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Is there a fast way in numpy to add a vector to every row or column of a matrix.

Lately, I have been tiling the vector to the size of the matrix, which can use a lot of memory. For example


    mat+=np.tile(vec, (5,1))

The other way I can think of is using a python loop, but loops are slow:

    for i in xrange(len(mat)):

Is there a fast way to do this in numpy without resorting to C extensions?

It would be nice to be able to virtually tile a vector, like a more flexible version of broadcasting. Or to be able to iterate an operation row-wise or column-wise, which you may almost be able to do with some of the ufunc methods.

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Could you give another example? The one you've given would give the same answer just with mat + vec, so I'm not sure exactly what you're after. [Incidentally, this is an array, not a matrix.] – DSM Aug 15 '12 at 14:31
by matrix, I mean a 2-d array (a matrix in the mathematical sense) – user1149913 Aug 15 '12 at 14:39
I want to add the same 1-d array to every row of the 2d array – user1149913 Aug 15 '12 at 14:40
In numpy, a matrix is different from a 2d array. For example, multiplication is matrix multiplication on matrix objects but elementwise on array objects, so it's a good idea to keep them distinct. – DSM Aug 15 '12 at 14:48

1 Answer 1

up vote 10 down vote accepted

For adding a 1d array to every row, broadcasting already takes care of things for you:

mat += vec

However more generally you can use np.newaxis to coerce the array into a broadcastable form. For example:

mat + np.ones(3)[np.newaxis,:]

While not necessary for adding the array to every row, this is necessary to do the same for column-wise addition:

mat + np.ones(5)[:,np.newaxis]

EDIT: as Sebastian mentions, for row addition, mat + vec already handles the broadcasting correctly. It is also faster than using np.newaxis. I've edited my original answer to make this clear.

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Here its not even necessary, but if mat would be shaped (3,5) then using np.ones(3)[:,np.newaxis] does the trick. – seberg Aug 15 '12 at 14:40
@Sebastian: You are right; I was just trying to show a general method of getting the broadcasting correct since the OP asked for both columns and row addition. – JoshAdel Aug 15 '12 at 14:43
Okay, I must be really stupid today. Could someone explain to me why this isn't just a slower version of mat + vec? – DSM Aug 15 '12 at 14:45
@DSM not being stupid. See my edit above. I should have been clear that what I was demonstrating was a general method for coercing arrays into a broadcasting friendly shape. – JoshAdel Aug 15 '12 at 14:49
It looks like mat + vec works when vec is the same size as the number of columns in mat, but you need newaxis to add columns. – user1149913 Aug 15 '12 at 14:52

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