- Mapping Python Classes
Mapping Python Classes
SQLAlchemy historically features two distinct styles of mapper configuration. The original mapping API is commonly referred to as “classical” style, whereas the more automated style of mapping is known as “declarative” style. SQLAlchemy now refers to these two mapping styles as imperative mapping and declarative mapping.
Both styles may be used interchangeably, as the end result of each is exactly the same - a user-defined class that has a Mapper
configured against a selectable unit, typically represented by a Table
object.
Both imperative and declarative mapping begin with an ORM registry
object, which maintains a set of classes that are mapped. This registry is present for all mappings.
Changed in version 1.4: Declarative and classical mapping are now referred to as “declarative” and “imperative” mapping, and are unified internally, all originating from the registry
construct that represents a collection of related mappings.
The full suite of styles can be hierarchically organized as follows:
-
Using
declarative_base()
Base class w/ metaclass
- Using [`registry.mapped()`]($02c0a61f4d785504.md#sqlalchemy.orm.registry.mapped "sqlalchemy.orm.registry.mapped") Declarative Decorator
- [Declarative Table](#orm-declarative-decorator) - combine [`registry.mapped()`]($02c0a61f4d785504.md#sqlalchemy.orm.registry.mapped "sqlalchemy.orm.registry.mapped") with `__tablename__`
- Imperative Table (Hybrid) - combine [`registry.mapped()`]($02c0a61f4d785504.md#sqlalchemy.orm.registry.mapped "sqlalchemy.orm.registry.mapped") with `__table__`
- [Declarative Mapping with Dataclasses and Attrs](#orm-declarative-dataclasses)
- [Example One - Dataclasses with Imperative Table](#orm-declarative-dataclasses-imperative-table)
- [Example Two - Dataclasses with Declarative Table](#orm-declarative-dataclasses-declarative-table)
- [Example Three - attrs with Imperative Table](#orm-declarative-attrs-imperative-table)
Declarative Mapping
The Declarative Mapping is the typical way that mappings are constructed in modern SQLAlchemy. The most common pattern is to first construct a base class using the declarative_base()
function, which will apply the declarative mapping process to all subclasses that derive from it. Below features a declarative base which is then used in a declarative table mapping:
from sqlalchemy import Column, Integer, String, ForeignKey
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()
callable returns a new base class from which new classes to be mapped may inherit from, as above a new mapped class User
is constructed.
The base class refers to a registry
object that maintains a collection of related mapped classes. The declarative_base()
function is in fact shorthand for first creating the registry with the registry
constructor, and then generating a base class using the registry.generate_base()
method:
from sqlalchemy.orm import registry
# equivalent to Base = declarative_base()
mapper_registry = registry()
Base = mapper_registry.generate_base()
The registry
is used directly in order to access a variety of mapping styles to suit different use cases:
Declarative Mapping using a Decorator (no declarative base) - declarative mapping using a decorator, rather than a base class.
Imperative (a.k.a. Classical) Mappings - imperative mapping, specifying all mapping arguments directly rather than scanning a class.
Documentation for Declarative mapping continues at Mapping Classes with Declarative.
See also
Mapping Classes with Declarative
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()
. 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
# these are supplied by the sqlalchemy2-stubs, so may be omitted
# when they are installed
registry = mapper_registry
metadata = mapper_registry.metadata
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, Integer, String, Text, ForeignKey
from sqlalchemy.orm import registry
from sqlalchemy.orm import 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.
Declarative Mapping with Dataclasses and Attrs
The dataclasses module, added in Python 3.7, provides a @dataclass
class decorator to automatically generate boilerplate definitions of __init__()
, __eq__()
, __repr()__
, etc. methods. Another very popular library that does the same, and much more, is attrs. Both libraries make use of class decorators in order to scan a class for attributes that define the class’ behavior, which are then used to generate methods, documentation, and annotations.
The registry.mapped()
class decorator allows the declarative mapping of a class to occur after the class has been fully constructed, allowing the class to be processed by other class decorators first. The @dataclass
and @attr.s
decorators may therefore be applied first before the ORM mapping process proceeds via the registry.mapped()
decorator or via the registry.map_imperatively()
method discussed in a later section.
