School of Physics Thesis Dissertation Defense

Presenter: Snigdaa Sethuram

Advisor:  Dr. John Wise, School of Physics, Georgia Institute of Technology

 Title: Machine Learning Techniques to Accelerate Simulations, Modeling, and Analysis

Date: Friday, March 28, 2025  

Time: 2:00 p.m.

Location: Gilbert Hillhouse Boggs Building, Room 1-44 (Visualization Laboratory) or Zoom link

 

Committee Members:          

Dr. Tamara Bogdanovic, School of Physics, Georgia Institute of Technology

Dr. Gongjie Li, School of Physics, Georgia Institute of Technology

Dr. Annalisa Bracco, School of Earth & Atmospheric Sciences, Georgia Institute of Technology

Dr. Viviana Acquaviva, Department of Physics, CUNY NYC College of Technology

 

Abstract:

Computational methods in astrophysics are essential to better understanding our universe and validating theoretical models but achieving high-resolution simulations with complex physics remains computationally intensive. Machine learning (ML) methods have proven to be a valuable tool to mitigate these challenges and enable accelerated simulation runtime and analysis. In this work, data-driven approaches to traditional tasks are explored: (1) a neural network emulator that generates synthetic observations of simulated galaxies given global data, bypassing traditional radiative transfer, (2) a Bayesian framework employing Markov Chain Monte Carlo sampling to infer galaxy properties from JWST photometric observations, and (3) a convolutional recurrent network trained on spatiotemporal hydrodynamic data to emulate stellar feedback in cosmological simulations. These approaches integrate ML and statistical analysis methods with physical models to optimize parameter space exploration, reduce computational costs, and bridge simulations with observational data.

 

Event Details

Date/Time:

  • Date: 
    Friday, March 28, 2025 - 2:00pm to 3:00pm

Location:
Gilbert Hillhouse Boggs Building Room 1-44 (Visualization Laboratory)