Farzaneh Zareian | Machine Learning | Best Researcher Award

Ms. Farzaneh Zareian | Machine Learning | Best Researcher Award

Ms. Farzaneh Zareian – Graduate Student, Amirkabir University of Technology, Iran.

Farzaneh Zareian is a dynamic civil engineering researcher with a specialization in earthquake engineering and machine learning applications in structural analysis. Holding a master’s degree from the prestigious Amirkabir University of Technology and a bachelor’s from the University of Tehran, she has consistently demonstrated academic excellence and innovation. Farzaneh has contributed significantly through teaching, research, and scholarly publications in seismic assessment and structural resilience. With experience in AI-powered modeling, fragility curve generation, and passive control systems, she stands at the intersection of engineering and intelligent computation, contributing to safer, more resilient infrastructure in seismic-prone regions.

Publication Profile

Google Scholar

🎓 Education Background

Farzaneh Zareian earned her M.Sc. in Civil Engineering (Earthquake Engineering) from Amirkabir University of Technology, Tehran (2020–2023) with an excellent-rated thesis supervised by Dr. Mehdi Banazadeh. Her research focused on nonlinear dynamic response estimation using machine learning. Prior to that, she completed her B.Sc. in Civil Engineering at the University of Tehran (2016–2020), with coursework emphasizing earthquake engineering, bridge design, and hydraulic structures. Her academic journey highlights a deep commitment to blending structural theory with advanced computational methods, maintaining strong GPAs and securing top ranks in national entrance exams at both undergraduate and postgraduate levels.

💼 Professional Experience

Farzaneh Zareian has accumulated valuable academic experience through teaching and research roles. She worked as a sessional instructor for the “Soft Computing” course at Shahab Danesh University during 2023–2024 and currently serves as a Teaching Assistant in “Theory of Structural Analysis” at Amirkabir University of Technology. Her practical engagements also include academic projects involving seismic hazard analysis, vulnerability assessment, and AI-driven structural modeling. These roles reflect her dual strength as both an educator and practitioner in earthquake-resistant design and computational engineering, making her a well-rounded and impactful civil engineering professional.

🏅 Awards and Honors

Farzaneh’s academic excellence has been widely recognized through several honors. In 2024, she was selected as a distinguished Ph.D. candidate by Amirkabir University’s Committee of Exceptional Talents. She ranked 1st among her peers in the Earthquake Engineering master’s program in 2022 and was among the top 0.2% in both bachelor’s and master’s national entrance exams in 2016 and 2020, respectively. Additionally, she was the top high school student at NODET. These accolades reflect her exceptional dedication, intelligence, and potential as a future leader in structural and earthquake engineering research.

🔬 Research Focus

Farzaneh’s research focuses on AI-enabled structural design and optimization, particularly in seismic contexts. She specializes in applying machine learning and physics-informed models to estimate structural responses, assess risk and reliability, and enhance infrastructure resilience. Her projects include probabilistic seismic hazard analysis, fragility curve generation, and the use of deep learning for crack detection in masonry. She is deeply committed to integrating data-driven approaches with classical civil engineering practices to improve safety, sustainability, and performance of critical infrastructure under seismic hazards.

🧾 Conclusion

Farzaneh Zareian exemplifies the emerging generation of civil engineers who are leveraging artificial intelligence to redefine structural safety and resilience. Her academic accomplishments, hands-on project experiences, teaching engagements, and scholarly contributions highlight a well-rounded professional profile. As she progresses toward doctoral research, her innovative mindset and strong foundation in both theory and practice make her a prime candidate for research excellence in AI-integrated earthquake engineering. With her interdisciplinary approach, she is poised to make impactful contributions to the global civil and seismic engineering community.

📚 Publication Top Notes

 Prediction of nonlinear dynamic responses and generation of seismic fragility curves for steel moment frames using boosting machine learning techniques
📅 Year: 2024 (Nov.)
📘 Journal: Computers & Structures
🔢 Cited by: 1

 Machine learning-based seismic risk assessment of steel moment structures: a reliability analysis framework
📅 Year: In Preparation (Expected 2025)
📘 Journal: Engineering Structures
🔢 Cited by:

Christopher Ekeocha | Machine learning | Best Researcher Award

Mr. Christopher Ekeocha | Machine learning | Best Researcher Award

Graduate Research Assistant, Africa Centre of Excellence in Future Energies and Electrochemical Systems (ACE-FUELS), Nigeria

Christopher Ikechukwu Ekeocha is a dedicated Assistant Research Fellow at the National Mathematical Centre in Abuja, Nigeria, with a keen interest in corrosion mitigation and environmental pollution. His extensive research focuses on developing innovative eco-friendly materials and computational simulation techniques to address corrosion and pollution challenges. He has represented Nigeria internationally at the International Chemistry Olympiad, guiding students to success in countries like Vietnam, Azerbaijan, Georgia, France, and China. 🌍🔬

Publication Profile

ORCID

Strengths for the Award:

