Skip to content

Machine Learning Platform to recommend movies to users based on trending-movies and users movie-history.

Notifications You must be signed in to change notification settings

omarh8/Movie-Recommendation-using-Machine-Learning

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

6 Commits
 
 
 
 

Repository files navigation

Getting-Movies-Recommendation-Using-Machine-Learning

@authon Omar Ibna Hasan This project was bootstrapped with [Create React App](https://github.com/x Clone

This project is a simplified front end clone of Netflix. It was created with React and CSS (Grid and Flexbox). It uses The MovieDB Api to search for movies and display details. Feel free to contribute!

Tools used:

  • Webpack
  • Axios
  • Redux & React
  • Sass (grid & flexbox)
  • Media queries

Runing Project Locally

  • Install dependencies: run npm install in root project
  • Run project: yarn start

User Stories:

  • User can search for movies and TV shows on TMDb
  • User can the see upcoming and trending movies. Data updates weekly
  • User can click on a movie and a modal should pop up. It should display the title, release date, overview, and runtime.
  • The webpage adapts to any screen size.

Video Walktrough

Please feel free to create a pull request and submit any issues! Currently looking for backend developers. If you would to contribute to support a backend, reach out, all ideas are welcomed!%facebook/create-react-app).

Available Scripts

In the project directory, you can run:

yarn start

Runs the app in the development mode.
Open http://localhost:3000 to view it in the browser.

The page will reload if you make edits.
You will also see any lint errors in the console.

yarn test

Launches the test runner in the interactive watch mode.
See the section about running tests for more information.

yarn build

Builds the app for production to the build folder.
It correctly bundles React in production mode and optimizes the build for the best performance.

The build is minified and the filenames include the hashes.
Your app is ready to be deployed!

See the section about deployment for more information.

yarn eject

Note: this is a one-way operation. Once you eject, you can’t go back!

If you aren’t satisfied with the build tool and configuration choices, you can eject at any time. This command will remove the single build dependency from your project.

Instead, it will copy all the configuration files and the transitive dependencies (webpack, Babel, ESLint, etc) right into your project so you have full control over them. All of the commands except eject will still work, but they will point to the copied scripts so you can tweak them. At this point you’re on your own.

You don’t have to ever use eject. The curated feature set is suitable for small and middle deployments, and you shouldn’t feel obligated to use this feature. However we understand that this tool wouldn’t be useful if you couldn’t customize it when you are ready for it.

Learn More

You can learn more in the Create React App documentation.

To learn React, check out the React documentation.

Code Splitting

This section has moved here: https://facebook.github.io/create-react-app/docs/code-splitting

Analyzing the Bundle Size

This section has moved here: https://facebook.github.io/create-react-app/docs/analyzing-the-bundle-size

Making a Progressive Web App

This section has moved here: https://facebook.github.io/create-react-app/docs/making-a-progressive-web-app

Advanced Configuration

This section has moved here: https://facebook.github.io/create-react-app/docs/advanced-configuration

Deployment

This section has moved here: https://facebook.github.io/create-react-app/docs/deployment

yarn build fails to minify

This section has moved here: https://facebook.github.io/create-react-app/docs/troubleshooting#npm-run-build-fails-to-minify

About

Machine Learning Platform to recommend movies to users based on trending-movies and users movie-history.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published