torch.linalg.inv_ex¶
-
torch.linalg.
inv_ex
(A, *, check_errors=False, out=None)¶ Computes the inverse of a square matrix if it is invertible.
Returns a namedtuple
(inverse, info)
.inverse
contains the result of invertingA
andinfo
stores the LAPACK error codes.If
A
is not an invertible matrix, or if it’s a batch of matrices and one or more of them is not an invertible matrix, theninfo
stores a positive integer for the corresponding matrix. The positive integer indicates the diagonal element of the LU decomposition of the input matrix that is exactly zero.info
filled with zeros indicates that the inversion was successful. Ifcheck_errors=True
andinfo
contains positive integers, then a RuntimeError is thrown.Supports input of float, double, cfloat and cdouble dtypes. Also supports batches of matrices, and if
A
is a batch of matrices then the output has the same batch dimensions.Note
When the inputs are on a CUDA device, this function synchronizes only when
check_errors
= True.Warning
This function is “experimental” and it may change in a future PyTorch release.
See also
torch.linalg.inv()
is a NumPy compatible variant that always checks for errors.- Parameters
- Keyword Arguments
out (tuple, optional) – tuple of two tensors to write the output to. Ignored if None. Default: None.
Examples:
>>> A = torch.randn(3, 3) >>> Ainv, info = torch.linalg.inv_ex(A) >>> torch.dist(torch.linalg.inv(A), Ainv) tensor(0.) >>> info tensor(0, dtype=torch.int32)