Secure Cloud Guardian: Machine Learning-driven
Privilege Escalation Detection and Mitigation for Cloud
Environments
Journal:
GRENZE International Journal of Engineering and Technology
Authors:
Naga Aravind Kundeti, Shumadhar Reddy Seelam, Sai Vara Prasad Reddy Pulagurla, M Shobana
Volume:
10
Issue:
2
Grenze ID:
01.GIJET.10.2.828
Pages:
5667-5675
Abstract
This project employs advanced machine learning to fortify cloud security, specifically
targeting and mitigating privilege escalation attacks for a more robust defense mechanism. As
cloud adoption rises, so does the risk of privilege escalation attacks. This project addresses
vulnerabilities in employee access privileges within cloud services to enhance overall security.
Leveraging machine learning, the project enables real-time detection and mitigation of privilege
escalation attacks. Techniques like LightGBM, Random Forest, Adaboost, and Xgboost
contribute to a dynamic defense against evolving threats. Users and businesses experience
heightened data security, fostering trust in cloud computing. Cloud service providers and
enterprises gain confidence in a secure online environment, benefiting from the project's security
enhancements. And included, a Voting Classifier, amalgamating predictions from Decision Tree,
Random Forest, and Support Vector Machine through a "soft" voting approach, enhances the
system's performance in detecting and mitigating privilege escalation attacks. Additionally, a
user-friendly Flask framework with SQLite integration optimizes user testing, providing secure
signup and signin functionalities for practical implementation and assessment.