Ali Othman Albaji | Computer Science and Artificial Intelligence | Best Researcher Award

Ali Othman Albaji | Computer Science and Artificial Intelligence | Best Researcher Award

Dr Ali Othman Albaji, Libyan Authority for Scientific Research, Libya

With a Bachelor’s in Electrical Engineering and a Master’s in Electronics & Telecommunications from Universiti Teknologi Malaysia, this accomplished professional has extensive experience in academia and industry. Currently an Assistant Professor at the Higher College of Science and Technology in Libya, they also lead CR Technology System in the MENA region. Their research interests include optical wireless technologies and machine learning applications in environmental monitoring. Fluent in Arabic and English, with a diploma in Italian, they are also the President of the Postgraduate Student Society at UTM. 📡🎓🌍✍️

Publication profile

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Academic Background 

With a diverse academic journey, the individual holds a Master’s in Public Management and Leadership from the London School of Economics (LSE), UK, completed in 2010. They further pursued a Master in Electronics and Telecommunications at the University Technology Malaysia from 2019 to 2023. Their foundational education includes a Bachelor’s degree in Electrical Engineering, specializing in General Communications, from the Civil Aviation Higher College in Tripoli, Libya, earned in 2007. Additionally, they completed a Diploma in the Italian language during the 2011/2012 academic year. 🎓📡

Experience

Dr. Ali Othman Albaji boasts a diverse work history across reputable organizations. He started as a Sales Advisor at Akida Company (LG) and ZTE/Telecom China, honing his expertise in the telecommunications field. His academic journey includes significant roles as an Assistant Professor and lecturer in Electronics and Telecommunications. In addition to his teaching, he has demonstrated leadership as the Chairman of CR Technology System (CRTS Group) and the President of the Postgraduate Student Society at Universiti Teknologi Malaysia. Dr. Albaji’s commitment to both academia and industry underscores his dedication to advancing technology and education. 📡🎓💼🌟

Main Hard Skills 

Dr. Albaji possesses a robust set of technical skills, including proficiency in CAD Design, MATLAB Simulation Analysis, Python, and data visualization tools like Tableau. His capabilities extend to qualitative and quantitative analysis, SCADA systems, and programming languages like Verilog and HTML. These skills enable him to tackle complex research problems and contribute innovatively to his field. 

Languages 

Fluent in Arabic and English, with an IELTS Band Score of 8.5, Dr. Albaji also has a very good command of Italian. This linguistic proficiency allows him to collaborate with international researchers and disseminate his work to a broader audience. 

Research focus

Ali Othman Albaji’s research focus centers on machine learning applications in environmental noise classification, emphasizing smart cities and mobile communications. His work includes developing algorithms for monitoring and classifying noise pollution using MATLAB, contributing to urban planning and public health. He has also explored traffic noise impacts on residential areas and mobile telecommunications in Libya. His diverse research interests extend to the design and implementation of communication systems, highlighting the integration of technology in environmental studies. Through these contributions, Albaji aims to enhance noise management and promote sustainable urban environments. 🌍📊🔊📡

Publication top notes

Investigation on Machine Learning Approaches for Environmental Noise Classifications

A Machine Learning for Environmental Noise Monitoring and Classification Using Matlab

Machine Learning for Environmental Noise Classification in Smart Cities

Designing the Global System for Mobile Communications GSM-900 Cellular Network up to the Nominal Cell Plan in Tripoli, Libya

Conclusion and Recommendations

A Review of Traffic Highway Noise Towards Residential Area

NOISE POLLUTION DATA REPORTING AND WAREHOUSING USING TABLEAU SOFTWARE

Designing and Implementing a Signed Multiplier Radix-2 Using Booth’s Algorithm

Jerzy Montusiewicz | Computer Science and Artificial Intelligence | Best Researcher Award

Jerzy Montusiewicz | Computer Science and Artificial Intelligence | Best Researcher Award

Mr Jerzy Montusiewicz, Lublin University of Technology, Department of Computer Science, Poland

Based on the research achievements of Prof. Jerzy Montusiewicz, he appears to be a strong candidate for the Best Researcher Award. Here’s a summary of his contributions and achievements:

Publication profile

google scholar

Research Summary for Best Researcher Award

1. K-medoids Clustering and Fuzzy Sets for Isolation Forest
Montusiewicz co-authored this 2021 IEEE International Conference on Fuzzy Systems paper on clustering and fuzzy sets, highlighting advanced methodologies in data analysis. This work is cited for its impact on clustering techniques in complex datasets.

