Vaggelis Lamprou | Computer Science | Best Researcher Award

Mr. Vaggelis Lamprou | Computer Science | Best Researcher Award

National Technical University of Athens | Greece

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Early Academic Pursuits

Mr. Vaggelis Lamprou began his academic journey with a strong foundation in mathematics, earning his Bachelor’s degree from the National and Kapodistrian University of Athens, where he developed a deep interest in calculus, probability theory, and statistics. His passion for analytical reasoning and theoretical problem-solving led him to pursue a Master’s degree in Mathematics at the University of Bonn, Germany, where he focused on probability theory and its applications, culminating in a thesis on large deviations in mean field theory. This early academic phase not only honed his mathematical rigor but also laid the groundwork for his transition into the emerging domains of artificial intelligence and machine learning.

Professional Endeavors

Building upon his academic background, Mr. Lamprou advanced into roles that blended research with real-world applications. As a Data Analyst at Harbor Lab, he utilized statistical and computational tools to optimize platform usability and collaborated in developing innovative cost estimation tools for the maritime industry. His transition into machine learning engineering at Infili Technologies SA and later at the DSS Lab, EPU-NTUA, marked a shift toward high-impact AI-driven research and development, particularly within European-funded projects focusing on federated learning, generative AI, anomaly detection, and privacy-preserving technologies.

Contributions and Research Focus

Mr. Lamprou’s research is rooted in the intersection of mathematics, computer science, and artificial intelligence, with a strong emphasis on interpretable AI, deep learning, and probabilistic modeling. His work spans applications in medical imaging, cybersecurity, and large-scale distributed learning systems. In his Master’s thesis in Artificial Intelligence, he explored the evaluation of interpretability methods for deep learning models in medical imaging, underlining his dedication to developing transparent and trustworthy AI solutions. His contributions also extend to federated learning frameworks, enhancing data security and performance in next-generation communication networks.

Publications and Scholarly Engagement

His scholarly output reflects a commitment to both theoretical innovation and practical problem-solving. Notable works include a study on interpretability in deep learning for medical images published in Computer Methods and Programs in Biomedicine, and a comprehensive survey on federated learning for cybersecurity and trustworthiness in 5G and 6G networks in the IEEE Open Journal of the Communications Society. He actively participates in academic discourse, presenting at international conferences such as the International Conference on Information Intelligence Systems and Applications, further contributing to the global exchange of ideas in AI research.

Accolades and Recognition

Mr. Lamprou’s academic excellence is evident in his high academic distinctions throughout his studies, including top GPAs in his advanced degrees. His recognition extends beyond academic grades, with his selection to contribute to high-profile European R&D initiatives—a testament to his expertise and reliability in cutting-edge technological research. His invited participation in prestigious conferences and collaborations with leading research institutions reflects the respect he commands within the AI and machine learning community.

Impact and Influence

Through his research and professional activities, Mr. Lamprou has contributed to advancing AI methodologies in fields of societal importance, such as healthcare and cybersecurity. His work in interpretable AI has the potential to bridge the gap between complex machine learning models and human understanding, fostering trust in AI-assisted decision-making. In the realm of federated learning, his contributions support data sovereignty and privacy, addressing critical challenges in the deployment of AI at scale across sensitive domains.

Legacy and Future Contributions

As a PhD candidate at the National Technical University of Athens, Mr. Lamprou is poised to further deepen his contributions to the AI research landscape. His ongoing work aims to push the boundaries of interpretable and probabilistic AI models, with a vision to create transparent, reliable, and secure machine learning systems. His trajectory suggests a lasting influence on both the academic and industrial sectors, with the potential to inspire future researchers to prioritize ethical and explainable AI solutions.

Publications


Article: Federated Learning for Enhanced Cybersecurity and Trustworthiness in 5G and 6G Networks: A Comprehensive Survey
Authors: Afroditi Blika, Stefanos Palmos, George Doukas, Vangelis Lamprou, Sotiris Pelekis, Michael Kontoulis, Christos Ntanos, Dimitris Askounis
Journal: IEEE Open Journal of the Communications Society
Year: 2025


Article: On the trustworthiness of federated learning models for 5G network intrusion detection under heterogeneous data
Authors: Vangelis Lamprou, George Doukas, Christos Ntanos, Dimitris Askounis
Journal: Computer Networks
Year: 2025


Article: Data analytics for research on complex brain disorders
Authors: Michail Kontoulis, George Doukas, Theodosios Pountridis, Loukas Ilias, George Ladikos, Vaggelis Lamrpou, Kostantinos Alexakis, Dimitris Askounis, Christos Ntanos
Journal: Open Research Europe
Year: 2024


Article: On the evaluation of deep learning interpretability methods for medical images under the scope of faithfulness
Authors: Vangelis Lamprou, Athanasios Kallipolitis, Ilias Maglogiannis
Journal: Computer Methods and Programs in Biomedicine
Year: 2024


Article: Grad-CAM vs HiResCAM: A comparative study via quantitative evaluation metrics
Author: Vaggelis Lamprou
Institution: University of Piraeus
Year: 2023


Conclusion

With his blend of theoretical insight, technical skill, and a forward-looking research vision, Mr. Lamprou stands out as a promising researcher whose work is set to have a significant impact on the development of transparent and reliable AI technologies. His career embodies the bridge between rigorous academic inquiry and impactful, real-world AI solutions.

