# ext/declarative.py # Copyright (C) 2005-2011 the SQLAlchemy authors and contributors # # This module is part of SQLAlchemy and is released under # the MIT License: http://www.opensource.org/licenses/mit-license.php """ Synopsis ======== SQLAlchemy object-relational configuration involves the combination of :class:`.Table`, :func:`.mapper`, and class objects to define a mapped class. :mod:`~sqlalchemy.ext.declarative` allows all three to be expressed at once within the class declaration. As much as possible, regular SQLAlchemy schema and ORM constructs are used directly, so that configuration between "classical" ORM usage and declarative remain highly similar. As a simple example:: from sqlalchemy.ext.declarative import declarative_base Base = declarative_base() class SomeClass(Base): __tablename__ = 'some_table' id = Column(Integer, primary_key=True) name = Column(String(50)) Above, the :func:`declarative_base` callable returns a new base class from which all mapped classes should inherit. When the class definition is completed, a new :class:`.Table` and :func:`.mapper` will have been generated. The resulting table and mapper are accessible via ``__table__`` and ``__mapper__`` attributes on the ``SomeClass`` class:: # access the mapped Table SomeClass.__table__ # access the Mapper SomeClass.__mapper__ Defining Attributes =================== In the previous example, the :class:`.Column` objects are automatically named with the name of the attribute to which they are assigned. To name columns explicitly with a name distinct from their mapped attribute, just give the column a name. Below, column "some_table_id" is mapped to the "id" attribute of `SomeClass`, but in SQL will be represented as "some_table_id":: class SomeClass(Base): __tablename__ = 'some_table' id = Column("some_table_id", Integer, primary_key=True) Attributes may be added to the class after its construction, and they will be added to the underlying :class:`.Table` and :func:`.mapper()` definitions as appropriate:: SomeClass.data = Column('data', Unicode) SomeClass.related = relationship(RelatedInfo) Classes which are constructed using declarative can interact freely with classes that are mapped explicitly with :func:`mapper`. It is recommended, though not required, that all tables share the same underlying :class:`~sqlalchemy.schema.MetaData` object, so that string-configured :class:`~sqlalchemy.schema.ForeignKey` references can be resolved without issue. Accessing the MetaData ======================= The :func:`declarative_base` base class contains a :class:`.MetaData` object where newly defined :class:`.Table` objects are collected. This object is intended to be accessed directly for :class:`.MetaData`-specific operations. Such as, to issue CREATE statements for all tables:: engine = create_engine('sqlite://') Base.metadata.create_all(engine) The usual techniques of associating :class:`.MetaData:` with :class:`.Engine` apply, such as assigning to the ``bind`` attribute:: Base.metadata.bind = create_engine('sqlite://') To associate the engine with the :func:`declarative_base` at time of construction, the ``bind`` argument is accepted:: Base = declarative_base(bind=create_engine('sqlite://')) :func:`declarative_base` can also receive a pre-existing :class:`.MetaData` object, which allows a declarative setup to be associated with an already existing traditional collection of :class:`~sqlalchemy.schema.Table` objects:: mymetadata = MetaData() Base = declarative_base(metadata=mymetadata) Configuring Relationships ========================= Relationships to other classes are done in the usual way, with the added feature that the class specified to :func:`~sqlalchemy.orm.relationship` may be a string name. The "class registry" associated with ``Base`` is used at mapper compilation time to resolve the name into the actual class object, which is expected to have been defined once the mapper configuration is used:: class User(Base): __tablename__ = 'users' id = Column(Integer, primary_key=True) name = Column(String(50)) addresses = relationship("Address", backref="user") class Address(Base): __tablename__ = 'addresses' id = Column(Integer, primary_key=True) email = Column(String(50)) user_id = Column(Integer, ForeignKey('users.id')) Column constructs, since they are just that, are immediately usable, as below where we define a primary join condition on the ``Address`` class using them:: class Address(Base): __tablename__ = 'addresses' id = Column(Integer, primary_key=True) email = Column(String(50)) user_id = Column(Integer, ForeignKey('users.id')) user = relationship(User, primaryjoin=user_id == User.id) In addition to the main argument for :func:`~sqlalchemy.orm.relationship`, other arguments which depend upon the columns present on an as-yet undefined class may also be specified as strings. These strings are evaluated as Python expressions. The full namespace available within this evaluation includes all classes mapped for this declarative base, as well as the contents of the ``sqlalchemy`` package, including expression functions like :func:`~sqlalchemy.sql.expression.desc` and :attr:`~sqlalchemy.sql.expression.func`:: class User(Base): # .... addresses = relationship("Address", order_by="desc(Address.email)", primaryjoin="Address.user_id==User.id") As an alternative to string-based attributes, attributes may also be defined after all classes have been created. Just add them to the target class after the fact:: User.addresses = relationship(Address, primaryjoin=Address.user_id==User.id) Configuring Many-to-Many Relationships ====================================== Many-to-many relationships are also declared in the same way with declarative as with traditional mappings. The ``secondary`` argument to :func:`.relationship` is as usual passed a :class:`.Table` object, which is typically declared in the traditional way. The :class:`.Table` usually shares the :class:`.MetaData` object used by the declarative base:: keywords = Table( 'keywords', Base.metadata, Column('author_id', Integer, ForeignKey('authors.id')), Column('keyword_id', Integer, ForeignKey('keywords.id')) ) class Author(Base): __tablename__ = 'authors' id = Column(Integer, primary_key=True) keywords = relationship("Keyword", secondary=keywords) As with traditional mapping, its generally not a good idea to use a :class:`.Table` as the "secondary" argument which is also mapped to a class, unless the :class:`.relationship` is declared with ``viewonly=True``. Otherwise, the unit-of-work system may attempt duplicate INSERT and DELETE statements against the underlying table. .. _declarative_synonyms: Defining Synonyms ================= Synonyms are introduced in :ref:`synonyms`. To define a getter/setter which proxies to an underlying attribute, use :func:`~.synonym` with the ``descriptor`` argument. Here we present using Python 2.6 style properties:: class MyClass(Base): __tablename__ = 'sometable' id = Column(Integer, primary_key=True) _attr = Column('attr', String) @property def attr(self): return self._attr @attr.setter def attr(self, attr): self._attr = attr attr = synonym('_attr', descriptor=attr) The above synonym is then usable as an instance attribute as well as a class-level expression construct:: x = MyClass() x.attr = "some value" session.query(MyClass).filter(MyClass.attr == 'some other value').all() For simple getters, the :func:`synonym_for` decorator can be used in conjunction with ``@property``:: class MyClass(Base): __tablename__ = 'sometable' id = Column(Integer, primary_key=True) _attr = Column('attr', String) @synonym_for('_attr') @property def attr(self): return self._attr Similarly, :func:`comparable_using` is a front end for the :func:`~.comparable_property` ORM function:: class MyClass(Base): __tablename__ = 'sometable' name = Column('name', String) @comparable_using(MyUpperCaseComparator) @property def uc_name(self): return self.name.upper() .. _declarative_sql_expressions: Defining SQL Expressions ======================== The usage of :func:`.column_property` with Declarative to define load-time, mapped SQL expressions is pretty much the same as that described in :ref:`mapper_sql_expressions`. Local columns within the same class declaration can be referenced directly:: class User(Base): __tablename__ = 'user' id = Column(Integer, primary_key=True) firstname = Column(String) lastname = Column(String) fullname = column_property( firstname + " " + lastname ) Correlated subqueries reference the :class:`Column` objects they need either from the local class definition or from remote classes:: from sqlalchemy.sql import func class Address(Base): __tablename__ = 'address' id = Column('id', Integer, primary_key=True) user_id = Column(Integer, ForeignKey('user.id')) class User(Base): __tablename__ = 'user' id = Column(Integer, primary_key=True) name = Column(String) address_count = column_property( select([func.count(Address.id)]).\\ where(Address.user_id==id) ) In the case that the ``address_count`` attribute above doesn't have access to ``Address`` when ``User`` is defined, the ``address_count`` attribute should be added to ``User`` when both ``User`` and ``Address`` are available (i.e. there is no string based "late compilation" feature like there is with :func:`.relationship` at this time). Note we reference the ``id`` column attribute of ``User`` with its class when we are no longer in the declaration of the ``User`` class:: User.address_count = column_property( select([func.count(Address.id)]).\\ where(Address.user_id==User.id) ) Table Configuration =================== Table arguments other than the name, metadata, and mapped Column arguments are specified using the ``__table_args__`` class attribute. This attribute accommodates both positional as well as keyword arguments that are normally sent to the :class:`~sqlalchemy.schema.Table` constructor. The attribute can be specified in one of two forms. One is as a dictionary:: class MyClass(Base): __tablename__ = 'sometable' __table_args__ = {'mysql_engine':'InnoDB'} The other, a tuple of the form ``(arg1, arg2, ..., {kwarg1:value, ...})``, which allows positional arguments to be specified as well (usually constraints):: class MyClass(Base): __tablename__ = 'sometable' __table_args__ = ( ForeignKeyConstraint(['id'], ['remote_table.id']), UniqueConstraint('foo'), {'autoload':True} ) Note that the keyword parameters dictionary is required in the tuple form even if empty. Using a Hybrid Approach with __table__ ======================================= As an alternative to ``__tablename__``, a direct :class:`~sqlalchemy.schema.Table` construct may be used. The :class:`~sqlalchemy.schema.Column` objects, which in this case require their names, will be added to the mapping just like a regular mapping to a table:: class MyClass(Base): __table__ = Table('my_table', Base.metadata, Column('id', Integer, primary_key=True), Column('name', String(50)) ) ``__table__`` provides a more focused point of control for establishing table metadata, while still getting most of the benefits of using declarative. An application that uses reflection might want to load table metadata elsewhere and simply pass it to declarative classes:: from sqlalchemy.ext.declarative import declarative_base Base = declarative_base() Base.metadata.reflect(some_engine) class User(Base): __table__ = metadata.tables['user'] class Address(Base): __table__ = metadata.tables['address'] Some configuration schemes may find it more appropriate to use ``__table__``, such as those which already take advantage of the data-driven nature of :class:`.Table` to customize and/or automate schema definition. See the wiki example `NamingConventions `_ for one such example. Mapper Configuration ==================== Declarative makes use of the :func:`~.orm.mapper` function internally when it creates the mapping to the declared table. The options for :func:`~.orm.mapper` are passed directly through via the ``__mapper_args__`` class attribute. As always, arguments which reference locally mapped columns can reference them directly from within the class declaration:: from datetime import datetime class Widget(Base): __tablename__ = 'widgets' id = Column(Integer, primary_key=True) timestamp = Column(DateTime, nullable=False) __mapper_args__ = { 'version_id_col': timestamp, 'version_id_generator': lambda v:datetime.now() } .. _declarative_inheritance: Inheritance Configuration ========================= Declarative supports all three forms of inheritance as intuitively as possible. The ``inherits`` mapper keyword argument is not needed as declarative will determine this from the class itself. The various "polymorphic" keyword arguments are specified using ``__mapper_args__``. Joined Table Inheritance ~~~~~~~~~~~~~~~~~~~~~~~~ Joined table inheritance is defined as a subclass that defines its own table:: class Person(Base): __tablename__ = 'people' id = Column(Integer, primary_key=True) discriminator = Column('type', String(50)) __mapper_args__ = {'polymorphic_on': discriminator} class Engineer(Person): __tablename__ = 'engineers' __mapper_args__ = {'polymorphic_identity': 'engineer'} id = Column(Integer, ForeignKey('people.id'), primary_key=True) primary_language = Column(String(50)) Note that above, the ``Engineer.id`` attribute, since it shares the same attribute name as the ``Person.id`` attribute, will in fact represent the ``people.id`` and ``engineers.id`` columns together, and will render inside a query as ``"people.id"``. To provide the ``Engineer`` class with an attribute that represents only the ``engineers.id`` column, give it a different attribute name:: class Engineer(Person): __tablename__ = 'engineers' __mapper_args__ = {'polymorphic_identity': 'engineer'} engineer_id = Column('id', Integer, ForeignKey('people.id'), primary_key=True) primary_language = Column(String(50)) Single Table Inheritance ~~~~~~~~~~~~~~~~~~~~~~~~ Single table inheritance is defined as a subclass that does not have its own table; you just leave out the ``__table__`` and ``__tablename__`` attributes:: class Person(Base): __tablename__ = 'people' id = Column(Integer, primary_key=True) discriminator = Column('type', String(50)) __mapper_args__ = {'polymorphic_on': discriminator} class Engineer(Person): __mapper_args__ = {'polymorphic_identity': 'engineer'} primary_language = Column(String(50)) When the above mappers are configured, the ``Person`` class is mapped to the ``people`` table *before* the ``primary_language`` column is defined, and this column will not be included in its own mapping. When ``Engineer`` then defines the ``primary_language`` column, the column is added to the ``people`` table so that it is included in the mapping for ``Engineer`` and is also part of the table's full set of columns. Columns which are not mapped to ``Person`` are also excluded from any other single or joined inheriting classes using the ``exclude_properties`` mapper argument. Below, ``Manager`` will have all the attributes of ``Person`` and ``Manager`` but *not* the ``primary_language`` attribute of ``Engineer``:: class Manager(Person): __mapper_args__ = {'polymorphic_identity': 'manager'} golf_swing = Column(String(50)) The attribute exclusion logic is provided by the ``exclude_properties`` mapper argument, and declarative's default behavior can be disabled by passing an explicit ``exclude_properties`` collection (empty or otherwise) to the ``__mapper_args__``. Concrete Table Inheritance ~~~~~~~~~~~~~~~~~~~~~~~~~~ Concrete is defined as a subclass which has its own table and sets the ``concrete`` keyword argument to ``True``:: class Person(Base): __tablename__ = 'people' id = Column(Integer, primary_key=True) name = Column(String(50)) class Engineer(Person): __tablename__ = 'engineers' __mapper_args__ = {'concrete':True} id = Column(Integer, primary_key=True) primary_language = Column(String(50)) name = Column(String(50)) Usage of an abstract base class is a little less straightforward as it requires usage of :func:`~sqlalchemy.orm.util.polymorphic_union`:: engineers = Table('engineers', Base.metadata, Column('id', Integer, primary_key=True), Column('name', String(50)), Column('primary_language', String(50)) ) managers = Table('managers', Base.metadata, Column('id', Integer, primary_key=True), Column('name', String(50)), Column('golf_swing', String(50)) ) punion = polymorphic_union({ 'engineer':engineers, 'manager':managers }, 'type', 'punion') class Person(Base): __table__ = punion __mapper_args__ = {'polymorphic_on':punion.c.type} class Engineer(Person): __table__ = engineers __mapper_args__ = {'polymorphic_identity':'engineer', 'concrete':True} class Manager(Person): __table__ = managers __mapper_args__ = {'polymorphic_identity':'manager', 'concrete':True} Mixin Classes ============== A common need when using :mod:`~sqlalchemy.ext.declarative` is to share some functionality, often a set of columns, across many classes. The normal Python idiom would be to put this common code into a base class and have all the other classes subclass this class. When using :mod:`~sqlalchemy.ext.declarative`, this need is met by using a "mixin class". A mixin class is one that isn't mapped to a table and doesn't subclass the declarative :class:`Base`. For example:: class MyMixin(object): __table_args__ = {'mysql_engine': 'InnoDB'} __mapper_args__= {'always_refresh': True} id = Column(Integer, primary_key=True) class MyModel(Base,MyMixin): __tablename__ = 'test' name = Column(String(1000)) Where above, the class ``MyModel`` will contain an "id" column as well as ``__table_args__`` and ``__mapper_args__`` defined by the ``MyMixin`` mixin class. Mixing in Columns ~~~~~~~~~~~~~~~~~ The most