Is there a function in numpy that determines whether strings should be integers or floating point numbers and automatically converts them? For instance, I often have a collection of records which are parsed from a text file using a combination of `str.strip()`

and `str.split()`

. Then I get something like

```
List = [['1','a','.3'],
['2','b','-.5']]
```

Which is then converted using `numpy.rec.fromrecords`

:

```
In [1227]: numpy.rec.fromrecords(List)
Out[1227]:
rec.array([('1', 'a', '.3'), ('2', 'b', '-.5')],
dtype=[('f0', '|S1'), ('f1', '|S1'), ('f2', '|S3')])
```

In R, there is a function called `type.convert`

to which vectors/columns of character strings are passed and it will determine what the type for the column should be (i.e. if it's a mix of strings and numbers it will remain a character vector). Excel does this also (based on its first 6 elements, if I recall correctly)...

Is there such a function in NumPy/Python? I know I could probably write a function to test whether each element of a column could be converted to an integer, etc., but is there anything built in? I know in all the examples the prescription is to specify the dtypes explicitly, but I would like to skip this step. Thanks.