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Incorporating Clause Learning in Grid-Based Randomized SAT Solving

机译:将子句学习与基于网格的随机SAT解决方案相结合

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Computational Grids provide a widely distributed computing environment suitable for randomized SAT solving. This paper develops techniques for incorporating clause learning, known to yield significant speed-ups in the sequential case, in such a distributed framework. The approach exploits existing state-of-the-art clause learning SAT solvers by embedding them with virtually no modifications. The paper presents an algorithmic framework for learning-enhanced randomized SAT solving in Grid environments. With a substantial amount of controlled experiments it is demonstrated that this approach enables a form of clause learning which is not directly available in the underlying sequential SAT solver. Finally, an implementation of the algorithm is run in a production level Grid where it solves several problems not solved in the SAT 2007 solver competition.
机译:计算网格提供了适用于随机SAT求解的广泛分布的计算环境。本文开发了一种用于合并子句学习的技术,该技术在这种分布式框架中可以在顺序情况下显着提高速度。该方法通过将现有的最先进的子句学习SAT求解器几乎没有任何修改地嵌入其中,从而加以利用。本文提出了一种用于网格环境中学习增强型随机SAT求解的算法框架。通过大量的受控实验,证明了该方法可以实现一种形式的子句学习,而子句学习在底层顺序SAT求解器中无法直接使用。最后,该算法的实现在生产级别的Grid中运行,它可以解决SAT 2007求解器竞争中未解决的几个问题。

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