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2018-08 Revisiting Mathematical Equations in R: The ‘dvir’ package

(This article was first published on R – Stat Tech, and kindly contributed to R-bloggers)

This report describes an R package called ‘dvir’ that aims to use TeX as a layout engine, but performs all rendering within R. The package reads DVI files that are produced from TeX files and renders the content using the R package ‘grid’.

Paul Murrell

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