INTELLIGENCE THREAT ANALYSIS AND MALWARE DETECTION
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INTELLIGENCE THREAT ANALYSIS AND MALWARE DETECTION
Authors:
VIJAYALAKSHMI S, JANANI K.S,
1,2,3.B.sc ISCF students, Dr.M.G.R Educational and Research Institute Deemed to be University, Chennai. Corresponding Email ID: vijayalakshmikumar444@gmail.com
- Professor, Dr.M.G.R Educational and Research Institute, deemed to be University, Chennai.
- Assistant Professor, Dr.M.G.R Educational and Research Institute, Deemed to be University, Chennai.
ABSTRACT: Malware Detection entails the process of identifying and classifying malicious software (malware) that can potentially damage devices, networks, or data. It consists of signature-based detection, heuristic analysis, behavioral analysis, and even machine learning.
There is great concern for the impact of malware on digital security due to the possibility of exposing sensitive information and damaging the system. The aim of this particular project is to develop an efficient malware detection system with advanced machine learning techniques, behavioral analysis, and signature-based detection. Characterizing files, network traffic, and monitoring systems enables the model to identify threats in real time and neutralize them. This project is designed to improve cybersecurity by increasing detection accuracy, lowering false alarms, and offering proactive response
to threats. This solution enables systems to withs the continuous changes in cyber threats and creates a better environment on the internet.
Nowadays, with the advances in technology, digital systems make our life easier and more complicated at the same time. This also includes an increase in the potential for cyber threats which is one of the most significant challenges we face today. Malware comes on top of the list.
My project aims at developing and integrating an efficient malware detection application that relies on pattern recognition to find malware and contains advanced detection algorithms. It employs machine learning and both static and dynamic analysis techniques.