Zaid Allal | Machine Learning | Best Researcher Award

Dr. Zaid Allal | Machine Learning | Best Researcher Award

Dr. Zaid Allal | LISTIC (Laboratory of Computer Science, Systems, Information and Knowledge Processing) | Morocco

Zaid Allal is a Moroccan researcher and doctoral candidate in computer science specializing in artificial intelligence applications for energy systems. With a solid foundation in mathematics and computing, he has built his academic and professional journey through a blend of education, research, and teaching. His work integrates machine learning with renewable energy systems, focusing on optimizing hydrogen energy technologies. Currently affiliated with the University of Savoie Mont Blanc and the LISTIC Laboratory in France, his research explores intelligent solutions for predictive maintenance, fault detection, and system stability. His dedication lies in bridging sustainable energy with advanced AI technologies.

Publication Profile

Scopus

ORCID

Google Scholar

Education Background

Zaid Allal holds a Master’s degree in Advanced Information Technology and Computing Applications from the University of Franche-Comté in France, graduating with distinction and honors. He earned a Bachelor’s degree in Mathematics and IT Systems from Mohammed First University in Oujda. Before his higher education, he received his Baccalaureate in Physical Sciences and Chemistry with honors. Additionally, he completed a certified training in Mathematics Education, coordinated with the Moroccan Ministry of Education. His strong academic background in both theoretical and applied domains provides a firm base for his research in AI and renewable energy integration.

Professional Experience

Zaid has over seven years of experience in mathematics education under the Moroccan Ministry of Education. Transitioning into research, he engaged in machine learning projects focused on renewable energy systems and hydrogen technologies at the University of Franche-Comté. Currently, he is a Ph.D. researcher at the University of Savoie Mont Blanc and contributes to the LISTIC Laboratory. His projects span predictive analytics, power consumption forecasting, and anomaly detection in smart grids. His work integrates theoretical AI models with practical energy sector challenges, contributing to research publications, international conferences, and innovative academic-industrial collaborations.

Awards and Honors

Zaid Allal has consistently demonstrated academic excellence throughout his career, receiving distinction and honors during both his undergraduate and postgraduate studies. His Master’s program recognized his outstanding performance with academic distinction. In addition to his formal qualifications, he has participated in several high-impact training initiatives, including NASA Space Apps competitions and AI ambassador programs. These accolades reflect his commitment to excellence in education, innovation, and technological advancement, highlighting his dedication to exploring and applying cutting-edge artificial intelligence methods within the energy and environmental sectors.

Research Focus

Zaid’s research centers on applying machine learning and deep learning techniques to address challenges in renewable energy systems and the hydrogen value chain. He focuses on areas such as predictive maintenance, fault and anomaly detection, power forecasting, and system optimization. His expertise extends to smart grids, hydrogen storage systems, and photovoltaic energy solutions. He employs explainable AI and reinforcement learning to develop sustainable, efficient, and interpretable models. By combining theoretical AI approaches with real-world energy applications, he aims to contribute to the advancement of intelligent and sustainable energy infrastructures.

Top  Publications

Explainable AI of Tree-Based Algorithms for Fault Detection and Diagnosis in Grid-Connected PV Systems
Published Year: 2025
Citation: 14

Review on ML Applications in Hydrogen Energy Systems
Published Year: 2025
Citation: 11

Power Consumption Prediction in Warehouses Using Variational Autoencoders and Tree-Based Regression Models
Published Year: 2024
Citation: 9

Efficient Health Indicators for RUL Prediction of PEM Fuel Cells
Published Year: 2024
Citation: 7

Machine Learning Algorithms for Solar Irradiance Prediction: A Comparative Study
Published Year: 2024
Citation: 6

Conclusion

Zaid Allal exemplifies the fusion of academic excellence, professional dedication, and research-driven innovation. With a strong foundation in mathematics and computing, he has evolved into a researcher committed to applying artificial intelligence in solving pressing energy challenges. His work across renewable energy, hydrogen systems, and smart grid technologies positions him as a valuable contributor to the evolving energy-tech landscape. Through ongoing research, publication, and collaboration, he continues to push the boundaries of sustainable innovation, striving to create data-driven and explainable solutions for the future of energy management and system optimization.

