Prof. Ting Gao | Explainable AI | Best Researcher Award

Ting Gao | Explainable AI | Best Researcher Award

Ting Gao, Huazhong University of Science and Technology,China

Dr. Ting Gao (高婷) is an accomplished Associate Professor at Huazhong University of Science and Technology 🎓, with deep expertise in applied mathematics, stochastic systems, and explainable AI 🤖. She earned her Ph.D. from Illinois Institute of Technology 🇺🇸 and previously contributed to top tech companies like Twitter 🐦 and Machine Zone 🎮 as a data scientist and machine learning engineer. Her research spans reinforcement learning, privacy-preserving neural networks, and dynamic system modeling 🧠📊. With a strong interdisciplinary approach, she applies mathematical theory to real-world problems in neuroscience, finance, and 5G communication 🌐💡.

Professional Profile : 

Google Scholar

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Summary of Suitability :

Dr. Ting Gao exemplifies the qualities of a leading researcher through her:

  • Academic Excellence: Holding a Ph.D. from the Illinois Institute of Technology and serving as an Associate Professor at Huazhong University of Science and Technology.

  • Industry Contributions: Her impactful roles at Twitter and Machine Zone showcase her ability to apply research in real-world, high-performance environments.

  • Innovative Research: Her work intersects applied mathematics, reinforcement learning, privacy-preserving neural networks, and explainable AI, contributing to cutting-edge developments in AI and system modeling.

Education 🎓 & Experience :

🎓 Education

  • 🏫 Ph.D. in Applied Mathematics – Illinois Institute of Technology (2010–2015) 🇺🇸

  • 📘 M.S. in Applied Mathematics – Southwest University (2007–2010) 🇨🇳

  • 📗 B.S. in Mathematics – Southwest University (2003–2007) 🇨🇳

💼 Experience

  • 👩‍🏫 Associate Professor – Huazhong University of Science and Technology (2021–Present)

  • 🧠 Machine Learning Engineer II – Twitter, San Francisco (2018–2020)

  • 💼 Senior Data Scientist / Tech Lead – Machine Zone, Palo Alto (2017–2018)

  • 📊 Data Scientist – Machine Zone, Palo Alto (2016–2017)

  • 📈 Data Analyst – Machine Zone, Palo Alto (2015–2016)

  • 👩‍🔬 Graduate Research & Teaching Assistant – Illinois Institute of Technology (2010–2014)

  • 🔬 Researcher – Institute for Pure and Applied Mathematics, UCLA (2012–2013)

Professional Development :

Dr. Gao’s career exemplifies a dynamic blend of academia and industry 💡💼. She has led impactful research in stochastic systems, deep learning, and explainable AI 🧠📉, publishing results and leading innovation across various sectors. Her industry roles honed skills in large-scale systems, reinforcement learning, and optimization for business intelligence 💰📊. She’s mentored interns, collaborated across multidisciplinary teams, and developed tools and models influencing user behavior analytics, 5G communication, and healthcare diagnostics 🚀📡. With hands-on experience in both theory and practice, Dr. Gao remains committed to driving forward-thinking solutions at the intersection of math, computing, and human-centered applications 🌟🤖.

Research Focus :

Dr. Ting Gao’s research focuses on stochastic dynamical systems under non-Gaussian noise 🌪️📐, with applications in chemistry, biophysics, and brain science 🧬🧠. Her work includes uncovering latent dynamics, modeling effective reduced-order systems, and exploring reinforcement and meta-learning strategies 🧠💻. She’s also active in explainable AI (XAI), reservoir computing, and privacy-preserving techniques in deep learning 🔒🤖. Applications of her work span functional brain network construction, 5G MIMO communication, investment optimization in finance 💹, and secure neural computing 🧠🛡️. Her interdisciplinary approach integrates math, AI, and real-world complexity, making significant contributions to scientific and technological progress 📈🔬.

