Multimodal AI

Omni-Diffusion: Unified Multimodal Understanding and Generation with Masked Discrete Diffusion

LLijiang LiZZuwei LongYYunhang ShenHHeting GaoHHaoyu CaoXXing SunCCaifeng ShanRRan HeCChaoyou Fu
Published
March 6, 2026
Authors
9

Abstract

While recent multimodal large language models (MLLMs) have made impressive strides, they predominantly employ a conventional autoregressive architecture as their backbone, leaving significant room to explore effective and efficient alternatives in architectural design. Concurrently, recent studies have successfully applied discrete diffusion models to various domains, such as visual understanding and image generation, revealing their considerable potential as a promising backbone for multimodal systems. Drawing inspiration from these pioneering research, we introduce Omni-Diffusion, the first any-to-any multimodal language model built entirely on mask-based discrete diffusion models, which unifies understanding and generation across text, speech, and images. Omni-Diffusion employs a unified mask-based discrete diffusion model to directly capture the joint distribution over discrete multimodal tokens. This approach supports not only bimodal tasks but also more complex scenarios involving multiple modalities. On a diverse set of benchmarks, our method outperforms or performs on par with existing multimodal systems that process two or more modalities, highlighting the significant promise of diffusion models in powering the next generation of multimodal foundation models. Project webpage: https://omni-diffusion.github.io.

Keywords

multimodal large language modelsautoregressive architecturediscrete diffusion modelsmask-based discrete diffusion modelsmultimodal systemsdiscrete multimodal tokensbimodal tasksmultimodal foundation models

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Omni-Diffusion: Unified Multimodal Understanding and Generation with Masked Discrete Diffusion | Paperchime