basic way to specify a column on a mixin is by simple declaration:: class TimestampMixin(object): created_at = Column(DateTime, default=func.now()) class MyModel(Base, TimestampMixin): __tablename__ = 'test' id = Column(Integer, primary_key=True) name = Column(String(1000)) Where above, all declarative classes that include ``TimestampMixin`` will also have a column ``created_at`` that applies a timestamp to all row insertions. Those familiar with the SQLAlchemy expression language know that the object identity of clause elements defines their role in a schema. Two ``Table`` objects ``a`` and ``b`` may both have a column called ``id``, but the way these are differentiated is that ``a.c.id`` and ``b.c.id`` are two distinct Python objects, referencing their parent tables ``a`` and ``b`` respectively. In the case of the mixin column, it seems that only one :class:`Column` object is explicitly created, yet the ultimate ``created_at`` column above must exist as a distinct Python object for each separate destination class. To accomplish this, the declarative extension creates a **copy** of each :class:`Column` object encountered on a class that is detected as a mixin. This copy mechanism is limited to simple columns that have no foreign keys, as a :class:`ForeignKey` itself contains references to columns which can't be properly recreated at this level. For columns that have foreign keys, as well as for the variety of mapper-level constructs that require destination-explicit context, the :func:`~.declared_attr` decorator (renamed from ``sqlalchemy.util.classproperty`` in 0.6.5) is provided so that patterns common to many classes can be defined as callables:: from sqlalchemy.ext.declarative import declared_attr class ReferenceAddressMixin(object): @declared_attr def address_id(cls): return Column(Integer, ForeignKey('address.id')) class User(Base, ReferenceAddressMixin): __tablename__ = 'user' id = Column(Integer, primary_key=True) Where above, the ``address_id`` class-level callable is executed at the point at which the ``User`` class is constructed, and the declarative extension can use the resulting :class:`Column` object as returned by the method without the need to copy it. Columns generated by :func:`~.declared_attr` can also be referenced by ``__mapper_args__`` to a limited degree, currently by ``polymorphic_on`` and ``version_id_col``, by specifying the classdecorator itself into the dictionary - the declarative extension will resolve them at class construction time:: class MyMixin: @declared_attr def type_(cls): return Column(String(50)) __mapper_args__= {'polymorphic_on':type_} class MyModel(Base,MyMixin): __tablename__='test' id = Column(Integer, primary_key=True) Mixing in Relationships ~~~~~~~~~~~~~~~~~~~~~~~ Relationships created by :func:`~sqlalchemy.orm.relationship` are provided with declarative mixin classes exclusively using the :func:`.declared_attr` approach, eliminating any ambiguity which could arise when copying a relationship and its possibly column-bound contents. Below is an example which combines a foreign key column and a relationship so that two classes ``Foo`` and ``Bar`` can both be configured to reference a common target class via many-to-one:: class RefTargetMixin(object): @declared_attr def target_id(cls): return Column('target_id', ForeignKey('target.id')) @declared_attr def target(cls): return relationship("Target") class Foo(Base, RefTargetMixin): __tablename__ = 'foo' id = Column(Integer, primary_key=True) class Bar(Base, RefTargetMixin): __tablename__ = 'bar' id = Column(Integer, primary_key=True) class Target(Base): __tablename__ = 'target' id = Column(Integer, primary_key=True) :func:`~sqlalchemy.orm.relationship` definitions which require explicit primaryjoin, order_by etc. expressions should use the string forms for these arguments, so that they are evaluated as late as possible. To reference the mixin class in these expressions, use the given ``cls`` to get it's name:: class RefTargetMixin(object): @declared_attr def target_id(cls): return Column('target_id', ForeignKey('target.id')) @declared_attr def target(cls): return relationship("Target", primaryjoin="Target.id==%s.target_id" % cls.__name__ ) Mixing in deferred(), column_property(), etc. ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ Like :func:`~sqlalchemy.orm.relationship`, all :class:`~sqlalchemy.orm.interfaces.MapperProperty` subclasses such as :func:`~sqlalchemy.orm.deferred`, :func:`~sqlalchemy.orm.column_property`, etc. ultimately involve references to columns, and therefore, when used with declarative mixins, have the :func:`.declared_attr` requirement so that no reliance on copying is needed:: class SomethingMixin(object): @declared_attr def dprop(cls): return deferred(Column(Integer)) class Something(Base, SomethingMixin): __tablename__ = "something" Controlling table inheritance with mixins ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ The ``__tablename__`` attribute in conjunction with the hierarchy of classes involved in a declarative mixin scenario controls what type of table inheritance, if any, is configured by the declarative extension. If the ``__tablename__`` is computed by a mixin, you may need to control which classes get the computed attribute in order to get the type of table inheritance you require. For example, if you had a mixin that computes ``__tablename__`` but where you wanted to use that mixin in a single table inheritance hierarchy, you can explicitly specify ``__tablename__`` as ``None`` to indicate that the class should not have a table mapped:: from sqlalchemy.ext.declarative import declared_attr class Tablename: @declared_attr def __tablename__(cls): return cls.