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In the Python data model reference section on slots there is a list of notes on using __slots__. I am thoroughly confused by the 1st and 6th items, because they seem to be contradicting each other.

First item:

  • When inheriting from a class without __slots__, the __dict__ attribute of that class will always be accessible, so a __slots__ definition in the subclass is meaningless.

Sixth item:

  • The action of a __slots__ declaration is limited to the class where it is defined. As a result, subclasses will have a __dict__ unless they also define __slots__ (which must only contain names of any additional slots).

It seems to me these items could be better worded or shown through code, but I have been trying to wrap my head around this and am still coming up confused. I do understand how __slots__ are supposed to be used, and I am trying to get a better grasp on how they work.

The Question:

Can someone please explain to me in plain language what the conditions are for inheritance of slots when subclassing?

(Simple code examples would be helpful but not necessary.)


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4 Answers 4

up vote 58 down vote accepted

As others have mentioned, the sole reason for defining __slots__ is to save some memory, when you have simple objects with a predefined set of attributes and don't want each to carry around a dictionary. This is meaningful only for classes of which you plan to have many instances, of course.

The savings may not be immediately obvious -- consider...:

>>> class NoSlots(object): pass
>>> n = NoSlots()
>>> class WithSlots(object): __slots__ = 'a', 'b', 'c'
>>> w = WithSlots()
>>> n.a = n.b = n.c = 23
>>> w.a = w.b = w.c = 23
>>> sys.getsizeof(n)
>>> sys.getsizeof(w)

From this, it would seem the with-slots size is larger than the no-slots size! But that's a mistake, because sys.getsizeof doesn't consider "object contents" such as the dictionary:

>>> sys.getsizeof(n.__dict__)

Since the dict alone takes 140 bytes, clearly the "32 bytes" object n is alleged to take are not considering all that's involved in each instance. You can do a better job with third-party extensions such as pympler:

>>> import pympler.asizeof
>>> pympler.asizeof.asizeof(w)
>>> pympler.asizeof.asizeof(n)

This shows much more clearly the memory footprint that's saved by __slots__: for a simple object such as this case, it's a bit less than 200 bytes, almost 2/3 of the object's overall footprint. Now, since these days a megabyte more or less doesn't really matter all that much to most applications, this also tells you that __slots__ is not worth the bother if you're going to have just a few thousand instances around at a time -- however, for millions of instances, it sure does make a very important difference. You can also get a microscopic speedup (partly due to better cache use for small objects with __slots__):

$ python -mtimeit -s'class S(object): __slots__="x","y"' -s's=S(); s.x=s.y=23' 's.x'
10000000 loops, best of 3: 0.37 usec per loop
$ python -mtimeit -s'class S(object): pass' -s's=S(); s.x=s.y=23' 's.x'
1000000 loops, best of 3: 0.604 usec per loop
$ python -mtimeit -s'class S(object): __slots__="x","y"' -s's=S(); s.x=s.y=23' 's.x=45'
1000000 loops, best of 3: 0.28 usec per loop
$ python -mtimeit -s'class S(object): pass' -s's=S(); s.x=s.y=23' 's.x=45'
1000000 loops, best of 3: 0.332 usec per loop

but this is somewhat dependent on Python version (these are the numbers I measure repeatably with 2.5; with 2.6, I see a larger relative advantage to __slots__ for setting an attribute, but none at all, indeed a tiny disadvantage, for getting it).

Now, regarding inheritance: for an instance to be dict-less, all classes up its inheritance chain must also have dict-less instances. Classes with dict-less instances are those which define __slots__, plus most built-in types (built-in types whose instances have dicts are those on whose instances you can set arbitrary attributes, such as functions). Overlaps in slot names are not forbidden, but they're useless and waste some memory, since slots are inherited:

>>> class A(object): __slots__='a'
>>> class AB(A): __slots__='b'
>>> ab=AB()
>>> ab.a = ab.b = 23

as you see, you can set attribute a on an AB instance -- AB itself only defines slot b, but it inherits slot a from A. Repeating the inherited slot isn't forbidden:

>>> class ABRed(A): __slots__='a','b'
>>> abr=ABRed()
>>> abr.a = abr.b = 23

but does waste a little memory:

>>> pympler.asizeof.asizeof(ab)
>>> pympler.asizeof.asizeof(abr)

so there's really no reason to do it.

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Thank you for the amazingly detailed response! –  jathanism Nov 29 '09 at 20:47
@synack, you're welcome! –  Alex Martelli Nov 29 '09 at 22:19
Also just a note that if you want subclasses without additional slots to maintain the slots defined in the parent, you have to give an empty definition in the subclass (e.g. __slots__ = ()) –  Michael Mior Jan 18 '13 at 7:53
class WithSlots(object):
    __slots__ = "a_slot"

class NoSlots(object):       # This class has __dict__

First Item

class A(NoSlots):            # even though A has __slots__, it inherits __dict__
    __slots__ = "a_slot"     # from NoSlots, therefore __slots__ has no effect

Sixth Item

class B(WithSlots):          # This class has no __dict__
    __slots__ = "some_slot"

class C(WithSlots):          # This class has __dict__, because it doesn't
    pass                     # specify __slots__ even though the superclass does.

You probably won't need to use __slots__ in the near future. It's only intended to save memory at the cost of some flexibility. Unless you have tens of thousands of objects it won't matter.

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Re-read the docs: this does something different than you intend, as slots is interpreted as an iterable. –  Roger Pate Nov 29 '09 at 19:37
From the docs: This class variable can be assigned a string, iterable, or sequence of strings with variable names used by instances. –  Georg Schölly Nov 29 '09 at 19:40
My apologies, though why did you rely on an inconsistent corner-case for an example? –  Roger Pate Nov 29 '09 at 19:47
I thought that was known. I also don't think it's a corner-case. For me, it's typically pythonic that you can use different types and Python figures out what to do with it. –  Georg Schölly Nov 29 '09 at 20:01
This is not duck-typing, an explicit type check has to be made and the value is treated differently. –  Roger Pate Nov 29 '09 at 20:04

From the answer you linked:

The proper use of __slots__ is to save space in objects. Instead of having a dynamic dict...

"When inheriting from a class without __slots__, the __dict__ attribute of that class will always be accessible", so adding your own __slots__ cannot prevent objects from having a __dict__, and cannot save space.

The bit about __slots__ not being inherited is a little obtuse. Remember that it's a magic attribute and doesn't behave like other attributes, then re-read that as saying this magic slots behavior isn't inherited. (That's really all there is to it.)

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Agreed that it is a little obtuse and could definitely benefit from the conciseness of your response. Thanks. –  jathanism Nov 30 '09 at 17:14

My understanding is as follows:

  • class X has no __dict__ <-------> class X and its superclasses all have __slots__ specified

  • in this case, the actual slots of the class are comprised from the union of __slots__ declarations for X and its superclasses; the behavior is undefined (and will become an error) if this union is not disjoint

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union is not disjoint is not a phrase from a plain English. :) As @Alex Martelli've shown it is not an error if slots sets are not disjoint. Otherwise -- nice summary. –  J.F. Sebastian Nov 29 '09 at 20:35

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