Thierry Sebakunzi | Data Science | Innovative Research Award

Innovative Research Award

Thierry Sebakunzi
Ministry of Health, Rwanda
Thierry Sebakunzi
Affiliation Ministry of Health
Country Rwanda
Documents 3
Subject Area Data Science
Event International Popular Scientist Awards
ORCID 0009-0004-8348-0835

Thierry Sebakunzi  the Innovative Research Award recognition highlights the scholarly contributions of Thierry Sebakunzi, a researcher affiliated with the Ministry of Health in Rwanda. His work is associated with the interdisciplinary field of Data Science, where analytical methodologies, evidence-based decision-making, and digital innovation contribute to addressing contemporary health and research challenges. This article provides a structured overview of the researcher’s profile, research activities, publications, and suitability for recognition through the International Popular Scientist Awards.[1]

Abstract

Thierry Sebakunzi is associated with research activities in Data Science within the Ministry of Health, Rwanda. His scholarly profile reflects engagement with data-driven approaches that support evidence generation, analytical interpretation, and informed decision-making. Through research publications and professional contributions, the researcher demonstrates an interest in leveraging computational and statistical methodologies to strengthen knowledge generation and improve the application of scientific evidence in public-sector environments. The Innovative Research Award recognizes emerging and impactful research efforts that contribute to advancing scientific understanding and practical implementation.[2]

Keywords

Data Science; Health Informatics; Evidence-Based Research; Digital Analytics; Public Health Data; Research Innovation; Scientific Recognition; Machine Learning Applications; Statistical Analysis; Research Impact Assessment.

Introduction

Data Science has become a critical component of modern research, enabling organizations and institutions to extract meaningful insights from complex datasets. Within healthcare and public administration, data-driven methodologies support strategic planning, policy development, and operational improvement. Researchers working in this domain contribute to the advancement of analytical frameworks that improve understanding of emerging trends and facilitate informed decision-making. Thierry Sebakunzi’s academic and professional activities are aligned with these objectives through the application of scientific and analytical approaches.[3]

Research Profile

Thierry Sebakunzi is affiliated with the Ministry of Health in Rwanda and has contributed scholarly work within the field of Data Science. The available publication record indicates active participation in research dissemination and scientific communication. The research profile demonstrates an interest in analytical methodologies that support evidence generation and practical problem-solving in health-related and organizational contexts.[1]

Research Contributions

Research contributions associated with Data Science frequently involve the collection, management, interpretation, and modeling of complex datasets. Such activities support the development of evidence-based strategies and improve the quality of scientific conclusions. Thierry Sebakunzi’s contributions are characterized by engagement with analytical processes that facilitate informed evaluation and knowledge generation. These efforts align with the growing role of computational methods in public-sector research and health-related investigations.[2]

Publications

The researcher has a documented publication record consisting of three indexed scholarly documents. These publications contribute to the broader body of literature within Data Science and related interdisciplinary applications. Publication activity serves as an important indicator of scientific engagement and knowledge dissemination within the academic community.[1]

Research Impact

The impact of Data Science research extends beyond academic publication by influencing policy development, organizational planning, and evidence-based decision-making. Researchers in this field contribute methodologies that improve data interpretation and facilitate effective resource allocation. The available scholarly output associated with Thierry Sebakunzi reflects participation in these broader scientific objectives and demonstrates engagement with contemporary research challenges.[3]

Award Suitability

The Innovative Research Award recognizes individuals whose scholarly efforts contribute to advancing scientific knowledge and practical innovation. Thierry Sebakunzi’s research profile demonstrates active engagement in Data Science, publication of peer-reviewed work, and involvement in analytical research initiatives. These characteristics align with the objectives of the International Popular Scientist Awards, which seek to acknowledge meaningful scientific contributions and emerging research excellence.[2]

Conclusion

Thierry Sebakunzi represents a researcher engaged in the application of Data Science within an institutional and public-health context. Through scholarly publications, analytical investigation, and scientific participation, the researcher contributes to the advancement of evidence-based knowledge. Recognition through the Innovative Research Award reflects the significance of continued research efforts that support innovation, data-informed decision-making, and scientific development.[1]

References

  1. Elsevier. (n.d.). Scopus author details: Thierry Sebakunzi. Scopus Author Profile.
  2. ORCID. (n.d.). Researcher profile and scholarly identification record.
    https://orcid.org/0009-0004-8348-0835
  3. International Popular Scientist Awards. (n.d.). Award objectives and recognition framework.
    https://popularscientist.com/
  4. Benimana, T. D., Habimana, M., Harerimana, J. D. D., Mugabo, E., Sebakunzi, T., Niyonshuti, P., Rwema, V., Semakula, M., & Hwang, S.-s. (2026). Time-series analysis and age-stratified forecasting of diarrheal disease in Rwanda using SARIMA models.

