游戏树搜索应用的并行信息集生成

M. Richards, Abhishek K. Gupta, O. Sarood, L. Kalé
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引用次数: 1

摘要

信息集生成(ISG)是识别不完全信息博弈树中与玩家观察一致的路径集。推理可能历史的能力对游戏代理的表现至关重要。ISG是一类计算量大但难于高效并行化的组合搜索问题。在本文中,我们解决了Kriegspiel(部分可观察象棋)背景下信息集生成的并行化问题。我们在一个通用的组合搜索引擎上实现了这个算法,并使用来自真实游戏实例的数据集和基准测试来讨论它的性能。此外,我们还展示了负载平衡策略、问题大小和计算粒度(粒度参数)对性能的影响。我们在1024个处理器上实现了超过500的加速,远远超过了之前游戏树搜索应用程序的可扩展性结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallelizing Information Set Generation for Game Tree Search Applications
Information Set Generation (ISG) is the identification of the set of paths in an imperfect information game tree that are consistent with a player's observations. The ability to reason about the possible a history is critical to the performance of game-playing agents. ISG represents a class of combinatorial search problems which is computationally intensive but challenging to efficiently parallelize. In this paper, we address the parallelization of information set generation in the context of Kriegspiel (partially observable chess). We implement the algorithm on top of a general purpose combinatorial search engine and discuss its performance using datasets from real game instances in addition to benchmarks. Further, we demonstrate the effect of load balancing strategies, problem sizes and computational granularity (grain size parameters) on performance. We achieve speedups of over 500 on 1,024 processors, far exceeding previous scalability results for game tree search applications.
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