LightningRL: Breaking the Accuracy-Parallelism Trade-off of Block-wise dLLMs via Reinforcement Learning
arXiv cs.LG / 3/17/2026
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Key Points
- LightningRL is a post-training reinforcement learning framework designed to optimize the speed-quality Pareto frontier for pre-trained block-wise diffusion LLMs.
- Rather than forcing uniform parallelization, it uses Group Relative Policy Optimization (GRPO) to identify and reinforce high-parallelism trajectories that maintain generation accuracy.
- The method introduces per-reward decoupled normalization, token-level NLL regularization on correct trajectories, and a dynamic sampling strategy with TPF-aware filtering to stabilize training and improve efficiency.
- Experimental results across mathematical and coding benchmarks show that LightningRL advances the Pareto frontier, achieving an average TPF of 7.32 and a peak of 11.10 on MBPP, with code released at the linked GitHub repository.
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