Recommendations for Node.js using collaborative filtering
-
Updated
Jun 27, 2026 - JavaScript
Recommendations for Node.js using collaborative filtering
Recommendation engine based on collaborative filtering
machine learning framework for node.js
Recommender system engine on NodeJS
Package provides java implementation of content collaborative filtering for recommend-er system
🍽🍻 Restauration & food recommendation engine and chatbot, built with React, NodeJS and Python
Recommender System for research papers in Computer Science.
Movie Recommendation using Matrix Factorisation, User based collaborative and Item based collaborative filtering
Private repo of the project (Tawsiah) artifacts and docs.
Orbital 2016
A Very Good Recommendation Engine for Node.js
JAM.LIVE - Watch and vibe to YouTube videos with friends in perfect sync. A free, real-time alternative to Spotify Jam
Recommendation engine for netflix movies based on movie tags and user history
Search engine for IPFS and blockchain domains
Personalized Anime & Manga recommendation engine based on your AniList and MyAnimeList profiles
A movie recommendation system inspired by the design of NETFLIX which fetches data dynamically from TMDB database and studies the user based on multiple parameters
A virtual decorator assistant that provides personalized product recommendations for the Decoreiro e-commerce store. The backend is built with Python/Flask and integrates with the PrestaShop API to fetch products in real-time.
The NodeJs project for context-aware recommendation.
This is a game recommendation system project that I developed to put into practice some Machine Learning techniques, so the goal is for the user to add the games that have already been played by him and add it to his profile, and later receive the recommendation of new games.
A modern, full-stack restaurant ordering platform that revolutionizes dining experiences through QR code technology, real-time order management, and intelligent food recommendations powered by TensorFlow.js.
Add a description, image, and links to the recommendation-engine topic page so that developers can more easily learn about it.
To associate your repository with the recommendation-engine topic, visit your repo's landing page and select "manage topics."