I have the following Pandas dataframe in Python 2.7.

import pandas as pd
trial_num = [1,2,3,4,5]
sail_rem_time = ['11:33:11','16:29:05','09:37:56','21:43:31','17:42:06']
dfc = pd.DataFrame(zip(*[trial_num,sail_rem_time]),columns=['Temp_Reading','Time_of_Sail'])
print dfc

The dataframe looks like this:

  Temp_Reading Time_of_Sail
             1     11:33:11
             2     16:29:05
             3     09:37:56
             4     21:43:31
             5     17:42:06

This dataframe comes from a *.csv file. I use Pandas to read in the *.csv file as a Pandas dataframe. When I use print dfc.dtypes, it shows me that the column Time_of_Sail has a datatype object. I would like to convert this column to datetime datatype BUT I only want the time part - I don't want the year, month, date.

I can try this:

dfc['Time_of_Sail'] = pd.to_datetime(dfc['Time_of_Sail'])
dfc['Time_of_Sail'] = [time.time() for time in dfc['Time_of_Sail']]

but the problem is that the when I run print dfc.dtypes it still shows that the column Time_of_Sail is object.

Is there a way to convert this column into a datetime format that only has the time?

Additional Information:

To create the above dataframe and output, this also works:

import pandas as pd
trial_num = [1,2,3,4,5]
sail_rem_time = ['11:33:11','16:29:05','09:37:56','21:43:31','17:42:06']
data = [
dfc = pd.DataFrame(data,columns=['Temp_Reading','Time_of_Sail'])
dfc['Time_of_Sail'] = pd.to_datetime(dfc['Time_of_Sail'])
dfc['Time_of_Sail'] = [time.time() for time in dfc['Time_of_Sail']]
print dfc
print dfc.dtypes
  • 1
    I'm using python 3.4 but am having trouble reproducing your problem. When I tried the conversions you suggested, I find the dtype has changed to datetime64[ns]. As a side note, the construction of your dataframe didn't work for me because zip returns an iterator which is not accepted by the DataFrame constructor. This is probably a very stupid question, but have you tried running the exact code you posted? Jun 14, 2016 at 1:06
  • Yeah, just tried it again. Works good for me. After I tried both the conversions, the dtype is object, though the dtype changes to datetime64[ns] if only the first conversion is run.
    – edesz
    Jun 14, 2016 at 1:09
  • You're saying it's working now? Jun 14, 2016 at 1:10
  • Yes, it seems to be working for me.
    – edesz
    Jun 14, 2016 at 1:11
  • Okay, I added another way to create the dataframe and the problem. That might be helpful - this new way seems a bit more straightforward to me.
    – edesz
    Jun 14, 2016 at 1:25

5 Answers 5


These two lines:

dfc['Time_of_Sail'] = pd.to_datetime(dfc['Time_of_Sail'])
dfc['Time_of_Sail'] = [time.time() for time in dfc['Time_of_Sail']]

Can be written as:

dfc['Time_of_Sail'] = pd.to_datetime(dfc['Time_of_Sail'],format= '%H:%M:%S' ).dt.time
  • Thanks. This solved my problem - I could specify the format for the time (no date), which I was after,
    – edesz
    Oct 18, 2017 at 16:46
  • 3
    Can you please tell what is dt.time at end and what does it do. I'm guessing it is imported datetime module
    – Nick Warke
    May 21, 2018 at 16:20
  • Is it possible to do this inplace? Sep 1, 2018 at 0:36
  • 16
    Hi this will cause the dtype to be object and not datime.
    – Nikko
    Sep 12, 2018 at 7:50
  • @Nikko But afterwards if u do an invalid operation like dfc[dfc['Time_of_Sail']>'17:00:00'] you get an errorTypeError: '>' not supported between instances of 'datetime.time' and 'str' so I guess it is datetime even though pandas just says object. Strange though because again then doing something like dfc['Time_of_Sail'].dt.strftime('%H%M') gives an error AttributeError: Can only use .dt accessor with datetimelike values
    – West
    Apr 15 at 11:26

Using to_timedelta,we can convert string to time format(timedelta64[ns]) by specifying units as second,min etc.,

dfc['Time_of_Sail'] = pd.to_timedelta(dfc['Time_of_Sail'], unit='s')

If you just want a simple conversion you can do the below:

import datetime as dt

dfc.Time_of_Sail = dfc.Time_of_Sail.astype(dt.datetime)

or you could add a holder string to your time column as below, and then convert afterwards using an apply function:

dfc.Time_of_Sail = dfc.Time_of_Sail.apply(lambda x: '2016-01-01 ' + str(x))
dfc.Time_of_Sail = pd.to_datetime(dfc.Time_of_Sail).apply(lambda x: dt.datetime.time(x))
  • This did not work for me. Not sure if it's just an older version in the answer but I do: df["Time"].astype(datetime.datetime) I get: TypeError: dtype '<class 'datetime.datetime'>' not understood
    – Ramy
    Apr 2 at 14:11

This seems to work:

dfc['Time_of_Sail'] = pd.to_datetime(dfc['Time_of_Sail'], format='%H:%M:%S' ).apply(pd.Timestamp)


If anyone is searching for a more generalized answer try

dfc['Time_of_Sail']= pd.to_datetime(dfc['Time_of_Sail'])

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.