Using High-Speed WANs and Network Data Caches to Enable Remote and Distributed Visualization
January 29, 2018 Β· Declared Dead Β· π International Conference on Software Composition
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Authors
E. Wes Bethel, Brian Tierney, Jason Lee, Dan Gunther, Stephen Lau
arXiv ID
1801.09504
Category
cs.DC: Distributed Computing
Citations
135
Venue
International Conference on Software Composition
Last Checked
4 months ago
Abstract
Visapult is a prototype application and framework for remote visualization of large scientific datasets. We approach the technical challenges of tera-scale visualization with a unique architecture that employs high speed WANs and network data caches for data staging and transmission. This architecture allows for the use of available cache and compute resources at arbitrary locations on the network. High data throughput rates and network utilization are achieved by parallelizing I/O at each stage in the application, and by pipelining the visualization process. On the desktop, the graphics interactivity is effectively decoupled from the latency inherent in network applications. We present a detailed performance analysis of the application, and improvements resulting from field-test analysis conducted as part of the DOE Combustion Corridor project.
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