Mapping with @dataclass
or @attr.s
may be used in a straightforward way with Declarative with Imperative Table (a.k.a. Hybrid Declarative) style, where the the Table
, which means that it is defined separately and associated with the class via the __table__
. For dataclasses specifically, Declarative Table is also supported.
New in version 1.4.0b2: Added support for full declarative mapping when using dataclasses.
When attributes are defined using dataclasses
, the @dataclass
decorator consumes them but leaves them in place on the class. SQLAlchemy’s mapping process, when it encounters an attribute that normally is to be mapped to a Column
, checks explicitly if the attribute is part of a Dataclasses setup, and if so will replace the class-bound dataclass attribute with its usual mapped properties. The __init__
method created by @dataclass
is left intact. In contrast, the @attr.s
decorator actually removes its own class-bound attributes after the decorator runs, so that SQLAlchemy’s mapping process takes over these attributes without any issue.
New in version 1.4: Added support for direct mapping of Python dataclasses, where the Mapper
will now detect attributes that are specific to the @dataclasses
module and replace them at mapping time, rather than skipping them as is the default behavior for any class attribute that’s not part of the mapping.
Example One - Dataclasses with Imperative Table
An example of a mapping using @dataclass
using Declarative with Imperative Table (a.k.a. Hybrid Declarative) is as follows:
from __future__ import annotations
from dataclasses import dataclass
from dataclasses import field
from typing import List
from typing import Optional
from sqlalchemy import Column
from sqlalchemy import ForeignKey
from sqlalchemy import Integer
from sqlalchemy import String
from sqlalchemy import Table
from sqlalchemy.orm import registry
from sqlalchemy.orm import relationship
mapper_registry = registry()
@mapper_registry.mapped
@dataclass
class User:
__table__ = Table(
"user",
mapper_registry.metadata,
Column("id", Integer, primary_key=True),
Column("name", String(50)),
Column("fullname", String(50)),
Column("nickname", String(12)),
)
id: int = field(init=False)
name: Optional[str] = None
fullname: Optional[str] = None
nickname: Optional[str] = None
addresses: List[Address] = field(default_factory=list)
__mapper_args__ = { # type: ignore
"properties" : {
"addresses": relationship("Address")
}
}
@mapper_registry.mapped
@dataclass
class Address:
__table__ = Table(
"address",
mapper_registry.metadata,
Column("id", Integer, primary_key=True),
Column("user_id", Integer, ForeignKey("user.id")),
Column("email_address", String(50)),
)
id: int = field(init=False)
user_id: int = field(init=False)
email_address: Optional[str] = None
In the above example, the User.id
, Address.id
, and Address.user_id
attributes are defined as field(init=False)
. This means that parameters for these won’t be added to __init__()
methods, but Session
will still be able to set them after getting their values during flush from autoincrement or other default value generator. To allow them to be specified in the constructor explicitly, they would instead be given a default value of None
.
For a relationship()
to be declared separately, it needs to be specified directly within the mapper.properties
dictionary passed to the mapper()
. An alternative to this approach is in the next example.
