Hypervisor-Level Ransomware Detection in Cloud Using Machine Learning

Main Article Content

Prasad Purnaye, Anuj Singh, Mayank Singh, Suprabhath Nair, Devanshu Mehta

Abstract

Ransomware attack incidences have been on the rise for a few years. The attacks have evolved over the years. The severity of these attacks has only increased in the cloud era. This article discusses the evolution of ransomware attacks targeting cloud storage and explores existing ransomware detection solutions. It also presents a methodology for generating a dataset for detecting ransomware in the cloud and discusses the results, including feature selection and normalization. The article proposes a system for detecting attacks in virtualized environments using machine learning models and evaluates the performance of different classification models. The proposed system is shown to have high accuracy of 96.6% in detecting ransomware attacks in virtualized environments at the hypervisor level.

Article Details

How to Cite
Prasad Purnaye, et al. (2024). Hypervisor-Level Ransomware Detection in Cloud Using Machine Learning . International Journal on Recent and Innovation Trends in Computing and Communication, 11(9), 3186–3190. https://doi.org/10.17762/ijritcc.v11i9.9508
Section
Articles