Ejup Hoxha | Robotics | Best Researcher Award

Mr Ejup Hoxha | Robotics | Best Researcher Award

PhD Candidate, The City College of New York, United States

Ejup Hoxha is a Machine Learning Engineer at Amazon Web Services (AWS) in New York, specializing in Large Language Models (LLMs), time series forecasting, and machine learning/deep learning. He is also a PhD candidate in Electrical Engineering at The City College of New York. With experience in robotics, sensor fusion, visual SLAM, and computer vision, Ejup contributes significantly to the field of non-destructive testing (NDT). His work spans across robotics, automation, and software development, making him a versatile and innovative engineer. Ejup has contributed to multiple research projects and has served as an adjunct lecturer, teaching courses related to robotics and engineering. His research, aimed at improving construction and infrastructure processes, has earned recognition in prestigious journals and conferences.

Professional Profile

Google Scholar

Scopus

Strengths for the Award

Ejup Hoxha has demonstrated an exceptional ability to merge cutting-edge machine learning and robotics technologies with practical applications in infrastructure inspection, particularly in non-destructive testing (NDT) and robotic systems. His contributions to fields like Ground Penetrating Radar (GPR) imaging, robotic inspection, and subsurface defect mapping are groundbreaking, as evidenced by his high-quality publications and their citations in top-tier journals and conferences. Notably, his work on automated GPR reconstruction and impact-echo methods for concrete inspection is both innovative and impactful, addressing real-world challenges in construction and infrastructure maintenance. His strong expertise in robotics, reinforcement learning (RL), and sensor fusion enhances his ability to propose novel solutions in both academic and industrial settings. Furthermore, his leadership in developing secure and scalable systems at AWS further solidifies his role as a pioneering researcher.

Areas for Improvements

While Ejup has achieved great success in his technical work, expanding his focus to the commercial viability and broader industrial applications of his research could make his innovations even more impactful. His future work could benefit from fostering collaborations with multidisciplinary teams to integrate more cross-sector knowledge, which would help create versatile and adaptable systems that address a broader range of industry needs. Additionally, increasing his outreach and visibility through more industry-driven projects, real-world implementation, and knowledge-sharing platforms could further enhance the practical application and adoption of his work.

Education

Ejup Hoxha is currently pursuing a PhD in Electrical Engineering at The City College of New York. He holds a Master of Philosophy in Electrical Engineering (2023) from the same institution. Ejup completed a Master of Science in Computer Engineering (2020) and a Master of Science in Computerized Automation and Robotics from the University of Pristina in Kosovo. His educational foundation began with a Bachelor of Science in Electrical and Computer Engineering, specializing in Automation, from the University of Pristina in 2015. Ejup’s rigorous academic background supports his expertise in machine learning, robotics, and control systems, enabling him to lead innovative research and practical applications in his field.

Experience

Ejup Hoxha currently works as a Machine Learning Engineer II at AWS, where he specializes in developing automated LLM evaluation methods and fine-tuning systems. Prior to this, he was a Software Development Engineer I at AWS, responsible for designing secure, scalable, distributed systems. As a Graduate Research Assistant and Adjunct Lecturer at The City College of New York, Ejup led robotics projects involving reinforcement learning (RL), sensor fusion, visual SLAM, and computer vision. He has also worked as a Robotic Systems Engineer at InnovBot LLC, where he developed sensor fusion and control algorithms. Additionally, Ejup has experience in SCADA software development and automation, gained during his roles at N.P. INET and Call Home Electronics in Kosovo.

Awards and Honors

Ejup Hoxha has received recognition for his contributions to robotics and machine learning. His work in robotics, particularly in the area of robotic inspection and subsurface defect mapping, has been presented in renowned conferences and journals. He has been cited for his research on ground penetrating radar (GPR) and robotic systems for underground utilities. Ejup’s academic excellence has been acknowledged through multiple research awards, including his publication in IEEE Sensors Journal and the Journal of Computing in Civil Engineering. His achievements reflect his deep commitment to advancing robotics and NDT technologies, earning him the respect of peers in the engineering community.

