-- Pushing Object Oriented Programming to the Next Level -- (original) (raw)
Metaclass Programming In Python:
David Mertz, Ph.D., Gnosis Software
Michele Simionato, Ph.D., University of Pittsburgh
December 2002
Most readers are already familiar with the concepts of object-oriented programming: inheritance, encapsulation, polymorphism. But the creation of objects of a given class, with certain parents, is usually thought of as a "just so" operation. It turns out that a number of new programming constructs become either easier, or possible at all, when you can customize the process of object creation. Metaclasses enable certain types of "aspect oriented programming," e.g. allow you to enhance classes with features like tracing capabilities, object persistence, exception logging, and more.
An Object Oriented Programming Review
Let us start with a 30-second review of just what OOP is. In an object oriented programming language, you can define_classes_, whose purpose is to bundle together related data and behaviors. These classes can inherit some or all of their qualities from their parents, but they can also define attributes (data) or methods (behaviors) of their own. At the end of the process, generally classes act as templates for the creation of instances (also called simply objects, at times). Different instances of the same class will typically have different data, but it will come in the same shape--e.g. the Employee
objects bob
and jane
both have a .salary
and a .room_number
, but not the same room and salary as each other.
Some OOP languages, including Python, allow for objects to be_introspective_ (also called reflective). That is, an instrospective object is able to describe itself: What class does the instance belong to? What ancestors does that class have? What methods and attributes are available to the object? Introspection lets a function or method that handles objects make decisions based on what kind of object it is passed. Even without introspection, functions frequently branch based on instance data--e.g. the route to jane.room_number
differs from that to bob.room_number
because they are in different rooms. With introspection, you can also safely calculate the bonus jane
gets, while skipping the calculation for bob' say, because 'jane
has a .profit_share
attribute, or becausebob
is an instance of the subclass Hourly(Employee)
.
A Metaprogramming Rejoinder
The basic OOP system sketched above is quite powerful. But there is one element brushed over in the description. In Python (and other languages), classes are themselves objects that can be passed around and introspected. Since objects, as stated, are produced using classes as templates, what acts as a template for producing classes? The answer, of course, is_metaclasses_.
Python has always had metaclasses. But the machinery involved in metaclasses became much better exposed with Python 2.2. Specifically, with version 2.2, Python stopped being a language with just one special (mostly hidden) metaclass that created every class object. Now programmers can subclass the aboriginal metaclass type
and even dynamically generate classes with varying metaclasses. Of course, just because you_can_ manipulate metaclasses in Python 2.2, that does not explain why you might want to.
You do not need to use custom metaclasses to manipulate the production of classes, moreover. A slightly less brain-melting concept is a class factory. An ordinary function can return a class that was dynamically created within the function body. In traditional Python syntax, you can write:
Old fasioned Python 1.5.2 class factory
Python 1.5.2 (#0, Jun 27 1999, 11:23:01) [...] Copyright 1991-1995 Stichting Mathematisch Centrum, Amsterdam
def class_with_method(func): ... class klass: pass ... setattr(klass, func.name, func) ... return klass ... def say_foo(self): print 'foo' ... Foo = class_with_method(say_foo) foo = Foo() foo.say_foo() foo
The factory function class_with_method()
dynamically creates and returns a class that contains the method/function passed into the factory. The class itself is manipulated within the function body before being returned. The new
module provides a more concise spelling, but without the same options for custom code within the body of the class factory, e.g.:
Class factory in the [new] module (python)
from new import classobj Foo2 = classobj('Foo2',(Foo,),{'bar':lambda self:'bar'}) Foo2().bar() 'bar' Foo2().say_foo() foo
In all these cases, the behaviors of the class (Foo
, Foo2
) are not directly written as code, but are instead created by calling functions at runtime, with dynamic arguments. And it should be emphasized that it is not merely the instances that are so dynamically created, but the classes themselves.
Metaclasses: A Solution Looking For A Problem?
