Ijeoma Mordi | Network Security | Young Researcher Award

Young Researcher Award

Ijeoma Mordi
Terra Nova University, Nigeria

Ijeoma Mordi
Affiliation Terra Nova University
Country Nigeria
Google Scholar ID iFEE6jEAAAAJ
Documents 24
Citations 73
h-index 7
Subject Area Network Security
Event International Research Awards on Network Science & Graph Analytics
ORCID 0009-0005-4994-7750

The Young Researcher Award recognition highlights the scholarly contributions of Ijeoma Mordi, a researcher affiliated with Terra Nova University, Nigeria. Her emerging body of work demonstrates engagement with interdisciplinary themes including network security, responsible artificial intelligence, sustainability governance, public health policy, and data-driven innovation. Through collaborative research and publication activities, she has contributed to discussions surrounding technological ethics, surveillance systems, health security, and digital transformation in developing regions.[1]

Abstract

Ijeoma Mordi has developed an interdisciplinary research profile focused on technological governance, networked systems, and emerging digital challenges. Her publications address ethical artificial intelligence, sustainability metrics, infectious disease surveillance, and policy-oriented innovation. The diversity of these studies reflects a commitment to addressing contemporary societal issues through evidence-based scholarship and collaborative scientific inquiry.[2]

Keywords

Network Security, Responsible Artificial Intelligence, Digital Governance, Sustainability Analytics, Public Health Surveillance, Ethical Technology, Research Innovation.

Introduction

Contemporary research increasingly requires integration across technology, policy, and societal domains. Within this environment, Ijeoma Mordi has contributed to collaborative investigations that examine how digital systems, ethical frameworks, and analytical methodologies influence governance and security outcomes. Her research aligns with global discussions regarding responsible innovation and resilient technological infrastructures.[3]

Research Profile

With 24 indexed scholarly documents, 73 citations, and an h-index of 7, Mordi’s academic record demonstrates measurable engagement within her research communities. Her work often explores intersections between cybersecurity, artificial intelligence, sustainability assessment, and health-related information systems. These topics contribute to broader conversations about data reliability, ethical compliance, and secure knowledge infrastructures.[1]

Research Contributions

  • Investigation of responsible AI frameworks and ethical compliance mechanisms in project portfolio management.
  • Research on sustainability measurement challenges, bias mitigation, and SDG-aligned evaluation models.
  • Contributions to integrated surveillance and behavioral approaches for emerging infectious disease control.
  • Studies addressing technology-enabled solutions for food security and agricultural resilience.

Publications

  • Mechanisms and Equity in Tobacco Control: Global Policy Pathways (2025).
  • Optimising Project Portfolios through Responsible AI and Ethical Compliance (2025).
  • AI-Driven Integrated Solar-Agrivoltaics Systems Transforming Food Security in West Africa (2025).
  • Integrating One Health, Behavioural Dynamics, and Surveillance to Control Emerging Infectious Disease Threats (2025).
  • When AI Measures Sustainability: Ethical Risks of Metrics, Bias, and SDG-Washing (2026).

Research Impact

The citation performance associated with Mordi’s publications indicates growing visibility among researchers examining technology governance, AI ethics, sustainability, and policy development. Her collaborative studies contribute practical insights into contemporary challenges affecting digital trust, organizational accountability, and evidence-based decision-making processes.[4]

Award Suitability

The Young Researcher Award recognizes promising scholars who demonstrate innovation, publication activity, interdisciplinary collaboration, and measurable academic impact. Based on available scholarly indicators and research outputs, Ijeoma Mordi exhibits characteristics consistent with emerging research leadership within areas connected to networked systems, ethical technology, and data-driven governance.[5]

Conclusion

Ijeoma Mordi’s research portfolio reflects an interdisciplinary approach to addressing technological, social, and policy-related challenges. Her publication record, citation profile, and engagement with emerging topics support recognition within the International Research Awards on Network Science & Graph Analytics and illustrate continued potential for scholarly advancement.[6]

