I have a 3 column numpy array (named `data`

) that looks something like this:

```
[ "names", floating point #1, floating point #2,
"names", floating point #1, floating point #2,
"names", floating point #1, floating point #2,
"names", floating point #1, floating point #2,
"names", floating point #1, floating point #2,
"names", floating point #1, floating point #2 ]
```

where everything is actually of type String. I'm trying to select the rows that have floating point #2 less than 20. I first extract the 3rd column, convert it to an array of Floats (with `dataFloat = data3rdcol.astype("float")`

), and then index the rows in `data`

with `dataParsed = data[dataFloat<20,:]`

.

This extracts the rows I want, but in the process it strips off the exponential notation of the floating point numbers (6.7444e-6 becomes 6.7444). This ruins the data set, and I need it to stop. Any ideas?

`>>> a = numpy.array(['1e-6', '1e6'])`

`>>> a[a.astype('float')<20]`

`array(['1e-6'],`

`dtype='|S4')`

– Ignacio Vazquez-Abrams May 23 '14 at 0:09