Mini-workshop on lattice gauge theory and related topics for high-energy physics

Asia/Taipei
Lecture room 6 (NYCU Beimen campus)

Lecture room 6

NYCU Beimen campus

Description

                              


This mini-workshop aims to bring together experts in various topics related to lattice gauge theory and their applications to problems in high-energy physics.

Registration deadline is 23h59 Monday the 5th of May, 2025 Taiwan time.

Invited speakers and their talk titles are

  • Guilherme Catumba (University of Milano)
    Tackling the Signal to Noise Problem with Stochastic Automatic Differentiation
     
  • Miranda C.N. Cheng (Academia Sinica and University of Amsterdam)
    Flow-based Sampling for Lattice Field Theory (I)
     
  • Luigi Del Debbio (University of Edinburgh)
    Machine Learning for Parton Distribution Functions 
     
  • Mathis Gerdes (University of Amsterdam)
    Flow-baed Sampling for Lattice Field Theory (II) 
     
  • Wayne Morris (National Yang Ming Chiao Tung University)
    TMD Soft Function on the Lattice Using Complex Directional Wilson Lines
     
  • Alberto Ramos (University of Valencia)
    Universality in Gauge Theories and Asymptotic Scaling
     

All are welcome.

 

Participants
  • Alberto Ramos
  • C.-J. David Lin
  • Guilherme Catumba
  • Jin-Hung Yang
  • Julian Ebelt
  • Justinas Rumbutis
  • Luigi Del Debbio
  • Mathis Gerdes
  • Ming-Yen Tsai
  • Miranda Cheng
  • Mugdha Sarkar
  • Sheng Pin Chang
  • Tzu Chiang Yuan
  • Valentin Moos
  • Wayne Morris
  • Yao Ting Su
C.-J. David Lin
    • 09:30 09:45
      Opening 15m
      Speaker: Prof. C.-J. David Lin (National Yang Ming Chiao Tung University)
    • 09:45 10:30
      Machine Learning for Parton Distribution Functions 45m

      The NNPDF collaboration has been using Machine Learning techniques to solve the inverse problem of extracting Parton Distribution Functions from finite sets of experimental data for almost two decades. With the increased precision of the LHC measurements, It has become mandatory to understand the robustness of the error bars and of the correlations in the results of PDFs fit. We review the fitting procedure from a Bayesian perspective and discuss the training of neural networks in a Bayesian framework.

      Speaker: Prof. Luigi Del Debbio (University of Edinburgh)
    • 10:30 11:00
      Coffee 30m
    • 11:00 11:45
      TMD soft function on the lattice using complex directional Wilson lines 45m
      Speaker: Dr Wayne Morris (National Yang Ming Chiao Tung University)
    • 11:45 12:30
      Tackling the Signal to Noise problem with Stochastic Automatic Differentiation 45m

      Lattice field theory computations of two-point functions are generally
      affected by the so called signal to noise problem, wherein the signal
      of the Euclidean time correlator decays faster than the variance. In
      this talk we propose a different perspective on the origin of this
      problem. Following this, we argue that by writing correlators as
      derivatives with respect to sources and evaluating these derivatives
      using techniques of stochastic automatic differentiation we can
      eliminate completely the signal to noise problem. Results in a four
      dimensional scalar theory confirm the expected behavior.

      Speaker: Dr Guilherme Catumba (University of Milano)
    • 12:30 14:00
      Lunch
    • 14:00 14:45
      Flow-based Sampling for Lattice Field Theory (I) 45m
      Speaker: Prof. Miranda C.N. Cheng (Academia Sinica and University of Amsterdam)
    • 14:45 15:30
      Flow-based Sampling for Lattice Field Theory (II) 45m
      Speaker: Mr Mathis Gerdes (University of Amsterdam)
    • 15:30 16:00
      Coffee 30m
    • 16:00 16:45
      Universality in Gauge Theories and Asymptotic Scaling 45m
      Speaker: Prof. Alberto Ramos (University of Valencia)
    • 16:45 17:30
      Discussion 45m