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
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

Slightly shorter is:

df = df.fillna('')

or just


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

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

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

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)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.