Research Focus

Ejup Hoxha’s research focuses on the intersection of machine learning, robotics, and non-destructive testing (NDT). He specializes in robotic systems for infrastructure inspection, employing techniques like reinforcement learning, sensor fusion, and computer vision to enhance the efficiency of underground utility surveys and concrete inspections. His work with ground penetrating radar (GPR) and impact-echo methods aims to improve subsurface defect mapping and utility reconstruction. Additionally, Ejup’s research explores the application of artificial intelligence and deep learning to automation systems, with a focus on time-series forecasting and the development of automated LLM evaluation methods. His interdisciplinary research contributes to the evolution of smart systems for infrastructure monitoring and maintenance.

Publication Top Notes

  • GPR-based model reconstruction system for underground utilities using GPRNet 📑
  • Improving 3D Metric GPR Imaging Using Automated Data Collection and Learning-based Processing 📘
  • Robotic inspection of underground utilities for construction survey using ground penetrating radar 📍
  • Robotic Inspection and Subsurface Defect Mapping Using Impact-echo and Ground Penetrating Radar 🔧
  • Robotic Inspection and Characterization of Subsurface Defects on Concrete Structures Using Impact Sounding 🏗️
  • Automatic Impact-sounding Acoustic Inspection of Concrete Structure 🔊
  • Robotic Inspection and 3D GPR-based Reconstruction for Underground Utilities 🛰️
  • Contrastive learning for robust defect mapping in concrete slabs using impact echo 🎯

Conclusion

Ejup Hoxha is a deserving candidate for the Best Researcher Award. His innovative contributions to robotics, machine learning, and infrastructure inspection place him at the forefront of research in these fields. His ability to leverage advanced AI and robotics technologies to address challenges in non-destructive testing and construction is exemplary. With continued focus on collaboration and the commercialization of his work, Ejup has the potential to make an even greater impact on both academic and industrial domains. His research accomplishments, technical expertise, and commitment to advancing knowledge in his field make him an excellent contender for this prestigious award.

Li Ding | Robotics | Best Researcher Award

Prof. Li Ding | Robotics | Best Researcher Award

Professor, Jiangsu University of Technology, China

Ding Li is an Associate Professor at the College of Mechanical Engineering, Jiangsu University of Technology. With a robust academic background and extensive research experience, he specializes in mechatronic engineering, particularly focusing on robotic systems and control dynamics.

Profile

Scopus

🎓 Education

Ding Li completed his educational journey with a Ph.D. in Mechatronic Engineering from Nanjing University of Aeronautics and Astronautics (2013-2016). Prior to this, he earned a Master’s in Mechanical Engineering from Anhui University of Science and Technology (2011-2013) and a Bachelor’s in Mechanical Manufacturing and Automation from Jiangsu University of Technology (2007-2011).

💼 Experience

Ding has held various academic positions, including:

  • Associate Professor (June 2019 – Present) at Jiangsu University of Technology
  • Associate Professor (November 2021 – August 2022) at the National Natural Science Foundation of China
  • Lecturer (October 2016 – May 2019) at Jiangsu University of Technology
  • Lecturer (March 2018 – March 2019) at Hong Kong Polytechnic University

🔬 Research Interests

Ding’s research interests encompass the dynamics and control of robotic systems, particularly in areas such as cable-driven manipulators, intelligent operating flying robots, and hydraulic systems. His work aims to enhance automation and efficiency in various engineering applications.

🏆 Awards

Ding Li has received several prestigious accolades, including:

  • First Prize for Science and Technology Progress from the China Mechanical Engineering Society (3rd class, 2022)
  • Outstanding Youth Key Teacher Award from Jiangsu University’s “Blue Project” (2022)
  • Changzhou Natural Science Excellence Award (2nd prize, 2019)

📚 Publications Top Notes

Ding Li has contributed significantly to academic literature, with notable publications including:

Optimal Joint Space Control of a Cable-Driven Aerial Manipulator (Computer Modeling in Engineering & Sciences, 2023)

Observer-Based Control for a Cable-Driven Aerial Manipulator under Lumped Disturbances (CMES – Computer Modeling in Engineering & Sciences, 2023)