2. Preparation of 3D Models of Cultural Heritage Objects to be Recognized by Touch by the Blind—Case Studies
In this 2022 Applied Sciences publication, Montusiewicz contributed to developing 3D models of cultural heritage objects accessible to the visually impaired, showcasing his commitment to inclusivity in digital heritage.

3. Comparative Analysis of Digital Models of Objects of Cultural Heritage Obtained by the “3D SLS” and “SfM” Methods
This 2021 study, published in Applied Sciences, explores the comparative effectiveness of different 3D scanning methods for cultural heritage preservation, reflecting Montusiewicz’s expertise in digital preservation techniques.

4. 3D Scanning and Visualization of Large Monuments of Timurid Architecture in Central Asia—A Methodical Approach
Montusiewicz’s 2020 Journal on Computing and Cultural Heritage article demonstrates innovative methods for scanning large historical monuments, emphasizing his contributions to preserving Central Asian architectural heritage.

5. Virtual and Interactive Museum of Archaeological Artefacts from Afrasiyab—An Ancient City on the Silk Road
This 2020 paper in Digital Applications in Archaeology and Cultural Heritage presents the creation of a virtual museum for archaeological artefacts, illustrating Montusiewicz’s role in advancing digital tools for archaeology.

6. A Decomposition Strategy for Multicriteria Optimization with Application to Machine Tool Design
Montusiewicz’s 1990 publication in Engineering Costs and Production Economics addresses optimization strategies in machine tool design, demonstrating his early contributions to engineering and optimization techniques.

7. Structured-Light 3D Scanning of Exhibited Historical Clothing—A First-Ever Methodical Trial and Its Results
This 2021 Heritage Science study, co-authored by Montusiewicz, represents a pioneering effort in 3D scanning of historical clothing, marking a significant advancement in the field of heritage science.

8. Documenting the Geometry of Large Architectural Monuments Using 3D Scanning—The Case of the Dome of the Golden Mosque of the Tillya-Kori Madrasah in Samarkand
Montusiewicz’s research, published in 2022, focuses on documenting the geometry of significant architectural monuments, highlighting his continued impact on architectural preservation through advanced scanning techniques.

Prof. Montusiewicz’s diverse research, spanning from advanced 3D scanning techniques to the preservation of cultural heritage, underscores his significant contributions to the fields of computer graphics and digital preservation. His innovative approaches and practical applications make him an exemplary candidate for the Best Researcher Award.

Research focus

Based on the provided publications, the research focus appears to be in digital heritage preservation and 3D scanning technologies. The work of J. Montusiewicz and collaborators emphasizes creating and analyzing 3D models of cultural heritage objects, including methods for blind accessibility and the application of scanning technologies for historical artifacts and architecture. This includes comparative studies of different scanning methods and their effectiveness, as well as the development of interactive digital museums. Their research contributes significantly to both the preservation of cultural heritage and the advancement of technological applications in archaeology. 🏛️🔍📏

Publication top notes

K-medoids clustering and fuzzy sets for isolation forest

Preparation of 3D models of cultural heritage objects to be recognised by touch by the blind—case studies

Comparative analysis of digital models of objects of cultural heritage obtained by the “3D SLS” and “SfM” methods

3D Scanning and Visualization of Large Monuments of Timurid Architecture in Central Asia–A Methodical Approach

Virtual and interactive museum of archaeological artefacts from Afrasiyab–an ancient city on the silk road

A decomposition strategy for multicriteria optimization with application to machine tool design

Structured-light 3D scanning of exhibited historical clothing—a first-ever methodical trial and its results

 

Emmanuel Mutabazi | Computer Science and Artificial Intelligence | Best Researcher Award

Emmanuel Mutabazi | Computer Science and Artificial Intelligence | Best Researcher Award

Mr Emmanuel Mutabazi, Hohai University, China

Based on the information provided, Mr. Emmanuel Mutabazi appears to be a strong candidate for the Best Researcher Award.

Publication profile

google scholar

Education

Mr. Mutabazi is currently pursuing a Ph.D. in Information and Communication Engineering at Hohai University, China, where he has been enrolled since September 2019. He also holds a Master of Engineering in the same field from Hohai University (2016-2019) and a Bachelor of Science in Business Information Technology from the University of Rwanda (2010-2013). His solid educational background has laid a strong foundation for his research endeavors.

