33

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 = [
    [trial_num[0],sail_rem_time[0]],
    [trial_num[1],sail_rem_time[1]],[trial_num[2],sail_rem_time[2]],
    [trial_num[3],sail_rem_time[3]]
    ]
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
8
  • 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

58

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
5
  • 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
12

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')
2

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))
1
  • 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
2

This seems to work:

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

1

If anyone is searching for a more generalized answer try

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

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