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Is there any method to replace values with None in Pandas in Python?

You can use df.replace('pre', 'post') and can replace a value with another, but this can't be done if you want to replace with None value, which if you try, you get a strange result.

So here's an example:

df = DataFrame(['-',3,2,5,1,-5,-1,'-',9])
df.replace('-', 0)

which returns a successful result.

But,

df.replace('-', None)

which returns a following result:

0
0   - // this isn't replaced
1   3
2   2
3   5
4   1
5  -5
6  -1
7  -1 // this is changed to `-1`...
8   9

Why does such a strange result be returned?

Since I want to pour this data frame into MySQL database, I can't put NaN values into any element in my data frame and instead want to put None. Surely, you can first change '-' to NaN and then convert NaN to None, but I want to know why the dataframe acts in such a terrible way.

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Does the write_frame not parse NaNs to nones? –  Andy Hayden Jun 13 '13 at 21:36
    
Yup. You encounter InternalError: (1054, u"Unknown column 'nan' in 'field list'") error. I don't know about any solutions on it other than converting NaN to None before executing write_frame method. –  Gardecolo Jun 13 '13 at 21:40
    
What version of pandas are you using? –  Andy Hayden Jun 13 '13 at 21:41
    
pandas 0.12.0 dev on Python 2.7 and OS X 10.8. Python is a pre-installed version on OS X and I installed pandas by using SciPy Superpack script, for your information. –  Gardecolo Jun 13 '13 at 21:46
    
Scipy super pack gives out dev? Ok, well I definitely think you should raise this as an issue on github, shouldn't be too hard to fix. –  Andy Hayden Jun 13 '13 at 21:49

2 Answers 2

up vote 12 down vote accepted

Actually in later versions of pandas this will give a TypeError:

df.replace('-', None)
TypeError: If "to_replace" and "value" are both None then regex must be a mapping

You can do it by passing either a list or a dictionary:

In [11]: df.replace('-', df.replace(['-'], [None]) # or .replace('-', {0: None})
Out[11]:
      0
0  None
1     3
2     2
3     5
4     1
5    -5
6    -1
7  None
8     9

But I recommend using NaNs rather than None:

In [12]: df.replace('-', np.nan)
Out[12]:
     0
0  NaN
1    3
2    2
3    5
4    1
5   -5
6   -1
7  NaN
8    9
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2  
Or simply a list, e.g. df.replace(['-'], [None]), or df.replace({'-': None}), I think. The use of None as a sentinel precludes using it as a value too.. –  DSM Jun 13 '13 at 21:30
    
@DSM oooh much better, yoinked! :) –  Andy Hayden Jun 13 '13 at 21:32
    
That's awesome. I can't come up with assigning list as arguments. Thank you! –  Gardecolo Jun 13 '13 at 21:36
    
@user2360798 replace is actually a very feature-rich (read complicated) function, the (dev)docstring is really good though. –  Andy Hayden Jun 13 '13 at 21:40

where is probably what you're looking for. So

data=data.where(data=='-', None) 

From the panda docs:

where [returns] an object of same shape as self and whose corresponding entries are from self where cond is True and otherwise are from other).

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