An automated approach to generating efficient constraint solvers

D. Balasubramaniam, Christopher Jefferson, Lars Kotthoff, Ian Miguel, P. Nightingale
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引用次数: 11

Abstract

Combinatorial problems appear in numerous settings, from timetabling to industrial design. Constraint solving aims to find solutions to such problems efficiently and automatically. Current constraint solvers are monolithic in design, accepting a broad range of problems. The cost of this convenience is a complex architecture, inhibiting efficiency, extensibility and scalability. Solver components are also tightly coupled with complex restrictions on their configuration, making automated generation of solvers difficult. We describe a novel, automated, model-driven approach to generating efficient solvers tailored to individual problems and present some results from applying the approach. The main contribution of this work is a solver generation framework called Dominion, which analyses a problem and, based on its characteristics, generates a solver using components chosen from a library. The key benefit of this approach is the ability to solve larger and more difficult problems as a result of applying finer-grained optimisations and using specialised techniques as required.
生成有效约束求解器的自动化方法
组合问题出现在许多情况下,从时间表到工业设计。约束求解的目的是高效、自动地寻找此类问题的解决方案。当前的约束求解器在设计上是单一的,接受的问题范围很广。这种便利的代价是复杂的体系结构,抑制了效率、可扩展性和可伸缩性。求解器组件也与它们配置上的复杂限制紧密耦合,使得求解器的自动生成变得困难。我们描述了一种新颖的、自动化的、模型驱动的方法来生成针对个别问题的高效求解器,并展示了应用该方法的一些结果。这项工作的主要贡献是一个称为Dominion的求解器生成框架,它分析问题,并根据其特征,使用从库中选择的组件生成求解器。这种方法的主要好处是,通过应用细粒度优化和根据需要使用专门的技术,能够解决更大、更困难的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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