Mr. Hassan Gharoun – AI – Best Researcher Award

Mr. Hassan Gharoun - AI - Best Researcher Award

University of Technology Sydney - Australia

Author Profile 

SCOPUS 

🎓 Early academic pursuits

Hassan Gharoun was born on 23rd july 1992 in iran. his journey into academia began with a bachelor's degree in industrial engineering with a specialization in industrial production from kharazmi university of tehran (2010–2014). following this, he pursued his master's degree in industrial engineering at the university of tehran (2014–2017), where he deepened his expertise in data-driven systems and optimization. his early academic performance and passion for analytical research laid a strong foundation for his future endeavors. although his background initially focused on industrial systems, his early interest in machine learning and applications in power electronics gradually became prominent.

💼 Professional endeavors

After completing his master’s degree, hassan contributed to the academic community through teaching, notably at the university of tehran. he served as a tutor in advanced econometrics in fall 2017, where he handled responsibilities such as mentoring projects, tutoring in time series algorithms, and grading. he also provided practical insights using sequential deep neural networks and python programming. alongside teaching, he expanded his knowledge base by engaging in international conferences and collaborations, where he actively contributed to data science and optimization research, including subjects related to power electronics and predictive modeling.

🔬 Contributions and research focus

Hassan Gharoun is currently pursuing a ph.d. in analytics at the university of technology sydney (2022–2026). his research spans several methodological domains, including data-driven AI optimization, probabilistic machine learning, meta-learning, and deep learning. these methodologies are employed in solving complex real-world problems where predictive decision-making is crucial. his application-focused research extends to fields like predictive modeling and power electronics, where data-centric models drive intelligent systems. his interdisciplinary approach enhances the integration of machine learning into classical engineering problems, bringing innovative contributions to the analytics landscape.

🌍 Impact and influence

Hassan’s scholarly impact has been marked by both national and international recognition. he received the best paper award at the international conference on industrial engineering and AI operations management held in paris in july 2018, demonstrating his capability to produce high-quality and impactful research. his teaching and mentorship in econometrics and deep learning have also positively influenced students at the university of tehran. by blending industrial engineering insights with cutting-edge analytics and applications such as power electronics, he continues to be a bridge between traditional engineering and emerging ai-driven solutions.

📚 Academic cites

Although still in the early stages of his doctoral journey, hassan gharoun has already begun establishing a scholarly footprint through academic conferences and teaching contributions. his AI recognition at an international level hints at the growing citation potential of his works. his research is expected to be cited across multiple domains, particularly in data analytics, predictive systems, and interdisciplinary applications in sectors like power electronics. as his phd progresses, the impact and citation metrics of his work are projected to increase significantly.

🚀 Legacy and future contributions

Looking ahead, hassan gharoun is poised to make significant contributions to academia and industry through the integration of analytical methods with practical applications. his ambition is to lead innovations at the intersection of deep learning and optimization, enhancing intelligent systems in fields like healthcare, energy, and power electronics. with a strong academic trajectory and international exposure, he is building a legacy rooted in methodological rigor and impactful applications. his future goals include expanding collaborative research, publishing in top-tier journals, and contributing to sustainable technological solutions globally.

Notable Publications 

Title: A comprehensive bibliometric analysis on social network anonymization: current approaches and future directions
Author(s): Navid Yazdanjue, Hossein Yazdanjouei, Hassan Gharoun, Babak Amiri, Amir H. Gandomi
Journal: [No journal information available] — the source or journal name was not provided in the data you shared. If you have a DOI or additional details, I can help track it down further.

Dr. Amina Benabid – Medical image analysis – Best Researcher Award

Dr. Amina Benabid - Medical image analysis - Best Researcher Award

Zhejiang Normal University - China

Professional Profile

SCOPUS

Early Academic Pursuits

Amina Benabid embarked on her academic journey with a Bachelor's degree in Mathematics from Université Frères Mentouri - Constantine 1, Algeria, which she completed in July 2016. She continued her education with a Master's degree in Mathematics from the same university, focusing on Statistical Tests, and graduated in July 2018. Her academic pursuits culminated in a Doctor of Natural Science in Mathematics from Zhejiang Normal University, China, in June 2022. Her doctoral thesis, supervised by Prof. Dao-Hong Xiang, explored the Convergence Theory of Large Margin Learning.

Professional Endeavors

Dr. Amina Benabid has gained diverse professional experience in both research and academic roles. She served as a Research Assistant at the School of Data Science, City University of Hong Kong, under the supervision of Prof. Ding-Xuan Zhou in July 2019. Subsequently, she held a Medical image analysis Postdoctoral fellowship position at Zhejiang Normal University's College of Mathematical Medicine from August 2022 to August 2024, working under the guidance of Prof. Yuan Jing.

Contributions and Research Focus

Dr. Benabid's research interests are focused on Statistical Learning Theory, Medical Image Analysis, Deep Learning, and Semantic Segmentation. She has made significant contributions to these fields through several publications and ongoing research projects. Her work includes papers Medical image analysis such as "Comparison theorems on large-margin learning" and "CFNet: Cross-scale Fusion Network for Brain Tumor Segmentation on 3D MRI Scans." Her research emphasizes integrating contextual information for enhanced brain tumor classification and developing real-time semantic segmentation models.

Accolades and Recognition

Throughout her career, Dr. Benabid has been recognized for her academic achievements and contributions. She received the Outstanding Award for academic innovation in 2021 and was honored as an Excellent Student in 2022. Her work has been acknowledged at various international conferences, including the 4th International Symposium on Artificial Intelligence for Medical Sciences and the 6th International Symposium on Medical image analysis Image Computing and Digital Medicine.

Impact and Influence

Dr. Amina Benabid's research has had a profound impact on advancing the understanding and application of deep learning techniques in medical image analysis, particularly in the context of brain tumor segmentation. Her contributions to the development of real-time semantic segmentation models using innovative approaches like CFNet and P2AT have set benchmarks in the field.

Legacy and Future Contributions

Looking ahead, Dr. Benabid aims to continue her research endeavors, focusing on further advancements in medical image analysis and deep learning. Her commitment to leveraging artificial intelligence for improving healthcare outcomes underscores her dedication to making significant contributions to the field. Through ongoing research and mentorship, she seeks to inspire future generations of researchers and contribute to transformative innovations in medical imaging technologies.

NOTABLE PUBLICATIONS