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Data Scientist and Assistant Professor
Johns Hopkins All Children's Hospital and School of Medicine
Featured Work

Generative Model Assisted Sampling of Dynamical Systems
A collection of papers demonstrating that generative model architectures (such as GANs and diffusion models) can efficiently sample and explore the phase space of various dynamical systems including molecular conformational space described by collective variables (that are found with diffusion maps or known beforehand), bifurcation diagrams, low dimensional manifolds of high dimensional systems, and more.

Generative Learning of Densities on Manifolds
This paper introduces a generative framework integrating modified score-based models and manifold learning techniques for the approximation and generation of high-dimensional data distributions, particularly in multiscale computational mechanics.

Generative Learning for Slow Manifolds and Bifurcation Diagrams
This paper introduces a novel framework combining conditional score-based generative models and diffusion maps for efficient initialization on slow manifolds and identification of steady states in dynamical systems.