Another possible way to achieve the desired output would be to use Named Aggregation. Which will allow you to specify the name and respective aggregation function for the desired output columns.
Named aggregation
(New in version 0.25.0.)
To support column-specific aggregation with control over the output
column names, pandas accepts the special syntax in GroupBy.agg()
,
known as “named aggregation”, where:
The keywords are the output column names
The values are tuples whose first element is the column to select and
the second element is the aggregation to apply to that column. Pandas
provides the pandas.NamedAgg
named tuple with the fields ['column','aggfunc']
to make it clearer what the arguments are. As usual, the
aggregation can be a callable or a string alias.
So to get the desired output - you could try something like...
import pandas as pd
# Setup
df = pd.DataFrame([
{
"item":"truck",
"color":"red"
},
{
"item":"truck",
"color":"red"
},
{
"item":"car",
"color":"black"
},
{
"item":"truck",
"color":"blue"
},
{
"item":"car",
"color":"black"
}
])
df_grouped = df.groupby(["item", "color"]).agg(
count_col=pd.NamedAgg(column="color", aggfunc="count")
)
print(df_grouped)
Which produces the following output:
count_col
item color
car black 2
truck blue 1
red 2