Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

How can i accomplish column addition with shift using python numpy arrays ?

I have two dimensional array and need it's extended copy.

a = array([[0, 2, 4, 6, 8],
       [1, 3, 5, 7, 9]])

i want something like (following is in pseudo code, it doesn't work; there is no a.columns in numpy as far as i know):

shift = 3
mult_factor = 0.7
for column in a.columns - shift :
    out[column] = a[column] + 0.7 * a[column + shift] 

I also know, that i can do the something similar to what i need using indexes. But i seems that is really overkill enumerating three values and using only one (j) :

for (i,j),value in np.ndenumerate(a):
    print i,j

I founded, that i could iterate over columns, but not their indexes:

for column in a.T:
    print column

Than i though that i can simply do this with something that is similar to xrange, but applying to multidimensional array:

In [225]: for column in np.ndindex(a.shape[1]):
            print column
   .....:     
(0,)
(1,)
(2,)
(3,)
(4,)

So now i only know how to do this with simple xrange and i am not sure, that is the best solution.

out = np.zeros(a.shape)
shift = 2
mult_factor = 0.7
for i in xrange(a.shape[1]-shift):
    print a[:, i]
    out[:, i] =  a[:, i] + mult_factor * a[:, i+shift]

However it will be not so fast in Python as it maybe can be. Can you give me an advice how it will be in performance and maybe there is more faster way to accomplish column addition of numpy arrays with shift ?

share|improve this question
    
What version of numpy is this? (The a.columns doesn't work for me). Also, could you explain what the output of the shift should be? –  David Robinson Feb 25 '14 at 4:17
    
a.columns will not work it is pseudo code, representing what i really need. shift is an offset used to add columns, nothing more so in first output column should be first input column plus first+shift column –  xolodec Feb 25 '14 at 4:31

2 Answers 2

up vote 2 down vote accepted
out = a[:, :-shift] + mult_factor * a[:, shift:]

I think this is what you're looking for. It's a vectorized form of your loop, operating on large slices of a instead of column by column.

share|improve this answer
    
so in general in numpy vector arithmetic vectors should be equal length. I tried something similar, but no so elegent as this. Can you explain, please, how numpy performs this addition ? –  xolodec Feb 25 '14 at 4:40
2  
@PavelShvechikov: There are a lot of different possible answers to that question, depending on which aspect you actually need answered. You could take a look at the broadcasting tutorial, which has a good chance of answering questions about how NumPy handles arithmetic operations on arrays. –  user2357112 Feb 25 '14 at 4:44

I'm not positive I completely understand what the computed quantity should be, but here are two things that seem germane to what you are asking:

  1. If you have a 2D array, called a that you wish to convert to a list of 1D arrays which are the columns of a you can do this

    cols = [c for c in a.T]

  2. It looks like what you want can be accomplished with matrix multiplication if I am not mistaken. You could make a banded matrix in numpy using numpy.diag or, since you would have the same values along each band 1, mult_factor, or 0, you could use scipy.linalg.toeplitz

    m,n = a.shape
    band = np.eye(1,n)
    band[0,shift] = mult_factor
    T = scipy.linalg.toeplitz(np.eye(1,m),band)
    out = np.inner(a,T)

For large matrices, it might make sense to use a sparse matrix for T if you only want to add two or a few columns of a.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.