Abstract
The software and data in this repository are a snapshot of the software and data that were used in the research reported on in the paper FrankWolfe.jl: a high-performance and flexible toolbox for Frank-Wolfe algorithms and Conditional Gradients by M. Besançon, A. Carderera, and S. Pokutta.
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