Example Two - Dataclasses with Declarative Table
The fully declarative approach requires that Column
objects are declared as class attributes, which when using dataclasses would conflict with the dataclass-level attributes. An approach to combine these together is to make use of the metadata
attribute on the dataclass.field
object, where SQLAlchemy-specific mapping information may be supplied. Declarative supports extraction of these parameters when the class specifies the attribute __sa_dataclass_metadata_key__
. This also provides a more succinct method of indicating the relationship()
association:
from __future__ import annotations
from dataclasses import dataclass
from dataclasses import field
from typing import List
from sqlalchemy import Column
from sqlalchemy import ForeignKey
from sqlalchemy import Integer
from sqlalchemy import String
from sqlalchemy.orm import registry
from sqlalchemy.orm import relationship
mapper_registry = registry()
@mapper_registry.mapped
@dataclass
class User:
__tablename__ = "user"
__sa_dataclass_metadata_key__ = "sa"
id: int = field(
init=False, metadata={"sa": Column(Integer, primary_key=True)}
)
name: str = field(default=None, metadata={"sa": Column(String(50))})
fullname: str = field(default=None, metadata={"sa": Column(String(50))})
nickname: str = field(default=None, metadata={"sa": Column(String(12))})
addresses: List[Address] = field(
default_factory=list, metadata={"sa": relationship("Address")}
)
@mapper_registry.mapped
@dataclass
class Address:
__tablename__ = "address"
__sa_dataclass_metadata_key__ = "sa"
id: int = field(
init=False, metadata={"sa": Column(Integer, primary_key=True)}
)
user_id: int = field(
init=False, metadata={"sa": Column(ForeignKey("user.id"))}
)
email_address: str = field(
default=None, metadata={"sa": Column(String(50))}
)
Example Three - attrs with Imperative Table
A mapping using @attr.s
, in conjunction with imperative table:
import attr
# other imports
from sqlalchemy.orm import registry
mapper_registry = registry()
@mapper_registry.mapped
@attr.s
class User:
__table__ = Table(
"user",
mapper_registry.metadata,
Column("id", Integer, primary_key=True),
Column("name", String(50)),
Column("fullname", String(50)),
Column("nickname", String(12)),
)
id = attr.ib()
name = attr.ib()
fullname = attr.ib()
nickname = attr.ib()
addresses = attr.ib()
# other classes...
@dataclass
and attrs mappings may also be used with classical mappings, i.e. with the registry.map_imperatively()
function. See the section Imperative Mapping with Dataclasses and Attrs for a similar example.
Imperative (a.k.a. Classical) Mappings
An imperative or classical mapping refers to the configuration of a mapped class using the registry.map_imperatively()
method, where the target class does not include any declarative class attributes. The “map imperative” style has historically been achieved using the mapper()
function directly, however this function now expects that a sqlalchemy.orm.registry()
is present.
Deprecated since version 1.4: Using the mapper()
function directly to achieve a classical mapping directly is deprecated. The registry.map_imperatively()
method retains the identical functionality while also allowing for string-based resolution of other mapped classes from within the registry.
In “classical” form, the table metadata is created separately with the Table
construct, then associated with the User
class via the registry.map_imperatively()
method:
from sqlalchemy import Table, Column, Integer, String, ForeignKey
from sqlalchemy.orm import registry
mapper_registry = registry()
user_table = Table(
'user',
mapper_registry.metadata,
Column('id', Integer, primary_key=True),
Column('name', String(50)),
Column('fullname', String(50)),
Column('nickname', String(12))
)
class User:
pass
mapper_registry.map_imperatively(User, user_table)
Information about mapped attributes, such as relationships to other classes, are provided via the properties
dictionary. The example below illustrates a second Table
object, mapped to a class called Address
, then linked to User
via relationship()
:
address = Table('address', metadata,
Column('id', Integer, primary_key=True),
Column('user_id', Integer, ForeignKey('user.id')),
Column('email_address', String(50))
)
mapper(User, user, properties={
'addresses' : relationship(Address, backref='user', order_by=address.c.id)
})
mapper(Address, address)
When using classical mappings, classes must be provided directly without the benefit of the “string lookup” system provided by Declarative. SQL expressions are typically specified in terms of the Table
objects, i.e. address.c.id
above for the Address
relationship, and not Address.id
, as Address
may not yet be linked to table metadata, nor can we specify a string here.
Some examples in the documentation still use the classical approach, but note that the classical as well as Declarative approaches are fully interchangeable. Both systems ultimately create the same configuration, consisting of a Table
, user-defined class, linked together with a mapper()
. When we talk about “the behavior of mapper()
”, this includes when using the Declarative system as well - it’s still used, just behind the scenes.
