CRAICLNov 23, 2025

Shadows in the Code: Exploring the Risks and Defenses of LLM-based Multi-Agent Software Development Systems

arXiv:2511.18467v14 citations
Originality Highly original
AI Analysis

This addresses critical security vulnerabilities in multi-agent AI systems for software development, which could affect users relying on these democratized tools, representing a novel investigation rather than incremental work.

The paper identifies security risks in LLM-based multi-agent software development systems, introducing the Implicit Malicious Behavior Injection Attack (IMBIA) that achieves attack success rates up to 93% in different scenarios, and proposes a defense mechanism that significantly reduces these rates.

The rapid advancement of Large Language Model (LLM)-driven multi-agent systems has significantly streamlined software developing tasks, enabling users with little technical expertise to develop executable applications. While these systems democratize software creation through natural language requirements, they introduce significant security risks that remain largely unexplored. We identify two risky scenarios: Malicious User with Benign Agents (MU-BA) and Benign User with Malicious Agents (BU-MA). We introduce the Implicit Malicious Behavior Injection Attack (IMBIA), demonstrating how multi-agent systems can be manipulated to generate software with concealed malicious capabilities beneath seemingly benign applications, and propose Adv-IMBIA as a defense mechanism. Evaluations across ChatDev, MetaGPT, and AgentVerse frameworks reveal varying vulnerability patterns, with IMBIA achieving attack success rates of 93%, 45%, and 71% in MU-BA scenarios, and 71%, 84%, and 45% in BU-MA scenarios. Our defense mechanism reduced attack success rates significantly, particularly in the MU-BA scenario. Further analysis reveals that compromised agents in the coding and testing phases pose significantly greater security risks, while also identifying critical agents that require protection against malicious user exploitation. Our findings highlight the urgent need for robust security measures in multi-agent software development systems and provide practical guidelines for implementing targeted, resource-efficient defensive strategies.

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