Awards and Honors :

📌 While specific awards or honors are not listed in the CV, her professional trajectory reflects high-impact roles at Twitter 🐦 and Machine Zone 🎮, leadership in research and development, and a faculty position at a top Chinese university 🎓—indicators of professional excellence and recognition 🌟.

Publication Top Notes :

1. Mean Exit Time and Escape Probability for Dynamical Systems Driven by Lévy Noises
  • Journal: SIAM Journal on Scientific Computing

  • Volume/Issue/Pages: 36 (3), A887–A906

  • Year: 2014

  • Citations: 110

  • Summary: This paper explores two key quantities in stochastic dynamical systems driven by Lévy noises: the mean exit time and escape probability. These quantities measure how long a particle remains within a domain and the likelihood it exits through a specific part of the boundary. The authors derive integro-differential equations governing these quantities and develop numerical methods to solve them. The study is significant in modeling systems influenced by jump-like random effects, such as in physics, biology, and finance.

2. Fokker–Planck Equations for Stochastic Dynamical Systems with Symmetric Lévy Motions
  • Journal: Applied Mathematics and Computation

  • Volume/Pages: 278, 1–20

  • Year: 2016

  • Citations: 68

  • Summary: This work presents the Fokker–Planck equations associated with stochastic differential equations (SDEs) driven by symmetric α-stable Lévy motions. These equations describe the evolution of probability densities of stochastic systems with jumps. The authors derive generalized nonlocal Fokker–Planck equations and propose numerical methods for their solution. This paper contributes to the theoretical foundation and computational tools for understanding systems under non-Gaussian noise.

3. Neural Network Stochastic Differential Equation Models with Applications to Financial Data Forecasting
  • Journal: Applied Mathematical Modelling

  • Volume/Pages: 115, 279–299

  • Year: 2023

  • Citations: 53

  • Summary: Combining machine learning and stochastic analysis, this study introduces neural network-based stochastic differential equation (SDE) models for financial time series forecasting. The model captures both deterministic trends and stochastic fluctuations in financial data. It uses data-driven training to estimate drift and diffusion components. The proposed hybrid approach improves prediction accuracy and model interpretability, making it valuable in quantitative finance and econometrics.

4. Detecting the Maximum Likelihood Transition Path from Data of Stochastic Dynamical Systems
  • Journal: Chaos: An Interdisciplinary Journal of Nonlinear Science

  • Volume: 30 (11)

  • Year: 2020

  • Citations: 33

  • Summary: This paper introduces a method to identify the maximum likelihood transition path (MLTP) between metastable states in stochastic systems based on observed data. The method combines ideas from large deviation theory and data assimilation to reconstruct probable paths of transitions under noise. This has applications in predicting rare events in climate dynamics, molecular systems, and neural activity.

5. Mathematical Analysis of an HIV Model with Impulsive Antiretroviral Drug Doses
  • Journal: Mathematics and Computers in Simulation

  • Volume/Issue/Pages: 82 (4), 653–665

  • Year: 2012

  • Summary: The authors investigate an HIV/AIDS model incorporating impulsive differential equations to simulate periodic antiretroviral therapy (ART). They analyze the stability of the disease-free and endemic equilibria under different drug dosing strategies. The results offer insight into optimizing treatment regimens and controlling infection dynamics. The paper blends mathematical modeling with biomedical applications, highlighting the impact of timed interventions.

 

Arifur Rahman | Machine Learning | Best Researcher Award

Arifur Rahman | Machine Learning | Best Researcher Award

Mr. Arifur Rahman, NAGAD Digital Financial Service, Bangladesh

Arifur Rahman 🎓 is a passionate researcher and software engineer from Bangladesh 🇧🇩, specializing in Machine Learning 🤖, Deep Learning 🧠, NLP 📚, and Bioinformatics 🧬. A graduate of KUET in Computer Science and Engineering 💻, he has excelled in both academia and industry. Currently, he serves as a Full Stack Developer 🧑‍💻 at NAGAD Digital Financial Service, contributing to innovative supply chain projects. Arifur is also an active researcher with several IEEE and Elsevier publications 📝, and has earned recognition in programming contests 🏆. His dedication to applied AI and system development showcases a unique blend of technical and research excellence 🚀.

