Numpy dtypes are so strict. So it doesnt produce an array like `np.array([False, True, np.nan])`

, it returns `array([ 0., 1., nan])`

which a `float`

array.

If you try to change a bool array like:

```
x= np.array([False, False, False])
x[0] = 5
```

will retrun `array([ True, False, False])`

... wow

But I think `5>np.nan`

cannot be `False`

, it should be `nan`

, `False`

would mean that a data comparison has been made and it returned the result like `3>5`

, which I think it's a disaster. Numpy produces data that we actually don't have. If it could have returned `nan`

then we could handle it with ease.

So I tried to modify the behavior with a function.

```
def ngrater(x, y):
with np.errstate(invalid='ignore'):
c=x>y
c=c.astype(np.object)
c[np.isnan(x)] = np.nan
c[np.isnan(y)] = np.nan
return c
a = np.array([np.nan,1,2,3,4,5, np.nan, np.nan, np.nan]) #9 elements
b = np.array([0,1,-2,-3,-4,-5, -5, -5, -5]) #9 elements
ngrater(a,b)
```

returns:
`array([nan, False, True, True, True, True, nan, nan, nan], dtype=object)`

But I think whole memory structure is changed in that way. Instead of getting a memory-block with uniform unites, it will produce a block of pointers, where the real data is somewhere else. So function may perform slower and probably that's why Numpy doesn't do that. We need a `superBool`

dtype which will contain also `np.nan`

, or we just have to use float arrays `+1:True, -1:False, nan:nan`