Dependency injection toolkit


Keywords
dependency-injection, inversion-of-control, SOLID, IoC, DI, dependency-injector, python
License
MIT
Install
pip install di==0.79.2

Documentation

di: dependency injection toolkit

Test Coverage Package version Supported Python versions

di is a modern dependency injection toolkit, modeled around the simplicity of FastAPI's dependency injection.

Key features:

  • Intuitive: simple API, inspired by FastAPI.
  • Auto-wiring: di supports auto-wiring using type annotations.
  • Scopes: inspired by pytest scopes, but defined by users (no fixed "request" or "session" scopes).
  • Composable: decoupled internal APIs give you the flexibility to customize wiring, execution and binding.
  • Performant: di can execute dependencies in parallel and cache results ins scopes. Performance critical parts are written in 🦀 via graphlib2.

Installation

pip install di[anyio]

⚠️ This project is a work in progress. Until there is 1.X.Y release, expect breaking changes. ⚠️

Simple Example

Here is a simple example of how di works:

from dataclasses import dataclass

from di import Container
from di.dependent import Dependent
from di.executors import SyncExecutor


class A:
    ...


class B:
    ...


@dataclass
class C:
    a: A
    b: B


def main():
    container = Container()
    executor = SyncExecutor()
    solved = container.solve(Dependent(C, scope="request"), scopes=["request"])
    with container.enter_scope("request") as state:
        c = solved.execute_sync(executor=executor, state=state)
    assert isinstance(c, C)
    assert isinstance(c.a, A)
    assert isinstance(c.b, B)

For more examples, see our docs.

Why do I need dependency injection in Python? Isn't that a Java thing?

Dependency injection is a software architecture technique that helps us achieve inversion of control and dependency inversion (one of the five SOLID design principles).

It is a common misconception that traditional software design principles do not apply to Python. As a matter of fact, you are probably using a lot of these techniques already!

For example, the transport argument to httpx's Client (docs) is an excellent example of dependency injection. Pytest, arguably the most popular Python test framework, uses dependency injection in the form of pytest fixtures.

Most web frameworks employ inversion of control: when you define a view / controller, the web framework calls you! The same thing applies to CLIs (like click) or TUIs (like Textual). This is especially true for many newer web frameworks that not only use inversion of control but also dependency injection. Two great examples of this are FastAPI and BlackSheep.

For a more comprehensive overview of Python projects related to dependency injection, see Awesome Dependency Injection in Python.

Project Aims

This project aims to be a dependency injection toolkit, with a focus on providing the underlying dependency injection functionality for other libraries.

In other words, while you could use this as a standalone dependency injection framework, you may find it to be a bit terse and verbose. There are also much more mature standalone dependency injection frameworks; I would recommend at least looking into python-dependency-injector since it is currently the most popular / widely used of the bunch.

For more background, see our docs.