Essentially you need to do an `argsort`

, what implementation you need depends if you want to use external libraries (e.g. NumPy) or if you want to stay pure-Python without dependencies.

The question you need to ask yourself is: Do you want the

- indices that would sort the array/list
- indices that the elements would have in the sorted array/list

Unfortunately the example in the question doesn't make it clear what is desired because both will give the same result:

```
>>> arr = np.array([1, 2, 3, 100, 5])
>>> np.argsort(np.argsort(arr))
array([0, 1, 2, 4, 3], dtype=int64)
>>> np.argsort(arr)
array([0, 1, 2, 4, 3], dtype=int64)
```

## Choosing the `argsort`

implementation

If you have NumPy at your disposal you can simply use the function `numpy.argsort`

or method `numpy.ndarray.argsort`

.

An implementation without NumPy was mentioned in some other answers already, so I'll just recap the fastest solution according to the benchmark answer here

```
def argsort(l):
return sorted(range(len(l)), key=l.__getitem__)
```

## Getting the indices that would sort the array/list

To get the indices that would sort the array/list you can simply call `argsort`

on the array or list. I'm using the NumPy versions here but the Python implementation should give the same results

```
>>> arr = np.array([3, 1, 2, 4])
>>> np.argsort(arr)
array([1, 2, 0, 3], dtype=int64)
```

The result contains the indices that are needed to get the sorted array.

Since the sorted array would be `[1, 2, 3, 4]`

the argsorted array contains the indices of these elements in the original.

- The smallest value is
`1`

and it is at index `1`

in the original so the first element of the result is `1`

.
- The
`2`

is at index `2`

in the original so the second element of the result is `2`

.
- The
`3`

is at index `0`

in the original so the third element of the result is `0`

.
- The largest value
`4`

and it is at index `3`

in the original so the last element of the result is `3`

.

## Getting the indices that the elements would have in the sorted array/list

In this case you would need to apply `argsort`

**twice**:

```
>>> arr = np.array([3, 1, 2, 4])
>>> np.argsort(np.argsort(arr))
array([2, 0, 1, 3], dtype=int64)
```

In this case :

- the first element of the original is
`3`

, which is the third largest value so it would have index `2`

in the sorted array/list so the first element is `2`

.
- the second element of the original is
`1`

, which is the smallest value so it would have index `0`

in the sorted array/list so the second element is `0`

.
- the third element of the original is
`2`

, which is the second-smallest value so it would have index `1`

in the sorted array/list so the third element is `1`

.
- the fourth element of the original is
`4`

which is the largest value so it would have index `3`

in the sorted array/list so the last element is `3`

.

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