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Low and behold, I ran into a regression in numpy.choose after upgrading to 1.5.1. Past versions (and numeric) supported an, as far as I could tell, unlimited number of potential choices. The "new" choose is limited to 32. Here is a post where another user laments the regression.

I have a list with 100 choices (0-99) that I was using to modify an array. As a work around, I am using the following code. Understandably, it is 7 times slower than using choose. I am not a C programmer, and while I would to get in an fix the numpy issue, I wonder what other potentially faster work arounds exist. Thoughts?

d={...} #A dictionary with my keys and their new mappings
for key, value in d.iteritems():
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Do I understand correctly that the keys of d are the numbers 0 to 99? –  Sven Marnach Jul 19 '12 at 22:22
Yes. d are numbers. –  Jzl5325 Jul 19 '12 at 22:30

2 Answers 2

up vote 1 down vote accepted

I gather that d has the keys 0 to 99. In that case, the solution is really simple. First, write the values of d in a NumPy array values, in a way that d[i] == values[i] – this seems to be the natural data structure for these values anyway. Then you can access the new array with the values replaced by


If you want to modify array in place, simply do

array[:] = values[array]
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What is the array[:] functionality called? I want to learn more about exactly what is happening from the numpy documentation. –  Jzl5325 Jul 19 '12 at 23:49
@Jzl5325: This is slicing the whole array. It's actually not something specific to NumPy, but to Python in general. Check the official Python tutorial, it explains how slicing works. –  Sven Marnach Jul 19 '12 at 23:53
Gotcha. I had not used just [:] before, but can see a ton of use. The = syntax is what is throwing me (though it works beautifully). We are not assigning a variable, but running an if statement through an =. It reads "if value in the input array is equal to the index in the values array, replace the input array number with the value number"? Thanks! –  Jzl5325 Jul 20 '12 at 3:08
@Jzl5325: It's values[array] that is selecting the values. For an integer i, values[i] selects the value i should be translated to. Now imagine doing this for the whole array at once, and you get values[array]. The assignment is pretty straight-forward – it simply copies all the values from the new array created by values[array] into the old array. –  Sven Marnach Jul 20 '12 at 11:36

I'm not sure about efficiency and it's not in-place (nb: I don't use numpy that often - so somewhat rusty):

import numpy as np

d = {0: 5, 1: 3, 2: 20}
data = np.array([[1, 0, 2], [2, 1, 1], [1, 0, 1]])
new_data = np.array([d.get(i, i) for i in data.flat]).reshape(data.shape) # adapt for list/other
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The whole point of NumPy is to avoid Python loops in favour of implicit loops implemented in C. This code iterates over ever single value, so it's certainly not very fast. –  Sven Marnach Jul 19 '12 at 23:33
@SvenMarnach I'm aware of how numpy works. .flat is low level, a generation of an array from a list is low level, a re-shape isn't complex, so, as a kludge it's possibly not the worse one could come up with. It's also infinitely faster on 33 choices :) –  Jon Clements Jul 19 '12 at 23:38
If the array is huge, it might very well be slower than the original code even for 33 choices. –  Sven Marnach Jul 19 '12 at 23:50

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