When grouping a Pandas DataFrame, when should I use transform
and when should I use aggregate
? How do
they differ with respect to their application in practice and which one do you
consider more important?
1 Answer
consider the dataframe df
df = pd.DataFrame(dict(A=list('aabb'), B=[1, 2, 3, 4], C=[0, 9, 0, 9]))
groupby
is the standard use aggregater
df.groupby('A').mean()
maybe you want these values broadcast across the whole group and return something with the same index as what you started with.
use transform
df.groupby('A').transform('mean')
df.set_index('A').groupby(level='A').transform('mean')
agg
is used when you have specific things you want to run for different columns or more than one thing run on the same column.
df.groupby('A').agg(['mean', 'std'])
df.groupby('A').agg(dict(B='sum', C=['mean', 'prod']))
-
8
-
2By using
agg
how can I return to original data-framedf
exploding the aggregated columns?– MACAug 12, 2021 at 12:12 -