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Let's say I have two data sets. I have a week-by-week tally of users who tried my service.

trials = [2,2,2,8,8,4]

And I have a week by week tally of trial users who signed up.

conversions = [1,0,2,4,8,3]

I can do it pretty quickly this way:

conversion_rate = []
for n in range(len(trials)):

Can you think of a more elegant way?

Bonus: The result of this is a list of ints [0, 0, 1, 0, 1, 0] , not a list of floats. What's the easiest way to get a list of floats?

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At first I was going to answer with zipWith, but then I realized that it doesn't exist in python. How sad... –  Daenyth Sep 16 '10 at 22:55

4 Answers 4

up vote 12 down vote accepted

Use zip:

[c/t for c,t in zip(conversions, trials)]

The most elegant way to get floats is to upgrade to Python 3.x.

If you need to use Python 2.x then you could write this:

>>> [float(c)/t for c,t in zip(conversions, trials)]
[0.5, 0.0, 1.0, 0.5, 1.0, 0.75]

Alternatively you could add this at the start of your file:

from __future__ import division

But note that this will affect the behaviour of division everywhere in your program, so you need to check carefully to see if there are any places where you want integer division and if so write // instead of /.

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How about

trials = [2,2,2,8,8,4]
conversions = [1,0,2,4,8,3]
conversion_rate = [conversion / trials[n] for n, conversion in enumerate(conversions)]
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zip of course. Mark Byers' is a much better answer and I'd upvote it if I had enough rep –  Day Sep 16 '10 at 22:51
+1 for effort :) –  Skilldrick Sep 16 '10 at 22:55
@Skilldrick Heh thanks. Now I can upvote Mark's answer ;) –  Day Sep 16 '10 at 22:56

Without using zip and float:

[1.0*conversions[n]/trials[n] for n in xrange(len(trials))]
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If you happen to be using numpy, you can use the following ideas:

import numpy as np
conversion_rate = np.divide(trials, conversions)

or, using broadcasting:

import numpy as np
trials = np.array([2, 2, 2, 8, 8, 4])
conversions = np.array([1, 0, 2, 4, 8, 3])
conversion_rate = 1.0 * trials / conversions
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