In numpy I can do a simple matrix multiplication like this:
a = numpy.arange(2*3).reshape(3,2)
b = numpy.arange(2).reshape(2,1)
print(a)
print(b)
print(a.dot(b))
However, when I am trying this with PyTorch Tensors, this does not work:
a = torch.Tensor([[1, 2, 3], [1, 2, 3]]).view(-1, 2)
b = torch.Tensor([[2, 1]]).view(2, -1)
print(a)
print(a.size())
print(b)
print(b.size())
print(torch.dot(a, b))
This code throws the following error:
RuntimeError: inconsistent tensor size at
/Users/soumith/code/builder/wheel/pytorch-src/torch/lib/TH/generic/THTensorMath.c:503
Any ideas how matrix multiplication can be conducted in PyTorch?
You're looking for
torch.mm(a,b)
Note that torch.dot()
behaves differently to np.dot()
. There's been some discussion about what would be desirable here. Specifically, torch.dot()
treats both a
and b
as 1D vectors (irrespective of their original shape) and computes their inner product. The error is thrown, because this behaviour makes your a
a vector of length 6 and your b
a vector of length 2; hence their inner product can't be computed. For matrix multiplication in PyTorch, use torch.mm()
. Numpy's np.dot()
in contrast is more flexible; it computes the inner product for 1D arrays and performs matrix multiplication for 2D arrays.
By popular demand, the function torch.matmul
performs matrix multiplications if both arguments are 2D
and computes their dot product if both arguments are 1D
. For inputs of such dimensions, its behaviour is the same as np.dot
. It also lets you do broadcasting or matrix x matrix
, matrix x vector
and vector x vector
operations in batches. For more info, see its docs.
# 1D inputs, same as torch.dot
a = torch.rand(n)
b = torch.rand(n)
torch.matmul(a, b) # torch.Size([])
# 2D inputs, same as torch.mm
a = torch.rand(m, k)
b = torch.rand(k, j)
torch.matmul(a, b) # torch.Size([m, j])
If you want to do a matrix (rank 2 tensor) multiplication you can do it in four equivalent ways:
AB = A.mm(B) # computes A.B (matrix multiplication)
# or
AB = torch.mm(A, B)
# or
AB = torch.matmul(A, B)
# or, even simpler
AB = A @ B # Python 3.5+
There are a few subtleties. From the PyTorch documentation:
torch.mm does not broadcast. For broadcasting matrix products,
see torch.matmul().
For instance, you cannot multiply two 1-dimensional vectors with torch.mm
, nor multiply batched matrices (rank 3). To this end, you should use the more versatile torch.matmul
. For an extensive list of the broadcasting behaviours of torch.matmul
, see the documentation.
For element-wise multiplication, you can simply do (if A and B have the same shape)
A * B # element-wise matrix multiplication (Hadamard product)
Use torch.mm(a, b)
or torch.matmul(a, b)
Both are same.
>>> torch.mm
<built-in method mm of type object at 0x11712a870>
>>> torch.matmul
<built-in method matmul of type object at 0x11712a870>
There's one more option that may be good to know.
That is @
operator. @Simon H.
>>> a = torch.randn(2, 3)
>>> b = torch.randn(3, 4)
>>> a@b
tensor([[ 0.6176, -0.6743, 0.5989, -0.1390],
[ 0.8699, -0.3445, 1.4122, -0.5826]])
>>> a.mm(b)
tensor([[ 0.6176, -0.6743, 0.5989, -0.1390],
[ 0.8699, -0.3445, 1.4122, -0.5826]])
>>> a.matmul(b)
tensor([[ 0.6176, -0.6743, 0.5989, -0.1390],
[ 0.8699, -0.3445, 1.4122, -0.5826]])
The three give the same results.
Related links:
Matrix multiplication operator
PEP 465 -- A dedicated infix operator for matrix multiplication