Async-first dependency injection library based on python type hints

Overview

Dependency Depression

Async-first dependency injection library based on python type hints

Quickstart

First let's create a class we would be injecting:

class Test:
    pass

Then we should create instance of container and register our Test class in it, we would use Callable provider that would simply call our class, since classes are also callables!

from dependency_depression import Depression, Callable

container = Depression()
container.register(Test, Callable(Test))

Then we should create a context and resolve our class from it:

with container.sync_context() as ctx:
    ctx.resolve(Test)
    # < __main__.Test>

Injecting

To mark parameters for injection mark them with typing.Annotated and Inject marker

from typing import Annotated
from dependency_depression import Callable, Depression, Inject


def create_number() -> int:
    return 42


def create_str(number: Annotated[int, Inject]) -> str:
    return str(number)

container = Depression()
container.register(str, Callable(create_str))
container.register(int, Callable(create_number))

with container.sync_context() as ctx:
    string = ctx.resolve(str)
    print(string, type(string))
    # 42 
   

Providers

When creating a provider you should specify the type it returns, but it can be inferred from class type or function return type:

from dependency_depression import Callable

provider = Callable(int)
# Is the same as Callable(factory=int, impl=int)
assert provider.provide_sync() == 0

Example using factory function, impl is inferred from return type hint:

from dependency_depression import Callable


def create_foo() -> str:
    return "foo"


provider = Callable(create_foo)
assert provider.provide_sync() == "foo"
assert provider.impl is str

This all comes into play when you have multiple implementations for base class and want to retrieve individual providers from a container,
let's register two concrete classes under same interface:

from dependency_depression import Depression, Callable


class Base:
    pass


class ConcreteA(Base):
    pass


class ConcreteB(Base):
    pass


container = Depression()
container.register(Base, Callable(ConcreteA))
container.register(Base, Callable(ConcreteB))

with container.sync_context() as ctx:
    a = ctx.resolve(Base, ConcreteA)  # <__main__.ConcreteA>
    b = ctx.resolve(Base, ConcreteB)  # <__main__.ConcreteB>
    
    # This would raise an error since we have two classes registered as `Base`
    ctx.resolve(Base)

If you have multiple classes registered under same interface you can specify concrete class using Impl marker:

from typing import Annotated
from dependency_depression import Inject, Impl


class Injectee:
    def __init__(
        self,
        a: Annotated[Base, Inject, Impl[ConcreteA]],
        b: Annotated[Base, Inject, Impl[ConcreteB]],
    ):
        pass

You can also just register concrete classes instead:

container.register(ConcreteA, Callable(ConcreteA))
container.register(ConcreteB, Callable(ConcreteB))

class Injectee:
    def __init__(
        self,
        a: Annotated[ConcreteA, Inject],
        b: Annotated[ConcreteB, Inject],
    ):
        pass

Generics

Dependency Depression can also be used with Generics:

T: raise NotImplementedError class UserRepository(IRepository[User]): def get(self, identity: int) -> User: return User(id=identity, username="Username") class ItemRepository(IRepository[Item]): def get(self, identity: int) -> Item: return Item(id=identity, title="Title") class Injectee: def __init__( self, user_repository: Annotated[IRepository[User], Inject], item_repository: Annotated[IRepository[Item], Inject], ): self.user_repository = user_repository self.item_repository = item_repository container = Depression() container.register(IRepository[User], Callable(UserRepository)) container.register(IRepository[Item], Callable(ItemRepository)) container.register(Injectee, Callable(Injectee)) with container.sync_context() as ctx: injectee = ctx.resolve(Injectee) injectee.user_repository # < __main__.UserRepository> injectee.item_repository # <__main__.ItemRepository>">
import dataclasses
from typing import Generic, TypeVar, Annotated

from dependency_depression import Inject, Depression, Callable

T = TypeVar("T")


