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I have a dataframe, df:

df:
            val
date
2012-01-01  4.2      
2012-01-02  3.7
2012-01-03  6.2
2012-01-04  1.2
2012-01-05  2.4
2012-01-06  2.3

What I want to create is a column that starts at 0 for a specified date and fills in the column accordingly (assume the date in this case is 2012-01-04):

df2:
            val  tracking
date
2012-01-01  4.2  -3
2012-01-02  3.7  -2
2012-01-03  6.2  -1
2012-01-04  1.2  0
2012-01-05  2.4  1
2012-01-06  2.3  2

I tried using np.arange() but was having trouble centering on the row I needed. The date column is set up as an index (pandas df).

Thanks.

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1 Answer 1

up vote 1 down vote accepted

I think the easiest way to do this is to do it in two parts:

df['tracking'] = pd.np.arange(len(df))

In [12]: df
Out[12]: 
            val  tracking
date                     
2012-01-01  4.2         0
2012-01-02  3.7         1
2012-01-03  6.2         2
2012-01-04  1.2         3
2012-01-05  2.4         4
2012-01-06  2.3         5

df['tracking'] -= df.ix['2012-01-04']['tracking']

In [14]: df
Out[14]: 
            val  tracking
date                     
2012-01-01  4.2        -3
2012-01-02  3.7        -2
2012-01-03  6.2        -1
2012-01-04  1.2         0
2012-01-05  2.4         1
2012-01-06  2.3         2
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Andy, Thanks for the help. df is actually a series currently. When I do df['tracking'] = pd.np.arange(len(df)) I get 'tracking not in this series!' how should I handle this? Thanks. –  user1911092 Feb 4 '13 at 18:51
    
You could simply make it a DataFrame: df = pd.DataFrame(df) :) Note: it's probably good practice to only call DataFrames df! –  Andy Hayden Feb 4 '13 at 18:52
    
Agreed. This is really helpful. Thank you. –  user1911092 Feb 4 '13 at 18:59
    
As a matter of practice, should I convert Series to one column DF's when doing joins and merges? Or is it really a case by case basis? –  user1911092 Feb 4 '13 at 19:00
    
@user1911092 I'm not sure I understand the question, can't you only do joins with DataFrames? Perhaps that should be another question. –  Andy Hayden Feb 4 '13 at 20:45

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