# Avoid duplicate random values

Following this post, I can generate random integers with a fixed sum. However, I want to avoid any duplicate numbers (such as `20` in the following example):

``````import numpy as np

_sum = 100
n = 5
rnd_array = np.random.multinomial(_sum, np.ones(n)/n, size=1)[0]
rnd_array

>>> array([20, 24, 20, 21, 15])
``````

How could I achieve this?

• The answer is in this link. This question has been answered I guess stackoverflow.com/questions/22842289/… – Althaf1467 Jan 22 '19 at 11:42
• @Althaf1467 - In terms of generating random numbers then yes, the post you linked to solves that. But I also want the random values to sum up to a specific value at the same time. – Joseph Jan 22 '19 at 12:19

`random.sample` returns a list of unique values (see the docs.) It's called like this:

``````sample = random.sample(range(100), 5)
``````

Edit: For using this to get fixed sum, I suggest reading this thread where the important code is:

``````from random import*
def f(n,s):
r=min(s,1)
x=uniform(max(0,r-(r-s/n)*2),r)
return n<2and[s]or sample([x]+f(n-1,s-x),n)
``````
• Your answer solves half the the problem :). The random values generated need to sum to a specific value (in my example, 5 random integers should sum to `100`). – Joseph Jan 22 '19 at 12:18
• @Joseph I made an edit to show how `sample` is used in that context – Charles Landau Jan 22 '19 at 12:37
• Thanks for the edit. The float values generated are indeed random and sum to 100. To get it to integer values which I needed, I used `x = int(uniform(max(0, r - (r - s/n) * 2), r))`. Thank you again :) – Joseph Jan 22 '19 at 13:03