How does numpy scale values, when you convert an array from a float dtype to an integer dtype, if you have an array with a max value higher than what the integer type can hold?

```
In [9]: data_array.dtype
Out[9]: dtype('<f4')
In [11]: data_array.max()
Out[11]: 32767.0
In [16]: test = np.asarray(data_array, dtype=np.int8)
In [17]: test.max()
Out[17]: 127
In [18]: data_array.max()/test.max()
Out[18]: 258.00787
```

How did numpy arrive at a scale factor of 258?

Thanks for the help.