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I'm trying to subclass numpy's MaskedArray to add an attribute, but seem to fail getting the proper result out.

I started out by following the example for subclassing a numpy.ndarray, which works fine.

Then I tried subclassing a numpy.ma.MaskedArray instead, as follows:

import numpy as np

class MyMaskedArray(np.ma.MaskedArray):

    def __new__(cls, input_array, info=None):
        obj = np.asarray(input_array).view(cls)
        obj.info = info
        return obj

    def __array_finalize__(self, obj):
        if obj is None: return
        self.info = getattr(obj, 'info', None)
        super(MyMaskedArray, self).__array_finalize__(obj)

arr = np.arange(5)
obj = MyMaskedArray(arr, info='information')
print obj.info
print obj[1:].info

which results in

information
None

I had expected "information" twice.

Replacing the line obj = np.asarray(input_array).view(cls) with obj = np.ma.MaskedArray(input_array).view(cls) or obj = np.ma.MaskedArray.__new__(cls, input_array) didn't solve that problem (I went this way, since I'd like to pass *args and **kwargs to __new__ in future incarnations of the subclass.)

Note that I also had to add a call to the MaskedArray.__array_finalize in my subclass' __array_finalize__, in contrast to the example for an ndarray subclass; if I don't do that, the _mask attribute is not found.

Perhaps someone could enlighten me:

  • how to get obj[1:].info to keep the original obj.info

  • why the ndarray does not need a super-class call for __array_finalize__, but MaskedArray does (more of a bonus question).

I would like to subclass MaskedArray instead of writing a container class, since the latter would lose several conveniences that come with MaskedArrays.

(Note: this is not the same as this question, since I already "solved" the __init__ / __new__ issue.)

share|improve this question
    
you need to at least also define __array_wrap__ since masked array defines that. That may already be most of it actually... –  seberg Jan 28 '13 at 18:44
    
@seberg Why would I not be able to use the default __array_wrap__ from MaskedArray? The ndarray subclassing example does nothing special there, just calling the parents __array_wrap__ (so no real need to override it). –  Evert Jan 29 '13 at 9:34
1  
Because that is how MaskedArray is build. While the default __array_wrap__ just calls __array_finalize__, the MA one does not. You can dislike that, you could probably even change it, but that does not change the fact that at this time you have to define it (as well as __getitem__). –  seberg Jan 29 '13 at 12:47
    
I ended up with overriding __getitem__. __array_wrap__ didn't seem to do anything; I'd assume because that's only useful for ufuncs, and not for slicing. –  Evert Feb 5 '13 at 13:34

1 Answer 1

up vote 2 down vote accepted

In order for your slice to work as you wish, you may want to overload __getitem__:

def __getitem__(self, item):
    out = np.ma.MaskedArray.__getitem__(self, item)
    out.info = self.info
    return out

Ditto for __setitem__.

If your info attribute is relatively simple, such as in your example, you may want to look at the _optinfo attribute of MaskedArray, which was designed for this purpose: it's just a dictionary storing some information that must be kept somehow. Here's an example:

class MyMaskedArray(np.ma.MaskedArray):

    def __new__(cls, input_array, info=None):
        obj = np.asarray(input_array).view(cls)
        obj._optinfo['info'] = info
        return obj

    @property
    def info(self):
        return self._optinfo.get('info', None)

Note that here, .info is a read-only property, but it's straightforward to make it writable.

About __array_finalize__

I'm not sure I understand your question: ndarray is itself the superclass. MaskedArray is a subclass of ndarray and as such needs to define a __array_finalize__ method that tells in particular how to set the mask (via the _mask argument). Check this link for more information on subclassing.

In your example, you use your own __array_finalize__ to set your .info attribute. In that case, you do have to call the parent method MaskedArray.__array_finalize__, it's basic Python subclassing. Note that you don't have to explicitly define __array_finalize__ if you go the _optinfo way...

Note

  • The __array_prepare__ and __array_wrap__ methods are actually used to prepare an instance of a ndarray subclass before applying a function to it and to process the result of the function
share|improve this answer
    
The subclassing ndarray example does not override __getitem__, as it appears it can use __array_finalize__ to deal with slices. Why can't MaskedArray not use this? As far as calling the parents method when overriding: I agree, it's what I'd do (and did), but again, the example given does not call the parents __array_finalize__; so my second question can also be phrased as: why not (call __array_finalize__)? –  Evert Jan 29 '13 at 9:26

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