Mr. Abhishek Setty | Machine Learning | Best Researcher Award

Mr. Abhishek Setty | Machine Learning | Best Researcher Award

Forschungszentrum Jülich, Germany

Author Profile

Orchid 

🎓 Early Academic Pursuits

Abhishek Setty’s academic journey reflects a dynamic blend of curiosity, diligence, and a passion for engineering and computation. He began his higher education at the Indian Institute of Information Technology, Design and Manufacturing (IIITDM) Kancheepuram, where he pursued a Bachelor of Technology in Mechanical Engineering. Graduating with distinction and an impressive CGPA of 9.2/10, Abhishek demonstrated an early aptitude for deep technical learning and problem-solving. His bachelor thesis, which earned a perfect grade, set the foundation for a lifelong commitment to the intersection of classical engineering and cutting-edge computational methods.

Motivated to explore further, Abhishek continued his academic pursuits in Germany, enrolling in the esteemed RWTH Aachen University for a Master’s program in Computer-Aided Conception and Production in Mechanical Engineering. With a final grade of 1.4, he not only excelled academically but also engaged in multiple research initiatives that reflected his growing interest in quantum computing, simulation, and machine learning. His mini-thesis—graded at the highest level (1.0)—focused on the application of tensor calculus in fiber composite materials, showcasing his ability to marry abstract mathematical theory with real-world engineering problems.

💼 Professional Endeavors

Abhishek’s professional timeline is marked by a series of research-driven positions across prestigious German institutions. His role at the Fraunhofer Institute for Mechanics of Materials (IWM) in Freiburg from April 2022 to May 2024 allowed him to work at the cutting edge of material mechanics and machine learning. As a student research assistant, he contributed to multiple high-impact projects, including a published paper on particle trajectory prediction using a graph-based interaction-aware model, which explores how machine learning can enhance discrete element simulations.

Prior to that, in 2020 and again in 2023, Abhishek worked at the Department of Continuum Mechanics, RWTH Aachen, where he explored the capabilities of quantum machine learning to solve differential equations. His master’s thesis culminated in a research paper on self-adaptive physics-informed quantum machine learning, published in a reputable journal. This experience deepened his technical prowess and cemented his passion for applying quantum computing in fluid mechanics and material modeling.

Currently, Abhishek is advancing his research career as a PhD student at Forschungszentrum Jülich, one of Europe’s leading interdisciplinary research centers. His doctoral work focuses on quantum computational fluid dynamics, a highly promising and futuristic domain that bridges the gap between quantum theory and continuum mechanics.

🔬 Contributions and Research Focus

Abhishek’s core research focus lies at the intersection of quantum computing, machine learning, and continuum mechanics. His contributions are significant in the realm of physics-informed machine learning, where he has explored how quantum algorithms can be utilized to solve traditionally complex differential equations. His work also spans predictive modeling in materials science, including novel questions such as:

  • Can machine learning replace FEM (Finite Element Method) models in commercial software like Abaqus?

  • How do structural irregularities like knots affect the strength of wood in different stress conditions?

  • Is it possible for biochar-reinforced concrete to rival steel in marine engineering applications?

These questions reflect not only technical depth but also a forward-looking curiosity, grounded in both theory and practical application.

🏅 Accolades and Recognition

Abhishek’s academic and research excellence has been consistently recognized. From receiving top grades in his bachelor’s and master’s theses to publishing peer-reviewed papers in internationally recognized journals, his contributions have earned the respect of his mentors and peers alike. He also holds certifications from Stanford University on platforms like EDX and Coursera in quantum mechanics, machine learning, and deep learning, signaling his commitment to continuous learning and interdisciplinary proficiency.

His role as a senior mentor for master’s students at RWTH Aachen in 2021 underscores his dedication to knowledge sharing and academic community building—a trait that goes beyond personal success to uplift others.

🌍 Impact and Influence

The impact of Abhishek’s work is already being felt across the domains of materials science, simulation engineering, and quantum computing. His research has practical implications for industries reliant on high-accuracy simulations, such as aerospace, mechanical design, and structural engineering. The published models and algorithms he has worked on could lead to more efficient and sustainable engineering solutions in the near future.

His integration of high-performance computing clusters, open-source tools like IBM Qiskit and Xanadu Pennylane, and theoretical insights from continuum mechanics positions him uniquely as a thought leader in quantum-enhanced engineering simulation.

🔮 Legacy and Future Contributions

Looking forward, Abhishek Setty is poised to make significant contributions to the emerging field of quantum computational mechanics. His current PhD research aims to unlock new paradigms in fluid dynamics using quantum algorithms, potentially reshaping how scientists and engineers simulate and solve multi-scale, high-complexity physical systems.

