This website applies a recommendation system and continuous learning.
-
Updated
May 25, 2024 - EJS
This website applies a recommendation system and continuous learning.
Introducción al Aprendizaje No Supervisado en Español
Recommending movies to user using various Colaborative Filtering and Content Based Filtering.
Research about Massive Data Processing Techniques in Data Science
The is a course project, a within-class kaggle competition targeting to recommend the courses to the potential buyer.
Sistema de Recomendacion de la plataforma Steam desarrollado
This is a list of personal projects
Tool for simplifying to perform experiments with collaborative filtering models
Recommender System Project This repository contains the implementation of various recommender system algorithms, including KNN, SVM, Decision Tree, and Matrix Factorization. The primary focus is on Matrix Factorization to provide personalized movie recommendations using the MovieLens dataset.
✨🎬 Explore seu Próximo Filme Favorito! Um sistema de recomendação colaborativa que personaliza sua experiência de entretenimento. 🍿✨
Popularity based, Content based recommender & Colaborative Filtering systems
Demos of various data science projects I completed - August 2023 to present. Mostly Module Assignments from MIT Course. Will add personal projects in the future here as well.
To develop a Book Recommender System using collaborative filtering with k-NN using a dataset with 278,858 users and 1,149,780 book ratings.
Recommendation system using collaborative filtering applied on e-commerce websites
A Collaborative Filtering Implementation in Rust
3 of the simplest recomendation system. Colaborative filter, content filter and hybrid filters
This Repo contains The Implementation of Content-Based Recommended System and Collaborative Filtering Recommended System for movies dataset in python.
Add a description, image, and links to the colaborative-filtering topic page so that developers can more easily learn about it.
To associate your repository with the colaborative-filtering topic, visit your repo's landing page and select "manage topics."