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I am adding data to a pandas Series via the Series#append method. Unfortunately, when nan is added to a bool Series, it is automatically converted to a float Series. Is there any way to avoid this conversion, or at least coerce it to object dtype, so as to preserve the distinction between bools and floats?

>>> Series([True])                            
0    True
dtype: bool
>>> Series([True]).append(Series([np.nan]))
0     1
0   NaN
dtype: float64
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you could do Series([True],dtype=object) when you create it, though generally mixing these types of things is not recommented, maybe use a DataFrame –  Jeff Aug 20 '13 at 23:52
    
Thanks, Jeff. How exactly could I use a DataFrame to avoid this issue? FWIW, this is a simplified minimal example, I actually am using multiple arrays wrapped as a DataFrame; the nans represent missing values, which I have to represent somehow. –  Dun Peal Aug 20 '13 at 23:56
    
see the docs here: pandas.pydata.org/pandas-docs/dev/dsintro.html; a frame will allow you to have different dtypes in different columns; nan represents missing values –  Jeff Aug 21 '13 at 0:00
    
Out of curiosity why do you need to preserve the distinction? –  Phillip Cloud Aug 21 '13 at 0:14
    
@PhillipCloud: it's important because we expose the data to users. For example, through an interface that lets them modify data based on type. So it's confusing when they get boolean results as 1.0s and 0.0s instead of True/False, and error-prone when they can change them to any float, while the only sensible values are True/False. –  Dun Peal Aug 21 '13 at 0:31

1 Answer 1

up vote 1 down vote accepted

As @Jeff said, the best way is going to be to append a Series with object dtype

Here's an example using Series

s = Series([True])
s.append(Series([nan], index=[1], dtype=object))

yielding

0    True
1     NaN
dtype: object

And one with a DataFrame:

df = DataFrame({'a': rand(10) > 0.5, 'b': randn(10)}, columns=list('ab'))
df2 = DataFrame({'a': Series([nan], dtype=object), 'b': [1.0]}, columns=df.columns, index=[len(df)])
df3 = df.append(df2)
print df3
print
print df3.dtypes

which gives

        a      b
0   False -0.865
1    True -0.186
2    True  0.078
3    True  0.995
4   False -1.420
5    True -0.340
6    True  0.042
7    True -0.627
8    True -0.217
9    True  1.226
10    NaN  1.000

a     object
b    float64
dtype: object

It's a bit clunky looking, but if you've already got the Series then you can do s.astype(object) to convert them to object dtype before appending.

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