연구 분야: Safety
학회: CCS '24: Proceedings of the 2024 on ACM SIGSAC Conference on Computer and Communications Security
Ransomware attacks have emerged as one of the most significant cybersecurity threats. Despite numerous methods proposed for detecting and defending against ransomware, existing approaches face two fundamental limitations in large-scale industrial applications: (1) Behavior-based detection engines suffer from the enormous overhead of monitoring all processes and resource constraints for model inference, failing to meet the requirements for real-time detection; (2) Decoy-based detection engines generate an overwhelming number of false positives in large-scale industrial clusters, leading to intolerable disruptions to critical processes and excessive inspection efforts from security analysts. To address these challenges, we propose CanCal, a real-time and lightweight ransomware detection system. Specifically, instead of indiscriminately analyzing all processes, CanCal selectively filters suspicious processes by the monitoring layers and then performs in-depth behavioral analysis to isolate ransomware activities from benign operations, minimizing alert fatigue while ensuring lightweight computational and storage overhead. The experimental results on a large-scale industrial environment (1,761 ransomware, ~ 3 million events, continuous test over 5 months) indicate that CanCal achieves a remarkable 99.65% true positive rate on 555,678 unknown ransomware behavior events, with near-zero false positives. CanCal is as effective as state-of-the-art techniques while enabling rapid inference within 30ms and real-time response within a maximum of 3 seconds. CanCal dramatically reduces average CPU utilization by 91.04% (from 6.7% to 0.6%) and peak CPU utilization by 76.69% (from 26.6% to 6.2%), while avoiding 76.50% (from 3,192 to 750) of the inspection efforts from security analysts. By the time of this writing, CanCal has been integrated into a commercial product and successfully deployed on 3.32 million endpoints for over a year. From March 2023 to April 2024, CanCal successfully detected and thwarted 61 ransomware attacks. A detailed manual forensic analysis of 27 ransomware attacks from March to June 2023 (including 13 n-day exploits and 5 high-risk zero-day attacks) demonstrates the effectiveness of CanCal in combating sophisticated and unknown ransomware threats in real-world scenarios.
| 발행 연도 | 2024년 |
|---|---|
| 인용수 | 3 |
| 출판 국가 | Andorra, China |
| 사이트 | ACM |
| 좋아요 수 | 0 |