solve#
- scipy.linalg.solve(a, b, lower=False, overwrite_a=False, overwrite_b=False, check_finite=True, assume_a=None, transposed=False)[source]#
- Solves the linear equation set - a @ x == bfor the unknown- xfor square a matrix.- If the data matrix is known to be a particular type then supplying the corresponding string to - assume_akey chooses the dedicated solver. The available options are- diagonal - ‘diagonal’ - tridiagonal - ‘tridiagonal’ - banded - ‘banded’ - upper triangular - ‘upper triangular’ - lower triangular - ‘lower triangular’ - symmetric - ‘symmetric’ (or ‘sym’) - hermitian - ‘hermitian’ (or ‘her’) - positive definite - ‘positive definite’ (or ‘pos’) - general - ‘general’ (or ‘gen’) - Parameters:
- a(N, N) array_like
- Square input data 
- b(N, NRHS) array_like
- Input data for the right hand side. 
- lowerbool, default: False
- Ignored unless - assume_ais one of- 'sym',- 'her', or- 'pos'. If True, the calculation uses only the data in the lower triangle of a; entries above the diagonal are ignored. If False (default), the calculation uses only the data in the upper triangle of a; entries below the diagonal are ignored.
- overwrite_abool, default: False
- Allow overwriting data in a (may enhance performance). 
- overwrite_bbool, default: False
- Allow overwriting data in b (may enhance performance). 
- check_finitebool, default: True
- Whether to check that the input matrices contain only finite numbers. Disabling may give a performance gain, but may result in problems (crashes, non-termination) if the inputs do contain infinities or NaNs. 
- assume_astr, optional
- Valid entries are described above. If omitted or - None, checks are performed to identify structure so the appropriate solver can be called.
- transposedbool, default: False
- If True, solve - a.T @ x == b. Raises NotImplementedError for complex a.
 
- Returns:
- x(N, NRHS) ndarray
- The solution array. 
 
- Raises:
- ValueError
- If size mismatches detected or input a is not square. 
- LinAlgError
- If the matrix is singular. 
- LinAlgWarning
- If an ill-conditioned input a is detected. 
- NotImplementedError
- If transposed is True and input a is a complex matrix. 
 
 - Notes - If the input b matrix is a 1-D array with N elements, when supplied together with an NxN input a, it is assumed as a valid column vector despite the apparent size mismatch. This is compatible with the numpy.dot() behavior and the returned result is still 1-D array. - The general, symmetric, Hermitian and positive definite solutions are obtained via calling ?GESV, ?SYSV, ?HESV, and ?POSV routines of LAPACK respectively. - The datatype of the arrays define which solver is called regardless of the values. In other words, even when the complex array entries have precisely zero imaginary parts, the complex solver will be called based on the data type of the array. - Examples - Given a and b, solve for x: - >>> import numpy as np >>> a = np.array([[3, 2, 0], [1, -1, 0], [0, 5, 1]]) >>> b = np.array([2, 4, -1]) >>> from scipy import linalg >>> x = linalg.solve(a, b) >>> x array([ 2., -2., 9.]) >>> np.dot(a, x) == b array([ True, True, True], dtype=bool)