I'm using Python 3.6, trying to get the mean of some values in a subset of a row of a pandas dataframe (pandas version 0.23.4). I'm getting the values with .loc[] and then trying to get the mean of them with mean() from the python statistics package, like so:

```
import statistics as st
rows = ['row1','row2','row3']
somelist = []
for i in rows:
a = df.loc[i,"Q1":"Q7"]
somelist.append(st.mean(a))
```

I end up getting answers without any decimal places. If I manually write in the answers to items Q1:Q7 into a list, this is the result:

```
a = st.mean([2,3,4,4,2,6,5])
print(a)
Out: 3.7142857142857144
```

But if that sequence was what I pulled from the dataframe, I get a mean with no decimal places, like so:

```
a = st.mean(df.loc[i,"Q1":"Q7"])
Out: 3
```

Evidently it's because it thinks it's a numpy.int64 instead of a float. This happens even if I convert the slice from the dataframe into a list, like this:

```
a = st.mean(list(df.loc[i,"Q1":"Q7"]))
Out: 3
```

Weirdly, it does NOT happen if I use .mean() :

```
a = df.loc[i,"Q1":"Q7"].mean()
Out: 3.7142857142857144
```

I double-checked the st.stdev() method and it seems to work fine. What's going on? Why does it want to print out an integer for the mean automatically? Thanks!

`st.mean([np.int64(1), np.int64(2)])`

returns 1, not 1.5. – Warren Weckesser Nov 9 '18 at 1:40