当 eBPF 遇到机器学习:实时操作系统内核分区

Zicheng Wang, Tiejin Chen, Qinrun Dai, Yueqi Chen, Hua Wei, Qingkai Zeng
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引用次数: 0

摘要

内核分隔可有效防止初始破坏转化为成功的攻击。本文介绍了 O2C,这是一个旨在即时执行操作系统内核分隔的开创性系统。它不仅能为突发威胁提供即时补救措施,还能在执行过程中保持系统的持续可用性。O2C 借助 eBPF 生态系统的最新进展,允许在运行时将执行强制措施的 eBPF 程序植入内核。O2C率先在eBPF程序中嵌入了机器学习模型,解决了即时分区的独特挑战。我们的综合评估结果表明,O2C 能有效地将损害限制在小区内。此外,我们还验证了决策树最适合用于 O2C,因为它在处理表格数据、可解释性以及与 eBPF 生态系统的一致性方面具有优势。最后但并非最不重要的一点是,O2C 是轻量级的,其开销可以忽略不计,并且在全系统范围内具有出色的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
When eBPF Meets Machine Learning: On-the-fly OS Kernel Compartmentalization
Compartmentalization effectively prevents initial corruption from turning into a successful attack. This paper presents O2C, a pioneering system designed to enforce OS kernel compartmentalization on the fly. It not only provides immediate remediation for sudden threats but also maintains consistent system availability through the enforcement process. O2C is empowered by the newest advancements of the eBPF ecosystem which allows to instrument eBPF programs that perform enforcement actions into the kernel at runtime. O2C takes the lead in embedding a machine learning model into eBPF programs, addressing unique challenges in on-the-fly compartmentalization. Our comprehensive evaluation shows that O2C effectively confines damage within the compartment. Further, we validate that decision tree is optimally suited for O2C owing to its advantages in processing tabular data, its explainable nature, and its compliance with the eBPF ecosystem. Last but not least, O2C is lightweight, showing negligible overhead and excellent sacalability system-wide.
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