I have a pandas dataFrame of mixed types, some are strings and some are numbers. I would like to replace the NAN values in string columns by '.', and the NAN values in float columns by 0.

Consider this small fictitious example:

df = pd.DataFrame({'Name':['Jack','Sue',pd.np.nan,'Bob','Alice','John'],
    'A': [1, 2.1, pd.np.nan, 4.7, 5.6, 6.8],
    'B': [.25, pd.np.nan, pd.np.nan, 4, 12.2, 14.4],

Now, I can do it in 3 lines:


Since this is a small dataframe, 3 lines is probably ok. In my real example (which I cannot share here due to data confidentiality reasons), I have many more string columns and numeric columns. SO I end up writing many lines just for fillna. Is there a concise way of doing this?

  • In your real example, for the string columns are the NaN or the string 'NaN'?
    – EdChum
    Jan 21, 2016 at 8:51
  • NaN, not the string 'NaN'
    – ozzy
    Jan 21, 2016 at 18:14

9 Answers 9


Came across this page while looking for an answer to this problem, but didn't like the existing answers. I ended up finding something better in the DataFrame.fillna documentation, and figured I'd contribute for anyone else that happens upon this.

If you have multiple columns, but only want to replace the NaN in a subset of them, you can use:

df.fillna({'Name':'.', 'City':'.'}, inplace=True)

This also allows you to specify different replacements for each column. And if you want to go ahead and fill all remaining NaN values, you can just throw another fillna on the end:

df.fillna({'Name':'.', 'City':'.'}, inplace=True).fillna(0, inplace=True)

Edit (22 Apr 2021)

Functionality (presumably / apparently) changed since original post, and you can no longer chain 2 inplace fillna() operations. You can still chain, but now must assign that chain to the df instead of modifying in place, e.g. like so:

df = df.fillna({'Name':'.', 'City':'.'}).fillna(0)
  • @Make42 Not a coding error; the intention was to replace the values in-place in the dataframe. Apr 21, 2021 at 17:22
  • 1
    Please check your answer: If you use inplace, then the return value is None. Thus you will will fill 'Name' and 'City' with '.' in df. After that you return None and get an error trying to use your second fillna on the None value. If you now only remove the first ìnplace=True you do not get THAT error. However, now you create a data frame in memory (with no Python symbol pointing to it), which nan-values are replaced by 0. The second fillna return - again - None, which we cannot use. Now you do have the desired data frame somewhere in memory, but you cannot reference it.
    – Make42
    Apr 21, 2021 at 19:05
  • Ugh...it worked as written when it was written, but I guess they've gone and updated something that broke it. Apr 22, 2021 at 20:25
  • To be honest, I have been using pandas for longer than 2018 and I cannot remember that this was different at any point than it is now, but I could be mistaken.
    – Make42
    Apr 23, 2021 at 16:39
  • inplace is the scourge anyway: github.com/pandas-dev/pandas/issues/16529. Also, afaik inplace has always returned None, that's kind of the point. You either use inplace, or you chain, but not both together. To use inplace in this scenario you'd need to break it into 2 lines. May 17, 2023 at 4:53

You could use apply for your columns with checking dtype whether it's numeric or not by checking dtype.kind:

res = df.apply(lambda x: x.fillna(0) if x.dtype.kind in 'biufc' else x.fillna('.'))

     A      B     City   Name
0  1.0   0.25  Seattle   Jack
1  2.1   0.00       SF    Sue
2  0.0   0.00       LA      .
3  4.7   4.00       OC    Bob
4  5.6  12.20        .  Alice
5  6.8  14.40        .   John
  • 4
    Very elegant! Can you confirm that 'biufc' is for boolean, integer, unicode, float & complex data types?
    – Lenwood
    May 17, 2018 at 21:12
  • 1
    @Lenwood yes, you could follow the link for dtype.kind to check that. May 18, 2018 at 5:15
  • This is great. What if I wanted to fill in the mean of the column instead of "0"?
    – Peter
    May 27, 2020 at 20:00
  • 1
    @Peter I guess you could replace x.fillna(0) -> x.fillna(x.mean()) May 28, 2020 at 10:32

You can either list the string columns by hand or glean them from df.dtypes. Once you have the list of string/object columns, you can call fillna on all those columns at once.

