Publication | Open Access
Scalable, Parallel Best-First Search for Optimal Sequential Planning
60
Citations
27
References
2009
Year
Artificial IntelligenceMathematical ProgrammingCluster ComputingEngineeringComputer ArchitectureParallel MetaheuristicsParallel AlgorithmsOperations ResearchParallel ClustersParallel ComputingCombinatorial OptimizationMassively-parallel ComputingComputer EngineeringFast Downward PlannerComputer ScienceComputational ScienceAi PlanningOptimal Sequential PlanningHeuristic PlanningCloud ComputingParallel ProcessingParallel Performance EvaluationParallel ProgrammingPlanningData-level ParallelismHeuristic Search
Large-scale, parallel clusters composed of commodity processors are increasingly available, enabling the use of vast processing capabilities and distributed RAM to solve hard search problems. We investigate parallel algorithms for optimal sequential planning, with an emphasis on exploiting distributed memory computing clusters. In particular, we focus on an approach which distributes and schedules work among processors based on a hash function of the search state. We use this approach to parallelize the A* algorithm in the optimal sequential version of the Fast Downward planner. The scaling behavior of the algorithm is evaluated experimentally on clusters using up to 128 processors, a significant increase compared to previous work in parallelizing planners. We show that this approach scales well, allowing us to effectively utilize the large amount of distributed memory to optimally solve problems which require hundreds of gigabytes of RAM to solve. We also show that this approach scales well for a single, shared-memory multicore machine.
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