Shared-Memory Parallel Edmonds Blossom Algorithm for Maximum Cardinality Matching in General Graphs.

Gregory Schwing, Daniel Grosu, Loren Schwiebert
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Abstract

The Edmonds Blossom algorithm is implemented here using depth-first search, which is intrinsically serial. By streamlining the code, our serial implementation is consistently three to five times faster than the previously fastest general graph matching code. By extracting parallelism across iterations of the algorithm, with coarse-grain locking, we are able to further reduce the run time on random regular graphs four-fold and obtain a two-fold reduction of run time on real-world graphs with similar topology. Solving very sparse graphs (average degree less than four) exhibiting community structure with eight threads led to a slow down of three-fold, but this slow down is replaced by marginal speed up once the average degree is greater than four. We conclude that our parallel coarse-grain locking implementation performs well when extracting parallelism from this augmenting-path-based algorithm and may work well for similar algorithms.

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共享内存并行 Edmonds Blossom 算法,用于一般图中的最大卡方匹配。
Edmonds Blossom 算法是通过深度优先搜索实现的,而深度优先搜索本质上是串行搜索。通过精简代码,我们的串行实现始终比之前最快的通用图形匹配代码快三到五倍。通过提取算法迭代中的并行性并进行粗粒度锁定,我们能够将随机规则图的运行时间进一步缩短四倍,并将具有类似拓扑结构的真实世界图的运行时间缩短两倍。用八个线程求解表现出群落结构的非常稀疏的图(平均度数小于四)时,运行时间缩短了三倍,但一旦平均度数大于四,这种缩短就会被边际加速所取代。我们得出的结论是,我们的并行粗粒度锁定实现在从这种基于增强路径的算法中提取并行性时表现出色,并可能适用于类似算法。
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