Best Practices on Recommendation Systems
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Updated
Sep 20, 2024 - Python
Best Practices on Recommendation Systems
A TensorFlow recommendation algorithm and framework in Python.
CTR prediction models based on deep learning(基于深度学习的广告推荐CTR预估模型)
A collection of resources for Recommender Systems (RecSys)
OpenRec is an open-source and modular library for neural network-inspired recommendation algorithms
⚡ A python fast implementation of the famous SVD algorithm popularized by Simon Funk during Netflix Prize
pyRecLab is a library for quickly testing and prototyping of traditional recommender system methods, such as User KNN, Item KNN and FunkSVD Collaborative Filtering. It is developed and maintained by Gabriel Sepúlveda and Vicente Domínguez, advised by Prof. Denis Parra, all of them in Computer Science Department at PUC Chile, IA Lab and SocVis Lab.
A Lighting Pytorch Framework for Recommendation System, Easy-to-use and Easy-to-extend.
Collaborative filtering recommendation system. Recommendation algorithm using collaborative filtering. Topics: Ranking algorithm, euclidean distance algorithm, slope one algorithm, filtragem colaborativa.
Machine Learning (EE 5184) in NTU
PHP and wrapping Redis's sorted set APIs for specializing recommending operations.
This is a new deep learning model for recommender system, which we called PHD
🎥 Movie Recommender AI System
商品关联关系挖掘,使用Spring Boot开发框架和Spark MLlib机器学习框架,通过FP-Growth算法,分析用户的购物车商品数据,挖掘商品之间的关联关系。项目对外提供RESTFul接口。
🔱 Some recognized algorithms[Decision Tree, Adaboost, Perceptron, Clustering, Neural network etc. ] of machine learning and pattern recognition are implemented from scratch using python. Data sets are also included to test the algorithms.
Finding recommendations between them all. Work in progress.
Code for RecSys'19 paper: Leveraging Post-click Feedback for Content Recommendations
Recommendation engine in Java. Based on an ALS algorithm (Apache Spark). Train a new model after N seconds.
A real-time news scraping and recommendation system
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