Score: 0

Cloud Security Leveraging AI: A Fusion-Based AISOC for Malware and Log Behaviour Detection

Published: December 16, 2025 | arXiv ID: 2512.14935v1

By: Nnamdi Philip Okonkwo, Lubna Luxmi Dhirani

Potential Business Impact:

AI helps cloud security spot attacks faster.

Business Areas:
Cloud Security Information Technology, Privacy and Security

Cloud Security Operations Center (SOC) enable cloud governance, risk and compliance by providing insights visibility and control. Cloud SOC triages high-volume, heterogeneous telemetry from elastic, short-lived resources while staying within tight budgets. In this research, we implement an AI-Augmented Security Operations Center (AISOC) on AWS that combines cloud-native instrumentation with ML-based detection. The architecture uses three Amazon EC2 instances: Attacker, Defender, and Monitoring. We simulate a reverse-shell intrusion with Metasploit, and Filebeat forwards Defender logs to an Elasticsearch and Kibana stack for analysis. We train two classifiers, a malware detector built on a public dataset and a log-anomaly detector trained on synthetically augmented logs that include adversarial variants. We calibrate and fuse the scores to produce multi-modal threat intelligence and triage activity into NORMAL, SUSPICIOUS, and HIGH\_CONFIDENCE\_ATTACK. On held-out tests the fusion achieves strong macro-F1 (up to 1.00) under controlled conditions, though performance will vary in noisier and more diverse environments. These results indicate that simple, calibrated fusion can enhance cloud SOC capabilities in constrained, cost-sensitive setups.

Country of Origin
🇮🇪 Ireland

Page Count
5 pages

Category
Computer Science:
Cryptography and Security