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I'm using the pandas library to read in some CSV data. In my data, certain columns contain strings. The string "nan" is a possible value, as is an empty string. I managed to get pandas to read "nan" as a string, but I can't figure out how to get it not to read an empty value as NaN. Here's sample data and output

One,Two,Three
a,1,one
b,2,two
,3,three
d,4,nan
e,5,five
nan,6,
g,7,seven

>>> pandas.read_csv('test.csv', na_values={'One': [], "Three": []})
    One  Two  Three
0    a    1    one
1    b    2    two
2  NaN    3  three
3    d    4    nan
4    e    5   five
5  nan    6    NaN
6    g    7  seven

It correctly reads "nan" as the string "nan', but still reads the empty cells as NaN. I tried passing in str in the converters argument to read_csv (with converters={'One': str})), but it still reads the empty cells as NaN.

I realize I can fill the values after reading, with fillna, but is there really no way to tell pandas that an empty cell in a particular CSV column should be read as an empty string instead of NaN?

1
  • 1
    Note the simpler, answer using the more recent option keep_default_na below.
    – nealmcb
    May 24, 2020 at 17:08

5 Answers 5

166

I was still confused after reading the other answers and comments. But the answer now seems simpler, so here you go.

Since Pandas version 0.9 (from 2012), you can read your csv with empty cells interpreted as empty strings by simply setting keep_default_na=False:

pd.read_csv('test.csv', keep_default_na=False)

This issue is more clearly explained in

That was fixed on on Aug 19, 2012 for Pandas version 0.9 in

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  • 12
    This is clearly the best answer, it should be designated as first solution. Thanks @nealmcb
    – dzof31
    Jul 26, 2019 at 12:32
  • 1
    I wish this was the default, the number of times I've had to google for this answer.... Aug 16, 2021 at 23:24
67

I added a ticket to add an option of some sort here:

https://github.com/pydata/pandas/issues/1450

In the meantime, result.fillna('') should do what you want

EDIT: in the development version (to be 0.8.0 final) if you specify an empty list of na_values, empty strings will stay empty strings in the result

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  • 14
    Documentation for DataFrame.fillna. Try result.fillna('', inplace=True). Otherwise it creates a copy of the dataframe. Sep 5, 2014 at 22:48
  • 1
    sorry to resurrect such an old answer, but did this ever happen? As far as I can tell from this GitHub PR it was closed without ever being merged, and I'm not seeing the requested behavior in pandas version 0.14.x
    – drammock
    Sep 10, 2015 at 20:52
  • 11
    Documentation for read_csv now offers both na_values (list or dict indexed by columns) and keep_default_na (bool). The keep_default_na value indicates whether pandas' default NA values should be replaced or appended to. The OP's code doesn't work currently just because it's missing this flag. For this example, you could use pandas.read_csv('test.csv',na_values=['nan'], keep_default_na=False). Sep 30, 2015 at 20:17
  • @delgadom Thanks for leading me to keep_default_na. But note that he doesn't want 'nan' to be treated as a default either. I've added a more complete explanation as a new answer.
    – nealmcb
    May 7, 2017 at 14:55
  • 2
    ran into this again. the fix is easy (the best answer is as below to put keep_default_na=False) but pandas default behaviour on this is IMO bad. if for some reason pandas read_csv infers a column is not numeric it should not automatically change empty strings to NaN. Aug 27, 2020 at 8:38
13

We have a simple argument in Pandas read_csv() for this:

Use:

df = pd.read_csv('test.csv', na_filter= False)
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  • 2
    It looks like the OP does want to use na_values to recognize "nan", but turning na_filter off entirely would defeat that. Thus my answer with keep_default_na=False.
    – nealmcb
    Oct 18, 2019 at 14:54
  • Be careful, the na_filter=False can change your columns type to object Sep 7, 2021 at 21:41
7

What pandas defines by default as missing value while read_csv() can be found here.

import pandas
default_missing = pandas._libs.parsers.STR_NA_VALUES
print(default_missing)

The output

{'', '<NA>', 'nan', '1.#QNAN', 'NA', 'null', 'n/a', '-nan', '1.#IND', '#N/A N/A', 'N/A', 'NULL', 'NaN', '-1.#IND', '-1.#QNAN', '#NA', '#N/A', '-NaN'}

With that you can do an opt-out.

import pandas
default_missing = pandas._libs.parsers.STR_NA_VALUES
default_missing = default_missing.remove('')
default_missing = default_missing.remove('na')

with open('test.csv', 'r') as csv_file:
    pandas.read_csv(csv_file, na_values=default_missing)
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  • 1
    A minor typo error, replace a_values by na_values Aug 25, 2021 at 18:18
1

If you want to keep the empty strings for just one column, define str as the column converter (dtypes won't work):

pd.read_csv('test.csv', converters={'column_name': str})

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