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I dont understand the how NaN's are being treated in pandas, would be happy to get some explanation, because the logic seems "broken" to me.

I have a csv file, which im loading using read csv. i have a "comments" column in that file, which is empty most of the times.

I've isolated that column, and tried varies ways to drop the empty values. first, when im writing:

marked_results.comments

I get:

0       VP
1       VP
2       VP
3     TEST
4      NaN
5      NaN
....

The rest of the column is NaN. so pandas loading empty entries as NaNs. great so far. Now im trying to drop those entries. Iv tried:

marked_results.comments.dropna()

and recieved the same column. nothing was dropped. confused, i'd tried to understand why nothing was dropped, so i tried:

marked_results.comments==NaN

and recieved a series of Falses. Nothing was NaNs... confusing. then i tried:

marked_results.comments==nan

And again, nothing but falses. I got a little pissed there, and thought to be smarter. so i did:

In [71]:
comments_values = marked_results.comments.unique()
comments_values 
Out[71]:
array(['VP', 'TEST', nan], dtype=object)

Ah, gotya! so now ive tried:

marked_results.comments==comments_values[2]

and surprisingly, still all the results are Falses!!! the only thing that worked was:

marked_results.comments.isnull()

which returnd the desired outcome. Can someone explaine what has happend here??

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1  
NaN != NaN - read Stephen Canon's accepted reply. –  fvu Jul 31 '13 at 12:09

2 Answers 2

up vote 8 down vote accepted

You should use isnull and notnull to test for NaN (these are more robust using pandas dtypes than numpy), see "values considered missing" in the docs.

Using the Series method dropna on a column won't affect the original dataframe, but do what you want:

In [11]: df
Out[11]:
  comments
0       VP
1       VP
2       VP
3     TEST
4      NaN
5      NaN

In [12]: df.comments.dropna()
Out[12]:
0      VP
1      VP
2      VP
3    TEST
Name: comments, dtype: object

The dropna DataFrame method has a subset argument (to drop rows which have NaNs in specific columns):

In [13]: df.dropna(subset=['comments'])
Out[13]:
  comments
0       VP
1       VP
2       VP
3     TEST

In [14]: df = df.dropna(subset=['comments'])
share|improve this answer

You need to test NaN with math.isnan() function (Or numpy.isnan). NaNs cannot be checked with the equality operator.

>>> a = float('NaN')
>>> a
nan
>>> a == 'NaN'
False
>>> isnan(a)
True
>>> a == float('NaN')
False

Help Function ->

isnan(...)
    isnan(x) -> bool

    Check if float x is not a number (NaN).
share|improve this answer
    
Thanks alot, that sorted out the confusion.. –  idoda Jul 31 '13 at 15:13

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