Anis Ur Rehman | Computer Science | Young Scientist Award

Young Scientist Award

Anis Ur Rehman
Chaoyang University of Technology Taiwan

Anis Ur Rehman
Affiliation Chaoyang University of Technology Taiwan
Country Taiwan
Scopus ID 59493184000
Documents 5
Citations 12
h-index 2
Subject Area Computer Science
Event International AI Data Scientists Award
ORCID 0009-0006-8464-3581

Anis Ur Rehman of Chaoyang University of Technology Taiwan has established an early-career research profile in Computer Science through scholarly publications, citation impact, and participation in internationally recognized research activities. His academic record reflects engagement with contemporary technological challenges and contributes to ongoing developments in data-driven computing and intelligent systems.[1]

Abstract

This article presents a concise overview of the academic achievements of Anis Ur Rehman and examines his suitability for recognition through the Young Scientist Award. The assessment considers publication activity, citation metrics, scholarly visibility, and contributions to Computer Science research.[1]

Keywords

Computer Science, Artificial Intelligence, Data Science, Machine Learning, Research Impact, Academic Excellence, Young Scientist Award.

Introduction

Early-career researchers play an important role in advancing scientific knowledge and technological innovation. Recognition programs such as the Young Scientist Award encourage continued excellence and support the development of future research leaders. Anis Ur Rehman represents a growing cohort of scholars contributing to modern computational research and intelligent technologies.[2]

Research Profile

According to publicly available academic profiles, Anis Ur Rehman has produced peer-reviewed scholarly work indexed within major research databases. His profile includes five indexed documents, twelve citations, and an h-index of two, indicating measurable scholarly engagement and growing visibility within the research community.[1]

Research Contributions

His research activities focus on computational methods and emerging digital technologies. Through collaborative and independent investigations, he has contributed to the broader understanding of intelligent systems, data processing methodologies, and technology-enabled solutions that support academic and industrial applications.[3]

Publications

  • Five Scopus-indexed scholarly publications.
  • Research contributions in Computer Science and related technologies.
  • Internationally accessible research outputs through scholarly databases.

Research Impact

Citation activity demonstrates that the research outputs have attracted attention from other scholars. Although still in an early stage of career development, the available metrics suggest a foundation for future academic growth and broader scientific influence.[1]

Award Suitability

The combination of peer-reviewed publications, measurable citation performance, active research participation, and commitment to scientific advancement supports consideration for the Young Scientist Award. These indicators align with common evaluation criteria emphasizing research quality, innovation, and emerging scholarly leadership.[2]

Conclusion

Anis Ur Rehman’s academic profile reflects promising research development within Computer Science. His documented scholarly outputs, citation record, and engagement with contemporary technological topics provide a basis for recognition through the International AI Data Scientists Award Young Scientist Award category.

References

  1. Elsevier. (n.d.). Scopus author details: Anis Ur Rehman, Author ID 59493184000. Scopus.
    https://www.scopus.com/authid/detail.uri?authorId=59493184000
  2. ORCID. (n.d.). Researcher Profile: Anis Ur Rehman.
    https://orcid.org/0009-0006-8464-3581
  3. Digital Object Identifier Foundation. (n.d.). DOI System Reference.
    https://doi.org/10.1109/5.771073

Ameni Chetouane | Computer Science | Best Researcher Award

Dr. Ameni Chetouane | Computer Science | Best Researcher Award

Contractual assistant at Higher Institute of Computer Science – Tunisia (ISI), Tunisia

Ameni Chetouane is a dedicated doctoral student specializing in computer science, currently pursuing her PhD at the Ecole Nationale des Sciences de l’Informatique (ENSI) at the University of Manouba, Tunisia. Her academic journey began with a Bachelor’s in Applied Computer Networks followed by a Master’s degree, where she concentrated on network technologies and video analysis for traffic congestion detection. She is deeply involved in research aimed at securing Software Defined Networking (SDN) systems against cyber-attacks using Artificial Intelligence (AI) methods.

Profile

Orcid

Education

Ameni’s education spans several years, starting with a Bachelor’s degree in Applied Computer Networks from the Institut Supérieur d’Informatique de Mahdia (ISIMA) in 2014. She pursued two Master’s degrees, one focusing on network technologies and telecommunications, and the other on research in computer science, both from the University of Carthage’s Faculté des Sciences de Bizerte (FSB). Her doctoral studies, commenced in 2021, are focused on the application of AI for intrusion detection systems (IDS) in SDN environments, with a goal to combat cyber-attacks.

Experience

Ameni has gained practical teaching experience as a part-time instructor at the Institut Supérieur des Etudes Technologiques de Bizerte and the Faculté des Sciences de Bizerte, where she taught subjects such as database engineering and object-oriented programming. Her internships, including research at LaBRI, University of Bordeaux, and her professional project at Millénia Engineering, have allowed her to apply theoretical knowledge in real-world network and software development projects.

Research Interests

Ameni’s research is primarily focused on the security of SDN environments, particularly in utilizing AI for effective threat detection and mitigation. Her doctoral thesis specifically explores AI-driven solutions for securing SDN systems against Distributed Denial of Service (DDoS) attacks. She aims to improve the performance of IDSs by incorporating machine learning (ML) and continual learning methods into SDN security architectures, ensuring adaptive and real-time defenses against evolving threats.

Awards

Ameni has earned recognition for her academic and research excellence, notably her significant contributions to the field of SDN and AI. Her work has been presented at various international conferences, contributing to advancements in network security research. While specific awards are not listed, her impact within the academic community, through her publications and conference participations, is considerable.

Publications

Ameni Chetouane, Sabra Mabrouk, Imen Jemili, and Mohamed Mosbah. “A comparative study of vehicle detection methods in a video sequence.” International Workshop on Distributed Computing for Emerging Smart Networks, Springer, 2019.

Ameni Chetouane, Sabra Mabrouk, Imen Jemili, and Mohamed Mosbah. “Vision-based vehicle detection for road traffic congestion classification.” Concurrency and Computation: Practice and Experience, 2022.

Ameni Chetouane, Sabra Mabrouk, and Mohamed Mosbah. “Traffic congestion detection: Solutions, open issues, and challenges.” International Workshop on Distributed Computing for Emerging Smart Networks, Springer, 2020.

Ameni Chetouane and Kamel Karoui. “A survey of machine learning methods for DDoS threats detection against SDN.” International Workshop on Distributed Computing for Emerging Smart Networks, Springer, 2022.

Ameni Chetouane, Kamel Karoui, and Ghayth Nemri. “An intelligent ML-based IDS framework for DDoS detection in the SDN environment.” International Conference on Advances in Mobile Computing and Multimedia Intelligence, Springer, 2022.

Ameni Chetouane and Kamel Karoui. “DDoS detection approach based on continual learning in the SDN environment.” International Conference on Hybrid Intelligent Systems, Springer, 2022.

Ameni Chetouane and Kamel Karoui. “Risk-based intrusion detection system in Software Defined Networking.” Concurrency and Computation: Practice and Experience, 2023.

Conclusion

Ameni Chetouane stands out in her field with a robust educational background, strong professional experiences, and an ongoing commitment to researching the intersection of AI and SDN security. Through her published works, she has made significant contributions to securing networks using intelligent methods, focusing on solving complex cyber threats in modern network infrastructures. As she continues her research, her work promises to shape the future of AI-driven cybersecurity in SDN environments.