MAAINov 7, 2025

TAMAS: Benchmarking Adversarial Risks in Multi-Agent LLM Systems

arXiv:2511.05269v19 citationsh-index: 46
Originality Incremental advance
AI Analysis

This addresses safety risks for users of multi-agent LLM systems, providing a foundational benchmark for systematic study, though it is incremental in focusing on benchmarking rather than novel defenses.

The authors tackled the problem of safety and security vulnerabilities in multi-agent LLM systems, which lack existing benchmarks, by introducing TAMAS—a benchmark with 300 adversarial instances across five scenarios, six attack types, and 211 tools—and found that these systems are highly vulnerable to adversarial attacks.

Large Language Models (LLMs) have demonstrated strong capabilities as autonomous agents through tool use, planning, and decision-making abilities, leading to their widespread adoption across diverse tasks. As task complexity grows, multi-agent LLM systems are increasingly used to solve problems collaboratively. However, safety and security of these systems remains largely under-explored. Existing benchmarks and datasets predominantly focus on single-agent settings, failing to capture the unique vulnerabilities of multi-agent dynamics and co-ordination. To address this gap, we introduce $\textbf{T}$hreats and $\textbf{A}$ttacks in $\textbf{M}$ulti-$\textbf{A}$gent $\textbf{S}$ystems ($\textbf{TAMAS}$), a benchmark designed to evaluate the robustness and safety of multi-agent LLM systems. TAMAS includes five distinct scenarios comprising 300 adversarial instances across six attack types and 211 tools, along with 100 harmless tasks. We assess system performance across ten backbone LLMs and three agent interaction configurations from Autogen and CrewAI frameworks, highlighting critical challenges and failure modes in current multi-agent deployments. Furthermore, we introduce Effective Robustness Score (ERS) to assess the tradeoff between safety and task effectiveness of these frameworks. Our findings show that multi-agent systems are highly vulnerable to adversarial attacks, underscoring the urgent need for stronger defenses. TAMAS provides a foundation for systematically studying and improving the safety of multi-agent LLM systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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