168

I have two columns, fromdate and todate, in a dataframe.

import pandas as pd

data = {'todate': [pd.Timestamp('2014-01-24 13:03:12.050000'), pd.Timestamp('2014-01-27 11:57:18.240000'), pd.Timestamp('2014-01-23 10:07:47.660000')],
        'fromdate': [pd.Timestamp('2014-01-26 23:41:21.870000'), pd.Timestamp('2014-01-27 15:38:22.540000'), pd.Timestamp('2014-01-23 18:50:41.420000')]}

df = pd.DataFrame(data)

I add a new column, diff, to find the difference between the two dates using

df['diff'] = df['fromdate'] - df['todate']

I get the diff column, but it contains days, when there's more than 24 hours.

                   todate                 fromdate                    diff
0 2014-01-24 13:03:12.050  2014-01-26 23:41:21.870  2 days 10:38:09.820000
1 2014-01-27 11:57:18.240  2014-01-27 15:38:22.540  0 days 03:41:04.300000
2 2014-01-23 10:07:47.660  2014-01-23 18:50:41.420  0 days 08:42:53.760000

How do I convert my results to only hours and minutes (i.e. days are converted to hours)?

4 Answers 4

198

Pandas timestamp differences returns a datetime.timedelta object. This can easily be converted into hours by using the *as_type* method, like so

import pandas
df = pandas.DataFrame(columns=['to','fr','ans'])
df.to = [pandas.Timestamp('2014-01-24 13:03:12.050000'), pandas.Timestamp('2014-01-27 11:57:18.240000'), pandas.Timestamp('2014-01-23 10:07:47.660000')]
df.fr = [pandas.Timestamp('2014-01-26 23:41:21.870000'), pandas.Timestamp('2014-01-27 15:38:22.540000'), pandas.Timestamp('2014-01-23 18:50:41.420000')]
(df.fr-df.to).astype('timedelta64[h]')

to yield,

0    58
1     3
2     8
dtype: float64
2
  • 1
    The astype workaround works, but it is too slow for large (0.5 Million rows) files. Any other suggestions?
    – student1
    Apr 28, 2016 at 16:28
  • I get the error Cannot convert from timedelta64[ns] to timedelta64[h]. Supported resolutions are 's', 'ms', 'us', 'ns' Feb 26 at 17:28
79

This was driving me bonkers as the .astype() solution above didn't work for me. But I found another way. Haven't timed it or anything, but might work for others out there:

t1 = pd.to_datetime('1/1/2015 01:00')
t2 = pd.to_datetime('1/1/2015 03:30')

print pd.Timedelta(t2 - t1).seconds / 3600.0

...if you want hours. Or:

print pd.Timedelta(t2 - t1).seconds / 60.0

...if you want minutes.

UPDATE: There used to be a helpful comment here that mentioned using .total_seconds() for time periods spanning multiple days. Since it's gone, I've updated the answer.

0
69
  • How do I convert my results to only hours and minutes?
    • The accepted answer only returns days + hours. Minutes are not included.
  • To provide a column that has hours and minutes as hh:mm or x hours y minutes, would require additional calculations and string formatting.
  • This answer shows how to get either total hours or total minutes as a float, using timedelta math, and is faster than using .astype('timedelta64[h]').
    • As per pandas v2.0.0, .astype('timedelta64[h]') is not allowed.
  • Pandas Time Deltas User Guide
  • Pandas Time series / date functionality User Guide
  • python timedelta objects: See supported operations.
  • The following sample data is already a datetime64[ns] dtype. It is required that all relevant columns are converted using pandas.to_datetime().
  • Tested in python 3.11.2, pandas 2.0.1, numpy 1.24.3
import pandas as pd

# test data from OP, with values already in a datetime format
data = {'to_date': [pd.Timestamp('2014-01-24 13:03:12.050000'), pd.Timestamp('2014-01-27 11:57:18.240000'), pd.Timestamp('2014-01-23 10:07:47.660000')],
        'from_date': [pd.Timestamp('2014-01-26 23:41:21.870000'), pd.Timestamp('2014-01-27 15:38:22.540000'), pd.Timestamp('2014-01-23 18:50:41.420000')]}

# test dataframe; the columns must be in a datetime format; use pandas.to_datetime if needed
df = pd.DataFrame(data)

# add a timedelta column if wanted. It's added here for information only
# df['time_delta_with_sub'] = df.from_date.sub(df.to_date)  # also works
df['time_delta'] = (df.from_date - df.to_date)

