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I've looked at the numpy/scipy documentation, but I can't find any builtin function to do this.

I'd like to convert raw numbers (temperatures, as it happens) representing a time series from their raw state to an indexed series (i.e. first value is 100, subsequent values are scaled against the first raw value). So, if the raw values are (15,7.5,5), the indexed values would be (100,50,33) (mental calculation, hence int values).

This is moderately easy to code oneself, but I'd like to use a builtin if possible. A homebrew is:

def indexise(seq,base=0,scale=100):
    if not base:
    return (i*scale/base for i in seq)
share|improve this question
up vote 1 down vote accepted

If seq is a numpy array, then instead of (i*scale/base for i in seq), you can use a numpy vectorized operation scale*seq/base.

Here's how I might modify your function:

import numpy as np

def indexise(seq, base=None, scale=100):
    seq = np.asfarray(seq)
    if base is None:
        base = seq[0]
    result = scale*seq/base
    return result

For example,

In [14]: indexise([15, 7.5, 5, 3, 10, 12])
array([ 100.        ,   50.        ,   33.33333333,   20.        ,
         66.66666667,   80.        ])

In [15]: indexise([15, 7.5, 5, 3, 10, 12], base=10)
Out[15]: array([ 150.,   75.,   50.,   30.,  100.,  120.])
share|improve this answer
Cool, thank you! I'm surprised there's nothing like this already. – Marcin Sep 26 '13 at 2:08
I'm sorry Marcin, I never intended to cause offence I did not see your points just read and commented on your comment. – Greg Sep 26 '13 at 15:25
@Greg You don't need to tell people to accept an answer, especially when the question is new. I generally wait until there is a perfect answer (here one supplying a builtin), or give it a few days before accepting the best one. – Marcin Sep 26 '13 at 16:43

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