We present the results of a series of experiments studying how visualization software scales to massive data sets. Although several paradigms exist for processing large data, we focus on pure parallelism, the dominant approach for production software. These experiments utilized multiple visualization algorithms and were run on multiple architectures. Two types of experiments were performed. For the first, we examined performance at massive scale: 16,000 or more cores and one trillion or more cells. For the second, we studied weak scaling performance. These experiments were performed on the largest data set sizes published to date in visualization literature, and the findings on scaling characteristics and bottlenecks contribute to understan...
A key trend facing extreme-scale computational science is the widening gap between computational and...
Visualization is a highly data intensive science: visualization algorithms take as input vast amount...
An efficient algorithm for parallel acquisition of visualization data for large sparse matrices is p...
We present the results of a series of experiments studying how visualization software scales to mass...
Journal ArticleFor some time, researchers have done production visualization almost exclusively usi...
Data sets of immense size are regularly generated on large scale computing resources. Even among mo...
Data sets of immense size are regularly generated on large scale computing resources. Even among mor...
Parallel visualization is one of the most powerful tools for gaining insight into large datasets. Ma...
ions are also highly dependent on the user and the context, and an abstraction that makes something ...
International audienceWe introduce a conceptual model for scalability designed for visualization res...
Abstract — Larger, higher resolution displays can be used to increase the scalability of information...
An exponential growth of datasets from different fields of science creates the need for scalable vis...
High-performance computing systems continue to employ more and more processor cores. Current typical...
, A high-level abstract model 1 lets visualization designers create displays in an integrated enviro...
Data sets of immense size are regularly generated by large scale computing resources. Even among mor...
A key trend facing extreme-scale computational science is the widening gap between computational and...
Visualization is a highly data intensive science: visualization algorithms take as input vast amount...
An efficient algorithm for parallel acquisition of visualization data for large sparse matrices is p...
We present the results of a series of experiments studying how visualization software scales to mass...
Journal ArticleFor some time, researchers have done production visualization almost exclusively usi...
Data sets of immense size are regularly generated on large scale computing resources. Even among mo...
Data sets of immense size are regularly generated on large scale computing resources. Even among mor...
Parallel visualization is one of the most powerful tools for gaining insight into large datasets. Ma...
ions are also highly dependent on the user and the context, and an abstraction that makes something ...
International audienceWe introduce a conceptual model for scalability designed for visualization res...
Abstract — Larger, higher resolution displays can be used to increase the scalability of information...
An exponential growth of datasets from different fields of science creates the need for scalable vis...
High-performance computing systems continue to employ more and more processor cores. Current typical...
, A high-level abstract model 1 lets visualization designers create displays in an integrated enviro...
Data sets of immense size are regularly generated by large scale computing resources. Even among mor...
A key trend facing extreme-scale computational science is the widening gap between computational and...
Visualization is a highly data intensive science: visualization algorithms take as input vast amount...
An efficient algorithm for parallel acquisition of visualization data for large sparse matrices is p...