We introduce ROLL, an efficient, scalable, and user-friendly library designed for Reinforcement Learning Optimization for Large-scale Learning. ROLL caters to three primary user groups: tech pioneers aiming for cost-effective, fault-tolerant large-scale training, developers requiring flexible control over training workflows, and researchers seeking agile experimentation. ROLL is built upon several key modules to serve these user groups effectively. First, a single-controller architecture combined with an abstraction of the parallel worker simplifies the development of the training pipeline. Second, the parallel strategy and data transfer modules enable efficient and scalable training. Third, the rollout scheduler offers fine-grained management of each sample's lifecycle during the rollout stage. Fourth, the environment worker and reward worker support rapid and flexible experimentation with agentic RL algorithms and reward designs. Finally, AutoDeviceMapping allows users to assign resources to different models flexibly across various stages.
Reinforcement Learning Optimization for Large-Scale Learning: An Efficient and User-Friendly Scaling Library
We introduce ROLL, an efficient, scalable, and user-friendly library designed for Reinforcement Learning Optimization for Large-scale Learning.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 41
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2506.06122ARXIV-DEFAULT
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41Mingjie LiuZichen LiuLin QuBo ZhengWei GaoXiang LiWei WangJiaheng LiuWeixun WangShaopan XiongGengru ChenSheng GuoYancheng HeJu HuangZhendong LiXiaoyang LiHaizhou ZhaoDakai AnLunxi CaoQiyang CaoWanxi DengFeilei DuYiliang GuJiahe LiYijia LuoZihe LiuYadao WangPei WangTianyuan WuYanan WuYuheng ZhaoShuaibing ZhaoJin YangSiran YangYingshui TanHuimin YiYuchi XuYujin YuanXingyao ZhangWenbo SuJiamang Wang