
ltr = _type_conv[typ]
eigsolver = _arpack.__dict__[ltr+'naupd']
eigextract = _arpack.__dict__[ltr+'neupd']
matvec = get_matvec(A)
v = sb.zeros((n, ncv), typ) # holds Ritz vectors
if v0 == None:
resid = sb.zeros(n, typ) # residual
info = 0
else: # starting vector is given
nn, kk = v0.shape
if nn != n:
raise ValueError("starting vector must be: (%d, 1), got: (%d, %d)" %(n, nn, kk))
resid = v0[:,0].astype(typ)
info = 1
workd = sb.zeros(3*n, typ) # workspace
workl = sb.zeros(3*ncv*ncv+6*ncv, typ) # workspace
iparam = sb.zeros(11, 'int') # problem parameters
ipntr = sb.zeros(14, 'int') # pointers into workspaces
ido = 0
if typ in 'FD':
rwork = sb.zeros(ncv, typ.lower())
# only supported mode is 1: Ax=lx
ishfts = 1
mode1 = 1
bmat = 'I'
iparam[0] = ishfts
iparam[2] = maxiter
iparam[6] = mode1
while True:
if typ in 'fd':
ido,resid,v,iparam,ipntr,info =\
eigsolver(ido,bmat,which,k,tol,resid,v,iparam,ipntr,
workd,workl,info)
else:
ido,resid,v,iparam,ipntr,info =\
eigsolver(ido,bmat,which,k,tol,resid,v,iparam,ipntr,
workd,workl,rwork,info)
if (ido == -1 or ido == 1):
# compute y = A * x
xslice = slice(ipntr[0] - 1, ipntr[0] - 1 + n)
yslice = slice(ipntr[1] - 1, ipntr[1] - 1 + n)
workd[yslice] = matvec(workd[xslice])
else: # done
break
if info < -1 :
raise RuntimeError("Error info=%d in arpack"%info)
return None
if info == -1:
warnings.warn("Maximum number of iterations taken: %s"%iparam[2])
# if iparam[3] != k:
# warnings.warn("Only %s eigenvalues converged"%iparam[3])
# now extract eigenvalues and (optionally) eigenvectors
rvec = return_eigenvectors
ierr = 0
howmny = 'A' # return all eigenvectors
sselect = sb.zeros(ncv,'int') # unused
sigmai = 0.0 # no shifts, not implemented
sigmar = 0.0 # no shifts, not implemented
workev = sb.zeros(3*ncv,typ)
if typ in 'fd':
dr=sb.zeros(k+1,typ)
di=sb.zeros(k+1,typ)
zr=sb.zeros((n,k+1),typ)
dr,di,zr,info=\
eigextract(rvec,howmny,sselect,sigmar,sigmai,workev,
bmat,which,k,tol,resid,v,iparam,ipntr,
workd,workl,info)
# make eigenvalues complex
d=(dr+1.0j*di)[:k]
# futz with the eigenvectors:
# complex are stored as real,imaginary in consecutive columns
z=zr.astype(typ.upper())[:,:k]
for i in range(k): # fix c.c. pairs
if di[i] > 0 :
z[:,i]=zr[:,i]+1.0j*zr[:,i+1]
z[:,i+1]=z[:,i].conjugate()
else:
d,z,info =\
eigextract(rvec,howmny,sselect,sigmar,workev,
bmat,which,k,tol,resid,v,iparam,ipntr,
workd,workl,rwork,ierr)
if ierr != 0:
raise RuntimeError("Error info=%d in arpack"%info)
return None
if return_eigenvectors:
return d,z
return d
def eigen_symmetric(A,k=6,M=None,ncv=None,which='LM',
maxiter=None,tol=0, return_eigenvectors=True, v0=None):
""" Return k eigenvalues and eigenvectors of the real symmetric matrix A.
Solves A * x[i] = w[i] * x[i], the standard eigenvalue problem for
w[i] eigenvalues with corresponding eigenvectors x[i].
A must be real and symmetric.
See eigen() for nonsymmetric or complex symmetric (Hermetian) matrices.
Inputs:
A -- A symmetric matrix, array or an object with matvec(x) method
to perform the matrix vector product A * x.
