I have an initial column with no missing data (A) but with repeated values. How do I fill the next column (B) with missing data so that it is filled and the column on the left always has the same value on the right? I would also like any other columns to remain the same (C)

For example, this is what I have

```
A B C
1 1 20 4
2 2 NaN 8
3 3 NaN 2
4 2 30 9
5 3 40 1
6 1 NaN 3
```

And this is what I want

```
A B C
1 1 20 4
2 2 30* 8
3 3 40* 2
4 2 30 9
5 3 40 1
6 1 20* 3
```

Asterisk on filled values.

This needs to be scalable with a very large dataframe.

Additionally, if I had a value on the left column that has more than one value on the right side on separate observations, how would I fill with the mean?

`df['B'] = df['B'].fillna(df.groupby('A')['B'].transform('mean'))`

A similar question was asked earlier, I provided an explanation of how to fill missing numbers with the mean of a group here: stackoverflow.com/questions/60192232/…