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Multiplies tridiagonal matrix by matrix.
tf.linalg.tridiagonal_matmul( diagonals, rhs, diagonals_format='compact', name=None )
diagonals
is representation of 3-diagonal NxN matrix, which depends on diagonals_format
.
In matrix
format, diagonals
must be a tensor of shape [..., M, M]
, with two inner-most dimensions representing the square tridiagonal matrices. Elements outside of the three diagonals will be ignored.
If sequence
format, diagonals
is list or tuple of three tensors: [superdiag, maindiag, subdiag]
, each having shape [..., M]. Last element of superdiag
first element of subdiag
are ignored.
In compact
format the three diagonals are brought together into one tensor of shape [..., 3, M]
, with last two dimensions containing superdiagonals, diagonals, and subdiagonals, in order. Similarly to sequence
format, elements diagonals[..., 0, M-1]
and diagonals[..., 2, 0]
are ignored.
The sequence
format is recommended as the one with the best performance.
rhs
is matrix to the right of multiplication. It has shape [..., M, N]
.
superdiag = tf.constant([-1, -1, 0], dtype=tf.float64) maindiag = tf.constant([2, 2, 2], dtype=tf.float64) subdiag = tf.constant([0, -1, -1], dtype=tf.float64) diagonals = [superdiag, maindiag, subdiag] rhs = tf.constant([[1, 1], [1, 1], [1, 1]], dtype=tf.float64) x = tf.linalg.tridiagonal_matmul(diagonals, rhs, diagonals_format='sequence')
Args | |
---|---|
diagonals | A Tensor or tuple of Tensor s describing left-hand sides. The shape depends of diagonals_format , see description above. Must be float32 , float64 , complex64 , or complex128 . |
rhs | A Tensor of shape [..., M, N] and with the same dtype as diagonals . |
diagonals_format | one of sequence , or compact . Default is compact . |
name | A name to give this Op (optional). |
Returns | |
---|---|
A Tensor of shape [..., M, N] containing the result of multiplication. |
Raises | |
---|---|
ValueError | An unsupported type is provided as input, or when the input tensors have incorrect shapes. |
© 2020 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/versions/r2.3/api_docs/python/tf/linalg/tridiagonal_matmul