@dataclasses.dataclass
class User:
    id: int
    username: str


@dataclasses.dataclass
class Item:
    id: int
    title: str


class IRepository(Generic[T]):
    def get(self, identity: int) -> T:
        raise NotImplementedError


class UserRepository(IRepository[User]):
    def get(self, identity: int) -> User:
        return User(id=identity, username="Username")

    
class ItemRepository(IRepository[Item]):
    def get(self, identity: int) -> Item:
        return Item(id=identity, title="Title")

    
class Injectee:
    def __init__(
        self,
        user_repository: Annotated[IRepository[User], Inject],
        item_repository: Annotated[IRepository[Item], Inject],
    ):
        self.user_repository = user_repository
        self.item_repository = item_repository


container = Depression()
container.register(IRepository[User], Callable(UserRepository))
container.register(IRepository[Item], Callable(ItemRepository))
container.register(Injectee, Callable(Injectee))

with container.sync_context() as ctx:
    injectee = ctx.resolve(Injectee)
    injectee.user_repository
    # < __main__.UserRepository>
    injectee.item_repository
    # <__main__.ItemRepository>

Context

Context as meant to be used within application or request scope, it keeps instances cache and an ExitStack to close all resources.

Cache

Context keeps cache of all instances, so they won't be created again, unless use_cache=False or NoCache is used.

In this example passing use_cache=False would cause context to create instance of Test again, however it wouldn't be cached:

from dependency_depression import Callable, Depression


class Test:
    pass


container = Depression()
container.register(Test, Callable(Test))

with container.sync_context() as ctx:
    first = ctx.resolve(Test)
    
    assert first is not ctx.resolve(Test, use_cache=False)
    # first is still cached in context
    assert first is ctx.resolve(Test)

Closing resources using context managers

Context would also use functions decorated with contextlib.contextmanager or contextlib.asyncontextmanager, but it won't use other instances of ContextManager.
Note that you're not passing impl parameter should specify return type using Iterable, Generator or their async counterparts - AsyncIterableand AsyncGenerator:

import contextlib
from typing import Iterable

from dependency_depression import Depression, Callable


@contextlib.contextmanager
def contextmanager() -> Iterable[int]:
    yield 42


class ContextManager:
    def __enter__(self):
        # This would never be called
        raise ValueError

    def __exit__(self, exc_type, exc_val, exc_tb):
        pass


container = Depression()

# Without return type hint you can specify impl parameter:
# container.register(int, Callable(contextmanager, int))
container.register(int, Callable(contextmanager))
container.register(ContextManager, Callable(ContextManager))

with container.sync_context() as ctx:
    number = ctx.resolve(int)  # 42
    ctx_manager = ctx.resolve(ContextManager) # __enter__ would not be called
    with ctx_manager:
        ...
        # Oops, ValueError raised

In case you need to manage lifecycle of your objects you should wrap them in a context manager:

import contextlib
from typing import AsyncGenerator

from dependency_depression import Callable, Depression
from sqlalchemy.ext.asyncio import AsyncSession


@contextlib.asynccontextmanager
async def get_session() -> AsyncGenerator[AsyncSession, None]:
    session = AsyncSession()
    async with session:
        try:
            yield session
        except Exception:
            await session.rollback()
            raise

container = Depression()
container.register(AsyncSession, Callable(AsyncSession))

@Inject decorator

@inject decorator allows you to automatically inject parameters into functions:

from typing import Annotated

from dependency_depression import Callable, Depression, Inject, inject


@inject
def injectee(number: Annotated[int, Inject]):
    return number


container = Depression()
container.register(int, Callable(int))

with container.sync_context():
    print(injectee())
    # 0

Without active context number parameter would not be injected:

injectee()
# TypeError: injectee() missing 1 required positional argument: 'number'

But you still can use your function just fine

print(injectee(42))

You can pass parameters even if you have an active context:

with container.sync_context():
    print(injectee())  # 0, injected
    print(injectee(42))  # 42, provided by user

Usage with Asyncio

Dependency Depression can be used in async context, just use context instead of sync_context:

import asyncio

from dependency_depression import Callable, Depression


async def get_number() -> int:
    await asyncio.sleep(1)
    return 42


async def main():
    container = Depression()
    container.register(int, Callable(get_number))
    async with container.context() as ctx:
        number = await ctx.resolve(int)
        assert number == 42


if __name__ == '__main__':
    asyncio.run(main())

Async context also supports both sync and async context managers and factory functions.

