Kun He | Computer Science | Research Excellence Award

Assoc Prof Dr. Kun He | Computer Science | Research Excellence Award 

Renmin University | China

Dr. Kun He is an accomplished computer scientist and currently serves as an Associate Professor at Renmin University of China (since January 2023). His academic journey reflects a strong foundation in theoretical computer science, backed by extensive research experience across leading Chinese institutions. Before joining Renmin University, he worked at the Institute of Computing Technology (ICT), Chinese Academy of Sciences (CAS), first as an Assistant Researcher (2021–2022) and later as an Associate Researcher (2022). He also completed a postdoctoral fellowship at Shenzhen University between 2019 and 2021. Dr. He earned his Ph.D. in Computer Science from ICT, CAS in 2019 under the supervision of Prof. Xiaoming Sun. He also holds a Master’s degree from ICT, CAS and a Bachelor of Engineering in Computer Science from Wuhan University. His research centers on the theory of computing, with particular emphasis on probabilistic methods, sampling algorithms, quantum computing, combinatorial structures, and theoretical machine learning. His work has significantly advanced algorithmic techniques related to the Lovász Local Lemma (LLL), Holant problems, and random constraint satisfaction. Over the years, Dr. He has received numerous prestigious awards recognizing the impact and quality of his research. These include the New Hundred Stars of ICT (2021), the Outstanding Doctoral Dissertation Award of the China Computer Federation (2020), the Special Award for the President of CAS (2019), and the National Scholarship of China (2018). These honors highlight his early and sustained contributions to theoretical computer science. Dr. He has published extensively in top-tier venues such as SODA, STOC, FOCS, ITCS, and Random Structures & Algorithms. His notable works include breakthroughs on the Moser–Tardos algorithm, deterministic counting versions of the Lovász Local Lemma, sampling solutions to random CNF formulas, and quantum extensions of classical combinatorial frameworks. Several of his papers have been widely cited and recognized, including a top-downloaded publication in Random Structures & Algorithms (2020). Recently, his research continues to push theoretical boundaries, with upcoming papers on the phase transition of the Sinkhorn–Knopp algorithm and efficient approximation schemes for Holant problems. Dr. He also actively works on emerging topics involving perfect sampling and permutation constraints within the Lopsided LLL regime, with multiple manuscripts currently under submission. With strong expertise, a prolific publication record, and multiple high-impact contributions, Dr. Kun He stands as a leading figure in modern theoretical computer science.

Profiles: Scopus | Google Scholar

Featured Publications

He, K., Li, L., Liu, X., Wang, Y., & Xia, M. (2025). Variable version Lovász Local Lemma: A tale of two boundaries. Information and Computation, 105386.

He, K. (2025). Phase transition of the Sinkhorn-Knopp algorithm. arXiv preprint arXiv:2507.09711.

He, K., Li, Z., Qiu, G., & Zhang, C. (2025). FPTAS for Holant problems with log-concave signatures. In Proceedings of the 2025 Annual ACM–SIAM Symposium on Discrete Algorithms (SODA).

He, K., Qiu, G., & Sun, X. (2024). Sampling permutations satisfying constraints within the lopsided local lemma regime. arXiv preprint arXiv:2411.02750.

He, K., Qiu, G., & Sun, X. (2024). Sampling permutations satisfying constraints within and beyond the local lemma regime. arXiv e-prints, arXiv:2411.02750.

He, K., Li, Q., & Sun, X. (2023). Moser-Tardos algorithm: Beyond Shearer’s bound. In Proceedings of the 2023 Annual ACM–SIAM Symposium on Discrete Algorithms (SODA).

He, K., Wang, C., & Yin, Y. (2023). Deterministic counting Lovász Local Lemma beyond linear programming. In Proceedings of the 2023 Annual ACM–SIAM Symposium on Discrete Algorithms (SODA).

He, K., Wu, K., & Yang, K. (2023). Improved bounds for sampling solutions of random CNF formulas. In Proceedings of the 2023 Annual ACM–SIAM Symposium on Discrete Algorithms (SODA).

He, K., Wang, C., & Yin, Y. (2022). Sampling Lovász Local Lemma for general constraint satisfaction solutions in near-linear time. In 2022 IEEE 63rd Annual Symposium on Foundations of Computer Science (FOCS).

