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FP8-RL: A Practical and Stable Low-Precision Stack for LLM Reinforcement Learning

Machine Learning 2026-04-13 v2 Computation and Language

Abstract

Reinforcement learning (RL) for large language models (LLMs) is increasingly bottlenecked by rollout (generation), where long output sequence lengths make attention and KV-cache memory dominate end-to-end step time. FP8 offers an attractive lever for accelerating RL by reducing compute cost and memory traffic during rollout, but applying FP8 in RL introduces unique engineering and algorithmic challenges: policy weights change every step (requiring repeated quantization and weight synchronization into the inference engine) and low-precision rollouts can deviate from the higher-precision policy assumed by the trainer, causing train-inference mismatch and potential instability. This report presents a practical FP8 rollout stack for LLM RL, implemented in the veRL ecosystem with support for common training backends (e.g., FSDP/Megatron-LM) and inference engines (e.g., vLLM/SGLang). We (i) enable FP8 W8A8 linear-layer rollout using blockwise FP8 quantization, (ii) extend FP8 to KV-cache to remove long-context memory bottlenecks via per-step QKV scale recalibration, and (iii) mitigate mismatch using importance-sampling-based rollout correction (token-level TIS/MIS variants). Across dense and MoE models, these techniques deliver up to 44% rollout throughput gains while preserving learning behavior comparable to BF16 baselines.

Keywords

Cite

@article{arxiv.2601.18150,
  title  = {FP8-RL: A Practical and Stable Low-Precision Stack for LLM Reinforcement Learning},
  author = {Zhaopeng Qiu and Shuang Yu and Jingqi Zhang and Shuai Zhang and Xue Huang and Jingyi Yang and Junjie Lai},
  journal= {arXiv preprint arXiv:2601.18150},
  year   = {2026}
}

Comments

Added more FP8 end2end experiments

R2 v1 2026-07-01T09:19:41.194Z