I am using numpy and i want to generate an array of size `n`

with random integers from `a`

to `b`

[upper bound exclusive] that are not in the array `arr`

(if it helps, all values in `arr`

are unique). I want the probability to be distributed uniformly among the other possible values. I am aware I can do it in this way:

```
randlist = np.random.randint(a, b, n)
while np.intersect1d(randlist, arr).size > 0:
randlist = np.random.randint(a, b, n)
```

But this seems really inefficent. What would be the fastest way to do this?