Title :
Scalable computation of streamlines on very large datasets
Author :
Pugmire, David ; Childs, Hank ; Garth, Christoph ; Ahern, Shane ; Weber, G.H.
Author_Institution :
Oak Ridge Nat. Lab., Oak Ridge, TN, USA
Abstract :
Understanding vector fields resulting from large scientific simulations is an important and often difficult task. Streamlines, curves that are tangential to a vector field at each point, are a powerful visualization method in this context. Application of streamline-based visualization to very large vector field data represents a significant challenge due to the non-local and data-dependent nature of streamline computation, and requires careful balancing of computational demands placed on I/O, memory, communication, and processors. In this paper we review two parallelization approaches based on established parallelization paradigms (static decomposition and on-demand loading) and present a novel hybrid algorithm for computing streamlines. Our algorithm is aimed at good scalability and performance across the widely varying computational characteristics of streamline-based problems. We perform performance and scalability studies of all three algorithms on a number of prototypical application problems and demonstrate that our hybrid scheme is able to perform well in different settings.
Keywords :
data visualisation; parallel processing; very large databases; I/O; communication; computational demands balancing; large scientific simulation; memory; on-demand loading; parallelization approach; processor; scalable computation; static decomposition; streamline computation; streamline-based problem; streamline-based visualization; vector field; very large dataset; flow; parallel; scaling; streamlines; visualization;
Conference_Titel :
High Performance Computing Networking, Storage and Analysis, Proceedings of the Conference on
Conference_Location :
Portland, OR
DOI :
10.1145/1654059.1654076