Volume 13, Issue 5

Anti-Malware System Using Machine Learning Language

Author

1Challa Mahesh Kumar, 2T S Y N Amith, 3N V D Aditya, 4Bezwada Karthikeya, 5Elima hussian

Abstract

In today's interconnected digital landscape, the proliferation of malicious software, or malware, poses a grave threat to the security and integrity of computer systems and data. To combat this ever-evolving menace, there is a pressing need for innovative and intelligent anti-malware solutions. This abstract introduces an advanced model: the "Intelligent Anti- Malware System Using Machine Learning Language." This model leverages the power of machine learning, a subfield of artificial intelligence, to revolutionize the way we detect and mitigate malware threats. Unlike traditional signature-based approaches, which are limited by their reliance on known patterns, our system employs cutting-edge machine learning techniques to proactively identify and combat malware in real- time. By continuously learning from evolving malware behaviours and characteristics, the system adapts and evolves alongside the threat landscape.

DOI

https://doi.org/10.62226/ijarst20241361

PAGES : 1398-1403 | 6 VIEWS | 4 DOWNLOADS


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1Challa Mahesh Kumar, 2T S Y N Amith, 3N V D Aditya, 4Bezwada Karthikeya, 5Elima hussian | Anti-Malware System Using Machine Learning Language | DOI : https://doi.org/10.62226/ijarst20241361

Journal Frequency: ISSN 2320-1126, Monthly
Paper Submission: Throughout the month
Acceptance Notification: Within 6 days
Subject Areas: Engineering, Science & Technology
Publishing Model: Open Access
Publication Fee: USD 60  USD 50
Publication Impact Factor: 6.76
Certificate Delivery: Digital

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