I have an array subclass, where some of the extra attributes are only valid for the object's original shape. Is there a way to make sure that all array shape changing operations return a normal numpy array instead of an instance of my class?

I've already written array_wrap, but this doesn't seem to have any effect on operations like `np.mean`

, `np.sum`

or `np.rollaxis`

. These all just return an instance of my class.

```
import numpy as np
class NewArrayClass(np.ndarray):
__array_priority__ = 3.0
def __array_wrap__(self, out_arr, context=None):
if out_arr.shape == self.shape:
out = out_arr.view(new_array)
# Do a bunch of class dependant initialization and attribute copying.
# ...
return out
else:
return np.asarray(out_arr)
A = np.arange(10)
A.shape = (5, 2)
A = arr.view(NewArrayClass)
# Would like this to be np.ndarray, but get new_array_class.
print type(np.sum(A, 0))
```

I figure I have to do something in `__new__`

or `__array_finalize__`

, but I haven't a clue what.

**Update:**
After carefully reading the numpy documentation on subclassing (http://docs.scipy.org/doc/numpy/user/basics.subclassing.html), all array shape changing operations are doing the 'new from template' operation. So the question becomes, how do you make the 'new from template' operation return ndarray instances instead of instances of my class. As far as I can tell, `__new__`

is never called within these functions.

**Alternative:**
Assuming the above is not possible, how do I at least identify in `__array_finalize__`

the new from template operation (as opposed to view casting)? This would at least let me dereference some attributes that are copied by reference. I could also set a flag or something telling the new instance that its shape is invalid.