# Sum columns values with common values in another column

I have this dataframe:

I want to sum all the distances that have been done each day, giving the next dataframe:

``````distances = [
(32.2,1),
(40.2,1),
(22.5,2),
(37.6,2),
(5.6,2),
(5.8,3),
(9.7,3),
(10.2,3),
(12.3,4),
(15.2,4),
]

expected_result = [
(72.5,1),
(65.5,2),
(25.7,3),
(27.5,4),
]

distances = pd.DataFrame(distances, columns = ['distance','day'])
expected_result = pd.DataFrame(expected_result, columns = ['distance','day'])
``````

I'm new to pandas so I don't know exactly how to do it.

You can group the data by "day" then sum it

``````distances = distances.groupby('day').sum()
``````

If you want to sort the data according to distance you can use this

``````distances = distances.sort_values(by=['distance'], ascending=False)
``````

use groupby

``````data="""distance    day
32.2    1
40.2    1
22.5    2
37.6    2
5.6 2
5.8 3
9.7 3
10.2    3
12.3    4
15.2    4
"""
print("Sum by day")

import pandas as pd

``````distance