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I am using pandas.to_datetime to parse the dates in my data. Pandas by default represent the dates with datetime64[ns] even though the dates are all daily only. I wonder whether there is an elegant/clever way to convert the dates to datetime.date or datetime64[D] so that when I write the data to csv, the dates are not appended with 00:00:00. I know I can convert the type manually element-by-element:

[dt.to_datetime().date() for dt in df.dates]

But this is really slow since I have many rows and it sort of defeats the purpose of using pandas.to_datetime. Is there a way to convert the dtype of the entire column at once? Or alternatively, does pandas.to_datetime support a precision specification so that I can get rid of the time part while working with daily data?

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I don't know a good way, but df.dates.apply(lambda x: x.date()) should be at least a bit faster. also take a look at github.com/pydata/pandas/issues/2583 –  root Apr 23 '13 at 19:24
possible duplicate of How to specify date format when using pandas.to_csv? –  unutbu Apr 23 '13 at 19:25
I would consider these two questions as different. The possible duplicate that you refer to aims to split the date part and time part from a datetime column. This question is motivated by converting the entire column at once. Imagine you have a dataframe with 20 columns that represent dates. You wouldn't want to specify which columns to write to csv, as suggested in the other question. –  ezbentley Apr 23 '13 at 19:41
The issue with df.dates.apply is that the NaT would be converted to some weird year and isnull() would not work. –  ezbentley Apr 23 '13 at 19:44
This is not supported at this time (@root points to the possible enhancement), what is the purpose of doing this, when writing to csv? –  Jeff Apr 23 '13 at 19:57

1 Answer 1

Converting to datetime64[D]:


Though re-assigning that to a DataFrame col will revert it back to [ns].

If you wanted actual datetime.date:

dt = pd.DatetimeIndex(df.dates)
dates = np.array([datetime.date(*date_tuple) for date_tuple in zip(dt.year, dt.month, dt.day)])
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