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I'm encountering an annoying shape mismatch issue when I'm working with arrays that are the same length, but one is only width one. For example:

import numpy as np
x = np.ones(80)
y = np.ones([80, 100])
x*y 

ValueError: shape mismatch: objects cannot be broadcast to a single shape

The simple solution is y*x.reshape(x.shape[0],1). However, I often end up subsetting one column of an array, and then having to designate this reshape. Is there a way to avoid this?

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2 Answers 2

up vote 3 down vote accepted

Two somewhat easy ways are:

(x * y.T).T

or

x.reshape((-1,1)) * y

Numpy's broadcasting is a very powerful feature, and will do exactly what you want automatically, but it expects the last axis (or axes) of the arrays to have the same shape, not the first axes. Thus, you need to transpose y for it to work.

The second option is the same as what you're doing, but -1 is treated as a placeholder for the array's size, which reduces some typing.

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Great, thanks for the explanation. –  mike Sep 18 '11 at 19:55
1  
An alternative to x.reshape((-1, 1)) is x[:, np.newaxis]. Its perhaps more readable within formulae –  Donkopotamus Sep 18 '11 at 21:01
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The favored method is to use a "newaxis", that is

x[:, numpy.newaxis] * y

It is very readable and efficient.

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