I have an easy question, but I've been struggling with the answer. I have a DataFrame, from which I want to replace the 3 largest values with their 7 day rolling means, but in index order. So for a DataFrame like this one:

```
Sales
2
4
6
8
10
12
14
100
100
200
```

I want to replace first the two rows with `100`

in `Sales`

, and then the row with `200`

. I tried the following:

```
df.Sales.replace(df.Sales.nlargest(3).sort_index(),df.Sales.rolling(window=7).mean())
```

But it brings the following error:

AttributeError: 'numpy.float64' object has no attribute 'replace'

I know that this works:

```
df.Sales.replace(df.Sales.max(),df.Sales.rolling(window=7).mean())
```

And I could do that 3 times, but I have the problem that it would replace `200`

first, and then the others, so it isn't exactly what I need.

I guess something like this would work:

```
for i in df.Sales.nlargest(3).sort_index():
df.Sales.replace(i, df.Sales.rolling(window=7)
```

But I would rather avoid loops. Is it possible?

EDIT: expected output would be:

```
Sales
2
4
6
8
10
12
14
8
8.86
9.55
```

In other words, replacing the first 100 with the average from 2 to 14, which is 8. Then replacing the second 100 with the average between 4 through the second 8, which is 8.86, and so on.

`deporte.Cantidad_Vendida.replace(deporte.Cantidad_Vendida.nlargest(5),deporte.Cantidad_Vendida.rolling(window=7).mean())`

which if I'm not mistaken is exactly the same (nlargest equals 5 instead of 3,`df`

is`deporte`

and`Sales`

is`Cantidad_Vendida`

) – Juan C Jan 21 at 18:53