I'm having some trouble understanding the rules for array broadcasting in Numpy.
Obviously, if you perform element-wise multiplication on two arrays of the same dimensions and shape, everything is fine. Also, if you multiply a multi-dimensional array by a scalar it works. This I understand.
But if you have two N-dimensional arrays of different shapes, it's unclear to me exactly what the broadcasting rules are. This documentation/tutorial explains that: In order to broadcast, the size of the trailing axes for both arrays in an operation must either be the same size or one of them must be one.
Okay, so I assume by trailing axis they are referring to the
N in a
M x N array. So, that means if I attempt to multiply two 2D arrays (matrices) with equal number of columns, it should work? Except it doesn't...
>>> from numpy import * >>> A = array([[1,2],[3,4]]) >>> B = array([[2,3],[4,6],[6,9],[8,12]]) >>> print(A) [[1 2] [3 4]] >>> print(B) [[ 2 3] [ 4 6] [ 6 9] [ 8 12]] >>> >>> A * B Traceback (most recent call last): File "<stdin>", line 1, in <module> ValueError: shape mismatch: objects cannot be broadcast to a single shape
B have two columns, I would have thought this would work. So, I'm probably misunderstanding something here about the term "trailing axis", and how it applies to N-dimensional arrays.
Can someone explain why my example doesn't work, and what is meant by "trailing axis"?