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
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
__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:].infoto keep the original
ndarraydoes not need a super-class call for
MaskedArraydoes (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
(Note: this is not the same as this question, since I already "solved" the