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I have a Pandas Dataframe with different dtypes for the different columns. E.g. df.dtypes returns the following.

Date                    datetime64[ns]
FundID                           int64
FundName                        object
CumPos                           int64
MTMPrice                       float64
PricingMechanism                object

Various of cheese columns have missing values in them. Doing a group operations on it with NaN values in place cause problems. To get rid of them with the .fillna() method is the obvious choice. Problem is the obvious clouse for strings are .fillna("") while .fillna(0) is the correct choice for ints and floats. Using either method on DataFrame throws exception. Any elegant solutions besides doing them individually (have about 30 columns)? I have a lot of code depending on the DataFrame and would prefer not to retype the columns as it is likely to break some other logic. Can do:

df.FundID.fillna(0)
df.FundName.fillna("")
etc
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2 Answers 2

up vote 1 down vote accepted

You can iterate through them and use an if statement!

for col in df:
    #get dtype for column
    dt = df[col].dtype 
    #check if it is a number
    if dt == int or dt == float:
        df[col].fillna(0)
    else:
        df[col].fillna("")

When you iterate through a pandas DataFrame, you will get the names of each of the columns, so to access those columns, you use df[col]. This way you don't need to do it manually and the script can just go through each column and check its dtype!

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you need inplace=True for this to work (or assign the column) –  Jeff Jun 18 '13 at 16:17
    
I tested this on my own DataFrame and it works fine... –  Ryan Saxe Jun 18 '13 at 16:22

You can grab the float64 and object columns using:

In [11]: float_cols = df.blocks['float64'].columns

In [12]: object_cols = df.blocks['object'].columns

and int columns won't have NaNs else they would be upcast to float.

Now you can apply the respective fillnas, one cheeky way:

In [13]: d1 = dict((col, '') for col in object_cols)

In [14]: d2 = dict((col, 0) for col in float_cols)

In [15]: df.fillna(value=dict(d1, **d2))
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Note: although this dict(d1, **d2) is a neat trick there is some debate whether it is a actually "valid" syntax :) –  Andy Hayden Jun 18 '13 at 17:31
    
see df.blocks is new pandas 0.11.0 method –  Joop Jun 19 '13 at 11:26
    
@Joop worth upgrading and not just for blocks! :) –  Andy Hayden Jun 19 '13 at 11:58

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