I have two variables

```
x = [1.883830, 7.692308,8.791209, 9.262166]
y = [5.337520, 4.866562, 2.825746, 6.122449]
```

And I want to fit a Gaussian distribution using the seaborn wrapped for matplotlib. It seems like the `sns.distplot`

function is the best way to do this, but I can't figure out how to fill in the area under the curve. Help?

```
fig, ax = plt.subplots(1)
sns.distplot(x,kde_kws={"shade":True}, kde=False, fit=stats.gamma, hist=None, color="red", label="2016", fit_kws={'color':'red'});
sns.distplot(y,kde_kws={"shade":True}, kde=False, fit=stats.gamma, hist=None, color="blue", label="2017", fit_kws={'color':'blue'})
```

I think the "shade" argument could be part of the `fit_kws`

argument but I haven't gotten this to work.

Another option would be to use `ax.fill()`

?