0

I'm looking for a way to create a datetimeindex in pandas. My data looks as follows:

      Date        Time         AAA  
0  06/17/2016  03:00:00 PM    19.13 
1  06/17/2016  02:00:00 PM    19.13 
2  06/17/2016  01:00:00 PM    19.26  
3  06/17/2016  12:00:00 AM    19.28 
4  06/17/2016  11:00:00 AM    19.28 

The result I want to obtain is:

                       AAA
Date
2016-06-17 15:00:00   19.16
2016-06-17 14:00:00   19.14
2016-06-17 13:00:00   19.18
2016-06-17 12:00:00   19.27
2016-06-17 11:00:00   19.27

I am note sure how to efficiently do this since my Time column uses 12-hour clock format.

2

Using date objects as opposed to parsing strings

df = pd.DataFrame([
        ['06/17/2016', '03:00:00 PM', 19.13],
        ['06/17/2016', '02:00:00 PM', 19.13],
        ['06/17/2016', '01:00:00 PM', 19.26],
        ['06/17/2016', '12:00:00 AM', 19.28],
        ['06/17/2016', '11:00:00 AM', 19.28],
    ],
    columns=['Date', 'Time', 'AAA'],
)
df.Date = pd.to_datetime(df.Date)
df.Time = pd.to_datetime(df.Time) - pd.DatetimeIndex(df.Time).date

df.set_index(df.Date + df.Time)[['AAA']]

                       AAA
2016-06-17 15:00:00  19.13
2016-06-17 14:00:00  19.13
2016-06-17 13:00:00  19.26
2016-06-17 00:00:00  19.28
2016-06-17 11:00:00  19.28
2

you can do it using to_datetime as:

df
Out[38]: 
         Date         Time    AAA
0  06/17/2016  03:00:00 PM  19.13
1  06/17/2016  02:00:00 PM  19.13
2  06/17/2016  01:00:00 PM  19.26
3  06/17/2016  12:00:00 AM  19.28
4  06/17/2016  11:00:00 AM  19.28

In [39]: df['Date']=pd.to_datetime(df['Date']+ ' '+df['Time'])

In [40]: df
Out[40]: 
                 Date         Time    AAA
0 2016-06-17 15:00:00  03:00:00 PM  19.13
1 2016-06-17 14:00:00  02:00:00 PM  19.13
2 2016-06-17 13:00:00  01:00:00 PM  19.26
3 2016-06-17 00:00:00  12:00:00 AM  19.28
4 2016-06-17 11:00:00  11:00:00 AM  19.28

In [40]: df=df.drop(['Time','Date'],axis=1).set_index(df['Date'])

In [41]: df
Out[41]: 
                       AAA
Date                      
2016-06-17 15:00:00  19.13
2016-06-17 14:00:00  19.13
2016-06-17 13:00:00  19.26
2016-06-17 00:00:00  19.28
2016-06-17 11:00:00  19.28

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.