Research Interests

Mr. Mutabazi’s research focuses on cutting-edge areas like Natural Language Processing, Machine Learning, Deep Learning, and Computer Vision. His passion for building intelligent systems using AI and ML technologies is evident in his academic and professional work, making him a valuable contributor to these fields.

Skills

He possesses advanced coding skills in multiple programming languages, including Python, MATLAB, C++, Java, and R, among others. His expertise extends to website design, software development, image and video processing, and developing complex systems like Question Answering Systems and Recommender Systems. He is also proficient in using referencing and paper formatting tools such as EndNote, Mendeley, Zotero, and LaTeX.

Experience

Before embarking on his current academic path, Mr. Mutabazi worked as a secondary school teacher at Kiyanza Secondary School (2014-2016), teaching a wide range of subjects. His multilingual abilities (English, French, Swahili, Chinese, and Kinyarwanda) further enhance his capability to engage in global research collaborations.

Publications

Mr. Mutabazi has several peer-reviewed publications, including journal articles and conference papers, showcasing his active participation in research. Notably, his publications include a review on medical textual question-answering systems, a study on SLAM methods, a review of the Marine Predators algorithm, and an improved model for medical forum question classification. His research has been published in reputable journals such as Applied Sciences, Computational Intelligence and Neuroscience, and Machine Learning with Applications.

Conclusion

Considering Mr. Mutabazi’s strong academic background, diverse skill set, significant teaching experience, and impactful research contributions, he is well-suited for the Best Researcher Award. His dedication to advancing knowledge in Information and Communication Engineering, coupled with his proven ability to publish high-quality research, makes him a deserving candidate for this recognition.

Research focus

This researcher focuses on developing advanced deep learning models and algorithms for various applications, particularly in the medical field and computational intelligence. Their work includes creating and improving medical textual question-answering systems and classification models for medical forums using CNN and BiLSTM. Additionally, they explore innovative techniques in marine predator algorithms and direct SLAM methods based on semantic information, highlighting a strong emphasis on machine learning and artificial intelligence in solving complex problems. This research bridges the gap between AI and practical applications in healthcare and robotics. 🤖💡🩺📊

Publication top notes

A review on medical textual question answering systems based on deep learning approaches

Marine predators algorithm: A comprehensive review

An Improved Model for Medical Forum Question Classification Based on CNN and BiLSTM

A variable radius side window direct slam method based on semantic information

 

ZAIN ANWAR ALI | Computer Science | Best Researcher Award

ZAIN ANWAR ALI | Computer Science | Best Researcher Award

Dr ZAIN ANWAR ALI, MAYNOOTH UNIVERSITY, Ireland

Based on Dr. Zain Anwar Ali’s comprehensive academic and research profile, he is a strong candidate for the Best Researcher Award. Dr. Zain Anwar Ali is a distinguished researcher with a Ph.D. in Control Theory & Control Engineering from Nanjing University of Aeronautics & Astronautics (2017). His expertise spans across Control Theory, Robotics, and Bio-Inspired Computation, with significant contributions to the field of electronic engineering. His extensive academic background includes a Master’s in Industrial Control & Automation and a Bachelor’s in Electronic Engineering.

Publication profile

google scholar

Current Position

Dr. Ali is a Senior Post Doctoral Researcher at the National University of Ireland, Maynooth, working on a cutting-edge project on the control co-design and optimization of wave energy converters funded by prominent institutions including Science Foundation Ireland and the National Science Foundation (USA).

Previous Roles

He has held prominent positions such as Associate Professor at Jiaying University, China, and Sir Syed UET, Pakistan, where he contributed to various courses and led research clusters in bio-inspired computation. His role also included serving as an editor for research journals.

Technical Expertise

Dr. Ali is proficient in multiple programming languages and research methodologies, including computational modeling, experimental design, and data-driven simulations. His technical skills enable him to develop advanced electronic systems and software solutions.

Scholarships and Grants

He has secured substantial funding for his research, including a significant postdoctoral grant from the China Postdoctoral Council and various other research grants totaling over €600K. His research grants support projects in smart agriculture, robotics, and underwater vehicles.

Research Publications

With approximately 35 publications, Dr. Ali has made notable contributions to the field, including studies on UAVs, swarm robotics, and fuzzy-based control algorithms. His work is published in reputable journals and conferences.

