Back to Search Start Over

High-Throughput GPU RandomWalk with Fine-tuned Concurrent Query Processing

Authors :
Xu, Cheng
Li, Chao
Wang, Pengyu
Hou, Xiaofeng
Wang, Jing
Sun, Shixuan
Guo, Minyi
Wu, Hanqing
Chen, Dongbai
Liu, Xiangwen
Xu, Cheng
Li, Chao
Wang, Pengyu
Hou, Xiaofeng
Wang, Jing
Sun, Shixuan
Guo, Minyi
Wu, Hanqing
Chen, Dongbai
Liu, Xiangwen
Publication Year :
2023

Abstract

Random walk serves as a powerful tool in dealing with large-scale graphs, reducing data size while preserving structural information. Unfortunately, existing system frameworks all focus on the execution of a single walker task in serial. We propose CoWalker, a high-throughput GPU random walk framework tailored for concurrent random walk tasks. It introduces a multi-level concurrent execution model to allow concurrent random walk tasks to efficiently share GPU resources with low overhead. Our system prototype confirms that the proposed system could outperform (up to 54%) the state-of-the-art in a wide spectral of scenarios. © 2023 Owner/Author.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1383747197
Document Type :
Electronic Resource