**Problem:**

Given an array of string data

```
dataSet = np.array(['kevin', 'greg', 'george', 'kevin'], dtype='U21'),
```

I would like a function that returns the indexed dataset

```
indexed_dataSet = np.array([0, 1, 2, 0], dtype='int')
```

and a lookup table

```
lookupTable = np.array(['kevin', 'greg', 'george'], dtype='U21')
```

such that

```
(lookupTable[indexed_dataSet] == dataSet).all()
```

is true. Note that the `indexed_dataSet`

and `lookupTable`

can both be permuted such that the above holds and that is fine (i.e. it is not necessary that the order of `lookupTable`

is equivalent to the order of first appearance in `dataSet`

).

**Slow Solution:**

I currently have the following slow solution

```
def indexDataSet(dataSet):
"""Returns the indexed dataSet and a lookup table
Input:
dataSet : A length n numpy array to be indexed
Output:
indexed_dataSet : A length n numpy array containing values in {0, len(set(dataSet))-1}
lookupTable : A lookup table such that lookupTable[indexed_Dataset] = dataSet"""
labels = set(dataSet)
lookupTable = np.empty(len(labels), dtype='U21')
indexed_dataSet = np.zeros(dataSet.size, dtype='int')
count = -1
for label in labels:
count += 1
indexed_dataSet[np.where(dataSet == label)] = count
lookupTable[count] = label
return indexed_dataSet, lookupTable
```

Is there a quicker way to do this? I feel like I am not using numpy to its full potential here.