I'm sorry in advance if this is a duplicated question, I looked for this information but still couldn't find it.

Is it possible to arrange a numpy array (or python list) by using the indexes of the N biggest elements in decreasing order very efficiently?

For instance, the array:

```
a = array([4, 1, 0, 8, 5, 2])
```

The indexes of the biggest elements in decreasing order would give (considering N = 6, all the elements are included):

8 --> 3

5 --> 4

4 --> 0

2 --> 5

1 --> 1

0 --> 2

```
result = [3, 4, 0, 5, 1, 2]
```

I know how to make it using a somewhat silly approach (like sorting the array and searching for each of the N numbers for their indexes), but I was wondering if is there any efficient library like bottleneck or heapq or maybe a pythonic approach to make this very fast. I have to apply it in several arrays with 300k elements each so that's why performance is an issue.

Thanks in advance!

**UPDATE**

I read the answers and decided to timeit them using a 300k of random integers, here are the results:

**solution 1:** `sorted(range(len(a)), key=lambda i:a[i])`

**time:** 230 ms

**solution 2:** `heapq.nlargest(len(a), zip(a, itertools.count()))`

**time:** 396 ms

**solution 3:** `heapq.nlargest(len(a), enumerate(a), key=operator.itemgetter(1))`

**time:** 864 ms

**solution 4:** `def f(a,N): return np.argsort(a)[::-1][:N] (N = len(a))`

**time: 104 ms**

Thanks a lot for the fast and very good answers!

`N < len(a)`

? – Superbest Apr 27 at 11:04