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Lecturer 홍영준
Dept. 성균관대학교
date Apr 13, 2023

 

This lecture explores the topics and areas that have guided my research in computational mathematics and deep learning in recent years. Numerical methods in computational science are essential for comprehending real-world phenomena, and deep neural networks have achieved state-of-the-art results in a range of fields. The rapid expansion and outstanding success of deep learning and scientific computing have led to their applications across multiple disciplines. In this lecture, I will focus on connecting machine learning with applied mathematics, specifically discussing topics such as adversarial examples, generative models, and scientific machine learning.

 

Atachment
Attachment '1'
  1. Topology and number theory

  2. Topology of configuration spaces on graphs

  3. 14Apr
    by 김수현
    in Math Colloquia

    Toward bridging a connection between machine learning and applied mathematics

  4. Towards Trustworthy Scientific Machine Learning: Theory, Algorithms, and Applications

  5. Trends to equilibrium in collisional rarefied gas theory

  6. Unique ergodicity for foliations

  7. Universality of log-correlated fields

  8. Unprojection

  9. Variational Methods without Nondegeneracy

  10. Vlasov-Maxwell equations and the Dynamics of Plasmas

  11. Volume entropy of hyperbolic buildings

  12. W-algebras and related topics

  13. Weak and strong well-posedness of critical and supercritical SDEs with singular coefficients

  14. Weyl character formula and Kac-Wakimoto conjecture

  15. WGAN with an Infinitely wide generator has no spurious stationary points

  16. What happens inside a black hole?

  17. What is model theory?

  18. Zeros of linear combinations of zeta functions

  19. Zeros of the derivatives of the Riemann zeta function

  20. 곡선의 정의란 무엇인가?

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