Consultation Overview
Malware Behaviour Analysis with Knowledge graphs
Exponential rise of Internet increases the risk of cyber attack related incidents which are generally caused by wide spread frequency of new malware generation. Different types of malware families have complex, dynamic behaviours and characteristics which can cause a novel and targeted attack in a cyber-system. Existence of large volume of malware types with frequent new additions hinders cyber resilience effort. To address the gap, we propose a new ontology driven framework that captures recent malware behaviours. According to code structure malware can be divided into three categories: basic, polymorphic and metamorphic. Packing or code obfuscation is also a technique adopted by the malware developers to make the code unreadable and avoid detection. Given that ontology techniques are useful to express the domain knowledge meaningfully, this paper aims to develop an ontology for dynamic analysis of malware behaviour and to capture metamorphic and polymorphic malware behaviour. This will be helpful to understand malicious behaviour exhibited by new generation malware samples and changes in their code structure. The proposed framework includes 14 malware families with their sub-families and 3 types of malware code-structure with their individuals. With a focus on malware behaviour the proposed ontology depicts the relations among malware families and malware code-structures with their respective behaviour. This project is available for academic collaboration, implementation guidance, and research supervision in the areas of cybersecurity, malware analysis, deep learning, ontology engineering, and explainable AI.
Service Details
What's Included
- Video consultation
- Personalized guidance and advice
- Session notes and recommendations
- Follow-up support via email
Pricing Options
- Single Session ₹500
- Full Project ₹500
About Ipshita Roy Chowdhury
I am a researcher in Computing Science with expertise in cybersecurity, deep learning and malware analysis. My overall research interest focuses on developing novel AI-driven approaches for malware detection including image-based classification, continual learning and ontology-based knowledge graph integration. I am passionate about teaching and mentoring to help the students understand complex concepts in machine learning, data science and cybersecurity.
Experience
AI for Healthcare
Specialized expertise in ai for healthcare with 6 years of professional experience.
