Georges Lemaître Chair 2025

Europe/Brussels
Description

Jesse Thaler is a theoretical particle physicist who fuses techniques from quantum field theory and machine learning to address outstanding questions in fundamental physics. His current research is focused on maximizing the discovery potential of the Large Hadron Collider through new theoretical frameworks and novel data analysis techniques. Prof. Thaler joined the MIT Physics Department in 2010, and he is currently a Professor in the MIT Center for Theoretical Physics – a Leinweber Institute. In 2020, he became the inaugural Director of the NSF Institute for Artificial Intelligence and Fundamental Interactions.

Directions:
- to CYCL 01 for the inaugural lecture: https://maps.app.goo.gl/v7wDFTZuJk5uZjEX7
- to SUD 01, 09 and 11 for the other lectures: https://maps.app.goo.gl/gSuv8syQJPmAL9zF7


A remote Zoom connection will be available:
Link: https://cern.zoom.us/j/61996061850?pwd=VTqyGLLoaOIyIurY8iKVD4XFvXPBCq.1
Meeting ID: 619 9606 1850
Passcode: 843077

Registration
Registration is free and mandatory (for the practical organisation).
Participants
  • Alex Degrave
  • Alexandre De Moor
  • André Nauts
  • Augustin Crespin
  • Chris Flett
  • Denis FAVART
  • Emile Moyaux
  • Etienne Roger
  • Gauthier Durieux
  • Gaétan Facchinetti
  • Godwin Krampah
  • Guillaume Suchet-Bernard
  • Jan Govaerts
  • Jindrich Lidrych
  • Juian Moeil
  • Katarina Simkova
  • Lorenz Viteri Sanchez
  • Lucy Grossman
  • Luigi Favaro
  • Majid Hussain
  • Marco Drewes
  • Mohamed-Amin Bouhalbane
  • Mubarak Mohammed
  • Murad Ali
  • Nicolas Grimbaum Yamamoto
  • Noémie Déplechin
  • Olivier Mattelaer
  • Omar Ajroud
  • Oğuz Güzel
  • Per Arne Sevle Myhr
  • Philippe Ruelle
  • Pierre Dehez
  • Ricardo Cabrita
  • Serge Collin
  • Theo Heimel
  • Tommaso Armadillo
  • Valentin Weber
  • Vincent Lemaître
  • Vincent Lemaître
  • Waël Aoun
  • Yang Ma
  • Yuanzhen Li
  • Zahraa Daher
  • Zak Lawrence
  • +40
    • 16:15 18:15
      Inaugural lecture: "Centaur Science: Particle Physics meets Machine Learning" 2h CYCL 01 (Batiment Marc de Hemptinne)

      CYCL 01

      Batiment Marc de Hemptinne

      chemin du Cyclotron 2, 1348 Louvain-la-Neuve

      Modern machine learning has had an outsized impact on many scientific fields, and particle physics is no exception. What is special about particle physics, though, is the vast amount of theoretical knowledge that we already have about many problems in the field, as well as the daunting deluge of data coming from flagship experiments like the Large Hadron Collider (LHC). In this lecture, I will explain how one can teach a machine to "think like a physicist" by embedding theoretical principles into advanced machine learning architectures. At the same time, I will advocate that physicists must learn how to "think like a machine" to maximize the physics reach of the LHC. These joint developments are leading to a new kind of "centaur science" that, analogously to the mythical centaur, draws half from particle physics and half from machine learning.

      Speaker: Jesse Thaler (MIT)
    • 18:15 20:15
      Reception 2h Cyclofet (batiment Marc de Hemptinne)

      Cyclofet

      batiment Marc de Hemptinne

      chemin du Cyclotron 2, 1348 Louvain-la-Neuve
    • 14:00 16:00
      Lecture 2: "Machine Learning through the Lens of Physics" 2h SUD 01 (Auditoires Croix du Sud)

      SUD 01

      Auditoires Croix du Sud

      place Croix du Sud, 1348 Louvain-la-Neuve

      Machine learning has a reputation for yielding "black box" solutions that cannot be properly interpreted. In this lecture, I explain foundational aspects of machine learning in a language familiar to physicists and argue that interpretability must be assessed with concrete physics goals in mind.

      Speaker: Jesse Thaler (MIT)
    • 18:30 20:30
      Public lecture: "Deep learning + deep thinking = deeper understanding" 2h SUD 09 (Auditoires Croix du Sud)

      SUD 09

      Auditoires Croix du Sud

      place Croix du Sud, 1348 Louvain-la-Neuve

      Artificial intelligence is transforming many aspects of society, including the ways that scientists are pursuing groundbreaking discoveries. This public lecture will highlight ways that "physics intelligence" can be incorporated into artificial intelligence, with the twin goals of answering fundamental questions about the universe and illuminating the mechanisms behind machine learning.

      Speaker: Jesse Thaler (MIT)
    • 14:00 16:00
      Lecture 3: "Frequent(ist)ly Asked Questions" 2h SUD 01 (Auditoires Croix du Sud)

      SUD 01

      Auditoires Croix du Sud

      place Croix du Sud, 1348 Louvain-la-Neuve

      Most particle physics results are framed in the language of frequentist inference, whereas machine learning fits more naturally into a Bayesian framework. In this lecture, I explain how to extract frequentist information from neural networks and why we must incorporate rigorous statistical uncertainties into machine learning pipelines.

      Speaker: Jesse Thaler (MIT)
    • 16:15 18:15
      Lecture 4: "Jets in Space" 2h SUD 11 (Auditoires Croix du Sud)

      SUD 11

      Auditoires Croix du Sud

      place Croix du Sud, 1348 Louvain-la-Neuve

      Optimal transport (OT) is a fascinating branch of mathematics which can be used to define a useful notion of geometry for datasets. In this lecture, I explain how many concepts and techniques from particle physics have a natural OT interpretation, particularly when describing jets of particles produced from the strong force.

      Speaker: Jesse Thaler (MIT)
    • 14:00 16:00
      Lecture 5: "The Future of AI+Physics" 2h SUD 01 (Auditoires Croix du Sud)

      SUD 01

      Auditoires Croix du Sud

      place croix du Sud, 1348 Louvain-la-Neuve

      The practice of physics is shaped not only by the questions we ask but by the tools at our disposal. In the era of artificial intelligence (AI), what will physics research look like? I don't know, but in this lecture, I will highlight some of the ongoing trends in AI+Physics and speculate how the field might evolve.

      Speaker: Jesse Thaler (MIT)