We present NextFlow, a unified decoder-only autoregressive transformer trained on 6 trillion interleaved text-image discrete tokens. By leveraging a unified vision representation within a unified autoregressive architecture, NextFlow natively activates multimodal understanding and generation capabilities, unlocking abilities of image editing, interleaved content and video generation. Motivated by the distinct nature of modalities - where text is strictly sequential and images are inherently hierarchical - we retain next-token prediction for text but adopt next-scale prediction for visual generation. This departs from traditional raster-scan methods, enabling the generation of 1024x1024 images in just 5 seconds - orders of magnitude faster than comparable AR models. We address the instabilities of multi-scale generation through a robust training recipe. Furthermore, we introduce a prefix-tuning strategy for reinforcement learning. Experiments demonstrate that NextFlow achieves state-of-the-art performance among unified models and rivals specialized diffusion baselines in visual quality.
NextFlow: Unified Sequential Modeling Activates Multimodal Understanding and Generation
NextFlow is a unified decoder-only autoregressive transformer that processes interleaved text-image tokens, enabling fast multimodal generation through novel next-token and next-scale prediction strategies.
- Year
- 2026
- Venue
- arXiv 2026
- Authors
- 36
- Hosting
- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2601.02204ARXIV-DEFAULT
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Authors
36Peng LiuQian HeBo ChenZhihua WuShuai WangXu WangJie ShaoYitong WangYi JiangZehuan YuanXian LiHu YeXinglong WuLiao QuHuichao ZhangYiheng LiuYiming GaoDaniel K. DuMingcong LiuYi ZhangYang ZhouZhongqi QiZhao WangShikun SunAkide LiuHang ChenYangyang SongYongsheng DongZhipeng YangQili DengLinjie XingJiyang LiuXiWei HuZhiye FuFangmin ChenXuezhi Chai