__name__.lower() class Person(Base,Tablename): id = Column(Integer, primary_key=True) discriminator = Column('type', String(50)) __mapper_args__ = {'polymorphic_on': discriminator} class Engineer(Person): __tablename__ = None __mapper_args__ = {'polymorphic_identity': 'engineer'} primary_language = Column(String(50)) Alternatively, you can make the mixin intelligent enough to only return a ``__tablename__`` in the event that no table is already mapped in the inheritance hierarchy. To help with this, a :func:`~sqlalchemy.ext.declarative.has_inherited_table` helper function is provided that returns ``True`` if a parent class already has a mapped table. As an example, here's a mixin that will only allow single table inheritance:: from sqlalchemy.ext.declarative import declared_attr from sqlalchemy.ext.declarative import has_inherited_table class Tablename: @declared_attr def __tablename__(cls): if has_inherited_table(cls): return None return cls.__name__.lower() class Person(Base,Tablename): id = Column(Integer, primary_key=True) discriminator = Column('type', String(50)) __mapper_args__ = {'polymorphic_on': discriminator} class Engineer(Person): primary_language = Column(String(50)) __mapper_args__ = {'polymorphic_identity': 'engineer'} If you want to use a similar pattern with a mix of single and joined table inheritance, you would need a slightly different mixin and use it on any joined table child classes in addition to their parent classes:: from sqlalchemy.ext.declarative import declared_attr from sqlalchemy.ext.declarative import has_inherited_table class Tablename: @declared_attr def __tablename__(cls): if (has_inherited_table(cls) and Tablename not in cls.__bases__): return None return cls.__name__.lower() class Person(Base,Tablename): id = Column(Integer, primary_key=True) discriminator = Column('type', String(50)) __mapper_args__ = {'polymorphic_on': discriminator} # This is single table inheritance class Engineer(Person): primary_language = Column(String(50)) __mapper_args__ = {'polymorphic_identity': 'engineer'} # This is joined table inheritance class Manager(Person,Tablename): id = Column(Integer, ForeignKey('person.id'), primary_key=True) preferred_recreation = Column(String(50)) __mapper_args__ = {'polymorphic_identity': 'engineer'} Combining Table/Mapper Arguments from Multiple Mixins ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ In the case of ``__table_args__`` or ``__mapper_args__`` specified with declarative mixins, you may want to combine some parameters from several mixins with those you wish to define on the class iteself. The :func:`.declared_attr` decorator can be used here to create user-defined collation routines that pull from multiple collections:: from sqlalchemy.ext.declarative import declared_attr class MySQLSettings: __table_args__ = {'mysql_engine':'InnoDB'} class MyOtherMixin: __table_args__ = {'info':'foo'} class MyModel(Base,MySQLSettings,MyOtherMixin): __tablename__='my_model' @declared_attr def __table_args__(self): args = dict() args.update(MySQLSettings.__table_args__) args.update(MyOtherMixin.__table_args__) return args id = Column(Integer, primary_key=True) Defining Indexes in Mixins ~~~~~~~~~~~~~~~~~~~~~~~~~~ If you need to define a multi-column index that applies to all tables that make use of a particular mixin, you will need to do this in a metaclass as shown in the following example:: from sqlalchemy.ext.declarative import DeclarativeMeta class MyMixinMeta(DeclarativeMeta): def __init__(cls,*args,**kw): if getattr(cls,'_decl_class_registry',None) is None: return super(MyMeta,cls).__init__(*args,**kw) # Index creation done here Index('test',cls.a,cls.b) class MyMixin(object): __metaclass__=MyMixinMeta a = Column(Integer) b = Column(Integer) class MyModel(Base,MyMixin): __tablename__ = 'atable' c = Column(Integer,primary_key=True) Using multiple Mixins that require Metaclasses ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ If you end up in a situation where you need to use multiple mixins and more than one of them uses a metaclass to, for example, create a multi-column index, then you will need to create a metaclass that correctly combines the actions of the other metaclasses. For example:: class MyMeta1(DeclarativeMeta): def __init__(cls,*args,**kw): if getattr(cls,'_decl_class_registry',None) is None: return super(MyMeta1,cls).__init__(*args,**kw) Index('ab',cls.a,cls.b) class MyMixin1(object): __metaclass__=MyMeta1 a = Column(Integer) b = Column(Integer) class MyMeta2(DeclarativeMeta): def __init__(cls,*args,**kw): if getattr(cls,'_decl_class_registry',None) is None: return super(MyMeta2,cls).__init__(*args,**kw) Index('cd',cls.c,cls.d) class MyMixin2(object): __metaclass__=MyMeta2 c = Column(Integer) d = Column(Integer) class CombinedMeta(MyMeta1,MyMeta2): # This is needed to successfully combine # two mixins which both have metaclasses pass class MyModel(Base,MyMixin1,MyMixin2): __tablename__ = 'awooooga' __metaclass__ = CombinedMeta z = Column(Integer,primary_key=True) For this reason, if a mixin requires a custom metaclass, this should be mentioned in any documentation of that mixin to avoid confusion later down the line. Class Constructor ================= As a convenience feature, the :func:`declarative_base` sets a default constructor on classes which takes keyword arguments, and assigns them to the named attributes:: e = Engineer(primary_language='python') Sessions ======== Note that ``declarative`` does nothing special with sessions, and is only intended as an easier way to configure mappers and :class:`~sqlalchemy.schema.Table` objects. A typical application setup using :func:`~sqlalchemy.orm.scoped_session` might look like:: engine = create_engine('postgresql://scott:tiger@localhost/test') Session = scoped_session(sessionmaker(autocommit=False, autoflush=False, bind=engine)) Base = declarative_base() Mapped instances then make usage of :class:`~sqlalchemy.orm.session.Session` in the usual way. """ from sqlalchemy.schema import Table, Column, MetaData, _get_table_key from sqlalchemy.orm import synonym as _orm_synonym, mapper,\ comparable_property, class_mapper from sqlalchemy.orm.interfaces import MapperProperty from sqlalchemy.orm.properties import RelationshipProperty, ColumnProperty, CompositeProperty from sqlalchemy.orm.util import _is_mapped_class from sqlalchemy import util, exceptions from sqlalchemy.sql import util as sql_util, expression __all__ = 'declarative_base', 'synonym_for', \ 'comparable_using', 'instrument_declarative' def instrument_declarative(cls, registry, metadata): """Given a class, configure the class declaratively, using the given registry, which can be any dictionary, and MetaData object. """ if '_decl_class_registry' in cls.