1

My dataframe looks like this:

1      2019-04-22 00:01:00
2      2019-04-22 00:01:00
3      2019-04-22 00:01:00
4      2019-04-22 00:01:00
5      2019-04-22 00:02:00
6      2019-04-22 00:02:00
7      2019-04-22 00:02:00
8      2019-04-22 00:02:00
9      2019-04-22 00:03:00
10     2019-04-22 00:03:00
11     2019-04-22 00:03:00
12     2019-04-22 00:03:00

As you can see there are four rows for each minute, what I would need is to add 15 secondes to each row so that it looks like this:

1      2019-04-22 00:01:00
2      2019-04-22 00:01:15
3      2019-04-22 00:01:30
4      2019-04-22 00:01:45
5      2019-04-22 00:02:00
6      2019-04-22 00:02:15
7      2019-04-22 00:02:30
8      2019-04-22 00:02:45
9      2019-04-22 00:03:00
10     2019-04-22 00:03:15
11     2019-04-22 00:03:30
12     2019-04-22 00:03:45

Any idea on how to proceed? I am not really good at datetime object so I am a bit stuck on that one... thank you in advance!

3

You can add timedeltas to datetimes column:

df['date'] += pd.to_timedelta(df.groupby('date').cumcount() * 15, unit='s')

print (df)
                  date
1  2019-04-22 00:01:00
2  2019-04-22 00:01:15
3  2019-04-22 00:01:30
4  2019-04-22 00:01:45
5  2019-04-22 00:02:00
6  2019-04-22 00:02:15
7  2019-04-22 00:02:30
8  2019-04-22 00:02:45
9  2019-04-22 00:03:00
10 2019-04-22 00:03:15
11 2019-04-22 00:03:30
12 2019-04-22 00:03:45

Detail:

First create counter Series by GroupBy.cumcount:

print (df.groupby('date').cumcount())
1     0
2     1
3     2
4     3
5     0
6     1
7     2
8     3
9     0
10    1
11    2
12    3
dtype: int64

Multiple by 15 and convert to seconds timedeltas by to_timedelta:

print (pd.to_timedelta(df.groupby('date').cumcount() * 15, unit='s'))
1    00:00:00
2    00:00:15
3    00:00:30
4    00:00:45
5    00:00:00
6    00:00:15
7    00:00:30
8    00:00:45
9    00:00:00
10   00:00:15
11   00:00:30
12   00:00:45
dtype: timedelta64[ns]
0

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.