Mr. Sunawar Khan | Computer Science | Research Excellence Award
National College of Business Administration | Pakistan
Sunawar Khan is a research-oriented academic and practitioner with strong expertise in artificial intelligence, machine learning, deep learning, cybersecurity, smart grid technologies, Computer Science and intelligent systems. His research interests center on applying advanced computational intelligence techniques to real-world problems, particularly in healthcare analytics, intrusion detection systems, software reliability, and smart city security. He has worked extensively with neural networks, ensemble learning, explainable AI, and hybrid deep learning architectures such as CNN- and BiGRU-based models. His projects include deep learning–based disease detection using benchmark medical datasets, facial expression recognition with neural AdaBoost methods, and software defect prediction using industrial datasets. In cybersecurity, his research focuses on robust intrusion detection for smart environments, emphasizing accuracy, scalability, and interpretability. He also has experience designing and implementing intelligent management systems and applying machine learning to large, structured datasets. His academic background reflects a strong foundation in artificial intelligence, image processing, computer vision, data mining, algorithm analysis, and computational theory, complemented by practical experience in programming and system development. Overall, his research profile demonstrates a commitment to innovative, data-driven solutions that bridge theoretical models and applied intelligent technologies across interdisciplinary domains.
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Featured Publications
Analysis of Cyber Security Attacks and Its Solutions for the Smart Grid Using Machine Learning and Blockchain Methods
– Future Internet, Vol. 15(2), Article 83, 2023
Harnessing AI for Sustainable Higher Education: Ethical Considerations, Operational Efficiency, and Future Directions
– Discover Sustainability, Vol. 6(1), Article 23, 2025
Antenna Systems for IoT Applications: A Review
– Discover Sustainability, Vol. 5(1), Article 412, 2024
Generative AI, IoT, and Blockchain in Healthcare: Applications, Issues, and Solutions
– Discover Internet of Things, Vol. 5(1), Article 5, 2025
Comparative Analysis of Deep Neural Network Architectures for Renewable Energy Forecasting: Enhancing Accuracy with Meteorological and Time-Based Features
– Discover Sustainability, Vol. 5(1), Article 533