# random number python with gaussian distribution [closed]

I need to know how to generate 1000 random numbers between 500 and 600 that have a gaussian distribution and mu = 550 and sigma = 30 in python
any help would be great
thanks

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## closed as off-topic by ekhumoro, m59, Prashant Kumar, mdml, icodebusterDec 19 '13 at 3:26

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• "Questions asking for code must demonstrate a minimal understanding of the problem being solved. Include attempted solutions, why they didn't work, and the expected results. See also: Stack Overflow question checklist" – ekhumoro, m59, Prashant Kumar, mdml, icodebuster
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is this homework, if so please indicate that. –  Peter Wooster Jan 10 '13 at 21:23

Check the condition before adding the random value to the list.

from random import gauss
values = []
while len(values) < 1000:
value = gauss(550, 30)
if 500 < value < 600:
values.append(value)
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Once you truncate the distribution, it's no longer gaussian, so this doesn't quite answer the question. But it probably answers what the OP actually wants. –  abarnert Jan 10 '13 at 21:13
@abarnert: You're right. I don't see a use case for this. –  Matthias Jan 11 '13 at 6:52
Some electronic components can be seen as having truncated Gaussian distributed parameters, because the components that deviate too much have been discarded in production. –  Thomas Arildsen Sep 18 at 10:02

As written, what you're asking is impossible, and therefore there's no way to do it in Python.

A gaussian distribution with mu = 550 and sigma = 30 includes numbers outside of [500, 600]. Or, conversely, any distribution that fits within [500, 600] is not gaussian.

If you want a truncated gaussian distribution, that's easy—just use a filter to truncate, as Matthias and others suggested.

The way to think about a problem like this is this to break it down into smaller pieces, and work backward.

If you had an infinite stream of numbers within the truncated gaussian distribution, taking the first 1000 is easy. You could use a while loop, or a generator expression, or itertools.islice:

numbers = islice(tg_stream, 1000)

Now, how do you get that stream? Well, if you had an infinite stream number of numbers with the non-truncated gaussian distribution, you could just skip the ones that go out of bounds. You can do this with filter (itertools.ifilter in 2.x), a generator function, or a generator expression:

tg_stream = (number for number in g_stream if 500 <= number <= 600)

Now, how do you get that stream? Well, if you knew how to generate one of them, that's a trivial generator. You can write it with map (itertools.imap in 2.x), a generator function, or a generator expression:

def g_stream():
while True:
yield g_one()

Now, how do you generate one such number? Well, that's much easier to search for, so once you find random.gauss, it's easy:

g_one = functools.partial(random.gauss, 550, 30)

Then you can put it all back together and simplify things. (For example, you clearly don't need the g_one function; you can just call random.gauss each time through the loop.)

And what you end up with is going to be something equivalent to Matthias's answer.

If what you want is something different than a truncated gaussian distribution (but also not impossible), this should be enough to help you either solve the actual problem, or narrow down the question to something much simpler.

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I think you want the gauss function:

http://docs.python.org/2/library/random.html

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but how would i limit it to between 500 and 600 and generate 1000 number –  Gautambir Singh Soin Jan 10 '13 at 20:34
@duffymo: You can link directly to a function, instead of just linking to the whole module. Click the little paragraph symbol next to the function name, and you'll get docs.python.org/2/library/random.html#random.gauss. –  abarnert Jan 10 '13 at 21:14
Thank you, abarnert. –  duffymo Jan 10 '13 at 23:37

you could do:

import numpy as np

extras = np.random.normal(loc=550, scale=30, size=2000)
#actually you probably only need size=1100, since the likelihood of seeing a value more
#than 3 sigma away is pretty stinking small.

in_range = np.logical_and((extras > 500), (extras < 600))
set = extras[in_range][:1000]

If you get an index out of bounds error just increase size a little.

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