Prevailing autoregressive (AR) models for text-to-image generation either rely on heavy, computationally-intensive diffusion models to process continuous image tokens, or employ vector quantization (VQ) to obtain discrete tokens with quantization loss. In this paper, we push the autoregressive paradigm forward with NextStep-1, a 14B autoregressive model paired with a 157M flow matching head, training on discrete text tokens and continuous image tokens with next-token prediction objectives. NextStep-1 achieves state-of-the-art performance for autoregressive models in text-to-image generation tasks, exhibiting strong capabilities in high-fidelity image synthesis. Furthermore, our method shows strong performance in image editing, highlighting the power and versatility of our unified approach. To facilitate open research, we will release our code and models to the community.
NextStep-1: Toward Autoregressive Image Generation with Continuous Tokens at Scale
Prevailing autoregressive (AR) models for text-to-image generation either rely on heavy, computationally-intensive diffusion models to process continuous image tokens, or employ vector quantization (VQ) to obtain discrete tokens with quantization loss.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 50
- Hosting
- Abstract onlyARXIV-DEFAULT
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- Abstract & full text
- arxiv.org/abs/2508.10711v2ARXIV-DEFAULT
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Authors
50Daxin JiangBin WangLiang ZhaoShiyu LiuYucheng HanPeng XingFukun YinRui WangYingming WangChunrui HanGuopeng LiYuang PengQuan SunJingwei WuYan CaiZheng GeXianfang ZengYibo ZhuBinxing JiaoXiangyu ZhangGang YuHongYu ZhouJia WangYanming XuJianjian SunAilin HuangYu ZhouWei JiKenkun LiuEn YuKangheng LinYana WeiXin HanChangxin MiaoDeshan SunHao NieHaoran LvJian ZhouKaijun TanKang AnDeyu ZhouZiyang MengHaomiao TangNextStep TeamHanpeng HuMei ChenShutao XiaTianhao YouXuelin ZhangYimin Jiang