__dict__: raise exceptions.InvalidRequestError( "Class %r already has been " "instrumented declaratively" % cls) cls._decl_class_registry = registry cls.metadata = metadata _as_declarative(cls, cls.__name__, cls.__dict__) def has_inherited_table(cls): """Given a class, return True if any of the classes it inherits from has a mapped table, otherwise return False. """ for class_ in cls.__mro__: if getattr(class_,'__table__',None) is not None: return True return False def _as_declarative(cls, classname, dict_): # dict_ will be a dictproxy, which we can't write to, and we need to! dict_ = dict(dict_) column_copies = {} potential_columns = {} mapper_args = {} table_args = inherited_table_args = None tablename = None parent_columns = () declarative_props = (declared_attr, util.classproperty) for base in cls.__mro__: class_mapped = _is_mapped_class(base) if class_mapped: parent_columns = base.__table__.c.keys() for name,obj in vars(base).items(): if name == '__mapper_args__': if not mapper_args and ( not class_mapped or isinstance(obj, declarative_props) ): mapper_args = cls.__mapper_args__ elif name == '__tablename__': if not tablename and ( not class_mapped or isinstance(obj, declarative_props) ): tablename = cls.__tablename__ elif name == '__table_args__': if not table_args and ( not class_mapped or isinstance(obj, declarative_props) ): table_args = cls.__table_args__ if not isinstance(table_args, (tuple, dict, type(None))): raise exceptions.ArgumentError( "__table_args__ value must be a tuple, " "dict, or None") if base is not cls: inherited_table_args = True elif class_mapped: continue elif base is not cls: # we're a mixin. if isinstance(obj, Column): if obj.foreign_keys: raise exceptions.InvalidRequestError( "Columns with foreign keys to other columns " "must be declared as @classproperty callables " "on declarative mixin classes. ") if name not in dict_ and not ( '__table__' in dict_ and (obj.name or name) in dict_['__table__'].c ) and name not in potential_columns: potential_columns[name] = \ column_copies[obj] = \ obj.copy() column_copies[obj]._creation_order = \ obj._creation_order elif isinstance(obj, MapperProperty): raise exceptions.InvalidRequestError( "Mapper properties (i.e. deferred," "column_property(), relationship(), etc.) must " "be declared as @classproperty callables " "on declarative mixin classes.") elif isinstance(obj, declarative_props): dict_[name] = ret = \ column_copies[obj] = getattr(cls, name) if isinstance(ret, (Column, MapperProperty)) and \ ret.doc is None: ret.doc = obj.__doc__ # apply inherited columns as we should for k, v in potential_columns.items(): if tablename or (v.name or k) not in parent_columns: dict_[k] = v if inherited_table_args and not tablename: table_args = None # make sure that column copies are used rather # than the original columns from any mixins for k, v in mapper_args.iteritems(): mapper_args[k] = column_copies.get(v,v) if classname in cls._decl_class_registry: util.warn("The classname %r is already in the registry of this" " declarative base, mapped to %r" % ( classname, cls._decl_class_registry[classname] )) cls._decl_class_registry[classname] = cls our_stuff = util.OrderedDict() for k in dict_: value = dict_[k] if isinstance(value, declarative_props): value = getattr(cls, k) if (isinstance(value, tuple) and len(value) == 1 and isinstance(value[0], (Column, MapperProperty))): util.warn("Ignoring declarative-like tuple value of attribute " "%s: possibly a copy-and-paste error with a comma " "left at the end of the line?" % k) continue if not isinstance(value, (Column, MapperProperty)): continue prop = _deferred_relationship(cls, value) our_stuff[k] = prop # set up attributes in the order they were created our_stuff.sort(key=lambda key: our_stuff[key]._creation_order) # extract columns from the class dict cols = [] for key, c in our_stuff.iteritems(): if isinstance(c, (ColumnProperty, CompositeProperty)): for col in c.columns: if isinstance(col, Column) and col.table is None: _undefer_column_name(key, col) cols.append(col) elif isinstance(c, Column): _undefer_column_name(key, c) cols.append(c) # if the column is the same name as the key, # remove it from the explicit properties dict. # the normal rules for assigning column-based properties # will take over, including precedence of columns # in multi-column ColumnProperties. if key == c.key: del our_stuff[key] table = None if '__table__' not in dict_: if tablename is not None: if isinstance(table_args, dict): args, table_kw = (), table_args elif isinstance(table_args, tuple): args = table_args[0:-1] table_kw = table_args[-1] if len(table_args) < 2 or not isinstance(table_kw, dict): raise exceptions.ArgumentError( "Tuple form of __table_args__ is " "(arg1, arg2, arg3, ..., {'kw1':val1, " "'kw2':val2, ...})" ) else: args, table_kw = (), {} autoload = dict_.get('__autoload__') if autoload: table_kw['autoload'] = True cls.__table__ = table = Table(tablename, cls.metadata, *(tuple(cols) + tuple(args)), **table_kw) else: table = cls.__table__ if cols: for c in cols: if not table.c.contains_column(c): raise exceptions.ArgumentError( "Can't add additional column %r when " "specifying __table__" % c.key ) if 'inherits' not in mapper_args: for c in cls.