# Whats the most pythonic way to calculate percentage changes on a list of numbers

I have a list of floating point numbers and I want to generate another list of period returns from my first list.

This is a run of the mill implementation (not tested - and OBVIOUSLY no error checking/handling):

``````a = [100,105,100,95,100]

def calc_period_returns(values, period):
output = []
startpos, endpos = (period, len(values)-1)

while True:
current = values[startpos]
previous = values[startpos-period]
ret = 100*((current-previous)/(1.0*previous))
output.append(ret)
startpos += period
if startpos > endpos:
break
return output

calc_period_returns(a,1)

# Expected output:
# [5.0, -4.7619047619047619, -5.0, 5.2631578947368416]
``````

Is there a more pythonic way of doing this - perhaps using list comprehension and maps?

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what is the desired output? –  Roman Bodnarchuk Apr 19 '12 at 11:00
@RomanBodnarchuk: I have updated the question with an expected output –  Homunculus Reticulli Apr 19 '12 at 11:05
see update to the answer. –  Roman Bodnarchuk Apr 19 '12 at 11:09
@HomunculusReticulli: Your code is buggy. If you wan't us to give any definite solution, please explain how your output is calculated. –  Abhijit Apr 19 '12 at 11:11
my bad, snippet was too buggy. I corrected it now. –  Homunculus Reticulli Apr 19 '12 at 11:15

Here you go:

``````>>> [100.0 * a1 / a2 - 100 for a1, a2 in zip(a[1:], a)]
[5.0, -4.7619047619047592, -5.0, 5.2631578947368354]
``````

Since you want to compare neighbor elements of a list, you better create a list of pairs you are interested in, like this:

``````>>> a = range(5)
>>> a
[0, 1, 2, 3, 4]
>>> zip(a, a[1:])
[(0, 1), (1, 2), (2, 3), (3, 4)]
``````

After that it is just a simple math to extract a percentage change from a pair of numbers.

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Were you aware of this Terminology or you deciphered from his code? –  Abhijit Apr 19 '12 at 11:13
@Abhijit slightly:) Just mapped input to output:) –  Roman Bodnarchuk Apr 19 '12 at 11:25

I don't know how large your list of numbers is going to be, but if you are going to process large amounts of numbers, you should have a look at numpy. The side effect is that calculations look a lot simpler.

With numpy, you create an array for your data

``````>>> import numpy as np
>>> a = np.array([100,105,100,95,100], dtype=float)
``````

and work with arrays as if they were simple numbers

``````>>> np.diff(a) / a[:-1] * 100.
[ 5.         -4.76190476 -5.          5.26315789]
``````
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