Erhan Deniz | Complex Analysis | Best Researcher Award

Prof. Dr. Erhan Deniz | Complex Analysis | Best Researcher Award

Academician, Kafkas University, Turkey

Professor Dr. Erhan Deniz is a dedicated academician in mathematics, currently serving as a Full Professor at Kafkas University, Turkey. With extensive experience in mathematical research, he is highly recognized for his contributions to univalent and special functions, areas critical to applications in mathematical physics, biology, and fluid mechanics. His work spans various collaborative projects and has been widely cited, establishing him as an influential figure in the field.

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🎓 Education

Undergraduate: Mathematics, Atatürk University (2004) 🎓, MSc: Mathematics, Kafkas University (2007) 📘, Ph.D.: Mathematics, Atatürk University (2011) 🧑‍🎓

💼 Experience

Professor Dr. Deniz’s academic career began as a Research Assistant at Kafkas University in 2005, followed by roles at Atatürk University. Since 2018, he has held the position of Full Professor at Kafkas University, actively contributing to research in analytic and univalent functions, harmonic functions, and more. His research impact includes managing several university-backed research projects and publishing widely cited journal articles.

🔬 Research Interests

Professor Deniz’s research focuses on univalent functions, special functions (e.g., Bessel, Lommel, Ramanujan functions), hypergeometric functions, Loewner theory, and multivalent functions. His work in these fields contributes significantly to areas such as mathematical physics, fluid mechanics, and mathematical chemistry.

🏆 Awards

Professor Dr. Deniz has been nominated for the Best Researcher Award by the Computer Scientists Awards for his outstanding research contributions, impactful publications, and dedication to advancing mathematics.

📚 Publications

Here is a selection of publications authored by Professor Dr. Erhan Deniz:

Kazımoğlu, S., Dutta, H., & Deniz, E. (2024). Sufficient Conditions for Generalized Integral Operators Involving the Rabotnov Function. In B.C. Tripathy, H. Dutta, S.K. Paikray, B.B. Jena (Eds.), Operators, Inequalities and Approximation. Springer, Singapore. Link to publication

Numerous articles published in journals such as Hacet. J. Math. Stat., Appl. Math. Comput., Czech Math. J., J. Inequal. Appl., Math. Comput. Modelling, Analele Stiintifice ale Universitatii Ovidius Constanta, Comput. Math. Appl., and many more. His work is cited across databases like SCI, Scopus, and MathSciNet.

Khaled Mehrez | Special functions | Best Researcher Award

Prof. Khaled Mehrez | Special functions | Best Researcher Award

University Tunis El Manar, Tunisia

Khaled Mehrez is an accomplished Assistant Professor at the Kairouan Preparatory Institute for Engineering Studies, University of Kairouan, Tunisia, since 2020. With a Habilitation in mathematics from the same institution, he has dedicated his career to advancing mathematical education and research. 🔍🎓

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Khaled Mehrez is an accomplished Assistant Professor at the Kairouan Preparatory Institute for Engineering Studies, University of Kairouan, Tunisia, since 2020. With a Habilitation in mathematics from the same institution, he has dedicated his career to advancing mathematical education and research. 🔍🎓

Education

Khaled holds a Habilitation in Mathematics (2023) from the Kairouan Preparatory Institute for Engineering Studies, a Ph.D. in Mathematics (2017) from the Faculty of Mathematical, Physical and Natural Sciences of Tunis, a Master’s in Mathematics (2009), and a Bachelor’s in Mathematics (2006), both from the Faculty of Sciences of Bizerte. His academic journey began with a Baccalaureate in Mathematics from the High School of Kesra (2002). 📚🧮

Experience

Before joining the University of Kairouan, Khaled worked as a Contract Assistant at the Preparatory Institute for Engineering Studies of Monastir (2009-2013) and as an Assistant at the Higher Institute of Applied Sciences and Technologies of Kasserine (2013-2020). He has progressively advanced in his academic career, currently holding the position of Associate Professor at the Kairouan Preparatory Institute for Engineering Studies since July 2024. 🏫📈

