.reset_index()
method / as_index=False
parameter
In most practical cases, these two variations behave the same. In fact if we look at the source code of groupby, for some methods, as_index=False
is literally equivalent to reset_index()
.
# sample data
df = pd.DataFrame({
'A': ['g1', 'g1', 'g2', 'g2'],
'B': [1, 1, 2, 2],
'C': [1, 2, 3, 4]
})
y1 = df.groupby(['A', 'B'], as_index=False)['C'].sum()
y2 = df.groupby(['A', 'B'])['C'].sum().reset_index()
y1.equals(y2) # True
Ultimately, reset_index()
makes the following transformation (and passing as_index=False
avoids the Series on the left altogether). Note that it creates a 3-column (number of grouper columns + column being aggregated) dataframe.
reset_index
and as_index=False
behave differently, if a column used in the grouper is also in the output (as in the OP). In that case, as_index=False
drops all overlapping columns from the grouper (via the _insert_inaxis_grouper method). The following example illustrates this point.
df = pd.DataFrame({'A': ['g1', 'g1', 'g2', 'g2'], 'B': [1, 1, 2, 2]})
df.groupby(['A', 'B'])['B'].sum() # <--- includes B as a grouper
df.groupby(['A', 'B'])['B'].sum().reset_index(name='Total') # <--- includes B as a grouper
df.groupby(['A', 'B'], as_index=False)['B'].sum() # <--- drops B from the grouper
.to_frame()
method / groupby.method
on a list of columns
to_frame()
method converts a Series into a DataFrame where the grouper is retained as the index and the values in the Series are converted into a DataFrame column. You can optionally pass a name for the aggregated column. However, if name is not passed, it's exactly the same as simply calling an aggregator function on a list of columns of groupby.
x1 = df.groupby(['A', 'B'])['C'].sum().to_frame()
x2 = df.groupby(['A', 'B'])[['C']].sum()
# ^^ ^^ <--- list of columns
x1.equals(x2) # True
# if `name=` is passed, it can rename the aggregated column in one go
x3 = df.groupby(['A', 'B'])['C'].sum().to_frame('Total')
x4 = df.groupby(['A', 'B'])[['C']].sum().rename(columns={'C': 'Total'})
x3.equals(x4) # True
Ultimately, to_frame(name)
makes the following transformation (and passing a list of columns to aggregate avoids the Series on the left altogether). Notice that unlike reset_index()
, it creates a single column dataframe.
Lastly, at least as of pandas 0.16.2, groupby.count
method (the specific groupby
method in the OP) returns an empty dataframe. However, calling count on each split via groupby.agg
recovers the aggregated counts. As mentioned in jezrael's answer, listing all aggregated columns also works but if there are many columns, this case may be more readable.
df1 = pd.DataFrame({
"Name": ["Alice", "Bob", "Mallory", "Mallory", "Bob" , "Mallory"],
"City": ["Seattle", "Seattle", "Portland", "Seattle", "Seattle", "Portland"]
})
df1.groupby(['Name', 'City']).count() # empty dataframe
df1.groupby(['Name', 'City']).agg(lambda x: x.count()) # OK
Empty DataFrame
Columns: []
Index: [(Alice, Seattle), (Bob, Seattle), (Mallory, Portland), (Mallory, Seattle)]