Matmul
Matmul
torch_matmul(self, other)
self |
(Tensor) the first tensor to be multiplied |
other |
(Tensor) the second tensor to be multiplied |
Matrix product of two tensors.
The behavior depends on the dimensionality of the tensors as follows:
If both tensors are 1-dimensional, the dot product (scalar) is returned.
If both arguments are 2-dimensional, the matrix-matrix product is returned.
If the first argument is 1-dimensional and the second argument is 2-dimensional, a 1 is prepended to its dimension for the purpose of the matrix multiply. After the matrix multiply, the prepended dimension is removed.
If the first argument is 2-dimensional and the second argument is 1-dimensional, the matrix-vector product is returned.
If both arguments are at least 1-dimensional and at least one argument is
N-dimensional (where N > 2), then a batched matrix multiply is returned. If the first
argument is 1-dimensional, a 1 is prepended to its dimension for the purpose of the
batched matrix multiply and removed after. If the second argument is 1-dimensional, a
1 is appended to its dimension for the purpose of the batched matrix multiple and removed after.
The non-matrix (i.e. batch) dimensions are broadcasted (and thus
must be broadcastable). For example, if input
is a
(j \times 1 \times n \times m) tensor and other
is a (k \times m \times p)
tensor, out
will be an (j \times k \times n \times p) tensor.
The 1-dimensional dot product version of this function does not support an `out` parameter.
if (torch_is_installed()) { # vector x vector tensor1 = torch_randn(c(3)) tensor2 = torch_randn(c(3)) torch_matmul(tensor1, tensor2) # matrix x vector tensor1 = torch_randn(c(3, 4)) tensor2 = torch_randn(c(4)) torch_matmul(tensor1, tensor2) # batched matrix x broadcasted vector tensor1 = torch_randn(c(10, 3, 4)) tensor2 = torch_randn(c(4)) torch_matmul(tensor1, tensor2) # batched matrix x batched matrix tensor1 = torch_randn(c(10, 3, 4)) tensor2 = torch_randn(c(10, 4, 5)) torch_matmul(tensor1, tensor2) # batched matrix x broadcasted matrix tensor1 = torch_randn(c(10, 3, 4)) tensor2 = torch_randn(c(4, 5)) torch_matmul(tensor1, tensor2) }
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