I am trying to replace all values in a pandas dataframe column df.column_A if they fall within the range of 1 to 10.

However, when I do:

df.loc[(1 < df.column_A < 10), "Column_A"] = 1


ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all()

Alternatively, when I do:

df.loc[(df.column_A < 10) & (df.column_A > 1), "df.column_A"] = 1

I am not getting an error at all, but the values don't get replaced.

What is strange is that when I do:

df.loc[(df.column_A < 10) | (df.column_A > 1), "df.column_A"] = 1

all values in df.column_A get replaced with 1, as I would expect.

This means that the syntax of the line is correct, so the mistake must be due to some factors I don't understand.

What am I doing wrong?


1 Answer 1


It is a simple problem. .loc takes index labels or boolean list/Series. So this will work:

df.loc[(df.column_A < 10) & (df.column_A > 1), "column_A"] = 1

Note that I removed df. from the column index place.

df.loc[(1 < df.column_A < 10), "Column_A"] = 1

Will not work because the operation (1 < df.column_A < 10) seems logical, but tries to collapse the whole Series into one value. And since it does not know whether you want an and, or or some other combination, it raises that error.

df.loc[(df.column_A < 10) | (df.column_A > 1), "df.column_A"] = 1

Should not work either, because you are not referencing the columns correctly. It is funny that you are getting no errors. Perhaps you did something in your program earlier that saves you...

Not the answer you're looking for? Browse other questions tagged or ask your own question.