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Proceedings ArticleDOI

Chaff: engineering an efficient SAT solver

TLDR
The development of a new complete solver, Chaff, is described which achieves significant performance gains through careful engineering of all aspects of the search-especially a particularly efficient implementation of Boolean constraint propagation (BCP) and a novel low overhead decision strategy.
Abstract
Boolean satisfiability is probably the most studied of the combinatorial optimization/search problems. Significant effort has been devoted to trying to provide practical solutions to this problem for problem instances encountered in a range of applications in electronic design automation (EDA), as well as in artificial intelligence (AI). This study has culminated in the development of several SAT packages, both proprietary and in the public domain (e.g. GRASP, SATO) which find significant use in both research and industry. Most existing complete solvers are variants of the Davis-Putnam (DP) search algorithm. In this paper we describe the development of a new complete solver, Chaff which achieves significant performance gains through careful engineering of all aspects of the search-especially a particularly efficient implementation of Boolean constraint propagation (BCP) and a novel low overhead decision strategy. Chaff has been able to obtain one to two orders of magnitude performance improvement on difficult SAT benchmarks in comparison with other solvers (DP or otherwise), including GRASP and SATO.

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Journal ArticleDOI

SAT problems with chains of dependent variables

TL;DR: Artificial SAT problems are used to show that certain chains of variable dependency have a harmful effect on local search, sometimes causing exponential scaling on intrinsically easy problems, indicating that pathological variable dependencies occur in more realistic applications.
Book ChapterDOI

Extended resolution proofs for symbolic SAT solving with quantification

TL;DR: In this article, the authors present a method combining symbolic SAT solving with BDD quantification (variable elimination) and generation of extended resolution proofs, which allows the use of BDDs instead of established proof generation techniques like clause learning.
Book ChapterDOI

Between SAT and UNSAT: The Fundamental Difference in CDCL SAT

TL;DR: This paper identifies direct connections to the workings of some of the most important elements in CDCL solvers: the effects of restarts and VSIDS, and the roles of learned clauses, and gives a wide range of concrete evidence that highlights the varying effects and roles of these elements.

ZBDD-Based Backtrack Search SAT Solver.

TL;DR: A new approach to Boolean satisfiability that combines backtrack search techniques and zero-suppressed binary decision diagrams (ZBDDs) and allows for a potential exponential increase in the size of the problems that can be handled.
Journal ArticleDOI

Undercover: a primal MINLP heuristic exploring a largest sub-MIP

TL;DR: Undercover is presented, a primal heuristic for nonconvex mixed-integer nonlinear programs (MINLPs) that explores a mixed- integer linear subproblem (sub-MIP) of a given MINLP that nicely complements existing root-node heuristics in different state-of-the-art solvers and helps to significantly improve the overall performance of the MINLP solver SCIP.
References
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Book

Computers and Intractability: A Guide to the Theory of NP-Completeness

TL;DR: The second edition of a quarterly column as discussed by the authors provides a continuing update to the list of problems (NP-complete and harder) presented by M. R. Garey and myself in our book "Computers and Intractability: A Guide to the Theory of NP-Completeness,” W. H. Freeman & Co., San Francisco, 1979.
Book

Genetic Algorithms

Journal ArticleDOI

Tabu Search—Part II

TL;DR: The elements of staged search and structured move sets are characterized, which bear on the issue of finiteness, and new dynamic strategies for managing tabu lists are introduced, allowing fuller exploitation of underlying evaluation functions.
Book ChapterDOI

Optimization and Approximation in Deterministic Sequencing and Scheduling: a Survey

TL;DR: In this article, the authors survey the state of the art with respect to optimization and approximation algorithms and interpret these in terms of computational complexity theory, and indicate some problems for future research and include a selective bibliography.
Book

A machine program for theorem-proving

TL;DR: The programming of a proof procedure is discussed in connection with trial runs and possible improvements.