I'm starting to tear my hair out with this - so I hope someone can help. I have a pandas DataFrame that was created from an Excel spreadsheet using openpyxl. The resulting DataFrame looks like:

print image_name_data
     id           image_name
0  1001  1001_mar2014_report
1  1002  1002_mar2014_report
2  1003  1003_mar2014_report

[3 rows x 2 columns]

…with the following datatypes:

print image_name_data.dtypes
id            float64
image_name     object
dtype: object

The issue is that the numbers in the id column are, in fact, identification numbers and I need to treat them as strings. I've tried converting the id column to strings using:

image_name_data['id'] = image_name_data['id'].astype('str')

This seems a bit ugly but it does produce a variable of type 'object' rather than 'float64':

print image_name_data.dyptes
id            object
image_name    object
dtype: object

However, the strings that are created have a decimal point, as shown:

print image_name_data
       id           image_name
0  1001.0  1001_mar2014_report
1  1002.0  1002_mar2014_report
2  1003.0  1003_mar2014_report

[3 rows x 2 columns]

How can I convert a float64 column in a pandas DataFrame to a string with a given format (in this case, for example, '%10.0f')?


I'm unable to reproduce your problem but have you tried converting it to an integer first?

image_name_data['id'] = image_name_data['id'].astype(int).astype('str')

Then, regarding your more general question you could use map (as in this answer). In your case:

image_name_data['id'] = image_name_data['id'].map('{:.0f}'.format)
  • Ta-dah! Both suggestions seem to work perfectly. Thanks very much! I'm afraid I don't have a high enough reputation to rate this answer - but would if I could. – user1718097 Mar 9 '14 at 0:45
  • @user1718097 Glad to hear it. I'm also new to SO but I think that you can mark it as the "best answer" or something. – exp1orer Mar 9 '14 at 1:01
  • Hope I've managed to do that now... – user1718097 Mar 9 '14 at 2:43
  • 1
    Converting to int first fails if there are any NaN/null values (error message is "*** ValueError: Cannot convert NA to integer"). I have data that is either int or missing, but astype('str') happily adds '.0' to every number... not sure how to prevent this. – John Prior Nov 22 '14 at 0:24

If you could reload this, you might be able to use dtypes argument.

pd.read_csv(..., dtype={'COL_NAME':'str'})

I'm putting this in a new answer because no linebreaks / codeblocks in comments. I assume you want those nans to turn into a blank string? I couldn't find a nice way to do this, only do the ugly method:

s = pd.Series([1001.,1002.,None])
a = s.loc[s.isnull()].fillna('')
b = s.loc[s.notnull()].astype(int).astype(str)
result = pd.concat([a,b])

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.