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I've been trying to write some code which will add the numbers which fall into a certain range and add a corresponding number to a list. I also need to pull the range from a cumsum range.

numbers = []
i=0

z = np.random.rand(1000)
arraypmf = np.array(pmf)
summation = np.cumsum(z)

while i < 6:
   index = i-1

    a = np.extract[condition, z] # I can't figure out how to write the condition.
    length = len(a)
    length * numbers.append(i)
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1  
It's not clear what you're trying to do here. Why are you creating that index variable you never use? What does the cumsum have to do with anything? What is length * numbers.append(i) supposed to do? (list.append returns None, and even if it returned whatever you're expecting it to, you're not assigning the result of length * <that> to anything.) What is the loop supposed to loop over? (Since you never modify i, i < 6 will be true forever, and you'll just keep appending 0 to numbers.) Maybe if you can explain in pseudocode what you don't know how to write? –  abarnert Feb 5 '13 at 0:43

2 Answers 2

up vote 4 down vote accepted

I'm not entirely sure what you're trying to do, but the easiest way to do conditions in numpy is to just apply them to the whole array to get a mask:

mask = (z >= 0.3) & (z < 0.6)

Then you can use, e.g., extract or ma if necessary—but in this case, I think you can just rely on the fact that True==1 and False==0 and do this:

zm = z * mask

After all, if all you're doing is summing things up, 0 is the same as not there, and you can just replace len with count_nonzero.

For example:

In [588]: z=np.random.rand(10)
In [589]: z
Out[589]: 
array([ 0.33335522,  0.66155206,  0.60602815,  0.05755882,  0.03596728,
        0.85610536,  0.06657973,  0.43287193,  0.22596789,  0.62220608])
In [590]: mask = (z >= 0.3) & (z < 0.6)
In [591]: mask
Out[591]: array([ True, False, False, False, False, False, False,  True, False, False], dtype=bool)
In [592]: z * mask
Out[592]: 
array([ 0.33335522,  0.        ,  0.        ,  0.        ,  0.        ,
        0.        ,  0.        ,  0.43287193,  0.        ,  0.        ])
In [593]: np.count_nonzero(z * mask)
Out[593]: 2
In [594]: np.extract(mask, z)
Out[594]: array([ 0.33335522,  0.43287193])
In [595]: len(np.extract(mask, z))
Out[595]: 2
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Here is another approach to do (what I think) you're trying to do:

import numpy as np
z = np.random.rand(1000)
bins = np.asarray([0, .1, .15, 1.])

# This will give the number of values in each range
counts, _ = np.histogram(z, bins)

# This will give the sum of all values in each range
sums, _ = np.histogram(z, bins, weights=z)
share|improve this answer
1  
I gave up on guessing the OP's intentions as hopeless, but this does seem like a pretty good guess… –  abarnert Feb 5 '13 at 1:23

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