  1. Academic Excellence: Christopher Ikechukwu Ekeocha has consistently performed at a high academic level throughout his education. His Ph.D. in Corrosion Technology (CGPA: 4.60/5.0) and Master’s in Environmental Chemistry (CGPA: 3.92/5.0) demonstrate his dedication to research and academic rigor.
  2. Innovative Research: His focus on developing eco-friendly, biomass-based anti-corrosion materials and using machine learning models for corrosion prediction is cutting-edge. His work combines experimental and computational techniques, pushing the boundaries of corrosion technology.
  3. Strong Publication Record: Ekeocha has published extensively in reputable, high-impact journals, with topics ranging from corrosion inhibitors to environmental chemistry. This demonstrates the relevance and quality of his work. Key publications include machine learning models and computational simulations for anti-corrosion research, which have been well-received in the scientific community.
  4. Interdisciplinary Collaboration: He has collaborated on multidisciplinary projects promoting circular economy and eco-friendly techniques for corrosion mitigation. His ability to work across various fields shows adaptability and leadership in research.
  5. Community Contribution: In addition to his academic work, Ekeocha has made significant contributions to the Chemistry Olympiad, leading Nigerian teams and authoring textbooks. His role in this capacity speaks to his leadership and commitment to education and knowledge dissemination.

Areas for Improvement:

  1. Research Diversification: While Ekeocha has made strong contributions in corrosion technology, expanding his research to other areas of environmental chemistry or further enhancing the practical applications of his work could strengthen his overall profile. Engaging in more diverse projects could showcase his versatility.
  2. Industry Engagement: Although his research is well-grounded in academia, there could be a stronger connection with industry to ensure his innovations, especially in corrosion mitigation, are applied in real-world settings. Collaborations with companies focusing on corrosion prevention or environmental impact assessments could enhance the practical impact of his research.
  3. International Recognition: While his publications are gaining recognition, presenting his research at more international conferences or collaborating with foreign institutions could boost his global visibility and increase the influence of his work.

Education

Christopher Ekeocha is affiliated with the Africa Centre of Excellence in Future Energies and Electrochemical Systems (ACE-FUELS) at the Federal University of Technology, Owerri (FUTO). His research emphasizes the permeation of ions across semi-permeable membranes, focusing on membrane thickness, permeation time, and electrolyte concentration. 🎓⚛️

Experience

With over a decade of experience, Christopher Ekeocha has served as an Assistant Research Fellow at the National Mathematical Centre, Abuja, since 2011. He leads Nigeria’s participation in the International Chemistry Olympiad, having represented the country in multiple international events. His expertise lies in corrosion studies, computational modeling, and eco-friendly corrosion inhibitors. 🌱🔧

Research Focus

Christopher’s research centers on the development of mathematical and predictive models for novel corrosion inhibitors. He specializes in using computational simulations and eco-friendly materials to mitigate metallic corrosion and conducting ecological risk assessments of environmental pollution. His work also covers adsorption kinetics, water and solvent treatment using nanoparticles, and pollutant removal with agricultural waste. 📊🔍

Awards and Honours

Ekeocha has gained recognition for his contributions to corrosion research and environmental protection. His participation in the International Chemistry Olympiad as a Nigerian team leader is notable, alongside his extensive academic publications and active role in global scientific conferences. 🏆🌟

Publication Top Notes

Christopher Ikechukwu Ekeocha has authored several influential articles in prestigious journals, including Materials Today Communications, Structural Chemistry, and African Scientific Reports. His works primarily focus on corrosion inhibition, eco-friendly materials, and environmental pollution. 📚✨

Ekeocha, C. I., et al. (2024). Data-Driven Machine Learning Models and Computational Simulation Techniques for Prediction of Anti-Corrosion Properties of Novel Benzimidazole Derivatives. Materials Today Communications https://doi.org/10.1016/j.mtcomm.2024.110156

Ekeocha, C. I., et al. (2024). Theoretical Study of Novel Antipyrine Derivatives as Promising Corrosion Inhibitors for Mild Steel in an Acidic Environment. Structural Chemistry https://doi.org/10.1007/s11224-024-02368-4

Ekeocha, C. I., et al. (2023). Review of Forms of Corrosion and Mitigation Techniques: A Visual Guide. African Scientific Reports, 2(3): 117. https://doi.org/10.46481/asr.2023.2.3.117

Conclusion:

Christopher Ikechukwu Ekeocha is an excellent candidate for the Research for Best Research Award. His innovative contributions in the field of corrosion technology, combined with his interdisciplinary approach and strong academic background, position him well for recognition. His research aligns with global trends toward eco-friendly solutions and computational advancements, making him a strong contender. However, increased industry engagement and further research diversification would further elevate his impact in both academic and practical domains.

 

Ehsan Mansouri | Machine learning | Best Researcher Award

Mr. Ehsan Mansouri | Machine learning | Best Researcher Award

Researcher, Inha University, South Korea

🧑‍💻 Ehsan Mansouri is a passionate software engineer and researcher specializing in cloud computing, machine learning, and data science. With a strong background in software engineering, he is committed to pushing the boundaries of technology to solve complex problems. Ehsan is currently a researcher at the Industrial Science and Technology Research Institute, Inha University, South Korea, where he explores innovative solutions in optimization and human-computer interaction.