Regner Sabillon  | Computer Science | Best Researcher Award

Prof. Regner Sabillon | Computer Science | Best Researcher Award 

International University of La Rioja | Canada

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Early Academic Pursuits

Prof. Regner Sabillon embarked on a diverse and interdisciplinary academic journey rooted in aviation, computer science, and cybersecurity. He began his academic career with a Bachelor's degree in Computer Science from the Universidad de San Pedro Sula, Honduras. He later completed an MBA from the Universidad Politecnica de Madrid, Spain, with specializations in IT Systems Management and Business Administration. His academic thirst extended to include a Master of Science in Knowledge and Information Society from Universitat Oberta de Catalunya and further certifications from institutions like DeVry Institute of Technology and SAIT in Calgary. Currently, he is a Ph.D. candidate at the Universidad Internacional de La Rioja, Spain, focusing on cybersecurity audit, assurance, and awareness.

Professional Endeavors

Prof. Sabillon's extensive professional career spans over two decades in diverse IT and cybersecurity roles. From his early years as a military aviator to becoming a certified cybersecurity leader, his contributions include IT consulting, cybersecurity management, technical training, and educational leadership. He has held notable roles such as Cybersecurity Lead at SAIT, Bow Valley College, and Columbia College. He has also worked with organizations like Gran Tierra Energy, Tuscany LP, and the United Nations (UNDP) in international ICT consultancy roles. In academia, he currently serves as a lead professor at SAIT and instructor at various Canadian institutions including Athabasca University and Loyalist College.

Contributions and Research Focus

Prof. Sabillon's research spans critical areas of cybersecurity, including governance, digital forensics, cyber law, and cybersecurity awareness. His scholarly work focuses on developing practical models such as the CyberSecurity Audit Model (CSAM 2.0) and the Cybersecurity Awareness Training Model (CATRAM 2.0) aimed at improving organizational cybersecurity posture. He has published extensively in renowned journals and presented at international conferences such as IEEE SysCon, HCII, and CISTI. His current Ph.D. thesis delves into cybersecurity models for improving assurance and organizational resilience.

Accolades and Recognition

Prof. Sabillon has earned multiple prestigious awards including the Instructor Excellence Nominee (2024) at SAIT and the 2009 Outstanding Mentor Award from the Network Professional Association. His book on cybersecurity was ranked #1 by BookAuthority in several categories including Best New Cybersecurity Books. He also received the second-best research paper award at the INCISCOS 2017 conference. His extensive certifications, including C|CISO, CRISC, CGEIT, and ISO 27001 Lead Auditor, further establish his expertise and reputation.

Impact and Influence

Prof. Sabillon's work has significantly shaped the academic and professional landscape of cybersecurity in Canada and beyond. His curriculum development efforts at SAIT have influenced the structure of post-diploma cybersecurity programs, equipping the next generation of IT professionals with critical skills. Through his audit and awareness models, he has strengthened cybersecurity practices in academic and corporate institutions.

Legacy and Future Contributions

Prof. Sabillon continues to build a legacy of excellence in cybersecurity education and practice. With a deep commitment to knowledge sharing, training, and systems improvement, he is poised to contribute further to global cybersecurity standards and education reform. As he completes his Ph.D., his ongoing scholarly work and professional leadership promise lasting contributions to digital safety, governance, and risk management across sectors.

Publications


Cybersecurity Audit, Assurance and Awareness: Cybersecurity Models to Improve the Organizational Cybersecurity Posture
Author: Regner Sabillon
Journal: Unpublished Doctoral Dissertation
Year: 2025


Assessing the Effectiveness of Cyber Domain Controls When Conducting Cybersecurity Audits: Insights from Higher Education Institutions in Canada
Authors: Regner Sabillon, Juan Ramon Bermejo Higuera, Jeimy Cano, Javier Bermejo Higuera, Juan Antonio Sicilia Montalvo
Journal: Electronics
Year: 2024


Planning and Conducting Cybersecurity Audits to Assess the Effectiveness of Controls
Authors: Regner Sabillon, M. Barr
Conference Proceedings: IEEE International Systems Conference (SysCon), Montréal, Québec, Canada
Year: 2024


The Importance of Cybersecurity Awareness Training in the Aviation Industry for Early Detection of Cyberthreats and Vulnerabilities
Authors: Regner Sabillon, Juan Ramon Bermejo Higuera
Conference: HCI International 2023 – Late Breaking Papers
Year: 2023


The Importance of Cybersecurity Awareness Training in the Aviation Industry for Early Detection of Cyberthreats and Vulnerabilities
Author: Regner Sabillon
Conference: 25th International Conference on Human-Computer Interaction (HCII 2023)
Year: 2023


Conclusion

Prof. Regner Sabillon exemplifies academic and professional excellence in cybersecurity. His vast array of qualifications, scholarly contributions, and real-world applications reflect a unique blend of intellect and impact. With a focus on innovation, education, and strategic governance, Prof. Sabillon remains a transformative figure in the realm of computer science and cybersecurity.

