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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.