Publication Profile

Google Scholar

Strengths for the Award

  1. Strong Educational Background: Ehsan Mansouri holds a Master’s degree in Software Engineering, specializing in cloud computing and optimization algorithms. His thesis focused on improving server efficiency in cloud environments, demonstrating his deep understanding of cutting-edge technology.
  2. Diverse Research Interests and Experience: His research spans multiple areas, including Machine Learning, Data Science, Cloud Computing, and Human-Computer Interaction, reflecting a broad and interdisciplinary approach. This is complemented by his experience as a researcher at Inha University and software engineer roles in both academic and private sectors.
  3. Publication Record: Mansouri has an impressive record of peer-reviewed publications, with multiple articles in reputable journals like Buildings, Journal of Forecasting, and Steel and Composite Structures. His works cover a range of topics from machine learning applications to software development for thermal analysis, illustrating his versatility as a researcher.
  4. Technical Proficiency: Proficient in various programming languages and machine learning frameworks, Mansouri has the technical skills required for developing innovative solutions. His expertise in data processing and visualization further enhances his research capabilities.
  5. Active Research Projects: Mansouri is actively involved in current research projects, such as developing machine learning models for predicting shear capacity of composite beams, highlighting his ongoing contributions to the field.

Areas for Improvement

  1. Focus on Core Research Strengths: While Mansouri has a broad range of research interests, a more concentrated focus on a specific niche area might help solidify his standing as an expert in that domain. This would enhance his recognition and impact in a highly specialized field.
  2. Increased Collaboration and Networking: Engaging in more international collaborations and expanding his network beyond his current institutions could amplify his research visibility and impact. This could include presenting at more international conferences and participating in cross-institutional research projects.
  3. Further Development of Communication Skills: Although Mansouri has achieved a high TOEFL score, enhancing his speaking skills (currently at 20/30) could improve his ability to present research findings effectively and engage with the global academic community more fluently.

 

Education

🎓 Master of Science in Software Engineering from Azad University of Birjand, Iran, where Ehsan developed a new data replication algorithm in cloud computing using particle swarm optimization. He also holds a Bachelor of Science in Software Engineering from the University of Birjand, Iran. His early education was at the National Organization for Development of Exceptional Talents (NODET) in Birjand, Iran.

Experience

💼 Ehsan has held various positions, including Researcher at Inha University, South Korea, and Software Engineer Expert at Birjand University of Medical Sciences and Butia’s Intelligent Sense of Communication in Iran. His experience ranges from software engineering to implementing innovative research projects in academia and private sectors.

Research Focus

🔍 Ehsan’s research interests include Machine Learning, Data Science, Cloud Computing, Human-Computer Interaction, Optimization, Data Grid, and Time Series Analysis. He is driven by a passion for creating efficient, scalable, and intelligent systems that enhance user experience and computational performance.

Awards and Honors

🏆 Ehsan Mansouri has achieved notable recognition in his field for his innovative work in cloud computing and data replication strategies, contributing significantly to enhancing server efficiency and optimization techniques in computational environments.

Publication Top Notes

📚 Ehsan has published several impactful papers in leading journals, including the Journal of Forecasting, Buildings, Steel and Composite Structures, and the Journal of Sustainability. His research contributions have been recognized and cited widely by peers in the field.

Ferreira, F.P.V., Jeong, S.H., Mansouri, E., Shamass, R., Tsavdaridis, K., Martins, C.H., De Nardin, S. (2024). Five Machine Learning Models Predicting the Global Shear Capacity of Composite Cellular Beams with Hollow-Core Units. Buildings. Link. Cited by: [2 articles].

Adnan, R.M., Mostafa, R.R., Dai, H.L., Mansouri, E., Kisi, O., Zounemat‐Kermani, M. (2024). Comparison of Improved Relevance Vector Machines for Streamflow Predictions. Journal of Forecasting, 43(1). Link. Cited by: [1 article].

Jeong, S.H., Mansouri, E., Ralston, N., Hu, J.W. (2024). An Advanced Software Interface to Make OpenSees for Thermal Analysis of Structures More User-Friendly. Steel and Composite Structures, 51(2). Link. Cited by: [3 articles].

Sabzekar, M., Mansouri, E., Deldari, A. (2023). A Data Replication Algorithm for Improving Server Efficiency in Cloud Computing Using PSO and Fuzzy Systems. Computer and Knowledge Engineering, 6(12), 1-14. Link. Cited by: [5 articles].

Mansouri, E., Manfredi, M., Hu, J.W. (2022). Environmentally Friendly Concrete Compressive Strength Prediction Using Hybrid Machine Learning. Journal of Sustainability, 14(20), 12990. Link. Cited by: [4 articles].

Conclusion

Ehsan Mansouri is a strong candidate for the Research for Best Researcher Award, given his robust educational background, diverse research interests, impressive publication record, and technical expertise. To further strengthen his candidacy, focusing on core research areas, expanding international collaborations, and refining communication skills would be beneficial. Overall, Mansouri demonstrates significant potential and contributions to the field of computer science and software engineering.