Advancing machine intelligence requires developing the ability to perceive across multiple modalities, much as humans sense the world. We introduce OmniVinci, an initiative to build a strong, open-source, omni-modal LLM. We carefully study the design choices across model architecture and data curation. For model architecture, we present three key innovations: (i) OmniAlignNet for strengthening alignment between vision and audio embeddings in a shared omni-modal latent space; (ii) Temporal Embedding Grouping for capturing relative temporal alignment between vision and audio signals; and (iii) Constrained Rotary Time Embedding for encoding absolute temporal information in omni-modal embeddings. We introduce a curation and synthesis pipeline that generates 24M single-modal and omni-modal conversations. We find that modalities reinforce one another in both perception and reasoning. Our model, OmniVinci, outperforms Qwen2.5-Omni with +19.05 on DailyOmni (cross-modal understanding), +1.7 on MMAR (audio), and +3.9 on Video-MME (vision), while using just 0.2T training tokens - a 6 times reduction compared to Qwen2.5-Omni's 1.2T. We finally demonstrate omni-modal advantages in downstream applications spanning robotics, medical AI, and smart factory.
OmniVinci: Enhancing Architecture and Data for Omni-Modal Understanding LLM
Advancing machine intelligence requires developing the ability to perceive across multiple modalities, much as humans sense the world.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 32
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2510.15870ARXIV-DEFAULT
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32Bryan CatanzaroJan KautzYukang ChenWei HuangHanrong YeLigeng ZhuZhijian LiuPavlo MolchanovSifei LiuHongxu YinSong HanOluwatobi OlabiyiDong YangDaguang XuJinchuan TianAndrew TaoArushi GoelRafael ValleSreyan GhoshYuming LouAn-Chieh ChengFrank WangChao-Han Huck YangYuanhang SuSean LinZhen WanAmbrish DantreyEhsan JahangiriEhsan Hosseini-AslDanial Mohseni TaheriVidya MuraliJason Lu