Manjunath BR | Machine Learning | Best Researcher Award

Prof. Dr. Manjunath BR | Machine Learning | Best Researcher Award

Professor | Tecnologico De Monterrey | Mexico

Prof. Dr. Manjunath BR is an accomplished academic leader and finance professional specializing in business analytics, financial modeling, econometrics, fintech, and artificial intelligence applications in finance. With extensive experience across academia and industry, he has contributed significantly to advancing data-driven financial education and research. His expertise spans financial analytics, investment management, corporate restructuring, and data visualization using advanced tools such as EViews, R, Python, Tableau, and Power BI. He has published extensively in ABDC, Scopus, UGC, and peer-reviewed journals, focusing on the intersection of finance, data science, and technology. As a researcher and educator, he integrates predictive analytics and machine learning into financial decision-making, contributing to the understanding of fintech adoption, banking innovations, and risk management. His academic leadership includes curriculum design, faculty development, and corporate collaborations to enhance experiential learning. He has served as a resource person for numerous international workshops and training programs on financial analytics, econometrics, and data visualization, empowering professionals and students with analytical and quantitative skills. Dr. Manjunath has authored and edited several books with leading global publishers, covering transformative areas such as AI in management education, blockchain economics, sustainable investment, and Quality 5.0 paradigms. He has also secured a patent for the application of AI in optimizing HR data management and authored a textbook on machine and deep learning. His professional journey embodies innovation, interdisciplinary scholarship, and a commitment to integrating technology with finance to foster global academic and industry excellence.

Profiles: Scopus | Orcid | Google Scholar

Featured Publications

Raju, J. K., Manjunath, B. R., & Rehaman, M. (2018). An empirical study on the effect of gross domestic product on inflation: Evidence from Indian data. Academy of Accounting and Financial Studies Journal, 22(6), 1–11.

Raju, J. K., Manjunath, B. R., & Dhakal, M. H. (2015). Impact and challenges of merger and acquisition in Nepalese banking and financial institutions. Journal of Exclusive Management Science, 4(8), 25–33.

Raju, J. K., Manjunath, B. R., & G. M. M. N. (2015). Performance evaluation of Indian equity mutual fund schemes. Journal of Business Management & Social Sciences Research (JBM&SSR).

Manjunath, B. R., & Raju, J. K. (2020). Short-run performance evaluation of under-priced Indian IPOs. Law and Financial Markets Review.

Chaitra, R., Manjunath, B. R., & Rehaman, M. (2019). An analysis of pre and post-merger of Indian banks: An event analysis approach. International Journal for Research in Engineering Application & Management, 4.

Wael Badawy | Data Science | Pioneer Researcher Award

Prof. Wael Badawy | Data Science | Pioneer Researcher Award

Head of Data science Department | Egyptian Russian University | Egypt

Prof. Wael Badawy, Ph.D., P.Eng., SFAHE, SIEEE, SACM, is a distinguished academic, researcher, engineer, and business leader with over twenty-eight years of international experience spanning academia, research, innovation, and technology commercialization. He has served in key academic and executive positions, including Executive Director of ABM College in Canada, Professor at several universities in Egypt, the United Kingdom, and Canada, and Adviser for Innovation and Entrepreneurship at Umm Al Qura University in Saudi Arabia. His expertise encompasses cybersecurity, artificial intelligence, computer engineering, information technology management, and digital transformation. Prof. Badawy has authored more than four hundred scientific publications, thirty-four patents, and over fifty books and proceedings, and has delivered numerous invited lectures and tutorials worldwide. Recognized with over ninety national and international awards, including distinctions from IEEE, Alberta Venture, the Global Business Leaders Magazine, and the QS Reimagine Education Awards, he has played a pivotal role in establishing and accrediting educational programs, serving on technical and quality assurance committees, and leading initiatives for national research and innovation strategies. As a Senior Fellow of the Advanced Higher Education and a Professional Engineer in Canada, Prof. Badawy continues to advance research excellence, technological innovation, and higher education development through visionary leadership, mentorship, and global collaboration.

