# Python numpy.random.normal only positive values

I want to create a normal distributed array with numpy.random.normal that only consists of positive values. For example the following illustrates that it sometimes gives back negative values and sometimes positive. How can I modify it so it will only gives back positive values?

``````>>> import numpy
>>> numpy.random.normal(10,8,3)
array([ -4.98781629,  20.12995344,   4.7284051 ])
>>> numpy.random.normal(10,8,3)
array([ 17.71918829,  15.97617052,   1.2328115 ])
>>>
``````

I guess I could solve it somehow like this:

``````myList = numpy.random.normal(10,8,3)

while item in myList <0:
# run again until all items are positive values
myList = numpy.random.normal(10,8,3)
``````
-
What do you mean by 'only give back positive values'? What do you want it to do if it would return a negative value? –  Patashu May 1 '13 at 3:15
Well I would like to modify the code so it will only give back positive values. –  ustroetz May 1 '13 at 3:16
By definition, a normal distribution extends over all possible values, positive and negative. You cannot reconcile 'normal distribution' with 'only positive values', so my question to you is... what do you REALLY want? –  Patashu May 1 '13 at 3:17
I need normal distributed values that I feed into a function. The function does only take positive values. –  ustroetz May 1 '13 at 3:21
The binomial distribution is similar to normal distribution, but discrete, and ranges only over positive values: en.wikipedia.org/wiki/Binomial_distribution –  Patashu May 1 '13 at 3:29