Aman Bin Jantan | Computer Science | Best Researcher Award

Assoc. Prof. Dr. Aman Bin Jantan | Computer Science | Best Researcher Award

Universiti Sains Malaysia | Malaysia

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Early Academic Pursuits 🎓

Assoc. Prof. Dr. Aman Bin Jantan's academic journey is rooted in a strong foundation in computer science. He earned his Bachelor’s degree (1993) and Master’s in Computer Science (AI) (1996) from Universiti Sains Malaysia (USM), where he laid the groundwork for his expertise in artificial intelligence and software engineering. His research on FrameLog Compiler Construction during his MSc reflected an early inclination toward programming languages and AI-driven system development. His PhD in Software Engineering (2002) from USM further solidified his prowess, focusing on the redefinition of expert system development languages—a groundbreaking contribution to the field.

Professional Endeavors 🏢

Dr. Aman has had an extensive career in both academia and industry. His professional journey began as a Research Officer at USM’s AI Lab in 1993, followed by roles as a Graduate Assistant and Lecturer. His passion for education saw him taking up lecturing positions at Stamford College, UiTM Shah Alam, and USM. Apart from academia, he ventured into the tech industry by establishing his own ICT business, offering software solutions, IT services, and computer training. Since 2002, he has been an integral part of USM’s School of Computer Sciences, where he now serves as an Associate Professor.

Contributions and Research Focus 🔬

Dr. Aman’s research spans across multiple domains, including:
Information Security – Intrusion Detection, Cyberwarfare, Encryption, Steganography, and Electronic Forensics.
Software Engineering – Fault Tolerance, Component-Based System Development, and Software Quality Assurance.
Artificial Intelligence – Machine Learning, Neuro-Fuzzy Systems, and Expert Systems.

His work on network security, intrusion detection, and machine learning-driven cybersecurity solutions has significantly impacted the field. His innovative Honeybee Intelligent Model for Network Zero-Day Attack Detection is a notable contribution that has been widely recognized.

Accolades and Recognition 🏆

Dr. Aman’s excellence in teaching and research has earned him multiple Excellent Service Awards (2007, 2011, 2020). His publications in high-impact journals, including those on financial crime prevention, AI-driven profiling, and cybersecurity measures, have established him as a thought leader in his domain.

Impact and Influence 🌍

As an academic and researcher, Dr. Aman has shaped the next generation of cybersecurity experts and software engineers. His workshops, mentorship, and leadership in the field of information security have influenced policy-making and corporate cybersecurity strategies. His Security and Forensic Research Group Laboratory at USM is a hub for cutting-edge research in cyber defense technologies.

Legacy and Future Contributions 🚀

Dr. Aman’s contributions to artificial intelligence, cybersecurity, and software engineering will continue to shape the landscape of digital security and computing. His commitment to advancing cybersecurity education and research ensures that future professionals will be well-equipped to tackle emerging threats in an increasingly digital world. With a strong portfolio of research, industry collaborations, and mentorship, Dr. Aman remains a driving force in the evolution of AI-driven security solutions. His future work is expected to redefine the intersection of AI and cybersecurity, making digital systems safer and more resilient.

Publications


  • 📄 Enhancing Neighborhood-Based Co-Clustering Contrastive Learning for Multi-Entity Recommendation

    • Authors: J. Liao, Juan; A.B. Jantan, Aman Bin; Z. Liu, Zhe

    • Journal: Engineering Applications of Artificial Intelligence

    • Year: 2025


  • 📄 Digital Forensic Investigation on Social Media Platforms: A Survey on Emerging Machine Learning Approaches

    • Authors: A.A. Kazaure, Abdullahi Aminu; A.B. Jantan, Aman Bin; M.N. Yusoff, Mohd Najwadi

    • Journal: Journal of Information Science Theory and Practice

    • Year: 2024


  • 📄 Digital Forensics Investigation Approaches in Mitigating Cybercrimes: A Review

    • Authors: A.A. Kazaure, Abdullahi Aminu; A.B. Jantan, Aman Bin; M.N. Yusoff, Mohd Najwadi

    • Journal: Journal of Information Science Theory and Practice

    • Year: 2023


  • 📄 A Machine Learning Classification Approach to Detect TLS-Based Malware Using Entropy-Based Flow Set Features (Open Access)

    • Authors: K. Keshkeh, Kinan; A.B. Jantan, Aman Bin; K. Alieyan, Kamal

    • Journal: Journal of Information and Communication Technology

    • Year: 2022


  • 📄 Multi-Behavior RFM Model Based on Improved SOM Neural Network Algorithm for Customer Segmentation (Open Access)

    • Authors: J. Liao, Juan; A.B. Jantan, Aman Bin; Y. Ruan, Yunfei; C. Zhou, Changmin

    • Journal: IEEE Access

    • Year: 2022