🌍 Professional Profile

Google Scholar

🎓 Education

  • 🎓 B.Sc. in Computer Science and Engineering, KUET (2018 – 2023)

    • 📊 CGPA: 3.35/4.00; Final Two Years CGPA: 3.73/4.00

  • 🏫 Noakhali Govt. College (2015 – 2017)

    • 🌟 GPA: 5.00/5.00 (Cumilla Board Scholarship Winner)

👨‍💼 Experience

  • 🧑‍💻 Software Engineer, NAGAD Digital Financial Service (Feb 2024 – Present)

    • 💼 Full Stack Developer in PRISM (Supply Chain Management) using Flutter, Java Spring Boot, PHP

  • 🔬 Research Engineer (NLP), AIMS Lab, United International University (Oct 2023 – Feb 2024)

    • 📚 Worked on Recommender Systems and published in IEEE Access

  • 👨‍💻 Software Engineer, Nazihar IT Solution Ltd. (May 2023 – Sep 2023)

    • 💻 Developed subroutines using Temenos Java Framework for banking solutions

🏆 Suitability for Best Researcher Award

Mr. Arifur Rahman is an exceptional candidate for the Best Researcher Award, demonstrating strong potential and proven excellence in research and innovation across emerging domains such as Machine Learning, Deep Learning, Natural Language Processing (NLP), Health Informatics, and Biomedical Engineering. His impactful research, hands-on development skills, and academic contributions distinguish him as a rising leader in computational science and applied AI.

🔹 Professional Development 

Arifur Rahman 🚀 is actively involved in both industry-driven software engineering and cutting-edge academic research 📖. His journey has been marked by continuous professional growth, serving in roles that merge development and innovation 💼. At NAGAD, he contributes as a Full Stack Developer 🌐, while his time at AIMS Lab sharpened his NLP and recommender system expertise 🧠. He has also contributed as a reviewer in IEEE conferences 📑, showcasing his engagement with the global research community. Arifur’s hands-on experience with technologies like Flutter, Java Spring Boot, ReactJS, and blockchain 🔗 highlights his dynamic skill set and commitment to excellence ⭐.

🔍 Research Focus

Arifur Rahman’s research focuses on a diverse range of AI-powered technologies 🧠, with core interests in Machine Learning, Deep Learning, and Natural Language Processing 🤖📚. His work explores real-world applications such as health informatics 🏥, bioinformatics 🧬, fake news detection, and blockchain security 🔐. Through his IEEE and Elsevier publications, he has addressed critical problems in diabetic retinopathy diagnosis, DNA sequence classification, and higher education recommendation systems 🎓. His blend of theoretical innovation and practical solutions ensures his research contributes to both scientific progress and societal impact 🌍.

🏅 Awards and Honors

  • 🎖️ Dean’s List Award at KUET for outstanding academic performance (2019–2020)

  • 🥇 Intra-KUET Programming Contest 2021 – 3rd Place 🧠💡

  • 🥈 Intra-KUET Programming Contest 2019 – 6th Place 🧠

  • 🥉 Divine IT Qualification Round – Rank 10 (Nov 2023) 💻

  • 🏆 TechnoNext Technical Coding Test 2023 (Fresher) – Rank 7 🔢

📊 Publication Top Notes

  1. Recommender system in academic choices of higher educationIEEE Access (2024) 📚5 🎓🤖
  2. Advancements in breast cancer diagnosis… with PCA, VIF6th Int. Conf. on Electrical Engineering and Info (2024) 📚2 🧬🩺📊
  3. Optimizing SMS Spam Detection… Voting Ensembles & Bi-LSTM5th Int. Conf. on Data Intelligence and Cognitive (2024) 📚1 📱📩🧠
  4. Cracking the Genetic Codes: DNA Sequence Classification…Int. Conf. on Advances in Computing, Communication (2024) 📚1 🧬🧪🧠
  5. Secure Land Purchasing using… Multi-Party Skyline Queries26th Int. Conf. on Computer and Info Tech (2023) 📚1 🌍🏠🔐
  6. Fake News Detection… Soft and Hard Voting EnsembleProcedia Computer Science (2025) 📚– 📰❌🗳️

