How to prevent Numpy from splitting up an array-like object

If I consider the following simple class:

``````class Quantity(object):

def __init__(self, value, unit):
self.unit = unit
self.value = value

def __getitem__(self, key):
return Quantity(self.value[key], unit=self.unit)

def __len__(self):
return len(self.value)
``````

and create an instance:

``````import numpy as np
q = Quantity(np.array([1,2,3]), 'degree')
print(repr(np.array(q)))
``````

Then if I pass this object to Numpy, it will split up the object into an object array of 3 `Quantity` instances:

``````array([<__main__.Quantity object at 0x1073a0d50>,
<__main__.Quantity object at 0x1073a0d90>,
<__main__.Quantity object at 0x1073a0dd0>], dtype=object)
``````

This is due to the presence of the `__len__` and `__getitem__` methods - if I remove either of them, then the object does not get split up:

``````array(<__main__.Quantity object at 0x110a4e610>, dtype=object)
``````

I would like to still keep `__len__` and `__getitem__`, but is there a way to prevent Numpy from splitting up the object?

EDIT: I am interested in solutions other than making `Quantity` an ndarray sub-class

-

Is this what you're looking for?

``````class Quantity(object):

def __init__(self, value, unit):
self.unit = unit
self.value = value

def __getitem__(self, key):
return Quantity(self.value[key], unit=self.unit)

def __len__(self):
return len(self.value)

def __array__(self):
return self.value
``````

`np.array` uses the `__array__` method

``````In [11]: q
Out[11]: <__main__.Quantity at 0x1042bdf90>

In [12]: np.array(q)
Out[12]: array([ 1.,  2.,  3.])

In [13]: print(repr(np.array(q)))
array([ 1.,  2.,  3.])

In [14]: len(q)
Out[14]: 3

In [15]: q[1]
Out[15]: <__main__.Quantity at 0x1042bdd50>

In [16]: q[0]
Out[16]: <__main__.Quantity at 0x1042bdd90>

In [17]: q[0].value
Out[17]: 1.0
``````
-
gist.github.com/keflavich/5921957 for a little more detailed example –  keflavich Jul 3 '13 at 19:30
this seems to be the only solution, so I will accept it (though in practice, we can't use `__array__` because it interferes with `__array_priority__`) - thanks! –  astrofrog Jul 4 '13 at 13:07