Metaclasses
are deeper magic than 99% of users should ever worry about. If you wonder whether you need them, you don't (the people who actually need them know with certainty that they need them, and don't need an explanation about why). --Tim Peters
Methods (i.e. of classes), like plain functions, can return objects. So in that sense it is obvious that class factories can be classes just as easily as they can be functions. In particular, Python 2.2+ provides a special class called type
that is just such a class factory. Of course, readers will recognize type()
as a less ambitious built-in function of older Python versions--fortunately, the behaviors of the oldtype()
function are maintained by the type
class (i.e.type(obj)
returns the type/class of the object obj
). The new type
class works as a class factory in just the same way that the function new.classobj
long has:
'type' as class factory metaclass (python)
X = type('X',(),{'foo':lambda self:'foo'}) X, X().foo() (<**class** '__main__.X'>, 'foo')
But since type
is now a (meta)class, you are free to subclass it:
'type' descendent as class factory (python)
class ChattyType(type): ... def new(cls, name, bases, dct): ... print "Allocating memory for class", name ... return type.new(cls, name, bases, dct) ... def init(cls, name, bases, dct): ... print "Init'ing (configuring) class", name ... super(ChattyType, cls).init(name, bases, dct) ... X = ChattyType('X',(),{'foo':lambda self:'foo'}) Allocating memory for class X Init'ing (configuring) class X X, X().foo() (<**class** '__main__.X'>, 'foo')
The magic methods .__new__()
and .__init__()
are special, but in conceptually the same way they are for any other class. The .__init__()
method lets you configure the created object, the .__new__()
method lets you customize its allocation. The latter, of course, is not widely used, but exists for every Python 2.2 new-style class (usually inherited but not overridden).
There is one feature of type
descendents to be careful about; it catches everyone who first plays with metaclasses. The first argument to methods is conventionally called cls
rather than self
, because the methods operate on the produced class, not the metaclass. Actually, there is nothing special about this, all methods attach to their instances, and the instance of a metaclass is a class. A non-special name makes this more obvious:
Attaching class methods to produced classes (python)
class Printable(type): ... def whoami(cls): print "I am a", cls.name ... Foo = Printable('Foo',(),{}) Foo.whoami() I am a Foo Printable.whoami() Traceback (most recent call last): TypeError: unbound method whoami() [...]
All this surpisingly non-remarkable machinery comes with some syntax sugar that both makes working with metaclasses easier, and confuses new users. There are several elements to the extra syntax. The resolution order of these new variations is tricky though. Classes can inherit metaclasses from their ancestors--notice that this is not the same thing as having metaclasses as ancestors (another common confusion). For old-style classes, defining a global _metaclass_
variable can force a custom metaclass to be used. But most of the time, and the safest approach, is to set a _metaclass_
class attribute for a class that wants to be created via a custom metaclass. You must set the variable in the class definition itself since the metaclass is not used is the attribute is set later (after the class object has already been created). E.g.:
Setting metaclass with class attribute (python)
class Bar: ... metaclass = Printable ... def foomethod(self): print 'foo' ... Bar.whoami() I am a Bar Bar().foomethod() foo
Solving Problems With Magic (i)
So far, we have seen the basics of metaclasses. But putting metaclasses to work is more subtle. The challenge with utilizing metaclasses is that in typical OOP design, classes do not really do much. The inheritence structure of classes is useful to encapsulate and package data and methods, but it is typically instances that one works with in the concrete.
There are two general categories of programming tasks where we think metaclasses are genuinely valuable.
The first, and probably more common category is where you do not know at design time exactly what a class needs to do. Obviously, you will have some idea about it, but some particular detail might depend on information that is not available until later. "Later" itself can be of two sorts: (a) When a library module is used by an application; (b) At runtime when some situation exists. This category is close to what is often called "Aspect Oriented Programming" (AOP). Let us show what we think is an elegant example:
Metaclass configuration at runtime (python)
% cat dump.py #!/usr/bin/python import sys if len(sys.argv) > 2: module, metaklass = sys.argv[1:3] m = import(module, globals(), locals(), [metaklass]) metaclass = getattr(m, metaklass)
class Data:
def init(self):
self.num = 38
self.lst = ['a','b','c']
self.str = 'spam'
dumps = lambda self: self
str = lambda self: self.dumps()
data = Data() print data
% dump.py <__main__.Data instance at 1686a0>
As you would expect, this application prints out a rather generic description of the data
object (a conventional instance object). But if runtime arguments are passed to the application, we can get a rather different result:
Adding external serialization metaclass (python)
% dump.py gnosis.magic MetaXMLPickler <PyObject module="__main__" **class**="Data" id="720748">
The particular example uses the serialization style of_gnosis.xml.pickle
_, but the most current gnosis.magic
package also contains metaclass serializers MetaYamlDump
,MetaPyPickler
, MetaPrettyPrint
. Moreover, a user of thedump.py
"application" can impose the use of any "MetaPickler" she wishes, from any Python package that defines one. Writing an appropriate metaclass for this purpose will look something like:
Adding an attribute with a metaclass (python)
class MetaPickler(type): "Metaclass for gnosis.xml.pickle serialization" def init(cls, name, bases, dict): from gnosis.xml.pickle import dumps super(MetaPickler, cls).init(name, bases, dict) setattr(cls, 'dumps', dumps)
The remarkable achievement of this arrangement is that the application programmer need have no knowledge about what serialization will be used--nor even whether serialization or some other cross-sectional capability will be added at the command-line.
