Abstract

In this paper, we develop load balancing strategies for scalable high-performance parallel A* algorithms suitable for distributed-memory machines. In parallel A* search, inefficiencies such as processor starvation and search of nonessential spaces (search spaces not explored by the sequential algorithm) grow with the number of processors P used, thus restricting its scalability. To alleviate this effect, we propose a novel parallel startup phase and an efficient dynamic load balancing strategy called the quality equalizing (QE) strategy. Our new parallel startup scheme executes optimally in Θ(log P) time and, in addition, achieves good initial load balance. The QE strategy prossess certain unique quantitative and qualitative load balancing properties that enable it to significantly reduce starvation and nonessential work. Consequently, we obtain a highly scalable parallel A* algorithm with an almost-linear speedup. The startup and load balancing schemes were employed in parallel A* algorithms to solve the Traveling Salesman Problem on an nCUBE2 hypercube multicomputer. The QE strategy yields average speedup improvements of about 20-185% and 15-120% at low and intermediate work densities (the ratio of the problem size to P), respectively, over three well-known load balancing methods-the round-robin (RR), the random communication (RC), and the neighborhood averaging (NA) strategies. The average speedup observed on 1024 processors is about 985, representing a very high efficiency of 0.96. Finally, we analyze and empirically evaluate the scalability of parallel A* algorithms in terms of the isoefficiency metric. Our analysis gives (1) a Θ( P log P) lower bound on the isoefficiency function of any parallel A* algorithm, and (2) a general expression for the upper bound on the isoefficiency function of our parallel A* algorithm using the QE strategy on any topology-for the hypercube and 2- D mesh architectures the upper bounds on the isoefficiency function are found to be Θ( P log 2 P) and Θ( P[formula]), respectively. Experimental results validate our analysis, and also show that parallel A* search has better scalability using the QE load balancing strategy than using the RR, RC, or NA strategies.

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