AI比赛经验帖子 & 训练和测试技巧帖子 集锦(收集整理各种人工智能比赛经验帖)
-
Updated
Jul 30, 2025 - HTML
AI比赛经验帖子 & 训练和测试技巧帖子 集锦(收集整理各种人工智能比赛经验帖)
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
resources of FAST-NUCES 2020-2024
CAPRI: Context-Aware Interpretable Point-of-Interest Recommendation Framework
An end-to-end restaurant recommendation system built with Flask and Python. This project showcases a fully functional web application, hosted on Heroku, that helps users discover the best dining options based on their preferences.
FeedCrunch.IO - Take RSS Feeds to the next level with personnalized 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
SQL-based Recommendation System for multi-topic recommendations
Recommend League of Legends teams using a neighborhood based recommender system written in Golang
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.
A recommender engine based on Collaborative Filtering of the games available on the Steam Game Store
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
A machine learning algorithm for recommending the top N results for a multi-class target.
This is a web application for movie recommendation based on Flask, HTML and Python
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."