This paper aims at decreasing execution time for large-scale structured adaptive mesh refinement (SAMR) applications by proposing a new heuristic re-mapping algorithm and experimentally showing its effectiveness in reducing inter-level communication. Tests were done for five different SAMR applications. The overall goal is to engineer a dynamically adaptive meta-partitioner capable of selecting and configuring the most appropriate partitioning strategy at run-time based on current system and application state. Such a metapartitioner can significantly reduce execution times for general SAMR applications. Computer simulations of physical phenomena are becoming increasingly popular as they constitute an important complement to real-life testin...
Adaptive Mesh Refinement (AMR) is a prevalent method used by distributed-memory simulation applicati...
AbstractWe present a new method for parallelization of adaptive mesh refinement called Concurrent St...
As core counts increase in the world's most powerful supercomputers, applications are becoming limit...
Optimal partitioning of structured adaptive mesh applications necessitates dynamically determining a...
Dynamic adaptive mesh renement methods for the numerical solution to partial dierential equations yi...
To increase the speed of computer simulations we solve partial differential equations (PDEs) using s...
Dynamic Structured Adaptive Mesh Refinement (SAMR) techniques for solving partial differential equat...
Optimal partitioning of structured adaptive mesh applica-tions necessitates dynamically determining ...
Parallel structured adaptive mesh refinement methods decrease the execution time and memory usage of...
We compare several different parallel implementation approaches for the clustering operations perfor...
Structured adaptive mesh refinement (SAMR) techniques provide an effective means for dynamically con...
Structured adaptive mesh refinement methods are being widely used for computer simulations of variou...
We perform a comprehensive performance characterization of load balancing algorithms for parallel st...
Structured adaptive mesh refinement (SAMR) techniques can provide accurate and costeffective solutio...
Abstract. This paper presents the design and experimental evaluation of two dynamic load partitionin...
Adaptive Mesh Refinement (AMR) is a prevalent method used by distributed-memory simulation applicati...
AbstractWe present a new method for parallelization of adaptive mesh refinement called Concurrent St...
As core counts increase in the world's most powerful supercomputers, applications are becoming limit...
Optimal partitioning of structured adaptive mesh applications necessitates dynamically determining a...
Dynamic adaptive mesh renement methods for the numerical solution to partial dierential equations yi...
To increase the speed of computer simulations we solve partial differential equations (PDEs) using s...
Dynamic Structured Adaptive Mesh Refinement (SAMR) techniques for solving partial differential equat...
Optimal partitioning of structured adaptive mesh applica-tions necessitates dynamically determining ...
Parallel structured adaptive mesh refinement methods decrease the execution time and memory usage of...
We compare several different parallel implementation approaches for the clustering operations perfor...
Structured adaptive mesh refinement (SAMR) techniques provide an effective means for dynamically con...
Structured adaptive mesh refinement methods are being widely used for computer simulations of variou...
We perform a comprehensive performance characterization of load balancing algorithms for parallel st...
Structured adaptive mesh refinement (SAMR) techniques can provide accurate and costeffective solutio...
Abstract. This paper presents the design and experimental evaluation of two dynamic load partitionin...
Adaptive Mesh Refinement (AMR) is a prevalent method used by distributed-memory simulation applicati...
AbstractWe present a new method for parallelization of adaptive mesh refinement called Concurrent St...
As core counts increase in the world's most powerful supercomputers, applications are becoming limit...