Grant Rotskoff
ORAL · Invited
Abstract
I will describe a theoretical framework for controlling the response and dynamics of nonequilibrium systems using time-dependent external couplings. These external "control protocols" satisfy a number of distinct variational principles, which become natural machine learning objective functions. The variational principles not only constrain, for example, the finite-time energetic efficiency of a given transformation, but also provide a natural objective for optimization. Finally, I will show how to solve these problems computationally for some model systems of interest, including models of experimental active matter and self-assembling actin networks.
* This material is based on work supported by the U.S. Department of Energy, Office of Science, Office of Basic Energy Sciences, under Award Number DE-SC0022917.
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Publication: arXiv:2306.10778, arxiv:2205.01205
Presenters
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Grant M Rotskoff
Stanford University, Stanford Univ
Authors
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Grant M Rotskoff
Stanford University, Stanford Univ