We propose V-Droid, a mobile GUI task automation agent. Unlike previous mobile agents that utilize Large Language Models (LLMs) as generators to directly generate actions at each step, V-Droid employs LLMs as verifiers to evaluate candidate actions before making final decisions. To realize this novel paradigm, we introduce a comprehensive framework for constructing verifier-driven mobile agents: the discretized action space construction coupled with the prefilling-only workflow to accelerate the verification process, the pair-wise progress preference training to significantly enhance the verifier's decision-making capabilities, and the scalable human-agent joint annotation scheme to efficiently collect the necessary data at scale. V-Droid obtains a substantial task success rate across several public mobile task automation benchmarks: 59.5% on AndroidWorld, 38.3% on AndroidLab, and 49% on MobileAgentBench, surpassing existing agents by 5.2%, 2.1%, and 9%, respectively. Furthermore, V-Droid achieves a remarkably low latency of 4.3s per step, which is 6.1x faster compared with existing mobile agents. The source code is available at https://github.com/V-Droid-Agent/V-Droid.
@article{arxiv.2503.15937,
title = {Advancing Mobile GUI Agents: A Verifier-Driven Approach to Practical Deployment},
author = {Gaole Dai and Shiqi Jiang and Ting Cao and Yuanchun Li and Yuqing Yang and Rui Tan and Mo Li and Lili Qiu},
journal= {arXiv preprint arXiv:2503.15937},
year = {2026}
}
Comments
"V-Droid: Advancing Mobile GUI Agent Through Generative Verifiers", got accepted to MobiCom 2026