Mypy / Pep-484 Support for ORM Mappings¶
Support for PEP 484 typing annotations as well as the
MyPy type checking tool when using SQLAlchemy
declarative mappings
that refer to the Column
object directly, rather than
the mapped_column()
construct introduced in SQLAlchemy 2.0.
Deprecated since version 2.0: The SQLAlchemy Mypy Plugin is DEPRECATED, and will be removed possibly as early as the SQLAlchemy 2.1 release. We would urge users to please migrate away from it ASAP.
This plugin cannot be maintained across constantly changing releases of mypy and its stability going forward CANNOT be guaranteed.
Modern SQLAlchemy now offers fully pep-484 compliant mapping syntaxes; see the linked section for migration details.
Installation¶
For SQLAlchemy 2.0 only: No stubs should be installed and packages like sqlalchemy-stubs and sqlalchemy2-stubs should be fully uninstalled.
The Mypy package itself is a dependency.
Mypy may be installed using the “mypy” extras hook using pip:
pip install sqlalchemy[mypy]
The plugin itself is configured as described in
Configuring mypy to use Plugins,
using the sqlalchemy.ext.mypy.plugin
module name, such as within
setup.cfg
:
[mypy]
plugins = sqlalchemy.ext.mypy.plugin
What the Plugin Does¶
The primary purpose of the Mypy plugin is to intercept and alter the static
definition of SQLAlchemy
declarative mappings so that
they match up to how they are structured after they have been
instrumented by their Mapper
objects. This allows both
the class structure itself as well as code that uses the class to make sense to
the Mypy tool, which otherwise would not be the case based on how declarative
mappings currently function. The plugin is not unlike similar plugins
that are required for libraries like
dataclasses which
alter classes dynamically at runtime.
To cover the major areas where this occurs, consider the following ORM
mapping, using the typical example of the User
class:
from sqlalchemy import Column, Integer, String, select
from sqlalchemy.orm import declarative_base
# "Base" is a class that is created dynamically from the
# declarative_base() function
Base = declarative_base()
class User(Base):
__tablename__ = "user"
id = Column(Integer, primary_key=True)
name = Column(String)
# "some_user" is an instance of the User class, which
# accepts "id" and "name" kwargs based on the mapping
some_user = User(id=5, name="user")
# it has an attribute called .name that's a string
print(f"Username: {some_user.name}")
# a select() construct makes use of SQL expressions derived from the
# User class itself
select_stmt = select(User).where(User.id.in_([3, 4, 5])).where(User.name.contains("s"))
Above, the steps that the Mypy extension can take include:
Interpretation of the
Base
dynamic class generated bydeclarative_base()
, so that classes which inherit from it are known to be mapped. It also can accommodate the class decorator approach described at Declarative Mapping using a Decorator (no declarative base).Type inference for ORM mapped attributes that are defined in declarative “inline” style, in the above example the
id
andname
attributes of theUser
class. This includes that an instance ofUser
will useint
forid
andstr
forname
. It also includes that when theUser.id
andUser.name
class-level attributes are accessed, as they are above in theselect()
statement, they are compatible with SQL expression behavior, which is derived from theInstrumentedAttribute
attribute descriptor class.Application of an
__init__()
method to mapped classes that do not already include an explicit constructor, which accepts keyword arguments of specific types for all mapped attributes detected.
When the Mypy plugin processes the above file, the resulting static class definition and Python code passed to the Mypy tool is equivalent to the following:
from sqlalchemy import Column, Integer, String, select
from sqlalchemy.orm import Mapped
from sqlalchemy.orm.decl_api import DeclarativeMeta
class Base(metaclass=DeclarativeMeta):
__abstract__ = True
class User(Base):
__tablename__ = "user"
id: Mapped[Optional[int]] = Mapped._special_method(
Column(Integer, primary_key=True)
)
name: Mapped[Optional[str]] = Mapped._special_method(Column(String))
def __init__(self, id: Optional[int] = ..., name: Optional[str] = ...) -> None:
...
some_user = User(id=5, name="user")
print(f"Username: {some_user.name}")
select_stmt = select(User).where(User.id.in_([3, 4, 5])).where(User.name.contains("s"))
The key steps which have been taken above include:
The
Base
class is now defined in terms of theDeclarativeMeta
class explicitly, rather than being a dynamic class.The
id
andname
attributes are defined in terms of theMapped
class, which represents a Python descriptor that exhibits different behaviors at the class vs. instance levels. TheMapped
class is now the base class for theInstrumentedAttribute
class that is used for all ORM mapped attributes.Mapped
is defined as a generic class against arbitrary Python types, meaning specific occurrences ofMapped
are associated with a specific Python type, such asMapped[Optional[int]]
andMapped[Optional[str]]
above.The right-hand side of the declarative mapped attribute assignments are removed, as this resembles the operation that the
Mapper
class would normally be doing, which is that it would be replacing these attributes with specific instances ofInstrumentedAttribute
. The original expression is moved into a function call that will allow it to still be type-checked without conflicting with the left-hand side of the expression. For Mypy purposes, the left-hand typing annotation is sufficient for the attribute’s behavior to be understood.A type stub for the
User.__init__()
method is added which includes the correct keywords and datatypes.
