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Parallel MUS Extraction

机译:平行MUS提取

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摘要

Parallelization is a natural direction towards the improvements in the scalability of algorithms for the computation of Minimally Unsatisfiable Subfor-mulas (MUSes), and group-MUSes, of CNF formulas. In this paper we propose and analyze a number of approaches to parallel MUS computation. Just as it is the case with the parallel CDCL-based SAT solving, the communication, i.e. the exchange of learned clauses between the solvers running in parallel, emerges as an important component of parallel MUS extraction algorithms. However, in the context of MUS computation the communication might be unsound. We argue that the assumption-based approach to the incremental CDCL-based SAT solving is the key enabling technology for effective sound communication in the context of parallel MUS extraction, and show that fully unrestricted communication is possible in this setting. Furthermore, we propose a number of techniques to improve the quality of communication, as well as the quality of job distribution in the parallel MUS extractor. We evaluate the proposed techniques empirically on industrially-relevant instances of both plain and group MUS problems, and demonstrate significant (up to an order of magnitude) improvements due to the parallelization.
机译:并行化是朝着改进可扩展性的自然方向发展,这些算法可用于计算CNF公式的最小不满意子公式(MUSes)和组MUSes。在本文中,我们提出并分析了许多并行MUS计算的方法。与基于CDCL的并行SAT求解一样,通信(即并行运行的求解器之间的学习子句交换)成为并行MUS提取算法的重要组成部分。但是,在MUS计算的情况下,通信可能不健全。我们认为,基于CDCL的SAT增量求解的基于假设的方法是在并行MUS提取的情况下有效进行声音通信的关键启用技术,并且表明在这种情况下完全不受限制的通信是可能的。此外,我们提出了多种技术来提高并行MUS提取器中的通信质量以及工作分配的质量。我们在平原和群体MUS问题的与工业相关的实例上经验性地评估了所提出的技术,并由于并行化而展示了显着(高达一个数量级)的改进。

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