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i'm having trouble assigning to a DataFrame column for a subset of rows, if there are NaNs in the DataFrame. i can't tell, is this a bug or am i misunderstanding something?

first off, if there are no NaNs, what i want appears to work :

>>> import pandas as pd
>>> d = pd.DataFrame({ 'one' : [1, 2, 3], 'two' : [1,2,3] })
>>> d
   one  two
0    1    1
1    2    2
2    3    3
>>> d.ix[d['one']>1, 'two'] = -d['two']
>>> d
   one  two
0    1    1
1    2   -2
2    3   -3

however, adding nuisance NaN rows causes non-intuitive results :

>>> nan = float('nan')
>>> d = pd.DataFrame({ 'one' : [1, 2, 3, nan, nan], 'two' : [1,2,3,4,5] })
>>> d
   one  two
0    1    1
1    2    2
2    3    3
3  NaN    4
4  NaN    5
>>> d.ix[d['one']>1, 'two'] = -d['two']
>>> d
   one  two
0    1    1
1    2   -2
2    3   -2
3  NaN    4
4  NaN    5

what is going on here? this is with Python 2.7.5 and pandas 0.11.

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1  
[Oh, I see -- it's the second -2.] –  DSM Jun 12 '13 at 2:02
    
This is fixed in dev (0.11.1) out very soon. –  Andy Hayden Jun 12 '13 at 2:06
    
@AndyHayden: I was just looking up the issue #. Do you have it at hand? –  DSM Jun 12 '13 at 2:07
    
@DSM not 100% tbh, but I think I've found it. –  Andy Hayden Jun 12 '13 at 2:28

1 Answer 1

up vote 2 down vote accepted

This is a bug in 0.11 and has since been fixed in dev (so will be in 0.11.1, out soon).

Thanks for reporting, this test case will be has been added to pandas testing suite.

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thanks, i thought i was going crazy! –  midfield Jun 12 '13 at 6:05

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