Usage¶
The following subsections will address individual uses cases that have so far been considered for pep-484 compliance.
Introspection of Columns based on TypeEngine¶
For mapped columns that include an explicit datatype, when they are mapped as inline attributes, the mapped type will be introspected automatically:
class MyClass(Base):
# ...
id = Column(Integer, primary_key=True)
name = Column("employee_name", String(50), nullable=False)
other_name = Column(String(50))
Above, the ultimate class-level datatypes of id
, name
and
other_name
will be introspected as Mapped[Optional[int]]
,
Mapped[Optional[str]]
and Mapped[Optional[str]]
. The types are by
default always considered to be Optional
, even for the primary key and
non-nullable column. The reason is because while the database columns “id” and
“name” can’t be NULL, the Python attributes id
and name
most certainly
can be None
without an explicit constructor:
>>> m1 = MyClass()
>>> m1.id
None
The types of the above columns can be stated explicitly, providing the two advantages of clearer self-documentation as well as being able to control which types are optional:
class MyClass(Base):
# ...
id: int = Column(Integer, primary_key=True)
name: str = Column("employee_name", String(50), nullable=False)
other_name: Optional[str] = Column(String(50))
The Mypy plugin will accept the above int
, str
and Optional[str]
and convert them to include the Mapped[]
type surrounding them. The
Mapped[]
construct may also be used explicitly:
from sqlalchemy.orm import Mapped
class MyClass(Base):
# ...
id: Mapped[int] = Column(Integer, primary_key=True)
name: Mapped[str] = Column("employee_name", String(50), nullable=False)
other_name: Mapped[Optional[str]] = Column(String(50))
When the type is non-optional, it simply means that the attribute as accessed
from an instance of MyClass
will be considered to be non-None:
mc = MyClass(...)
# will pass mypy --strict
name: str = mc.name
For optional attributes, Mypy considers that the type must include None
or otherwise be Optional
:
mc = MyClass(...)
# will pass mypy --strict
other_name: Optional[str] = mc.name
Whether or not the mapped attribute is typed as Optional
, the
generation of the __init__()
method will still consider all keywords
to be optional. This is again matching what the SQLAlchemy ORM actually
does when it creates the constructor, and should not be confused with the
behavior of a validating system such as Python dataclasses
which will
generate a constructor that matches the annotations in terms of optional
vs. required attributes.
Columns that Don’t have an Explicit Type¶
Columns that include a ForeignKey
modifier do not need
to specify a datatype in a SQLAlchemy declarative mapping. For
this type of attribute, the Mypy plugin will inform the user that it
needs an explicit type to be sent:
# .. other imports
from sqlalchemy.sql.schema import ForeignKey
Base = declarative_base()
class User(Base):
__tablename__ = "user"
id = Column(Integer, primary_key=True)
name = Column(String)
class Address(Base):
__tablename__ = "address"
id = Column(Integer, primary_key=True)
user_id = Column(ForeignKey("user.id"))
The plugin will deliver the message as follows:
$ mypy test3.py --strict
test3.py:20: error: [SQLAlchemy Mypy plugin] Can't infer type from
ORM mapped expression assigned to attribute 'user_id'; please specify a
Python type or Mapped[<python type>] on the left hand side.
Found 1 error in 1 file (checked 1 source file)
To resolve, apply an explicit type annotation to the Address.user_id
column:
class Address(Base):
__tablename__ = "address"
id = Column(Integer, primary_key=True)
user_id: int = Column(ForeignKey("user.id"))
Mapping Columns with Imperative Table¶
In imperative table style, the
Column
definitions are given inside of a Table
construct which is separate from the mapped attributes themselves. The Mypy
plugin does not consider this Table
, but instead supports that
the attributes can be explicitly stated with a complete annotation that
must use the Mapped
class to identify them as mapped attributes:
class MyClass(Base):
__table__ = Table(
"mytable",
Base.metadata,
Column(Integer, primary_key=True),
Column("employee_name", String(50), nullable=False),
Column(String(50)),
)
id: Mapped[int]
name: Mapped[str]
other_name: Mapped[Optional[str]]
The above Mapped
annotations are considered as mapped columns and
will be included in the default constructor, as well as provide the correct
typing profile for MyClass
both at the class level and the instance level.
Mapping Relationships¶
The plugin has limited support for using type inference to detect the types
for relationships. For all those cases where it can’t detect the type,
it will emit an informative error message, and in all cases the appropriate
type may be provided explicitly, either with the Mapped
class or optionally omitting it for an inline declaration. The plugin
also needs to determine whether or not the relationship refers to a collection
or a scalar, and for that it relies upon the explicit value of
the relationship.uselist
and/or relationship.collection_class
parameters. An explicit type is needed if neither of these parameters are
present, as well as if the target type of the relationship()
is a string or callable, and not a class:
class User(Base):
__tablename__ = "user"
id = Column(Integer, primary_key=True)
name = Column(String)
class Address(Base):
__tablename__ = "address"
id = Column(Integer, primary_key=True)
user_id: int = Column(ForeignKey("user.id"))
user = relationship(User)
The above mapping will produce the following error:
test3.py:22: error: [SQLAlchemy Mypy plugin] Can't infer scalar or
collection for ORM mapped expression assigned to attribute 'user'
if both 'uselist' and 'collection_class' arguments are absent from the
relationship(); please specify a type annotation on the left hand side.
