Pradeepta Kumar Sarangi

Work place: Chitkara University School of Engineering and Technology, Chitkara University Himachal Pradesh, India

E-mail: pradeepta.sarangi@chitkarauniversity.edu.in

Website:

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Biography

Dr. Pradeepta Sarangi brings 24 years of experience in both academia and administration, contributing significantly to the field of education. Dr. Sarangi specializes in Machine Learning (ML), Data Analytics, Natural Language Processing (NLP), and Image Processing, with a strong focus on their practical applications. He is actively supervising six PhD students, guiding them in advanced research topics within his areas of expertise.With more than 70 papers published in Scopus-indexed journals. Dr. Sarangi has made significant contributions to the field of technology and research. 

Author Articles
Transformer Framework Enhanced by Large Language Models for Image-based Multi-class Malware Detection

By Gaurav Mehta Pradeepta Kumar Sarangi Shaily Jain Vikas Tripathi

DOI: https://doi.org/10.5815/ijitcs.2026.03.11, Pub. Date: 8 Jun. 2026

With the rapid proliferation of electronic devices, the volume and sophistication of malware have surged, posing critical cybersecurity threats. Traditional malware detection approaches face challenges such as limited generalization, unbalanced datasets, and high computational costs. To address these issues, this study introduces the LLM-Powered Transformer Framework for Multi-Class Malware Detection, an image-based approach integrating Large Language Models (LLMs) and transformer architectures with Convolutional Neural Networks (CNNs). The proposed framework enhances malware classification by leveraging data visualization, balanced sampling, and data augmentation techniques, achieving over 98.86% accuracy across four open-source datasets. Furthermore, this study makes two key contributions: first, it provides granular insights into malware classification performance using confusion matrix analysis, aiding cybersecurity professionals in refining detection strategies. Second, the balanced sampling approach eliminates the need for additional datasets, minimizes hardware overhead, and dynamically adjusts sampling weights for optimal learning. Additionally, data augmentation techniques mitigate overfitting, enhancing the model's adaptability to diverse malware variants. Comparative analysis with state-of-the-art methods demonstrates the proposed framework's efficiency in achieving high accuracy while maintaining computational feasibility. These advancements establish a robust foundation for real-world malware detection and cybersecurity applications.

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