4

Hello I have a dataframe df containing data of different trips from an origin X to a destination Y with starting time T. I want to count trips between X and Y in a certain time windows, let say 15 min. So,

df:
X Y           T
1 2 2015-12-30 22:30:00.0
1 2 2015-12-30 22:35:00.0
1 2 2015-12-30 22:40:00.0
1 2 2015-12-30 23:40:00.0
3 5 2015-11-30 13:40:00.0
3 5 2015-11-30 13:44:00.0
3 5 2015-11-30 19:54:00.0

I want

dfO:
X Y count
1 2   3
3 5   2

In order to count the all the trips from X to Y I did:

tmp = df.groupby(["X", "Y"]).size()

How can I take in consideration also the fact that I want to count only the same trips in a certain time interval dt?

7
  • 2
    use pd.diff on your T column, after the groupby. In that way you'll get the difference with the next trip. Then select on the dt part
    – Mathias711
    Apr 28, 2016 at 12:41
  • I do not have a T column after the groubpy
    – emax
    Apr 28, 2016 at 12:45
  • make a new function, with an argument dt. In there, do the diff (on T, that should be there) and select only the diff_T == dt parts, return the selected dataframe. then do something like df.groupby(["X", "Y"]).apply(func)
    – Mathias711
    Apr 28, 2016 at 13:00
  • @emax, it's not quite clear how to connect your desired output and to count trips between X and Y in a certain time windows, let say 15 min? Can you post desired output? Apr 28, 2016 at 13:04
  • How about you do all filtering of data before you do group by ?
    – sam
    Apr 28, 2016 at 13:05

2 Answers 2

5

Perhaps you are looking for pd.TimeGrouper. It allows you to group rows in a DataFrame by intervals of time, provided that the DataFrame has a DatetimeIndex. (Note that MaxU's solution shows how to group by time intervals without using a DatetimeIndex.)

import pandas as pd

df = pd.DataFrame({'T': ['2015-12-30 22:30:00.0',
                         '2015-12-30 22:35:00.0',
                         '2015-12-30 22:40:00.0',
                         '2015-12-30 23:40:00.0',
                         '2015-11-30 13:40:00.0',
                         '2015-11-30 13:44:00.0',
                         '2015-11-30 19:54:00.0'],
                   'X': [1, 1, 1, 1, 3, 3, 3],
                   'Y': [2, 2, 2, 2, 5, 5, 5]})
df['T'] = pd.to_datetime(df['T'])
df = df.set_index(['T'])
result = df.groupby([pd.TimeGrouper('15Min'), 'X', 'Y']).size()
print(result)

yields

T                    X  Y
2015-11-30 13:30:00  3  5    2
2015-11-30 19:45:00  3  5    1
2015-12-30 22:30:00  1  2    3
2015-12-30 23:30:00  1  2    1

This contains the information that you want

T                    X  Y
2015-11-30 13:30:00  3  5    2
2015-12-30 22:30:00  1  2    3

and more. It is unclear on what basis you wish to exclude the other rows. If you explain the criterion, we should be able to produce the desired DataFrame exactly.

4
  • @MaxU: I like your answer a bit better than mine. Would you undelete yours so I can delete mine?
    – unutbu
    Apr 28, 2016 at 13:23
  • sure, but please don't delete yours ;) and i swear i didn't see yours when i was writing mine :) Apr 28, 2016 at 13:25
  • It is exactly what I want but it gives me this error TypeError: axis must be a DatetimeIndex, but got an instance of 'Index'
    – emax
    Apr 28, 2016 at 13:26
  • @emax: It sounds like your T column contains date strings. They need to be converted to datetime-like values: df['T'] = pd.to_datetime(df['T']) or else pd.TimeGrouper will not recognize the values as datetimes (or timestamps).
    – unutbu
    Apr 28, 2016 at 13:29
2

if i understood it correctly:

In [34]: df.groupby([pd.Grouper(key='T', freq='15min'),'X','Y'], as_index=False).size()
Out[34]:
T                    X  Y
2015-11-30 13:30:00  3  5    2
2015-11-30 19:45:00  3  5    1
2015-12-30 22:30:00  1  2    3
2015-12-30 23:30:00  1  2    1

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