Title :
High performance flow field visualization with high-order access dependencies
Author :
Jiang Zhang;Hanqi Guo;Xiaoru Yuan
Author_Institution :
Key Laboratory of Machine Perception (Ministry of Education), and School of EECS, Peking University
Abstract :
We present a novel model based on high-order access dependencies for high performance pathline computation in flow field. The high-order access dependencies are defined as transition probabilities from one data block to other blocks based on a few historical data accesses. Compared with existing methods which employed first-order access dependencies, our approach takes the advantages of high order access dependencies with higher accuracy and reliability in data access prediction. In our work, high-order access dependencies are calculated by tracing densely-seeded pathlines. The efficiency of our proposed approach is demonstrated through a parallel particle tracing framework with high-order data prefetching. Results show that our method can achieve higher data locality than the first-order access dependencies based method, thereby reducing the I/O requests and improving the efficiency of pathline computation in various applications.
Keywords :
"Prefetching","Data visualization","Computational modeling","Data models","Electronic mail","Scalability","Computational fluid dynamics"
Conference_Titel :
Scientific Visualization Conference (SciVis), 2015 IEEE
DOI :
10.1109/SciVis.2015.7429515