Flask-vs-FastAPI - Understanding Flask vs FastAPI Web Framework. A comparison of two different RestAPI frameworks.

Overview

Flask-vs-FastAPI

Understanding Flask vs FastAPI Web Framework. A comparison of two different RestAPI frameworks.

IntroductionIn

Flask is a popular micro framework for building web applications. Since it is a micro-framework, it is very easy to use and lacks most of the advanced functionality which is found in a full-fledged framework. Therefore, building a REST API in Flask is very simple.

In this blog, I will introduce two different frameworks that can quickly set up web servers: Flask and FastAPI. Both Flask and FastAPI are frameworks that are used for building small-scale websites and applications.

Flask Framework

Flask was released in 2010, a micro web framework written in python to support the deployment of web applications with a minimal amount of code. It is designed to be an easy setup, flexible and fast to deploy as a microservice. Flask is built on WSGI (Python Web Server Gateway Interface) whereby the server will tie up a worker for each request. Below is an example of deploying using Flask (This is an example of using a ‘GET’ method to get user inputs and return the sqaure of the input value)

HTTP Methods

FastAPI Framework

FastAPI is more recent compared to Flask and was released in 2018. It works similarly to Flask which supports the deployment of web applications with a minimal amount of code. However, FastAPI is faster compare to Flask as it is built on ASGI (Asynchronous Server Gateway Interface) whereby it supports concurrency / asynchronous code. This is done by declaring the endpoints with async def syntax.

A good thing to highlight for FastAPI is the documentation. Upon deploying with FastAPI Framework, it will generate documentation and creates an interactive GUI (Swagger UI) which allows developers to test the API endpoints more conveniently.

Below is an example of deploying using FastAPI (This is an example of using a ‘GET’ method to get user inputs and insert the values into Google Big Query — this example is deployed on Google Cloud Run)

HTTP Methods

Upon finish deploying with Flask, you can run the URL and pass the input in the URL and a message will be returned which works similarly to Flask.

Now, this is the additional function from FastAPI that really makes me excited which is the automated generated docs (Swagger UI). To access the Swagger UI enter the API endpoint /docs and there you go — an interactive GUI to test your API endpoints. Having a Swagger UI makes it easier to explain your program to others as well.

By using Swagger UI, you can easily test your API endpoints and specifying the parameters via the interface. For example, in the image below, you can easily specify the “Book Title” and “Author” in the column provided.

HTTP Methods

Other than Swagger UI, FastAPI also comes with another documentation — “ReDoc”. The documentation consists of all the endpoints listed which is useful if you are having many endpoints deployed in the same service. To access the documentation page enter the API endpoint /redoc.

HTTP Methods

Comparison of Flask and FastAPI:

HTTP Methods :

HTTP Methods

To specify a “GET” or “POST” method is different in Flask and FastAPI.

Passing Parameter & Data Validation :

HTTP Methods

Flask does not provide validation on the data format which means the user can pass any type of data such as string or integer etc. (Alternatively, a validation script on the input data receive can be built into the script, but this will require additional effort)

FastAPI allows developers to declare additional criteria and validation on the parameter received.

Asynchronous Tasks:

HTTP Methods

As mention in the earlier part of this article, Flask is deployed on WSGI (Python Web Server Gateway Interface) which does not support asynchronous tasks where else FastAPI is deployed on ASGI (Asynchronous Server Gateway Interface) which supports asynchronous tasks.

Conclusion:

After looking into both Flask and FastAPI, I would consider adopting FastAPI in the future as it has asynchronous functions and automated generated documents which is very detailed and complete. Additionally, the effort required to deploy using FastAPI is the same as Flask.

If you had been using Flask all the while, you can consider trying out FastAPI and observe the comparison.

Owner
Mithlesh Navlakhe
Keen application development with Hands-on technologies like - Python, Flask, Numpy, Ionic, iOS
Mithlesh Navlakhe
🐍Pywork is a Yeoman generator to scaffold a Bare-bone Python Application

Pywork python app yeoman generator Yeoman | Npm Pywork | Home PyWork is a Yeoman generator for a basic python-worker project that makes use of Pipenv,

Vu Tran 10 Dec 16, 2022
Regex Converter for Flask URL Routes

Flask-Reggie Enable Regex Routes within Flask Installation pip install flask-reggie Configuration To enable regex routes within your application from

Rhys Elsmore 48 Mar 07, 2022
Sample project showing reliable data ingestion application using FastAPI and dramatiq

Create and deploy a reliable data ingestion service with FastAPI, SQLModel and Dramatiq This is the source code for the data ingestion service explain

François Voron 31 Nov 30, 2022
FastAPI backend for Repost

Repost FastAPI This is the FastAPI implementation of the Repost API. Installation Python 3 must be installed and accessible through the use of a termi

PC 7 Jun 15, 2021
Redis-based rate-limiting for FastAPI

Redis-based rate-limiting for FastAPI

Glib 6 Nov 14, 2022
Utils for fastapi based services.

