Usually when using the
.apply() method, one passes a function that takes exactly one argument.
def somefunction(group): group['ColumnC'] == group['ColumnC']**2 return group df.groupby(['ColumnA', 'ColumnB']).apply(somefunction)
somefunction is applied for each
group, which is then returned. Basically I'm using this example here.
I want to have the ability to not specify the column name
ColumnC beforehand. Passing it along as an argument of
somefunction would make the code more flexible.
def somefunction(group, column_name): group[column_name] == group[column_name]**2 return group df.groupby(['ColumnA', 'ColumnB']).apply(somefunction)
Is there any way to make this work? I can't pass
somefunction, because that is magically done by
.apply() in the background.