English

dFlowGRPO: Rate-Aware Policy Optimization for Discrete Flow Models

Machine Learning 2026-05-12 v1 Applications

Abstract

Discrete flow models (DFMs) are a class of flexible generative models for generating discrete data, and diffusion large language models (dLLMs) can be viewed as a special case with a specific choice of mixture path and a masked source distribution. While several recent works have explored reinforcement learning into dLLMs, its application to more general discrete flow models remains underexplored. In this work, we present discrete Flow-GRPO (dFlowGRPO), a unified reinforcement learning framework for discrete flow models that supports a broad family of probability paths and non-masked source distributions. We derive the full trajectory probability for DFMs and formulate denoising as a Markov decision process, enabling dFlowGRPO to incorporate information from both the associated conditional transition rates and the posterior model during reinforcement learning. We apply dFlowGRPO to FUDOKI, a recent multimodal discrete flow model, and evaluate it on both image generation and multimodal understanding tasks. Empirical results show that dFlowGRPO outperforms existing GRPO-type methods for dLLMs on text-to-image generation tasks and achieves performance competitive with continuous flow-based models trained using FlowGRPO, while also demonstrating strong capabilities on understanding tasks.

Keywords

Cite

@article{arxiv.2605.09291,
  title  = {dFlowGRPO: Rate-Aware Policy Optimization for Discrete Flow Models},
  author = {Zhengyan Wan and Yidong Ouyang and Panwen Hu and Qiang Sun},
  journal= {arXiv preprint arXiv:2605.09291},
  year   = {2026}
}
R2 v1 2026-07-01T13:01:09.336Z