Owner
Doctor
Doctor
CBLang is a programming language aiming to fix most of my problems with Python

CBLang A bad programming language made in Python. CBLang is a programming language aiming to fix most of my problems with Python (this means that you

Chadderbox 43 Dec 22, 2022
100 Days of Python Programming

100 days of Python Following the initiative of my friend Helber Belmiro, who is almost done with his 100 days of Java, I have decided to start my 100

Henrique Pereira 19 Nov 08, 2021
Goddard A collection of small, simple strategies for Freqtrade

Goddard A collection of small, simple strategies for Freqtrade. Simply add the strategy you choose in your strategies folder and run. ⚠️ General Crypt

Shane Jones 118 Dec 14, 2022
Taking the fight to the establishment.

Throwdown Taking the fight to the establishment. Wat? I wanted a simple markdown interpreter in python and/or javascript to output html for my website

Trevor van Hoof 1 Feb 01, 2022
A middle-to-high level algorithm book designed with coding interview at heart!

Hands-on Algorithmic Problem Solving A one-stop coding interview prep book! About this book In short, this is a middle-to-high level algorithm book de

Li Yin 1.8k Jan 02, 2023
Simple dependency injection framework for Python

A simple, strictly typed dependency injection library.

BentoML 14 Jun 29, 2022
Programmatic startup/shutdown of ASGI apps.

asgi-lifespan Programmatically send startup/shutdown lifespan events into ASGI applications. When used in combination with an ASGI-capable HTTP client

Florimond Manca 129 Dec 27, 2022
Python script to combine the statistical results of a TOPAS simulation that was split up into multiple batches.

topas-merge-simulations Python script to combine the statistical results of a TOPAS simulation that was split up into multiple batches At the top of t

Sebastian Schäfer 1 Aug 16, 2022
A random cat fact python module

A random cat fact python module

Fayas Noushad 4 Nov 28, 2021
Get information about what a Python frame is currently doing, particularly the AST node being executed

executing This mini-package lets you get information about what a frame is currently doing, particularly the AST node being executed. Usage Getting th

Alex Hall 211 Jan 01, 2023
Strawberry Benchmark With Python

Strawberry benchmarks these benchmarks have been made to compare the performance of dataloaders and joined database queries. How to use You can run th

Doctor 4 Feb 23, 2022
Python script to autodetect a base set of swiftlint rules.

swiftlint-autodetect Python script to autodetect a base set of swiftlint rules. Installation brew install pipx

Jonathan Wight 24 Sep 20, 2022
Powerful virtual assistant in python

Virtual assistant in python Powerful virtual assistant in python Set up Step 1: download repo and unzip Step 2: pip install requirements.txt (if py au

Arkal 3 Jan 23, 2022
We'll be using HTML, CSS and JavaScript for the frontend

We'll be using HTML, CSS and JavaScript for the frontend. Nothing to install in specific. Open your text-editor and start coding a beautiful front-end.

Mugada sai tilak 1 Dec 15, 2021
This tool don't used illegal ativity

ETHICALTOOL This tool for only educational purposes don't used illegal ativity @onlinehacking this tool for pkg update && pkg upgrade && pkg install g

Mrkarthick 4 Dec 23, 2021
Fisherman is a free open source fishing bot written in python.

Fisherman is a free open source fishing bot written in python.

Pure | Cody 33 Jan 29, 2022
Feapder的管道扩展

FEAPDER 管道扩展 简介 此模块为feapder的pipelines扩展,感谢广大开发者对feapder的贡献 随着feapder支持的pipelines越来越多,为减少feapder的体积,特将pipelines提出,使用者可按需安装 管道 PostgreSQL 贡献者:沈瑞祥 联系方式:r

boris 9 Dec 07, 2022
Код файнтюнинга оригинального CLIP на русский язык

О чем репозиторий В этом репозитории представлен способ файтюнить оригинальный CLIP на новый язык Почему модель не видит женщину и откуда на картинке

Valentina Biryukova 7 Feb 06, 2022
Reload all Blender add-on modules

Reload-Addon This add-on creates a list of the modules that the add-on selected in the drop-down menu contains and reloads them with the keyboard shor

2 Dec 02, 2021
Python code for YouTube videos.

#This is a open source project. Python 3 These files are mainly intended to accompany my series of YouTube tutorial videos here, https://www.youtube.c

Joe James 1.3k Dec 26, 2022