Skip to content

Makeesha/task-list-api

 
 

Repository files navigation

Task List API

Skills Assessed

  • Following directions and reading comprehension
  • Reading, writing, and using tests
  • Demonstrating understanding of the client-server model, request-response cycle and conventional RESTful routes
  • Driving development with independent research, experimentation, and collaboration
  • Reading and using existing external web APIs
  • Using Postman as part of the development workflow
  • Using git as part of the development workflow

Working with the Flask package:

  • Creating models
  • Creating conventional RESTful CRUD routes for a model
  • Reading query parameters to create custom behavior
  • Create unconventional routes for custom behavior
  • Apply knowledge about making requests in Python, to call an API inside of an API
  • Apply knowledge about environment variables
  • Creating a one-to-many relationship between two models

Goals

There's so much we want to do in the world! When we organize our goals into smaller, bite-sized tasks, we'll be able to track them more easily, and complete them!

If we make a web API to organize our tasks, we'll be able to create, read, update, and delete tasks as long as we have access to the Internet and our API is running!

We also want to do some interesting features with our tasks. We want to be able to:

  • Sort tasks
  • Mark them as complete
  • Get feedback about our task list through Slack
  • Organize tasks with goals

... and more!

How to Complete and Submit

Go through the waves one-by-one and build the features of this API.

At submission time, no matter where you are, submit the project via Learn.

Project Directions

This project is designed to fulfill the features described in detail in each wave. The tests are meant to only guide your development.

  1. Setup
  2. Testing
  3. Wave 1: CRUD for one model
  4. Wave 2: Using query params
  5. Wave 3: Creating custom endpoints
  6. Wave 4: Using an external web API
  7. Wave 5: Creating a second model
  8. Wave 6: Establishing a one-to-many relationship between two models
  9. Wave 7: Deployment
  10. Optional Enhancements

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 95.4%
  • Dockerfile 1.9%
  • Shell 1.4%
  • Mako 1.2%
  • Procfile 0.1%