How do I round datetime column to nearest quarter hour

I have loaded a data file into a Python pandas dataframe. I has a datetime column of the format 2015-07-18 13:53:33.280.

What I need to do is create a new column that rounds this out to its nearest quarter hour. So, the date above will be rounded to 2015-07-18 13:45:00.000.

How do I do this in pandas? I tried using the solution from here, but get an 'Series' object has no attribute 'year' error.

Answers:

Thank you for visiting the Q&A section on Magenaut. Please note that all the answers may not help you solve the issue immediately. So please treat them as advisements. If you found the post helpful (or not), leave a comment & I’ll get back to you as soon as possible.

Method 1

You can use round(freq). There is also a shortcut column.dt for datetime functions access (as @laurens-koppenol suggests).

Here’s one-liner:

df['old column'].dt.round('15min')

String aliases for valid frequencies can be found here. Full working example:

In [1]: import pandas as pd    
In [2]: df = pd.DataFrame([pd.Timestamp('2015-07-18 13:53:33.280'),
                           pd.Timestamp('2015-07-18 13:33:33.330')],
                         columns=['old column'])

In [3]: df['new column']=df['old column'].dt.round('15min')  
In [4]: df
Out[4]: 
               old column          new column
0 2015-07-18 13:53:33.280 2015-07-18 14:00:00
1 2015-07-18 13:33:33.330 2015-07-18 13:30:00

Method 2

Assuming that your series is made up of datetime objects, You need to use Series.apply . Example –

import datetime
df['<column>'] = df['<column>'].apply(lambda dt: datetime.datetime(dt.year, dt.month, dt.day, dt.hour,15*(dt.minute // 15)))

The above example to always round to the previous quarter hour (behavior similar to floor function).

EDIT

To round to the correct quarter hour (as in , if its 7 mins 30 seconds past previous quarter, to show the next quarter) . We can use the below example –

import datetime
df['<column>'] = df['<column>'].apply(lambda dt: datetime.datetime(dt.year, dt.month, dt.day, dt.hour,15*round((float(dt.minute) + float(dt.second)/60) / 15)))

The above would only take the latest seconds into consideration , if you want the millisecond/microsecond into consideration , you can add that to the above equation as – (float(dt.minute) + float(dt.second)/60 + float(dt.microsecond)/60000000)

Method 3

This looks a little nicer

column.dt. allows the datetime functions for datetime columns, like column.str. does for string-like columns

datetime-like properties API reference

import pandas as pd

# test df
df = pd.DataFrame([{'old_column':pd.Timestamp('2015-07-18 13:53:33.280')}])

df['new_column'] = df['old_column'].dt.round('15min')

df

Method 4

Anand S Kumar’s answer doesn’t round to the nearest quarter hour, it cuts off the minutes to the nearest 15 minutes below it.

Actually, in your example 2015-07-18 13:53:33.280 should round to 2015-07-18 14:00:00.000 since 53:33.280 is closer to 60 minutes than 45 minutes.

I found an more robust answer for rounding in this post.

For your situation this should work:

import datetime

def round_time(time, round_to):
    """roundTo is the number of minutes to round to"""
    rounded = time + datetime.timedelta(minutes=round_to/2.)
    rounded -= datetime.timedelta(minutes=rounded.minute % round_to,
                                  seconds=rounded.second,
                                  microseconds=rounded.microsecond)
    return rounded

dt['dtcolumn'] = df['dtcolumn'].apply(lambda x: round_time(x))


All methods was sourced from stackoverflow.com or stackexchange.com, is licensed under cc by-sa 2.5, cc by-sa 3.0 and cc by-sa 4.0

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