Assoc. Prof. Dr. Kincső Decsi | Data in Brief | Best Researcher Award

Assoc. Prof. Dr. Kincső Decsi | Data in Brief | Best Researcher Award

Assoc. Prof. Dr. Kincső Decsi, Hungarian University of Agricultural and Life Sciences, Institute of Agronomy, Hungary

Assoc. Prof. Dr. Kincső Decsi is a renowned academic in the field of plant physiology and plant ecology, currently serving as an associate professor at the Hungarian University of Agriculture and Life Sciences, Georgikon Campus. She has an extensive academic career, having previously held assistant professor roles at the same institution and at Pannon University. Dr. Decsi earned her Ph.D. in Agricultural and Horticultural Sciences in 2005, summa cum laude, with a dissertation on abiotic stress effects in maize. Her research and teaching focus on plant biotic and abiotic stress physiology, plant growth, and development. She has taught a wide range of courses at the BSc, MSc, and PhD levels, in both Hungarian and English. Dr. Decsi’s research contributions, particularly in plant genetics, bioinformatics, and environmental stress physiology, have significantly advanced our understanding of plant resilience and adaptation. 🌱📚🌍

Professional Profile

Orcid

Suitability for Award

Assoc. Prof. Dr. Kincső Decsi is an exceptional candidate for the Research for Best Researcher Award due to her significant contributions to plant physiology, environmental stress, and plant genetics. Her extensive teaching experience at both undergraduate and postgraduate levels, coupled with her research on plant adaptation to biotic and abiotic stresses, has earned her recognition in academia. Dr. Decsi’s work in bioinformatics and transcriptomics has enhanced the understanding of plant responses to environmental challenges, which is vital for sustainable agriculture. Her leadership in the scientific community, especially in plant physiology and molecular biology, makes her a suitable candidate for this prestigious award. Dr. Decsi’s ability to bridge research and teaching, coupled with her impact on both local and international scientific communities, reflects her dedication to advancing agricultural sciences. 🌾🔬🏅

Education

Assoc. Prof. Dr. Kincső Decsi has an extensive academic background in agricultural sciences. She earned her Ph.D. in Agricultural and Horticultural Sciences from the Hungarian University of Agriculture and Life Sciences in 2005, with summa cum laude honors. Her doctoral research focused on examining the effects of various abiotic stresses on maize. Dr. Decsi’s educational journey began with a Certified Agricultural Engineer qualification from the University of Veszprém, where she also studied plant genetics and plant breeding. Additionally, she completed a Certified Chemistry Teacher qualification at Pannon University in 2023. Dr. Decsi’s early academic experiences were enriched by scholarships such as the Martonvásár and Pioneer Hi-Bred Rt. scholarships, which allowed her to deepen her expertise in plant science. Her education has laid the foundation for her ongoing research and teaching in plant physiology, molecular biology, and bioinformatics. 🎓🌾📖

Experience 

Assoc. Prof. Dr. Kincső Decsi has over two decades of experience in both research and teaching. She currently holds the position of associate professor at the Hungarian University of Agriculture and Life Sciences, Georgikon Campus, where she has taught various plant physiology and molecular biology courses at the BSc, MSc, and PhD levels. Her research experience spans from genetic mapping of potato blight resistance genes to the study of abiotic stress effects in plants. Dr. Decsi has also been involved in bioinformatics research, particularly in transcriptomic studies, enhancing her expertise in plant adaptation and resilience. Her role as a scientific associate at the Festetics György Bioinnovation Research Center further strengthened her research portfolio, contributing to projects on plant genetic mapping and resistance genes. Dr. Decsi’s experience is a blend of practical research, teaching, and leadership in the scientific community. 🌿💼🔬

Awards and Honors

Assoc. Prof. Dr. Kincső Decsi has been recognized for her academic excellence through various scholarships and awards. She received the Pioneer Hi-Bred Rt. Scientific Scholarship and the Martonvásár Scientific Scholarship in the late 1990s and early 2000s, which supported her early academic development. Dr. Decsi was also honored with the Georgikon Outstanding Scholarship for her exceptional performance during her studies. Additionally, she was awarded the Lászlóffy Woldemár Diploma Thesis Application special fee in recognition of her outstanding academic achievements. Her participation in international language courses, such as the Sommerakademie in Neubrandenburg and Wiener Internationale Hochschulkurse, further enriched her academic journey. These awards and honors reflect Dr. Decsi’s dedication to her field and her commitment to advancing plant science research. 🏆🎓🌍

