paclopes / Hungariangpu
Licence: mit
An GPU/CUDA implementation of the Hungarian algorithm
Stars: ✭ 51
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HungarianGPU
An GPU/CUDA implementation of the Hungarian algorithm
From the paper: Lopes, P. A., Yadav, S. S., Ilic, A., & Patra, S. K. Fast block distributed CUDA implementation of the Hungarian algorithm. Journal of Parallel and Distributed Computing. (2019).
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