Dr. Maher Alrahhal | Security | Best Researcher Award

Dr. Maher Alrahhal | Security | Best Researcher Award

Postdoctoral, University of Sharjah, United Arab Emirates

Dr. Maher Abdul Moein Alrahhal is a Postdoctoral Research Associate at the Research Institute of Science and Engineering, University of Sharjah, UAE, and a Postdoctoral Fellow at Amity University Dubai, UAE. He holds a Ph.D. in Computer Science and Engineering from Jawaharlal Nehru Technological University (JNTU), Hyderabad, India, specializing in Artificial Intelligence, Big Data, and Data Analysis. With a solid background in computer science and engineering, Dr. Alrahhal has made significant contributions to the fields of machine learning, image retrieval, and data mining 🌐💡.

Publication Profile

Google Scholar

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🎓Education Background

Dr. Alrahhal’s educational journey is marked by excellence, with a Ph.D. in Computer Science and Engineering from JNTU, Hyderabad, India (March 2024). He completed his Master of Technology in Computer Science and Engineering with First Division from the National Institute of Technology, Warangal, India (July 2018). He holds a Bachelor’s degree in Computer Engineering from the University of Aleppo, Syria, graduating with honors and securing the first rank in his department 🏆📚.

👨‍🏫Professional Experience

Dr. Alrahhal has a robust academic career with over five years of teaching experience at prominent institutions in Syria and India. He has served as a Teaching Assistant at the University of Aleppo, and later as a Lecturer and Assistant Supervisor at JNTU, Hyderabad. Dr. Alrahhal also led the Big Data Lab at JNTU and played a key role in mentoring seven master’s students. His postdoctoral roles involve research and teaching at the University of Sharjah and Amity University Dubai, UAE 💻📖.

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🏅Awards and Honors

Dr. Alrahhal has received several prestigious awards, including the Best Paper Award at IEMTRONICS 2025 for his work on “Hybrid CNN for Efficient Content-Based Image Retrieval Cognitive Systems” 🥇. In recognition of his outstanding achievements, he was honored with the Alan Turing Award at the International Royal Golden Award ceremony (2023). Other notable accolades include the University Excellence Distinction for first-ranking in 2014 and multiple Al-Basel Certificates for Excellence 🏅🎖️.

🔍 Research Focus

Dr. Alrahhal’s research focuses on Artificial Intelligence, Machine Learning, Big Data, Data Mining, and Image Retrieval. His work explores the integration of deep learning techniques with image and video processing, multimedia systems, and the application of Hadoop for scalable data analysis. His contributions aim to advance content-based image retrieval systems and the development of intelligent systems for real-world applications 📊🤖.

💡🌐Conclusion

Dr. Maher Abdul Moein Alrahhal is a dynamic researcher and academic, committed to advancing the fields of Artificial Intelligence and Data Science. With numerous published works in high-impact journals and ongoing research initiatives, he continues to shape the future of intelligent systems and multimedia applications 🌟📈.

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📚Publications

Disruptive Attacks on Artificial Neural Networks: A Systematic Review of Attack Techniques, Detection Methods, and Protection Strategies, Intelligent Systems with Applications, in press.

MapReduce model for efficient image retrieval: a Hadoop-based framework, International Journal of Information Technology (Springer, Scopus Q1).

Enhancing Image Retrieval Systems: A Comprehensive Review of Machine Learning Integration In CBIR, International Journal of Intelligent Systems and Applications in Engineering, 12(4), 4195–4214.

Integrating Machine Learning Algorithms for Robust Content-Based Image Retrieval, International Journal of Information Technology, DOI: 10.1007/s41870-024-02169-2 (Springer, Scopus Q1).

Automatic diagnosis of epileptic seizures using entropy-based features and Multimodal Deep Learning Approaches, Medical Engineering and Physics, DOI: 10.1016/j.medengphy.2024.104206, (Elsevier, Scopus Q1).

Enhancing image retrieval accuracy through multi-resolution HSV-LNP feature fusion and modified K-NN relevance feedback, International Journal of Information Technology, DOI: 10.1007/s41870-024-02000-y, (Springer, Scopus Q1).

Dr. Muhammad Asad Saleem | Information Security | Best Researcher Award

Dr. Muhammad Asad Saleem | Information Security | Best Researcher Award

Post Doctoral Researcher, University of Electronic Science and Technology of China

Dr. Muhammad Asad Saleem is a distinguished researcher and academic in cyberspace security, currently serving as a Postdoctoral Researcher at the University of Electronic Science and Technology of China 🇨🇳. With a strong background in computer science, he has contributed significantly to network security, cryptographic protocols, and authentication mechanisms 🔐. His research has been recognized internationally, earning him multiple high-impact publications 📚 in IEEE Transactions and Q1 journals. Passionate about fostering cybersecurity innovations, Dr. Saleem is dedicated to enhancing vehicular networks, blockchain security, and IoT authentication 🚗💡.

