UIPro: Unleashing Superior Interaction Capability For GUI Agents
- URL: http://arxiv.org/abs/2509.17328v1
- Date: Mon, 22 Sep 2025 03:04:53 GMT
- Title: UIPro: Unleashing Superior Interaction Capability For GUI Agents
- Authors: Hongxin Li, Jingran Su, Jingfan Chen, Zheng Ju, Yuntao Chen, Qing Li, Zhaoxiang Zhang,
- Abstract summary: Building autonomous agents that perceive and operate graphical user interfaces (GUIs) like humans has long been a vision in the field of artificial intelligence.<n>Existing methods have tried developing GUI agents based on the multi-modal comprehension ability of vision-language models (VLMs)<n>This paper proposes textUIPro, a novel generalist GUI agent trained with extensive multi-platform and multi-task GUI interaction data.
- Score: 33.77980648230746
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Building autonomous agents that perceive and operate graphical user interfaces (GUIs) like humans has long been a vision in the field of artificial intelligence. Central to these agents is the capability for GUI interaction, which involves GUI understanding and planning capabilities. Existing methods have tried developing GUI agents based on the multi-modal comprehension ability of vision-language models (VLMs). However, the limited scenario, insufficient size, and heterogeneous action spaces hinder the progress of building generalist GUI agents. To resolve these issues, this paper proposes \textbf{UIPro}, a novel generalist GUI agent trained with extensive multi-platform and multi-task GUI interaction data, coupled with a unified action space. We first curate a comprehensive dataset encompassing 20.6 million GUI understanding tasks to pre-train UIPro, granting it a strong GUI grounding capability, which is key to downstream GUI agent tasks. Subsequently, we establish a unified action space to harmonize heterogeneous GUI agent task datasets and produce a merged dataset to foster the action prediction ability of UIPro via continued fine-tuning. Experimental results demonstrate UIPro's superior performance across multiple GUI task benchmarks on various platforms, highlighting the effectiveness of our approach.
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