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Yu Guang Wang |
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Institute of Natural Sciences School of Mathematical Sciences Shanghai Jiao Tong University Shanghai AI Lab UNSW Sydney |
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yuguang.wang@sjtu.edu.cn 361, Build. No.6, Science Buildings No. 800 Dongchuan Road, Minhang District Shanghai 200240, China |
I am an Associate Professor inInstitute of Natural Sciences,School of Mathematical Sciences,Department of Computer Science and Engineering, andKey Lab of Scientific and Engineering Computing of Minister of Education (MOE-LSC), at Shanghai Jiao Tong University. I am Adjunct Associate Professor atShanghai AI LaboratoryandUNSW Sydney.
My research interests lie in artificial intelligence, computational mathematics, statistics and data science. In particular, I am working on geometric deep learning, graph neural networks, applied harmonic analysis, Bayesian inference, information geometry, numerical analysis, and applications to biomedicine and protein design.
Previously, I was a research scientist at Max Planck Institute for Mathematics in Sciences, inProf Guido Montufar's Deep Learning Theory Group. I obtained my PhD in applied mathematics from University of New South Wales under supervision of ProfIan SloanandRob Womersley. I am a recipient ofICERM Semester Postdoctoral Fellowshipof Brown University (2018), a long-termIPAM visitorof UCLA (2019), and long-term visitor ofAI Group of Prof Pietro Lioat Univeristy of Cambridge (2022).
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Current Research Interests |
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| List of publications can be found at myGoogle Scholar. |
| • | AI Group Seminar,
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| • | Distinguished Lectures and INS Colloquia,
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| • | AI + Math Colloquia,
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| • | Deep Learning Theory & Math Machine Learning Seminar,
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| • | Machine Learning + X Seminars,
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| • | M2D2: Molecular Modeling And Drug Discovery,
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| • | Applied Geometry for Data Sciences,
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| • | Biomolecular Topology: Modelling and Data Analysis,
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| • | Artificial Intelligence and Computational Mathematics Conference,
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| • | NTU-NUS Joint Workshop on Applied Topology and Geometry for AI,
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| • | LoG Shanghai Meetup,
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| • | ICIAM Minisymposium on Mathematics of Geometric Deep Learning,
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| • | Foundations of Computational Mathematics (FoCM),
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| • | 14th International Conference on Monte Carlo Methods and Applications,
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| • | International Conference on Applied Mathematics,
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| • | Cambridge AI Research Group Talks,
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| • | Machine Learning + X Seminars,
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| • | Workshop on Combinatorics and Information Transfer,
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| • | ELLIS Machine Learning for Molecule Discovery Workshop,
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| • | NeurIPS MeetUp China,
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| • | NeurIPS,
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| • | Deep learning and partial differential equations,
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| • | Geometry & Learning from Data Workshop,
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| • | International Conference on Computational Harmonic Analysis,
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| • | Theory of Deep Learning,
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| • | Conference on Mathematics of Machine Learning,
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| • | TopoNets 2021 - Networks beyond pairwise interactions,
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| • | AI Group Seminar,
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| • | ICLR Workshop on Geometric and Topological Representation Learning,Online, 7 May 2021. | |
| • | ICLR'21,Online, 3-7 May 2021. | |
| • | AIM: Artificial Intelligence and Mathematics,
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| • | Topological Data Analysis,Online, 26-30 April 2021. | |
| • | Business Analytics Seminar,
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Guest Associate Editor for Special IssueDeep Neural Networks for Graphs: Theory, Models, Algorithms and Applicationsin
Review Editor for the journalFrontiers in Applied Mathematics and Statistics.
Reviewer forICML'20(Top Reviewer),ICML'20-23,NeurIPS'21-23, NeurIPS'21,ICLR'21-23,IJCAI'21-23.
Organiser forCollaborate@ICERM onGeometry of Data and Networks, 2019joint withJoan Bruna
Organiser forMinisymposium onHarmonic Analysis for Graph Signal Processing and Deep Learning Applicationsin
I am lecturing the followingcoursesin 2021-2022.
| 2022-2024 Spring,
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| 2024 Spring,
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| 2023 Fall,
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| 2021 Fall,
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| 2022-2023 Spring,
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I was a class tutor in UNSW for followingcourses.
| Semester 3 2019,MATH3101/5305 Computational Mathematics (Numerical Methods for PDEs) | ||
| Semester 2 2018,MATH2089 Numerical Methods and Statistics | ||
| Semester 1 2015,MATH1131 Mathematics 1A | ||
| Semester 2 2014,MATH1231 Mathematics 1B,MATH1241 Higher Mathematics 1B,MATH2019 Engineering Mathematics 2E |
| Yi Guo, 2018-2019, UNSW, thesis title: Cosmo-Encoder: A Bayesian deep learning approach for cosmic microwave background inpainting | ||
| Kai Yi, 2018-2019 UNSW, thesis title: Variational autoencoder for cosmic microwave background image inpainting (Current: PhD in UNSW) |
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I am grateful for the financial support of the following institutions:
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| Copyright @ 2023 Yu Guang Wang | Top |