On this page
pandas.core.groupby.GroupBy.apply
GroupBy.apply(self, func, *args, **kwargs)
[source]-
Apply function
func
group-wise and combine the results together.The function passed to
apply
must take a dataframe as its first argument and return a DataFrame, Series or scalar.apply
will then take care of combining the results back together into a single dataframe or series.apply
is therefore a highly flexible grouping method.While
apply
is a very flexible method, its downside is that using it can be quite a bit slower than using more specific methods likeagg
ortransform
. Pandas offers a wide range of method that will be much faster than usingapply
for their specific purposes, so try to use them before reaching forapply
.Parameters: -
func : callable
-
A callable that takes a dataframe as its first argument, and returns a dataframe, a series or a scalar. In addition the callable may take positional and keyword arguments.
-
args, kwargs : tuple and dict
-
Optional positional and keyword arguments to pass to
func
.
Returns: -
applied : Series or DataFrame
See also
pipe
- Apply function to the full GroupBy object instead of to each group.
aggregate
- Apply aggregate function to the GroupBy object.
transform
- Apply function column-by-column to the GroupBy object.
Series.apply
- Apply a function to a Series.
DataFrame.apply
- Apply a function to each row or column of a DataFrame.
-
© 2008–2012, AQR Capital Management, LLC, Lambda Foundry, Inc. and PyData Development Team
Licensed under the 3-clause BSD License.
https://pandas.pydata.org/pandas-docs/version/0.25.0/reference/api/pandas.core.groupby.GroupBy.apply.html