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Easy async ORM for python, built with relations in mind

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Introduction

Tortoise ORM is an easy-to-use asyncio ORM (Object Relational Mapper) inspired by Django.

You can find the docs at Documentation

Tortoise ORM supports CPython 3.9 and later for SQLite, MySQL, PostgreSQL, Microsoft SQL Server, and Oracle.

Why was Tortoise ORM built?

Tortoise ORM was built to provide a lightweight, async-native Object-Relational Mapper for Python with a familiar Django-like API.

Tortoise ORM performs well when compared to other Python ORMs. In our benchmarks, where we measure different read and write operations (rows/sec, more is better), it’s trading places with Pony ORM:

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How is an ORM useful?

An Object-Relational Mapper (ORM) abstracts database interactions, allowing developers to work with databases using high-level, object-oriented code instead of raw SQL.

  • Reduces boilerplate SQL, allowing faster development with cleaner, more readable code.

  • Helps prevent SQL injection by using parameterized queries.

  • Centralized schema and relationship definitions make code easier to manage and modify.

  • Handles schema changes through version-controlled migrations.

Getting Started

Installation

The following table shows the available installation options for different databases (note that there are multiple options of clients for some databases):

Available Installation Options

Database

Installation Command

SQLite

pip install tortoise-orm

PostgreSQL (psycopg)

pip install tortoise-orm[psycopg]

PostgreSQL (asyncpg)

pip install tortoise-orm[asyncpg]

MySQL (aiomysql)

pip install tortoise-orm[aiomysql]

MySQL (asyncmy)

pip install tortoise-orm[asyncmy]

MS SQL

pip install tortoise-orm[asyncodbc]

Oracle

pip install tortoise-orm[asyncodbc]

Quick Tutorial

Define the models by inheriting from tortoise.models.Model.

from tortoise.models import Model
from tortoise import fields

class Tournament(Model):
    id = fields.IntField(primary_key=True)
    name = fields.CharField(max_length=20)


class Event(Model):
    id = fields.BigIntField(primary_key=True)
    name = fields.TextField()
    tournament = fields.ForeignKeyField('models.Tournament', related_name='events', on_delete=fields.OnDelete.CASCADE)
    participants = fields.ManyToManyField('models.Team', related_name='events', through='event_team', on_delete=fields.OnDelete.SET_NULL)


class Team(Model):
    id = fields.UUIDField(primary_key=True)
    name = fields.CharField(max_length=20, unique=True)

After defining the models, Tortoise ORM needs to be initialized to establish the relationships between models and connect to the database. The code below creates a connection to a SQLite DB database with the aiosqlite client. generate_schema sets up schema on an empty database. generate_schema is for development purposes only, check out aerich or other migration tools for production use.

from tortoise import Tortoise, run_async

async def init():
    # Here we connect to a SQLite DB file.
    # also specify the app name of "models"
    # which contain models from "app.models"
    await Tortoise.init(
        db_url='sqlite://db.sqlite3',
        modules={'models': ['app.models']}
    )
    # Generate the schema
    await Tortoise.generate_schemas()

run_async(main())

run_async is a helper function to run simple Tortoise scripts. Check out Documentation for FastAPI, Sanic and other integrations.

With the Tortoise initialized, the models are available for use:

async def main():
    await Tortoise.init(
        db_url='sqlite://db.sqlite3',
        modules={'models': ['app.models']}
    )
    await Tortoise.generate_schemas()

    # Creating an instance with .save()
    tournament = Tournament(name='New Tournament')
    await tournament.save()

    # Or with .create()
    await Event.create(name='Without participants', tournament=tournament)
    event = await Event.create(name='Test', tournament=tournament)
    participants = []
    for i in range(2):
        team = await Team.create(name='Team {}'.format(i + 1))
        participants.append(team)

    # One to Many (ForeignKey) relations support creating related objects
    another_event = await tournament.events.create(name='Another Event')

    # Many to Many Relationship management is quite straightforward
    # (there are .remove(...) and .clear() too)
    await event.participants.add(*participants)

    # Iterate over related entities with the async context manager
    async for team in event.participants:
        print(team.name)

    # The related entities are cached and can be iterated in the synchronous way afterwards
    for team in event.participants:
        pass

    # Use prefetch_related to fetch related objects
    selected_events = await Event.filter(
        participants=participants[0].id
    ).prefetch_related('participants', 'tournament')
    for event in selected_events:
        print(event.tournament.name)
        print([t.name for t in event.participants])

    # Prefetch multiple levels of related entities
    await Team.all().prefetch_related('events__tournament')

    # Filter and order by related models too
    await Tournament.filter(
        events__name__in=['Test', 'Prod']
    ).order_by('-events__participants__name').distinct()

run_async(main())

Learn more at the documentation site

Migration

Tortoise ORM uses Aerich as its database migration tool, see more detail at its docs.

Contributing

Please have a look at the Contribution Guide.

ThanksTo

Powerful Python IDE Pycharm from Jetbrains.

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License

This project is licensed under the Apache License - see the LICENSE.txt file for details.

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