• Stars
    star
    129
  • Rank 279,262 (Top 6 %)
  • Language
    Python
  • License
    MIT License
  • Created almost 2 years ago
  • Updated over 1 year ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

A scalable and production ready boilerplate for FastAPI

FastAPI Production Template

A scalable and production ready boilerplate for FastAPI

Table of Contents

Project Overview

This boilerplate follows a layered architecture that includes a model layer, a repository layer, a controller layer, and an API layer. Its directory structure is designed to isolate boilerplate code within the core directory, which requires minimal attention, thereby facilitating quick and easy feature development. The directory structure is also generally very predictable. The project's primary objective is to offer a production-ready boilerplate with a better developer experience and readily available features. It also has some widely used features like authentication, authorization, database migrations, type checking, etc which are discussed in detail in the Features section.

Features

  • Python 3.11+ support
  • SQLAlchemy 2.0+ support
  • Asynchoronous capabilities
  • Database migrations using Alembic
  • Basic Authentication using JWT
  • Row Level Access Control for permissions
  • Redis for caching
  • Celery for background tasks
  • Testing suite
  • Type checking using mypy
  • Dockerized database and redis
  • Readily available CRUD operations
  • Linting using pylint
  • Formatting using black

Installation Guide

You need following to run this project:

I use asdf to manage my python versions. You can use it too. However, it is only supported on Linux and macOS. For Windows, you can use something like pyenv.

Once you have installed the above and have cloned the repository, you can follow the following steps to get the project up and running:

  1. Create a virtual environment using poetry:
poetry shell
  1. Install the dependencies:
poetry install
  1. Run the database and redis containers:
docker-compose up -d
  1. Copy the .env.example file to .env and update the values as per your needs.

  2. Run the migrations:

make migrate
  1. Run the server:
make run

The server should now be running on http://localhost:8000 and the API documentation should be available at http://localhost:8000/docs.

Usage Guide

The project is designed to be modular and scalable. There are 3 main directories in the project:

  1. core: This directory contains the central part of this project. It contains most of the boiler plate code like security dependencies, database connections, configuration, middlewares etc. It also contains the base classes for the models, repositories, and controllers. The core directory is designed to be as minimal as possible and usually requires minimal attention. Overall, the core directory is designed to be as generic as possible and can be used in any project. While building additional feature you may not need to modify this directory at all except for adding more controllers to the Factory class in core/factory.py.

  2. app: This directory contains the actual application code. It contains the models, repositories, controllers, and schemas for the application. This is the directory you will be spending most of your time in while building features. The directory has following sub-directories:

    • models Here is where you add new tables
    • repositories For each model, you need to create a repository. This is where you add the CRUD operations for the model.
    • controllers For each logical unit of the application, you need to create a controller. This is where you add the business logic for the application.
    • schemas This is where you add the schemas for the application. The schemas are used for validation and serialization/deserialization of the data.
  3. api: This directory contains the API layer of the application. It contains the API router, it is where you add the API endpoints.

Advanced Usage

The boilerplate contains a lot of features some of which are used in the application and some of which are not. The following sections describe the features in detail.

Database Migrations

The migrations are handled by Alembic. The migrations are stored in the migrations directory. To create a new migration, you can run the following command:

make generate-migration

It will ask you for a message for the migration. Once you enter the message, it will create a new migration file in the migrations directory. You can then run the migrations using the following command:

make migrate

If you need to downgrade the database or reset it. You can use make rollback and make reset-database respectively.

Authentication

The authentication used is basic implementation of JWT with bearer token. When the bearer token is supplied in the Authorization header, the token is verified and the user is automatically authenticated by setting request.user.id using middleware. To use the user model in any endpoint you can use the get_current_user dependency. If for any endpoint you want to enforce authentication, you can use the AuthenticationRequired dependency. It will raise a HTTPException if the user is not authenticated.

Row Level Access Control

The boilerplate contains a custom row level permissions management module. It is inspired by fastapi-permissions. It is located in core/security/access_control.py. You can use this to enforce different permissions for different models. The module operates based on Principals and permissions. Every user has their own set of principals which need to be set using a function. Check core/fastapi/dependencies/permissions.py for an example. The principals are then used to check the permissions for the user. The permissions need to be defined at the model level. Check app/models/user.py for an example. Then you can use the dependency directly in the route to raise a HTTPException if the user does not have the required permissions. Below is an incomplete example:

from fastapi import APIRouter, Depends
from core.security.access_control import AccessControl, UserPrincipal, RolePrincipal, Allow
from core.database import Base

class User(Base):
    __tablename__ = "users"
    id = Column(Integer, primary_key=True)
    name = Column(String)
    email = Column(String, unique=True)
    password = Column(String)
    role = Column(String)

    def __acl__(self):
        return [
            (Allow, UserPrincipal(self.id), "view"),
            (Allow, RolePrincipal("admin"), "delete"),
        ]

def get_user_principals(user: User = Depends(get_current_user)):
    return [UserPrincipal(user.id)]

Permission = AccessControl(get_user_principals)

router = APIRouter()

@router.get("/users/{user_id}")
def get_user(user_id: int, user: User = get_user(user_id), assert_access = Permission("view")):
    assert_access(user)
    return user

Caching

You can directly use the Cache.cached decorator from core.cache. Example

from core.cache import Cache

@Cache.cached(prefix="user", ttl=60)
def get_user(user_id: int):
    ...

