Topic: recommendation-engine Goto Github
Some thing interesting about recommendation-engine
Some thing interesting about recommendation-engine
recommendation-engine,A collection of small bash scripts for heavy terminal users
User: alexanderepstein
recommendation-engine,Pearson correlation coefficient calculator
User: alfonsojimenez
recommendation-engine,:bar_chart: A Recombee integration for Laravel
User: amranidev
recommendation-engine,Recommendations for Ruby and Rails using collaborative filtering
User: ankane
recommendation-engine,Recommendations for Node.js using collaborative filtering
User: ankane
recommendation-engine,Recommendations for Rust using collaborative filtering
User: ankane
recommendation-engine,Predict and recommend the news articles, user is most likely to click in real time.
User: appurwar
recommendation-engine,Basic Movie Recommendation Web Application using user-item collaborative filtering.
User: asif536
recommendation-engine,a recommender engine node-js package for general use and easy to integrate.
User: bibs2091
Home Page: https://pprec.netlify.app/
recommendation-engine,Apache Zeppelin notebooks for Recommendation Engines using Keras and Machine Learning on Apache Spark
User: binga
recommendation-engine,Implements the paper "Wukong: Towards a Scaling Law for Large-Scale Recommendation" from Meta.
User: clabrugere
recommendation-engine,A Python implementation of the Bellkor Algorithm
User: dandxy89
recommendation-engine,RecDB is a recommendation engine built entirely inside PostgreSQL
Organization: datasystemslab
recommendation-engine,DeepRec is a high-performance recommendation deep learning framework based on TensorFlow. It is hosted in incubation in LF AI & Data Foundation.
Organization: deeprec-ai
recommendation-engine,Simple recommendation engine implementation built on top of Redis
Organization: furqansoftware
recommendation-engine,Source code of CHAMELEON - A Deep Learning Meta-Architecture for News Recommender Systems
User: gabrielspmoreira
recommendation-engine,A simple recommendation engine for Rails/Postgres
User: geoffreylitt
recommendation-engine,A C library for product recommendations/suggestions using collaborative filtering (CF)
User: ghamrouni
recommendation-engine,Neo4j-based recommendation engine module with real-time and pre-computed recommendations.
Organization: graphaware
recommendation-engine,Java-Based Context-aware Recommendation Library
User: irecsys
Home Page: https://carskit.github.io/
recommendation-engine,A curated list of repositories for my book Machine Learning Solutions.
User: jalajthanaki
recommendation-engine,This repository contains the code for building movie recommendation engine.
User: jalajthanaki
recommendation-engine,Movie Recommendation Chatbot provides information about a movie like plot, genre, revenue, budget, imdb rating, imdb links, etc. The model was trained with Kaggle’s movies metadata dataset. To give a recommendation of similar movies, Cosine Similarity and TFID vectorizer were used. Slack API was used to provide a Front End for the chatbot. IBM Watson was used to link the Python code for Natural Language Processing with the front end hosted on Slack API. Libraries like nltk, sklearn, pandas and nlp were used to perform Natural Language Processing and cater to user queries and responses.
User: kaushikjadhav01
recommendation-engine,Towards A Standardized Tag Recommender Benchmarking Framework
Organization: learning-layers
Home Page: http://www.dominikkowald.info
recommendation-engine,A lightweight product recommendation system (Item Based Collaborative Filtering) developed in Haskell.
User: lenguyenthedat
recommendation-engine,recommender system tutorial with Python
User: lsjsj92
recommendation-engine,This repository contains recent research papers, datasets, and source codes (if any) for Group Recommendation
User: lucasvinhtran
recommendation-engine,Site de recommandation de mangas et d'anime
Organization: mangaki
Home Page: https://mangaki.fr
recommendation-engine,RecTools - library to build Recommendation Systems easier and faster than ever before
Organization: mobiletelesystems
recommendation-engine,A simple movie recommendation engine
User: nikhil22
recommendation-engine,NReco Recommender is a .NET port of Apache Mahout CF java engine (standalone, non-Hadoop version)
Organization: nreco
Home Page: https://www.nrecosite.com/recommender_net.aspx
recommendation-engine,Deep learning for recommender systems
Organization: nvidia
recommendation-engine,⚡️ Implementation of TRON: Transformer Recommender using Optimized Negative-sampling, accepted at ACM RecSys 2023.
Organization: otto-de
Home Page: https://arxiv.org/abs/2307.14906
recommendation-engine,Book Recommendation System built for Book Lovers📖. Simply Rate ⭐ some books and get immediate recommendations🤩
User: praful932
Home Page: https://kitabe.up.railway.app/
recommendation-engine,A Comparative Framework for Multimodal Recommender Systems
Organization: preferredai
Home Page: https://cornac.preferred.ai
recommendation-engine,machine learning framework for node.js
User: proin
recommendation-engine,Best Practices on Recommendation Systems
Organization: recommenders-team
Home Page: https://recommenders-team.github.io/recommenders/intro.html
recommendation-engine,Movie Recommendation System: Project using R and Machine learning
User: rpita623
recommendation-engine,In-memory recommendation algorithm for Swift apps
User: ryanashcraft
recommendation-engine,Machine Learning Platform and Recommendation Engine built on Kubernetes
Organization: seldonio
Home Page: https://www.seldon.io/
recommendation-engine,Source code and dataset for paper "CBMR: An optimized MapReduce for item‐based collaborative filtering recommendation algorithm with empirical analysis"
User: tinylcy
recommendation-engine,Free and open source code of the https://tournesol.app platform. Meet the community on Discord https://discord.gg/WvcSG55Bf3
Organization: tournesol-app
Home Page: https://tournesol.app
recommendation-engine,Recommendation engine based on collaborative filtering
User: tsonono
Home Page: https://www.npmjs.com/package/collaborative-filter
recommendation-engine,Music Recommender System
User: ucalyptus
Home Page: https://ucalyptus.github.io/Spotify-Recommendation-Engine/
recommendation-engine,Deep learning based image similarity search for product recommendations
User: vinayakarannil
recommendation-engine,电影推荐系统、电影推荐引擎、使用Spark完成的电影推荐引擎
User: wangj1106
recommendation-engine,A step-by-step tutorial on developing a practical recommendation system (retrieval and ranking) using TensorFlow Recommenders and Keras.
User: xei
recommendation-engine,Machine learning for beginner(Data Science enthusiast)
User: yug95
recommendation-engine,PHP and wrapping Redis's sorted set APIs for specializing recommending operations.
User: yuzurus
Home Page: https://packagist.org/packages/yuzuru-s/redis-recommend
recommendation-engine,Recommendation Models in TensorFlow
User: yxtay
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