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I have data ordered in a data frame (name: DF) having a structure such as

      Currency  Date        1Y     2Y     3Y
0     EUR       2013-09-25  0,198  0,307  0,485
1     EUR       2013-09-26  0,204  0,318  0,497
2     USD       2013-09-25  0,306  0,506  0,900
3     USD       2013-09-26  0,706  0,706  1,050

and I am now trying to calculate the differences between each row, i.e. taking differences between each consecutive date, setting first date to '0' - for each currency. I am hoping of obtaining a result such as

      Currency  Date        1Y     2Y     3Y
0     EUR       2013-09-25  0,000  0,000  0,000
1     EUR       2013-09-26  0,006  0,011  0,012
2     USD       2013-09-25  0,000  0,000  0,000
3     USD       2013-09-26  0,400  0,200  0,150

I have seen a similar question before using

DF_diff = DF.set_index('Date').diff()

But in that example there were no strings involved in the actual rows, and didn't have criteria on the (in this example) currency name.

How can I manage this? Any help would be very much appreciable.

share|improve this question
up vote 3 down vote accepted

You can group by 'Currency' and apply diff but first you need to convert the data to float, try this:

df.loc[:,'1Y':'3Y'] = df.loc[:,'1Y':'3Y'].applymap(lambda x: float(x.replace(",",".")))
df2 = df.set_index('Date').groupby('Currency').apply(lambda x: x.loc[:,'1Y':'3Y'].diff()).fillna(0)
print df2

Output:

               1Y     2Y     3Y
Date                           
2013-09-25      0      0      0
2013-09-26  0.006  0.011  0.012
2013-09-25      0      0      0
2013-09-26    0.4    0.2   0.15

To get the 'Currency' back and resetting the index you can do this:

df2['Currency'] = df.set_index('Date')['Currency']
df2['Date'] = df2.index
df2 = df2.reset_index(drop=True)
df2 = df2[['Currency','Date','1Y','2Y','3Y']]
print df2

Ouput:

  Currency        Date     1Y     2Y     3Y
0      EUR  2013-09-25      0      0      0
1      EUR  2013-09-26  0.006  0.011  0.012
2      USD  2013-09-25      0      0      0
3      USD  2013-09-26    0.4    0.2   0.15
share|improve this answer
    
Works like a clock, thanks! Is there a way to putting back the currency column and resetting the index again? :) @xndrme – gussilago Feb 21 '14 at 16:20
    
See the updated content on my answer ;) – xndrme Feb 21 '14 at 16:31
    
Hi again @xndrme. Your code-update is very much appreciated. However, when applying "diff" to my groupby-function, it seems that Python mess up the original order of the currencys. What's probably happening is that when I apply groupby currencies, Python also SORTS the data accordingly -> so e.g. if my original data is stored in order "EUR, CHF, DKK" the diff-command makes the data "CHF, DKK, EUR", i.e. when putting back the currency-labels, they obviously will be mis-labeled. Is there a way to maybe tell Python, not to order by currency, but leave the order as is? Thanks. – gussilago Feb 24 '14 at 9:09
    
If one reads the documentation, i'd probably be well off using sort=False within the groupby-function. Thanks! – gussilago Feb 24 '14 at 9:13

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