64

My function (name CovexHull(point)) accepts argument as 2 dimensional array.

hull = ConvexHull(points)

In [1]: points.ndim
Out[1]: 2
In [2]: points.shape
Out[2]: (10, 2)
In [3]: points
Out[3]: 
array([[ 0. ,  0. ],
       [ 1. ,  0.8],
       [ 0.9,  0.8],
       [ 0.9,  0.7],
       [ 0.9,  0.6],
       [ 0.8,  0.5],
       [ 0.8,  0.5],
       [ 0.7,  0.5],
       [ 0.1,  0. ],
       [ 0. ,  0. ]])

points is a numpy array with ndim 2.

I have 2 different numpy arrays (tp and fp) like below

In [4]: fp.ndim
Out[4]: 1
In [5]: fp.shape
Out[5]: (10,)
In [6]: fp
Out[6]: 
array([ 0. ,  0.1,  0.2,  0.3,  0.4,  0.4,
        0.5, 0.6,  0.9,  1. ])

I want to know how can I create a 2 dimensional numpy array effectively (like points mentioned above) with tp and fp.

3 Answers 3

87

If you wish to combine two 10 element 1-d arrays into a 2-d array np.vstack((tp, fp)).T will do it. np.vstack((tp, fp)) will return an array of shape (2, 10), and the T attribute returns the transposed array with shape (10, 2) (i.e. with the two 1-d arrays forming columns rather than rows).

>>> tp = np.array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9])
>>> tp.ndim
1
>>> tp.shape
(10,)

>>> fp = np.array([10, 11, 12, 13, 14, 15, 16, 17, 18, 19])
>>> fp.ndim
1
>>> fp.shape
(10,)

>>> combined = np.vstack((tp, fp)).T
>>> combined
array([[ 0, 10],
       [ 1, 11],
       [ 2, 12],
       [ 3, 13],
       [ 4, 14],
       [ 5, 15],
       [ 6, 16],
       [ 7, 17],
       [ 8, 18],
       [ 9, 19]])

>>> combined.ndim
2
>>> combined.shape
(10, 2)
2
  • 27
    +1, but you can get the right shape directly with np.column_stack.
    – Jaime
    Jul 17, 2013 at 22:25
  • This should not be the accepted answer. column_stack is much more straightforward (see Aminu's answer) Dec 16, 2021 at 19:54
38

You can use numpy's column_stack

np.column_stack((tp, fp))
2
  • This did the trick, accepted answer is less transparent
    – eric
    May 13, 2021 at 15:46
  • This is the right way. I'm surprised how this is not the first answer that shows up when googled.
    – Leonard
    Jul 5, 2021 at 3:03
2

Another way is to use np.transpose. It seems to be used occasionally, but it is not readable, so it is a good idea to use the above answer. But I hope it will be helpful when you come across it somewhere.

import numpy as np

tp = np.array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9])
fp = np.array([10, 11, 12, 13, 14, 15, 16, 17, 18, 19])
combined = np.transpose((tp, fp))
combined
# Out[3]:
# array([[ 0, 10],
#        [ 1, 11],
#        [ 2, 12],
#        [ 3, 13],
#        [ 4, 14],
#        [ 5, 15],
#        [ 6, 16],
#        [ 7, 17],
#        [ 8, 18],
#        [ 9, 19]])
combined.ndim
# Out[4]: 2
combined.shape
# Out[5]: (10, 2)
1
  • Even this is better than the accepted answer. vstack is not useful for OPs goal. Dec 16, 2021 at 19:58

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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