Without using `groupby`

how would I filter out data without `NaN`

?

Let say I have a matrix where customers will fill in `'N/A','n/a'`

or any of its variations and others leave it blank:

```
import pandas as pd
import numpy as np
df = pd.DataFrame({'movie': ['thg', 'thg', 'mol', 'mol', 'lob', 'lob'],
'rating': [3., 4., 5., np.nan, np.nan, np.nan],
'name': ['John', np.nan, 'N/A', 'Graham', np.nan, np.nan]})
nbs = df['name'].str.extract('^(N/A|NA|na|n/a)')
nms=df[(df['name'] != nbs) ]
```

output:

```
>>> nms
movie name rating
0 thg John 3
1 thg NaN 4
3 mol Graham NaN
4 lob NaN NaN
5 lob NaN NaN
```

How would I filter out `NaN`

values so I can get results to work with like this:

```
movie name rating
0 thg John 3
3 mol Graham NaN
```

I am guessing I need something like `~np.isnan`

but the tilda does not work with strings.