29

I have the following DataFrame containing song names, their peak chart positions and the number of weeks they spent at position no 1:

                                          Song            Peak            Weeks
76                            Paperback Writer               1               16
117                               Lady Madonna               1                9
118                                   Hey Jude               1               27
22                           Can't Buy Me Love               1               17
29                          A Hard Day's Night               1               14
48                              Ticket To Ride               1               14
56                                       Help!               1               17
109                       All You Need Is Love               1               16
173                The Ballad Of John And Yoko               1               13
85                               Eleanor Rigby               1               14
87                            Yellow Submarine               1               14
20                    I Want To Hold Your Hand               1               24
45                                 I Feel Fine               1               15
60                                 Day Tripper               1               12
61                          We Can Work It Out               1               12
10                               She Loves You               1               36
155                                   Get Back               1                6
8                               From Me To You               1                7
115                              Hello Goodbye               1                7
2                             Please Please Me               2               20
92                   Strawberry Fields Forever               2               12
93                                  Penny Lane               2               13
107                       Magical Mystery Tour               2               16
176                                  Let It Be               2               14
0                                   Love Me Do               4               26
157                                  Something               4                9
166                              Come Together               4               10
58                                   Yesterday               8               21
135                       Back In The U.S.S.R.              19                3
164                         Here Comes The Sun              58               19
96       Sgt. Pepper's Lonely Hearts Club Band              63               12
105         With A Little Help From My Friends              63                7

I'd like to rank these songs in order of popularity, so I'd like to sort them according to the following criteria: songs that reached the highest position come first, but if there is a tie, the songs that remained in the charts for the longest come first.

I can't seem to figure out how to do this in Pandas.

6 Answers 6

33

On pandas 0.9.1 and higher this should work (this is with 0.10.0b1):

(Edit: As of Pandas 0.19, method sort_index is deprecated. Prefer sort_values)

In [23]: songs.sort_index(by=['Peak', 'Weeks'], ascending=[True, False])
Out[23]: 
                                      Song  Peak  Weeks
10                           She Loves You     1     36
118                               Hey Jude     1     27
20                I Want To Hold Your Hand     1     24
22                       Can't Buy Me Love     1     17
56                                   Help!     1     17
76                        Paperback Writer     1     16
109                   All You Need Is Love     1     16
45                             I Feel Fine     1     15
29                      A Hard Day's Night     1     14
48                          Ticket To Ride     1     14
85                           Eleanor Rigby     1     14
87                        Yellow Submarine     1     14
173            The Ballad Of John And Yoko     1     13
60                             Day Tripper     1     12
61                      We Can Work It Out     1     12
117                           Lady Madonna     1      9
8                           From Me To You     1      7
115                          Hello Goodbye     1      7
155                               Get Back     1      6
2                         Please Please Me     2     20
107                   Magical Mystery Tour     2     16
176                              Let It Be     2     14
93                              Penny Lane     2     13
92               Strawberry Fields Forever     2     12
0                               Love Me Do     4     26
166                          Come Together     4     10
157                              Something     4      9
58                               Yesterday     8     21
135                   Back In The U.S.S.R.    19      3
164                     Here Comes The Sun    58     19
96   Sgt. Pepper's Lonely Hearts Club Band    63     12
105     With A Little Help From My Friends    63      7
4
  • 2
    Thanks! Do you know if it is possible to have the dataframe re-compute the index according to the new order? (i.e. so that the index associated with each row in the dataframe grows according to the new ordering) Commented Feb 18, 2013 at 22:46
  • 3
    This is an old question, but just in case someone still needs this.. What you want can be done using pandas.DataFrame.reset_index (try df.reset_index(drop=True, inplace=True))
    – robodasha
    Commented Oct 15, 2015 at 19:43
  • To recompute the indices after sorting, try df.index = range(len(df))
    – visitor
    Commented Mar 19, 2017 at 18:21
  • In 0.22.0 sort_index is still available an not marked as deprecated.
    – Jesse
    Commented Mar 7, 2018 at 13:57
23

Since pandas 0.17.0, sort is deprecated and replaced by sort_values:

df.sort_values(['Peak', 'Weeks'], ascending=[True, False], inplace=True)
18
df.sort(['Peak', 'Weeks'], ascending=[True, False], inplace=True)

If you want the sorted result for future use, inplace=True is required.

5

By using .sort()

df.sort(['Peak', 'Weeks'], ascending=[True, False])

Will sort into ascending order of peak position, then within that descending order of length in charts.

7
  • yeah, for some reason that's not the case. I thought it should work that way too
    – mpjan
    Commented Nov 29, 2012 at 23:33
  • @user1715271 Could you elaborate? ie - what do you actually get? Commented Nov 29, 2012 at 23:35
  • 1
    @user1715271 You are looking at the DataFrame objected returned from the sort, right? The original won't get changed unless you pass inplace=True to the sort... Commented Nov 29, 2012 at 23:38
  • the second criteria still sorts ties in the "Peak" column in descending order
    – mpjan
    Commented Nov 29, 2012 at 23:39
  • @user1715271 "still sorts ties in the "Peak" column in descending order" - errr - that's what you want isn't it? Commented Nov 29, 2012 at 23:41
0

In case, if the dtypes of 'Peak' and 'Week' are not 'int' or 'float', then use the following command.

df.convert_objects(convert_numeric=True).sort_values(['Peak', 'Weeks'], ascending=[True, False], inplace=True)
0

pandas.DataFrame.sort_values df.sort_values(['Peak', 'Weeks'], ascending=[True, False])

Please find more details around this on

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