Skip to main content
KAUST Research Conference on Robotics and Autonomy
RobotoKAUST
KAUST Research Conference on Robotics and Autonomy
Main navigation
Home
People
All Profiles
Leadership Team
Faculty
Visiting Scholars
Events
All Events
Events Calendar
News
PETScML
On the Use of "Conventional" Unconstrained Minimization Solvers for Training Regression Problems in Scientific Machine Learning
Stefano Zampini, Senior Research Scientist, Hierarchical Computations on Manycore Architectures
Mar 13, 12:00
-
13:00
B9 L2 R2325
petsc
PETScML
machine learning
This talk introduces PETScML, a framework leveraging traditional second-order optimization solvers for use within scientific machine learning, demonstrating improved generalization capabilities over gradient-based methods routinely adopted in deep learning.