ISSN (Online) :

 Special Issue on The Sustainable Development Goals

Notice Board

Call For Paper:

Volume 9 , March,

Issue 3

Paper 

Submission  

Deadline:

31 March 2025

Vol. 9,  Special Issue (Bi-yearly)



OAIJSE Menu
Imp Links for Reviewer
Invites Proposal for

RANSOMWARE DETECTION AND CLASSIFICATION USING MACHINE LEARNING 

Abstract

 Ransomware has emerged as a widespread menace in the digital realm, inflicting considerable financial losses and disrupting vital services for both individuals and organizations. Traditional signature-based detection methods are proving inadequate against the ever-evolving strategies employed by cybercriminals. This research introduces an inventive strategy to counter ransomware threats by leveraging machine learning techniques for effective detection and classification. The study makes a valuable contribution to the ongoing cybersecurity efforts by presenting a resilient and adaptive solution for identifying and categorizing ransomware. Through the utilization of machine learning, this approach establishes a proactive defence mechanism against ransomware threats, ensuring the protection of sensitive data, financial resources, and critical infrastructure from malicious attacks in the contemporary digital landscape.

Full Text PDF
Impact Factor
Downloads
NEWS and Updates

Peer Review Process

 ICCEME -2024 conference     

Computer Science ,Electronics, Electrical  Engineering Information Technology, Civil, Computer Science and Engineering , Mechanical, Mechanical-Sandwich Petroleum, Production Instrumentation & Control, Automobile ,Chemical, Electronics Instrumentation& Control, Electronics & Telecommunication  Submit paper at oaijse@gmail.com



Open Access License Policy

Abstracted and Indexed In