English

On Hash-Based Work Distribution Methods for Parallel Best-First Search

Artificial Intelligence 2017-11-13 v2 Distributed, Parallel, and Cluster Computing

Abstract

Parallel best-first search algorithms such as Hash Distributed A* (HDA*) distribute work among the processes using a global hash function. We analyze the search and communication overheads of state-of-the-art hash-based parallel best-first search algorithms, and show that although Zobrist hashing, the standard hash function used by HDA*, achieves good load balance for many domains, it incurs significant communication overhead since almost all generated nodes are transferred to a different processor than their parents. We propose Abstract Zobrist hashing, a new work distribution method for parallel search which, instead of computing a hash value based on the raw features of a state, uses a feature projection function to generate a set of abstract features which results in a higher locality, resulting in reduced communications overhead. We show that Abstract Zobrist hashing outperforms previous methods on search domains using hand-coded, domain specific feature projection functions. We then propose GRAZHDA*, a graph-partitioning based approach to automatically generating feature projection functions. GRAZHDA* seeks to approximate the partitioning of the actual search space graph by partitioning the domain transition graph, an abstraction of the state space graph. We show that GRAZHDA* outperforms previous methods on domain-independent planning.

Keywords

Cite

@article{arxiv.1706.03254,
  title  = {On Hash-Based Work Distribution Methods for Parallel Best-First Search},
  author = {Yuu Jinnai and Alex Fukunaga},
  journal= {arXiv preprint arXiv:1706.03254},
  year   = {2017}
}

Comments

Source code of domain-specific solvers in multicore environment: https://github.com/jinnaiyuu/Parallel-Best-First-Searches Source code of classical planning in distributed environment: https://github.com/jinnaiyuu/distributed-fast-downward

R2 v1 2026-06-22T20:14:59.036Z