I was curious at how pandas dataframe handles calculating the upper and lower whiskers, with outliers. Normally it's `1.5IQR-Q1, 1.5IQR+Q3`

. However, the problem I can't understand, or maybe I'm wrong on how the whiskers are calculated. It shows the same problems in the boxplot section of https://pandas.pydata.org/pandas-docs/stable/visualization.html
Here's a sample of code I've randomly selected:

```
ray1=[0.217766,0.691315,0.289239,0.239135,0.161341,0.364297,0.373284,0.323216]
df = pd.DataFrame(ray1, dtype = float)
```

If I used the `df.describe()`

it gives me the stats of that array.

```
count 8.000000
mean 0.332449
std 0.162374
min 0.161341
25% 0.233793
50% 0.306227
75% 0.366544
max 0.691315
```

But according to the upper whisker, lower whisker from the normal `1.5IQR-Q1, 1.5IQR+Q3`

, it should be around `.565`

and `.035`

. If I plot this with `df.boxplot()`

it shows the upper whisker as `0.373`

and the lower whisker as `.161`

. I've tried other variations (`2.698σ`

) and the medcouple and those don't equal either.

So how is it getting those values, when outliers are present?

`0.691315`

value is an outlier. Do you consider that part of your distribution?