There is a confusion for me for some time: is there a scene that we do need to use rich comparison in Python?

I read the official doc here, but it only gives how it works not why we need it.

A snippet of the doc:

The truth of x==y does not imply that x!=y is false. may describe a scene that we need rich comparison. In this scene, we can make __eq__ and __ne__ both return False for disabling the comparsion or any other purpose. (We can implement this by using __cmp__)

But this just a guess, I have never encountered such a requirement in a real project yet.

Does anyone need to use rich comparison indeed or is there any other scenario where we need to use rich comparison in theory?

Maybe my example of x==y and x!=y caused some confusion, sorry for that. Let me make it a bit clearer:
Are there any scenario where rich comparison can help but __cmp__ can not?

  • 1
    I am not sure if I understand your question... but say for example, you want to compare a custom class object against another object of the same class. For that you need to define the so called "rich comparison" operators.
    – bgusach
    Jan 8 '14 at 7:55
  • 1
    I don't understand how returning false on both == and != results in "disabling comparison". It is enabled and gives counter-intuitive results. If I wanted to disabled it I would fire up an exception. I kind of look at it as the "rule of three" in c++ operators are not disable if you make them do nonsense. You got to hide/protect/delete them.
    – luk32
    Jan 8 '14 at 7:56
  • @ikaros45: The OP wants to know in what scenario you'd make __eq__ and __ne__ return False for the same other object.
    – Martijn Pieters
    Jan 8 '14 at 7:57
  • @ikaros45 For that, I can define __cmp__. Actually I want to know whether there is a scene that rich comparison can help, but __cmp__ can't?
    – WKPlus
    Jan 8 '14 at 8:00
  • 1
    NumPy. Further explanation to follow... Jan 8 '14 at 8:02

You don't even need to return boolean values. The point the documentation is making is that you are given total freedom over what the overloaded methods can return; Python does not enforce that __eq__ and __ne__ return consistent boolean values.

The SQLAlchemy project has overloaded the rich comparison operators altogether to return something else entirely. If you use:

model1.column == model2.column


model1.column != model2.column


model1.column < model2.column

where model1 and model2 are both SQLAlchemy table models then you don't get a boolean value, what you get is a SQL query filter instead.

You use the return values to construct SQL queries:

model1.filter(model1.column <= model2.column)

would result in a SQL query along the lines of:

select model1.*
from model1
left join model2 on model1.foreign_key == model2.primary_key
    model1.column <= model2.column

entirely in Python code, using Python rich comparison syntax.

  • 1
    google app engine and I believe Django do the same thing with query filters in a very analogous way. I have no idea who did it first (but I don't think it was GAE)...
    – mgilson
    Jan 8 '14 at 8:10
  • @mgilson: the concept has been around for a long, long time. SQLAlchemy predates both Django and GAE, but I don't think it was the first project to use it. Numpy uses similar techniques, I think it might be older than SQLAlchemy.
    – Martijn Pieters
    Jan 8 '14 at 8:16
  • Nice post. A further question: does python design rich comparison for similar purpose? Or SQLAIchemy and other projects find it as a smart way to use it like this?
    – WKPlus
    Jan 8 '14 at 8:25
  • @WKPlus: It is part of the Python philosophy to not dictate too strictly what special methods should and should not accept and return.
    – Martijn Pieters
    Jan 8 '14 at 8:30
  • Thanks, the explanation in PEP 207 is what I need. Thanks for the example.
    – WKPlus
    Jan 8 '14 at 8:40

NumPy uses rich comparisons to vectorize ==, !=, <, etc, just like it does with most other operators. For example,

>>> x = numpy.array([1, 2, 3, 4, 5])
>>> y = numpy.array([2, 2, 1, 4, 4])
>>> x == y
array([False,  True, False,  True, False], dtype=bool)

When arrays x and y are compared with any comparison operator, NumPy applies the operator (roughly) elementwise and returns an array of results. This is useful, for example, to apply an operation to the cells of x that fit the condition:

>>> x[x==y] = 6
>>> x
array([1, 6, 3, 6, 5])

Here, I've selected all elements of x that equal the corresponding elements of y, and set them equal to 6.

  • An very good example, that's what I want. But a further question: does python design rich comparison for similar purpose? Or NumPy find it as a smart way to use it like this?
    – WKPlus
    Jan 8 '14 at 8:27
  • 2
    @WKPlus: This is specifically the primary reason rich comparisons were added to the language. To quote PEP 207: "The main motivation comes from NumPy, whose users agree that A<B should return an array of elementwise comparison outcomes; they currently have to spell this as less(A,B) because A<B can only return a Boolean result or raise an exception." Jan 8 '14 at 8:30

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.