Mohammed Aljamal | Artificial intelligence and Robotics | Best Researcher Award

Mr. Mohammed Aljamal | Artificial intelligence and Robotics | Best Researcher Award

PhD Candidate In Computer Science and Engineering, University of Bridgeport , United States

Mohammed Aljamal is a Ph.D. candidate in Computer Science & Engineering at the University of Bridgeport, specializing in Robotics and Machine Learning ๐Ÿค–. He holds an M.S. in Artificial Intelligence and has a strong background in business strategy, management, and new business development ๐Ÿ’ผ. He is the President of the UB Robotics Club and a member of various academic societies ๐ŸŽ“. Mohammedโ€™s expertise includes ROS, SLAM, and AI, and he has significant experience in both academic and industry projects ๐ŸŒ. He is passionate about leading innovative solutions and advancing user experiences ๐Ÿ’ก.

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Education and Experience:

  • Education ๐ŸŽ“: Ph.D. in Computer Science & Engineering (2022-2026) – University of Bridgeport; M.S. in Artificial Intelligence (2020-2021) – University of Bridgeport; Business Analytics (2020) – University of Illinois; B.S. in Mechanical Engineering (2001-2006) – Al Mustansiriya University.
  • Experience ๐Ÿ’ผ: Labs Engineer (2022-Present) – University of Bridgeport; Technology Solutions Advisor (2015-2017) – Zee-Group; Deputy Director (2013-2015) – Mega Planet; Business Development Manager (2010-2013) – Al Otaiba Enterprises.

Professional Development:

Mohammed has continually developed both his technical and leadership skills. He holds certifications in AWS Cloud Foundations โ˜๏ธ, ROS Fundamentals ๐Ÿ› , and Business Analytics ๐Ÿ“Š. His experience as a leader in academic and industrial settings has honed his problem-solving abilities, project management expertise, and the ability to design innovative solutions ๐ŸŒŸ. He is dedicated to growing as a researcher and applying his expertise to solve real-world challenges ๐Ÿง .

Research Focus:

Mohammed’s research focuses on Robotics, Machine Learning, and Artificial Intelligence ๐Ÿค–. His work specifically includes reinforcement learning applied to Robotics Operating Systems (ROS) and CNN enhancement for AI tasks ๐Ÿง . He also explores practical applications of these technologies, aiming to improve system efficiency and human-robot interaction ๐ŸŒ. His goal is to develop solutions that bridge the gap between theoretical research and real-world industrial applications ๐ŸŒ.

Publications :

  • “Comprehensive Review of Robotics Operating System-Based Reinforcement Learning in Robotics” – M Aljamal, S Patel, A Mahmood – Applied Sciences, 2025 ๐Ÿ“š
  • “Enhancement of CNNHQ with an Activation Function” – A Kariri, M Aljamal, J Al Aridhee, I Albukhari, N Matondo-Mvula, K Elleithy – IEEE LISAT, 2023 ๐Ÿ“˜

 

Soumeya Belabbas | Artificial Intelligence | Best Researcher Award

Soumeya Belabbas| Artificial Intelligence| Best Researcher Award

Soumeya Belabbas,University of Sciences and Technology Houari Boumediene,United state.

Soumeya has taught telecommunications systems and networks to fourth-year engineering students at the Higher National School of Information and Communication Technologies and Post in Algiers. Her teaching module includes mobile networks.

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Educationย 

Soumeya Belabbas is currently pursuing her PhD in Telecommunication and Information Processing at the University of Sciences and Technology Houari Boumediene in Algiers, Algeria, a journey she embarked on in December 2017. Her doctoral research focuses on multi-variable acoustic modeling for assessing pathological speech understanding, showcasing her deep commitment to advancing the field of telecommunications and speech processing. In addition to her ongoing doctoral studies, Soumeya holds a Masterโ€™s degree in Telecommunications, Networks, and Multimedia, which she earned in June 2017 from the same university. This advanced degree equipped her with a robust foundation in telecommunications, further honed through her bachelor’s degree in Telecommunications and Electronics, completed in June 2015. Her academic journey began with a Baccalaureate Diploma in Experimental Sciences, awarded in July 2012, which laid the groundwork for her subsequent specialization and research. Soumeya has also actively participated in professional development activities, such as a workshop on FPGA systems in April 2024, reflecting her continuous pursuit of knowledge and expertise in her field.

Soumeya Belabbas has cultivated a solid foundation in both research and teaching throughout her academic career. As a part-time teacher at the Higher National School of Information and Communication Technologies and Post in Algiers, Algeria, she has been responsible for educating fourth-year engineering students in telecommunications systems and networks, with a specific focus on mobile networks. Her teaching role, undertaken in June 2024, has allowed her to share her extensive knowledge and experience with the next generation of engineers. Alongside her teaching duties, Soumeya has made significant contributions to the field of telecommunications and information processing through her research. She has published multiple articles and presented her findings at international conferences, showcasing her expertise in improving mobile speech recognition systems and pathological speech classification. Her role as a researcher and educator demonstrates her commitment to advancing the field and fostering academic growth.

Soumeya Belabbas’s research is centered on the cutting-edge domains of telecommunications and speech processing, with a particular emphasis on addressing challenges in automatic speech recognition and classification. Her work is dedicated to developing innovative solutions for individuals with voice disorders, aiming to enhance the robustness and accuracy of speech recognition systems. Her current PhD research project, titled “Multi-variable Acoustic Modeling for Assessing Pathological Speech Understanding,” exemplifies her focus on improving pathological speech classification systems. This project involves a comprehensive three-stage framework that incorporates advanced techniques such as speech enhancement, multi-stream approaches, and deep machine learning algorithms like convolutional neural networks (CNN) and bidirectional long short-term memory (BiLSTM) networks. Additionally, Soumeya’s interests extend to signal processing, image processing, and audio speech processing, leveraging machine learning and deep learning methodologies to tackle complex problems in these areas. Her dedication to these research areas is reflected in her numerous publications and presentations, which contribute to the advancement of knowledge and technology in telecommunications and speech processing.

Skills

Soumeya Belabbas possesses a diverse and robust skill set that spans various aspects of telecommunications, information processing, and programming. She is proficient in multiple programming languages, including C/C++, Python, Perl, MATLAB, VHDL, PHP, HTML5, and CSS3, which enable her to develop sophisticated algorithms and models for speech processing and recognition. Her technical expertise extends to the use of HTK tools, essential for hidden Markov model training and evaluation in speech recognition systems. Soumeya is also skilled in managing and operating different operating systems, including Windows Server and Linux (Ubuntu), ensuring that she can work in a versatile computing environment. Her strong foundation in signal and audio speech processing is complemented by her experience with machine learning and deep learning techniques, which she applies to enhance the performance of speech recognition systems. Additionally, Soumeya is well-versed in the use of various software tools and platforms essential for research and development in her field, making her a well-rounded and highly capable researcher and education .

Publicationsย ๐Ÿ“š๐Ÿ“