I am importing study data into a Pandas data frame using read_csv.

My subject codes are 6 numbers coding, among others, the day of birth. For some of my subjects this results in a code with a leading zero (e.g. "010816").

When I import into Pandas, the leading zero is stripped of and the column is formatted as int64.

Is there a way to import this column unchanged maybe as a string?

I tried using a custom converter for the column, but it does not work - it seems as if the custom conversion takes place before Pandas converts to int.


As indicated in this question/answer by Lev Landau, there could be a simple solution to use converters option for a certain column in read_csv function.

converters={'column_name': lambda x: str(x)}

You can refer to more options of read_csv funtion in pandas.io.parsers.read_csv documentation.

Lets say I have csv file projects.csv like below:

Some Project,000245
Another Project,000478

As for example below code is triming leading zeros:

import csv
from pandas import read_csv

dataframe = read_csv('projects.csv')
print dataframe


me@ubuntu:~$ python test_dataframe.py 
      project_name  project_id
0     Some Project         245
1  Another Project         478

Solution code example:

import csv
from pandas import read_csv

dataframe = read_csv('projects.csv', converters={'project_id': lambda x: str(x)})
print dataframe

Required result:

me@ubuntu:~$ python test_dataframe.py 
      project_name project_id
0     Some Project     000245
1  Another Project     000478

Update as it helps others:

To have all columns as str, one can do this (from the comment):

pd.read_csv('sample.csv', dtype = str)

To have most or selective columns as str, one can do this:

# lst of column names which needs to be string
lst_str_cols = ['prefix', 'serial']
# use dictionary comprehension to make dict of dtypes
dict_dtypes = {x : 'str'  for x in lst_str_cols}
# use dict on dtypes
pd.read_csv('sample.csv', dtype=dict_dtypes)
  • 2
    How to give for multiple columns ?? – venkat Aug 13 '18 at 5:57
  • for multiple columns: pls see updated info in above answer. thanks. – ihightower Dec 3 '20 at 6:52

here is a shorter, robust and fully working solution:

simply define a mapping (dictionary) between variable names and desired data type:

dtype_dic= {'subject_id': str, 
            'subject_number' : 'float'}

use that mapping with pd.read_csv():

df = pd.read_csv(yourdata, dtype = dtype_dic)

et voila!

  • 1
    you can also include many other datatypes, float and others. I believe this is the most pandasque solution – ℕʘʘḆḽḘ Nov 4 '16 at 18:23
  • 1
    query: in dtype_dic json, why is str without quotes but float in quotes? – Nikhil VJ Apr 6 '18 at 2:46
  • I had to loop through different CSVs with different columns. This function took all the column mappings and didn't error out when a column wasn't there in the table. So I was able to define all the columns (to be read as string) in all the different tables in just one dtype_dic and use it for all the csv's. Thanks! – Nikhil VJ Apr 6 '18 at 3:00
  • I believe this is the best solution as well :) – ℕʘʘḆḽḘ Apr 17 '18 at 20:28
  • This did not work for me (python3.6, pandas 0.22.0); I still lost my leading zeros. – SummerEla May 8 '18 at 23:15

If you have a lot of columns and you don't know which ones contain leading zeros that might be missed, or you might just need to automate your code. You can do the following:

df = pd.read_csv("your_file.csv", nrows=1) # Just take the first row to extract the columns' names
col_str_dic = {column:str for column in list(df)}
df = pd.read_csv("your_file.csv", dtype=col_str_dic) # Now you can read the compete file

You could also do:

df = pd.read_csv("your_file.csv", dtype=str)

By doing this you will have all your columns as strings and you won't lose any leading zeros.


You Can do This , Works On all Versions of Pandas

pd.read_csv('filename.csv', dtype={'zero_column_name': object})


I don't think you can specify a column type the way you want (if there haven't been changes reciently and if the 6 digit number is not a date that you can convert to datetime). You could try using np.genfromtxt() and create the DataFrame from there.

EDIT: Take a look at Wes Mckinney's blog, there might be something for you. It seems to be that there is a new parser from pandas 0.10 coming in November.

  • the features in that issue are done on the c-parser branch now and should be coming in 0.10. I just made a quick for issue #2184 and will be included in 0.9.1 coming up real soon. But yes, using dtypes should be the preferred behavior here so just keep a lookout for 0.10 in like a month or so. – Chang She Nov 6 '12 at 17:13
  • you should be able to make it work now if you upgrade to the latest on github master (i.e., using a converter) – Chang She Nov 6 '12 at 17:14
  • @ChangShe thanks, with the latest github version my converter work indeed! Looking forward to 0.10 for a cleaner solution though... – user1802883 Nov 7 '12 at 10:30
  • Wes Mckinney's blog page is 404. – MERose Jul 4 '16 at 12:14

You can use converters to convert number to fixed width if you know the width.

For example, if the width is 5, then

data = pd.read_csv('text.csv', converters={'column1': lambda x: f"{x:05}"})

This will do the trick. It works for pandas==0.23.0 and also read_excel.

Python3.6 or higher required.

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