Difference between revisions of "FastAPI"

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(Course 1)
(Project 2 - Pydentics and data validations)
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With '''Pydantics''':
 
With '''Pydantics''':
 
* We're gonna create a different request model for data validation.
 
* We're gonna create a different request model for data validation.
* We're gonna add Pydantics Field data validation on each variable/element of the request.
+
* We're gonna add Pydantics Field data validation on each variable/element of the request body.
 +
 
 +
 
 +
With Pydantic can add data validation for the post or put request body; but not for our path parameters.
 +
In order to add validationsfor path parameters, we can use the '''<code>Path()</code>''' class from <code>fastapi</code>
  
  

Revision as of 20:47, 10 June 2023

FastAPI official documentation: https://fastapi.tiangolo.com



Course 1

FastAPI - The Complete Course 2023 (Beginner + Advanced): https://www.udemy.com/course/fastapi-the-complete-course/

Source code: https://github.com/codingwithroby/FastAPI-The-Complete-Course


Theory


HTTP request methods

CRUD operations and HTTP requests 2.png
CRUD operations and HTTP requests 3.png


  • CRUD:
  • GET  : Read method: retrieves data
  • POST  : Create method, to submit data. POST can have a body that has additional information that GET does not have.
  • PUT  : Update the entire resource. PUT can also have a body.
  • PATCH  : Update part of the resource
  • DELETE : Delete the resource
  • TRACE  : Performs a message loop-back to the target
  • OPTIONS : Describes communication options to the target
  • CONNECT : Creates a tunnel to the server, based on the target resource



Response status code

  • 1xx : Informational Response: Requestprocessing
  • 2xx : Success: Request successfully complete
  • 3xx : Redirection: Further action must be complete
  • 4xx : Client Errors: An error was caused by the request from the client
  • 5xx : Server Errors: An error has occurred on the server



Project 1 - A first very basic exemple


Creating a FastAPI application:

project_1/books.py

from fastapi import FastAPI, Body

app = FastAPI()


BOOKS = [
    {'title': 'Title One',   'author': 'Author One',   'category': 'science'},
    {'title': 'Title Two',   'author': 'Author Two',   'category': 'science'},
    {'title': 'Title Three', 'author': 'Author Three', 'category': 'history'},
    {'title': 'Title Four',  'author': 'Author Four',  'category': 'math'},
    {'title': 'Title Five',  'author': 'Author Five',  'category': 'math'},
    {'title': 'Title Six',   'author': 'Author Two',   'category': 'math'}
]


@app.get("/books")
async def read_all_books():
    return BOOKS


@app.get("/books/{book_title}")        # path parameter
async def read_book(book_title: str):
    for book in BOOKS:
        if book.get('title').casefold() == book_title.casefold():
            return book


@app.get("/books/")                    # query parameter:  http://127.0.0.1:8000/books/?category=science
async def read_category_by_query(category: str):
    books_to_return = []
    for book in BOOKS:
        if book.get('category').casefold() == category.casefold():
            books_to_return.append(book)
    return books_to_return


@app.get("/books/byauthor/")           # Get all books from a specific author using path or query parameters 
async def read_books_by_author_path(author: str):
    books_to_return = []
    for book in BOOKS:
        if book.get('author').casefold() == author.casefold():
            books_to_return.append(book)

    return books_to_return


@app.get("/books/{book_author}/")      # Using path parameters AND query parameters
async def read_author_category_by_query(book_author: str, category: str):
    books_to_return = []
    for book in BOOKS:
        if book.get('author').casefold() == book_author.casefold() and \
                book.get('category').casefold() == category.casefold():
            books_to_return.append(book)

    return books_to_return


@app.post("/books/create_book")        # This end-point doesn't have any parameter but it has a required «body» where we can pass a new book entry, such as {"title": "Title Seven", "author": "Author One", "category": "history"}
async def create_book(new_book=Body()):
    BOOKS.append(new_book)


@app.put("/books/update_book")         # As in the case of the POST method, PUT requires a «body» where we can also pass a book. In this case, if we pass a new book whose title matches some of the existing books, it will be updated. For example: {"title": "Title Six", "author": "Author One", "category": "history"}
async def update_book(updated_book=Body()):
    for i in range(len(BOOKS)):
        if BOOKS[i].get('title').casefold() == updated_book.get('title').casefold():
            BOOKS[i] = updated_book


@app.delete("/books/delete_book/{book_title}")
async def delete_book(book_title: str):
    for i in range(len(BOOKS)):
        if BOOKS[i].get('title').casefold() == book_title.casefold():
            BOOKS.pop(i)
            break


We can run our first app:

uvicorn books:app --reload


http://127.0.0.1:8000/books

FastAPI has an integrated Swagger: http://127.0.0.1:8000/docs

Take a look at this lesson https://www.udemy.com/course/fastapi-the-complete-course/learn/lecture/29025524#overview to see how to try a post request using Swagger.



Project 2 - Pydentics and data validations

Pydantics is used for data modeling, data parsing and has efficient error handling. Pydantics is commonly used as a resource for data validation and how to handle data comming to our FastAPI application.


With Pydantics:

  • We're gonna create a different request model for data validation.
  • We're gonna add Pydantics Field data validation on each variable/element of the request body.