Installation pip install fastapi-serviceutils Usage For more details and usage see: readthedocs Development Getting started After cloning the repo

Simon Kallfass 31 Nov 25, 2022
Boilerplate code for quick docker implementation of REST API with JWT Authentication using FastAPI, PostgreSQL and PgAdmin ⭐

FRDP Boilerplate code for quick docker implementation of REST API with JWT Authentication using FastAPI, PostgreSQL and PgAdmin ⛏ . Getting Started Fe

BnademOverflow 53 Dec 29, 2022
Toolkit for developing and maintaining ML models

modelkit Python framework for production ML systems. modelkit is a minimalist yet powerful MLOps library for Python, built for people who want to depl

140 Dec 27, 2022
FastAPI-PostgreSQL-Celery-RabbitMQ-Redis bakcend with Docker containerization

FastAPI - PostgreSQL - Celery - Rabbitmq backend This source code implements the following architecture: All the required database endpoints are imple

Juan Esteban Aristizabal 54 Nov 26, 2022
Deploy/View images to database sqlite with fastapi

Deploy/View images to database sqlite with fastapi cd realistic Dependencies dat

Fredh Macau 1 Jan 04, 2022
Full stack, modern web application generator. Using FastAPI, PostgreSQL as database, Docker, automatic HTTPS and more.

Full Stack FastAPI and PostgreSQL - Base Project Generator Generate a backend and frontend stack using Python, including interactive API documentation

Sebastián Ramírez 10.8k Jan 08, 2023
Qwerkey is a social media platform for connecting and learning more about mechanical keyboards built on React and Redux in the frontend and Flask in the backend on top of a PostgreSQL database.

Flask React Project This is the backend for the Flask React project. Getting started Clone this repository (only this branch) git clone https://github

Peter Mai 22 Dec 20, 2022
API for Submarino store

submarino-api API for the submarino e-commerce documentation read the documentation in: https://submarino-api.herokuapp.com/docs or in https://submari

Miguel 1 Oct 14, 2021
This project shows how to serve an ONNX-optimized image classification model as a web service with FastAPI, Docker, and Kubernetes.

Deploying ML models with FastAPI, Docker, and Kubernetes By: Sayak Paul and Chansung Park This project shows how to serve an ONNX-optimized image clas

Sayak Paul 104 Dec 23, 2022
🐞 A debug toolbar for FastAPI based on the original django-debug-toolbar. 🐞

Debug Toolbar 🐞 A debug toolbar for FastAPI based on the original django-debug-toolbar. 🐞 Swagger UI & GraphQL are supported. Documentation: https:/

Dani 74 Dec 30, 2022
API written using Fast API to manage events and implement a leaderboard / badge system.

Open Food Facts Events API written using Fast API to manage events and implement a leaderboard / badge system. Installation To run the API locally, ru

Open Food Facts 5 Jan 07, 2023
Beyonic API Python official client library simplified examples using Flask, Django and Fast API.

Beyonic API Python Examples. The beyonic APIs Doc Reference: https://apidocs.beyonic.com/ To start using the Beyonic API Python API, you need to start

Harun Mbaabu Mwenda 46 Sep 01, 2022
FastAPI client generator

FastAPI-based API Client Generator Generate a mypy- and IDE-friendly API client from an OpenAPI spec. Sync and async interfaces are both available Com

David Montague 283 Jan 04, 2023
High-performance Async REST API, in Python. FastAPI + GINO + Arq + Uvicorn (w/ Redis and PostgreSQL).

fastapi-gino-arq-uvicorn High-performance Async REST API, in Python. FastAPI + GINO + Arq + Uvicorn (powered by Redis & PostgreSQL). Contents Get Star

Leo Sussan 351 Jan 04, 2023
API using python and Fastapi framework

Welcome 👋 CFCApi is a API DEVELOPMENT PROJECT UNDER CODE FOR COMMUNITY ! Project Walkthrough 🚀 CFCApi run on Python using FASTapi Framework Docs The

Abhishek kushwaha 7 Jan 02, 2023