RL4RS
Recommender system toolkit
A collection of real-world datasets and practical reinforcement learning baselines for recommendation systems.
A Real-World Benchmark for Reinforcement Learning based Recommender System
220 stars
6 watching
26 forks
Language: Python
last commit: 10 months ago
Linked from 1 awesome list
Related projects:
Repository | Description | Stars |
---|---|---|
deepgraphlearning/recommendersystems | A comprehensive library of algorithms and techniques for building recommender systems | 1,102 |
rucaibox/recsysdatasets | A repository of public data sources for Recommender Systems. | 856 |
alibaba/easyrec | A framework for building and deploying scalable recommendation algorithms | 1,784 |
deeplearningbrasil/mars-gym | A framework for building and evaluating recommender systems using reinforcement learning | 51 |
rlworkgroup/garage | A toolkit for developing and evaluating reinforcement learning algorithms in a reproducible manner | 1,880 |
jfkirk/tensorrec | A Python framework for building recommendation systems using TensorFlow. | 1,277 |
astrazeneca/rexmex | A library providing a comprehensive set of metrics and tools for evaluating recommender systems | 278 |
practical-recommender-systems/moviegeek | A Django-based website demonstrating how to implement recommender algorithms with a dataset from themoviedb.org API. | 906 |
rle-foundation/rlexplore | Provides a unified toolkit for constructing, computing, and optimizing intrinsic reward modules in reinforcement learning | 366 |
ankane/torchrec-ruby | A deep learning-based recommendation system framework for Ruby | 34 |
google-research/rlds | A toolkit for storing and manipulating episodic data in reinforcement learning and related tasks. | 293 |
ocelma/python-recsys | A library for building and using collaborative filtering-based recommender systems | 1,475 |
preferredai/cornac | A tool for building and comparing multimodal recommender systems using various machine learning algorithms. | 884 |
ghamrouni/recommender | A C-based system for predicting product recommendations using collaborative filtering algorithms | 264 |
jjkke88/rl_toolbox | A collection of reinforcement learning algorithms and tools for training agents in complex environments. | 43 |