Book Recommendation System built for Book Lovers📖. Simply Rate ⭐ some books and get immediate recommendations🤩
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Updated
Dec 1, 2022 - HTML
Book Recommendation System built for Book Lovers📖. Simply Rate ⭐ some books and get immediate recommendations🤩
A collection of papers on divergence and quality diversity
推荐算法个人学习笔记以及代码实战
This repository contains collaborative filtering recommender system build in Python with surprise package to predict book ratings in Book-Crossing dataset.
An AutoRecSys library for Surprise. Automate algorithm selection and hyperparameter tuning 🚀
Get an overview of sneak previews in your local cinema(s)
📱 Trigger easter eggs on mobile device
Client side escape room with mini-tasks leading to a final prize for @muskanrastogi1's birthday.
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.
Recommendation system for inter-related content. Uses natural language processing and collaborative filtering. Provides recommendations for books, movies, tvshows
A python notebook for building collaborative, content-based, and ml-based recommender systems with Sklearn and Surprise
Where do people look on images in average? At rare, thus surprising things! Let's compute them automatically
Farfetch: Understanding the customer
Comparing different recommendation systems algorithms like SVD, SVDpp (Matrix Factorization), KNN Baseline, KNN Basic, KNN Means, KNN ZScore), Baseline, Co Clustering
Repository of OpenClassrooms' AI Engineer path, project #9 : create a books recommandation system, integrate and deploy it as a mobile app
surprise ur crush, friends, family, or lovely person to yourself with this flower 🌸🌹
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