Imperative Mapping with Dataclasses and Attrs
As described in the section Declarative Mapping with Dataclasses and Attrs, the @dataclass
decorator and the attrs library both work as class decorators that are applied to a class first, before it is passed to SQLAlchemy for mapping. Just like we can use the registry.mapped()
decorator in order to apply declarative-style mapping to the class, we can also pass it to the registry.map_imperatively()
method so that we may pass all Table
and Mapper
configuration imperatively to the function rather than having them defined on the class itself as declarative class variables:
from __future__ import annotations
from dataclasses import dataclass
from dataclasses import field
from typing import List
from sqlalchemy import Column
from sqlalchemy import ForeignKey
from sqlalchemy import Integer
from sqlalchemy import MetaData
from sqlalchemy import String
from sqlalchemy import Table
from sqlalchemy.orm import registry
from sqlalchemy.orm import relationship
mapper_registry = registry()
@dataclass
class User:
id: int = field(init=False)
name: str = None
fullname: str = None
nickname: str = None
addresses: List[Address] = field(default_factory=list)
@dataclass
class Address:
id: int = field(init=False)
user_id: int = field(init=False)
email_address: str = None
metadata = MetaData()
user = Table(
'user',
metadata,
Column('id', Integer, primary_key=True),
Column('name', String(50)),
Column('fullname', String(50)),
Column('nickname', String(12)),
)
address = Table(
'address',
metadata,
Column('id', Integer, primary_key=True),
Column('user_id', Integer, ForeignKey('user.id')),
Column('email_address', String(50)),
)
mapper_registry.map_imperatively(User, user, properties={
'addresses': relationship(Address, backref='user', order_by=address.c.id),
})
mapper_registry.map_imperatively(Address, address)
Mapper Configuration Overview
With all mapping forms, the mapping of the class can be configured in many ways by passing construction arguments that become part of the Mapper
object. The function which ultimately receives these arguments is the mapper()
function, which are delivered to it originating from one of the front-facing mapping functions defined on the registry
object.
There are four general classes of configuration information that the mapper()
function looks for:
The class to be mapped
This is a class that we construct in our application. There are generally no restrictions on the structure of this class. 1 When a Python class is mapped, there can only be one Mapper
object for the class. 2
When mapping with the declarative mapping style, the class to be mapped is either a subclass of the declarative base class, or is handled by a decorator or function such as registry.mapped()
.
When mapping with the imperative style, the class is passed directly as the map_imperatively.class_
argument.
The table, or other from clause object
In the vast majority of common cases this is an instance of Table
. For more advanced use cases, it may also refer to any kind of FromClause
object, the most common alternative objects being the Subquery
and Join
object.
When mapping with the declarative mapping style, the subject table is either generated by the declarative system based on the __tablename__
attribute and the Column
objects presented, or it is established via the __table__
attribute. These two styles of configuration are presented at Declarative Table and Declarative with Imperative Table (a.k.a. Hybrid Declarative).
When mapping with the imperative style, the subject table is passed positionally as the map_imperatively.local_table
argument.
In contrast to the “one mapper per class” requirement of a mapped class, the Table
or other FromClause
object that is the subject of the mapping may be associated with any number of mappings. The Mapper
applies modifications directly to the user-defined class, but does not modify the given Table
or other FromClause
in any way.
The properties dictionary
This is a dictionary of all of the attributes that will be associated with the mapped class. By default, the Mapper
generates entries for this dictionary derived from the given Table
, in the form of ColumnProperty
objects which each refer to an individual Column
of the mapped table. The properties dictionary will also contain all the other kinds of MapperProperty
objects to be configured, most commonly instances generated by the relationship()
construct.
When mapping with the declarative mapping style, the properties dictionary is generated by the declarative system by scanning the class to be mapped for appropriate attributes. See the section Defining Mapped Properties with Declarative for notes on this process.
When mapping with the imperative style, the properties dictionary is passed directly as the properties
argument to registry.map_imperatively()
, which will pass it along to the mapper.properties
parameter.
Other mapper configuration parameters
These flags are documented at mapper()
.
When mapping with the declarative mapping style, additional mapper configuration arguments are configured via the __mapper_args__
class attribute, documented at Mapper Configuration Options with Declarative
When mapping with the imperative style, keyword arguments are passed to the to registry.map_imperatively()
method which passes them along to the mapper()
function.
When running under Python 2, a Python 2 “old style” class is the only kind of class that isn’t compatible. When running code on Python 2, all classes must extend from the Python object
class. Under Python 3 this is always the case.
