Fast Multiresolution Reads of Massive Simulation Datasets [electronic resource]
Today?s massively parallel simulation codes can produce output ranging up to many terabytes of data. Utilizing this data to support scientific inquiry requires analysis and visualization, yet the sheer size of the data makes it cumbersome or impossible to read without computational resources similar...
Saved in:
Online Access: |
Full Text (via OSTI) |
---|---|
Corporate Author: | |
Format: | Government Document Electronic eBook |
Language: | English |
Published: |
Washington, D.C. : Oak Ridge, Tenn. :
United States. National Nuclear Security Administration ; Distributed by the Office of Scientific and Technical Information, U.S. Department of Energy,
2014.
|
Subjects: |
Summary: | Today?s massively parallel simulation codes can produce output ranging up to many terabytes of data. Utilizing this data to support scientific inquiry requires analysis and visualization, yet the sheer size of the data makes it cumbersome or impossible to read without computational resources similar to the original simulation. We identify two broad classes of problems for reading data and present effective solutions for both. The first class of data reads depends on user requirements and available resources. Tasks such as visualization and user-guided analysis may be accomplished using only a subset of variables with a restricted spatial extent at a reduced resolution. The other class of reads requires full resolution multivariate data to be loaded, for example to restart a simulation. We show that utilizing the hierarchical multiresolution IDX data format enables scalable and efficient serial and parallel read access on a variety of hardware from supercomputers down to portable devices. Here, we demonstrate interactive view-dependent visualization and analysis of massive scientific datasets using low-power commodity hardware, and we compare read performance with other parallel file formats for both full and partial resolution data. |
---|---|
Item Description: | Published through Scitech Connect. 01/01/2014. "Journal ID: ISSN 0302-9743." ": US2205649." Kumar, Sidharth ; Christensen, Cameron ; Schmidt, John A. ; Bremer, Peer-Timo ; Brugger, Eric ; Vishwanath, Venkatram ; Carns, Philip ; Kolla, Hemanth ; Grout, Ray ; Chen, Jacqueline ; et al. Univ. of Utah, Salt Lake City, UT (United States) |
Physical Description: | Size: p. 314-330 : digital, PDF file. |