Path integral approach unveils role of complex energy landscape for activated dynamics of glassy systems
Academic Article
Publication Date:
2021
abstract:
The complex dynamics of an increasing number of systems is attributed to the emergence of a rugged energy landscape with an exponential number of metastable states. To develop this picture into a predictive dynamical theory, I discuss how to compute the exponentially small probability of a jump from one metastable state to another. This is expressed as a path integral that can be evaluated by saddle-point methods in mean-field models, leading to a boundary value problem. The resulting dynamical equations are solved numerically by means of a Newton-Krylov algorithm in the paradigmatic spherical p-spin glass model that is invoked in diverse contexts from supercooled liquids to machine-learning algorithms. I discuss the solutions in the asymptotic regime of large times and the physical implications on the nature of the ergodicity-restoring processes.
Iris type:
01.01 Articolo in rivista
Keywords:
Boundary value problems; Glass; Learning algorithms; Machine learning; Mean field theory; Quantum theory; Spin glass; Supercooling
List of contributors:
Rizzo, Tommaso
Published in: