Basic Movie Recommendation Web Application using user-item collaborative filtering.
-
Updated
Jul 18, 2022 - HTML
Basic Movie Recommendation Web Application using user-item collaborative filtering.
📖Notes and remarks on Machine Learning related papers
Fashion Shop App : Flask, ChatterBot, ElasticSearch, Recommender-System
Repository for the Honor Track of Recommender Systems Specialization from University of Minnesota on Coursera
CAPRI: Context-Aware Interpretable Point-of-Interest Recommendation Framework
FeedCrunch.IO - Take RSS Feeds to the next level with personnalized recommendations
resources of FAST-NUCES 2020-2024
This repository contains code for the Recommendation system to find restaurants. An End to End Project developed using Flask and python. The website is hosted on Heroku.
Recommend League of Legends teams using a neighborhood based recommender system written in Golang
SQL-based Recommendation System for multi-topic recommendations
This repo contains of various components of the Interactive web app : Edu Squad , designed on the theme of Adaptive Learning. Features are implemented, so as to help make the virtual Learning fun & efficient
A recommender engine based on Collaborative Filtering of the games available on the Steam Game Store
A machine learning algorithm for recommending the top N results for a multi-class target.
Project with examples of different recommender systems created with the Surprise framework. Different algorithms (with a collaborative filtering approach) are explored, such as KNN or SVD.
This is a web application for movie recommendation based on Flask, HTML and Python
Movie Recommendation Engine using PySpark
Music recommender using Flask, PostgreSQL and the Spotify API
Recommendation system for inter-related content. Uses natural language processing and collaborative filtering. Provides recommendations for books, movies, tvshows
Add a description, image, and links to the recommender-system topic page so that developers can more easily learn about it.
To associate your repository with the recommender-system topic, visit your repo's landing page and select "manage topics."