Calabi-Yau metrics through Grassmannian learning and Donaldson's algorithm
- 👤 Speaker: Oisin Kim, CST
- 📅 Date & Time: Monday 02 December 2024, 12:00 - 12:30
- 📍 Venue: FW11, Willam Gates building (Department of Computer Science and Technology)
Abstract
Motivated by recent progress in the problem of numerical Kähler metrics, we survey machine learning techniques in this area, discussing both advantages and drawbacks. We then present a novel approach to obtaining Ricci-flat approximations to Kähler metrics, applying machine learning within a `principled’ framework, inspired by the algebraic ansatz of Donaldson.
Series This talk is part of the Accelerate Lunchtime Seminar Series series.
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Monday 02 December 2024, 12:00-12:30