Research Interests

Khaled’s research interests encompass special functions for engineers, including the Mittag-Leffler function, Gamma function, and Generalized Zeta function. He also delves into harmonic analysis with a focus on Dunkl and Weinstein theories, as well as geometric function theory, exploring concepts like univalence, starlike functions, and convexity. His work extends to applied mathematics. 📊🔬

Publications

Khaled Mehrez has contributed significantly to mathematical literature. Here are some of his notable publications:

K. Mehrez, Redheffer type inequalities for modified Bessel functions, Arab. J. Math. Sci., 22 (2016), 38–42.

K. Mehrez, Some New Wilker and Generalized Lazarević Type Inequalities for Modified Bessel Functions, Turkish Journal of Analysis and Number Theory, 4 (6) (2016), 168–171.

S. M. Sitnik, K. Mehrez, Proofs of some conjectures on monotonicity of ratios of Kummer, Gauss and generalized hypergeometric functions, Analysis, 36 (4) (2016), 263–268.

K. Mehrez, S. M. Sitnik, On monotonicity of ratios of some q-hypergeometric functions, Math. Vesnik, 68 (3) (2016), 225–231.

S. M. Sitnik, K. Mehrez, On monotonicity of ratios of some hypergeometric functions, Siberian Electronic Mathematical Reports, 13 (2016), 260-268.

 

Sara Tehsin | Deep learning | Best Researcher Award

Ms. Sara Tehsin | Deep learning | Best Researcher Award

PhD Student, National University of Sciences and Technology, Islamabad, Pakistan

Sara Tehsin is a motivated and results-driven professional with over ten years of experience in Image Processing and Machine Learning. As an Engineering Lecturer at HITEC University in Taxila, Pakistan, she excels in delivering high-quality educational experiences and has a proven track record of producing outstanding results through her strong work ethic, adaptability, and effective communication skills. She is passionate about academic development and seeks opportunities to contribute her expertise while furthering her professional growth. 📚💻

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Education

Sara Tehsin is currently pursuing a PhD in Computer Engineering at the National University of Sciences and Technology (NUST), Islamabad, where she has achieved a remarkable GPA of 3.83/4.00. Her research focuses on Digital Forensics, Deep Learning, and Digital Image Processing. She holds a Master’s degree in Computer Engineering from NUST, where she graduated with a GPA of 3.7/4.0, and a Bachelor’s degree from The Islamia University of Bahawalpur, with a GPA of 3.36/4.00. 🎓🌟

Experience

Sara has extensive teaching experience, currently serving as an Engineering Lecturer at HITEC University since September 2019, where she develops engaging curriculum and delivers lectures aligned with international standards. Previously, she was a Computer Science Lecturer at Sharif College of Engineering and Technology, and she also served as a Teaching Assistant at NUST and a Lab Engineer at Foundation University. Her roles have encompassed curriculum development, practical instruction, and student support in various computer science subjects. 👩‍🏫🔧

Research Interests

Sara’s research interests encompass Digital Forensics, Deep Learning, Digital Image Processing, and Machine Learning. She focuses on developing innovative solutions for image recognition and forgery detection, contributing significantly to the fields of computer vision and machine learning. Her work aims to enhance the accuracy and efficiency of image processing systems. 🧠🔍

Publications

Self-organizing hierarchical particle swarm optimization of correlation filters for object recognition
S. Tehsin, S. Rehman, M.O.B. Saeed, F. Riaz, A. Hassan, M. Abbas, R. Young, …
IEEE Access, 5, 24495-24502 (2017)
Cited by: 21

Improved maximum average correlation height filter with adaptive log base selection for object recognition
S. Tehsin, S. Rehman, A.B. Awan, Q. Chaudry, M. Abbas, R. Young, A. Asif
Optical Pattern Recognition XXVII, 9845, 29-41 (2016)
Cited by: 18

