Challenges in parallel graph processing
A Lumsdaine, D Gregor, B Hendrickson… - Parallel Processing …, 2007 - World Scientific
Parallel Processing Letters, 2007•World Scientific
Graph algorithms are becoming increasingly important for solving many problems in
scientific computing, data mining and other domains. As these problems grow in scale,
parallel computing resources are required to meet their computational and memory
requirements. Unfortunately, the algorithms, software, and hardware that have worked well
for developing mainstream parallel scientific applications are not necessarily effective for
large-scale graph problems. In this paper we present the inter-relationships between graph …
scientific computing, data mining and other domains. As these problems grow in scale,
parallel computing resources are required to meet their computational and memory
requirements. Unfortunately, the algorithms, software, and hardware that have worked well
for developing mainstream parallel scientific applications are not necessarily effective for
large-scale graph problems. In this paper we present the inter-relationships between graph …
Graph algorithms are becoming increasingly important for solving many problems in scientific computing, data mining and other domains. As these problems grow in scale, parallel computing resources are required to meet their computational and memory requirements. Unfortunately, the algorithms, software, and hardware that have worked well for developing mainstream parallel scientific applications are not necessarily effective for large-scale graph problems. In this paper we present the inter-relationships between graph problems, software, and parallel hardware in the current state of the art and discuss how those issues present inherent challenges in solving large-scale graph problems. The range of these challenges suggests a research agenda for the development of scalable high-performance software for graph problems.
World Scientific