42

After reading through: http://pandas.pydata.org/pandas-docs/version/0.13.1/generated/pandas.DataFrame.sort.html

I still can't seem to figure out how to sort a column by a custom list. Obviously, the default sort is alphabetical. I'll give an example. Here is my (very abridged) dataframe:

             Player      Year   Age   Tm     G
2967     Cedric Hunter   1991    27  CHH     6
5335     Maurice Baker   2004    25  VAN     7
13950    Ratko Varda     2001    22  TOT     60
6141     Ryan Bowen      2009    34  OKC     52
6169     Adrian Caldwell 1997    31  DAL     81

I want to be able to sort by Player, Year and then Tm. The default sort by Player and Year is fine for me, in normal order. However, I do not want Team sorted alphabetically b/c I want TOT always at the top.

Here is the list I created:

sorter = ['TOT', 'ATL', 'BOS', 'BRK', 'CHA', 'CHH', 'CHI', 'CLE', 'DAL', 'DEN',
   'DET', 'GSW', 'HOU', 'IND', 'LAC', 'LAL', 'MEM', 'MIA', 'MIL',
   'MIN', 'NJN', 'NOH', 'NOK', 'NOP', 'NYK', 'OKC', 'ORL', 'PHI',
   'PHO', 'POR', 'SAC', 'SAS', 'SEA', 'TOR', 'UTA', 'VAN',
   'WAS', 'WSB']

After reading through the link above, I thought this would work but it didn't:

df.sort(['Player', 'Year', 'Tm'], ascending = [True, True, sorter])

It still has ATL at the top, meaning that it sorted alphabetically and not according to my custom list. Any help would really be greatly appreciated, I just can't figure this out.

  • Is there a compelling reason not to stick an extra column on the DataFrame with the index of your team sorter? – Raman Shah May 5 '14 at 22:42
  • no compelling reason, was curious why mine didn't work though – itjcms18 May 5 '14 at 22:51
21

Below is an example that performs lexicographic sort on a dataframe. The idea is to create an numerical index based on the specific sort. Then to perform a numerical sort based on the index. A column is added to the dataframe to do so, and is then removed.

import pandas as pd

# Create DataFrame
df = pd.DataFrame(
{'id':[2967, 5335, 13950, 6141, 6169],\
 'Player': ['Cedric Hunter', 'Maurice Baker' ,\
            'Ratko Varda' ,'Ryan Bowen' ,'Adrian Caldwell'],\
 'Year': [1991 ,2004 ,2001 ,2009 ,1997],\
 'Age': [27 ,25 ,22 ,34 ,31],\
 'Tm':['CHH' ,'VAN' ,'TOT' ,'OKC' ,'DAL'],\
 'G':[6 ,7 ,60 ,52 ,81]})

# Define the sorter
sorter = ['TOT', 'ATL', 'BOS', 'BRK', 'CHA', 'CHH', 'CHI', 'CLE', 'DAL','DEN',\
          'DET', 'GSW', 'HOU', 'IND', 'LAC', 'LAL', 'MEM', 'MIA', 'MIL',\
          'MIN', 'NJN', 'NOH', 'NOK', 'NOP', 'NYK', 'OKC', 'ORL', 'PHI',\
          'PHO', 'POR', 'SAC', 'SAS', 'SEA', 'TOR', 'UTA', 'VAN',\
          'WAS', 'WSB']

# Create the dictionary that defines the order for sorting
sorterIndex = dict(zip(sorter,range(len(sorter))))

# Generate a rank column that will be used to sort
# the dataframe numerically
df['Tm_Rank'] = df['Tm'].map(sorterIndex)

# Here is the result asked with the lexicographic sort
# Result may be hard to analyze, so a second sorting is
# proposed next
## NOTE: 
## Newer versions of pandas use 'sort_value' instead of 'sort'
df.sort(['Player', 'Year', 'Tm_Rank'], \
        ascending = [True, True, True], inplace = True)
df.drop('Tm_Rank', 1, inplace = True)
print(df)

