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s = pd.DataFrame([['2012','A',3],['2012','B',8],['2011','A',20],['2011','B',30]], columns=['Year','Manager','Return'])

Out[1]:     
   Year Manager  Return    
0  2012       A       3    
1  2012       B       8    
2  2011       A      20    
3  2011       B      30

I would like to create a rank on year. So in year 2012, Manager B is 1. In 2011, Manager B is 1 again.

I struggled with the pandas rank function for awhile and DO NOT want to resort to a for loop.


The issue i'm having is with the additional code (didnt think this would be relevant before):

s = pd.DataFrame([['2012', 'A', 3], ['2012', 'B', 8], ['2011', 'A', 20], ['2011', 'B', 30]], columns=['Year', 'Manager', 'Return'])
b = pd.DataFrame([['2012', 'A', 3], ['2012', 'B', 8], ['2011', 'A', 20], ['2011', 'B', 30]], columns=['Year', 'Manager', 'Return'])

s= s.append(b)
s['Rank'] = s.groupby(['Year'])['Return'].rank(ascending=False)

raise Exception('Reindexing only valid with uniquely valued Index '
Exception: Reindexing only valid with uniquely valued Index objects

Any ideas?
This is the real data structure I am using. Been having trouble re-indexing..

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1 Answer 1

It sounds like you want to group by the Year, then rank the Returns in descending order:

import pandas as pd
s = pd.DataFrame([['2012', 'A', 3], ['2012', 'B', 8], ['2011', 'A', 20], ['2011', 'B', 30]],
                 columns=['Year', 'Manager', 'Return'])
s['Rank'] = s.groupby(['Year'])['Return'].rank(ascending=False)
print(s)

yields

   Year Manager  Return  Rank
0  2012       A       3     2
1  2012       B       8     1
2  2011       A      20     2
3  2011       B      30     1

The error message:

ValueError: cannot reindex from a duplicate axis

occurs because there are duplicate values in the index. You can avoid the problem by constructing s to have unique values after appending:

s = s.append(b, ignore_index=True)

yields

In [51]: s
Out[51]: 
   Year Manager  Return
0  2012       A       3
1  2012       B       8
2  2011       A      20
3  2011       B      30
0  2012       A       3
1  2012       B       8
2  2011       A      20
3  2011       B      30

Or, after appending, s could be given a unique index using reset_index:

s = s.append(b)
s.reset_index(drop=True, inplace=True)
share|improve this answer
    
@user2514296 this looks right, not sure what you think is "off"... –  Andy Hayden Jul 11 '13 at 23:19
    
The issue i'm having is with the additional code (didnt think this would be relevant before): –  user2514296 Jul 12 '13 at 12:04

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