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I have an array of matrices that I want to multiply by a vector (so the first array in the matrix should be multiplied by the first value in the vector, etc.).

import numpy as np

# Three matrices/double arrays                                              
a = np.array([[1,2], [3, 4]])
b = np.array([[2,3], [4, 5]])
c = np.array([[3,4], [5, 6]])

# An array of matrices                                                      
d = np.array([a, b, c])

# A vector                                                                  
e = np.array([1,2,3])

# Multiply every matrix by the corresponding value in the vector            
f = [ d[i] * e[i] for i in range(len(e)) ]

# Somewhat to my surpise however, this doesn't work                         
g = d * e # <-- Doesn't work

# Nor does                                                                  
h = e * d # <-- Doesn't work

So the list comprehension works, but I somehow doubt if that is the most efficient way of doing things.

Am I overlooking something really simple?

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1 Answer 1

up vote 1 down vote accepted

You need to align the axes:

f = d * e[:,np.newaxis,np.newaxis]

(3, 2, 2)
(3, 1, 1)

An alternative would be to make d's shape (2,2,3), then e (with shape (3,)) would be broadcast-able to d's shape.

What you really want is to learn more about broadcasting.


as for your second question, for inplace multiplication:

d *= e[:,np.newaxis,np.newaxis]

No copies are created.

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Thanks. That works! But... how exactly..?!? – Tom May 15 '13 at 13:46
Also, form what it looks like, I get the impression the matrices are copied, right..?!? Could I do a similar trick on d (as that would be cheaper, I think)\ – Tom May 15 '13 at 13:47
sure. see my edit – shx2 May 15 '13 at 13:50
OK, thanks again! Indeed, I will read up on broadcasting ;-) – Tom May 15 '13 at 13:53
OK, one other question... ;-) A slight drawback of the np.newaxis approach seems to be that I have to know the amount of elements of d beforehand. Right? Or would there be a way to say something like f = d * e[:, len(d) * np.newaxis] – Tom May 15 '13 at 15:12

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