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In [139]: pandas.__version__
Out[139]: '0.7.3'

I have two aligned series in a DataFrame which have several unmatched "NaN". I would like to print the intersection between them removing all "NaN's", but without loose alignment. That is, I want to remove the rows from both series whem I find a "NaN" in one of them. It sounds simple, but I not doing any operation between the series to dropna's afterwards and cannot dropna's from the series separately. I couldn't figure out the right df function to do this - several are not documented. Just an example, I want to take this:

10         NaN     -1.200
11         NaN     -1.324
12    0.000585        NaN
13    0.000573     -1.453
14         NaN     -2.006

and print this:

13    0.000573     -1.453
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This is a little hard to follow. Why isn't df.dropna() what you want? Have you tried that on the above DataFrame? –  Karmel May 23 '12 at 16:42
    
You mean dropna the df entirely??? It might have a better way. That's a very large dataset. –  fred May 23 '12 at 17:30
    
But isn't that exactly what you want to do? What are you describing if not that? You can also specify specific column subsets using the subset parameter: pandas.pydata.org/pandas-docs/stable/generated/… –  Karmel May 23 '12 at 19:26
    
newdf = df1.dropna()[['S', 'JEXP']] –  fred May 23 '12 at 20:09
    
Do you mean you want to drop rows where there are NaNs in either of the S or JEXP columns only? (I'm trying to help here; please be clear, or I can't!) Try newdf = df1.dropna(subset=['S', 'JEXP']) –  Karmel May 23 '12 at 20:17

1 Answer 1

As I wrote in my comments above, the best answer is:

newdf = df1.dropna()[['S', 'JEXP']]

that dropan's from a slice of the original df, keeping just the series of interest. Karmel has suggested:

newdf = df1.dropna(subset=['S', 'JEXP'])

which also works and dropan's based on the subset list, however, keeping all others series - it duplicates your dataset.

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