Engineering A Workload-balanced Push-Relabel Algorithm for Massive Graphs on GPUs
arxiv(2024)
摘要
The push-relabel algorithm is an efficient algorithm that solves the maximum
flow/ minimum cut problems of its affinity to parallelization. As the size of
graphs grows exponentially, researchers have used Graphics Processing Units
(GPUs) to accelerate the computation of the push-relabel algorithm further.
However, prior works need to handle the significant memory consumption to
represent a massive residual graph. In addition, the nature of their algorithms
has inherently imbalanced workload distribution on GPUs. This paper first
identifies the two challenges with the memory and computational models. Based
on the analysis of these models, we propose a workload-balanced push-relabel
algorithm (WBPR) with two enhanced compressed sparse representations (CSR) and
a vertex-centric approach. The enhanced CSR significantly reduces memory
consumption, while the vertex-centric approach alleviates the workload
imbalance and improves the utilization of the GPU. In the experiment, our
approach reduces the memory consumption from O(V^2) to O(V + E). Moreover, we
can achieve up to 7.31x and 2.29x runtime speedup compared to the
state-of-the-art on real-world graphs in maximum flow and bipartite matching
tasks, respectively. Our code will be open-sourced for further research on
accelerating the push-relabel algorithm.
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