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In Python, what is the purpose of __slots__ and what are the cases one should avoid this?

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6 Answers 6

up vote 185 down vote accepted

Quoting Jacob Hallen:

The proper use of __slots__ is to save space in objects. Instead of having a dynamic dict that allows adding attributes to objects at anytime, there is a static structure which does not allow additions after creation. This saves the overhead of one dict for every object that uses slots. While this is sometimes a useful optimization, it would be completely unnecessary if the Python interpreter was dynamic enough so that it would only require the dict when there actually were additions to the object.

Unfortunately there is a side effect to slots. They change the behavior of the objects that have slots in a way that can be abused by control freaks and static typing weenies. This is bad, because the control freaks should be abusing the metaclasses and the static typing weenies should be abusing decorators, since in Python, there should be only one obvious way of doing something.

Making CPython smart enough to handle saving space without __slots__ is a major undertaking, which is probably why it is not on the list of changes for P3k (yet).

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thanks for the excellent contribution. I've always wondered about __slots__ too. –  orokusaki Sep 29 '10 at 3:47
I'd like to see some elaboration on the "static typing"/decorator point, sans pejoratives. Quoting absent third parties is unhelpful. __slots__ doesn't address the same issues as static typing. For example, in C++, it is not the declaration of a member variable is being restricted, it is the assignment of an unintended type (and compiler enforced) to that variable. I'm not condoning the use of __slots__, just interested in the conversation. Thanks! –  hiwaylon Nov 28 '11 at 17:54
Python 3.3 fiinally got around to sme of the meory saving without __slots__by the use of shared key dictionaries for instances: python.org/dev/peps/pep-0412 –  jsbueno Feb 7 '13 at 17:09

You would want to use __slots__ if you are going to instantiate a lot (hundreds, thousands) of objects of the same class. __slots__ only exists as a memory optimization tool.

It's highly discouraged to use __slots__ for constraining attribute creation, and in general you want to avoid it because it breaks pickle, along with some other introspection features of python.

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Each python object has a __dict__ atttribute which is a dictionary containing all other attributes. e.g. when you type self.attr python is actually doing self.__dict__['attr']. As you can imagine using a dictionary to store attribute takes some extra space & time for accessing it.

However, when you use __slots__, any object created for that class won't have a __dict__ attribute. Instead, all attribute access is done directly via pointers.

So if want a C style structure rather than a full fledged class you can use __slots__ for compacting size of the objects & reducing attribute access time. A good example is a Point class containing attributes x & y. If you are going to have a lot of points, you can try using __slots__ in order to conserve some memory.

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No, an instance of a class with __slots__ defined is not like a C-style structure. There is a class-level dictionary mapping attribute names to indexes, otherwise the following would not be possible: class A(object): __slots__= "value",\n\na=A(); setattr(a, 'value', 1) I really think this answer should be clarified (I can do that if you want). Also, I'm not certain that instance.__hidden_attributes[instance.__class__[attrname]] is faster than instance.__dict__[attrname]. –  tzot Oct 15 '11 at 13:56

Slots are very useful for library calls to eliminate the "named method dispatch" when making function calls. This is mentioned in the SWIG documentation. For high performance libraries that want to reduce function overhead for commonly called functions using slots is much faster.

Now this may not be directly related to the OPs question. It is related more to building extensions than it does to using the slots syntax on an object. But it does help complete the picture for the usage of slots and some of the reasoning behind them.

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You have —essentially— no use for __slots__.

The time when you think you might need __slots__, you actually want to use Lightweight or Flyweight design patterns. These are cases when you no longer want to use purely Python objects. Instead, you want a Python object-like wrapper around an array, struct or numpy array.

class Flyweight( object ):
    def get( self, theData, index ):
        return theData[index]
    def set( self, theData, index, value ):
        theData[index]= value

The class-like wrapper has no attributes—it just provides methods that act on the underlying data. The methods can be reduced to class methods. Indeed, it could be reduced to just functions operating on the underlying array of data.

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What has Flyweight to do with slots? –  oefe Jan 24 '09 at 22:46
@oefe: I certainly don't get your question. I can quote my answer, if it helps "when you think you might need slots, you actually want to use ... Flyweight design pattern". That's what Flyweight has to do with slots. Do you have a more specific question? –  S.Lott Jan 24 '09 at 23:41
@oefe: Flyweight and __slots__ are both optimization techniques to save memory. __slots__ shows benefits when you have many many objects as well as Flyweight design pattern. The both solve the same problem. –  J.F. Sebastian Nov 29 '09 at 20:51
Is there a available comparison between using slots and using Flyweight regarding memory consumption and speed? –  kontulai Apr 23 '13 at 4:11

An attribute of a class instance has 3 properties: the instance, the name of the attribute, and the value of the attribute.

In regular attribute access, the instance acts as a dictionary and the name of the attribute acts as the key in that dictionary looking up value.

instance(attribute) --> value

In __slots__ access, the name of the attribute acts as the dictionary and the instance acts as the key in the dictionary looking up value.

attribute(instance) --> value

In flyweight pattern, the name of the attribute acts as the dictionary and the value acts as the key in that dictionary looking up the instance.

attribute(value) --> instance

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This is a good share, and won't fit well in a comment on one of the answers that also suggest flyweights, but it is not a complete answer to the question itself. In particular (in just context of the question): why Flyweight, and "what are the cases one should avoid ..." __slots__? –  Merlyn Morgan-Graham Jul 25 at 6:22
@Merlyn Morgan-Graham, it serves as a hint on which to pick: regular access, __slots__, or flyweight. –  Dmitry Rubanovich Jul 26 at 23:04

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