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Most probably somebody else already asked this but I couldn't find it. The question is how can I assign values to a 2D array from two 1D arrays. For example:

import numpy as np
#a is the 2D array. b is the 1D array and should be assigned 
#to second coordinate. In this exaple the first coordinate is 1.


[[ 1.  1.]
 [ 1.  2.]
 [ 1.  3.]]

I know the way I am doing it so naive, but I am sure there should be a one line way of doing this.

P.S. In real case that I am dealing with, this is a subarray of an array, and therefore I cannot set the first coordinate from the beginning to one. The whole array's first coordinate are different, but after applying np.where they become constant.

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up vote 2 down vote accepted

How about 2 lines?

>>> c = np.ones((3, 2))
>>> c[:, 1] = [1, 2, 3]

And the proof it works:

>>> c
array([[ 1.,  1.],
       [ 1.,  2.],
       [ 1.,  3.]])

Or, perhaps you want np.column_stack:

>>> np.column_stack(([1.,1,1],[1,2,3]))
array([[ 1.,  1.],
       [ 1.,  2.],
       [ 1.,  3.]])
share|improve this answer
Thanks. Vote up, but the point is my first array is fixed but not for all values. So in real scenario I am actually using np.where and therefore the first value is 1, otherwise all the coords of first vector are not 1. Some are 0 as well. But thanks I will update it. – Cupitor Nov 27 '13 at 1:21

If you insist on 1 line, use fancy indexing:

>>> a[:,0],a[:,1]=[1,1,1],[1,2,3]
share|improve this answer

First, there's absolutely no reason to create the original zeros array that you stick in a, never reference, and replace with a completely different array with the same name.

Second, if you want to create an array the same shape and dtype as b but with all ones, use ones_like.


b = np.array([1,2,3])
c = np.ones_like(b)
d = np.vstack((c, b).T

You could of course expand b to a 3x1-array instead of a 3-array, in which case you can use hstack instead of needing to vstack then transpose… but I don't think that's any simpler:

b = np.array([1,2,3])
b = np.expand_dims(b, 1)
c = np.ones_like(b)
d = np.hstack((c, b))
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