Fully invariant wavelet enhanced minimum average correlation energy filter for object recognition in cluttered and occluded environments
S. Tehsin, S. Rehman, F. Riaz, O. Saeed, A. Hassan, M. Khan, M.S. Alam
Pattern Recognition and Tracking XXVIII, 10203, 28-39 (2017)
Cited by: 12

Comparative analysis of zero aliasing logarithmic mapped optimal trade-off correlation filter
S. Tehsin, S. Rehman, A. Bilal, Q. Chaudry, O. Saeed, M. Abbas, R. Young
Pattern Recognition and Tracking XXVIII, 10203, 22-37 (2017)
Cited by: N/A

Bangjie Fu | Geological Engineering | Best Researcher Award

Dr. Bangjie Fu | Geological Engineering | Best Researcher Award 

Ph.D., Central South University, China

👨‍🔬 Dr. Bangjie Fu is a dedicated researcher at the intersection of Engineering Geology, Remote Sensing Technology, Geographic Information Systems (GIS), and Artificial Intelligence. His expertise lies in statistical modeling and machine learning for geo-hazard analysis, specifically focusing on landslide detection, susceptibility, and risk assessment. Dr. Fu’s research supports proactive geological hazard detection and prevention, contributing to safer and more resilient infrastructures. 📡🌍🛠️

Publication Profile

Scopus

Education

Doctorate in Civil Engineering Planning and Management – Central South University. Master’s Degree in Engineering Geology – China University of Geosciences. Bachelor’s Degree in Geology Engineering – Guilin University of Technology

Experience

🔬 Dr. Fu’s work includes pioneering applications of AI and machine learning for geo-hazard detection and GIS-based assessments. He has developed and refined models for landslide susceptibility, employing deep learning and data-driven methods to advance the field of geological risk mitigation.

Research Interests

Geo-Hazard Analysis, Landslide Assessment and Detection, Geological Engineering, Remote Sensing Applications in Geo-Hazards.

Publications

“Review on the Artificial Intelligence-based methods in Landslide Detection and Susceptibility Assessment: Current Progress and Future Directions”International Journal of Geo-Engineering (2024). DOI: 10.1016/j.ige.2024.10.003

“PSO-SLIC algorithm: A novel automated method for the generation of high-homogeneity slope units using DEM data”Geomorphology (2024). DOI: 10.1016/j.geomorph.2024.109367

“Dynahead-YOLO-Otsu: An efficient DCNN-based landslide semantic segmentation method using remote sensing images”Journal of Spatial Science (2024). DOI: 10.1080/19475705.2024.2398103

“A side-sampling based Linformer model for landslide susceptibility assessment: A case study of the railways in China”Journal of Spatial Science (2024). DOI: 10.1080/19475705.2024.2354507

“RIPF-Unet for regional landslides detection: A novel deep learning model boosted by reversed image pyramid features”Natural Hazards (2023). DOI: 10.1007/s11069-023-06145-0

 

 

Nihad Shehab | Complex Analysis | Best Researcher Award

Dr. Nihad Shehab | Complex Analysis | Best Researcher Award

Teacher, Tikrit University, Iraq

Nihad Hameed Shehab Hamad, born in Anbar, Iraq, is an Assistant Teacher specializing in Complex Analysis and Geometric Function Theory. Passionate about education and research, he is committed to advancing mathematical knowledge and improving educational quality in his community. With a strong background in mathematics, he contributes to academia through both teaching and research, aiming to inspire future generations of mathematicians and computer scientists. 🌍💡

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🎓 Education:

Nihad is currently pursuing a Ph.D. in Mathematics, focusing on Complex Analysis, at the University of Tikrit, under the guidance of Professor Dr. Abdul Rahman Salman Juma. He completed his Master’s in Mathematics in 2021 and his Bachelor’s in 2013, both from the University of Anbar’s College of Education for Pure Sciences. His academic journey reflects a deep dedication to the study of mathematical principles and analytical theories. 📘📊

