Toward Fast and Scalable Random Walks over Disk-Resident Graphs via Efficient I/O Management

Author:

Wang Rui1ORCID,Li Yongkun1ORCID,Xu Yinlong1ORCID,Xie Hong2ORCID,Lui John C. S.3ORCID,He Shuibing4ORCID

Affiliation:

1. University of Science and Technology of China, Hefei, The People’s Republic of China

2. Chongqing University, Chongqing, The People’s Republic of China

3. The Chinese University of Hong Kong, Hong Kong SAR, The People’s Republic of China

4. Zhejiang University, Hangzhou, The People’s Republic of China

Abstract

Traditional graph systems mainly use the iteration-based model, which iteratively loads graph blocks into memory for analysis so as to reduce random I/Os. However, this iteration-based model limits the efficiency and scalability of running random walk, which is a fundamental technique to analyze large graphs. In this article, we first propose a state-aware I/O model to improve the I/O efficiency of running random walk, then we develop a block-centric indexing and buffering scheme for managing walk data, and leverage an asynchronous walk updating strategy to improve random walk efficiency. We implement an I/O-efficient graph system, GraphWalker , which is efficient to handle very large disk-resident graphs and also scalable to run tens of billions of random walks with only a single commodity machine. Experiments show that GraphWalker can achieve more than an order of magnitude speedup when compared with DrunkardMob, which is tailored for random walks based on the classical graph system GraphChi, as well as two state-of-the-art single-machine graph systems, Graphene and GraFSoft. Furthermore, when compared with the most recent distributed system KnightKing, GraphWalker still achieves comparable performance with only a single machine, thereby making it a more cost-effective alternative.

Funder

National Key R&D Program of China

Youth Innovation Promotion Association CAS

GRF

National Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture

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