6

I have a pandas DataFrame with 3 columns containing a PERSON_ID, MOVING_DATE AND PLACE as follows:

df = pandas.DataFrame(
[[1,datetime.datetime(2018, 1, 1), 'New York'], 
 [1, datetime.datetime(2018, 1, 20), 'Rio de Janeiro'],
 [1, datetime.datetime(2018, 2, 13), 'London'],
 [2, datetime.datetime(2017, 6, 12), 'Seatle'],
 [2, datetime.datetime(2016, 10, 10), 'New Mexico'],
 [3, datetime.datetime(2017, 9, 19), 'Sao Paulo'],
 [3, datetime.datetime(2015, 12, 11), 'Bangladesh']]],
columns=['PERSON ID', 'MOVING DATE', 'PLACE']
)

   PERSON ID MOVING DATE           PLACE
0          1  2018-01-01        New York
1          1  2018-01-20  Rio de Janeiro
2          1  2018-02-13          London
3          2  2017-06-12          Seatle
4          2  2016-10-10      New Mexico
5          3  2017-09-19       Sao Paulo
6          3  2015-12-11      Bangladesh

I would like to find the place where the person is based on its last movement date (MOVEMENT_DATE).

Is it possible to get the result with the groupby method?

So far, I've tried:

df = df.sort_values(['PERSON ID', 'MOVING DATE'])
df.groupby(['PERSON ID', 'MOVING DATE']).agg(
     {'MOVING DATE': max, 'PLACE': 'last'}
)

but it didn't work out. Any help would be appreciated.

Thanks in advance,

Rhenan

3 Answers 3

16

A one-liner using DataFrame.groupby and Grouper.last:

df.sort_values('MOVING DATE').groupby('PERSON ID').last()

output:

     MOVING DATE      PLACE
PERSON ID                       
1          2018-02-13     London
2          2017-06-12     Seatle
3          2017-09-19  Sao Paulo
1
  • 2
    Great answer @Yuca. Thanks!! Nov 9, 2018 at 20:07
7

A sort is overkill here, that's O(nlogn) time complexity, when you can do this with loc and idxmax:

df.loc[df.groupby('PERSON ID')['MOVING DATE'].idxmax()]

   PERSON ID MOVING DATE      PLACE
2          1  2018-02-13     London
3          2  2017-06-12     Seatle
5          3  2017-09-19  Sao Paulo
3
  • out of curiosity, what's the complexity of this approach, logn?
    – Yuca
    Jun 14, 2021 at 12:29
  • 1
    @Yuca it is O(n) Jun 16, 2021 at 12:44
  • then by all means this should be the accepted answer
    – Yuca
    Jun 17, 2021 at 20:38
1

To add to @Yuca and the answer provided, you could also utilize the .max() function provided within the pandas lib in the same way .last() was added.

more: https://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.max.html

1
  • 1
    Hi @Tyler Filko, thanks for the answer, but the .max() method will use the letters of the place's name to select the maximum place, won't it? Nov 9, 2018 at 20:12

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