COLLOQUIUM: Universes as Bigdata: Physics, Geometry and Machine-Learning
Yang-Hui He (London Institute for Mathematical Sciences & Merton College, Oxford University)
Abstract: The search for the Theory of Everything has led to superstring theory, which then led physics, first to algebraic/differential geometry/topology, and then to computational geometry, and now to data science. With a concrete playground of the geometric landscape, accumulated by the collaboration of physicists, mathematicians and computer scientists over the last 4 decades, we show how the latest techniques in machine-learning can help explore problems of interest to theoretical physics and to pure mathematics. At the core of our programme is the question: how can AI help us with mathematics?
data structures and algorithmsmachine learningmathematical physicsinformation theoryoptimization and controldata analysis, statistics and probability
Audience: researchers in the topic
Mathematics, Physics and Machine Learning (IST, Lisbon)
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Zoom link: videoconf-colibri.zoom.us/j/91599759679
Organizers: | Mário Figueiredo, Tiago Domingos, Francisco Melo, Jose Mourao*, Cláudia Nunes, Yasser Omar, Pedro Alexandre Santos, João Seixas, Cláudia Soares, João Xavier |
*contact for this listing |