There is a legacy feature known as a “non primary mapper”, where additional Mapper
objects may be associated with a class that’s already mapped, however they don’t apply instrumentation to the class. This feature is deprecated as of SQLAlchemy 1.3.
Mapped Class Behavior
Across all styles of mapping using the registry
object, the following behaviors are common:
Default Constructor
The registry
applies a default constructor, i.e. __init__
method, to all mapped classes that don’t explicitly have their own __init__
method. The behavior of this method is such that it provides a convenient keyword constructor that will accept as optional keyword arguments all the attributes that are named. E.g.:
from sqlalchemy.orm import declarative_base
Base = declarative_base()
class User(Base):
__tablename__ = 'user'
id = Column(...)
name = Column(...)
fullname = Column(...)
An object of type User
above will have a constructor which allows User
objects to be created as:
u1 = User(name='some name', fullname='some fullname')
The above constructor may be customized by passing a Python callable to the registry.constructor
parameter which provides the desired default __init__()
behavior.
The constructor also applies to imperative mappings:
from sqlalchemy.orm import registry
mapper_registry = registry()
user_table = Table(
'user',
mapper_registry.metadata,
Column('id', Integer, primary_key=True),
Column('name', String(50))
)
class User:
pass
mapper_registry.map_imperatively(User, user_table)
The above class, mapped imperatively as described at Imperative (a.k.a. Classical) Mappings, will also feature the default constructor associated with the registry
.
New in version 1.4: classical mappings now support a standard configuration-level constructor when they are mapped via the registry.map_imperatively()
method.
Runtime Introspection of Mapped classes and Mappers
A class that is mapped using registry
will also feature a few attributes that are common to all mappings:
The
__mapper__
attribute will refer to theMapper
that is associated with the class:mapper = User.__mapper__
This
Mapper
is also what’s returned when using theinspect()
function against the mapped class:from sqlalchemy import inspect
mapper = inspect(User)
The
__table__
attribute will refer to theTable
, or more generically to theFromClause
object, to which the class is mapped:table = User.__table__
This
FromClause
is also what’s returned when using theMapper.local_table
attribute of theMapper
:table = inspect(User).local_table
For a single-table inheritance mapping, where the class is a subclass that does not have a table of its own, the
Mapper.local_table
attribute as well as the.__table__
attribute will beNone
. To retrieve the “selectable” that is actually selected from during a query for this class, this is available via theMapper.selectable
attribute:table = inspect(User).selectable
Mapper Inspection Features
As illustrated in the previous section, the Mapper
object is available from any mapped class, regardless of method, using the Runtime Inspection API system. Using the inspect()
function, one can acquire the Mapper
from a mapped class:
>>> from sqlalchemy import inspect
>>> insp = inspect(User)
Detailed information is available including Mapper.columns
:
>>> insp.columns
<sqlalchemy.util._collections.OrderedProperties object at 0x102f407f8>
This is a namespace that can be viewed in a list format or via individual names:
>>> list(insp.columns)
[Column('id', Integer(), table=<user>, primary_key=True, nullable=False), Column('name', String(length=50), table=<user>), Column('fullname', String(length=50), table=<user>), Column('nickname', String(length=50), table=<user>)]
>>> insp.columns.name
Column('name', String(length=50), table=<user>)
Other namespaces include Mapper.all_orm_descriptors
, which includes all mapped attributes as well as hybrids, association proxies:
>>> insp.all_orm_descriptors
<sqlalchemy.util._collections.ImmutableProperties object at 0x1040e2c68>
>>> insp.all_orm_descriptors.keys()
['fullname', 'nickname', 'name', 'id']
As well as Mapper.column_attrs
:
>>> list(insp.column_attrs)
[<ColumnProperty at 0x10403fde0; id>, <ColumnProperty at 0x10403fce8; name>, <ColumnProperty at 0x1040e9050; fullname>, <ColumnProperty at 0x1040e9148; nickname>]
>>> insp.column_attrs.name
<ColumnProperty at 0x10403fce8; name>
>>> insp.column_attrs.name.expression
Column('name', String(length=50), table=<user>)
See also