His legacy is being built not just through papers and code, but through a mindset of rigorous inquiry, creative thinking, and a willingness to challenge existing computational frontiers. With a global outlook and a strong foundation in both classical engineering and quantum computation, Abhishek represents the new generation of interdisciplinary researchers who are defining the future of science and technology.

📝Notable Publications

Particle trajectory prediction in discrete element simulations using a graph-based interaction-aware model

Authors: Abhishek Setty, Lukas Morand, Poojitha Ramachandra, Claas Bierwisch
Journal: Computational Materials Science
Year: 2025

 Self-adaptive physics-informed quantum machine learning for solving differential equations

Authors: Abhishek Setty, Rasul Abdusalamov, Felix Motzoi
Journal: Machine Learning: Science and Technology
Year: 2025

Dr. Hai Xue | Edge computing | Best Researcher Award

Dr. Hai Xue | Edge computing | Best Researcher Award

University of Shanghai for Science and Technology,

Profile

Google Scholar

🎓 Early Academic Pursuits

Dr. Hai Xue embarked on his academic journey in the field of computer engineering with a Bachelor of Science in Information and Communication Engineering from Konkuk University, Seoul, South Korea, in 2014. Driven by an insatiable curiosity for software and computing, he pursued his Master’s degree at Hanyang University, Seoul, where he specialized in Computer and Software under the guidance of Prof. Inwhee Joe. This period was crucial in shaping his foundational knowledge and research skills, which later fueled his contributions to edge computing and network science. Dr. Xue culminated his formal education with a Ph.D. in Computer Engineering from Sungkyunkwan University, Suwon, in 2020, where he worked under the mentorship of Prof. Hee Yong Youn. His doctoral research laid the groundwork for his future breakthroughs in dynamic resource allocation and federated learning.

🌟 Professional Endeavors

Dr. Xue’s professional career is marked by a series of prestigious positions that reflect his growing influence in the field of computer engineering. After earning his Ph.D., he served as a Research Professor at Korea University, Seoul, from September 2020 to September 2021. During this tenure, he collaborated with renowned researcher Prof. Sangheon Pack, contributing significantly to the domains of edge computing and network optimization. In September 2021, he transitioned to his current role as an Assistant Professor at the University of Shanghai for Science and Technology (USST), Shanghai, China. Here, he continues to engage in high-impact research, mentoring young scholars, and advancing cutting-edge technological solutions.

🔮 Contributions and Research Focus

Dr. Xue’s research interests are deeply rooted in dynamic resource allocation, federated learning, and edge computing. His contributions have led to substantial advancements in these areas, including:

  • Dynamic Pricing in Edge Offloading: His recent work on dynamic pricing-based near-optimal resource allocation is set to redefine how computational resources are distributed efficiently across networks.
  • Energy Harvesting in Edge Computing: His paper on dynamic differential pricing-based edge offloading systems with energy harvesting devices has been accepted by IEEE Transactions on Network Science and Engineering, highlighting his expertise in sustainable and energy-efficient computing.
  • Federated Learning Incentive Mechanisms: His study on Yardstick-Stackelberg pricing-based incentive mechanisms for federated learning in edge computing, accepted by Computer Networks, sheds light on optimizing collaborative learning models.
  • Neural Network Optimization: His work on dynamic pseudo-mean mixed-precision quantization (DPQ) for pruned neural networks, published in Machine Learning, underscores his ability to push the boundaries of artificial intelligence efficiency.

🏆 Accolades and Recognition

Dr. Xue’s contributions have not gone unnoticed. His publications in high-impact journals such as IEEE Transactions, Computer Networks, and Machine Learning underscore his academic excellence. His research has been classified under prestigious rankings, including CAS Q2 and JCR Q1, affirming its significance within the scientific community. These accolades reflect his unwavering commitment to innovation and the quality of his scholarly output.

🌐 Impact and Influence

Dr. Xue’s research has far-reaching implications in both academia and industry. His work in dynamic pricing mechanisms is influencing how network providers optimize their resource allocation, while his advancements in federated learning are paving the way for more secure and efficient decentralized AI applications. His insights into energy harvesting in edge computing hold promise for sustainable technological solutions, a pressing need in today’s energy-conscious world.

🌟 Legacy and Future Contributions

Looking ahead, Dr. Xue is poised to make even more significant contributions to computer engineering. His ongoing projects aim to refine the synergy between AI and edge computing, ensuring smarter, more adaptive network solutions. As an educator, he remains dedicated to nurturing the next generation of computing professionals, equipping them with the knowledge and skills necessary to tackle future challenges in technology.