Prof. Dr. Dongxing Song | Machine Learning | Best Researcher Award-3904

Prof. Dr. Dongxing Song | Machine Learning | Best Researcher Award

Prof. Dr. Dongxing Song, Zhengzhou University, China

Prof. Dr. Dongxing Song is an innovative researcher in power engineering and thermophysics, currently serving as a Research Fellow at Zhengzhou University’s School of Mechanics and Safety Engineering. He earned his doctoral degree from Tsinghua University and previously studied at Xi’an Jiaotong University and Central South University. His expertise lies in nanofluid dynamics, ionic thermoelectric conversion, and energy system optimization. Dr. Song’s research integrates machine learning with thermodynamics, pushing boundaries in sustainable energy technologies. His work has been published in top-tier journals such as Joule and Cell Reports Physical Science, gaining recognition for both originality and technical depth. Driven by scientific rigor and curiosity, Dr. Song continues to shape future solutions for clean energy and advanced material systems. ⚛️🔬🌱

🌍 Professional Profile 

Orcid

Google Scholar

🏆 Suitability for Best Researcher Award 

Prof. Dr. Dongxing Song is a standout candidate for the Best Researcher Award due to his cutting-edge work in ionic thermoelectric energy conversion and nanoscale heat transfer. His publications in high-impact journals, including Joule and Cell Reports Physical Science, demonstrate his role in shaping the future of clean and efficient energy generation. Dr. Song has independently led national-level research projects supported by the NSFC and China Postdoctoral Science Foundation, focusing on ion-electron coupling mechanisms and dynamic heat-mass transport. His interdisciplinary approach—blending thermophysics, machine learning, and materials science—makes him a trailblazer in green energy innovation. His research not only advances scientific understanding but also offers scalable solutions for low-grade waste heat recovery. 🔋🏅🌍

🎓 Education

Prof. Dr. Dongxing Song holds a robust academic background in power engineering and thermophysics. He completed his Ph.D. at Tsinghua University (2018–2022) under Prof. Weigang Ma, following his Master’s studies at Xi’an Jiaotong University (2015–2018) under Prof. Dengwei Jing. His foundational education in Thermal Energy and Power Engineering was completed at Central South University (2011–2015), where he was mentored by Dengwei Jing and Jianzhi Zhang. Throughout his academic journey, Dr. Song developed deep expertise in energy conversion, ionic transport, and thermodynamic modeling. His cross-institutional training at China’s most prestigious engineering schools laid the groundwork for his innovative and interdisciplinary research in the clean energy domain. 🎓📘⚙️

💼 Experience

Since February 2022, Dr. Dongxing Song has served as a Research Fellow at the School of Mechanics and Safety Engineering, Zhengzhou University, contributing significantly to ionic thermoelectric research. He previously pursued advanced research at Tsinghua University, one of China’s top engineering institutions, from 2018 to 2022. His earlier academic appointments include graduate research at Xi’an Jiaotong University and Central South University, where he gained hands-on experience in power engineering, energy optimization, and thermophysical modeling. In every role, Dr. Song has demonstrated scientific leadership, managing national-level projects and publishing influential research. His experience reflects a well-rounded career rooted in high-impact research and technological innovation in sustainable energy. 🧑‍🔬🔋📈

🏅 Awards and Honors

Prof. Dr. Dongxing Song has received prestigious grants and recognition from leading national institutions. He is the Principal Investigator of a National Natural Science Foundation of China (NSFC) Original Exploration Program Project, as well as multiple China Postdoctoral Science Foundation awards, including the Innovative Talents Grant (BX20220275). His work on ion thermoelectric conversion received a high recommendation from Joule Preview, marking him as a rising star in energy systems innovation. Dr. Song’s publications in top-impact journals and his ability to secure competitive funding reflect his academic excellence and research potential. These accolades highlight his position as a thought leader in the next generation of thermophysical science and energy innovation. 🥇🏛️📚

