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)