Parallel Flow-Based Hypergraph Partitioning
January 05, 2022 Β· Declared Dead Β· π The Sea
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Authors
Lars GottesbΓΌren, Tobias Heuer, Peter Sanders
arXiv ID
2201.01556
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DC
Citations
14
Venue
The Sea
Last Checked
3 months ago
Abstract
We present a shared-memory parallelization of flow-based refinement, which is considered the most powerful iterative improvement technique for hypergraph partitioning at the moment. Flow-based refinement works on bipartitions, so current sequential partitioners schedule it on different block pairs to improve $k$-way partitions. We investigate two different sources of parallelism: a parallel scheduling scheme and a parallel maximum flow algorithm based on the well-known push-relabel algorithm. In addition to thoroughly engineered implementations, we propose several optimizations that substantially accelerate the algorithm in practice, enabling the use on extremely large hypergraphs (up to 1 billion pins). We integrate our approach in the state-of-the-art parallel multilevel framework Mt-KaHyPar and conduct extensive experiments on a benchmark set of more than 500 real-world hypergraphs, to show that the partition quality of our code is on par with the highest quality sequential code (KaHyPar), while being an order of magnitude faster with 10 threads.
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