I'm troubled with the np.where() function. (line 7 in my example)

Background: I am programming the game "Connect Four". This insert_chip() method accesses the variable self.board which is an 8x8 np array of my personal dtype Chip. If there is no chip in an entry of self.board, then the value is None.

For some reason, np.where(col_entries is None) does not return the indices of the elements that are None. And why do I receive a different output, when I write col_entries == None in the condition? It's not a if None has a reference right?

def insert_chip(self, chip, col):
    # slices the entries of the column into a new array
    col_entries = self.board[:, col:col+1]

    # checks for all unoccupied pos in this col (entries are None)
    # gives double array of indexes with the form (array([row_i, ...]), array([col_i, ...]))
    none_indexes = np.where(col_entries is None)

    # the pos where the chip will fall is the one with the highest index
    self.board[len(none_indexes[0]), col] = chip
  • 2
    is checks if col_entries (so thye matrix itself) is None. So this is always False. Nov 16, 2018 at 20:18
  • 1
    This site is a good place to check for understanding the difference between is and == in python.
    – d_kennetz
    Nov 16, 2018 at 20:22
  • Compare (col_entries is None) with(col_entries==None). The test is done first, and then passed to where. If the test array doesn't make sense, then the where result won't either.
    – hpaulj
    Nov 16, 2018 at 20:22
  • None ALWAYS needs to be checked with is. Anything else isn't safe. Nov 16, 2018 at 20:24
  • What's the dtype of self.board? object or numeric? Math with a numeric dtype is faster, but it can't hold a None object. And object dtype array is more like a list, or if 2d, a list of lists.
    – hpaulj
    Nov 16, 2018 at 20:24

2 Answers 2


Make an object dtype array:

In [37]: arr = np.zeros((3,3), object)
In [39]: arr[range(3),range(3)]=None
In [40]: arr
array([[None, 0, 0],
       [0, None, 0],
       [0, 0, None]], dtype=object)

The is None test:

In [41]: arr is None
Out[41]: False

The == test.

In [42]: arr == None
array([[ True, False, False],
       [False,  True, False],
       [False, False,  True]])
In [43]: np.where(arr == None)
Out[43]: (array([0, 1, 2]), array([0, 1, 2]))

Propagation of comparison tests in object arrays has been undergoing some changes. From a recent release_notes: https://docs.scipy.org/doc/numpy-1.15.1/release.html#comparison-ufuncs-accept-dtype-object-overriding-the-default-bool

Similar operations on a list

In [44]: alist = [0,None,0]
In [45]: alist is None
Out[45]: False
In [46]: [i is None for i in alist]
Out[46]: [False, True, False]
In [48]: alist.index(None)
Out[48]: 1

For some reason, np.where(col_entries is None) does not return the indices of the elements that are None.

The is operator checks if the two operands point to the same object. So here it checks if col_entries (the matrix) is None, it thus does not performs "broadcasting" to check if some elements in the matrix refer to None.

In Python one can overload certain operators like <=, ==, etc. Numpy makes use of that to implement specific operators, such that one can write some_matrix == 0 to generate a matrix of booleans. The is operator can not be overloaded, and so Numpy (nor any other library) has control over this. is simply checks if the two operands refer to the same object.

Since here your col_entries refers to a numpy array, this will always be False, hence np.where(col_entries is None) will always return an 1-tuple containing an empty array.

Although there are not that much objects that are equal to None, it is still not very safe to count on that. We can vectorize the is operator, like:

from operator import is_

np.where(np.vectorize(is_)(col_entries, None))
  • This explanation helps me. So should one use == instead?
    – Philipp
    Nov 16, 2018 at 20:37
  • I think you should use is_ instead of is in your vectorize argument. May 25, 2022 at 13:03

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