Research Focus 

Assoc. Prof. Dr. Kincső Decsi’s research focuses on plant physiology, particularly the effects of biotic and abiotic stresses on plant growth and development. Her work explores how plants respond to environmental challenges such as drought, salinity, and pathogen attacks, which are critical for improving agricultural resilience. Dr. Decsi has contributed significantly to the field of plant genetics, including the genetic mapping of resistance genes for potato blight and PVY virus resistance. Her research also delves into bioinformatics, particularly in transcriptomic studies, to understand gene expression under stress conditions. Dr. Decsi’s work aims to enhance the sustainability of agricultural practices by improving plant stress tolerance, which is essential for food security in the face of climate change. Her contributions to molecular plant biology, biotechnology, and environmental stress physiology are pivotal in advancing our understanding of plant adaptation mechanisms. 🌱🔬🌿

Publication Top Notes

  • Title: RNA-seq Datasets of Field Rapeseed (Brassica napus) Cultures Conditioned by Elice16Indures (R) Biostimulator
    • Year: 2022
  • Title: RNA-seq Datasets of Field Soybean Cultures Conditioned by Elice16Indures (R) Biostimulator
    • Year: 2022
  • Title: Time-course Gene Expression Profiling Data of Triticum Aestivum Treated by Supercritical CO2 Garlic Extract Encapsulated in Nanoscale Liposomes
    • Year: 2022
  • Title: Transcriptome Datasets of Beta-Aminobutyric Acid (BABA)-Primed Mono- and Dicotyledonous Plants, Hordeum Vulgare and Arabidopsis Thaliana
    • Year: 2022
  • Title: Transcriptome Profiling Dataset of Different Developmental Stage Flowers of Soybean (Glycine Max)
    • Year: 2022

 

 

Fan Wang | Data Analysis | Best Researcher Award

Mrs. Fan Wang | Data Analysis | Best Researcher Award

Mrs. Fan Wang, Xi’an Shiyou University, China .

Mrs. Fan Wang is a Lecturer at Xi’an Shiyou University, China, specializing in imaging, image processing, data analysis, and machine learning. She earned her Ph.D. and Master’s degrees in Graphic and Image Processing from Northwestern Polytechnical University, Xi’an, China. With a strong academic foundation, Dr. Wang is passionate about advancing methodologies in image processing and applying machine learning to solve complex visual data challenges. Her expertise in data-driven approaches continues to inspire innovation and impactful contributions to the field of computational imaging. 💻📊

Publication Profile

Scopus 📚

Education and Experience

Education
  • Ph.D. in Theory and Methods of Graphic and Image Processing, Northwestern Polytechnical University, Xi’an, China (2018–2022) 🎓
  • M.S. in Theory and Methods of Graphic and Image Processing, Northwestern Polytechnical University, Xi’an, China (2015–2018)

Experience

  • Lecturer, Xi’an Shiyou University, Xi’an, China (2022–present) 🎓📍

Suitability for the Award

Mrs. Fan Wang, a dedicated researcher and Lecturer at Xi’an Shiyou University, specializes in imaging, image processing, data analysis, and machine learning. With a Ph.D. and M.S. in Theory and Methods of Graphic and Image Processing from Northwestern Polytechnical University, she has demonstrated expertise in advanced computational techniques. Her contributions to innovative research and academic excellence make her a strong contender for the Best Researcher Award. 🏆

Professional Development

Mrs. Fan Wang is a researcher and educator specializing in cutting-edge techniques in imaging and machine learning. With a Ph.D. in Graphic and Image Processing, she has developed advanced skills in data analysis and the application of AI algorithms to enhance image interpretation and processing. Currently a Lecturer at Xi’an Shiyou University, Dr. Wang is committed to fostering innovation and knowledge dissemination through teaching and collaborative research. Her work integrates computational intelligence with visual data, advancing impactful solutions in imaging technologies. 🌱💡

Research Focus

Mrs. Fan Wang’s research lies at the intersection of imaging and artificial intelligence. She focuses on developing innovative methods for image processing, leveraging data analysis to optimize the extraction of meaningful information from complex visual datasets. Her work also involves applying machine learning techniques to automate and enhance image interpretation for diverse applications. Dr. Wang aims to address challenges in computational imaging by combining theory with practical solutions, driving advancements in visualization technologies for academic and industrial use. 🔍🤖

Awards and Honors

  • Ph.D. Scholarship Award, Northwestern Polytechnical University (2022) 🏅
  • Recognized for Excellence in Research during Graduate Studies (2018–2022)
  • Best Presentation Award in Machine Learning Symposium (2021) 🏆
  • Published high-impact research in top-tier journals on imaging and AI methods
  • Contributor to innovative methodologies in graphic and image processing

