# how to find minimum/maximum values axis by axis in numpy array

I have a NumPy array with a shape of `(3,1,2)`:

``````A=np.array([[[1,4]],
[[2,5]],
[[3,2]]]).
``````

I'd like to get the min in each column.

In this case, they are 1 and 2. I tried to use `np.amin` but it returns an array and that is not what I wanted. Is there a way to do this in just one or two lines of python code without using loops?

You can specify `axis` as parameter to `numpy.min` function.

``````In [10]: A=np.array([[[1,4]],
[[2,5]],
[[3,6]]])

In [11]: np.min(A)
Out[11]: 1

In [12]: np.min(A, axis=0)
Out[12]: array([[1, 4]])

In [13]: np.min(A, axis=1)
Out[13]:
array([[1, 4],
[2, 5],
[3, 6]])

In [14]: np.min(A, axis=2)
Out[14]:
array([[1],
[2],
[3]])
``````
• @mengmengxyz, I am not sure that I understand your question. `np.min(np.array([[[1,4]],[[2,5]],[[3,2]]]), axis=0)` produces: `array([[1, 2]])`, isn't that what you are looking for? – Akavall Mar 11 '16 at 2:36
• That works.. Sorry for confusing you. I messed up my code while doing the testing. Thanks a lot – mengmengxyz Mar 11 '16 at 2:46