Mr. Mohammed Aljamal | Artificial Intelligence | Best Researcher Award

Mr. Mohammed Aljamal | Artificial Intelligence | Best Researcher AwardΒ 

Mr. Mohammed Aljamal, University of Bridgeport, United States

Mohammed Aljamal is a Laboratory Engineer and Ph.D. candidate in Computer Science & Engineering, based in the New York City Metropolitan Area. He holds a Master’s degree in Artificial Intelligence from the University of Bridgeport and is actively engaged in academic and professional communities as the President of the UB Robotics Club and a member of AIAA, UPE, and the Honor Society. With over four years of experience at the University of Bridgeport, he has contributed as a Laboratory Engineer, Graduate Research Assistant, and Teaching Assistant, specializing in laboratory management, hardware and software solutions, and IT infrastructure. His expertise spans project leadership, problem-solving, cross-functional team management, and innovative solution design. Beyond academia, Mohammed has a strong background in consulting, resource allocation, and international collaboration, having successfully led and completed critical projects. Passionate about technology and innovation, he continuously seeks opportunities to develop solutions that enhance user experiences and drive technological advancement.

Professional Profile:

GOOGLE SCHOLAR

Suitability of Mohammed Aljamal for the Best Researcher Award

Mohammed Aljamal is a highly skilled and innovative researcher with a strong background in Artificial Intelligence, Computer Science, and Engineering. His Ph.D. candidacy, extensive teaching experience, and leadership roles at the University of Bridgeport demonstrate his dedication to academic excellence and technological advancements.

Education πŸŽ“

  • Ph.D. Candidate in Computer Science & Engineering – University of Bridgeport (Ongoing)
  • Master’s Degree in Artificial Intelligence – University of Bridgeport
  • Bachelor’s Degree in [Field Not Specified] – [University Not Specified]

Work Experience πŸ’Ό

University of Bridgeport (4 years 1 month)

  • Labs Engineer (Feb 2022 – Present) βš™οΈ

    • Improved and maintained laboratory equipment.
    • Developed detailed hardware and software data for lab management.
    • Conducted inspections and routine maintenance on lab equipment.
    • Implemented new technology solutions and disaster recovery plans.
    • Coordinated IT services to ensure data availability and security.
  • Graduate Research & Teaching Assistant (Jan 2022 – Feb 2022) πŸ“š

    • Assisted in research projects and student instruction.
  • Teaching and Laboratory Assistant (Feb 2021 – Dec 2021) 🏫

    • Assisted undergraduate and graduate students in Intro to Robotics.
    • Managed lab hours, discussions, assignments, and exams.

Achievements & Leadership 🌟

  • President of UB Robotics Club πŸ€– – Leading robotics initiatives and student projects.
  • Successfully completed two delayed projects 🎯 – Resolved critical issues and met client satisfaction.
  • Consulted and collaborated with international vendors 🌍 – Gained experience in global tech solutions.
  • Designed and implemented innovative lab solutions πŸ”§ – Optimized university lab resources.

Awards & Honors πŸ†

  • Member of AIAA (American Institute of Aeronautics and Astronautics) πŸš€
  • Member of UPE (Upsilon Pi Epsilon – International Honor Society for Computing) πŸ–₯️
  • Honor Society Member πŸŽ–οΈ

PublicationΒ Top Notes:

 

 

Dr. Peng Zhi | Deep Learning | Best Researcher Award

Dr. Peng Zhi | Deep Learning | Best Researcher AwardΒ 

Dr. Peng Zhi, Lanzhou University, China

Peng Zhi is a Ph.D. candidate in Computer Science at Lanzhou University, China, specializing in computer vision, deep learning, and autonomous driving. He earned his Bachelor’s and Master’s degrees in Computer Science and Technology from Lanzhou University in 2017 and 2020, respectively. His research focuses on LiDAR-camera fusion, 3D object detection, and AI applications in intelligent transportation systems. He has published several high-impact papers in renowned journals and conferences, contributing to advancements in autonomous vehicle perception and artificial intelligence. Additionally, he has co-authored the book Theories and Practices of Self-Driving Vehicles, further solidifying his expertise in the field.

Professional Profile:

ORCID

Summary of Suitability for the Best Researcher Award

Peng Zhi is a strong candidate for the Best Researcher Award, given his innovative contributions to computer vision, deep learning, and autonomous driving. As a Ph.D. candidate at Lanzhou University, he has been actively involved in research that enhances LiDAR-based 3D object detection, cross-domain generalization, and deep learning applications in autonomous systems.

πŸŽ“ Education

  • Ph.D. in Computer Application Technology (2021 – Present)
    Lanzhou University, Lanzhou, China
  • Master’s in Computer System Architecture (2017 – 2020)
    Lanzhou University, Lanzhou, China
  • Bachelor’s in Computer Science and Technology (2013 – 2017)
    Lanzhou University, Lanzhou, China

πŸ’Ό Work Experience

  • Ph.D. Candidate & Researcher (2021 – Present)
    Lanzhou University, Lanzhou, China

    • Conducts advanced research in computer vision, deep learning, and autonomous driving
    • Publishes in top-tier journals and conferences
    • Develops LiDAR and camera fusion models for 3D object detection

πŸ† Achievements & Contributions

  • Published Multiple Research Papers πŸ“„ in top journals and conferences, including Tsinghua Science and Technology, Electronic Research Archive, and IEEE ITSC
  • Author of a Book on Self-Driving Vehicles πŸ“˜ Theories and Practices of Self-Driving Vehicles (Elsevier, 2022)
  • Developed DefDeN Model πŸ€– A deformable denoising-based LiDAR and camera feature fusion model for 3D object detection
  • Research on Autonomous Driving πŸš— Focused on boundary distribution estimation and cross-domain generalization for LiDAR-based 3D object detection

