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Computes the eigenvalues of one or more self-adjoint matrices.
tf.linalg.eigvalsh(
tensor, name=None
)
Note: If your program backpropagates through this function, you should replace it with a call to tf.linalg.eigh (possibly ignoring the second output) to avoid computing the eigen decomposition twice. This is because the eigenvectors are used to compute the gradient w.r.t. the eigenvalues. See _SelfAdjointEigV2Grad in linalg_grad.py.
tensor
: Tensor
of shape [..., N, N]
.name
: string, optional name of the operation.e
: Eigenvalues. Shape is [..., N]
. The vector e[..., :]
contains the N
eigenvalues of tensor[..., :, :]
.