Efficient RL Training for LLMs with Experience Replay
Abstract
While Experience Replay - the practice of storing rollouts and reusing them multiple times during training - is a foundational technique in general RL, it remains largely unexplored in LLM post-training due to the prevailing belief that fresh, on-policy data is essential for high performance. In this work, we challenge this assumption. We present a systematic study of replay buffers for LLM post-training, formalizing the optimal design as a trade-off between staleness-induced variance, sample diversity and the high computational cost of generation. We show that strict on-policy sampling is suboptimal when generation is expensive. Empirically, we show that a well-designed replay buffer can drastically reduce inference compute without degrading - and in some cases even improving - final model performance, while preserving policy entropy.
Cite
@article{arxiv.2604.08706,
title = {Efficient RL Training for LLMs with Experience Replay},
author = {Charles Arnal and Vivien Cabannes and Taco Cohen and Julia Kempe and Remi Munos},
journal= {arXiv preprint arXiv:2604.08706},
year = {2026}
}