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LLMs as Hackers: Autonomous Linux Privilege Escalation Attacks

LLMs as Hackers: Autonomous Linux Privilege Escalation Attacks

FromPapers Read on AI


LLMs as Hackers: Autonomous Linux Privilege Escalation Attacks

FromPapers Read on AI

ratings:
Length:
52 minutes
Released:
May 21, 2024
Format:
Podcast episode

Description

Penetration testing, an essential component of software security testing, allows organizations to proactively identify and remediate vulnerabilities in their systems, thus bolstering their defense mechanisms against potential cyberattacks. One recent advancement in the realm of penetration testing is the utilization of Language Models (LLMs). We explore the intersection of LLMs and penetration testing to gain insight into their capabilities and challenges in the context of privilege escalation. We create an automated Linux privilege-escalation benchmark utilizing local virtual machines. We introduce an LLM-guided privilege-escalation tool designed for evaluating different LLMs and prompt strategies against our benchmark. Our results show that GPT-4 is well suited for detecting file-based exploits as it can typically solve 75-100\% of test-cases of that vulnerability class. GPT-3.5-turbo was only able to solve 25-50% of those, while local models, such as Llama2 were not able to detect any exploits. We analyze the impact of different prompt designs, the benefits of in-context learning, and the advantages of offering high-level guidance to LLMs. We discuss challenging areas for LLMs, including maintaining focus during testing, coping with errors, and finally comparing them with both stochastic parrots as well as with human hackers.

2023: A. Happe, Aaron Kaplan, Jürgen Cito



https://arxiv.org/pdf/2310.11409
Released:
May 21, 2024
Format:
Podcast episode

Titles in the series (100)

Keeping you up to date with the latest trends and best performing architectures in this fast evolving field in computer science. Selecting papers by comparative results, citations and influence we educate you on the latest research. Consider supporting us on Patreon.com/PapersRead for feedback and ideas.