Jiangjun Peng | Mathematics | Best Researcher Award – 1961

Assoc. Prof. Jiangjun Peng | Mathematics | Best Researcher Award 

Associate Professor at Northwestern Polytechnical University | China

Asso. Prof. Jiangjun Peng is a distinguished scholar at the School of Mathematics and Statistics, Northwestern Polytechnical University, whose academic journey has been defined by dedication to advancing high-dimensional data analysis and intelligent algorithms. With a career spanning both academia and industry, he has significantly contributed to the areas of tensor data analysis, deep learning, and hyperspectral image processing. His research outcomes have received recognition in leading international journals, often being cited widely across disciplines. Beyond his technical expertise, he has actively engaged with the academic community as a reviewer, speaker, and contributor to professional associations.

Profile:

Orcid | Google Scholar

Education:

Asso. Prof. Jiangjun Peng’s educational background is deeply rooted in applied mathematics and statistics. He completed his bachelor’s degree in computational mathematics at Northwestern University, securing a strong foundation in analytical and numerical methods. His postgraduate studies at Xi’an Jiaotong University included both master’s and doctoral degrees, where he trained under the guidance of eminent professors. His doctoral research emphasized robust mathematical models for image processing, supported by rigorous statistical frameworks. This academic pathway equipped him with the technical knowledge, critical thinking, and problem-solving skills that now shape his innovative approaches to high-dimensional data representation.

Experience:

Asso. Prof. Jiangjun Peng’s professional experience bridges academia, industry, and collaborative research institutions. He began his career contributing as a researcher at the Tencent Video Search Center, where he developed advanced algorithms for large-scale video analysis. Later, he expanded his expertise as an assistant researcher at the Chinese University of Hong Kong, focusing on smart city applications and computational methods. Currently serving as an associate professor at Northwestern Polytechnical University, he leads multiple funded projects in collaboration with government, academic, and industrial bodies. His cross-sectoral experience underscores his ability to translate theoretical models into impactful real-world applications.

Research Interest:

Asso. Prof. Jiangjun Peng’s research interests lie at the intersection of applied mathematics, artificial intelligence, and remote sensing. He is particularly focused on tensor data analysis, hyperspectral image processing, and deep learning methods for high-dimensional data. His work involves developing robust algorithms that improve data recovery, denoising, and representation under noisy or incomplete conditions. These contributions have advanced the fields of image security, medical imaging, and environmental monitoring. He is also passionate about bridging model-driven and data-driven methodologies, enabling new solutions that integrate theoretical mathematics with cutting-edge machine learning for scientific and industrial innovation.

Awards and Honors:

Asso. Prof. Jiangjun Peng has earned recognition through prestigious institutional and industry awards that reflect both academic excellence and applied research contributions. His early research was honored with multiple scholarships and university-level accolades, highlighting his scholarly potential. His innovative work at Tencent earned him an industry award for advancing video data applications, while his collaborative project with Huawei received the Huawei Spark Award, showcasing successful academia-industry synergy. More recently, he was selected among the Rising Stars of Northwestern Polytechnical University, a distinction reserved for outstanding young faculty whose work shapes the future of scientific and technological advancement.

Publications:

Title: Hyperspectral image restoration via total variation regularized low-rank tensor decomposition
Citation: 474
Year of Publication: 2017

Title: Enhanced 3DTV regularization and its applications on HSI denoising and compressed sensing
Citation: 188
Year of Publication: 2020

Title: Guaranteed tensor recovery fused low-rankness and smoothness
Citation: 108
Year of Publication: 2023

Title: Exact Decomposition of Joint Low Rankness and Local Smoothness Plus Sparse Matrices
Citation: 93
Year of Publication: 2022

Title: Classical scoring functions for docking are unable to exploit large volumes of structural and interaction data
Citation: 90
Year of Publication: 2019

Title: Fast Noise Removal in Hyperspectral Images via Representative Coefficient Total Variation
Citation: 65
Year of Publication: 2022

Title: Learnable representative coefficient image denoiser for hyperspectral image
Citation: 16
Year of Publication: 2024

Conclusion:

Asso. Prof. Jiangjun Peng stands as a highly impactful researcher, educator, and innovator whose career seamlessly integrates theoretical mathematics with practical technological applications. His contributions to tensor analysis, hyperspectral imaging, and deep learning have not only advanced scientific understanding but also enabled real-world breakthroughs in security, healthcare, and environmental monitoring. Through prestigious awards, widely cited publications, and influential collaborations with industry leaders, he has demonstrated both academic brilliance and societal relevance. His nomination for this award is a recognition of his exceptional potential to continue shaping the future of data science and applied mathematics.

