Title
An efficient uncertain graph processing framework for heterogeneous architectures
Abstract
ABSTRACTUncertain or probabilistic graphs have been ubiquitously used in many emerging applications. Previously CPU based techniques were proposed to use sampling but suffer from (1) low computation efficiency and large memory overhead, (2) low degree of parallelism, and (3) nonexistent general framework to effectively support programming uncertain graph applications. To tackle these challenges, we propose a general uncertain graph processing framework for multi-GPU systems, named BPGraph. Integrated with our highly-efficient path sampling method, BPGraph can support a wide range of uncertain graph algorithms' development and optimization. Extensive evaluation demonstrates a significant performance improvement from BPGraph over the state-of-the-art uncertain graph sampling techniques.
Year
DOI
Venue
2021
10.1145/3437801.3441584
Principles and Practice of Parallel Programming
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
8
Name
Order
Citations
PageRank
Heng Zhang100.34
Lingda Li2163.69
Donglin Zhuang300.34
Rui Liu4695.21
Shuaiwen Song560341.87
Shuaiwen Song660341.87
Dingwen Tao701.01
Yanjun Wu87323.02