__bases__: if _is_mapped_class(c): mapper_args['inherits'] = cls._decl_class_registry.get( c.__name__, None) break if hasattr(cls, '__mapper_cls__'): mapper_cls = util.unbound_method_to_callable(cls.__mapper_cls__) else: mapper_cls = mapper if table is None and 'inherits' not in mapper_args: raise exceptions.InvalidRequestError( "Class %r does not have a __table__ or __tablename__ " "specified and does not inherit from an existing " "table-mapped class." % cls ) elif 'inherits' in mapper_args and not mapper_args.get('concrete', False): inherited_mapper = class_mapper(mapper_args['inherits'], compile=False) inherited_table = inherited_mapper.local_table if 'inherit_condition' not in mapper_args and table is not None: # figure out the inherit condition with relaxed rules # about nonexistent tables, to allow for ForeignKeys to # not-yet-defined tables (since we know for sure that our # parent table is defined within the same MetaData) mapper_args['inherit_condition'] = sql_util.join_condition( mapper_args['inherits'].__table__, table, ignore_nonexistent_tables=True) if table is None: # single table inheritance. # ensure no table args if table_args: raise exceptions.ArgumentError( "Can't place __table_args__ on an inherited class " "with no table." ) # add any columns declared here to the inherited table. for c in cols: if c.primary_key: raise exceptions.ArgumentError( "Can't place primary key columns on an inherited " "class with no table." ) if c.name in inherited_table.c: raise exceptions.ArgumentError( "Column '%s' on class %s conflicts with " "existing column '%s'" % (c, cls, inherited_table.c[c.name]) ) inherited_table.append_column(c) # single or joined inheritance # exclude any cols on the inherited table which are not mapped on the # parent class, to avoid # mapping columns specific to sibling/nephew classes inherited_mapper = class_mapper(mapper_args['inherits'], compile=False) inherited_table = inherited_mapper.local_table if 'exclude_properties' not in mapper_args: mapper_args['exclude_properties'] = exclude_properties = \ set([c.key for c in inherited_table.c if c not in inherited_mapper._columntoproperty]) exclude_properties.difference_update([c.key for c in cols]) # look through columns in the current mapper that # are keyed to a propname different than the colname # (if names were the same, we'd have popped it out above, # in which case the mapper makes this combination). # See if the superclass has a similar column property. # If so, join them together. for k, col in our_stuff.items(): if not isinstance(col, expression.ColumnElement): continue if k in inherited_mapper._props: p = inherited_mapper._props[k] if isinstance(p, ColumnProperty): # note here we place the superclass column # first. this corresponds to the # append() in mapper._configure_property(). # change this ordering when we do [ticket:1892] our_stuff[k] = p.columns + [col] cls.__mapper__ = mapper_cls(cls, table, properties=our_stuff, **mapper_args) class DeclarativeMeta(type): def __init__(cls, classname, bases, dict_): if '_decl_class_registry' in cls.__dict__: return type.__init__(cls, classname, bases, dict_) _as_declarative(cls, classname, cls.__dict__) return type.__init__(cls, classname, bases, dict_) def __setattr__(cls, key, value): if '__mapper__' in cls.__dict__: if isinstance(value, Column): _undefer_column_name(key, value) cls.__table__.append_column(value) cls.__mapper__.add_property(key, value) elif isinstance(value, ColumnProperty): for col in value.columns: if isinstance(col, Column) and col.table is None: _undefer_column_name(key, col) cls.__table__.append_column(col) cls.__mapper__.add_property(key, value) elif isinstance(value, MapperProperty): cls.__mapper__.add_property( key, _deferred_relationship(cls, value) ) else: type.__setattr__(cls, key, value) else: type.__setattr__(cls, key, value) class _GetColumns(object): def __init__(self, cls): self.cls = cls def __getattr__(self, key): mapper = class_mapper(self.cls, compile=False) if mapper: if not mapper.has_property(key): raise exceptions.InvalidRequestError( "Class %r does not have a mapped column named %r" % (self.cls, key)) prop = mapper.get_property(key) if not isinstance(prop, ColumnProperty): raise exceptions.InvalidRequestError( "Property %r is not an instance of" " ColumnProperty (i.e. does not correspond" " directly to a Column)." % key) return getattr(self.cls, key) class _GetTable(object): def __init__(self, key, metadata): self.key = key self.metadata = metadata def __getattr__(self, key): return self.metadata.tables[ _get_table_key(key, self.key) ] def _deferred_relationship(cls, prop): def resolve_arg(arg): import sqlalchemy def access_cls(key): if key in cls._decl_class_registry: return _GetColumns(cls._decl_class_registry[key]) elif key in cls.metadata.tables: return cls.metadata.tables[key] elif key in cls.metadata._schemas: return _GetTable(key, cls.metadata) else: return sqlalchemy.__dict__[key] d = util.PopulateDict(access_cls) def return_cls(): try: x = eval(arg, globals(), d) if isinstance(x, _GetColumns): return x.cls else: return x except NameError, n: raise exceptions.InvalidRequestError( "When initializing mapper %s, expression %r failed to " "locate a name (%r). If this is a class name, consider " "adding this relationship() to the %r class after " "both dependent classes have been defined." % (prop.parent, arg, n.args[0], cls) ) return return_cls if isinstance(prop, RelationshipProperty): for attr in ('argument', 'order_by', 'primaryjoin', 'secondaryjoin', 'secondary', '_user_defined_foreign_keys', 'remote_side'): v = getattr(prop, attr) if isinstance(v, basestring): setattr(prop, attr, resolve_arg(v)) if prop.backref and isinstance(prop.backref, tuple): key, kwargs = prop.backref for attr in ('primaryjoin', 'secondaryjoin', 'secondary', 'foreign_keys', 'remote_side', 'order_by'): if attr in kwargs and