👨‍🏫 Experience:

Nihad has a solid background in teaching mathematics at Sumaiya Secondary School for Boys in Anbar Province, Iraq. His responsibilities include lesson planning, exam preparation, student evaluation, and engaging students in extracurricular activities. His role in education has been marked by a dedication to inspiring and equipping students with critical thinking and problem-solving skills in mathematics. 📐🏫

🔬 Research Interests:

Nihad’s research interests lie in the realms of Complex Analysis and Geometric Function Theory, where he explores innovative mathematical concepts related to analytic functions and differential subordination. His work aims to contribute new insights to the field, with a particular focus on function theory and its applications in complex mathematical structures. 🔍📈

🏆 Awards and Achievements:

Nihad has received various certifications from the Training and Development Department in Anbar, recognizing his commitment to modern teaching methods and curriculum development. He has achieved notable success with his students’ final exam results and is an innovator in creating educational resources tailored to student needs. 🎖️📜

📚 Publications:

Shehab, N. H., & Juma, A. R. S. (2022). “Third order differential subordination for analytic functions involving convolution operator.” Baghdad Science Journal, 19(3), 0581-0581. Link (Cited by X)

Shehab, N. H., & Juma, A. R. S. (2021). “Application of Quasi Subordination Associated with Generalized Sakaguchi Type Functions.” Iraqi Journal of Science, 4885-4891. Link (Cited by X)

Shehab, N. H., & Juma, A. R. S. (2021). “Coefficient bounds of m-fold symmetric bi-univalent functions for certain subclasses.” International Journal of Nonlinear Analysis and Applications, 12(Special Issue), 71-82. Link (Cited by X)

Shehab, N. H., & Juma, A. R. S. (2022, October). “Coefficient bounds for certain subclasses for meromorphic functions involving quasi subordination.” AIP Conference Proceedings, 2400(1). AIP Publishing. Link (Cited by X)

Hameed, F. N., & Shehab, N. H. (2024). “Quasi Subordination Properties of Bi-Univalent Functions By Using Generalized Srivastava-Attiya Operator.” Iraqi Journal of Science, 4468-4477. Link (Cited by X)

 

Hyston Kayange | Recommendations systems | Best Researcher Award

Mr. Hyston Kayange | Recommendations systems | Best Researcher Award

Master Student, Soongsil University, South Korea

📘 Hyston Kayange is a Malawian researcher and IT professional currently pursuing his Master’s in Computer Science and Engineering at Soongsil University in Seoul, South Korea. With a strong foundation in IT and a passion for Machine Learning and Deep Learning, Hyston is dedicated to advancing recommender systems and computer vision applications. His research focuses on health fitness recommendation systems, aiming to personalize and improve exercise suggestions through advanced deep learning techniques.

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Education

🎓 MS in Computer Science & Engineering Soongsil University, Seoul, South Korea (Aug 2022–Present) Specializing in personalized recommendation systems with a focus on fitness applications under the guidance of Prof. Jongsun Choi. BS in Computer Science
Daeyang University, Malawi (2017–2021) Developed the “MTHANDIZI” computer vision project, aimed at bridging communication between natural language speakers and the deaf.

Experience

💼 Assistant Researcher System Software Lab, Soongsil University, Seoul, South Korea (Sep 2022–Present) Conducted research on deep recommendation systems, focusing on adaptive feature selection for personalized recommendations in health and fitness. Developed a hybrid model using Neural Dynamic Bayesian Networks to enhance heart rate prediction accuracy. ICT Officer United Civil Servant SACCO, Malawi (2021–2022). Managed fintech systems, ensuring efficient operation and user support, along with network and server configuration.

Research Interests

🔍 Hyston’s research centers on Machine and Deep Learning applications, especially in developing recommendation systems. He aims to leverage neural networks to improve data mining, recommender systems, and computer vision tasks like object detection and assistive technologies, with a particular interest in adaptive feature selection for personalized fitness recommendations.

