I read a large Excel file into pandas using .read_excel, and the file has date columns. When read into pandas, the dates default to a timestamp. Since the file is large, I would like to read the dates as a string.

If that is not possible, then I would at least like to export the date back to Excel in the same format as it is in the original file (e.g. "8/18/2009").

My two questions are:

  1. Can I avoid converting the Excel date into a timestamp in pandas?
  2. If not possible, how can I write back the date in the original format efficiently?
  • 1
    "When read into pandas the date defaults to a timestamp or, at least, when I export it back to Excel." Which of the two is it? – IanS Feb 23 '16 at 13:46
  • According to the comments in this question, there is no way to avoid converting Excel dates into timestamps: stackoverflow.com/questions/34156830/… – IanS Feb 23 '16 at 13:51
  • You could try this: stackoverflow.com/a/28769537/5276797 – IanS Feb 23 '16 at 13:52
  • The code "f.write(vbscript.encode('utf-8'))" from the third comment doesn't work in python 3. I put it in the 2to3 converter and it didn't make changes. Any suggestions? – user18101 Feb 23 '16 at 17:47
  • What is the error message? – IanS Feb 23 '16 at 20:11

this is similar as issue here. Leave dates as strings using read_excel function from pandas in python

check the answers:

  • Using converters{'Date': str} option inside the pandas.read_excel which helps.
    pandas.read_excel(xlsx, sheet, converters={'Date': str})
  • you can try convert your timestamp back to the original format

I had the same problem. This is what solved the issue for me:

df = pd.read_excel(excel_link, sheet_name, dtype=str)

If you don't mind converting the df or entire column to string

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