isinstance(kwargs[attr], basestring): kwargs[attr] = resolve_arg(kwargs[attr]) return prop def synonym_for(name, map_column=False): """Decorator, make a Python @property a query synonym for a column. A decorator version of :func:`~sqlalchemy.orm.synonym`. The function being decorated is the 'descriptor', otherwise passes its arguments through to synonym():: @synonym_for('col') @property def prop(self): return 'special sauce' The regular ``synonym()`` is also usable directly in a declarative setting and may be convenient for read/write properties:: prop = synonym('col', descriptor=property(_read_prop, _write_prop)) """ def decorate(fn): return _orm_synonym(name, map_column=map_column, descriptor=fn) return decorate def comparable_using(comparator_factory): """Decorator, allow a Python @property to be used in query criteria. This is a decorator front end to :func:`~sqlalchemy.orm.comparable_property` that passes through the comparator_factory and the function being decorated:: @comparable_using(MyComparatorType) @property def prop(self): return 'special sauce' The regular ``comparable_property()`` is also usable directly in a declarative setting and may be convenient for read/write properties:: prop = comparable_property(MyComparatorType) """ def decorate(fn): return comparable_property(comparator_factory, fn) return decorate class declared_attr(property): """Mark a class-level method as representing the definition of a mapped property or special declarative member name. .. note:: @declared_attr is available as ``sqlalchemy.util.classproperty`` for SQLAlchemy versions 0.6.2, 0.6.3, 0.6.4. @declared_attr turns the attribute into a scalar-like property that can be invoked from the uninstantiated class. Declarative treats attributes specifically marked with @declared_attr as returning a construct that is specific to mapping or declarative table configuration. The name of the attribute is that of what the non-dynamic version of the attribute would be. @declared_attr is more often than not applicable to mixins, to define relationships that are to be applied to different implementors of the class:: class ProvidesUser(object): "A mixin that adds a 'user' relationship to classes." @declared_attr def user(self): return relationship("User") It also can be applied to mapped classes, such as to provide a "polymorphic" scheme for inheritance:: class Employee(Base): id = Column(Integer, primary_key=True) type = Column(String(50), nullable=False) @declared_attr def __tablename__(cls): return cls.__name__.lower() @declared_attr def __mapper_args__(cls): if cls.__name__ == 'Employee': return { "polymorphic_on":cls.type, "polymorphic_identity":"Employee" } else: return {"polymorphic_identity":cls.__name__} """ def __init__(self, fget, *arg, **kw): super(declared_attr, self).__init__(fget, *arg, **kw) self.__doc__ = fget.__doc__ def __get__(desc, self, cls): return desc.fget(cls) def _declarative_constructor(self, **kwargs): """A simple constructor that allows initialization from kwargs. Sets attributes on the constructed instance using the names and values in ``kwargs``. Only keys that are present as attributes of the instance's class are allowed. These could be, for example, any mapped columns or relationships. """ cls_ = type(self) for k in kwargs: if not hasattr(cls_, k): raise TypeError( "%r is an invalid keyword argument for %s" % (k, cls_.__name__)) setattr(self, k, kwargs[k]) _declarative_constructor.__name__ = '__init__' def declarative_base(bind=None, metadata=None, mapper=None, cls=object, name='Base', constructor=_declarative_constructor, metaclass=DeclarativeMeta): """Construct a base class for declarative class definitions. The new base class will be given a metaclass that produces appropriate :class:`~sqlalchemy.schema.Table` objects and makes the appropriate :func:`~sqlalchemy.orm.mapper` calls based on the information provided declaratively in the class and any subclasses of the class. :param bind: An optional :class:`~sqlalchemy.engine.base.Connectable`, will be assigned the ``bind`` attribute on the :class:`~sqlalchemy.MetaData` instance. :param metadata: An optional :class:`~sqlalchemy.MetaData` instance. All :class:`~sqlalchemy.schema.Table` objects implicitly declared by subclasses of the base will share this MetaData. A MetaData instance will be created if none is provided. The :class:`~sqlalchemy.MetaData` instance will be available via the `metadata` attribute of the generated declarative base class. :param mapper: An optional callable, defaults to :func:`~sqlalchemy.orm.mapper`. Will be used to map subclasses to their Tables. :param cls: Defaults to :class:`object`. A type to use as the base for the generated declarative base class. May be a class or tuple of classes. :param name: Defaults to ``Base``. The display name for the generated class. Customizing this is not required, but can improve clarity in tracebacks and debugging. :param constructor: Defaults to :func:`~sqlalchemy.ext.declarative._declarative_constructor`, an __init__ implementation that assigns \**kwargs for declared fields and relationships to an instance. If ``None`` is supplied, no __init__ will be provided and construction will fall back to cls.__init__ by way of the normal Python semantics. :param metaclass: Defaults to :class:`DeclarativeMeta`. A metaclass or __metaclass__ compatible callable to use as the meta type of the generated declarative base class. """ lcl_metadata = metadata or MetaData() if bind: lcl_metadata.bind = bind bases = not isinstance(cls, tuple) and (cls,) or cls class_dict = dict(_decl_class_registry=dict(), metadata=lcl_metadata) if constructor: class_dict['__init__'] = constructor if mapper: class_dict['__mapper_cls__'] = mapper return metaclass(name, bases, class_dict) def _undefer_column_name(key, column): if column.key is None: column.key = key if column.name is None: column.name = key