torch.ormqr#
- torch.ormqr(input, tau, other, left=True, transpose=False, *, out=None) Tensor#
- Computes the matrix-matrix multiplication of a product of Householder matrices with a general matrix. - Multiplies a matrix C (given by - other) with a matrix Q, where Q is represented using Householder reflectors (input, tau). See Representation of Orthogonal or Unitary Matrices for further details.- If - leftis True then op(Q) times C is computed, otherwise the result is C times op(Q). When- leftis True, the implicit matrix Q has size . It has size otherwise. If- transposeis True then op is the conjugate transpose operation, otherwise it’s a no-op.- Supports inputs of float, double, cfloat and cdouble dtypes. Also supports batched inputs, and, if the input is batched, the output is batched with the same dimensions. - See also - torch.geqrf()can be used to form the Householder representation (input, tau) of matrix Q from the QR decomposition.- Note - This function supports backward but it is only fast when - (input, tau)do not require gradients and/or- tau.size(-1)is very small. ``- Parameters
- input (Tensor) – tensor of shape (*, mn, k) where * is zero or more batch dimensions and mn equals to m or n depending on the - left.
- tau (Tensor) – tensor of shape (*, min(mn, k)) where * is zero or more batch dimensions. 
- other (Tensor) – tensor of shape (*, m, n) where * is zero or more batch dimensions. 
- left (bool) – controls the order of multiplication. 
- transpose (bool) – controls whether the matrix Q is conjugate transposed or not. 
 
- Keyword Arguments
- out (Tensor, optional) – the output Tensor. Ignored if None. Default: None.