I am aware that AND corresponds to & and NOT, ~. What is the element-wise logical OR operator? I know "or" itself is not what I am looking for.


3 Answers 3


The corresponding operator is |:

 df[(df < 3) | (df == 5)]

would elementwise check if value is less than 3 or equal to 5.

If you need a function to do this, we have np.logical_or. For two conditions, you can use

df[np.logical_or(df<3, df==5)]

Or, for multiple conditions use the logical_or.reduce,

df[np.logical_or.reduce([df<3, df==5])]

Since the conditions are specified as individual arguments, parentheses grouping is not needed.

More information on logical operations with pandas can be found here.

  • 45
    The round brackets are important
    – Gerard
    Commented Aug 8, 2016 at 15:22
  • 5
    | and np.logical_or behave differently in the presence of NaNs. See stackoverflow.com/q/37131462/2596586
    – Frank
    Commented Nov 14, 2019 at 0:18
  • Just a comment: or is not working here. Only | works.
    – Alan
    Commented Mar 15, 2020 at 0:17

To take the element-wise logical OR of two Series a and b just do

a | b

If you operate on the columns of a single dataframe, eval and query are options where or works element-wise. You don't need to worry about parenthesis either because comparison operators have higher precedence than boolean/bitwise operators. For example, the following query call returns rows where column A values are >1 and column B values are > 2.

df = pd.DataFrame({'A': [1,2,0], 'B': [0,1,2]})

df.query('A > 1 or B > 2')       # == df[(df['A']>1) | (df['B']>2)]
#    A  B
# 1  2  1

or with eval you can return a boolean Series (again or works just fine as element-wise operator).

df.eval('A > 1 or B > 2')
# 0    False
# 1     True
# 2    False
# dtype: bool

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.