An Adaptive Framework for Large-scale State Space Search
    
    Workshop on Large Scale Parallel Processing at IPDPS (LSPP) 2011
    Publication Type: Paper
    Repository URL: 201010_StateSpaceSearch
    Abstract
    State space search problems abound in the artificial intelligence,
planning and optimization literature. Solving such problems is
generally NP-hard. Therefore, a brute-force approach to state space
search must be employed. It is instructive to solve them on large
parallel machines with significant computational power. However,
writing efficient and scalable parallel programs has traditionally
been a challenging undertaking. In this paper, we analyze several
performance characteristics common to all parallel state space
search applications. In particular, we focus on the issues of grain
size, the prioritized execution of tasks and the balancing of load
among processors in the system. We demonstrate the techniques that
are used to scale such applications to large scale. We have
incorporated these techniques into a general search engine
framework that is designed to solve a broad class of state space
search problems. We demonstrate the efficiency and scalability of
our design using three example applications, and present scaling
results up to 16,384 processors.
    TextRef
      
        Yanhua Sun, Gengbin Zheng, Pritish Jetley and Laxmikant V. Kale, "An Adaptive
Framework for Large-scale State Space Search", Proceedings of Workshop on
Large-Scale Parallel Processing (LSPP) in IEEE International Parallel and
Distributed Processing Symposium (IPDPS), 2011
      
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