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I am absolutely new to Python and Panda and even though I have checked the documentation, I don't seem to understand the right way to index a Pandas DataFrame. I would like to divide a DataFrame full of stock prices by their respective initial values in order to index the different stocks to 100. I want to use this to compare their performance. The DataFrame looks like this:

>>> IndexPrices
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 157 entries, 1999-12-31 00:00:00 to 2012-12-31 00:00:00
Freq: M
Data columns:
MSCI WORLD :G U$                        148  non-null values
S&P 500 COMPOSITE                       148  non-null values
DAX 30 PERFORMANCE                      148  non-null values
RUSSELL 2000                            148  non-null values
FTSE 100                                148  non-null values
US Treasury Bond Yields 30 Year Bond    148  non-null values
dtypes: float64(6)

So far I have messed around with stuff like this, but it's not getting me anywhere...

IndexPrices.divide(IndexPrices[0:1])

Thanks for your help guys!

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1 Answer 1

up vote 9 down vote accepted
In [193]: df
Out[193]:
   A  B  C  D
a  1  8  9  1
b  5  4  3  6
c  4  6  1  3
d  1  0  2  9

In [194]: df.divide(df.ix[0] / 100)
Out[194]:
     A    B           C    D
a  100  100  100.000000  100
b  500   50   33.333333  600
c  400   75   11.111111  300
d  100    0   22.222222  900
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