Amel Abderrahmane | Computer Science | Best Review Article Award

Dr. Amel Abderrahmane | Computer Science | Best Review Article Award

Professor at Batna University | Algeria

Dr. Amel Abderrahmane  is a dedicated researcher and educator specializing in computer networks, with a strong academic and professional background in software-defined networking (SDN) and the Internet of Things (IoT). Currently pursuing a PhD in Sécurité des systèmes informatiques et réseaux at Batna University, Algeria, he focuses on advancing modern network infrastructures by solving critical control placement challenges. His academic journey began with a Bachelor’s degree in Computer Science from the University Ferhat Abbas Setif, where he graduated , followed by a Master’s degree in Distributed Systems and Networking at Batna University, earning first-in-class distinction. Alongside his research, he has been serving as a Temporary Professor at Batna University, where he teaches and supervises students in computer science. Abderrahmane has contributed valuable publications to international journals, including IEEE Access, highlighting his commitment to advancing innovative solutions in networking technologies.

Professional Profile

Scopus Profile

Education 

Dr. Amel Abderrahmane  has pursued a distinguished academic path in computer science and networking. He began his studies at the University Ferhat Abbas Setif, Algeria, earning a Bachelor’s degree in Computer Science. His performance and dedication laid a strong foundation for advanced research in distributed computing and networking. He completed his Master’s degree in Distributed Systems and Networking at Batna University, Algeria, where he ranked first in class, demonstrating both academic excellence and technical mastery. Building upon this achievement, he embarked on a PhD in Sécurité des systèmes informatiques et réseaux at Batna University , where his research focuses on optimizing SDN and IoT networks. His education has been marked by a blend of theoretical knowledge and practical applications, equipping him with expertise in network security, control placement, and performance optimization. This progression reflects his commitment to addressing real-world challenges in modern computer networks.

Experience 

Dr. Amel Abderrahmane has been serving as a Temporary Professor in the Computer Science Department at Batna University. In this role, he has gained significant teaching and mentoring experience, instructing undergraduate students in core computer science subjects while also guiding them in research-oriented projects. His responsibilities extend to supervising students in applied research related to SDN controllers, IoT platforms, and network management. Beyond classroom instruction, Abderrahmane actively contributes to collaborative research activities, assisting in projects that address optimization and security challenges in next-generation networks. His dual role as a researcher and educator allows him to integrate cutting-edge research insights into his teaching, creating an engaging learning environment. His academic contributions are reinforced by publications in respected international journals, including IEEE Access, which reflect the practical impact of his work. This experience underscores his ability to combine teaching excellence with meaningful research contributions in computer networking.

Research Interest

Dr. Amel Abderrahmane  research lies at the intersection of software-defined networking (SDN) and the Internet of Things (IoT), with a primary focus on optimizing control placement within distributed network environments. He is particularly interested in addressing scalability, efficiency, and reliability challenges to ensure seamless communication and effective resource allocation in modern infrastructures. His work emphasizes designing innovative frameworks and algorithms that enhance both performance and security in complex SDN-IoT ecosystems. Abderrahmane’s current research also explores how graph-theoretical methods and clustering techniques, such as the Louvain algorithm and betweenness-centrality metrics, can improve controller placement strategies for better network resilience. By tackling these critical issues, his contributions aim to support the development of smart, adaptive, and secure networking systems that are essential for emerging technologies, including smart cities, industrial IoT, and cloud-edge integration. His vision is to create sustainable solutions that can advance the next generation of intelligent and interconnected networks.

Award and Honor

Dr. Amel Abderrahmane  has consistently demonstrated excellence, earning recognition for his outstanding performance. During his Master’s studies in Distributed Systems and Networking at Batna University, he graduated first in class, a distinction that reflects his exceptional technical knowledge, analytical skills, and commitment to research. This achievement set the foundation for his doctoral studies and positioned him as a promising researcher in the fields of SDN and IoT. His scholarly contributions have been further acknowledged through publications in prestigious outlets such as the International Journal of Networked and Distributed Computing and IEEE Access. The acceptance of his research in these high-impact journals highlights the relevance and innovation of his work, serving as a testament to his academic accomplishments. While still at an early stage of his career, Abderrahmane’s academic honors and growing publication record mark him as a rising scholar within the international research community.

Research Skill

Dr. Amel Abderrahmane possesses a diverse set of research skills that strengthen his contributions to SDN and IoT studies. He is proficient in multiple programming languages, including Python, Java, C++, and C#, which enable him to implement and test advanced algorithms for network optimization. His technical expertise also extends to web programming, providing him with the versatility to design and integrate network applications. In addition, he is skilled in using SDN controllers and IoT platforms, tools essential for simulating and evaluating network performance in real-world conditions. Abderrahmane demonstrates strong analytical skills, particularly in applying graph-based techniques and clustering algorithms to solve controller placement challenges. His multilingual abilities in Arabic, French, and English further enhance his capacity to engage with international collaborations and research dissemination. Combined, these skills reflect a balanced profile of theoretical knowledge, practical application, and cross-cultural communication, enabling him to contribute effectively to global research networks.

Publication Top Note

Title:  A Survey of Controller Placement Problem in SDN-IoT Network
Authors: Amel Abderrahmane, Hamza Drid, and Amel Behaz SpringerLink
Journal: International Journal of Networked and Distributed Computing
Citation : 7

Conclusion

Dr. Amel Abderrahmane survey on the Controller Placement Problem (CPP) in SDN-IoT networks highlights its central role in ensuring scalability, reliability, and efficiency in next-generation infrastructures. By examining existing approaches, it becomes evident that optimal controller placement is a multidimensional challenge influenced by latency, fault tolerance, load balancing, and energy efficiency. Traditional models provide a foundation, but they often struggle to adapt to the heterogeneity and dynamic nature of IoT environments. Recent advancements, such as graph-based techniques and clustering algorithms, demonstrate promising results in improving performance and resilience. However, no single method universally addresses all requirements, indicating the need for hybrid and adaptive solutions. Future research should focus on intelligent, AI-driven strategies that can dynamically adjust placement decisions in real time, considering both network conditions and application demands. Ultimately, solving CPP will significantly enhance the effectiveness of SDN-IoT networks, enabling more reliable and sustainable digital ecosystems.