I'm filtering my DataFrame dropping those rows in which the cell value of a specific column is None.

df = df[df['my_col'].isnull() == False]

Works fine, but PyCharm tells me:

PEP8: comparison to False should be 'if cond is False:' or 'if not cond:'

But I wonder how I should apply this to my use-case? Using 'not ...' or ' is False' did not work. My current solution is:

df = df[df['my_col'].notnull()]
  • 3
    df = df[df['my_col'].notnull()] ? – MaxU Apr 5 '18 at 13:16
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    ~ is the not operator – FHTMitchell Apr 5 '18 at 13:17
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    Still I wonder how this is related to the PEP8 message. – Matthias Apr 5 '18 at 13:18
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    @MohammadAthar that doesn't work. As mentioned in my question. – Matthias Apr 5 '18 at 13:19
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    df = df.dropna(subset=['my_col']) – jezrael Apr 5 '18 at 13:20

So python has the short-circuiting logic operators not, and, or. These have a very specific meaning in python and cannot be overridden (not must return a bool and a and/or b always returns either a or b or throws an error.

However, python also has over-loadable boolean operators ~ (not), & (and), | (or) and ^ (xor).

You may recognise these as the int bitwise operators, but Numpy (and therefore pandas) use these to do array / series boolean operations.

For example

b = np.array([True, False, True]) & np.array([True, False, False])
# b --> [True False False]
b = ~b 
# b --> [False True True]

Hence what you want is

df = df[~df['my_col'].isnull()]

I agree with PEP8, don't do == False.

  • Thanks for the explantation and yet another example. – Matthias Apr 5 '18 at 14:50

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