Profiles: Scopus | Orcid | Google Scholar

Featured Publications

Badawy, W. (2025). The ethical implications of using children’s photographs in artificial intelligence: Challenges and recommendations. AI and Ethics, 5(2).

Maged, S., Mohamed, A., & Badawy, W. (2025, May 10). Audiogram-based tinnitus detection using deep learning: A comparative study of CNN architectures. In Proceedings of ICMISI 2025. IEEE.

Elnady, N., Adel, A., & Badawy, W. (2025, May 10). Enhancing kidney stone detection using YOLOv9: A deep learning approach. In Proceedings of ICMISI 2025. IEEE.

Elnady, N., Adel, A., & Badawy, W. (2025, April 13). Advancing brain tumor detection with YOLOv9: A comprehensive evaluation. In Proceedings of ICCIT 2025. IEEE.

Soliman, S. S., Abd El-Samie, F. E., Abd El-atty, S. M., Badawy, W., & Eshra, A. (2025). DNA nanotechnology for cell-free DNA marker for tumor detection: A comprehensive overview. Nucleosides, Nucleotides & Nucleic Acids, 44(4), 233–249.

Jicai Liu | Data Science | Women Researcher Award

Assoc. Prof. Dr. Jicai Liu | Data Science | Women Researcher Award

Associate Professor | Shanghai Lixin University of Accounting and Finance | China

Jicai Liu is an Associate Professor of Statistics at the School of Statistics and Mathematics, Shanghai Lixin University of Accounting and Finance, with a research focus on high-dimensional data, survival analysis, dimension reduction, and quantile regression. His academic journey includes advanced training in statistics and extensive teaching and research experience across leading institutions in China and collaborations abroad. He has contributed to the development of novel methodologies in statistical theory and applications, particularly in areas such as high-dimensional regression, nonparametric tests, hazards models, feature screening, clustering algorithms, and dimension reduction techniques. His publications appear in internationally recognized journals including Bernoulli, Science China Mathematics, Journal of Computational and Graphical Statistics, Journal of Multivariate Analysis, Computational Statistics and Data Analysis, and Statistics and Computing, among others. As corresponding author on multiple works, he has advanced methods for analyzing censored outcomes, martingale difference correlation, projection quantile correlation, and sufficient dimension reduction. His contributions also extend to robust estimation, survival models for multivariate failure time data, additive hazards models, and semi-supervised regression. Through his research, he has established a strong reputation in both theoretical developments and practical applications, providing statistical tools that address complex data structures and real-world problems. With 357 citations by 262 documents across 33 publications and an h-index of 10, he has demonstrated significant scholarly impact. In addition to his academic achievements, he has been engaged in collaborative projects with international partners and short-term academic visits, enriching his global perspective and research impact. His work continues to influence the fields of statistics and applied mathematics, contributing innovative approaches to modern statistical challenges and advancing the understanding of high-dimensional and survival data analysis.

Profile: Scopus | Orcid

Featured Publications

Liu, J. (2022). Estimation under single-index hazards models: A new nonparametric extension of ANOVA via projection mean variance measure. Statistica Sinica.

Liu, J. (2022). K-CDFs: A nonparametric clustering algorithm via cumulative distribution function. Journal of Computational and Graphical Statistics.

Liu, J., Si, Y., Niu, Y., & Zhang, R. (2022). Projection quantile correlation and its use in high-dimensional grouped variable screening. Computational Statistics & Data Analysis, 107369.

Niu, Y., Zhang, R., Liu, J., & Li, H. (2020). Group screening for ultra-high-dimensional feature under linear model. Statistical Theory and Related Fields, 4(2), 120–132.

Zhang, Y., Liu, J., Wu, Y., & Fang, X. (2019). A martingale-difference-divergence-based estimation of central mean subspace. Statistics and Its Interface, 12(4), 571–584.