Professional Affiliations

Dr. Ali is a Senior Member of IEEE and holds memberships in various international engineering and robotics societies. He is also a representative for the Belt & Road Alliance for Sensing and IoT Collaboration.

Social Responsibility

His involvement extends to social responsibility, including contributions to the Federation of Pakistan Chamber of Commerce and Industry’s Solar Energy standing committee and other engineering associations.

Conclusion

Dr. Ali’s extensive research achievements, innovative contributions, and leadership in the field make him a highly suitable candidate for the Best Researcher Award.

Publication top notes

An overview of various kinds of wind effects on unmanned aerial vehicle

Automatic fish species classification using deep convolutional neural networks

A review of different designs and control models of remotely operated underwater vehicle

Hybrid anomaly detection by using clustering for wireless sensor network

Cooperative path planning of multiple UAVs by using max–min ant colony optimization along with cauchy mutant operator

Optimization methods applied to motion planning of unmanned aerial vehicles: A review

Collective motion and self-organization of a swarm of UAVs: A cluster-based architecture

Multi-unmanned aerial vehicle swarm formation control using hybrid strategy

Fuzzy-based hybrid control algorithm for the stabilization of a tri-rotor UAV

 

Yasin Fatemi | Computer Science and Artificial Intelligence | Best Researcher Award

Yasin Fatemi | Computer Science and Artificial Intelligence | Best Researcher Award

Mr Yasin Fatemi, Auburn University, United States

Based on the details provided, Mr. Yasin Fatemi is a highly suitable candidate for a Researcher of the Year Award.

Publication profile

google scholar

Educational Background 📚

Mr. Fatemi has a robust academic foundation with a Ph.D. in Industrial and Systems Engineering from Auburn University, where he has maintained a perfect GPA of 4.0. His ongoing M.Sc. in Data Science further complements his expertise, and he also holds an M.Sc. and B.Sc. in Industrial and Systems Engineering from Tarbiat Modares University and the University of Kurdistan, respectively. This diverse and interdisciplinary educational background supports his innovative research in healthcare and systems optimization.

Research Experience and Contributions 🔬

Mr. Fatemi’s research is both extensive and impactful. His recent work involves using machine learning and network analysis to address critical healthcare issues such as low birth weight prediction, racial disparities in maternal outcomes, and cardiovascular death among liver transplant recipients. These projects showcase his ability to apply advanced analytical methods to real-world problems, significantly contributing to the fields of healthcare and data science. His studies have utilized cutting-edge techniques such as Recursive Feature Elimination, SHapley Additive exPlanations (SHAP), and network feature analysis, highlighting his technical prowess and innovation.

Publications and Academic Output 📝

Mr. Fatemi has authored several peer-reviewed articles, contributing to reputable journals like Frontiers in Public Health and Journal of Multidisciplinary Healthcare. His research on the stress and compensation perceptions of frontline nurses during the COVID-19 pandemic, as well as his work on hospital smart notification systems, demonstrates his commitment to improving healthcare environments and outcomes. His publications reflect his ability to tackle diverse and pressing issues, making him a significant contributor to the academic community.

Technical and Academic Skills 🛠️

Mr. Fatemi’s technical skills are impressive, encompassing data analysis tools like Python, R, and SQL, and specialized software for simulation and optimization. His expertise in machine learning, statistical learning, and network analysis is evident in his research outputs, further establishing his credibility as an innovative researcher.

Conclusion

Mr. Yasin Fatemi’s strong educational background, extensive research experience, and impactful contributions to healthcare and data science make him an excellent candidate for a Best Researcher Award. His ability to apply complex analytical techniques to critical issues in healthcare and his consistent academic excellence underscore his suitability for this recognition.

Publication top notes

Investigating frontline nurse stress: perceptions of job demands, organizational support, and social support during the current COVID-19 pandemic

Listening to the Voice of the hospitalized child: comparing children’s experiences to their parents

The Cost of Frontline Nursing: Investigating Perception of Compensation Inadequacy During the COVID-19 Pandemic

ChatGPT in Teaching and Learning: A Systematic Review

Machine Learning Approach for Cardiovascular Death Prediction among Nonalcoholic Steatohepatitis (NASH) Liver Transplant Recipients

Evaluating a Hospital Smart Notification System in a Simulated Environment: The Method

Machine Learning Approaches for Cardiovascular Death Prediction Among Nash Liver Transplant Recipients