Adaptive Robust Control via a Nonlinear Disturbance Observer for Cable-driven Aerial Manipulators (International Journal of Control, Automation and Systems, 2023)

Francisco J. G. Silva – Robotics – Excellence in Research

Francisco J. G. Silva - Robotics - Excellence in Research

Polytechnic Institute of Porto - Portugal

AUTHOR PROFILE

SCOPUS

🎓 ACADEMIC AND PROFESSIONAL EDUCATION

Francisco J. G. Silva is a Mechanical Engineer with extensive qualifications, including Habilitation, PhD, MSc, and BSc degrees. His educational background is complemented by a substantial career in both academic teaching and industrial research, bridging the gap between scientific knowledge and practical application.

🏛️ UNIVERSITY TEACHING AND ADMINISTRATION

Silva has served as an Associate Professor with Habilitation at ISEP – School of Engineering, Polytechnic of Porto (IPP), where he has been instrumental in shaping the mechanical engineering curriculum and directing the master’s degree program. He has also held significant administrative roles, including Director of the BSc Degree in Mechanical Engineering at ESEIG and Sub-Director of the Mechanical Engineering Department at ISEP.

📚 RESEARCH AND PUBLICATIONS

With over 300 papers published in prestigious journals such as ELSEVIER, SPRINGER, and MDPI, Silva's research encompasses a broad spectrum of topics within Mechanical Engineering, Materials Science, and Industrial Engineering. His work has significantly contributed to advancements in advanced manufacturing processes, materials characterization, and additive manufacturing.

📝 BOOKS AND EDITORIAL WORK

Silva is a prolific author and editor, having published 16 books, including three written in 2023. He has contributed to numerous special issues as a Guest Editor for renowned journals, showcasing his expertise in various fields. His role as founder of the Journal of Coating Science and Technology further highlights his impact on the scientific community.

🌐 CONFERENCE LEADERSHIP AND COMMITTEES

He has been an active participant and leader in the international conference circuit, serving as General Chair of FAIM 2023 and a member of several scientific committees for conferences across the globe. His involvement in these conferences underscores his commitment to advancing the field through collaborative and innovative research.

🏆 RECOGNITIONS AND AWARDS

Silva’s contributions to the field have been recognized with multiple accolades, including the Top Reviewer Awards from Publons and MDPI. He has also received Best Paper Awards and other honors, reflecting his esteemed position in the academic and research community.

🚀 CURRENT PROJECTS AND FUTURE INITIATIVES

Currently, Silva is leading the DRIVOLUTION project at ISEP, a research initiative focused on advanced manufacturing technologies, with a funding of 1.5 million euros. His ongoing projects and research efforts continue to drive advancements in mechanical engineering and materials science, contributing to both academic and industrial advancements.

NOTABLE PUBLICATION

Calcium phosphate–calcium titanate composite coatings for orthopedic applications
Authors: J.E. Arce, A.E. Arce, Y. Aguilar, L. Yate, S. Moya, C. Rincón, O. Gutiérrez
Year: 2016
Journal: Ceramics International

Production and characterization of aluminum powder derived from mechanical saw chips and its processing through powder metallurgy
Authors: A.E.A.L.M. Rojas-Díaz, L.E. Verano-Jiménez, E. Muñoz-García, J. Esguerra-Arce
Year: 2019
Journal: Powder Technology

The evolution of the microstructure and properties of ageable Al-Si-Zn-Mg alloy during the recycling of milling chips through powder metallurgy
Authors: P.A. Pulido-Suárez, K.S. Uñate-González, J.G. Tirado-González, J. Esguerra-Arce
Year: 2020
Journal: Journal of Materials Research and Technology

Influence of the Al content on the in vitro bioactivity and biocompatibility of PVD Ti1−xAlxN coatings for orthopedic applications
Authors: A. Esguerra-Arce, J. Esguerra-Arce, L. Yate, C. Amaya, L.E. Coy, Y. Aguilar, et al.
Year: 2016
Journal: RSC Advances

Morteros geopolimericos reforzados con fibras de carbono basados en un sistema binario de un subproducto industrial
Authors: S. Bernal, J. Esguerra, J. Galindo, R.M. de Gutiérrez, E. Rodríguez, et al.
Year: 2009
Journal: Revista Latinoamericana de Metalurgia y Materiales

Lili Nurliyana Abdullah – computer technology – Best Researcher Award

Lili Nurliyana Abdullah - computer technology - Best Researcher Award

UPM - Malaysia

AUTHOR PROFILE

Scopus

EARLY ACADEMIC PURSUITS

Lili Nurliyana Abdullah's academic journey began with a Diploma in Computer Science from Universiti Pertanian Malaysia in 1990. She went on to earn a Bachelor's degree in Computer Science from Universiti Putra Malaysia in 1992, graduating with a 2nd Class Upper division. Her pursuit of higher education continued in the UK, where she obtained a Master in Engineering with a specialization in Telematics from the University of Sheffield in 1996. Lili's academic endeavors culminated in a Ph.D. in Information Science from the National University of Malaysia in 2007.

PROFESSIONAL ENDEAVORS

Lili's professional career spans various prestigious roles and institutions. She started as a tutor in Computer Science at UPM in 1993 and progressed to become a lecturer and then an Associate Professor in the Multimedia Department. She also served as the Head of the Multimedia Department at UPM from 2009 to 2012. Beyond academia, she worked as a Project Consultant at Catapult Studios and held teaching attachments and training roles at several universities, including Univ Taibah in Saudi Arabia and L.N. Gumilyov Eurasian National University in Kazakhstan.

CONTRIBUTIONS AND RESEARCH FOCUS

Lili Nurliyana Abdullah's research primarily focuses on computer technology and its applications. Her expertise in multimedia, digital content, and green computing has led to significant contributions in these fields. She has been actively involved in curriculum design, project consultancy, and professional development training, particularly in the areas of multimedia and STEM. Lili's dedication to green computing is evident through her certifications and her role in the Malaysian Communications and Multimedia Commission's Green IT initiatives.

IMPACT AND INFLUENCE

Lili's work has had a profound impact on both academic and professional communities. She has been recognized with numerous awards, including the Lifetime Achievement Award from the International Scientist Awards on Engineering, Science, and Medicine in 2022, and the Outstanding Educator Award from Lattice Science Publication in 2021. Her contributions to computer technology and green computing have influenced policy making, curriculum development, and environmental sustainability in IT practices.

ACADEMIC CITES

Lili's scholarly work is highly regarded, with numerous citations reflecting her influence in the academic community. Her research has been widely published and cited, contributing significantly to the fields of computer technology, green computing, and multimedia applications. She has also served as a peer reviewer and editorial board member for several esteemed journals and conferences, further establishing her reputation as a leading expert in her field.

LEGACY AND FUTURE CONTRIBUTIONS

Lili Nurliyana Abdullah's legacy lies in her pioneering contributions to computer technology and green computing. Her work has laid the foundation for future research and development in sustainable IT practices and multimedia technology. As she continues to innovate and collaborate, Lili's future contributions are expected to further advance these fields, fostering a more sustainable and technologically advanced society.

COMPUTER TECHNOLOGY

Throughout her career, Lili Nurliyana Abdullah has focused on advancing computer technology through her research, teaching, and professional endeavors. Her work on digital content and multimedia applications has enhanced the educational landscape, while her commitment to green computing has promoted sustainable IT practices. Lili's dedication to computer technology is reflected in her extensive professional engagements, certifications, and contributions to policy making and curriculum development in the field. As a recognized leader in computer technology, she continues to inspire and influence future generations of researchers and practitioners.

NOTABLE PUBLICATION

Students’ satisfaction levels of an immersive extended reality for engine assembly tasks in engineering empirical education 2023

Deep learning mango fruits recognition based on tensorflow lite 2023

Playing Gamelan Bonang in the Air: User Requirements for Designing a Digital Musical Instrument for the Malay Bonang 2022 (3)

Comparison of Edge Detection Algorithms for Texture Analysis on Copy-Move Forgery Detection Images 2022 (2)