I have null (nan) values in column A and would like to assign 0 to the cells in column B when a cell of the same row in column A is null.

Column B has been created as the following lambda expression :

df['col_B'] = df.apply(lambda x: x.col_A in x.col_C, axis=1)

I tried to modify it but it doesn't work and from what I read it isn't advised.

So I tried with a classic loop, it shows no error but it doesn't modify the cells in column B :

for index, row in df.iterrows():
    if row['col_A'] is None:
        df.at[index, 'col_B'] = 0

My null values appear as "nan" (not "None" or "Nan") so I'm not even sure Python considers them as real null values.

What would you advise ?


1 Answer 1


You should avoid pd.Series.apply wherever possible. That said, for the conditional assignment there are a few alternatives via Boolean series.

You can use loc:

df.loc[df['col_A'].isnull(), 'col_B'] = 0

Or mask:

df['col_B'] = df['col_B'].mask(df['col_A'].isnull(), 0)

Or np.where:

df['col_B'] = np.where(df['col_A'].isnull(), 0, df['col_B'])

If your nulls are strings, make sure you replace them first; for example:

df['col_A'] = df['col_A'].replace('Nan', np.nan)

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.