Hassan Shahzad | Mathematics | Best Scholar Award

Mr. Hassan Shahzad | Mathematics | Best Scholar Award

Academic Officer at Department of mathematics, Capital University of Science and Technology, Islamabad, Pakistan.

Hassan Shahzad, an MPhil graduate in Mathematics from Capital University of Science and Technology (CUST), Islamabad, specializes in applied and computational mathematics. With a strong academic background, he was recognized on the Dean’s Honor Roll and actively contributes to research, having published one article and several under review. Hassan is proficient in MATLAB, LaTeX, C, and C++, showcasing adaptability in interdisciplinary collaborations. Currently serving as an Academic Officer in the Department of Mathematics at CUST, he previously worked as a mathematics teacher in reputable institutions. His long-term ambition is to be among the top 2% of researchers globally.

Professional Profile:

ORCID Profile

Education 🎓📖

  • MPhil in Mathematics (2021-2024) – CUST, Islamabad
    • Courses: Heat and Mass Transfer, Computational Fluid Dynamics, Electromagnetic Wave Theory, Perturbation Method, General Relativity
  • BS in Mathematics (2016-2020) – International Islamic University, Islamabad
    • Courses: Complex Analysis, Fluid Mechanics, Numerical Methods, Real & Functional Analysis, Differential Geometry

Experience 💼📊

  • Academic Officer (2024-Present) – Capital University of Science and Technology
    • Managed course allocation, academic scheduling, and student concerns
    • Organized the Annual Mathematics Conference and facilitated departmental communication
  • Senior Mathematics Teacher (2022-2024) – Aamirr Public School, Rawalpindi
    • Developed instructional materials and taught high school Mathematics
  • Mathematics Teacher (2020-2021) – International Public School, Rawalpindi
    • Designed lesson plans and evaluated students’ academic progress

Professional Development 🚀📚

Hassan Shahzad continuously enhances his expertise through professional training and research engagements. He has completed multiple online courses, including Engineering Mechanics, FEM Analysis, and Real Numbers and Monomials. His role as an Academic Officer has further honed his skills in academic administration, conference organization, and departmental coordination. Passionate about numerical computing, he is proficient in MATLAB, LaTeX, and C++, enabling him to tackle complex mathematical problems. Actively involved in research, he collaborates with scholars to explore new mathematical models and techniques. His dedication to professional growth and interdisciplinary collaboration defines his academic and research journey.

Research Focus 🔬📊

Hassan Shahzad specializes in applied and computational Mathematics , particularly in heat and mass transfer, fluid dynamics, and entropy analysis. His research explores non-Newtonian fluid models, hybrid nanofluids, and magnetohydrodynamics (MHD). He applies numerical techniques such as finite difference methods, perturbation methods, and boundary value problem-solving for real-world applications. His studies involve entropy generation, Cattaneo–Christov heat flux, and electromagnetic wave interactions in fluid flows. His work aims to optimize heat and mass transfer processes in engineering and medical applications. With multiple publications and ongoing research, he strives to contribute significantly to computational fluid dynamics and thermal sciences.

Honors & Awards 🏆🎖

  • Certificate of Excellence (2025) – Recognized for organizing the CUST Annual Conference on Mathematics
  • Certificate of Participation (2023) – Participated in the CUST Annual Conference on Mathematics
  • Dean’s Honor Roll (Spring 2022) – Awarded for academic excellence at CUST

Publication Top Notes

  • Forchheimer model and generalized Fourier and Fick heat flux in water-based Williamson hybrid nanofluid flow over a stretched surface under Lorentz force
    📅 Year: 2024
    ✍️ Authors: Hassan Shahzad, M. Sagheer
    🔗 DOI: 10.1088/1402-4896/ada31f
    📖 Journal: Physica Scripta

  • Cattaneo–Christov double diffusion model for the entropy analysis of a non-Darcian MHD Williamson nanofluid
    📅 Year: 2024
    ✍️ Authors: Muhammad Sagheer, Z. Sajid, Shafqat Hussain, H. Shahzad
    🔗 DOI: 10.1080/10407782.2024.2380365
    📖 Journal: Numerical Heat Transfer, Part A: Applications