I have one field in a pandas DataFrame that was imported as string format. It should be a datetime variable. How do I convert it to a datetime column and then filter based on date.


  • DataFrame Name: raw_data
  • Column Name: Mycol
  • Value Format in Column: '05SEP2014:00:00:00.000'

Use the to_datetime function, specifying a format to match your data.

raw_data['Mycol'] =  pd.to_datetime(raw_data['Mycol'], format='%d%b%Y:%H:%M:%S.%f')
  • 39
    Note: the format argument isn't required. to_datetime is smart. Go ahead and try it without trying to match your data. – samthebrand Apr 22 '17 at 18:54
  • 1
    In order to avoid the SettingWithCopyWarning use the @darth-behfans stackoverflow.com/a/42773096/4487805 – Álvaro Loza Oct 16 '17 at 10:41
  • 2
    What if you just want time and not date? – FaCoffee Oct 30 '17 at 14:45
  • 4
    Not terribly smart. Even if some of the column is unambiguously in dayfirst=True format, it will still default to dayfirst=False for the others in the same column. So, safer to use an explicit format specification or at least the dayfirst parameter. – CPBL Apr 22 '18 at 20:36
  • 7
    Omitting the format string can cause this operation to be slow with lots of records. This answer discusses why. Looks like infer_datetime_format=True could also increase parsing speed up to ~5-10x (according to pandas docs) if you don't include a format string. – atwalsh May 5 '18 at 19:39

You can use the DataFrame method .apply() to operate on the values in Mycol:

>>> df = pd.DataFrame(['05SEP2014:00:00:00.000'],columns=['Mycol'])
>>> df
0  05SEP2014:00:00:00.000
>>> import datetime as dt
>>> df['Mycol'] = df['Mycol'].apply(lambda x: 
>>> df
0 2014-09-05
  • 1
    Thanks! This is nice because it is more broadly applicable but the other answer was more direct. I had a hard time deciding which I liked better :) – Chris Nov 5 '14 at 17:56
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    I like this answer better, because it produces a datetime object as opposed to a pandas.tslib.Timestamp object – wesanyer Dec 7 '15 at 18:51
raw_data['Mycol'] =  pd.to_datetime(raw_data['Mycol'], format='%d%b%Y:%H:%M:%S.%f')

works, however it results in a Python warning of A value is trying to be set on a copy of a slice from a DataFrame. Try using .loc[row_indexer,col_indexer] = value instead

I would guess this is due to some chaining indexing.


If you have more than one column to be converted you can do the following:

df[["col1", "col2", "col3"]] = df[["col1", "col2", "col3"]].apply(pd.to_datetime)

protected by Community Dec 2 '18 at 8:30

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