Publication Profile

🎓 Education

Dr. Saleem holds a Ph.D. in Computer Science and Technology (2021–2024) from the University of Electronic Science and Technology of China 🎖️, where he received the Excellent Student Award for his outstanding academic performance (CGPA 3.9/4.0). His doctoral research focused on privacy-preserving authenticated key-establishment protocols for vehicular ad-hoc networks 🚘🔑. Prior to that, he completed an MS in Computer Science (2018–2020) from COMSATS University Islamabad 🇵🇰, where he achieved a perfect 4.0/4.0 CGPA and was recognized as the Overall Batch Topper 🏆.

💼 Experience

Dr. Saleem has a strong academic career, beginning as a Lab Engineer (2018–2021) at COMSATS University Islamabad, where he taught foundational courses like Programming, Database Systems, and Network Security 💻. He later served as a Visiting Lecturer (2020–2021) at the University of Sahiwal, teaching advanced computer science subjects. From 2021 to 2024, he was a Lecturer in Computer Science at the Higher Education Department of Punjab, where he trained future cybersecurity experts. His transition to a Postdoctoral Researcher in cyberspace security at UESTC, China marks his continued pursuit of cutting-edge research in cryptographic algorithms and vehicular security systems 🌐🔒.

🏅 Awards and Honors

Dr. Saleem’s academic excellence and research contributions have earned him several prestigious awards 🏆. He was honored with the Excellent Student Award during his Ph.D. studies 📜 and was the Overall Batch Topper in his MS program 🥇. His high-impact publications in top-tier Q1 journals have further solidified his reputation as a leading cybersecurity researcher.

🔍 Research Focus

Dr. Saleem’s research primarily revolves around network security, cryptographic authentication, and secure vehicular networks 🚗🔑. His work focuses on designing lightweight and efficient security protocols for IoT, blockchain-based systems, and intelligent transportation networks 🌍🔐. His contributions have advanced secure key establishment mechanisms, privacy-preserving authentication, and cybersecurity solutions for smart cities and industrial IoT 💡🔒.

📝 Conclusion

Dr. Muhammad Asad Saleem is a dynamic researcher and educator, making significant strides in cybersecurity and network authentication 🛡️. With a strong academic background, extensive research experience, and a passion for innovation, he continues to contribute to the evolving landscape of secure communication systems. His high-impact publications and academic excellence place him among the most promising researchers in the field of cyberspace security 🚀.

📚 Publications 

A Provably Secure Lightweight Key Agreement Protocol for Wireless Body Area Networks in Healthcare Systems (2023) – IEEE Transactions on Industrial Informatics (DOI Link) – Cited by 50+ articles 🔬.

Blockchain and PUF-Based Secure Key Establishment Protocol for Cross-Domain Digital Twins in IIoT Architecture (2023) – Journal of Advanced Research (DOI Link) – Cited by 40+ articles 📡.

Provably Secure Authentication Protocol for Mobile Clients in IoT Environment Using Puncturable Pseudorandom Function (2021) – IEEE Internet of Things Journal (DOI Link) – Cited by 60+ articles 📲.

Authenticated Key Management Protocol in Fog Computing-Based Internet of Vehicles Deployment (2020) – IEEE Internet of Things Journal (DOI Link) – Cited by 55+ articles 🚘.

An Efficient and Physically Secure Privacy-Preserving Key-Agreement Protocol for Vehicular Ad-hoc Networks (2023) – IEEE Transactions on Intelligent Transportation Systems (DOI Link) – Cited by 35+ articles 🚗.

A Provably Secure Mobile User Authentication Scheme for Big Data Collection in IoT-Enabled Maritime Intelligent Transportation System (2023) – IEEE Transactions on Intelligent Transportation Systems (DOI Link) – Cited by 45+ articles ⚓.

Secure RFID-Assisted Authentication Protocol for Vehicular Cloud Computing Environment (2024) – IEEE Transactions on Intelligent Transportation Systems (DOI Link) – Cited by 30+ articles ☁️🚘.

A Cost-Efficient Anonymous Authenticated and Key Agreement Scheme for V2I-Based Vehicular Ad-hoc Networks (2024) – IEEE Transactions on Intelligent Transportation Systems (DOI Link) – Cited by 25+ articles 🏎️.

Lightweight and Secure Multi-Factor Authentication Scheme in VANETs (2023) – IEEE Transactions on Vehicular Technology (DOI Link) – Cited by 40+ articles 🏁.

Cloud-Assisted Secure and Cost-Effective Authenticated Solution for Remote Wearable Health Monitoring System (2023) – IEEE Transactions on Network Science and Engineering (DOI Link) – Cited by 50+ articles ⌚🔒.