# create a column with timedelta as total hours, as a float type
df['tot_hour_diff'] = (df.from_date - df.to_date) / pd.Timedelta(hours=1)

# create a colume with timedelta as total minutes, as a float type
df['tot_mins_diff'] = (df.from_date - df.to_date) / pd.Timedelta(minutes=1)

# display(df)
                  to_date               from_date             time_delta  tot_hour_diff  tot_mins_diff
0 2014-01-24 13:03:12.050 2014-01-26 23:41:21.870 2 days 10:38:09.820000      58.636061    3518.163667
1 2014-01-27 11:57:18.240 2014-01-27 15:38:22.540 0 days 03:41:04.300000       3.684528     221.071667
2 2014-01-23 10:07:47.660 2014-01-23 18:50:41.420 0 days 08:42:53.760000       8.714933     522.896000

Other methods

  • An item of note from the podcast in Other Resources, .total_seconds() was added and merged when the core developer was on vacation, and would not have been approved.
    • This is also why there aren't other .total_xx methods.
# convert the entire timedelta to seconds
# this is the same as td / timedelta(seconds=1)
(df.from_date - df.to_date).dt.total_seconds()
[out]:
0    211089.82
1     13264.30
2     31373.76
dtype: float64

# get the number of days
(df.from_date - df.to_date).dt.days
[out]:
0    2
1    0
2    0
dtype: int64

# get the seconds for hours + minutes + seconds, but not days
# note the difference from total_seconds
(df.from_date - df.to_date).dt.seconds
[out]:
0    38289
1    13264
2    31373
dtype: int64

Other Resources

%%timeit test

import pandas as pd

# dataframe with 2M rows
data = {'to_date': [pd.Timestamp('2014-01-24 13:03:12.050000'), pd.Timestamp('2014-01-27 11:57:18.240000')], 'from_date': [pd.Timestamp('2014-01-26 23:41:21.870000'), pd.Timestamp('2014-01-27 15:38:22.540000')]}
df = pd.DataFrame(data)
df = pd.concat([df] * 1000000).reset_index(drop=True)

%timeit (df.from_date - df.to_date) / pd.Timedelta(hours=1)
[out]:
24.2 ms ± 2.6 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

%timeit (df.from_date - df.to_date).astype('timedelta64[h]')
[out]:
ValueError: Cannot convert from timedelta64[ns] to timedelta64[D]. Supported resolutions are 's', 'ms', 'us', 'ns'
3

By default, time difference in pandas is in nanosecond resolution, i.e. timedelta64[ns], so one way to convert it into seconds/minutes/hours/etc. is to divide its nanosecond representation by 10**9 to convert to seconds, by 60*10**9 for minutes etc. This method is at least 3 times faster than other methods suggested on this page.1

df['diff_in_seconds'] = df['from_date'].sub(df['to_date']).view('int64') // 10**9
df['diff_in_minutes'] = df['from_date'].sub(df['to_date']).view('int64') // (60*10**9)
df['diff_in_hours'] = df['from_date'].sub(df['to_date']).view('int64') // (3600*10**9)

PS: The above code assumes that you want the difference in whole seconds, minutes, hours etc. so it uses integer division (//) but if you want the fractions as well, then use true division (/) instead. That said, if you want the exact difference, then instead of fractional seconds/minutes/hours, consider converting the difference into higher resolution (milliseconds/microseconds/etc.)


1 Some benchmarks using Trenton McKinney's setup:

data = {'to_date': [pd.Timestamp('2014-01-24 13:03:12.050000'), pd.Timestamp('2014-01-27 11:57:18.240000')]*1000000, 
        'from_date': [pd.Timestamp('2014-01-26 23:41:21.870000'), pd.Timestamp('2014-01-27 15:38:22.540000')]*1000000}
df = pd.DataFrame(data)
df['Diff'] = df['from_date'] - df['to_date']

%timeit df['Diff'].view('int64') // (3600*10**9)
# 11 ms ± 271 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

%timeit df['Diff'] // pd.Timedelta(hours=1)
# 36.7 ms ± 2.99 ms per loop (mean ± std. dev. of 7 runs, 100 loops each)

%timeit df['Diff'].astype('timedelta64[h]')
# 46.5 ms ± 865 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

%timeit df['Diff'].dt.total_seconds() // 3600
# 169 ms ± 7.71 ms per loop (mean ± std. dev. of 7 runs, 100 loops each)

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