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.

What I want to do is take a numpy array like this:

[[1, 2,  4, 7,  9, 15,  0],
 [3, 4,  3, 5, 10,  2, -2],
 [5, 6, 56, 7, 20,  1,  2]]

I want to take each rows last column and divide that by the previous row's 4th column and take the result and add it to the array as a new dimension the output I want should look like this

[[1, 2,  4, 7,  9, 15,  0,  0],
 [3, 4,  3, 5, 10,  2, -2, -.2857],
 [5, 6, 56, 7, 20,  1,  2, .4]]

Can this be done without a for loop? (Ok I guess it's not efficient to do this without a for loop) But I'm still not sure how to do it with one either

share|improve this question
add comment

4 Answers 4

up vote 1 down vote accepted
import numpy as np
myarray = np.array([[1,2,4,7,9,15,0.0], [3, 4,3,5,10,2,-2], [5,6,56,7,20,1,2]])
#the division:
column_divs = myarray[:,-1][1:] / myarray[:,3][:-1]
#adds a 'placeholder' zero value, as the first element:
column_divs = np.hstack(([0], column_divs))
#adds the required column to the end of the array:
print np.hstack((myarray, column_divs.reshape(-1,1)))
#output:
[[  1.      2.       4.       7.       9.      15.      0.       0.        ]
 [  3.      4.       3.       5.      10.       2.     -2.      -0.28571429]
 [  5.      6.      56.       7.      20.       1.      2.      0.4        ]]
share|improve this answer
add comment
import numpy as np
lis=[[1, 2,  4, 7,  9, 15,  0],
 [3, 4,  3, 5, 10,  2, -2],
 [5, 6, 56, 7, 20,  1,  2]]
new_lis=[lis[i][:]+[lis[i][-1]/lis[i][3]] for i in range(len(lis))]
nparray=np.matrix(new_lis)
share|improve this answer
add comment

You'll want to use np.concatenate:

np.concatenate((a, np.concatenate(([[0]], a[1:, [-1]] / a[:-1, [3]].astype(float)))), axis=1)

The astype(float) is required for Python 2.x if your array has int dtype.

This can be also written with hstack and vstack:

np.hstack((a, np.vstack(([[0]], a[1:, [-1]] / a[:-1, [3]].astype(float)))))

Instead of slicing the rows, it may be OK to use roll:

np.hstack((a, np.vstack((a[:, [-1]] / np.roll(a[:, [3]], 1).astype(float)))))
share|improve this answer
add comment

Apologies in advance for the non-answer, but unless you're prioritizing algorithmic purity over performance, you definitely want to do this with a for loop or similar construct.

There's probably a way to accomplish this purely with matrix operations (multiply the original by a custom kernel and concatenate the result as a new column on the original matrix) but it won't be as efficient. Consider that Strassen's algorithm (an example of efficient multiplication of two square matrices) is O(n^log7), or ~O(n^2.807) where n is the size of the matrices being multiplied in terms of number of elements. A for loop would be O(m), where m is the number of rows in the matrix in question.

share|improve this answer
1  
I think the OP means without a Python for loop. numpy slicing operations probably involve for loops at some level, but they're implemented in c, and provide a linear time solution for this. I think that's what the OP is looking for. –  senderle Jul 2 '12 at 16:55
    
@senderle you are correct got some great answers here –  user1440194 Jul 2 '12 at 17:02
    
In retrospect, I should've made this a comment rather than an answer, but I'll leave it here now for posterity's sake. –  Ben Burns Jul 2 '12 at 17:13
add comment

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.