Sikandar Ali | Artificial Intelligence Award | Best Researcher Award

Dr. Sikandar Ali | Artificial Intelligence Award | Best Researcher Award

Postdoc Fellow, Inje University, South Korea

🎓 Sikandar Ali is a passionate AI researcher and educator specializing in Artificial Intelligence applications in healthcare. Currently pursuing a PhD at Inje University, South Korea, he has a strong academic background and extensive research experience in digital pathology, medical imaging, and machine learning. As a team leader of the digital pathology project, he develops innovative AI algorithms for cancer diagnosis while collaborating with a global team of researchers. Sikandar is a recipient of prestigious scholarships, accolades, and recognition for his contributions to AI and healthcare innovation.

Publication Profile

Google Scholar

Education

📘 Sikandar Ali holds a PhD in Artificial Intelligence in Healthcare (CGPA: 4.46/4.5) from Inje University, South Korea, where his thesis focuses on integrating pathology foundation models with weakly supervised learning for gastric and breast cancer diagnosis. He earned an MS in Computer Science from Chungbuk National University, South Korea (GPA: 4.35/4.5), with research on AI-based clinical decision support systems for cardiovascular diseases. His undergraduate degree is a Bachelor of Engineering in Computer Systems Engineering from Mehran University of Engineering and Technology, Pakistan, with a CGPA of 3.5/4.0.

Experience

💻 Sikandar is an experienced researcher and AI specialist. Currently working as an AI Research Assistant at Inje University, he focuses on cutting-edge projects in digital pathology, cancer detection, and medical imaging. Previously, he worked as a Research Assistant at Chungbuk National University, focusing on cardiovascular disease diagnosis using AI. His industry experience includes roles such as Search Expert at PROGOS Tech Company and Software Developer Intern at Hidaya Institute of Science and Technology.

Awards and Honors

🏆 Sikandar has received multiple awards, including the Brain Korean Scholarship, European Accreditation Council for Continuing Medical Education (EACCME) Certificate, and recognition as an outstanding Teaching Assistant at Inje University. He has also earned full travel grants for international conferences, extra allowances for R&D industry projects, and certificates for reviewing research papers in leading journals. Additionally, he is a Guest Editor at Frontiers in Digital Health.

Research Focus

🔬 Sikandar’s research focuses on developing AI algorithms for medical imaging, with expertise in weakly supervised learning, self-supervised learning, and digital pathology. His projects include designing AI systems for cancer detection, COVID-19 prediction, and IPF severity classification. He also works on object detection applications using YOLO models and wearable sensor-based activity detection for pets. His commitment to explainability and interpretability in AI models ensures their practical utility in healthcare.

Conclusion

🌟 Sikandar Ali is a dedicated AI researcher driving innovation in healthcare through artificial intelligence. With his strong educational foundation, diverse research experience, and impactful contributions, he aims to bridge the gap between AI and medicine, making healthcare more efficient and accessible.

Publications

Detection of COVID-19 in X-ray Images Using DCSCNN
Sensors 2022, IF: 3.4

A Soft Voting Ensemble-Based Model for IPF Severity Prediction
Life 2021, IF: 3.2

Metaverse in Healthcare Integrated with Explainable AI and Blockchain
Sensors 2023, IF: 3.4

Weakly Supervised Learning for Gastric Cancer Classification Using WSIs
Springer 2023

Classifying Gastric Cancer Stages with Deep Semantic and Texture Features
ICACT 2024

Computer Vision-Based Military Tank Recognition Using YOLO Framework
ICAISC 2023

Activity Detection for Dog Well-being Using Wearable Sensors
IEEE Access 2022

Cat Activity Monitoring Using Wearable Sensors
IEEE Sensors Journal 2023, IF: 4.3

Deep Learning for Algae Species Detection Using Microscopic Images
Water 2022, IF: 2.9

Comprehensive Review on Multiple Instance Learning
Electronics 2023

Hybrid Model for Face Shape Classification Using Ensemble Methods
Springer 2021

Cervical Spine Fracture Detection Using Two-Stage Deep Learning
IEEE Access 2024