Declarative Mapping Styles¶
As introduced at Declarative Mapping, the Declarative Mapping is the typical way that mappings are constructed in modern SQLAlchemy. This section will provide an overview of forms that may be used for Declarative mapper configuration.
Using a Generated Base Class¶
The most common approach is to generate a “base” class using the
declarative_base()
function:
from sqlalchemy.orm import declarative_base
# declarative base class
Base = declarative_base()
The declarative base class may also be created from an existing
registry
, by using the registry.generate_base()
method:
from sqlalchemy.orm import registry
reg = registry()
# declarative base class
Base = reg.generate_base()
With the declarative base class, new mapped classes are declared as subclasses of the base:
from sqlalchemy import Column, ForeignKey, Integer, String
from sqlalchemy.orm import declarative_base
# declarative base class
Base = declarative_base()
# an example mapping using the base
class User(Base):
__tablename__ = "user"
id = Column(Integer, primary_key=True)
name = Column(String)
fullname = Column(String)
nickname = Column(String)
Above, the declarative_base()
function returns a new base class from
which new classes to be mapped may inherit from, as above a new mapped
class User
is constructed.
For each subclass constructed, the body of the class then follows the
declarative mapping approach which defines both a Table
as well as a Mapper
object behind the scenes which comprise
a full mapping.
Creating an Explicit Base Non-Dynamically (for use with mypy, similar)¶
SQLAlchemy includes a Mypy plugin that automatically
accommodates for the dynamically generated Base
class delivered by
SQLAlchemy functions like declarative_base()
. For the SQLAlchemy
1.4 series only, this plugin works along with a new set of typing stubs
published at sqlalchemy2-stubs.
When this plugin is not in use, or when using other PEP 484 tools which
may not know how to interpret this class, the declarative base class may
be produced in a fully explicit fashion using the
DeclarativeMeta
directly as follows:
from sqlalchemy.orm import registry
from sqlalchemy.orm.decl_api import DeclarativeMeta
mapper_registry = registry()
class Base(metaclass=DeclarativeMeta):
__abstract__ = True
registry = mapper_registry
metadata = mapper_registry.metadata
__init__ = mapper_registry.constructor
The above Base
is equivalent to one created using the
registry.generate_base()
method and will be fully understood by
type analysis tools without the use of plugins.
See also
Mypy / Pep-484 Support for ORM Mappings - background on the Mypy plugin which applies the above structure automatically when running Mypy.
Declarative Mapping using a Decorator (no declarative base)¶
As an alternative to using the “declarative base” class is to apply
declarative mapping to a class explicitly, using either an imperative technique
similar to that of a “classical” mapping, or more succinctly by using
a decorator. The registry.mapped()
function is a class decorator
that can be applied to any Python class with no hierarchy in place. The
Python class otherwise is configured in declarative style normally:
from sqlalchemy import Column, ForeignKey, Integer, String, Text
from sqlalchemy.orm import registry, relationship
mapper_registry = registry()
@mapper_registry.mapped
class User:
__tablename__ = "user"
id = Column(Integer, primary_key=True)
name = Column(String)
addresses = relationship("Address", back_populates="user")
@mapper_registry.mapped
class Address:
__tablename__ = "address"
id = Column(Integer, primary_key=True)
user_id = Column(ForeignKey("user.id"))
email_address = Column(String)
user = relationship("User", back_populates="addresses")
Above, the same registry
that we’d use to generate a declarative
base class via its registry.generate_base()
method may also apply
a declarative-style mapping to a class without using a base. When using
the above style, the mapping of a particular class will only proceed
if the decorator is applied to that class directly. For inheritance
mappings, the decorator should be applied to each subclass:
from sqlalchemy.orm import registry
mapper_registry = registry()
@mapper_registry.mapped
class Person:
__tablename__ = "person"
person_id = Column(Integer, primary_key=True)
type = Column(String, nullable=False)
__mapper_args__ = {
"polymorphic_on": type,
"polymorphic_identity": "person",
}
@mapper_registry.mapped
class Employee(Person):
__tablename__ = "employee"
person_id = Column(ForeignKey("person.person_id"), primary_key=True)
__mapper_args__ = {
"polymorphic_identity": "employee",
}
Both the “declarative table” and “imperative table” styles of declarative mapping may be used with the above mapping style.
The decorator form of mapping is particularly useful when combining a
SQLAlchemy declarative mapping with other forms of class declaration, notably
the Python dataclasses
module. See the next section.