133

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.

1
259

Just iterate over the transposed of your array:

for column in array.T:
   some_function(column)
3
  • 9
    What would be a good way to combine the result back into a single array? Sep 23 '13 at 17:08
  • 67
    For those wondering, array.T isn't costly, as it just changes the 'strides' of array (see this answer for an interesting discussion)
    – drevicko
    Sep 22 '14 at 4:03
  • 1
    Is there a way of iterating which keeps the vectors as column vectors?
    – Rufus
    Oct 18 '20 at 14:22
22

This should give you a start

>>> for col in range(arr.shape[1]):
    some_function(arr[:,col])


[1 2 3 4]
[99 14 12 43]
[2 5 7 1]
3
  • 9
    It doesn't look pythonic to me.
    – gronostaj
    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?
    – Neil G
    Mar 28 '18 at 13:18
  • 1
    @NeilG This question is strictly about 2-dimensional arrays.
    – gronostaj
    Mar 28 '18 at 13:41
6

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.

6

You can also use unzip to iterate through the columns

for col in zip(*array):
   some_function(col)
2
  • 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.
    – Ela782
    Apr 2 at 12:32
5
for c in np.hsplit(array, array.shape[1]):
    some_fun(c)
2

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. ])

1

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]
2
0

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 


0

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]]

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