So I have a Pandas DataFrame with panel data containing interaction between buyers and sellers on a monthly basis:

```
Buyer Seller Month Amount Amounttotal
0 Buyer1 Seller1 2009-07-31 00:00:00 10 255
1 Buyer1 Seller2 2009-07-31 00:00:00 15 255
2 Buyer1 Seller3 2009-07-31 00:00:00 120 255
3 Buyer1 Seller4 2009-07-31 00:00:00 110 255
4 Buyer1 Seller1 2009-08-31 00:00:00 5 427
5 Buyer1 Seller2 2009-08-31 00:00:00 12 427
6 Buyer1 Seller3 2009-08-31 00:00:00 20 427
7 Buyer1 Seller4 2009-08-31 00:00:00 180 427
8 Buyer1 Seller5 2009-08-31 00:00:00 210 427
```

I have data for multiple sellers , e.g. Buyer1, Buyer2, Buyer3 etc. Amounttotal is the amount the buyer1 has bought for in total during the month. I am looking to calculate, for each buyer in each month, it's 3-firm HHI, meaning the sum of the squared value of the percentage of total monthly volume from the buyers’ three largest interactions. In the example above the 3-firm HHI would be 0,41 for 2009-07 and 0,42 for 2009-08. It seems to me that the calculation will have to involve groupby, however I am trouble figuring out how to find the largest, second largest and third largest value in each groupby element. Help is much appreciated!