Mr. Muhammad Ahsan Saleem | Additive Manufacturing | Best Researcher Award

Mr. Muhammad Ahsan Saleem | Additive Manufacturing | Best Researcher Award

Nanjing University of Science and Technology, China

Muhammad Ahsan Saleem is a dedicated Mechatronics Engineer and interdisciplinary researcher based in Nanjing, China. He specializes in leveraging his creativity, technical expertise, and collaborative mindset to solve complex engineering challenges, with a focus on cutting-edge technologies such as 3D printing, machine learning, and advanced manufacturing techniques.

Profile

Scopus

Education 📚

Muhammad Ahsan Saleem is a highly accomplished engineer pursuing his Doctor of Engineering in Mechanical Engineering at Nanjing University of Science and Technology (NUST), China (2020–Present). His doctoral research emphasizes advanced manufacturing techniques, including 3D printing and machine learning applications in mechanical engineering.

Previously, he earned his Master of Engineering in Mechanical Engineering from NUST, China (2015–2018), where he deepened his expertise in precision engineering and experimental design, particularly focusing on innovative solutions for multi-material fabrication.

His academic journey began with a Bachelor of Science in Mechatronics Engineering from the University of Engineering and Technology (UET), Pakistan (2009–2013). During his undergraduate years, he explored interdisciplinary approaches to mechanical systems, robotics, and automation, laying a solid foundation for his advanced studies.

Experience 💼

Researcher | Nanjing University of Science and Technology, China (2020–Present)
Muhammad Ahsan Saleem is actively engaged in cutting-edge research focused on 3D printing, inkjet technologies, and the application of machine learning to optimize manufacturing processes. He has developed innovative experimental setups to analyze and enhance jetting behaviors for high-viscosity inks, leading to advancements in multi-material 3D printing for functional electronics such as resistors.

Mechatronics Engineer | Enginesound Automation Technology, Shanghai, China (2019–2020)
At Enginesound Automation Technology, he designed advanced calibration devices for textile machinery, utilizing Micro-Epsilon capacitive sensors. He also developed Android applications that integrated Bluetooth technologies to enable wireless data transfer and seamless system connectivity, showcasing his ability to bridge mechanical systems with digital solutions.

Trainee Engineer | Attock Refinery Limited, Pakistan (2013–2015)
During his tenure at Attock Refinery Limited, Muhammad ensured HVAC systems adhered to engineering standards and codes, maintaining precise documentation of processes. His role emphasized the importance of compliance and quality control in industrial systems.

Research Interests 🔬

Advanced Manufacturing: 3D Printing and Inkjet Technologies

Muhammad Ahsan Saleem specializes in exploring innovative approaches to 3D printing, focusing on inkjet-based technologies. His work emphasizes optimizing jetting behaviors for high-viscosity inks and advancing multi-material printing techniques, enabling the creation of complex functional components.

Machine Learning Applications in Engineering

He integrates machine learning algorithms into experimental and data-driven frameworks to enhance manufacturing precision. This includes predicting printing outcomes, optimizing parameters, and automating processes for greater efficiency and accuracy.

Structural Analysis of Multi-Material Components

Ahsan conducts structural investigations of multi-material components produced via advanced manufacturing methods. His expertise includes analyzing material properties and ensuring precision through techniques like scanning electron microscopy (SEM) and energy dispersive spectroscopy (EDS).

Functional Electronics and Material Science

His research also focuses on the development of functional electronics, such as resistors, through innovative material compositions. By combining conductive and insulating materials, he achieves precise resistivity levels and enhances the performance of printed electronic devices.

Awards & Certifications 🏆

Computer Vision and Image Processing Fundamentals (edX | IBM, 2024)

Machine Learning with Python (edX | IBM, 2022)

Python Data Structures (Coursera | University of Michigan, 2021)

Chinese for HSK 2 (Coursera | Peking University, 2021)

Registered Engineer (Pakistan Engineering Council, 2014)

Publications 📝

"A Novel Data-Driven Formulation for Predicting Jetting States and Printing Zones of High-Viscosity Nano-Silver Ink in Inkjet-Based 3D Printing" (Precision Engineering, November 2024, In Press). Link

"Influence of Silicon Carbide on Direct Powder Bed Selective Laser Process (Sintering/Melting) of Alumina" Published in Materials (2022, 15[2], 637). Cited by: 09 articles. Link

"Quantized Event-Triggered Feedback Control under Fuzzy System with Time-Varying Delay and Actuator Fault" Published in Nonlinear Analysis: Hybrid Systems (2020, Volume 35). Cited by: 16 articles. Link