Publication Highlights

  • 📖 Intensifying graph diffusion-based salient object detection with sparse graph weighting (2023) – Cited by: 0
  • 📖 Graph construction by incorporating local and global affinity graphs for saliency detection (2022) – Cited by: 3
  • 📖 Saliency detection based on color descriptor and high-level prior (2021) – Cited by: 3
  • 📖 Graph-based saliency detection using a learning joint affinity matrix (2021) – Cited by: 4
  • 📖 Saliency detection via coarse-to-fine diffusion-based compactness with weighted learning affinity matrix (2021) – Cited by: 1
  • 📖 Salient object detection via cross diffusion-based compactness on multiple graphs (2021) – Cited by: 4
  • 📜 Salient Object Detection via Quaternionic Local Ranking Binary Pattern and High-Level Priors (2019, Conference Paper) – Cited by: 0
  • 🌊 Underwater Image Restoration Based on Background Light Estimation and Dark Channel Prior (2018) – Cited by: 25

Abdul-Majeed Al-Izeri | Data Science | Best Scholar Award

Abdul-Majeed Al-Izeri | Data Science | Best Scholar Award

Dr. Abdul-Majeed Al-Izeri , Clermont Auvergne University, France.

Publication profile

Googlescholar

Education and Experience

  • 2020-2021: University degree in Data Science, University Clermont Auvergne, France. 🎓
  • 2013-2016: PhD in Mathematics (Mathematical analysis of PDEs), University Clermont Auvergne, France. 📜
  • 2011-2012: Master 2 in Mathematical Modelling (PDEs, calculation, epidemiology), University of Bordeaux, France. 💻
  • 2010-2011: Master 1 in Mathematics (Modelling, calculation, environment), University of Bordeaux, France. 📐
  • 2002-2006: BSc in Mathematics, University of Thamar, Yemen. 📘
  • October 2021-Present: Assistant Professor, Applied Mathematics, Clermont Auvergne University, France. 👩‍🏫
  • January 2018-July 2021: Postdoctoral Researcher in Epidemiology and PDEs, Clermont Auvergne University, France. 🔬
  • 2017: Postdoctoral Project in PDEs Dynamics, Clermont Auvergne University, France. 🧮
  • 2013-2016: Thesis Project in Mathematical Analysis of Population Dynamics, Blaise Pascal University, France. 🔍
  • 2012: Research Internship, Epidemic Model Study, University of Bordeaux, France. 💡
  • 2011: Project in Mathematical Modelling for Fishing Resources, University of Bordeaux, France. 🐟

Suitability For The Award

Dr. Abdul-Majeed Al-Izeri is indeed a highly suitable candidate for the Best Scholar Award based on his extensive academic qualifications, professional experience, and notable contributions to the field of Applied Mathematics and Data Science. His academic background, including a PhD in Mathematics with a specialization in Partial Differential Equations (PDEs), as well as a strong postdoctoral research profile, makes him a valuable asset in both academia and research communities.

Professional Development 

Dr. Al-Izeri has gained comprehensive skills in programming languages like Fortran, Matlab, Python, and R, along with proficiency in parallel computation using MPI. His expertise extends to using Latex and other office software for academic writing and presentations. He has been involved in several international research projects focused on applying mathematical theories to solve real-world problems in epidemiology and population dynamics. Dr. Al-Izeri’s ongoing commitment to improving his mathematical expertise and expanding his knowledge in data science and computational methods keeps him at the forefront of his field. 📊💻🔍

Research Focus 

Awards and Honors

  • 2021: Assistant Professor Appointment, Clermont Auvergne University, France. 🎓
  • 2016: PhD Completion, Mathematical Analysis of PDEs, University Clermont Auvergne. 🏆
  • 2012: Research Internship Excellence Award, University of Bordeaux. 🌟
  • 2011: Best Project in Mathematical Modelling for Resource Management, University of Bordeaux. 🏅