Found 1 error in 1 file (checked 1 source file)
The error can be resolved either by using relationship(User, uselist=False)
or by providing the type, in this case the scalar User
object:
class Address(Base):
__tablename__ = "address"
id = Column(Integer, primary_key=True)
user_id: int = Column(ForeignKey("user.id"))
user: User = relationship(User)
For collections, a similar pattern applies, where in the absence of
uselist=True
or a relationship.collection_class
,
a collection annotation such as List
may be used. It is also fully
appropriate to use the string name of the class in the annotation as supported
by pep-484, ensuring the class is imported with in
the TYPE_CHECKING block
as appropriate:
from typing import TYPE_CHECKING, List
from .mymodel import Base
if TYPE_CHECKING:
# if the target of the relationship is in another module
# that cannot normally be imported at runtime
from .myaddressmodel import Address
class User(Base):
__tablename__ = "user"
id = Column(Integer, primary_key=True)
name = Column(String)
addresses: List["Address"] = relationship("Address")
As is the case with columns, the Mapped
class may also be
applied explicitly:
class User(Base):
__tablename__ = "user"
id = Column(Integer, primary_key=True)
name = Column(String)
addresses: Mapped[List["Address"]] = relationship("Address", back_populates="user")
class Address(Base):
__tablename__ = "address"
id = Column(Integer, primary_key=True)
user_id: int = Column(ForeignKey("user.id"))
user: Mapped[User] = relationship(User, back_populates="addresses")
Using @declared_attr and Declarative Mixins¶
The declared_attr
class allows Declarative mapped attributes to
be declared in class level functions, and is particularly useful when using
declarative mixins. For these functions, the return
type of the function should be annotated using either the Mapped[]
construct or by indicating the exact kind of object returned by the function.
Additionally, “mixin” classes that are not otherwise mapped (i.e. don’t extend
from a declarative_base()
class nor are they mapped with a method
such as registry.mapped()
) should be decorated with the
declarative_mixin()
decorator, which provides a hint to the Mypy
plugin that a particular class intends to serve as a declarative mixin:
from sqlalchemy.orm import declarative_mixin, declared_attr
@declarative_mixin
class HasUpdatedAt:
@declared_attr
def updated_at(cls) -> Column[DateTime]: # uses Column
return Column(DateTime)
@declarative_mixin
class HasCompany:
@declared_attr
def company_id(cls) -> Mapped[int]: # uses Mapped
return Column(ForeignKey("company.id"))
@declared_attr
def company(cls) -> Mapped["Company"]:
return relationship("Company")
class Employee(HasUpdatedAt, HasCompany, Base):
__tablename__ = "employee"
id = Column(Integer, primary_key=True)
name = Column(String)
Note the mismatch between the actual return type of a method like
HasCompany.company
vs. what is annotated. The Mypy plugin converts
all @declared_attr
functions into simple annotated attributes to avoid
this complexity:
# what Mypy sees
class HasCompany:
company_id: Mapped[int]
company: Mapped["Company"]
Combining with Dataclasses or Other Type-Sensitive Attribute Systems¶
The examples of Python dataclasses integration at Applying ORM Mappings to an existing dataclass (legacy dataclass use) presents a problem; Python dataclasses expect an explicit type that it will use to build the class, and the value given in each assignment statement is significant. That is, a class as follows has to be stated exactly as it is in order to be accepted by dataclasses:
mapper_registry: 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")}
}
We can’t apply our Mapped[]
types to the attributes id
, name
,
etc. because they will be rejected by the @dataclass
decorator. Additionally,
Mypy has another plugin for dataclasses explicitly which can also get in the
way of what we’re doing.
The above class will actually pass Mypy’s type checking without issue; the
only thing we are missing is the ability for attributes on User
to be
used in SQL expressions, such as:
stmt = select(User.name).where(User.id.in_([1, 2, 3]))
To provide a workaround for this, the Mypy plugin has an additional feature
whereby we can specify an extra attribute _mypy_mapped_attrs
, that is
a list that encloses the class-level objects or their string names.
This attribute can be conditional within the TYPE_CHECKING
variable:
@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]
nickname: Optional[str]
addresses: List[Address] = field(default_factory=list)
if TYPE_CHECKING:
_mypy_mapped_attrs = [id, name, "fullname", "nickname", addresses]
__mapper_args__ = { # type: ignore
"properties": {"addresses": relationship("Address")}
}
With the above recipe, the attributes listed in _mypy_mapped_attrs
will be applied with the Mapped
typing information so that the
User
class will behave as a SQLAlchemy mapped class when used in a
class-bound context.