We present Ring-lite, a Mixture-of-Experts (MoE)-based large language model optimized via reinforcement learning (RL) to achieve efficient and robust reasoning capabilities. Built upon the publicly available Ling-lite model, a 16.8 billion parameter model with 2.75 billion activated parameters, our approach matches the performance of state-of-the-art (SOTA) small-scale reasoning models on challenging benchmarks (e.g., AIME, LiveCodeBench, GPQA-Diamond) while activating only one-third of the parameters required by comparable models. To accomplish this, we introduce a joint training pipeline integrating distillation with RL, revealing undocumented challenges in MoE RL training. First, we identify optimization instability during RL training, and we propose Constrained Contextual Computation Policy Optimization(C3PO), a novel approach that enhances training stability and improves computational throughput via algorithm-system co-design methodology. Second, we empirically demonstrate that selecting distillation checkpoints based on entropy loss for RL training, rather than validation metrics, yields superior performance-efficiency trade-offs in subsequent RL training. Finally, we develop a two-stage training paradigm to harmonize multi-domain data integration, addressing domain conflicts that arise in training with mixed dataset. We will release the model, dataset, and code.
Ring-lite: Scalable Reasoning via C3PO-Stabilized Reinforcement Learning for LLMs
Ring-lite uses a MoE architecture and reinforcement learning to efficiently match SOTA reasoning models while activating fewer parameters and addressing challenges specific to MoE training.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 46
- Hosting
- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2506.14731v2ARXIV-DEFAULT
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46Junbo ZhaoJia GuoYang LiJun MeiTongkai YangLei LiangZhiqiang ZhangJun ZhouZiHao WangJiaming LiuBin HuQiang GaoDing LiuFeng ZhuXin ZhaoLing TeamCai ChenDeng ZhaoHao DaiKuan XuLiang JiangLiangcheng FuLongfei ZhengShaomian ZhengShuaicheng LiWang RenXiaodong YanXiaopei WanXinyu KongXuemin YangYongkang LiuZhankai XuZhenduo ZhangZhenyu HuangZujie Wendingnan jinHongzhi LuanJiewei WuKaihong ZhangQing CuiJunwu XiongQuan WanXiaoyun FengXinxing YangYingting WuZhenglei Zhou