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”—

Alireza Amiri-Simkooei | Deep learning | Best Researcher Award

Dr. Alireza Amiri-Simkooei | Deep learning | Best Researcher Award

Associate professor at Delft University of Technology, Netherlands

Alireza Amiri-Simkooei is an accomplished Dutch-Iranian geodesist and academic, currently serving as an Associate Professor at Delft University of Technology. With over two decades of experience in geoscience and remote sensing, he specializes in statistical geodesy, optimization, and machine learning. Alireza’s expertise spans various domains, including artificial intelligence applications in geodesy, acoustic remote sensing, and advanced estimation methods. He has contributed significantly to academia through teaching, research, and editorial roles in prominent journals. Alireza holds a Ph.D. from Delft University of Technology, where his thesis focused on least-squares variance component estimation. His dedication to education and research has earned him numerous accolades, making him a leading figure in his field.

Profile:

ORCID Profile

Strengths for the Award:

  1. Impressive Academic Background:
    • Achievements in education, including being ranked first in both his B.Sc. and M.Sc. programs, reflect a strong foundation in geodesy and optimization engineering.
  2. Diverse Research Interests:
    • His research spans multiple domains such as AI, machine learning, acoustic remote sensing, optimization, and time series analysis, showcasing versatility and adaptability in addressing complex problems.
  3. Substantial Publication Record:
    • With numerous articles in high-impact journals, he demonstrates a strong commitment to advancing knowledge in his fields of expertise. His works cover cutting-edge topics such as machine learning applications in geodesy and acoustic sensing.
  4. Recognition and Awards:
    • Multiple awards and honors highlight his contributions and excellence in research and education, including recognition as an outstanding researcher at various institutions.
  5. Leadership and Mentorship:
    • His roles, such as Director of Research Affairs and various editorial positions, illustrate his leadership capabilities and commitment to the academic community.
  6. Significant Project Experience:
    • His involvement in various funded projects showcases his ability to secure grants and lead impactful research initiatives, often incorporating innovative techniques in machine learning and optimization.

Areas for Improvement:

  1. Broader Collaboration:
    • While he has collaborated on several projects, seeking more interdisciplinary collaborations could enhance the applicability and impact of his research.
  2. Public Engagement:
    • Increasing outreach efforts to engage non-academic audiences could improve the societal impact of his research, especially in applied fields like remote sensing and environmental monitoring.
  3. Emerging Trends:
    • Staying updated with the latest trends in AI and remote sensing technologies could enhance his research scope and application relevance. This might involve exploring new methodologies or integrating other emerging technologies.
  4. Diversity in Funding Sources:
    • Diversifying funding sources beyond governmental and institutional grants could help in securing resources for innovative projects and broaden his research agenda.

Education:

Alireza Amiri-Simkooei earned his B.Sc. in Geodetic Engineering from the University of Isfahan in 1994, graduating first in his class. He continued his studies at K. N. Toosi University of Technology, where he completed his M.Sc. in Optimization Engineering in 1998, again ranking first among his peers. He then pursued a Ph.D. at Delft University of Technology, specializing in Statistical Geodesy from 2002 to 2007. His doctoral thesis focused on least-squares variance component estimation and its applications in GPS technology, supervised by Prof. Dr. Peter J.G. Teunissen. Alireza’s educational journey reflects a strong foundation in engineering and mathematical optimization, underpinned by rigorous research methodologies that have shaped his subsequent contributions to the field.

Experience:

Alireza Amiri-Simkooei has an extensive professional background in academia and research, spanning over two decades. He is currently an Associate Professor at Delft University of Technology in the Department of Geoscience and Remote Sensing. Prior to this, he served as an Assistant Professor and researcher at the same institution, where he contributed to various innovative projects. Alireza also held a full professorship at the University of Isfahan, where he was involved in teaching, departmental leadership, and research administration as the Director of Research Affairs. His earlier positions include postdoctoral research and various academic roles at both Delft University and the University of Isfahan. His diverse experience encompasses research in geodesy, optimization, and acoustic remote sensing, making him a prominent figure in his field.

