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Main Authors: Song, Wenxuan, Chen, Jiayi, Sun, Xiaoquan, Lei, Huashuo, Qin, Yikai, Zhao, Wei, Ding, Pengxiang, Zhao, Han, Wang, Tongxin, Hou, Pengxu, Zhong, Zhide, Yan, Haodong, Wang, Donglin, Ma, Jun, Li, Haoang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.22663
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author Song, Wenxuan
Chen, Jiayi
Sun, Xiaoquan
Lei, Huashuo
Qin, Yikai
Zhao, Wei
Ding, Pengxiang
Zhao, Han
Wang, Tongxin
Hou, Pengxu
Zhong, Zhide
Yan, Haodong
Wang, Donglin
Ma, Jun
Li, Haoang
author_facet Song, Wenxuan
Chen, Jiayi
Sun, Xiaoquan
Lei, Huashuo
Qin, Yikai
Zhao, Wei
Ding, Pengxiang
Zhao, Han
Wang, Tongxin
Hou, Pengxu
Zhong, Zhide
Yan, Haodong
Wang, Donglin
Ma, Jun
Li, Haoang
contents Vision-Language-Action (VLA) models have emerged as a generalist robotic agent. However, existing VLAs are hindered by excessive parameter scales, prohibitive pre-training requirements, and limited applicability to diverse embodiments. To improve the practicality of VLAs, we propose a comprehensive benchmark and an improved baseline. First, we propose CEBench, a new benchmark spanning diverse embodiments in both simulation and the real world with consideration of domain randomization. We collect 14.4k simulated trajectories and 1.6k real-world expert-curated trajectories to support training on CEBench. Second, using CEBench as our testbed, we study three critical aspects of VLAs' practicality and offer several key findings. Informed by these findings, we introduce LLaVA-VLA, a lightweight yet powerful VLA designed for practical deployment on consumer-grade GPUs. Architecturally, it integrates a compact VLM backbone with multi-view perception, proprioceptive tokenization, and action chunking. To eliminate reliance on costly pre-training, LLaVA-VLA adopts a two-stage training paradigm including post-training and fine-tuning. Furthermore, LLaVA-VLA extends the action space to unify navigation and manipulation. Experiments across embodiments demonstrate the capabilities of generalization and versatility of LLaVA-VLA , while real-world mobile manipulation experiments establish it as the first end-to-end VLA model for mobile manipulation. We will open-source all datasets, codes, and checkpoints upon acceptance to foster reproducibility and future research.
format Preprint
id arxiv_https___arxiv_org_abs_2602_22663
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Rethinking the Practicality of Vision-language-action Model: A Comprehensive Benchmark and An Improved Baseline
Song, Wenxuan
Chen, Jiayi
Sun, Xiaoquan
Lei, Huashuo
Qin, Yikai
Zhao, Wei
Ding, Pengxiang
Zhao, Han
Wang, Tongxin
Hou, Pengxu
Zhong, Zhide
Yan, Haodong
Wang, Donglin
Ma, Jun
Li, Haoang
Robotics
Vision-Language-Action (VLA) models have emerged as a generalist robotic agent. However, existing VLAs are hindered by excessive parameter scales, prohibitive pre-training requirements, and limited applicability to diverse embodiments. To improve the practicality of VLAs, we propose a comprehensive benchmark and an improved baseline. First, we propose CEBench, a new benchmark spanning diverse embodiments in both simulation and the real world with consideration of domain randomization. We collect 14.4k simulated trajectories and 1.6k real-world expert-curated trajectories to support training on CEBench. Second, using CEBench as our testbed, we study three critical aspects of VLAs' practicality and offer several key findings. Informed by these findings, we introduce LLaVA-VLA, a lightweight yet powerful VLA designed for practical deployment on consumer-grade GPUs. Architecturally, it integrates a compact VLM backbone with multi-view perception, proprioceptive tokenization, and action chunking. To eliminate reliance on costly pre-training, LLaVA-VLA adopts a two-stage training paradigm including post-training and fine-tuning. Furthermore, LLaVA-VLA extends the action space to unify navigation and manipulation. Experiments across embodiments demonstrate the capabilities of generalization and versatility of LLaVA-VLA , while real-world mobile manipulation experiments establish it as the first end-to-end VLA model for mobile manipulation. We will open-source all datasets, codes, and checkpoints upon acceptance to foster reproducibility and future research.
title Rethinking the Practicality of Vision-language-action Model: A Comprehensive Benchmark and An Improved Baseline
topic Robotics
url https://arxiv.org/abs/2602.22663