# Numpy how to iterate over columns of array?

Suppose I have and m x n array. I want to pass each column of this array to a function to perform some operation on the entire column. How do I iterate over the columns of the array?

For example, I have a 4 x 3 array like

``````1  99 2
2  14 5
3  12 7
4  43 1

for column in array:
some_function(column)
``````

where column would be "1,2,3,4" in the first iteration, "99,14,12,43" in the second, and "2,5,7,1" in the third.

Just iterate over the transposed of your array:

``````for column in array.T:
some_function(column)
``````
• What would be a good way to combine the result back into a single array? Sep 23 '13 at 17:08
• For those wondering, `array.T` isn't costly, as it just changes the 'strides' of `array` (see this answer for an interesting discussion) Sep 22 '14 at 4:03
• Is there a way of iterating which keeps the vectors as column vectors? Oct 18 '20 at 14:22

This should give you a start

``````>>> for col in range(arr.shape):
some_function(arr[:,col])

[1 2 3 4]
[99 14 12 43]
[2 5 7 1]
``````
• It doesn't look pythonic to me. Apr 30 '14 at 16:22
• @gronostaj Of course it's Pythonic. How else would you solve this problem when you want to iterate over an arbitrary axis of a multidimensional array? Mar 28 '18 at 13:18
• @NeilG This question is strictly about 2-dimensional arrays. Mar 28 '18 at 13:41

For a three dimensional array you could try:

``````for c in array.transpose(1, 0, 2):
do_stuff(c)
``````

See the docs on how `array.transpose` works. Basically you are specifying which dimension to shift. In this case we are shifting the second dimension (e.g. columns) to the first dimension.

You can also use unzip to iterate through the columns

``````for col in zip(*array):
some_function(col)
``````
• Interesting. This returns tuples instead of arrays. And it's much faster.
– Bill
Jan 23 at 6:49
• I have a hunch that the result of this might depend on the storage order of the numpy array ('C' or 'F') - it may return columns in one case and rows in the other. I'm not sure though - just a warning, better check before using this. It doesn't look safe. Apr 2 at 12:32
``````for c in np.hsplit(array, array.shape):
some_fun(c)
``````

For example you want to find a mean of each column in matrix. Let's create the following matrix

``````mat2 = np.array([1,5,6,7,3,0,3,5,9,10,8,0], dtype=np.float64).reshape(3, 4)
``````

The function for mean is

``````def my_mean(x):
return sum(x)/len(x)
``````

To do what is needed and store result in colon vector 'results'

``````results = np.zeros(4)
for i in range(0, 4):
mat2[:, i] = my_mean(mat2[:, i])

results = mat2[1,:]
``````

The results are: array([4.33333333, 5. , 5.66666667, 4. ])

The question is old but for anyone looking nowadays.

You can iterate through the rows of a numpy array like this:

``````for row in array:
some_function(column) # do something here
``````

So to iterate through the columns of a 2D array you can simply transpose it like this:

``````transposed_array = array.T

#Now you can iterate through the columns like this:
for column in transposed_array:
some_function(column) # do something here
``````

If you want to collect the results of each column into a list for example, you can use list comprehension.

``````[some_function(column) for column in array.T]
``````

So in summary you can perform a function on each column of an array and collect the results into a list using this line of code:

``````result_list = [some_function(column) for column in array.T]
``````

Alternatively, you can use `enumerate`. It gives you the column number and the column values as well.

``````for num, column in enumerate(array.T):
some_function(column) # column: Gives you the column value as asked in the question
some_function(num) # num: Gives you the column number

``````

list -> array -> matrix -> matrix.T

``````import numpy as np

list = [1, 99, 2, 2, 14, 5, 3, 12, 7, 4, 43, 1]
arr_n = np.array(list) # list -> array
print(arr_n)
matrix = arr_n.reshape(4, 3) # array -> matrix(4*3）
print(matrix)
print(matrix.T) # matrix -> matrix.T

[ 1 99  2  2 14  5  3 12  7  4 43  1]

[[ 1 99  2]
[ 2 14  5]
[ 3 12  7]
[ 4 43  1]]

[[ 1  2  3  4]
[99 14 12 43]
[ 2  5  7  1]]
``````