I'd like to read a 1D numpy array in Python and generate two other numpy arrays:

- first one is the input, if there is no 'nan' values. Otherwise, input with 'nan' values replaced by '0'
- second one is a mask, 1='input value is not 'nan'', and '0'='input value is nan''

For example:

```
a = numpy.array([1,2,numpy.nan,4])
```

would give

```
[1,2,0,4]
[1,1,0,1]
```

What's the most efficient way to do this in python ?

Thanks

`numpy.ma.masked_invalid()`

. It kind of gives you both of these. – Sven Marnach Oct 24 '13 at 13:23