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Abstract
Linux-based cloud environments have become lucrative targets for ransomware
attacks, employing various encryption schemes at unprecedented speeds.
Addressing the urgency for real-time ransomware protection, we propose
leveraging the extended Berkeley Packet Filter (eBPF) to collect system call
information regarding active processes and infer about the data directly at the
kernel level. In this study, we implement two Machine Learning (ML) models in
eBPF - a decision tree and a multilayer perceptron. Benchmarking latency and
accuracy against their user space counterparts, our findings underscore the
efficacy of this approach.