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

orcid

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.

 

Dr. Yingbin Wang | Artificial Intelligence | Best Researcher Award

Dr. Yingbin Wang | Artificial Intelligence | Best Researcher Award

Dr. Yingbin Wang, Xi’an Institute of Space Radio Technolog, China

Dr. Yingbin Wang is a leading researcher in space microwave communication, detection, and AI-driven signal processing. He earned his Ph.D. in Electronic Science and Technology from Xidian University in 2022 and currently serves as a Senior Engineer at the National Key Laboratory of Science and Technology on Space Microwave at the Xi’an Institute of Space Radio Technology. His research spans Integrated Sensing and Communication (ISAC), deep learning, and anti-jamming satellite systems. With over ten high-impact publications and contributions to national-level R&D projects, Dr. Wang is shaping the future of space-based communication and intelligent sensing. 🚀📡

🌍 Professional Profile:

Google Scholar

🏆 Suitability for the Best Researcher Award

Dr. Yingbin Wang is a highly qualified candidate for the Best Researcher Award, given his significant contributions to space microwave communication and AI-powered signal processing. His expertise in satellite-terrestrial integration, space-based radar target detection, and anti-jamming satellite systems plays a crucial role in advancing global space technology. With publications in top-tier IEEE journals, participation in national R&D projects, and contributions to cutting-edge ISAC applications, Dr. Wang is at the forefront of next-generation communication research. His work in AI-driven remote sensing is revolutionizing the field, making him a distinguished and deserving nominee. 🏆🚀

🎓 Education

Dr. Yingbin Wang pursued his entire higher education at Xidian University, China, a prestigious institution in electronic engineering and space communication. He obtained his Ph.D. in Electronic Science and Technology in June 2022, focusing on advanced space microwave systems and AI-enhanced signal processing. His doctoral research contributed to improving satellite communication resilience, radar detection, and deep learning applications in space technologies. Throughout his academic journey, he combined hardware engineering with AI-driven software models, enabling breakthroughs in integrated satellite-terrestrial communication. His strong foundation in electromagnetic waves, remote sensing, and computational intelligence defines his research excellence. 🎓📡🔬

💼 Experience 

Dr. Yingbin Wang is a Senior Engineer at the National Key Laboratory of Science and Technology on Space Microwave, Xi’an Institute of Space Radio Technology. His role involves leading research in space microwave communication, detection, and AI-driven signal optimization. He has contributed to major national R&D projects, including space-based radar target detection, anti-jamming satellite communication, and integrated sensing for satellite-terrestrial networks. His work on AI-based signal processing and deep learning models has significantly enhanced real-time space communication efficiency. His expertise in high-frequency electromagnetic applications and AI-powered satellite technology is instrumental in shaping the future of space communications. 🚀📶

🏅 Awards & Honors 

Dr. Yingbin Wang has received multiple recognitions for his contributions to space communication and AI-driven signal processing. His research in anti-jamming satellite networks has been awarded national-level research funding. He has received Best Paper Awards at leading IEEE conferences on signal processing and remote sensing. Additionally, his contributions to integrated satellite-terrestrial communication have been recognized by the National Science and Technology Innovation Program. As a reviewer for top IEEE journals, he actively contributes to the scientific community. His pioneering work in AI-enhanced space sensing continues to push the boundaries of satellite communication technologies. 🏆📡

🔬 Research Focus 

Dr. Yingbin Wang’s research spans Artificial Intelligence, communication, deep learning, and signal processing, with a strong emphasis on space microwave communication and detection. His work explores AI-driven radar target detection, anti-jamming satellite communication, and integrated sensing and communication (ISAC) systems. He develops machine learning models for real-time adaptive signal processing, enhancing satellite-terrestrial connectivity. His studies in neural network-driven space communication systems optimize data transmission efficiency in complex space environments. His research is critical for next-generation deep-space exploration, smart communication networks, and high-performance microwave technology, ensuring global connectivity and security in aerospace applications. 🚀📡🛰️

📖 Publication Top Notes

  1. SPB-Net: A Deep Network for SAR Imaging and Despeckling with Downsampled Data
    • Journal: IEEE Transactions on Geoscience and Remote Sensing
    • Publication Year: 2020
    • Citations: 27
  2. Lq-SPB-Net: A Real-Time Deep Network for SAR Imaging and Despeckling
    • Journal: IEEE Transactions on Geoscience and Remote Sensing
    • Publication Year: 2021
    • Citations: 8
  1. Multi-Scale and Single-Scale Fully Convolutional Networks for Sound Event Detection
    • Journal: Neurocomputing
    • Publication Year: 2021
    • Citations: 18
  2. MSFF-Net: Multi-Scale Feature Fusing Networks with Dilated Mixed Convolution and Cascaded Parallel Framework for Sound Event Detection
    • Journal: Digital Signal Processing
    • Publication Year: 2022
    • Citations: 12
  1. A Convex Optimization Algorithm for Compressed Sensing in a Complex Domain: The Complex-Valued Split Bregman Method
    • Journal: Sensors
    • Publication Year: 2019
    • Citations: 13