With Pydantic can add data validation for the post or put request body; but not for our path parameters. In order to add validationsfor path parameters, we can use the Path() class from fastapi


project_2/books2.py



Course 2

Build a Modern API with FastAPI and Python: https://www.udemy.com/course/build-a-movie-tracking-api-with-fastapi-and-python/


During this course we will build a Movie Tracking API with Fast API and Python for tracking movies.


  • Section 2: Environment Setup
We will install Pycharm, Docker and Docker-compose and Insomnia. If you already have an environment you can skip this section.
Note: If you're an university student you can apply for a free licence of Pycharm Professional here: https://www.jetbrains.com/community/education/#students
  • Section 3: Docker Basic
We will learn some basic docker commands that will help us in improving our workflow.
  • Section 4: MongoDB Basics
We will learn very basic MongoDB commands and we'll execute them inside the docker container and in Pycharm Professional.
  • Section 5: Web API Project Structure
In this section we'll learn how to structure the project and we will write some basic endpoints with FastAPI just to make you more familiar with writing endpoints.
  • Section 6: Storage Layer
We talk about CRUD and we'll apply the repository pattern to develop and In-Memory repository and a MongoDB repository in order to use them within our application. We will also test the implementations.
  • Section 7: Movie Tracker API
We will write the actual API for tracking movies using the previous developed components. We'll implement the application's settings module and we'll add pagination to some of the routes. In the end we will write unit tests.
  • Section 8: Middleware
We'll talk about Fast API middleware and how to write your own custom middleware.
  • Section 9: Authentication
We'll talk about implementing Basic Authentication and validating JWT tokens.
  • Section 10: Deployment
We'll containerize the application and we will deploy it on a local microk8s kubernetes cluster. In the end we'll visualise some metrics with Grafana. Having metrics is a good way to observe your applications performance and behaviour and troubleshoot it.


Environment setup

  • python3, python3-pip, docker, docker Compose.
  • IDE: The instructor is using Pycharm Professional, which is paid but we can install Pycharm community. On Ubuntu:
sudo snap install pycharm-community --classic


  • Database: MongoDB in a Docker container
DB IDE:
  • I thinks the instructor is also using PyCharm.
  • I'll be using the MongoDB for VS Code extension:
https://www.mongodb.com/products/vs-code
https://www.youtube.com/watch?v=MLWlWrRAb4w
https://www.youtube.com/watch?v=1d_G8jr0KJE


  • For testing the API we are going to use Insomnia, which is a powerful REST client that allows developers to interact with and test RESTful APIs. It provides a user-friendly interface for making HTTP requests, inspecting responses, and debugging API interactions. The tool is often used for tasks such as sending requests, setting headers, managing authentication, and viewing API documentation.
To install it on Ubuntu:
sudo snap install insomnia



Creating our Mongo Docker comtainer using docker-compose

docker-compose.yaml

version: '3.1'

services:
  mongo:
    image: mongo:5.0.14
    restart: always
    ports:
      - "27017:27017"
docker-compose up -d



MongoDB basics

We can start our MongoDB shell by:

docker exec -it fastapi-rest-api-movie-tracker-mongo-1 mongosh

Or we can use our favory DB IDE to manage our MongoDB. I'm using MongoDB for VS Code extension.


Let's see some MongoDB basics:

playground-1.mongodb.js

show('databases')    // show databases can be used from mongosh
use('movies')        // use movies can be used from mongosh. If the movies collection doesn't exits it will create it

db.movies.insertOne({'title':'My Movie', 'year':2022, watched:false})

db.movies.insertMany([
    {
        'title': 'The Shawshank Redemption',
        'year': 1994,
        'watched': false
    },
    {
        'title': 'The Dark Knkght',
        'year': 2008,
        'watched': false
    },
    {
        'title': 'Puld Fiction',
        'year': 1994,
        'watched': false
    },
    {
        'title': 'Fight Club',
        'year': 1999,
        'watched': false
    },
    {
        'title': 'The Lord of the Rings: The Two Towers',
        'year': 2002,
        'watched': false
    },
])

db.movies.findOne()

// Find all the movies
db.movies.find()

// Filtering by title
db.movies.find({'title': 'Fight Club'})

// Find a movie that has been produced before 2000
db.movies.find({'year': {'$lt': 2000}})

// Filter by id
db.movies.find({'_id':ObjectId('647b582d74a86f2cb913d881')})

// Find all movies but skip the first one and limit the result to only 2 movies
db.movies.find().skip(1).limit(2)

// Sorting
db.movies.find().sort({'year':-1})  // 1: ascending; -1: descending

// Select only some attributes
db.movies.find({}, {'title':1, 'year':1})
db.movies.find({}, {'title':0})

// Delete a document
db.movies.deleteOne({'_id': ObjectId('647b55cdc98722c8abe8ee94')})
db.movies.find()

// Updating
db.movies.updateOne({'_id': ObjectId('647b582d74a86f2cb913d87e')}, {$set: {'watched': true}})
db.movies.updateOne({'_id': ObjectId('647b582d74a86f2cb913d87e')}, {$inc: {'year': -3}})
db.movies.find()