🔬 Research Focus

Dr. Dongxing Song’s research centers on the optimization of power generation systems for low-grade waste heat recovery, specifically using ion thermoelectric conversion and salt gradient power. He investigates the fundamental coupling between heat and ion transport and has derived a new expression for the ionic Seebeck coefficient, setting the stage for thermoelectric optimization. His studies also integrate nanofluidic heat transfer, solid-state ion battery transport, and machine learning to enhance the performance of sustainable energy devices. His broader focus includes nanoscale heat and mass transfer, where he explores transport mechanisms across interfaces using simulation and experimental validation. Dr. Song’s pioneering models are helping redefine energy recovery systems with enhanced efficiency and low environmental impact. 🔬♻️🧪

📊 Publication Top Notes

  • Design of Microchannel Heat Sink with Wavy Channel and Its Time-Efficient Optimization with Combined RSM and FVM Methods

    • Citations: 209
    • Year: 2016

  • Optimization of a Circular-Wavy Cavity Filled by Nanofluid under Natural Convection Heat Transfer

    • Citations: 194
    • Year: 2016

  • Optimization of a Lid-Driven T-Shaped Porous Cavity to Improve the Nanofluids Mixed Convection Heat Transfer

    • Citations: 138
    • Year: 2017

  • Prediction of Hydrodynamic and Optical Properties of TiO₂/Water Suspension Considering Particle Size Distribution

    • Citations: 87
    • Year: 2016

  • A Nitrogenous Pre-Intercalation Strategy for the Synthesis of Nitrogen-Doped Ti₃C₂Tₓ MXene with Enhanced Electrochemical Capacitance

    • Citations: 71
    • Year: 2021

 

Mr. Leonard Nnadi | Explainable Artificial Intelligence | Best Researcher Award

Mr. Leonard Nnadi | Explainable Artificial Intelligence | Best Researcher Award

Mr. Leonard Nnadi, The University of Aizu, Japan

Mr. Leonard Chukwualuka Nnadi is currently pursuing a Ph.D. at the University of Aizu, Japan, focusing on machine learning and artificial intelligence. He holds a Master’s degree in Information Technology from the Federal University of Technology, Owerri, specializing in Information and Communication Technologies, and a Bachelor’s degree in Computer Science from the University of Nigeria, Nsukka. Leonard has made significant contributions as an Assistant Lecturer at the Federal University of Technology, Owerri, where he mentors undergraduate students in Python programming, supervises thesis projects, and teaches courses in data structures and algorithms. His dedication to academic excellence and leadership in education underscore his commitment to fostering learning and advancing technology.

Professional Profile:

Scopus

🎓 Educational Journey:

Leonard Chukwualuka Nnadi is currently pursuing a Ph.D. at the University of Aizu, Japan, focusing on machine learning and artificial intelligence. He holds a Master’s degree in Information Technology from the Federal University of Technology, Owerri, where he specialized in Information and Communication Technologies. His academic path began with a Bachelor’s degree in Computer Science from the University of Nigeria, Nsukka, showcasing his dedication to advancing his expertise in technology and computer science.

💼 Professional Experience:

As an Assistant Lecturer at the Federal University of Technology, Owerri, Leonard has played a pivotal role in shaping the next generation of programmers. He has actively contributed to the education sector by training undergraduate students in Python programming, supervising thesis projects, and teaching courses in data structures and algorithms. His commitment to academic excellence and his leadership in educational initiatives highlight his passion for sharing knowledge and fostering learning.

Publication Top Notes:

  • Title: Prediction of Students’ Adaptability Using Explainable AI in Educational Machine Learning Models
    • Year: 2024
  • Title: An Intelligent Model for Improved Breast Cancer Prognosis
    • Year: 2023