- Pratiksha Sankhe - sankhepratiksha3@gmail.com
- Jash Shah - jash28582@gmail.com
- Dushant Harinkhede - dushant.harinkhede@gmail.com
- Naman Kothari - namankothari0512@gmail.com
Data-Map is a movie recommendation website which can help users discover movies which are similar to a particular movie the user enters, but with a twist! Instead of simply listing them it creates a Map of the recommendations.
- The Map is displayed with the user entered title at the centre and the reccomended movies spread around it.
- Their attributes indicating their degree of similarity.
The user can also navigate to maps of the reccomended movies by just clicking on them.
- The ML model uses Cosine Similarity and K-Nearest Neighbours algorithms to predict the movies.
- Used Flask REST API for backend querying of model.
- react-force-graph module is used for displaying the data in map format.
- HTML/CSS/JS and React are used for building the UI and other features of the website.
- TMDB 5000 Movie DataSet is used for displaying movie info.
- GitHub repo link: GitHub
- Website link: Website
Tools and technologies that you learnt and used in the project.
- React
- Python(Pandas)
- Flask REST API
- HTML/CSS/JS
- Node.js (node module react-force-graph)
- Design and Train ML Model.
- Design Website UI.
- Setup API services to display info of Movies.
- Implement react-force-graph for creating Map.
- Create Map using react-force-graph.
- Setup API using Flask for fetching ML data.
📦Data-Map
┣ 📂public
┃ ┣ 📜favicon.ico
┃ ┣ 📜index.html
┃ ┣ 📜manifest.json
┃ ┣ 📜site.webmanifest
┃ ┗ 📜_redirects
┣ 📂src
┃ ┣ 📂Components
┃ ┃ ┣ 📂About
┃ ┃ ┃ ┣ 📜about.css
┃ ┃ ┃ ┣ 📜about.js
┃ ┃ ┃ ┗ 📜portfolio-image.png
┃ ┃ ┣ 📂Error_Page
┃ ┃ ┃ ┣ 📜PageNotFound.css
┃ ┃ ┃ ┗ 📜PageNotFound.js
┃ ┃ ┣ 📂Footer
┃ ┃ ┃ ┣ 📜Footer.css
┃ ┃ ┃ ┗ 📜Footer.js
┃ ┃ ┣ 📂Map
┃ ┃ ┃ ┗ 📜Map.js
┃ ┃ ┣ 📂Navbar
┃ ┃ ┃ ┣ 📜Navbar.css
┃ ┃ ┃ ┗ 📜Navbar.js
┃ ┃ ┣ 📂page_2
┃ ┃ ┃ ┣ 📜Map_bg.png
┃ ┃ ┃ ┣ 📜page_2.css
┃ ┃ ┃ ┗ 📜page_2.js
┃ ┃ ┣ 📂Search bar
┃ ┃ ┃ ┣ 📜Search.css
┃ ┃ ┃ ┗ 📜Search.js
┃ ┃ ┗ 📂video
┃ ┃ ┃ ┗ 📜Map_bg.mp4
┃ ┣ 📂config
┃ ┃ ┗ 📜config.js
┃ ┣ 📜App.css
┃ ┣ 📜App.js
┃ ┣ 📜App.test.js
┃ ┣ 📜index.js
┃ ┣ 📜reportWebVitals.js
┃ ┗ 📜setupTests.js
┣ 📜.gitignore
┣ 📜package-lock.json
┣ 📜package.json
┗ 📜README.md
- Making website responsive.
- Making the data model & querying better.
- Add 3d display option for graph.
- This concept can also be extended to other media recommendation systems like books, music, games, etc.
- Giving users an ability to make a wishlist and then tailor the recommendations further based on the movies in said wishlist.
In the project directory, you can run:
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.
Launches the test runner in the interactive watch mode.
See the section about running tests for more information.
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.
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.
- The user enters a movie, to which they want to find similar movies.
- The website processes the movie through its ML model and responds with movies whcih are most similar to the one entered(in terms of genre,cast,crew,rating,etc.).
- These recommendations are then displayed in a Map format with the user's choice at the centre.
- The recommendations are spread around the central movie indicating their degree of similarity.
- The link width, arrow relative position and font size of the secondary movie nodes indicates their similarity to the central movie.
It provides a visualization of recommendations which saves users from having to go through numbers, graphs, movie data themselves.
This project would not have been possible without the continous support of our mentors.