Papers
arxiv:2605.25343

Toward Native Multimodal Modeling: A Roadmap

Published on May 25
ยท Submitted by
HansonDong
on May 26
ยท tencent Tencent
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Abstract

Native multimodal modeling advances beyond traditional fusion approaches by integrating modalities inherently within a unified transformer framework, enabling seamless understanding and generation across diverse input-output configurations.

AI-generated summary

Multimodal modeling represents a vital step from modality-agnostic reasoning toward world modeling. While early approaches predominantly rely on late-fusion that assembles encoders and frozen language backbones with output heads, recent efforts have shifted the paradigm toward native multimodal modeling (NMM) with the intrinsic integration of modalities for superior multimodal performance. Despite its potential, the design space of native architectures remains insufficiently defined. In this paper, we present the community with a formalized roadmap for this transition. Specifically, we formally define the architectural nativity, distinguishing mid-fusion and early-fusion from non-native paradigms. We further organize the existing native models through the lens of input-output duality into three categories: (i) Multi-to-Text for cross-modal comprehension with text-only output; (ii) Multi-to-Target for scenario-oriented generation, e.g., image, audio and video generation, and (iii) Multi-to-Multi for unified modeling with symmetric input-output. We deliver a comprehensive and industrial-grade investigation into the transition toward the definitive NMM framework, where understanding and generation seamlessly coexist within a unified transformer paradigm. We systematically unpack the end-to-end pipeline from industrial perspectives from architectural coordination, massive data curation, to full-stack training recipes, inference & deployment, and the comprehensive evaluation for truly native modeling.

Community

Paper submitter

The community is undergoing a macro-level paradigm shift from early modular assembly, i.e., late-fusion and grafted pipelines blind to raw sensory signals, toward born-native multimodal convergence, where multimodal understanding and generation fluidly coexist within unified transformer spaces.

If you are trying to navigate the messy, fragmented design space of multimodal models, this paper delivers the community's first definitive, full-lifecycle roadmap.

that taxonomy for architectural nativity and the m2t/m2g/m2m split is the strongest part here, but it glosses over a core bottleneck. how do you keep modality-specific inductive biases alive when you shove everything into a single transformer with a shared tokenization and unified attention? without that balance you risk modal collapse and struggles with long-horizon generation in m2m tasks. i'd like to see a clear plan for allocating capacity between shared layers and modality adapters, plus concrete ablations that separate early- vs mid-fusion impacts under realistic data regimes. the arXivLens breakdown helped me parse the method details, if you haven't checked it out yet it's a nice companion: https://arxivlens.com/PaperView/Details/toward-native-multimodal-modeling-a-roadmap-2577-358465c9

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