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Auteurs principaux: Dang, Ronghao, Guo, Jiayan, Hou, Bohan, Leng, Sicong, Li, Kehan, Li, Xin, Liu, Jiangpin, Mao, Yunxuan, Wang, Zhikai, Yuan, Yuqian, Zhu, Minghao, Lin, Xiao, Bai, Yang, Jiang, Qian, Zhao, Yaxi, Zeng, Minghua, Gao, Junlong, Jiang, Yuming, Cen, Jun, Huang, Siteng, Wang, Liuyi, Zhang, Wenqiao, Liu, Chengju, Yang, Jianfei, Lu, Shijian, Zhao, Deli
Format: Preprint
Publié: 2026
Sujets:
Accès en ligne:https://arxiv.org/abs/2602.14979
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author Dang, Ronghao
Guo, Jiayan
Hou, Bohan
Leng, Sicong
Li, Kehan
Li, Xin
Liu, Jiangpin
Mao, Yunxuan
Wang, Zhikai
Yuan, Yuqian
Zhu, Minghao
Lin, Xiao
Bai, Yang
Jiang, Qian
Zhao, Yaxi
Zeng, Minghua
Gao, Junlong
Jiang, Yuming
Cen, Jun
Huang, Siteng
Wang, Liuyi
Zhang, Wenqiao
Liu, Chengju
Yang, Jianfei
Lu, Shijian
Zhao, Deli
author_facet Dang, Ronghao
Guo, Jiayan
Hou, Bohan
Leng, Sicong
Li, Kehan
Li, Xin
Liu, Jiangpin
Mao, Yunxuan
Wang, Zhikai
Yuan, Yuqian
Zhu, Minghao
Lin, Xiao
Bai, Yang
Jiang, Qian
Zhao, Yaxi
Zeng, Minghua
Gao, Junlong
Jiang, Yuming
Cen, Jun
Huang, Siteng
Wang, Liuyi
Zhang, Wenqiao
Liu, Chengju
Yang, Jianfei
Lu, Shijian
Zhao, Deli
contents Despite rapid progress in multimodal foundation models, embodied intelligence community still lacks a unified, physically grounded foundation model that integrates perception, reasoning, and planning within real-world spatial-temporal dynamics. We introduce RynnBrain, an open-source spatiotemporal foundation model for embodied intelligence. RynnBrain strengthens four core capabilities in a unified framework: comprehensive egocentric understanding, diverse spatiotemporal localization, physically grounded reasoning, and physics-aware planning. The RynnBrain family comprises three foundation model scales (2B, 8B, and 30B-A3B MoE) and four post-trained variants tailored for downstream embodied tasks (i.e., RynnBrain-Nav, RynnBrain-Plan, and RynnBrain-VLA) or complex spatial reasoning tasks (i.e., RynnBrain-CoP). In terms of extensive evaluations on 20 embodied benchmarks and 8 general vision understanding benchmarks, our RynnBrain foundation models largely outperform existing embodied foundation models by a significant margin. The post-trained model suite further substantiates two key potentials of the RynnBrain foundation model: (i) enabling physically grounded reasoning and planning, and (ii) serving as a strong pretrained backbone that can be efficiently adapted to diverse embodied tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2602_14979
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle RynnBrain: Open Embodied Foundation Models
Dang, Ronghao
Guo, Jiayan
Hou, Bohan
Leng, Sicong
Li, Kehan
Li, Xin
Liu, Jiangpin
Mao, Yunxuan
Wang, Zhikai
Yuan, Yuqian
Zhu, Minghao
Lin, Xiao
Bai, Yang
Jiang, Qian
Zhao, Yaxi
Zeng, Minghua
Gao, Junlong
Jiang, Yuming
Cen, Jun
Huang, Siteng
Wang, Liuyi
Zhang, Wenqiao
Liu, Chengju
Yang, Jianfei
Lu, Shijian
Zhao, Deli
Robotics
Despite rapid progress in multimodal foundation models, embodied intelligence community still lacks a unified, physically grounded foundation model that integrates perception, reasoning, and planning within real-world spatial-temporal dynamics. We introduce RynnBrain, an open-source spatiotemporal foundation model for embodied intelligence. RynnBrain strengthens four core capabilities in a unified framework: comprehensive egocentric understanding, diverse spatiotemporal localization, physically grounded reasoning, and physics-aware planning. The RynnBrain family comprises three foundation model scales (2B, 8B, and 30B-A3B MoE) and four post-trained variants tailored for downstream embodied tasks (i.e., RynnBrain-Nav, RynnBrain-Plan, and RynnBrain-VLA) or complex spatial reasoning tasks (i.e., RynnBrain-CoP). In terms of extensive evaluations on 20 embodied benchmarks and 8 general vision understanding benchmarks, our RynnBrain foundation models largely outperform existing embodied foundation models by a significant margin. The post-trained model suite further substantiates two key potentials of the RynnBrain foundation model: (i) enabling physically grounded reasoning and planning, and (ii) serving as a strong pretrained backbone that can be efficiently adapted to diverse embodied tasks.
title RynnBrain: Open Embodied Foundation Models
topic Robotics
url https://arxiv.org/abs/2602.14979