JiHye Park | Research Excellence | Research Excellence Award

Mrs. JiHye Park | Research Excellence | Research Excellence Award 

Korea ginseng corporation | South Korea

Mrs. JiHye Park is a researcher affiliated with Korea Ginseng Corporation in South Korea, contributing to scientific studies related to natural products and bioactive compounds. Her work is associated with research environments focused on functional foods, pharmacological properties of ginseng, and health-related applications. She is recognized within academic and industrial research networks. Her contributions support the advancement of nutraceutical science, emphasizing evidence-based approaches to traditional herbal resources and their potential benefits in modern healthcare and biotechnology fields.


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Featured Publications

Longfei Yue | AI Advancements | Best Researcher Award

Dr. Longfei Yue | AI Advancements | Best Researcher Award

Dr. Longfei Yue | NUE | China

Longfei Yue is an influential researcher in the fields of unmanned aerial vehicles (UAVs), reinforcement learning, multi-agent systems, and intelligent autonomous control. His work focuses on advancing next-generation autonomous flight technologies, with major contributions to cooperative decision-making, swarm intelligence, guidance laws, and mission-planning strategies for aerial and aerospace systems. He has produced an extensive body of work, reflected through a strong publication record and impactful citation metrics. His research outputs include dozens of journal articles and conference papers, spanning high-quality platforms such as international aeronautical and aerospace journals, IEEE publications, machine learning proceedings, and multidisciplinary scientific journals. His citation 300, H-index 11, and 286 publication data highlight the growing influence and visibility of his contributions in the global research community. Yue’s research emphasizes cutting-edge reinforcement learning approaches such as hierarchical learning, multi-agent reinforcement learning, soft actor-critic frameworks, and constrained learning techniques. These methods are applied to challenging aerospace scenarios including exoatmospheric evasion, missile guidance, cooperative multi-target tracking, aerial confrontation strategies, dual-UAV reconnaissance, and intelligent route planning for UAV swarms. His studies integrate autonomy, control theory, optimization, and machine learning to develop efficient, safe, and robust decision-making mechanisms for complex flight environments. His work also extends to the development of unsupervised learning techniques for grouping aerial swarms and dynamic policy learning for combat maneuvering. Many of his publications have received substantial citations, demonstrating wide academic and practical relevance. Beyond UAVs, Yue has collaborated on interdisciplinary studies in applied sciences, psychology, medical engineering, and data-driven modeling, further broadening his research impact. Overall, Longfei Yue’s research significantly advances autonomous aerial systems, cooperative robotics, and intelligent control engineering. His contributions play a pivotal role in shaping the future of UAV autonomy, multi-agent intelligence, and high-level aerospace decision-making technologies.

Profile: Scopus

Featured Publications

Collaborative energy-saving path planning of unmanned surface vehicle cluster based on multi-head attention mechanism and multi-agent deep reinforcement learning. (2025). Engineering Applications of Artificial Intelligence.

 CAP planning method based on elliptic fitting of optimal detection routes. (2025). Beijing Hangkong Hangtian Daxue Xuebao (Journal of Beijing University of Aeronautics and Astronautics).

Exoatmospheric evasion guidance law with total energy limit via constrained reinforcement learning. (2024). International Journal of Aeronautical and Space Sciences.

Marco Zanotti | Data Science | Best Researcher Award

Mr. Marco Zanotti | Data Science | Best Researcher Award

Mr. Marco Zanotti | University of Milan-Bicocca | Italy

Marco Zanotti is an accomplished Machine Learning Engineer and Data Scientist specializing in time series analysis, forecasting, anomaly detection, and econometrics. With extensive experience across sectors such as e-commerce fashion, tourism, aviation, and digital services, he has played a key role in designing and improving advanced forecasting systems that drive data-informed business decisions. He currently serves as a Data Scientist and Forecasting Specialist at Wanan Luxury (Rome, Italy), following previous positions at Blogmeter, T-Voice, and Uvet Amex GBT, where he contributed to predictive modeling, machine learning optimization, and process automation. In academia, Marco is an Adjunct Professor at the University of Milan and other leading Italian universities, where he teaches modern time series forecasting, machine learning, programming, and statistics at both Bachelor’s and Master’s levels. He holds a Ph.D. in Statistics from the University of Milano-Bicocca, a Post-graduate Diploma in Data Science for Economics, Business and Finance, and an M.Sc. in Economics and Finance from the University of Milan. Fluent in Italian, English, and French, Marco is proficient in R, Python, SQL, Git, Shiny, and Google Cloud Platform. A member of the International Institute of Forecasters, he is passionate about bridging the gap between academic research and industrial applications, mentoring young data scientists, and advancing the science of predictive analytics.

Profile: Orcid

Featured Publications

Zanotti, M. (2025, December). On the retraining frequency of global models in retail demand forecasting. Machine Learning with Applications. https://doi.org/10.1016/j.mlwa.2025.100769

Zanotti, M., & Mazzucchelli, L. (2021). dispositionEffect [Research protocol or software].