In pure Python, None or True returns True.
However with pandas when I'm doing a | between two Series containing None values, results are not as I expected:

>>> df.to_dict()
{'buybox': {0: None}, 'buybox_y': {0: True}}
>>> df
    buybox  buybox_y
0   None    True

>>> df['buybox'] = (df['buybox'] | df['buybox_y'])
>>> df
    buybox  buybox_y
0   False   True

Expected result:

>>> df
    buybox  buybox_y
0   True    True

I get the result I want by applying the OR operation twice, but I don't get why I should do this.

I'm not looking for a workaround (I have it by applying df['buybox'] = (df['buybox'] | df['buybox_y']) twice in a row) but an explanation, thus the 'why' in the title.

  • 11
    | and or are two entirely different operators. Note that None | True produces a type error.
    – chepner
    Commented Apr 6, 2021 at 14:35
  • 5
    @chepner: Yeah, but Pandas uses | for logical or, and we're not getting a TypeError. We're getting False somehow. Commented Apr 6, 2021 at 14:37
  • 3
    Pandas doc (pandas.pydata.org/pandas-docs/stable/user_guide/…) specifies that | is used for logical or and not bitwise or. My pandas version is 1.2.0
    – politinsa
    Commented Apr 6, 2021 at 14:39
  • 3
    @CharlesDuffy I don't see the question as that type of why. This why is more of a "This code does something else from what I would expect. What am I overlooking? Where is my mistake?" which to me seems like a very common and meaningful type of question on Stack Overflow. And pointing to how the or operators are defined in pandas, or what bug this behaviour is a consequence of (I don't know which is the case), would answer the question. The OP doesn't ask why the operators are defined like that or why there is a bug; only in those cases would it be a why of the type you mention.
    – Jesper
    Commented Apr 9, 2021 at 14:43
  • 3
    @Jesper, I generally agree; it's that the comments asserting that there is a bug were ignored / treated as nonresponsive by the OP (and the question had a bounty added with a message refocusing on the interest being an explanation rather than a workaround) that led to the above comment. Commented Apr 9, 2021 at 17:41

2 Answers 2


Pandas | operator does not rely on Python or expression, and behaves differently.

If both operands are boolean, the result is mathematically defined, and the same for Python and Pandas.

But in your case series "buybox" is of type object, and "buybox_y" is bool. In this case Pandas | operator is not commutative:

  • right operand is coerced to boolean
  • then bitwise or is attempted
    • None | True is invalid operation, resulting in None
  • and result is coerced to boolean


>>> df['buybox'] | df['buybox_y']
0  False

>>> df['buybox_y'] | df['buybox']
0  True

For predictable results, you can clean up data, and cast to boolean type with Pandas astype before attempting boolean operations.


For Boolean objects (ie Py_True and Py_False), the code will enter the fast processing branch; for other objects, PyObject_IsTrue() will be used to calculate a value of type int.

During the calculation process, the PyObject_IsTrue() function will obtain the values ​​of nb_bool, mp_length, and sq_length in turn, which should correspond to the return values ​​of the two magic methods bool() and len().

  • This may well be true and interesting information about how or works in CPython 🙂, but the issue in this question is entirely different, because it's how the | operator between two pandas Series works, which is a completely different implementation and doesn't match either pure Python or or |.
    – Tim
    Commented Apr 20, 2021 at 10:17

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