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STARFlow2: Bridging Language Models and Normalizing Flows for Unified Multimodal Generation

About

Deep generative models have advanced rapidly across text and vision, motivating unified multimodal systems that can understand, reason over, and generate interleaved text-image sequences. Most existing approaches combine autoregressive language modeling with diffusion-based image generators, inheriting a structural mismatch between causal text generation and iterative visual denoising. We observe that autoregressive normalizing flows are autoregressive Transformers--sharing the same causal mask, KV-cache mechanism, and left-to-right structure as LLMs--making them the most natural paradigm for true unified multimodal generation. We present STARFlow2, built on the Pretzel architecture that vertically interleaves a pretrained VLM stream with a TarFlow stream via residual skip connections, both operating under the same causal mask. Combined with a deep-shallow flow design and a unified FAE latent space, STARFlow2 enables cache-friendly interleaved generation where both text and visual outputs directly enter the KV-cache without re-encoding. Experiments demonstrate strong performance across image generation and multimodal understanding benchmarks, validating autoregressive flows as a viable foundation for unified multimodal modeling.

Ying Shen, Tianrong Chen, Yuan Gao, Yizhe Zhang, Yuyang Wang, Miguel \'Angel Bautista, Shuangfei Zhai, Joshua M. Susskind, Jiatao Gu• 2026

Related benchmarks

TaskDatasetResultRank
Multimodal UnderstandingSEED-Bench--
516
Text-to-Image GenerationDPG-Bench
Overall Score84.94
451
Text-to-Image GenerationGenEval
Overall Score0.82
277
Multimodal UnderstandingMMMU (val)
MMMU Score44.7
199
Multimodal UnderstandingMMBench English--
81
Multi-modal Vision-Language UnderstandingGQA
Accuracy55.8
51
Multimodal UnderstandingAI2D
Score67.7
32
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