Perhaps the most common use of metaclasses is similar to that of MetaPicklers: adding, deleting, renaming, or substituting methods for those defined in the produced class. In our example a "native" Data.dump()
method is replaced by a different one from outside the application, at the time the class Data
is created (and therefore in every subsequent instance).
Solving Problems With Magic (ii)
There is a programming niche where classes are often more important than instances. In a recent Charming Python, David looked at "declarative mini-languages," which are Python libraries whose program logic is expressed directly in class declarations. In such cases, using metaclasses to affect the process of class creation can be quite powerful.
One class-based declarative framework is gnosis.xml.validity
. Under this framework, you declare a number of "validity classes" that express a set of constraints about valid XML documents. These declarations are very close to those contained in DTDs. For example, a "dissertation" document can be configured with the code:
'simple_diss.py' gnosis.xml.validity rules
from gnosis.xml.validity import * class figure(EMPTY): pass class _mixedpara(Or): _disjoins = (PCDATA, figure) class paragraph(Some): _type = _mixedpara class title(PCDATA): pass class _paras(Some): _type = paragraph class chapter(Seq): _order = (title, _paras) class dissertation(Some): _type = chapter
If you try to instantiate the dissertation
class without the right component subelements, a descriptive exception is raised; likewise for each of the subelements. The proper subelements will be generated from simpler arguments when there is only one, unambiguous, way of "lifting" the arguments to the correct types.
Even though validity classes are often (informally) based on a pre-existing DTD, instances of these classes print themselves as unadorned XML document fragments, e.g.:
Basic validity classes document creation
from simple_diss import * ch = LiftSeq(chapter, ('It Starts','When it began')) print ch It Starts When it began
By using a metaclass to create the validity classes, we can generate a DTD out of the class declarations themselves (and add an extra method to the classes while we do it).
Imposing metaclass during module import (python)
from gnosis.magic import DTDGenerator,
... import_with_metaclass,
... from_import d = import_with_metaclass('simple_diss',DTDGenerator) from_import(d,'**') ch = LiftSeq(chapter, ('It Starts','When it began')) print ch.with_internal_subset() ]> It Starts When it began
The package gnosis.xml.validity
knows nothing about DTDs and internal subsets. Those concepts and capabilities are introduced entirely by the metaclass DTDGenerator
, without_any_ change made to either gnosis.xml.validity
orsimple_diss.py
. DTDGenerator
does not substitute its own.__str__()
method into classes it produces--you can still print the unadorned XML fragment--but it a metaclass could easily modify such magic methods.
Meta Conveniences
The package gnosis.magic
contains several utilities for working with metaclasses, as well as some sample metaclasses you can use in aspect oriented programming. The most important of these utilities is import_with_metaclass()
. This function, utilized in the above example, lets you import a 3rd party module, but create all the module classes using a custom metaclass rather than type
. Whatever new capability you might want to impose on that 3rd party module can be defined in a metaclass that you create (or get from somewhere else altogether). gnosis.magic
contains some pluggable serialization metaclasses; some other package might contain tracing capabilities, or object persistence, or exception logging, or something else.
The import_with_metclass()
function illustrates several qualities of metaclass programming:
import_with_metaclass() from [gnosis.magic] (python)
def import_with_metaclass(modname, metaklass): "Module importer substituting custom metaclass" class Meta(object): metaclass = metaklass dct = {'module':modname} mod = import(modname) for key, val in mod.dict.items(): if inspect.isclass(val): setattr(mod, key, type(key,(val,Meta),dct)) return mod
One notable style in this function is that an ordinary classMeta
is produced using the specified metaclass. But onceMeta
is added as an ancestor, its descendent is also produced using the custom metaclass. In principle, a class like Meta
could carry with it both a metaclass producer and a set of inheritable methods--the two aspects of its bequest are orthogonal.
Resources
A useful book on metaclasses is:
Putting Metaclasses to Work by Ira R. Forman, Scott Danforth, Addison-Wesley 1999
For metaclasses in Python specifically, Guido van Rossum's essay, Unifying types and classes in Python 2.2 is useful:
David Mertz' Charming Python installment on declarative mini-languages can be found at:
http://gnosis.cx/publish/programming/charming_python_b11.txt
About The Authors
David Mertz thought his brain would melt when he wrote about continuations or semi-coroutines, but he put the gooey mess back in his skull cavity and moved on to metaclasses. David may be reached at [email protected]; his life pored over athttp://gnosis.cx/publish/. Suggestions and recommendations on this, past, or future, columns are welcomed. His forthcoming book Text Processing in Python has a webpage athttp://gnosis.cx/TPiP/.
Michele Simionato is a plain, ordinary, theoretical physicist who was driven to Python by a quantum fluctuation that could well have passed without consequences, had he not met David Mertz. He will let his readers judge the final outcome.