Improving Data Efficiency for LLM Reinforcement Fine-tuning Through Difficulty-targeted Online Data Selection and Rollout Replay
June 10, 2025·
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0 min read
Yifan Sun
Equal contribution
,Jingyan Shen
Equal contribution
Yibin Wang
Equal contribution
,Tianyu Chen
Zhendong Wang
Mingyuan Zhou
Huan Zhang

Abstract
Reinforcement learning (RL) has become an effective approach for fine-tuning large language models (LLMs), particularly to enhance their reasoning capabilities. However, RL fine-tuning remains highly resource-intensive, and existing work has largely overlooked the problem of data efficiency. In this paper, we propose two techniques to improve data efficiency in LLM RL fine-tuning: difficulty-targeted online data selection and rollout replay. We introduce the notion of adaptive difficulty to guide online data selection, prioritizing questions of moderate difficulty that are more likely to yield informative learning signals. To estimate adaptive difficulty efficiently, we develop an attention-based framework that requires rollouts for only a small reference set of questions. The adaptive difficulty of the remaining questions is then estimated based on their similarity to this set. To further reduce rollout cost, we introduce a rollout replay mechanism inspired by experience replay in traditional RL. This technique reuses recent rollouts, lowering per-step computation while maintaining stable updates. Experiments across 6 LLM-dataset combinations show that our method reduces RL fine-tuning time by 23% to 62% while reaching the same level of performance as the original GRPO algorithm. Our code is available at this https URL.
Type
Publication
Advances in Neural Information Processing Systems (NeurIPS), 2025

Authors
Yibin Wang
(he/him)
Incoming Ph.D. student
I am an incoming Ph.D. student in the Computer Science Department at Rutgers University. I received my Bachelor’s degree at Huazhong University of Science and Technology in 2024. I was under the guidance of Prof. Kun He @ HUST, Prof. Hao Wang @ Rutgers and Prof. Huan Zhang @ UIUC.
From such a gentle thing, from such a fountain of all delight, my every pain is born.
—— Michelangelo