from __future__ import division, print_function, absolute_import __docformat__ = "restructuredtext en" __all__ = [] from numpy import asanyarray, asarray, asmatrix, array, matrix, zeros from scipy.sparse.linalg.interface import aslinearoperator, LinearOperator, \ IdentityOperator _coerce_rules = {('f','f'):'f', ('f','d'):'d', ('f','F'):'F', ('f','D'):'D', ('d','f'):'d', ('d','d'):'d', ('d','F'):'D', ('d','D'):'D', ('F','f'):'F', ('F','d'):'D', ('F','F'):'F', ('F','D'):'D', ('D','f'):'D', ('D','d'):'D', ('D','F'):'D', ('D','D'):'D'} def coerce(x,y): if x not in 'fdFD': x = 'd' if y not in 'fdFD': y = 'd' return _coerce_rules[x,y] def id(x): return x def make_system(A, M, x0, b): """Make a linear system Ax=b Parameters ---------- A : LinearOperator sparse or dense matrix (or any valid input to aslinearoperator) M : {LinearOperator, Nones} preconditioner sparse or dense matrix (or any valid input to aslinearoperator) x0 : {array_like, None} initial guess to iterative method b : array_like right hand side Returns ------- (A, M, x, b, postprocess) A : LinearOperator matrix of the linear system M : LinearOperator preconditioner x : rank 1 ndarray initial guess b : rank 1 ndarray right hand side postprocess : function converts the solution vector to the appropriate type and dimensions (e.g. (N,1) matrix) """ A_ = A A = aslinearoperator(A) if A.shape[0] != A.shape[1]: raise ValueError('expected square matrix, but got shape=%s' % (A.shape,)) N = A.shape[0] b = asanyarray(b) if not (b.shape == (N,1) or b.shape == (N,)): raise ValueError('A and b have incompatible dimensions') if b.dtype.char not in 'fdFD': b = b.astype('d') # upcast non-FP types to double def postprocess(x): if isinstance(b,matrix): x = asmatrix(x) return x.reshape(b.shape) if hasattr(A,'dtype'): xtype = A.dtype.char else: xtype = A.matvec(b).dtype.char xtype = coerce(xtype, b.dtype.char) b = asarray(b,dtype=xtype) # make b the same type as x b = b.ravel() if x0 is None: x = zeros(N, dtype=xtype) else: x = array(x0, dtype=xtype) if not (x.shape == (N,1) or x.shape == (N,)): raise ValueError('A and x have incompatible dimensions') x = x.ravel() # process preconditioner if M is None: if hasattr(A_,'psolve'): psolve = A_.psolve else: psolve = id if hasattr(A_,'rpsolve'): rpsolve = A_.rpsolve else: rpsolve = id if psolve is id and rpsolve is id: M = IdentityOperator(shape=A.shape, dtype=A.dtype) else: M = LinearOperator(A.shape, matvec=psolve, rmatvec=rpsolve, dtype=A.dtype) else: M = aslinearoperator(M) if A.shape != M.shape: raise ValueError('matrix and preconditioner have different shapes') return A, M, x, b, postprocess