Efficient Strategies for Graph Pattern Mining Algorithms on GPUs

  • Samuel Ferraz UFMG
  • Vinicius Dias UFMS
  • Carlos H. C. Teixeira UFOP
  • George Teodoro UFOP
  • Wagner Meira UFOP

Abstract

Graph Pattern Mining (GPM) is an important, rapidly evolving, and computation demanding area. GPM computation relies on subgraph enumeration, which consists in extracting subgraphs that match a given property from an input graph. Graphics Processing Units (GPUs) have been an effective platform to accelerate applications in many areas. However, the irregularity of subgraph enumeration makes it challenging for efficient execution on GPU due to typical uncoalesced memory access, divergence, and load imbalance. Unfortunately, these aspects have not been fully addressed in previous work. Thus, this work proposes novel strategies to design and implement subgraph enumeration efficiently on GPU. We support a depth-first search style search (DFS-wide) that maximizes memory performance while providing enough parallelism to be exploited by the GPU, along with a warp-centric design that minimizes execution divergence and improves utilization of the computing capabilities. We also propose a low-cost load balancing layer to avoid idleness and redistribute work among thread warps in a GPU. Our strategies have been deployed in a system named DuMato, which provides a simple programming interface to allow efficient implementation of GPM algorithms. Our evaluation has shown that DuMato is often an order of magnitude faster than state-of-the-art GPM systems and can mine larger subgraphs (up to 12 vertices).
Published
2022-11-02
How to Cite
FERRAZ, Samuel et al. Efficient Strategies for Graph Pattern Mining Algorithms on GPUs. Proceedings of the International Symposium on Computer Architecture and High Performance Computing (SBAC-PAD), [S.l.], p. 110-119, nov. 2022. ISSN 0000-0000. Available at: <https://sol.sbc.org.br/index.php/sbac-pad/article/view/28238>. Date accessed: 17 may 2024.