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Myclass is a numpy.ndarray subclass, intended to represent a set of images that change over time. To each image there is a set of metadata, like time, ambient temperature and camera temperature. I've stored these metadata in a list of dictionaries, so that each dictionary corresponds to a layer in the array (myclass.metadata[0] is the dictionary that corresponds to the image in myclass[0]).

I've also overloaded getattr() to make the items in the dictionary accessible by their key, so that myclass.etemp yields e.g. [24.9, 25.0, 25.1].

When I slice my Myclass-object, how do I achieve that my attribute-array gets sliced the same way?

Now if I do myobject[1].etemp, I get [24.9, 25.0, 25.1], but I want [25.0].

This is my class:

class Stack(numpy.ndarray):
    props= [

    def __new__(cls, input_array, mdata=None):
        obj = numpy.asarray(input_array).view(cls)
        if isinstance(mdata, collections.Iterable): # when reading from text file
            obj.mdata = mdata
            obj.mdata = [arr.mdata[0] for arr in input_array] # when combining Stack-type objects
        return obj

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

    def __getattr__(self, name):
        if numpy.rank(self) < 3: # we're looking at a single slice
        if name == 'starttime':
            return self.mdata[0]['date']
        elif name == 'time':
            return [(item['date'] - self.mdata[0]['date']).total_seconds() for item in self.mdata]
        elif name in Stack.props:
            return [item[name] for item in self.mdata]
            raise AttributeError

What do I need to do to implement that behavior? Or are there other better way to store the metadata?

share|improve this question
Also may want to look into PyTables, a nice way of storing data and associated metadata. Super fast also! –  reptilicus May 2 '13 at 17:06
I am already using h5py to store the data on disk –  karlson May 2 '13 at 17:14

2 Answers 2

up vote 1 down vote accepted

You need to override the __getitem__ method.

class Foo(object):
    def __getitem__(self,items):
        print items

f = Foo()

This returns:

(1, 2, 3)
slice(1, 3, None)
(1, slice(1, 3, None), slice(2, 3, None))

Within your getitem, you'll need to slice the attributes appropriately as well handling the above cases.

share|improve this answer
Thank you, that's what I was failing at, but now it seems the problem is solved. I stumbled upon numpy.ndarray.__array__(). My __getitem__() checks now if self is of rank 3, and only then modifies the metadata. A new Stack object is returned on each call. –  karlson May 3 '13 at 10:13
Also I had to modify __getslice__(self, i, j) to call self[i:j:None], so that slices become extended slices and are passed to __getitem__(). Shouldn't that happen per default? –  karlson May 3 '13 at 10:21
For backward compatibility, __getslice__ is tried before __getitem__. So if the base class implements __getslice__, you will have to override that as well. –  mhsmith Jan 17 '14 at 0:29

Have your properties attached to your objects in array, and not to your array may be of help.

share|improve this answer
But wouldn't I then lose the ability to do something like myclass[0,0,0] and myclass[0:3]? That was my main reason for subclassing ndarray –  karlson May 2 '13 at 17:11

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