# str_cols = ['Name','City']
str_cols = df.columns[df.dtypes==object]
df[str_cols] = df[str_cols].fillna('.')
df = df.fillna(0)

define a function:

def myfillna(series):
    if series.dtype is pd.np.dtype(float):
        return series.fillna(0)
    elif series.dtype is pd.np.dtype(object):
        return series.fillna('.')
        return series

you can add other elif statements if you want to fill a column of a different dtype in some other way. Now apply this function over all columns of the dataframe

df = df.apply(myfillna)

this is the same as 'inplace'

  • This makes sense to write as a function. But wouldn't we need to write it as for col in df.columns: df[col]=df.apply(myfillna) ? The function is returning a series, and we replace the whole dataframe with this.
    – ozzy
    Jan 21, 2016 at 18:31
  • no because by default apply has the parameter axis=0 which means to apply the function over each column and then returns the result as a dataframe with the new columns. Jan 21, 2016 at 18:36
  • so actually df.apply(myfillna) is doing what you suggest behind the scenes. Jan 21, 2016 at 18:40
  • Ok, it makes sense.. And I have tried it, and it works! Thanks!
    – ozzy
    Jan 21, 2016 at 18:48

There is a simpler way, that can be done in one line:


Not an awesome improvement but if you multiply it by 100, writting only the column names + ':0' is way faster than copying and pasting everything 100 times.


The most concise and readable way to accomplish this, especially with many columns is to use df.select_dtypes.columns. (df.select_dtypes, df.columns)

df.select_dtypes returns a new df containing only the columns that match the dtype you need.

df.columns returns a list of the column names in your df.

Full code:

float_column_names = df.select_dtypes(float).columns
df[float_column_names] = df[float_column_names].fillna(0)

string_column_names = df.select_dtypes(object).columns
df[string_column_names] df[string_column_names].fillna('.')

If you want to replace a list of columns ("lst") with the same value ("v")

def nan_to_zero(df, lst, v):
    d = {x:v for x in lst}
    df.fillna(d, inplace=True)
    return df

If you don't want to specify individual per-column replacement values, you can do it this way:

df[['Name', 'City']].fillna('.',inplace=True)

If you don't like inplace (like me) you can do it like this:

columns = ['Name', 'City']
df[columns] = df.copy()[columns].fillna('.')

The .copy() is added to avoid the SettingWithCopyWarning, which is designed to warn you that the original values of a dataframe is overwritten, which is what we want.

If you don't like that syntax, you can see this question to see other ways of dealing with this: How to deal with SettingWithCopyWarning in Pandas

  • "A value is trying to be set on a copy of a slice from a DataFrame"
    – Ben
    Oct 6, 2022 at 18:31
  • @Ben, updated the answer with a way to avoid the warning
    – Devyzr
    Nov 1, 2022 at 19:30

Much easy way is :dt.replace(pd.np.nan, "NA"). In case you want other replacement, you should use the next:dt.replace("pattern", "replaced by (new pattern)")

  • 1
    This is just a different way of writing the standard df.fillna('NA', inplace=True) so you're not really gaining anything, plus it's a less standard way of filling NaN values in pandas. Nov 24, 2020 at 0:54
  • No, its more general than what you think. this "dt.replace("pattern", "replaced by (new pattern)")"is given the programmer more choice to use any pattern to replace.
    – A. chahid
    Nov 24, 2020 at 21:12
  • This doesn't answer the question of replacing multiple specific columns at once and advises going against convention for a very standard practice in pandas.
    – Ben
    Oct 6, 2022 at 18:34

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