ML Powered Cloud Intrusion Prevention Architecture

Word Count : 6000

Objectives to cover: 

  • Introduction: Overview of machine-learning-powered cloud intrusion prevention systems.

  • Background & Motivation: Rising cloud attacks demand intelligent automated defense.

  • Cloud Security Challenges: Traditional signature-based methods fail against evolving threats.

  • ML in Intrusion Prevention: ML models detect unknown threats through behavior analysis.

  • System Architecture: Data pipeline, ML engine, threat classifier, and response module.

  • Data Collection & Features: Logs, network flows, and user behavior patterns for training models.

  • ML Techniques Used: Supervised, unsupervised, and deep learning for anomaly detection.

  • Performance & Evaluation: Accuracy, false-positive control, latency, and scalability checks.

  • Conclusion: ML-enabled intrusion prevention strengthens proactive cloud security and resilience.

Reference: IEEE