Publoication Top Notes

  1. On the solutions for a nonlinear boundary value problem modeling a proliferating cell population with inherited cycle length – AM Al-Izeri, K Latrach, Nonlinear Analysis: Theory, Methods & Applications 143, 1-18, Cited by 6, 2016 📘🧬
  2. Well-posedness of a nonlinear model of proliferating cell populations with inherited cycle length – ALI Abdul-Majeed, K Latrach, Acta Mathematica Scientia 36 (5), 1225-1244, Cited by 5, 2016 📊🧫
  3. Nonlinear semigroup approach to transport equations with delayed neutrons – ALI Abdul-Majeed, K Latrach, Acta Mathematica Scientia 38 (6), 1637-1654, Cited by 3, 2018 🔬⏳
  4. A nonlinear age-structured model of population dynamics with inherited properties – AM Al-Izeri, K Latrach, Mediterranean Journal of Mathematics 13, 1571-1587, Cited by 3, 2016 🌱🔢
  5. On the asymptotic spectrum of a transport operator with elastic and inelastic collision operators – AM Al-Izeri, K Latrach, Acta Mathematica Scientia 40, 805-823, Cited by 2, 2020 🔍🔄
  6. A note on fixed point theory for multivalued mappings – AM Al-Izeri, K Latrach, Fixed Point Theory 24 (1, 2023), 233-240, Cited by 1, 2023 📐📍

 

Mohammadreza Mahmoudi | Data Science | Best Researcher Award

Dr. Mohammadreza Mahmoudi | Data Science | Best Researcher Award

Professor, Fasa University, Iran 

Dr. Mohammadreza Mahmoudi is an esteemed researcher with a robust background in mathematical statistics and applied probability. His contributions span several impactful projects, including advanced statistical methods and applications in diverse fields. His research excellence and distinguished academic career make him a strong candidate for the Best Researcher Award.

Professional Profile:

Scopus

Summary of Suitability for the Research for Best Researcher Award: 

Dr. Mohammadreza Mahmoudi stands out as a prime candidate for the Best Researcher Award due to his exceptional contributions to mathematical statistics and applied probability. His extensive research on periodograms, statistical properties of simple processes, and advanced non-parametric methodologies demonstrates a deep expertise in his field. Dr. Mahmoudi’s accolades, including being a top student at all levels of his education and his role as an Advisory Board Member of ScienceVier Canada, underscore his recognition and influence in statistical research. His robust teaching experience and impactful projects further solidify his suitability for this prestigious award, highlighting his dedication to advancing statistical science and education.

🎓Education:

Dr. Mahmoudi completed his Ph.D. in Mathematical Statistics (Applied Probability) from Shiraz University in 2016, following a Master of Science in Mathematical Statistics and a Bachelor of Science in Statistics from the same institution. His educational journey reflects a profound commitment to advancing statistical science.

🏢Work Experience:

Dr. Mahmoudi has served as a researcher and educator in statistical methodologies, specializing in areas such as time series analysis, stochastic processes, and nonparametric methodologies. He has been actively involved in teaching a broad range of statistical courses at Shiraz University and has contributed to several high-impact research projects.

🏆Awards and Grants:

Dr. Mahmoudi has been recognized as a top student during his Ph.D., M.Sc., and B.Sc. periods at Shiraz University. He has also been elected as an Advisory Board Member of ScienceVier Canada, showcasing his expertise and influence in the field of statistics.

Publication Top Notes:

  1. “Machine learning models for predicting interactions between air pollutants in Tehran Megacity, Iran”
    • Year: 2024
    • Journal: Alexandria Engineering Journal
  2. “Solving optimal control problems governed by nonlinear PDEs using a multilevel method based on an artificial neural network”
    • Year: 2024
    • Journal: Computational and Applied Mathematics
  3. “The removal of methylene blue from aqueous solutions by polyethylene microplastics: Modeling batch adsorption using random forest regression”
    • Year: 2024
    • Journal: Alexandria Engineering Journal
  4. “Meteorological Drought Prediction Based on Evaluating the Efficacy of Several Prediction Models”
    • Year: 2024
    • Journal: Water Resources Management
  5. “Spatial and temporal assessment and forecasting vulnerability to meteorological drought”
    • Year: 2024
    • Journal: Environment, Development and Sustainability
  6. “Assessment of Continuity Changes in Spatial and Temporal Trend of Rainfall and Drought”
    • Year: 2023
    • Journal: Pure and Applied Geophysics
  7. “Using the multiple linear regression based on the relative importance metric and data visualization models for assessing the ability of drought indices”
    • Year: 2023
    • Journal: Journal of Water and Climate Change
  8. “Dryland farming wheat yield prediction using the Lasso regression model and meteorological variables in dry and semi-dry region”
    • Year: 2023
    • Journal: Stochastic Environmental Research and Risk Assessment
  9. “Cyclic clustering approach to impute missing values for cyclostationary hydrological time series”
    • Year: 2023
    • Journal: Quality and Quantity
  10. “Statistical and Mathematical Modeling for Predicting Caffeine Removal from Aqueous Media by Rice Husk-Derived Activated Carbon”
    • Year: 2023
    • Journal: Sustainability (Switzerland)