Awards and Honors:

Alireza Amiri-Simkooei has received numerous prestigious awards throughout his academic career. He was recognized as an outstanding student in both his B.Sc. and M.Sc. programs, ranking first in his classes. In 2002, he obtained an overseas Ph.D. scholarship from the Iranian Ministry of Science. His contributions to the field have earned him accolades such as the Outstanding Researcher award at the University of Isfahan, where he was recognized multiple times. Additionally, Alireza has been honored as an Outstanding Reviewer for the Journal of Surveying Engineering. His leadership roles, including being the Director of Research Affairs at the University of Isfahan, further highlight his impact on the academic community. Alireza continues to contribute to the advancement of geoscience through editorial positions and active involvement in research collaborations, solidifying his reputation as a leading researcher in his field.

Research Focus:

Alireza Amiri-Simkooei’s research focuses on the intersection of artificial intelligence and geodesy, particularly in machine learning applications to enhance geospatial analysis and data processing. He explores various methodologies, including least-squares-based deep learning and support vector regression, to optimize geodetic data estimation and enhance accuracy in measurements. Alireza is also deeply engaged in acoustic remote sensing, developing innovative modeling techniques for wind tunnel acoustics and underwater imaging. His work on statistical variance component estimation and advanced estimation methods, such as Kriging and Kalman filtering, has contributed to improving the reliability of geodetic measurements. Additionally, Alireza investigates time series analysis and stochastic modeling, applying these techniques to various domains, including air transport operations and environmental monitoring. His multifaceted research aims to advance methodologies that integrate geospatial data with artificial intelligence, significantly impacting both theoretical and practical applications in geoscience.

Publications Top Notes:

  1. Combinatorial Nonnegative Matrix-Tensor Factorization for Hyperspectral Unmixing Using a General β„“β‚• Norm Regularization
  2. Deep Learning in Standard Least-Squares Theory of Linear Models: Perspective, Development, and Vision
  3. Mussel Culture Monitoring with Semi-Supervised Machine Learning on Multibeam Echosounder Data Using Label Spreading
  4. Multivariate Weighted Total Least Squares Based on the Standard Least-Squares Theory
  5. Impact of Climate Change Parameters on Groundwater Level: Implications for Two Subsidence Regions in Iran Using Geodetic Observations and Artificial Neural Networks (ANN)
  6. Optimization of RFM Problem Using Linearly Programmed ℓ₁-Regularization
  7. Multi-GNSS-Weighted Interpolated Tropospheric Delay to Improve Long-Baseline RTK Positioning
  8. Function-Based Troposphere Tomography Technique for Optimal Downscaling of Precipitation
  9. Estimation of Surface Density Changes Using a Mascon Method in GRACE-like Missions
  10. Linking the Morphology and Ecology of Subtidal Soft-Bottom Marine Benthic Habitats: A Novel Multiscale Approach
  11. Modeling and Prediction of Regular Ionospheric Variations and Deterministic Anomalies
  12. Improving Offset Detection Algorithm of GNSS Position Time-Series Using Spline Function Theory
  13. An Automated PCA-Based Approach Towards Optimization of the Rational Function Model
  14. Experimental Design and Stochastic Modeling of Hydrodynamic Wave Propagation Within Cavities for Wind Tunnel Acoustic Measurements
  15. Geodetic Calibration Network for Total Stations and GNSS Receivers in Sub-Kilometer Distances with Sub-Millimeter Precision
  16. Seafloor Characterization Using Multibeam Echosounder Backscatter Data: Methodology and Results in the North Sea
  17. Unified Least-Squares Formulation of a Linear Model with Hard Constraints
  18. On the Application of Monte Carlo Singular Spectrum Analysis to GPS Position Time Series
  19. Robust Particle Swarm Optimization of RFMs for High-Resolution Satellite Images Based on K-Fold Cross-Validation
  20. Seafloor Classification in a Sand Wave Environment on the Dutch Continental Shelf Using Multibeam Echosounder Backscatter Data

Conclusion:

Alireza Amiri-Simkooei is a highly qualified candidate for the Research for Best Researcher Award. His strong academic background, diverse research interests, extensive publication record, and leadership roles in the academic community position him as a leader in his field. By focusing on broader collaborations, increasing public engagement, and adapting to emerging trends, he can further enhance his contributions to research and society. His track record of excellence indicates that he not only meets the criteria for this award but also has the potential to make even greater impacts in the future.