# Methods for quickly calculating standard deviation of large number set in Numpy

What's the best(fastest) way to do this?

This generates what I believe is the correct answer, but obviously at N = 10e6 it is painfully slow. I think I need to keep the Xi values so I can correctly calculate the standard deviation, but are there any techniques to make this run faster?

``````def randomInterval(a,b):
r = ((b-a)*float(random.random(1)) + a)
return r

N = 10e6
Sum = 0
x = []
for sample in range(0,int(N)):
n = randomInterval(-5.,5.)
while n == 5.0:
n = randomInterval(-5.,5.) # since X is [-5,5)
Sum += n
x = np.append(x, n)

A = Sum/N

for sample in range(0,int(N)):
summation = (x[sample] - A)**2.0

standard_deviation = np.sqrt((1./N)*summation)
``````
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10e6 != 10**6. Based on the question I think you meant 1e6 on the 5th line. –  job Apr 12 '11 at 19:29
@job, you get my vote for best optimization of the day. That should give a good 10x speedup. –  Mark Ransom Apr 12 '11 at 19:35
As a note, your `summation` variable is being overwritten every time you go through the loop instead of being incremented. Also in Python 2.X you should use `xrange` instead of `range` so you don't create a very large list to act as the counter, when a generator is more efficient. –  JoshAdel Apr 12 '11 at 19:37
@job @JoshAdel... Ooops! Thanks. –  drinck Apr 12 '11 at 21:33

You made a decent attempt, but should make sure you understand this and don't copy explicitly since this is HW

``````import numpy as np
N = int(1e6)
a = np.random.uniform(-5,5,size=(N,))
standard_deviation = np.std(a)
``````

This assumes you can use a package like numpy (you tagged it as such). If you can, there are a whole host of methods that allow you to create and do operations on arrays of data, thus avoiding explicit looping (it's done under the hood in an efficient manner). It would be good to take a look at the documentation to see what features are available and how to use them:

http://docs.scipy.org/doc/numpy/reference/index.html

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Thanks! I think he made X as [-5,5) so np.random.uniform(-5,5,size=(N,)) wouldn't work, but this is definitely the route I should be taking. –  drinck Apr 12 '11 at 22:21

Using the formulas found on this wiki page for Variance, you could compute it in one loop without storing a list of the random numbers (assuming you didn't need them elsewhere).

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