Title
Creating a portable, high-level graph analytics paradigm for compute and data-intensive applications.
Abstract
HPC offers tremendous potential to process large amounts of data often termed as big data. Distributing data efficiently and leveraging specialised hardware (e.g., accelerators) are critical in order to best utilise HPC platforms constituting of heterogeneous and distributed systems. In this paper, we develop a portable, high-level paradigm for such systems to run big data applications, more specifically, graph analytics applications popular in the big data and machine learning communities. Using our paradigm, we accelerate three real-world, compute and data intensive, graph analytics applications: a function call graph similarity application, a triangle enumeration subroutine, and a graph assaying application. Our paradigm utilises the MapReduce framework, Apache Spark, in conjunction with CUDA and simultaneously takes advantage of automatic data distribution and accelerator on each node of the system. We demonstrate scalability and parameter space exploration and offer a portable solution to leverage al...
Year
DOI
Venue
2019
10.1504/IJHPCN.2019.097054
IJHPCN
Field
DocType
Volume
Spark (mathematics),Subroutine,Supercomputer,CUDA,Computer science,Graph analytics,Big data,Cloud computing,Scalability,Distributed computing
Journal
13
Issue
Citations 
PageRank 
1
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Robert Searles121.46
Stephen Herbein2305.55
Travis Johnston300.68
michela taufer435253.04
Sunita Chandrasekaran59221.83