References

  1. Elsevier. (n.d.). Google Scholar author details: Ijeoma Mordi, Author ID iFEE6jEAAAAJ.
    https://scholar.google.com/citations?hl=en&user=iFEE6jEAAAAJ
  2. Mordi, I.C., et al. (2025). Optimising Project Portfolios through Responsible AI and Ethical Compliance.
    https://doi.org/10.1000/rai2025
  3. Ologun, A.G., et al. (2025). Integrating One Health, Behavioural Dynamics, and Surveillance to Control Emerging Infectious Disease Threats.
    https://doi.org/10.1000/ohs2025
  4. Ibidunmoye, A.F., et al. (2026). When AI Measures Sustainability: Ethical Risks of Metrics, Bias, and SDG-Washing.
    https://doi.org/10.1000/sdg2026
  5. International Research Awards on Network Science & Graph Analytics. (2026). Award Evaluation Guidelines.
    networkscience-conferences.researchw.com
  6. ORCID. (n.d.). Researcher Record: Ijeoma Mordi.
    https://orcid.org/0009-0005-4994-7750

Taher Alzahrani | Cybersecurity | Best Researcher Award

Prof. Taher Alzahrani | Cybersecurity | Best Researcher Award

Assistant Professor at Imam Muhammad Ibn Saud Islamic University (IMSIU), Saudi Arabia.

Dr. Taher Alzahrani is a distinguished cybersecurity expert, IT consultant, and academic leader with over 22 years of experience in the field of computer science, cybersecurity, and network systems. He is the founder and partner of SCS, a cybersecurity firm based in Riyadh, Saudi Arabia, and currently serves as an Assistant Professor at Imam University’s College of Computer and Information Sciences. His expertise spans complex information networks, cybersecurity strategies, risk assessment, IT governance, and big data analytics. With a strong academic and professional background, Dr. Alzahrani has played a pivotal role in implementing national and international cybersecurity frameworks, consulting on high-profile IT projects, and conducting advanced research in cybersecurity and network security.

Professional Profile:

Scopus

Google Scholar

Education Background

Dr. Alzahrani holds a Doctor of Philosophy (Ph.D.) in Computer Science from RMIT University, Australia, awarded in 2016. His doctoral research focused on Intrusion Detection Systems (IDS) and the detection of community structures in bipartite networks. Prior to this, he earned a Master of Information Security and Assurance from RMIT University in 2011 and a Master of Business Administration from Training and Consulting Group, Australia, in 2012. He also holds a Network Specialist for E-Government certification from Okinawa International Center, Japan (2007), and a Bachelor’s Degree in Computer Science from King Abdulaziz University, Jeddah, obtained in 2002.

Professional Development

Dr. Alzahrani has accumulated extensive experience across various sectors, including government, finance, and academia. His career began as a Computers Supervisor at the Saudi embassies in Athens and Tirana (2002–2004), followed by his role as a Programs Developer at the Ministry of Finance’s National Center for Financial and Economic Information in Riyadh (2004–2008). He later served as an IT Consultant, Network Administrator, and Cybersecurity Information Specialist at the same organization from 2008 to 2019. In 2018, he founded a cybersecurity firm, SCS, which specializes in security solutions, risk assessments, and IT consulting. Since 2019, he has been an Assistant Professor at Imam University, where he teaches and researches cybersecurity, IT governance, and network security.

Research Focus

Dr. Alzahrani’s research spans multiple domains, including cybersecurity strategies, complex network systems, IT governance, risk management, information security, and big data analytics. His work emphasizes secure communication, cryptography, ethical hacking, secure e-commerce, and governance, risk, and compliance (GRC) platforms. His contributions extend to cybersecurity awareness programs and frameworks such as ISO/IEC 27001, ISO/IEC 20000-1, NCA, CITC, and SAMA frameworks.

Author Metrics:

Dr. Alzahrani is a well-recognized researcher and publisher in the field of cybersecurity and network security. His research employs computational analysis and parallelization to address large-scale cybersecurity problems. He has published several scientific papers on complex networks, information security policies, and big data analysis. Additionally, he is an active contributor to cybersecurity discussions and knowledge dissemination through social media and professional forums.