The sparse matrix formats in scipy.sparse are appropriate for A.
k -- The number of eigenvalue/eigenvectors desired
M -- (Not implemented)
A symmetric positive-definite matrix for the generalized
eigenvalue problem A * x = w * M * x
v0 -- Starting vector (n, 1)
Outputs:
w -- An real array of k eigenvalues
v -- An array of k real eigenvectors, k[i] is the eigenvector corresponding
to the eigenvector w[i]
Optional Inputs:
ncv -- Number of Lanczos vectors generated, ncv must be greater than k
and is recommended to be ncv > 2*k
which -- String specifying which eigenvectors to compute.
Compute the k
'LA' - largest (algebraic) eigenvalues.
'SA' - smallest (algebraic) eigenvalues.
'LM' - largest (in magnitude) eigenvalues.
'SM' - smallest (in magnitude) eigenvalues.
'BE' - eigenvalues, half from each end of the
spectrum. When NEV is odd, compute one more from the
high end than from the low end.
maxiter -- Maximum number of Arnoldi update iterations allowed
tol -- Relative accuracy for eigenvalues (stopping criterion)
return_eigenvectors -- True|False, return eigenvectors
"""
try:
n,ny=A.shape
n==ny
except:
raise AttributeError("matrix is not square")
if M is not None:
raise NotImplementedError("generalized eigenproblem not supported yet")
if ncv is None:
ncv=2*k+1
ncv=min(ncv,n)
if maxiter==None:
maxiter=n*10
# guess type
resid = sb.zeros(n,'f')
try:
typ = A.dtype.char
except AttributeError:
typ = A.matvec(resid).dtype.char
if typ not in 'fd':
raise ValueError("matrix type must be 'f' or 'd'")
# some sanity checks
if k <= 0:
raise ValueError("k must be positive, k=%d"%k)
if k == n:
raise ValueError("k must be less than rank(A), k=%d"%k)
if maxiter <= 0:
raise ValueError("maxiter must be positive, maxiter=%d"%maxiter)
whiches=['LM','SM','LA','SA','BE']
if which not in whiches:
raise ValueError("which must be one of %s"%' '.join(whiches))
if ncv > n or ncv < k:
raise ValueError("ncv must be k<=ncv<=n, ncv=%s"%ncv)
# assign solver and postprocessor
ltr = _type_conv[typ]
eigsolver = _arpack.__dict__[ltr+'saupd']
eigextract = _arpack.__dict__[ltr+'seupd']
matvec = get_matvec(A)
v = sb.zeros((n,ncv),typ)
if v0 == None:
resid = sb.zeros(n, typ) # residual
info = 0
else: # starting solution is given
nn, kk = v0.shape
if nn != n:
raise ValueError("starting vectors must be: (%d, %d), got: (%d, %d)" %(n, k, nn, kk))
resid = v0[:,0].astype(typ)
info = 1
#resid = sb.zeros(n,typ)
workd = sb.zeros(3*n,typ)
workl = sb.zeros(ncv*(ncv+8),typ)
iparam = sb.zeros(11,'int')
ipntr = sb.zeros(11,'int')
#info = 0
ido = 0
# only supported mode is 1: Ax=lx
ishfts = 1
mode1 = 1
bmat='I'
iparam[0] = ishfts
iparam[2] = maxiter
iparam[6] = mode1
while True:
ido,resid,v,iparam,ipntr,info =\
eigsolver(ido,bmat,which,k,tol,resid,v,iparam,ipntr,
workd,workl,info)
if (ido == -1 or ido == 1):
xslice = slice(ipntr[0]-1, ipntr[0]-1+n)
yslice = slice(ipntr[1]-1, ipntr[1]-1+n)
workd[yslice]=matvec(workd[xslice])
else:
break
if info < -1 :
raise RuntimeError("Error info=%d in arpack"%info)
return None
if info == -1:
warnings.warn("Maximum number of iterations taken: %s"%iparam[2])
# now extract eigenvalues and (optionally) eigenvectors
rvec = return_eigenvectors
ierr = 0
howmny = 'A' # return all eigenvectors
sselect = sb.zeros(ncv,'int') # unused
sigma = 0.0 # no shifts, not implemented
d,z,info =\
eigextract(rvec,howmny,sselect,sigma,
bmat,which, k,tol,resid,v,iparam[0:7],ipntr,
workd[0:2*n],workl,ierr)
if ierr != 0:
raise RuntimeError("Error info=%d in arpack"%info)
return None
if return_eigenvectors:
return d,z
return d