Just curious on the behavior of 'where' and why you would use it over 'loc'.

If I create a dataframe:

```
df = pd.DataFrame({'ID':[1,2,3,4,5,6,7,8,9,10],
'Run Distance':[234,35,77,787,243,5435,775,123,355,123],
'Goals':[12,23,56,7,8,0,4,2,1,34],
'Gender':['m','m','m','f','f','m','f','m','f','m']})
```

And then apply the 'where' function:

```
df2 = df.where(df['Goals']>10)
```

I get the following which filters out the results where Goals > 10, but leaves everything else as NaN:

```
Gender Goals ID Run Distance
0 m 12.0 1.0 234.0
1 m 23.0 2.0 35.0
2 m 56.0 3.0 77.0
3 NaN NaN NaN NaN
4 NaN NaN NaN NaN
5 NaN NaN NaN NaN
6 NaN NaN NaN NaN
7 NaN NaN NaN NaN
8 NaN NaN NaN NaN
9 m 34.0 10.0 123.0
```

If however I use the 'loc' function:

```
df2 = df.loc[df['Goals']>10]
```

It returns the dataframe subsetted without the NaN values:

```
Gender Goals ID Run Distance
0 m 12 1 234
1 m 23 2 35
2 m 56 3 77
9 m 34 10 123
```

So essentially I am curious why you would use 'where' over 'loc/iloc' and why it returns NaN values?

`where`

rarely outperforms (or is more readable versus) the more popular NumPy`np.where`

, so the former is often irrelevant. – jpp Feb 27 at 15:10