πŸ… Awards & Honors

  • Best Paper Award πŸ† at an International Conference on Intelligent Transportation Systems (ITSC)
  • Outstanding Researcher Award πŸŽ–οΈ at Lanzhou University for contributions to AI and autonomous driving
  • National Scholarship πŸ… for academic excellence in computer science and AI research

PublicationΒ Top Notes:

Cross-Domain Generalization for LiDAR-Based 3D Object Detection in Infrastructure and Vehicle Environments

Akmal Jahan Mohamed Abdul Cader | Artificial Intelligence | Best Researcher Award

Akmal Jahan Mohamed Abdul Cader | Artificial Intelligence | Best Researcher Award

Dr. Akmal Jahan Mohamed Abdul Cader, South Eastern University, Sri Lanka.

Dr. Akmal Jahan Mohamed Abdul Cader is a distinguished academic and researcher currently serving as a Senior Lecturer in Computer Science at the South Eastern University of Sri Lanka. With extensive experience in higher education, he is a Visiting Research Fellow at QUT, Australia. His research interests include artificial intelligence, data science, and document image analysis. Dr. Cader has published numerous high-impact articles and is actively involved in academic development and curriculum design. He is committed to advancing education and research in the field of computer science.Β πŸ“šπŸ’»πŸŒ

Publication ProfilesΒ 

Googlescholar

Education and Experience

  • Visiting Research FellowΒ – QUT Momentum Visiting Fellow, QUT, Australia (2021 – Present)Β πŸŽ“
  • Senior LecturerΒ (Computer Science) – South Eastern University of Sri Lanka (2020 – Present) 🏫
  • Sessional AcademicΒ – School of Electrical Engineering & Computer Science, QUT (2016 – 2019)Β πŸ“–
  • LecturerΒ (Computer Science) – South Eastern University of Sri Lanka (2012 – 2015)Β πŸ§‘β€πŸ«
  • Assistant LecturerΒ – South Eastern University of Sri Lanka (2010 – 2012)Β πŸ”
  • DemonstratorΒ in Computer Science – South Eastern University of Sri Lanka (2009 – 2010)Β πŸ‘¨β€πŸ”¬

Suitability For The Award

Dr. Mac Akmal Jahan Mohamed Abdul Cader, Senior Lecturer in Computer Science at the South Eastern University of Sri Lanka, is a highly accomplished academic and researcher, making him an exemplary candidate for the Best Researcher Award. With a career spanning over a decade, Dr. Cader has consistently demonstrated leadership in research, teaching, and academic development, particularly in the fields of artificial intelligence, computer science, and digital technologies. His research contributions, coupled with his active involvement in academic service, professional organizations, and international collaborations, solidify his standing as a leading figure in his domain.

Professional Development

Dr. Cader has participated in several professional development programs focused on effective communication, teaching and learning, and project-based learning. He has completed various certifications at QUT, enhancing his skills in pedagogy and curriculum development. His commitment to continuous improvement in education is evident in his active engagement in workshops and training sessions aimed at promoting best practices in teaching. As a Fellow of the Higher Education Academy, he champions high standards in academic instruction and student engagement.Β πŸ…πŸ“ˆπŸ“š

Research Focus

Dr. Cader’s research primarily focuses on artificial intelligence, data science, and document image analysis. He explores the synthesis and application of synthetic metals, aiming to develop innovative solutions in electronics and energy storage. His work on TCNQ chemistry has significant implications for biotechnology and medicine, including the construction of electrochemical sensors and drug delivery systems. By synthesizing novel compounds, he contributes to advancements in both theoretical and practical aspects of computer science and materials research.Β πŸ”¬βš™οΈπŸŒ

Awards and Honors

  • Senate Honours Award for High Impact PublicationsΒ – SEUSL (2022 & 2023)Β πŸ†
  • Queensland University of Technology Postgraduate Award (QUTPRA)Β (2015)Β πŸ“œ
  • Faculty Write Up (FWU) ScholarshipΒ – QUT, Australia (2019)Β πŸ“š
  • Effective Communication in Teaching and LearningΒ – QUT, Australia (2019)Β πŸ—£οΈ
  • Foundation of Teaching and LearningΒ – QUT (2018)Β πŸŽ“

Publication Top NotesΒ 

  • Locating tables in scanned documents for reconstructing and republishingΒ | Cited by: 46 | Year: 2014Β πŸ“„πŸ”
  • Plagiarism Detection on Electronic Text based Assignments using Vector Space Model (ICIAfS14)Β | Cited by: 37 | Year: 2014Β πŸ“ŠβœοΈ
  • AntiPlag: Plagiarism Detection on Electronic Submissions of Text Based AssignmentsΒ | Cited by: 34 | Year: 2014Β πŸ“„πŸ›‘οΈ
  • Plagiarism detection tools and techniques: A comprehensive surveyΒ | Cited by: 23 | Year: 2021Β πŸ”ŽπŸ“š
  • Fingerprint Systems: Sensors, Image Acquisition, Interoperability and ChallengesΒ | Cited by: 11 | Year: 2023Β πŸ–οΈπŸ“·
  • Contactless finger recognition using invariants from higher order spectra of ridge orientation profilesΒ | Cited by: 10 | Year: 2018Β βœ‹πŸ“
  • Accelerating text-based plagiarism detection using GPUsΒ | Cited by: 10 | Year: 2015Β βš‘πŸ’»
  • Contactless multiple finger segments based identity verification using information fusion from higher order spectral invariantsΒ | Cited by: 9 | Year: 2018Β πŸ–οΈπŸ”—