143

I have a Pandas Dataframe as shown below:

    1    2       3
 0  a  NaN    read
 1  b    l  unread
 2  c  NaN    read

I want to remove the NaN values with an empty string so that it looks like so:

    1    2       3
 0  a   ""    read
 1  b    l  unread
 2  c   ""    read
162
import numpy as np
df1 = df.replace(np.nan, '', regex=True)

This might help. It will replace all NaNs with an empty string.

  • 1
    what library does np.nan come from? I can't use it – CaffeineConnoisseur Aug 5 '16 at 22:33
  • 7
    @CaffeineConnoisseur: import numpy as np. – John Zwinck Aug 8 '16 at 21:56
  • 14
    @CaffeineConnoisseur - or just pd.np.nan if you don't want to import numpy as well. – elPastor Oct 12 '17 at 1:27
  • 1
    This also allows the Dict to be saved as a string in the row of a .csv and then subsequently read back into a DataFrame using the pd.DataFrame.from_dict(eval(_string_)) – yeliabsalohcin Aug 7 '18 at 11:02
  • Also useful to mention the ... inplace=True option. – smci May 24 at 23:02
240

Slightly shorter is:

df = df.fillna('')

or just

df.fillna('',inplace=True)

This will fill na's (e.g. NaN's) with ''.

If you want to fill a single column, you can use:

df[column1] = df.column1.fillna('')
  • 2
    @Mithril - df[['column1','column2']] = df[['column1','column2']].fillna('') – elPastor Oct 12 '17 at 1:29
72

If you are reading the dataframe from a file (say CSV or Excel) then use :

  1. df.read_csv(path , na_filter=False)
  2. df.read_excel(path , na_filter=False)

This will automatically consider the empty fields as empty strings ' '


If you already have the Dataframe

  • df = df.replace(np.nan, '', regex=True)
  • df = df.fillna('')
  • na_filter is not available on read_excel() pandas.pydata.org/pandas-docs/stable/… – Marjorie Roswell Jul 31 '17 at 2:39
  • i have used it in my application . It does exist but for some reason , they haven't given this argument in the docs . It works nice for me though without errors. – Natesh bhat Aug 1 '17 at 6:40
  • It works, i'm using it in parse xl.parse('sheet_name', na_filter=False) – Dmitrii Nov 22 '17 at 17:33
  • Good answer but I accidently downvoted and now can't upvote. – Peter.k Mar 18 at 14:27
2

Use a formatter, if you only want to format it so that it renders nicely when printed. Just use the df.to_string(... formatters to define custom string-formatting, without needlessly modifying your DataFrame or wasting memory:

df = pd.DataFrame({
    'A': ['a', 'b', 'c'],
    'B': [np.nan, 1, np.nan],
    'C': ['read', 'unread', 'read']})
print df.to_string(
    formatters={'B': lambda x: '' if pd.isnull(x) else '{:.0f}'.format(x)})

To get:

   A B       C
0  a      read
1  b 1  unread
2  c      read
  • This is the correct answer – shadowtalker Nov 15 '18 at 18:44
  • 4
    print df.fillna('') by itself (without doing df = df.fillna('')) doesn't modify the original either. Is there a speed or other advantage to using to_string? – fantabolous Nov 27 '18 at 3:10
  • Fair enough, df.fillna('') it is! – Steve Schulist Nov 28 '18 at 15:35
  • @shadowtalker: Not necessarily, it would only be the correct answer if the OP wanted to keep the df in one format (e.g. more computationally-efficient, or saving memory on unnecessary/empty/duplicate strings), yet render it visually in a more pleasing way. Without knowing more about the use-case, we can't say for sure. – smci May 24 at 23:05
0

If you are converting DataFrame to JSON, NaN will give error so best solution is in this use case is to replace NaN with None.
Here is how:

df1 = df.where((pd.notnull(df)), None)

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