# Here is an example where 'Tm' is sorted first, that will 
# give the first row of the DataFrame df to contain TOT as 'Tm'
df['Tm_Rank'] = df['Tm'].map(sorterIndex)
## NOTE: 
## Newer versions of pandas use 'sort_value' instead of 'sort'
df.sort(['Tm_Rank', 'Player', 'Year'], \
        ascending = [True , True, True], inplace = True)
df.drop('Tm_Rank', 1, inplace = True)
print(df)
  • 1
    It would be faster to generate the ordering column using map as this uses cython so df['Tm_Rank'] = df['Tm'].map(sorterIndex), then order using this and then drop – EdChum May 5 '14 at 22:54
  • awesome, thanks. do you know why setting ascending equal to a list doesn't work? am i reading the documentation wrong? – itjcms18 May 6 '14 at 20:11
  • This worked for me - the answer from @dmeu left blanks in the sorted column for some reason. Thanks. (Also sort is now called sort values) – DavidC Aug 17 '18 at 17:00
52

I just discovered that with pandas 15.1 it is possible to use categorical series (http://pandas.pydata.org/pandas-docs/stable/getting_started/10min.html#categoricals)

As for your example, lets define the same data-frame and sorter:

import pandas as pd

data = {
    'id': [2967, 5335, 13950, 6141, 6169],
    'Player': ['Cedric Hunter', 'Maurice Baker', 
               'Ratko Varda' ,'Ryan Bowen' ,'Adrian Caldwell'],
    'Year': [1991, 2004, 2001, 2009, 1997],
    'Age': [27, 25, 22, 34, 31],
    'Tm': ['CHH', 'VAN', 'TOT', 'OKC', 'DAL'],
    'G': [6, 7, 60, 52, 81]
}

# Create DataFrame
df = pd.DataFrame(data)

# Define the sorter
sorter = ['TOT', 'ATL', 'BOS', 'BRK', 'CHA', 'CHH', 'CHI', 'CLE', 'DAL', 'DEN',
          'DET', 'GSW', 'HOU', 'IND', 'LAC', 'LAL', 'MEM', 'MIA', 'MIL',
          'MIN', 'NJN', 'NOH', 'NOK', 'NOP', 'NYK', 'OKC', 'ORL', 'PHI',
          'PHO', 'POR', 'SAC', 'SAS', 'SEA', 'TOR', 'UTA', 'VAN', 'WAS', 'WSB']

With the data-frame and sorter, which is a category-order, we can do the following in pandas 15.1:

# Convert Tm-column to category and in set the sorter as categories hierarchy
# Youc could also do both lines in one just appending the cat.set_categories()
df.Tm = df.Tm.astype("category")
df.Tm.cat.set_categories(sorter, inplace=True)

print(df.Tm)
Out[48]: 
0    CHH
1    VAN
2    TOT
3    OKC
4    DAL
Name: Tm, dtype: category
Categories (38, object): [TOT < ATL < BOS < BRK ... UTA < VAN < WAS < WSB]

df.sort_values(["Tm"])  ## 'sort' changed to 'sort_values'
Out[49]: 
   Age   G           Player   Tm  Year     id
2   22  60      Ratko Varda  TOT  2001  13950
0   27   6    Cedric Hunter  CHH  1991   2967
4   31  81  Adrian Caldwell  DAL  1997   6169
3   34  52       Ryan Bowen  OKC  2009   6141
1   25   7    Maurice Baker  VAN  2004   5335
  • 1
    Nice! I haven't seen the category type of pandas in action yet, it looks very useful – cd98 Dec 2 '14 at 18:22
  • 1
    thank you. elegant, dare i say – Quetzalcoatl Jun 4 '15 at 21:03
  • Merging the two lines, to have something like df.Tm.astype('...').cat.set_cat... didn't work for me. Had to type it out as you have it here – raphael Nov 8 '17 at 17:24
  • the values in the df that are not in the sorter are replaced by nans.... – Claudiu Creanga Jan 15 at 15:32

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