gmres — SciPy v1.15.3 Manual (original) (raw)

scipy.sparse.linalg.

scipy.sparse.linalg.gmres(A, b, x0=None, *, rtol=1e-05, atol=0.0, restart=None, maxiter=None, M=None, callback=None, callback_type=None)[source]#

Use Generalized Minimal RESidual iteration to solve Ax = b.

Parameters:

A{sparse array, ndarray, LinearOperator}

The real or complex N-by-N matrix of the linear system. Alternatively, A can be a linear operator which can produce Ax using, e.g.,scipy.sparse.linalg.LinearOperator.

bndarray

Right hand side of the linear system. Has shape (N,) or (N,1).

x0ndarray

Starting guess for the solution (a vector of zeros by default).

atol, rtolfloat

Parameters for the convergence test. For convergence,norm(b - A @ x) <= max(rtol*norm(b), atol) should be satisfied. The default is atol=0. and rtol=1e-5.

restartint, optional

Number of iterations between restarts. Larger values increase iteration cost, but may be necessary for convergence. If omitted, min(20, n) is used.

maxiterint, optional

Maximum number of iterations (restart cycles). Iteration will stop after maxiter steps even if the specified tolerance has not been achieved. See callback_type.

M{sparse array, ndarray, LinearOperator}

Inverse of the preconditioner of A. M should approximate the inverse of A and be easy to solve for (see Notes). Effective preconditioning dramatically improves the rate of convergence, which implies that fewer iterations are needed to reach a given error tolerance. By default, no preconditioner is used. In this implementation, left preconditioning is used, and the preconditioned residual is minimized. However, the final convergence is tested with respect to the b - A @ x residual.

callbackfunction

User-supplied function to call after each iteration. It is called as callback(args), where args are selected by callback_type.

callback_type{‘x’, ‘pr_norm’, ‘legacy’}, optional

Callback function argument requested:

This keyword has no effect if callback is not set.

Returns:

xndarray

The converged solution.

infoint

Provides convergence information:

0 : successful exit >0 : convergence to tolerance not achieved, number of iterations

Notes

A preconditioner, P, is chosen such that P is close to A but easy to solve for. The preconditioner parameter required by this routine isM = P^-1. The inverse should preferably not be calculated explicitly. Rather, use the following template to produce M:

Construct a linear operator that computes P^-1 @ x.

import scipy.sparse.linalg as spla M_x = lambda x: spla.spsolve(P, x) M = spla.LinearOperator((n, n), M_x)

Examples

import numpy as np from scipy.sparse import csc_array from scipy.sparse.linalg import gmres A = csc_array([[3, 2, 0], [1, -1, 0], [0, 5, 1]], dtype=float) b = np.array([2, 4, -1], dtype=float) x, exitCode = gmres(A, b, atol=1e-5) print(exitCode) # 0 indicates successful convergence 0 np.allclose(A.dot(x), b) True