Awards

🏆 Hyston has presented his work at international conferences, including ICOIN 2024, where he shared insights on adaptive feature selection in deep recommendation systems.

Publications

ProAdaFS: Probabilistic and Adaptive Feature Selection in Deep Recommendation Systems
Authors: H. Kayange, J. Mun, Y. Park, J. Choi, & J. Choi
Journal: Learning font-style space using style-guided discriminator for few-shot font generation, 2024.
Cited by

Deep Adaptive Feature Selection in Deep Recommendation Systems
Authors: H. Kayange, A. Kumar, Y. Lee, H. Jung, J. Choi
Journal: Deep Recommendation Systems, 2023.
Cited by

CHARIS APOSTOLOPOULOS | Aeronautics | Excellence in Research

Prof. CHARIS APOSTOLOPOULOS | Aeronautics | Excellence in Research

PROFESSOR, UNIVERSITY OF PATRAS, Greece

Dr. Charis Apostolopoulos is a distinguished Dr.-Ing Civil Engineer and a Professor in the Laboratory of Technology and Strength of Materials at the University of Patras, Greece. With a career spanning over four decades, he has made significant contributions to the fields of mechanical behavior of materials, durability, and corrosion resistance of metallic structures. Dr. Apostolopoulos is widely recognized for his extensive research output, comprising over 185 scientific publications, and his active role as a reviewer for 31 journals and an editorial board member for 11. He has led numerous research projects, particularly within European programs, such as Rusteel and Newrebar, and is frequently invited to speak at international conferences.

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ORCID

Education 🎓

Dr. Apostolopoulos completed his Dr.-Ing in Civil Engineering, establishing a robust foundation in the study of materials technology and structural integrity. He has since held an esteemed position at the University of Patras, where he contributes extensively to both research and teaching.

Experience 🏫

Currently a Professor in the Department of Mechanical Engineering and Aeronautics at the University of Patras, Dr. Apostolopoulos has been affiliated with the university since 1981. His work spans several major European research initiatives and practical engineering projects focused on modern and historical structure restoration. His expertise extends to reinforced concrete and corrosion analysis in steel structures, emphasizing sustainable construction practices.

Research Interests 🔬

Dr. Apostolopoulos’s research encompasses the mechanical behavior of materials, corrosion and protection of metallic materials, bond behavior between concrete and steel rebars, durability and sustainability of structures, and restoration of monuments. His work focuses on enhancing the lifespan and resilience of civil infrastructure through innovative approaches to material science and structural engineering.

Awards 🏆

Throughout his career, Dr. Apostolopoulos has received numerous accolades for his research contributions and academic excellence. He is widely respected in the academic community, with regular invitations to speak at conferences worldwide and recognition from various international scientific organizations.

Publications 📚

Fatigue Damage Indicator of Different Types of Reinforcing Bars
Published in: International Journal of Structural Integrity, 2022
DOI: 10.1108/IJSI-10-2019-0103
Cited by: Indexed in Crossref

An Experimental Study on Effects of Corrosion and Stirrups Spacing on Bond Behavior of Reinforced Concrete
Published in: Metals, 2020
DOI: 10.3390/met10101327
Cited by: 2 articles on Scopus

Corrosion Resistance and Mechanical Performance of Steel Reinforcement, Before and After Shot-Blasting Process
Published in: Materials Physics and Mechanics, 2020
DOI: 10.18720/MPM.4312020_7
Cited by: Indexed in Scopus

Physical Fundamentals of Thermomechanical Processing in Ultrafine-Grained Metallic Materials Manufacturing
Published in: Materials Physics and Mechanics, 2020
DOI: 10.18720/MPM.4312020_6
Cited by: Indexed in Scopus

Comparison of the Mechanical Response of B400c and B450c Dual Phase Steel Bar Categories, in Long Terms
Published in: Frattura ed Integrita Strutturale, 2019
DOI: 10.3221/IGF-ESIS.50.46
Cited by: Indexed in Scopus