# Create 2 dimensional array with 2 one dimensional array

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.

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)
``````
• +1, but you can get the right shape directly with `np.column_stack`. 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

You can use numpy's column_stack

``````np.column_stack((tp, fp))
``````
• 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. Jul 5, 2021 at 3:03

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)
``````
• Even this is better than the accepted answer. `vstack` is not useful for OPs goal. Dec 16, 2021 at 19:58