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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.

share|improve this question

1 Answer 1

up vote 2 down vote accepted

Just drop them:

nms.dropna(thresh=2)

this will drop all rows where there are at least two NaN

then you could then drop where name is NaN:

In [87]:

nms
Out[87]:
  movie    name  rating
0   thg    John       3
1   thg     NaN       4
3   mol  Graham     NaN
4   lob     NaN     NaN
5   lob     NaN     NaN

[5 rows x 3 columns]
In [89]:

nms = nms.dropna(thresh=2)
In [90]:

nms[nms.name.notnull()]
Out[90]:
  movie    name  rating
0   thg    John       3
3   mol  Graham     NaN

[2 rows x 3 columns]

EDIT

Actually looking at what you originally want you can do just this without the dropna call:

nms[nms.name.notnull()]
share|improve this answer
    
you used a threshold of 2 what if I don't know the threshold? –  ccsv Mar 21 at 9:23
    
@ccsv you mean what happens without threshold param or in some dynamic situation? Without setting threshold then it will drop any rows containing NaN which would remove the Graham row which is not what you want, you would need to define the criteria for dropping rows if you were to use dropna –  EdChum Mar 21 at 9:25
    
@ccsv actually looking at what you want you can do this simply by just calling nms[nms.name.notnull()] if you want where all names are non NaN –  EdChum Mar 21 at 9:38
    
Ok thanks, I was wondering what to use for quite a while before asking. –  ccsv Mar 21 at 9:52

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