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I have a list of Python objects, representing several classes. The classes obviously differ, but nevertheless have a couple of common attributes (with different values for each object). For example:

class Super1:
    def __init__(self, value1, value2):
        self.value1 = value1
        self.value2 = value2
        #Lot's of other stuff

class Sub1(Super1):
    def __init__(self, value1, value2, value3):
        Super1.__init__(self, value1, value2)
        self.value3 = value3
        #Lot's of stuff

class Sub2(Super1):
    def __init__(self, value1, value2, value4):
        Super1.__init__(self, value1, value2)
        self.value4 = value4
        #Lot's of stuff

objects = [Sub1(1.,2.,3.), Sub1(213.,2.,23.), Sub2(23.,10.,0.2), Sub1(3.,2.,12.)]

Now, for both convenience and performance, I would need to have to a NumPy array of all these values. I know I can read them like this:

np.array([objects[ii].value1 for ii in range(4)])

But I also need to change the values, in both the array form as well as individually within instance methods. Is it possible to somehow dynamically link the object attributes and the corresponding values in the arrays, by using pointers or something?

And no, the objects here does not have to be a list. Suggestions welcome.

share|improve this question
It is a physical model, the objects representing different physical objects. I planned to use numpy, as I need to perform matrix algebra on the values. – HenriV Apr 10 '13 at 14:22
why not np.array([o.value1 for o in objects])? – Benjamin Hodgson Apr 10 '13 at 15:05
Ok, but that does not solve the actual issue... – HenriV Apr 10 '13 at 15:34

2 Answers 2

up vote 3 down vote accepted

Numpy arrays are "a contiguous one-dimensional segment of computer memory", so there really is no way you can create a numpy array that is made up of chunks of memory here and there.

The only possibility is to go the other way around, first create the array, then asign single element slices of that array to your objects, e.g.

class Super1(object):
    def __init__(self, value1):
        self._value1 = value1

    def value1(self):
        return self._value1[0]

    def value1(self, value):
        self._value1[0] = value

And now:

>>> a = np.arange(4)
>>> obj = [Super1(a[j:j+1]) for j in xrange(len(a))]
>>> obj[0].value1
>>> obj[0].value1 = 5
>>> a
array([5, 1, 2, 3])
>>> obj[2].value1
>>> a[2] = 8
>>> obj[2].value1
share|improve this answer
Excellent, that's it! Thanks! For the record, to make your code work, I had to remove the argument value2 from the constructor and add a self. to the return command. – HenriV Apr 11 '13 at 6:15
@HenriV Oops! Had to change those two myself to make the code work, forgot to paste the corrected code in here. – Jaime Apr 11 '13 at 6:58

Use Properties if you want to modify setting attributes of objects.

This solution works with an index for an array

class Super(object):

    def value1(self):
        return self.array1[self.index]

    def value1(self, value):
        self.array1[self.index] = value

    def __init__(self, array1, index):
        self.array1 = array
        self.index = index

You will need to create the array first and then create the objects.

This is another solution with one array for an object:

class Super(object):

    def value1(self):
        return self.array[0]

    def value1(self, value):
        self.array[0] = value

    def __init__(self, array):
        self.array = array
share|improve this answer
I am not sure if I understood correctly, but I think I implemented your second solution, and a change in the numpy array is not reflected in the instance attributes or vice versa...? – HenriV Apr 10 '13 at 15:32

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