I met this in a python script list[:, 1] and I am trying to figure out the role of the comma.

  • 19
    That's a numpy syntax. docs.scipy.org/doc/numpy/reference/arrays.indexing.html Commented Jan 16, 2014 at 15:21
  • specifically, that command is accessing two different dimensions of the data structure (rows and columns)
    – Paul H
    Commented Jan 16, 2014 at 15:23
  • 1
    This syntax will raise TypeError: list indices must be integers, not tuple , so I'm sure the object was not a regular Python list. Commented Jan 16, 2014 at 15:24
  • 1
    hmm, you ask about lists, but it has the numpy tag on it, and your syntax works only on numpy arrays instead of lists. I assume you do not understand the difference between numpy arrays and the python lists, and thus your question? Commented Jan 16, 2014 at 15:29
  • 3
    @usethedeathstar Ashwini added the numpy tag on the assumption that this is a numpy array.
    – poke
    Commented Jan 16, 2014 at 15:32

4 Answers 4


Generally speaking:


calls either __getitem__, or __setitem__. (there's also __getslice__ and __setslice__, but those are now deprecated, so let's not talk about that). Now, if somestuff has a comma in it, python will pass a tuple to the underlying function:

foo[1,2]  # passes a tuple

If there is a :, python will pass a slice:

foo[:]  # passes `slice(None, None, None)`
foo[1:2]  # passes `slice(1, 2, None)`
foo[1:2:3]  # passes `slice(1, 2, 3)
foo[1::3]  # passes `slice(1, None, 3)

Hopefully you get the idea. Now if there is a comma and a colon, python will pass a tuple which contains a slice. in your example:

foo[:, 1]  # passes the tuple `(slice(None, None, None), 1)`

What the object (foo) does with the input is entirely up to the object.

  • 1
    what a boss explanation :D I've just read PEP8 and I've reached the pet peeves part where it says that in slices, the colon : acts as a binary operator, so I immediately googled more and landed here, now I see how the [] subscription method is creating a slice with colon between numbers when there are multiple objects.. Commented Apr 17, 2018 at 5:18
  • 1
    Would be helpful to add that for a numpy array (which is where most people will encounter this), foo[:, 1] will return the column of the 2d array at index 1 (and will throw an exception if foo is not a 2d array). Commented Dec 10, 2021 at 17:51

Lets assume list is a 2D (numpy) array as follows:

[[ 1, 2, 3],
 [ 4, 5, 6],
 [ 7, 8, 9]]
list[1,1]  # --> 5

It says select the element in position [1,1] (note that indexes start from zero)

list[:,1]  # --> [2,5,8] 
list[1][1]  # --> 5
list[:][1]  # --> [4 5 6]

See this and this for further examples.


In a sense the comma separates the different dimensions of your array that you are trying to select from.

Lets say I have a 2D array

my_array = numpy.array([[1,2,3],

I could select rows(0 and 1) and columns(1 and 2) by doing this:

#             rows | cols
print(my_array[0:2, 1:3]) # prints [[2 3]
                                    [5 6]]

The comma serves to separate the indexes and the colon to get all the elements of a dimension. Let's take a look at an example:

A = np.array([
      [1,2], # --> i0
      [3,4], # --> i1
]) #   | |
   #   v v
   #  j0 j1

A[0,0] # 1

A[:,0] # [1,3]
A[:,1] # [2,4]

A[0,:] # [1,2]
A[1,:] # [3,4]

A[:,:] # [[1,2], [3,4]]
A[:]   # [[1,2], [3,4]]
A      # [[1,2], [3,4]]

Given a numpy 2D array, A[i,j] selects the element of the i-th row and j-th column.

Note : j can be omitted.

If you use a : in either position, it means "grab all" from the row/column.

  • A[:,j] grabs all the rows, but just gets the elements of the j-th column.


  • A[i,:] grabs all the columns, but just gets the elements of the i-th row.


  • A[:,:] grabs all the rows and all the columns (equivalent to A[:] or plain A).

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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