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Detecting critical bugs in SMT solvers using blackbox mutational fuzzing

Muhammad Numair Mansur, Maria Christakis, Valentin Wüstholz, Fuyuan Zhang

202045 citationsDOIOpen Access PDF

Abstract

Formal methods use SMT solvers extensively for deciding formula satisfiability, for instance, in software verification, systematic test generation, and program synthesis. However, due to their complex implementations, solvers may contain critical bugs that lead to unsound results. Given the wide applicability of solvers in software reliability, relying on such unsound results may have detrimental consequences. In this paper, we present STORM, a novel blackbox mutational fuzzing technique for detecting critical bugs in SMT solvers. We run our fuzzer on seven mature solvers and find 29 previously unknown critical bugs. STORM is already being used in testing new features of popular solvers before deployment.

Topics & Concepts

Fuzz testingComputer scienceSoftware bugSatisfiability modulo theoriesProgramming languageSatisfiabilityModel checkingSymbolic executionImplementationSoftwareCompilerSoftware engineeringTheoretical computer scienceSoftware Testing and Debugging TechniquesSoftware Reliability and Analysis ResearchFormal Methods in Verification
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