I remember reading this blog about the fuzzywuzzy library (looking into another question), which can do this:

```
pip install fuzzywuzzy
```

You can use its partial_ratio function to "fuzzy match" the strings:

```
In [11]: from fuzzywuzzy.fuzz import partial_ratio
In [12]: partial_ratio('AAAB', 'the AAAB inc.')
Out[12]: 100
```

Which seems confident about it being a good match!

```
In [13]: partial_ratio('AAAB', 'AAPL')
Out[13]: 50
In [14]: partial_ratio('AAAB', 'Google')
Out[14]: 0
```

We can take the best match in the actual company list (assuming you have it):

```
In [15]: co_list = ['AAAB', 'AAPL', 'GOOG']
In [16]: df.Company.apply(lambda mistyped_co: max(co_list,
key=lambda co: partial_ratio(mistyped_co, co)))
Out[16]:
0 AAAB
1 AAAB
2 AAAB
3 AAAB
Name: Company, dtype: object
```

*I strongly suspect there is something in scikit learn or a numpy library to do this more efficiently on large datasets... but this should get the job done.*

If you don't have the company list you'll probably have to do something more clevererer...