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Abdul-Aziz Yakubu (1958-2022)
Yakubu, professor of mathematics at Howard University, died August 14, 2022, at the age of 64.
Professional Feature - Ernesto Estrada
Ernesto Estrada is a full research professor of the Spanish National Research Council (CSIC) at the Institute of Cross-Disciplinary Physics and Complex Systems (IFISC) in Palma de Mallorca, Spain.
The Brain Is a Dynamical System
Lai-Sang Young describes her recent work dynamically modeling interactions in the visual system that accomplish edge-detection and motion-tracking.
Control and Machine Learning
Enrique Zuazua discusses the intricate mathematical connections between control theory and machine learning.
How Do Snakes Slither? A Recipe for Reptation
Mark Levi develops a "dynamical recipe for reptation" by analyzing the physics of slithering snakes.
Nonlinear Dynamical Uncertainty Quantification for Random Differential Equations
Kerstin Lux from the Technical University of Munich discusses a new article she co-authored in SIADS on extending bifurcation analysis to random differential equations.
Professional Feature - Mary Silber
Mary Silber is the Director of the Committee on Computational and Applied Mathematics and a Professor in the Department of Statistics at the University of Chicago.
Understanding Sensory Induced Hallucinations
Rachel Nicks explains how visual hallucinations can emerge as spatiotemporal dynamics of neuronal networks described by amplitude equations.
Dynamics-based Machine Learning for Nonlinearizable Phenomena
Haller and colleagues demonstrate how dynamics-based machine learning can be used to construct accurate and predictive reduced-order models from data.
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