Replies: 4 comments
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from typing import Optional
from sqlmodel import SQLModel, Field
from sqlalchemy import Column, Integer
from sqlalchemy.ext.declarative import declarative_base
from typing_extensions import Annotated
BaseSQLModel = declarative_base() # SQLAlchemy declarative base class
class SQLModelMixin(SQLModel):
class Config:
orm_mode = True
class AnnotatedField:
def __init__(self, *annotations):
self.annotations = annotations
class Hero(SQLModelMixin, BaseSQLModel):
__tablename__ = "heroes"
id: Annotated[Optional[int], Field(default=None, primary_key=True), Column(Integer)] = None
name: Annotated[str, Field(default=None), Column(String)]Usagehero_instance = Hero(id=1, name="Superman")
print(hero_instance) |
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That would be totally awesome! |
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@tiangolo Just did a quick test, because this now seems to be supported by Pydantic: This works just as expected: class Foo(SQLModel, table=True):
id: Annotated[int | None, Field(primary_key=True)] = None
uuid: Annotated[UUID, Field(unique=True)]...and returns this SQL: CREATE TABLE foo (
id INTEGER NOT NULL,
uuid CHAR(32) NOT NULL,
PRIMARY KEY (id),
UNIQUE (uuid)
)But this does not work: class Foo(SQLModel, table=True):
id: Annotated[int | None, Field(primary_key=True)] = None
uuid: Annotated[UUID, Field(unique=True)]
class Bar(SQLModel, table=True):
id: Annotated[int | None, Field(primary_key=True)] = None
uuid: Annotated[UUID, Field(unique=True)]
foo_id: Annotated[int, Field(foreign_key="foo.id")]
foo: Annotated[Foo, Relationship()]...instead, it throws a When using the non- class Foo(SQLModel, table=True):
id: Annotated[int | None, Field(primary_key=True)] = None
uuid: Annotated[UUID, Field(unique=True)]
class Bar(SQLModel, table=True):
id: Annotated[int | None, Field(primary_key=True)] = None
uuid: Annotated[UUID, Field(unique=True)]
foo_id: Annotated[int, Field(foreign_key="foo.id")]
foo: Foo = Relationship()...and correctly creates the foreign key in SQL: CREATE TABLE foo (
id INTEGER NOT NULL,
uuid CHAR(32) NOT NULL,
PRIMARY KEY (id),
UNIQUE (uuid)
)
CREATE TABLE bar (
id INTEGER NOT NULL,
uuid CHAR(32) NOT NULL,
foo_id INTEGER NOT NULL,
PRIMARY KEY (id),
UNIQUE (uuid),
FOREIGN KEY(foo_id) REFERENCES foo (id)
)I'm not sure how SQLModel "discovers" the relationship field, but it sounds not too complicated to adapt it to also look in the annotation, not just in the default value, given that Pydantic seems to parse these annotations already. Maybe there's some way to just access them. |
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@tiangolo Can you take a look at #1192 that implements the suggestions in this issue? |
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Description
This is a continuation of a discussion on Twitter: https://twitter.com/tiangolo/status/1484092599166287874
I think the work in SQLModel is amazing, I can't even begin to comprehend how complex it is behind the scenes.
One thing I've been wondering about, not related to SQLModel in particular but rather to the general ecosystem of "models" in Python (classes with fields? not sure what the technical term is here. I'm referring to dataclasses, Pydantic, SQLAlchemy, Piccolo, etc.) is if we could use PEP 593's
Annotatedto increase composability between these libraries.Most of these libraries use some sort of marker as a default value on fields to include metadata:
I'm only using SQLModel as an example here, but
Fieldcould be Pydantic'sField, SQLAlchemy'sColumn, dataclasses'field, etc.The issue here is that
Fieldis only valid in the context ofSQLModel (or Pydantic or SQLAlchemy or whatever particular library). And it has to contain information for Pydantic (like JSON schema examples) as well as SQLAlchemy (primary keys, etc.).Using
Annotatedthis could look like:In other words, you can have any number of markers you want, and the libraries that use these markers can just ignore markers they don't recognize.
Possibly even more difficult, if we could move away from base classes with meta classes that would improve composability even further. Think
from pydantic import to_json; to_json(SomeModel)instead of having Pydantic createSomeModel.json. I think that's a totally different topic though.I'm not sure if this solves any problems, but I thought it's an interesting idea worth sharing.
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Linux
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