jax.scipy.linalg.svd#
- jax.scipy.linalg.svd(a, full_matrices=True, compute_uv=True, overwrite_a=False, check_finite=True, lapack_driver='gesdd')[source]#
Singular Value Decomposition.
LAX-backend implementation of
scipy.linalg._decomp_svd.svd().Does not support the Scipy argument
check_finite=True, because compiled JAX code cannot perform checks of array values at runtime.Does not support the Scipy argument
overwrite_*=True.Original docstring below.
Factorizes the matrix a into two unitary matrices
UandVh, and a 1-D arraysof singular values (real, non-negative) such thata == U @ S @ Vh, whereSis a suitably shaped matrix of zeros with main diagonals.- Parameters:
a ((M, N) array_like) β Matrix to decompose.
full_matrices (bool, optional) β If True (default), U and Vh are of shape
(M, M),(N, N). If False, the shapes are(M, K)and(K, N), whereK = min(M, N).compute_uv (bool, optional) β Whether to compute also
UandVhin addition tos. Default is True.overwrite_a (
bool) βcheck_finite (
bool) βlapack_driver (
str) β
- Return type:
- Returns:
U (ndarray) β Unitary matrix having left singular vectors as columns. Of shape
(M, M)or(M, K), depending on full_matrices.s (ndarray) β The singular values, sorted in non-increasing order. Of shape (K,), with
K = min(M, N).Vh (ndarray) β Unitary matrix having right singular vectors as rows. Of shape
(N, N)or(K, N)depending on full_matrices.For
compute_uv=False, onlysis returned.