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
``````

Since both `A` and `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"?

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This is a really good explanation of broadcasting, scipy.org/EricsBroadcastingDoc –  Bi Rico Jun 24 '12 at 16:06
Well, the meaning of trailing axes is explained on the linked documentation page. If you have two arrays with different dimensions number, say one `1x2x3` and other `2x3`, then you compare only the trailing common dimensions, in this case `2x3`. But if both your arrays are two-dimensional, then their corresponding sizes have to be either equal or one of them has to be `1`. Dimensions along which the array has size `1` are called singular, and the array can be broadcasted along them.
In your case you have a `2x2` and `4x2` and `4 != 2` and neither `4` or `2` equals `1`, so this doesn't work.
In other words, the `shape` of `A` should be a suffix of the `shape` of `B`, disregarding any axis that value 1 (?) –  larsmans Jun 24 '12 at 14:26
if by disregarding you mean '`1` equals anything' and either `shape(A)` or `shape(B)` can be suffixes of one another, then yes. –  unkulunkulu Jun 24 '12 at 14:28
actually, you can look at any array as being infinitely-dimensional of size `...x1x1x1x1x1x1x1x.....xAxBxC` so we have a lot of leading `1`s, which can be broadcasted as other ones. This way you can forget that suffix stuff, just say `1` equals anything. –  unkulunkulu Jun 24 '12 at 14:30