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I have a dataset of column name DateTime having dtype object.

df['DateTime'] = pd.to_datetime(df['DateTime'])

I have used the above code to convert to datetime format then did a split in the column to have Date and Time separately

df['date'] = df['DateTime'].dt.date
df['time'] = df['DateTime'].dt.time

but after the split the format changes to object type and while converting it to datetime it showing error for the time column name as: TypeError: is not convertible to datetime

How to convert it to datetime format the time column

  • What do you mean "proper time format"...? Please show the code you're using that produces TypeError: is not convertible to datetime – Jon Clements Nov 25 '18 at 18:02
  • The same code that I have showed to convert the DateTime i.e df['time'] = pd.to_datetime(df.['time']) – Nadeem Haque Nov 25 '18 at 18:11
  • @NadeemHaque - converting to string is necessary like df['time'] = pd.to_datetime(df.['time'].astype(str)) but then is added some dates, because datetimes with no dates not exist. – jezrael Nov 25 '18 at 18:29
  • 1
    @jezrael I'm new to python so got confused.. thank you for the help – Nadeem Haque Nov 25 '18 at 18:59
0

You can use combine in list comprehension with zip:

df = pd.DataFrame({'DateTime': ['2011-01-01 12:48:20', '2014-01-01 12:30:45']})
df['DateTime'] = pd.to_datetime(df['DateTime'])

df['date'] = df['DateTime'].dt.date
df['time'] = df['DateTime'].dt.time

import datetime
df['new'] = [datetime.datetime.combine(a, b) for a, b in zip(df['date'], df['time'])]
print (df)

             DateTime        date      time                 new
0 2011-01-01 12:48:20  2011-01-01  12:48:20 2011-01-01 12:48:20
1 2014-01-01 12:30:45  2014-01-01  12:30:45 2014-01-01 12:30:45

Or convert to strings, join together and convert again:

df['new'] = pd.to_datetime(df['date'].astype(str) + ' ' +df['time'].astype(str))
print (df)
             DateTime        date      time                 new
0 2011-01-01 12:48:20  2011-01-01  12:48:20 2011-01-01 12:48:20
1 2014-01-01 12:30:45  2014-01-01  12:30:45 2014-01-01 12:30:45

But if use floor for remove times with converting times to timedeltas then use + only:

df['date'] = df['DateTime'].dt.floor('d')
df['time'] = pd.to_timedelta(df['DateTime'].dt.strftime('%H:%M:%S'))

df['new'] = df['date'] + df['time']
print (df)

             DateTime       date     time                 new
0 2011-01-01 12:48:20 2011-01-01 12:48:20 2011-01-01 12:48:20
1 2014-01-01 12:30:45 2014-01-01 12:30:45 2014-01-01 12:30:45
0

How to convert it back to datetime format the time column

There appears to be a misunderstanding. Pandas datetime series must include date and time components. This is non-negotiable. You can simply use pd.to_datetime without specifying a date and use the default 1900-01-01 date:

# date from jezrael

print(pd.to_datetime(df['time'], format='%H:%M:%S'))

0   1900-01-01 12:48:20
1   1900-01-01 12:30:45
Name: time, dtype: datetime64[ns]

Or use another date component, for example today's date:

today = pd.Timestamp('today').strftime('%Y-%m-%d')
print(pd.to_datetime(today + ' '  + df['time'].astype(str)))

0   2018-11-25 12:48:20
1   2018-11-25 12:30:45
Name: time, dtype: datetime64[ns]

Or recombine from your date and time series:

print(pd.to_datetime(df['date'].astype(str) + ' ' + df['time'].astype(str)))

0   2011-01-01 12:48:20
1   2014-01-01 12:30:45
dtype: datetime64[ns]
  • thank you for the help – Nadeem Haque Nov 25 '18 at 19:01
  • @NadeemHaque, I'm glad my answer helped you. Please consider marking it as correct so it can help other people checking this question also. – jpp Nov 25 '18 at 20:18

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