# Getting % Rate using Pandas Group By and .sum()

I'd like to get some % rates based on a `.groupby()` in `pandas`. My goal is to take an indicator column `Ind` and get the Rate of A (numerator) divided by the total (A+B) in that year

Example Data:

``````import pandas as pd
import numpy as np
df: pd.DataFrame = pd.DataFrame([['2011','A',1,2,3], ['2011','B',4,5,6],['2012','A',15,20,4],['2012','B',17,12,12]], columns=["Year","Ind","X", "Y", "Z"])
print(df)
Year Ind   X   Y   Z
0  2011   A   1   2   3
1  2011   B   4   5   6
2  2012   A  15  20   4
3  2012   B  17  12  12
``````

Example for year 2011: `XRate` would be summing up the A indicators for X (which would be 1) and dividing byt the total (A+B) which would be 5 thus I would receive an Xrate of 0.20.

I would like to do this for all columns X, Y, Z to get the rates. I've tried doing lambda applys but can't quite get the desired results.

Desired Results:

``````   Year XRate YRate  ZRate
0  2011  0.20  0.29   0.33
1  2012  0.47  0.63   0.25
``````

You can `group` the dataframe on `Year` and aggregate using sum:

``````s1 = df.groupby('Year').sum()
s2 = df.query("Ind == 'A'").groupby('Year').sum()

``````      XRate  YRate  ZRate
• Very nice. Is there an advantage in using query over something like `df[df.Ind.eq('A')]`? Jan 8, 2021 at 16:18
• Thanks @zabop I think there is no advantage here, you can use `df[df.Ind.eq('A')]` instead. Jan 8, 2021 at 16:23