I get some surprising results when trying to evaluate
logical expressions on data that might contain `nan`

values (as defined in numpy).

I would like to understand why this results arise and how to implement the correct way.

What I don't understand is why these expressions evaluate to the value they do:

```
from numpy import nan
nan and True
>>> True
# this is wrong.. I would expect to evaluate to nan
True and nan
>>> nan
# OK
nan and False
>>> False
# OK regardless the value of the first element
# the expression should evaluate to False
False and nan
>>> False
#ok
```

Similarly for `or`

:

```
True or nan
>>> True #OK
nan or True
>>> nan #wrong the expression is True
False or nan
>>> nan #OK
nan or False
>>> nan #OK
```

How can I implement (in an efficient way) the correct boolean functions, handling also `nan`

values?

`numpy`

currently works.`NaN`

is a purely floating-point value. Boolean arrays can't hold`NaN`

s. Therefore, having a logical comparison return`NaN`

would break essentially everything. To get around that, a special`np.na`

(different from`np.nan`

) value was introduced, and has been temporarily removed. It does what you're wanting: github.com/numpy/numpy.org/blob/master/NA-overview.rst – Joe Kington Jun 24 '13 at 12:37