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arxiv:2510.14969

LLMs as Scalable, General-Purpose Simulators For Evolving Digital Agent Training

Published on Oct 16
ยท Submitted by Da Yin on Oct 17
ยท uclanlp UCLA NLP
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Abstract

UI-Simulator generates diverse UI trajectories for digital agents using a scalable paradigm, improving robustness and performance with targeted scaling strategies.

AI-generated summary

Digital agents require diverse, large-scale UI trajectories to generalize across real-world tasks, yet collecting such data is prohibitively expensive in both human annotation, infra and engineering perspectives. To this end, we introduce UI-Simulator, a scalable paradigm that generates structured UI states and transitions to synthesize training trajectories at scale. Our paradigm integrates a digital world simulator for diverse UI states, a guided rollout process for coherent exploration, and a trajectory wrapper that produces high-quality and diverse trajectories for agent training. We further propose UI-Simulator-Grow, a targeted scaling strategy that enables more rapid and data-efficient scaling by prioritizing high-impact tasks and synthesizes informative trajectory variants. Experiments on WebArena and AndroidWorld show that UI-Simulator rivals or surpasses open-source agents trained on real UIs with significantly better robustness, despite using weaker teacher models. Moreover, UI-Simulator-Grow matches the performance of Llama-3-70B-Instruct using only Llama-3-8B-Instruct as the base model, highlighting the potential of targeted synthesis scaling paradigm to continuously and efficiently enhance the digital agents.

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๐ŸŒ UI-Simulator: LLMs as Scalable, General-Purpose Simulators For Evolving Digital Agent Training

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๐Ÿ”— Paper link: https://arxiv.org/abs/2510.14969

๐ŸŒ Website: https://ui-simulator.notion.site/llms-as-scalable-digital-world-simulator

๐Ÿ“š Github: https://github.com/WadeYin9712/UI-Simulator

๐Ÿ“ง Contact: da.yin9712@gmail.com, w10y20ming@gmail.com

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