Dynamic Risk Assessments for Offensive Cybersecurity Agents

Published: 01 Jul 2025, Last Modified: 04 Jul 2025ICML 2025 R2-FM Workshop PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Cybersecurity, AI Agent, AI Safety
TL;DR: We introduce a new threat model in offensive cybersecurity agent, and provide evaluation framework that can dynamically assess the risk within a fixed compute budget.
Abstract: Foundation models are increasingly becoming better autonomous programmers, raising the prospect that they could also automate dangerous offensive cyber‑operations. Current frontier model audits probe the cybersecurity risks of such agents, but most fail to account for the degrees of freedom available to adversaries in the real world. In particular, with strong verifiers and financial incentives, agents for offensive cybersecurity are amenable to iterative improvement by would-be adversaries. We argue that assessments should take into account an expanded threat model in the context of cybersecurity, emphasizing the varying degrees of freedom that an adversary may possess in stateful and non-stateful environments within a fixed compute budget. We show that even with a relatively small compute budget (8 H100 GPU Hours in our study), adversaries can improve an agent's cybersecurity capability on InterCode CTF by more than 40% relative to the baseline---without any external assistance. These results highlight the need to evaluate agents' cybersecurity risk in a dynamic manner, painting a more representative picture of risk.
Submission Number: 8
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