I have a list of elements, for example `L = [A, B, C]`

. Each element has an associated score for example `S = [5, 1, 4]`

.

I want to select an element from L according to its score in S, simply by generating a sort of cumulative probability distribution, where each element `L[i]`

corresponds to an interval in `(0,1]`

proportional to `S[i]`

. Then, a random number drawn in (0,1] maps to the selected element.

For the example given before, we can have the scores of `S`

represented as probabilities by normalizing on `5+1+4`

so we get `SS = [0.5, 0.1, 0.4]`

, and we map the elements of `L`

to intervals, such that:

```
B is mapped to (0, 0.1]
C is mapped to (0.1, 0.1+0.4]
A is mapped to (0.1+0.4, 0.5+0.5]
```

Now if I generate a random number `r`

in (0,1] (e.g. `r = random.random()`

), it will map to the corresponding element. For example if `r = 0.03`

we know that the element is B. And for instance, if `r = 0.73`

we know that the element is A ...

Is there a simple way in python to do this mapping between an element and an interval ?

I know that I can use `numpy.cumsum`

to generate the cumulative sum of SS, but how to map elements to intervals obtained from this cumulative sum ?