From Assistants to Adversaries: Exploring the Security Risks of Mobile LLM Agents
Liangxuan Wu, Chao Wang, Tianming Liu, Yanjie Zhao, Haoyu Wang

TL;DR
This paper conducts the first comprehensive security analysis of mobile LLM agents, identifying 11 attack surfaces and demonstrating vulnerabilities across nine widely used agents, emphasizing the urgent need for security standards.
Contribution
It introduces AgentScan, a semi-automated framework for evaluating security threats in mobile LLM agents, and provides practical security recommendations based on empirical findings.
Findings
All nine tested agents are vulnerable to targeted attacks.
Agents exhibit vulnerabilities across up to eight attack vectors.
Security threats span the entire operational lifecycle of mobile LLM agents.
Abstract
The growing adoption of large language models (LLMs) has led to a new paradigm in mobile computing--LLM-powered mobile AI agents--capable of decomposing and automating complex tasks directly on smartphones. However, the security implications of these agents remain largely unexplored. In this paper, we present the first comprehensive security analysis of mobile LLM agents, encompassing three representative categories: System-level AI Agents developed by original equipment manufacturers (e.g., YOYO Assistant), Third-party Universal Agents (e.g., Zhipu AI AutoGLM), and Emerging Agent Frameworks (e.g., Alibaba Mobile Agent). We begin by analyzing the general workflow of mobile agents and identifying security threats across three core capability dimensions: language-based reasoning, GUI-based interaction, and system-level execution. Our analysis reveals 11 distinct attack surfaces, all…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Mobile Agent-Based Network Management · Advanced Malware Detection Techniques
MethodsSparse Evolutionary Training
