Here's a working example:

df = pd.DataFrame({'A': [-39882300000000000000]}, dtype='object')

df.replace({',': '.'}) raises an OverflowError because somewhere in the code the convert flag is set to True. I am not sure but it is probably because pandas is inferring that it only contain numbers.

I read the data from an Excel workbook and I want to prevent this conversion when using df.replace. Is there a way to do so?

  • 1
    IIUC convert it to str. df.astype(str).replace({',': '.'}) – piRSquared Aug 21 '17 at 21:11
up vote 8 down vote accepted
df.update(df.blocks['object'].astype(str).replace({',': '.'}))
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    df.blocks['object'] - wow! This is cool! – MaxU Aug 21 '17 at 21:15
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    You remember I brought it up a while ago... this is the first time I've used it to answer a question (-: – piRSquared Aug 21 '17 at 21:16
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    @ayhan, there is a documented method: pandas.pydata.org/pandas-docs/stable/generated/… – MaxU Aug 21 '17 at 21:19
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    @ayhan neither does get_value or set_value but jeff told me that it wasn't intended as public api. So, still not sure – piRSquared Aug 21 '17 at 21:19
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    alll of those are slated for deprecation ; they just bloat the API – Jeff Aug 22 '17 at 0:44

How about this:

In [25]: df.loc[:, df.dtypes=='object'] = \
             df.select_dtypes(['object']).astype(str).replace({',': '.'})

This will apply .replace only to columns of a string (object) dtype

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