Celery

The celery worker is already configured for the app. You can add your tasks in worker/ to run the celery worker, you can run the following command:

make celery-worker

Session Management

The sessions are already handled by the middleware and get_session dependency which injected into the repositories through fastapi dependency injection inside the Factory class in core/factory.py. There is also Transactional decorator which can be used to wrap the functions which need to be executed in a transaction. Example:

@Transactional()
async def some_mutating_function():
    ...

Note: The decorator already handles the commit and rollback of the transaction. You do not need to do it manually.

If for any case you need an isolated sessions you can use standalone_session decorator from core.database. Example:

@standalone_session
async def do_something():
    ...

Repository Pattern

The boilerplate uses the repository pattern. Every model has a repository and all of them inherit base repository from core/repository. The repositories are located in app/repositories. The repositories are injected into the controllers inside the Factory class in core/factory/factory.py.py.

The base repository has the basic crud operations. All customer operations can be added to the specific repository. Example:

from core.repository import BaseRepository
from app.models.user import User
from sqlalchemy.sql.expression import select

class UserRepository(BaseRepository[User]):
    async def get_by_email(self, email: str):
        return await select(User).filter(User.email == email).gino.first()

To facilitate easier access to queries with complex joins, the BaseRepository class has a _query function (along with other handy functions like _all() and _one_or_none()) which can be used to write compplex queries very easily. Example:

async def get_user_by_email_join_tasks(email: str):
    query = await self._query(join_)
    query = query.filter(User.email == email)
    return await self._one_or_none(query)

Note: For every join you want to make you need to create a function in the same repository with pattern _join_{name}. Example: _join_tasks for tasks. Example:

async def _join_tasks(self, query: Select) -> Select:
    return query.options(joinedload(User.tasks))

Controllers

Kind of to repositories, every logical unit of the application has a controller. The controller also has a primary repository which is injected into it. The controllers are located in app/controllers.

These controllers contain all the business logic of the application. Check app/controllers/auth.py for an example.

Schemas

The schemas are located in app/schemas. The schemas are used to validate the request body and response body. The schemas are also used to generate the OpenAPI documentation. The schemas are inherited from BaseModel from pydantic. The schemas are primarily isolated into requests and responses which are pretty self explainatory.

Formatting

You can use make format to format the code using black and isort.

Linting

You can use make lint to lint the code using pylint.

Testing

The project contains tests for all endpoints, some of the logical components like JWTHander and AccessControl and an example of testing complex inner components like BaseRepository. The tests are located in tests/. You can run the tests using make test.

Contributing

Contributions are higly welcome. Please open an issue or a PR if you want to contribute.

License

This project is licensed under the terms of the MIT license. See the LICENSE file.

Acknowledgements

More Repositories

1

Reddit-Stock-Trends

Fetch currently trending stocks on Reddit
Python
1,489
star
2

cs-algorithms

πŸ’» Algorithms that you must know as computer science student
C++
218
star
3

ML-FromScratch

Machine Learning Algorithms implemented in various languages from scratch
Jupyter Notebook
21
star
4

URL-Shortener

A quick URL shortner built using Flask + MySQL and containerized using Docker
VBA
6
star
5

Transformer-Stories

Generating horror stories using GPT-2
Jupyter Notebook
4
star
6

pepper

Pepper is React Template for Developer Portfolio
JavaScript
3
star
7

Parked

App developed for INDENG 85 - Amazoogle Challenge Lab
JavaScript
3
star
8

Lost-n-Found

PHP
3
star
9

Reddit-Crypto-Trends

Show currently trending crypto currencies in Reddit
3
star
10

Coronavirus-Data-Visualization

Visualization of 2019-nCov Data
Jupyter Notebook
3
star
11

Campus-Maintenance-System

JavaScript
3
star
12

smart-surveillance-using-pi

Implementation of person detection using SSD-MobileNet on Microcomputer platform
CSS
2
star
13

bar-chart-race-py

Attempting to recrfeate "Bar Chart Race" the new famous animation using python
Python
2
star
14

uc-berkeley-bit

Berkeley Index for Tenacity
Jupyter Notebook
2
star
15

violence-detection

Used AWS' Rekognition API to detect violent in every 5th frame of the video
Python
2
star
16

Live-Face-Blur

Jupyter Notebook
2
star
17

ellipse-limb-detection

bounds limbs into ellipses using openpose
Python
2
star
18

OOP-Java-CS301-Lab

LAB problems in JAVA for CS301 course
Java
2
star
19

NeedCovidHelp

A public directory built for covid-19 related resources in India
CSS
1
star
20

tuya-api-tetris

JavaScript
1
star
21

Forest-Fires-Prediction

Understanding Forest Fires through data
Jupyter Notebook
1
star
22

gradient-descent

Visualize gradient descent in 2D Plane using
Python
1
star
23

rawfiles

Raw Hosted Files
JavaScript
1
star
24

object-detection-tf

Object Detection using Tensorflow
Jupyter Notebook
1
star
25

React-Community-Elements

Collection of React Styled Components created by the community.
JavaScript
1
star
26

LaHacks2020

CSS
1
star
27

PicoCTF-2021

Write ups for PicoCTF 2021 challenges that I completed
1
star
28

Handwritten-Digit-Recognition

99.5% Accuracy Score with MNIST Dataset
Jupyter Notebook
1
star
29

Docs

Personal Docs site
1
star
30

limeprompt

Light weight prompter and parser for language models
Python
1
star