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The index that I have in the dataframe (with 30 rows) is of the form:

Int64Index([171, 174,173, 172, 199..............
        ....175, 200])

The index is not strictly increasing because the data frame is the output of a sort(). I want to have add a column which is the series:

[1, 2, 3, 4, 5......................., 30]

How should I go about doing that?

Thanks.

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up vote 3 down vote accepted

How about this,

from pandas import *
idx = Int64Index([171, 174, 173])
df = DataFrame(index = idx, data =([1,2,3]))
print df

gives me,

     0
171  1
174  2
173  3

Is this what you are looking for?

share|improve this answer
    
Almost. So, in sum, I need to create another data frame which contains the rank/position of the row. And then, I need to join these. – Navneet Aug 28 '12 at 23:23
    
Yes you combine add this df to your existing dataframe by using df.combine_first(df2) – nitin Aug 29 '12 at 0:00

How about:

df['new_col'] = range(1, len(df) + 1)

Alternatively if you want the index to be the ranks and store the original index as a column:

df = df.reset_index()
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I stumbled on this question while trying to do the same thing (I think). Here is how I did it:

df['index_col'] = df.index

You can then sort on the new index column, if you like.

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1  
This one should be the accepted answer, I believe. – mSSM May 22 '15 at 9:38
    
No, that would be unsorted. – pacholik Jul 20 '15 at 13:59

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