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Let's say I have classes Base(object) and Derived(Base). These both implement a function foo, with Derived.foo overriding the version in Base.

However, in one of the methods, say Base.learn_to_foo, I want to call Base.foo instead of the derived version regardless of whether it was overridden. So, I call Base.foo(self) in that method:

class Base(object):
    # ...

    def learn_to_foo(self, x):
        y = Base.foo(self, x)
        # check if we foo'd correctly, do interesting stuff

This approach seems to work and from a domain standpoint, it makes perfect sense, but somehow it smells a bit fishy. Is this the way to go, or should I refactor?

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Why override foo in the first place, in a way that makes it unsuitable as replacement for Base.foo? –  delnan May 3 '11 at 15:05
@delnan: because it is suitable as a replacement everywhere except in learn_to_foo. –  larsmans May 3 '11 at 15:25

3 Answers 3

up vote 1 down vote accepted

The answer is NOT to use the super() function. The way you are doing is exactly right as you don't want to invoke the virtual method that is overridden in the super class. Since you seem to want the base class' exact implementation all the time, the only way is to get the base class' unbound method object back, bound it to self, which could be an instance of Base or Derived. Invoke the unbound method with self supplied explicitly as the first parameter gives you back a bound method. From this point forward, Base.foo will be acting on the instance self's data. This is perfectly acceptable and is the way Python deals with non-virtual method invocation. This is one of the nice things that Python allows you to do that Java does not.

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Thanks. Could you perhaps point me to any examples of this idiom in other code? –  larsmans May 3 '11 at 20:43

It is recommended:

def learn_to_foo(self, x):
  super(Derived, self).foo(x)

More information at http://docs.python.org/library/functions.html#super

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Calling super like that, the self doesn't need to be explictly specified. docs –  jtniehof May 3 '11 at 15:12
You was writting it and I was fixing the text, anyway thank you :-) –  Pih May 3 '11 at 15:13
This is what I'd to in Derived. But the point is, I'm calling Base.foo in a method of Base and don't want that to call overrides. I've updated the question to make this clearer. –  larsmans May 3 '11 at 15:27
I don't know why this answer has been voted up 3 times as it clearly does not address the problem @larsmans is asking. –  Y.H Wong May 3 '11 at 19:28
I gave an answer for what he had asked at the first moment, after he explained another thing. Only after he edited the question that became clear that he is not at Derived class. –  Pih May 3 '11 at 20:47

An alternative is to use the 'super' built-in:

super(Derived, self).foo(x)     # Python 2

super().foo(x)                  # Python 3
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Nope, same problem that I described in the comment at Pih's answer: we're not in Derived. –  larsmans May 3 '11 at 15:29
Apologies. Maybe you should have two methods in the Base class, one which does the Base foo functionality (say, called __Basefoo) and another foo which just calls __Basefoo, but can be overridden. In learn_to_foo we call __Basefoo. –  cdarke May 3 '11 at 16:23
Calling Base.foo() explicitly is not all that bad, but cdarke's solution here is also a very nice workaround. The need to do this smells a bit funny to me, though; generally polymorphism is a Good Thing. –  jtniehof May 3 '11 at 16:40
@jtniehof: the use case is the training algorithm for averaged perceptrons (Derived.learn_to_foo), part of which is to do prediction as if the averaged perceptron were an ordinary perceptron (Base.foo). However, outside of the training algorithm, prediction should be done with a more complex algorithm (Derived.foo). –  larsmans May 3 '11 at 20:41

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