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Any-Order Flexible Length Masked Diffusion

Machine Learning 2025-09-09 v2

Abstract

Masked diffusion models (MDMs) have recently emerged as a promising alternative to autoregressive models over discrete domains. MDMs generate sequences in an any-order, parallel fashion, enabling fast inference and strong performance on non-causal tasks. However, a crucial limitation is that they do not support token insertions and are thus limited to fixed-length generations. To this end, we introduce Flexible Masked Diffusion Models (FlexMDMs), a discrete diffusion paradigm that simultaneously can model sequences of flexible length while provably retaining MDMs' flexibility of any-order inference. Grounded in an extension of the stochastic interpolant framework, FlexMDMs generate sequences by inserting mask tokens and unmasking them. Empirically, we show that FlexMDMs match MDMs in perplexity while modeling length statistics with much higher fidelity. On a synthetic maze planning task, they achieve 60%\approx 60 \% higher success rate than MDM baselines. Finally, we show pretrained MDMs can easily be retrofitted into FlexMDMs: on 16 H100s, it takes only three days to fine-tune LLaDA-8B into a FlexMDM, achieving superior performance on math (GSM8K, 58%67%58\% \to 67\%) and code infilling performance (52%65%52\% \to 65\%).

Keywords

Cite

@article{arxiv.2509.01025,
  title  = {Any-Order Flexible Length Masked Diffusion},
  author = {Jaeyeon Kim and Lee Cheuk-Kit and Carles Domingo-Enrich and Yilun Du and Sham Kakade and Timothy Ngotiaoco and Sitan Chen and Michael Albergo},
  journal= {arXiv preprint arXiv:2509.01025},
  year   = {2025}
}

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Preprint

R2 v1 2026-07-01T05:14:27.129Z