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InvertibleNetworks.jl: A Julia package for scalable normalizing flows

Authors :
Orozco, Rafael
Witte, Philipp
Louboutin, Mathias
Siahkoohi, Ali
Rizzuti, Gabrio
Peters, Bas
Herrmann, Felix J.
Publication Year :
2023

Abstract

InvertibleNetworks.jl is a Julia package designed for the scalable implementation of normalizing flows, a method for density estimation and sampling in high-dimensional distributions. This package excels in memory efficiency by leveraging the inherent invertibility of normalizing flows, which significantly reduces memory requirements during backpropagation compared to existing normalizing flow packages that rely on automatic differentiation frameworks. InvertibleNetworks.jl has been adapted for diverse applications, including seismic imaging, medical imaging, and CO2 monitoring, demonstrating its effectiveness in learning high-dimensional distributions.<br />Comment: Submitted to Journal of Open Source Software (JOSS)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.13480
Document Type :
Working Paper