📝Notable Publications

Dynamic load balancing of software-defined networking based on genetic-ant colony optimization

Author(s): H. Xue, K.T. Kim, H.Y. Youn
Journal: Sensors
Year: 2019

 Detection of falls with smartphone using machine learning technique

Author(s): X. Chen, H. Xue, M. Kim, C. Wang, H.Y. Youn
Journal: 2019 8th International Congress on Advanced Applied Informatics (IIAI-AAI)
Year: 2019

Packet Scheduling for Multiple‐Switch Software‐Defined Networking in Edge Computing Environment

Author(s): H. Xue, K.T. Kim, H.Y. Youn
Journal: Wireless Communications and Mobile Computing
Year: 2018

 Dynamic pricing based near-optimal resource allocation for elastic edge offloading

Author(s): Y. Xia, H. Xue, D. Zhang, S. Mumtaz, X. Xu, J.J.P.C. Rodrigues
Journal: arXiv preprint arXiv:2409.18977
Year: 2024

DPQ: dynamic pseudo-mean mixed-precision quantization for pruned neural network

Author(s): S. Pei, J. Wang, B. Zhang, W. Qin, H. Xue, X. Ye, M. Chen
Journal: Machine Learning
Year: 2024

Aizan Zafar-AI in HealthCare-Best Scholar Award

Professional Profile 

Early Academic Pursuits:

Aizan Zafar embarked on his academic journey with a Bachelor's degree in Information Technology from Guru Ghasidas Central University, Chhattisgarh, graduating with distinction and a commendable CGPA of 8.71 in 2016. This early academic success laid the foundation for his subsequent pursuits in the field of computer science.

He continued his educational journey by pursuing a Master's degree in Information Technology at the University of Hyderabad, Telangana. During this period (2017-2019), Aizan engaged in research on machine learning, focusing on an efficient approach for effective clustering using validity index. His dedication and scholarly pursuits earned him a CGPA of 8.1 in the first division with distinction.

Professional Endeavors:

Following his Master's degree, Aizan Zafar transitioned into a Ph.D. program at the prestigious Indian Institute of Technology Patna, commencing in July 2019. As a Ph.D. scholar, he delved into the realm of Natural Language Processing, particularly concentrating on Medical Question Answering and Dialogue Systems.

In the course of his doctoral journey, Aizan showcased exceptional research prowess by contributing to various projects and initiatives. His experience as a Teaching Assistant for courses such as Artificial Intelligence, Natural Language Processing, and Computer Network reflects his commitment to academic responsibilities.

Contributions and Research Focus:

Aizan's research endeavors have been prolific, spanning diverse areas within Natural Language Processing and Conversational AI. His notable contributions include the development of "Sevak," an intelligent Indian language chatbot, and "PERCURO," a holistic solution for clinical text employing conversational data for Question Answering systems.

Aizan's research has culminated in several published and accepted papers, demonstrating his expertise in knowledge-infused abstractive question answering systems, medical dialogue generation, and knowledge graph-assisted medical dialog generation. He has also showcased his commitment to advancing the field through organizing workshops and courses on Deep Learning for NLP.

Accolades and Recognition:

Aizan Zafar's academic prowess is underscored by his qualification in AIEEE (2012), GATE in 2017 (for M.Tech.), and GATE in 2019 (for Ph.D.). These achievements underscore his consistent dedication to academic excellence.

Impact and Influence:

Aizan's influence extends beyond his individual achievements. His organizational roles in workshops and courses, such as the GIAN Workshop on Deep Learning Techniques for Conversational AI and the CEP course on Deep Learning for NLP, highlight his commitment to knowledge dissemination and community building.

Legacy and Future Contributions:

As an emerging scholar in the field of Natural Language Processing and Conversational AI, Aizan Zafar's legacy is shaped by his significant contributions to medical question answering systems. With ongoing works focusing on enhancing abstractive question answering through first-order logic, Aizan is poised to leave a lasting impact on the intersection of AI and healthcare.

Looking forward, Aizan's dedication to learning, collaborative spirit, and leadership qualities position him as a future leader in the field, with the potential to shape the trajectory of Conversational AI and Natural Language Processing. His multifaceted approach, from research to teaching and organizational roles, signifies a holistic commitment to the advancement of knowledge in the realm of computer science and AI.

Notable Publications

 

Citation

A total of 14 citations for his publications, demonstrating the impact and recognition of his research within the academic community.

  • Citations     14           14
  • h-index       3              3
  • i10-index    0             0