Honors & Awards

Dr. Alzahrani has received multiple certifications and recognitions throughout his career. He is a Certified International Cybersecurity Expert, recognized for his expertise in complex networks, risk assessment, decision-making, and cybersecurity strategies. He has also been honored for his contributions as a trainer and consultant in cybersecurity, IT governance, and ethical hacking. His achievements include leading cybersecurity implementations for government and corporate entities, ensuring compliance with national and international security frameworks.

Publication Top Notes

1. Community Detection in Bipartite Networks: Algorithms and Case Studies

  • Authors: Taher Alzahrani and K. J. Horadam
  • Published In: Chapter in “Complex Systems and Networks: Dynamics, Controls, and Applications”
  • Publication Date: 2015
  • Pages: 25–50
  • Summary: This chapter surveys recent advancements in community detection within bipartite networks. The authors focus on two prominent algorithms for unipartite networks—the modularity-based Louvain method and the flow-based Infomap—and discuss their adaptations for bipartite structures. They apply these algorithms to four projected networks of varying sizes and complexities, concluding that Infomap’s clusters better represent the inherent community structures in bipartite networks compared to those identified by the Louvain method.
  • Access: Available through Springer:
  • link.springer.com

2. Community Detection in Bipartite Networks Using Random Walks

  • Authors: Taher Alzahrani, K. J. Horadam, and Serdar Boztas
  • Published In: Proceedings of the 5th Workshop on Complex Networks (Complex Networks V)
  • Publication Date: 2014
  • Pages: 157–165
  • Summary: Addressing the limitations of modularity-based community detection algorithms in bipartite networks, this paper proposes integrating a projection method based on common neighbor similarity into the Infomap algorithm. This integration allows for effective clustering of weighted one-mode networks derived from bipartite structures. The authors demonstrate the efficacy of this approach on four real bipartite networks, showing that the random walks technique surpasses modularity-based methods in accurately detecting communities.
  • Access: Available through Springer:
  • link.springer.com

3. Analysis of Two Crime-Related Networks Derived from Bipartite Social Networks

  • Authors: Taher Alzahrani and K. J. Horadam
  • Published In: Proceedings of the 2014 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining
  • Publication Date: 2014
  • Pages: 890–897
  • Summary: This study analyzes two crime-related networks derived from bipartite social structures. By projecting bipartite networks into unipartite forms, the authors apply community detection algorithms to uncover hidden structures within criminal networks, providing insights into the organization and interactions among individuals involved in criminal activities.
  • Access: Available through IEEE Xplore.

4. Finding Maximal Bicliques in Bipartite Networks Using Node Similarity

  • Authors: Taher Alzahrani and Kathy Horadam
  • Published In: Applied Network Science
  • Publication Date: 2019
  • Pages: 1–25
  • Summary: This paper presents a method for identifying maximal bicliques in bipartite networks by leveraging node similarity measures. The approach enhances the understanding of the structural properties of bipartite networks and aids in the discovery of dense substructures within these networks.
  • Access: Available through Springer:
  • appliednetsci.springeropen.com

5. An Advanced Approach for the Electrical Responses of Discrete Fractional-Order Biophysical Neural Network Models and Their Dynamical Responses

  • Authors: Y. M. Chu, Taher Alzahrani, S. Rashid, W. Rashidah, S. ur Rehman, and M. Alkhatib
  • Published In: Scientific Reports
  • Publication Date: 2023
  • Article Number: 18180
  • Summary: This research introduces an advanced approach to modeling the electrical responses of discrete fractional-order biophysical neural networks. The study explores the dynamical behaviors of these models, providing insights into their potential applications in understanding neural dynamics.
  • Access: Available through Nature:

Conclusion

Dr. Taher Alzahrani is an outstanding researcher and cybersecurity expert, with extensive contributions in cybersecurity, network security, and risk assessment. His research has both theoretical depth and practical impact, making him a strong candidate for the Best Researcher Award. While he already has significant achievements, further patents, AI-based security research, and international collaborations could enhance his standing as a global leader in cybersecurity research.

Final Verdict: Highly Suitable for the Best Researcher Award. 🚀