I have a DataFrame, e.g.

```
df = pd.DataFrame([1,2,3,4,5,6,7,8,9])
```

Now I want to apply a rolling mean, e.g.

```
df.rolling(window=3, win_type=None).mean()
```

which gives me a result with evenly weighted elements.
Now I want to change the window function. I know, that this is possible by passing a string (e.g. `'hann'`

) to the `win_type`

parameter.

```
df.rolling(window=3, win_type='hann').mean()
```

Now the interesting point for me would be to apply a window function, that uses an exponentially decaying weighting, giving a high weight to the value "on the right" and lower weights to values "further to the left". This should be possible by using `scipy.signal.windows.exponential`

and adjusting the parameters. However, I am struggling with passing those parameters as `win_type`

only takes strings.

When I try `win_type='exponential'`

I get `ValueError: exponential window requires tau`

.

Can someone tell me how to pass parameters such as `tau`

to `win_type`

or even create a window function oneself?