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Symbolic execution for randomized programs

Zachary J. Susag, Sumit Lahiri, Justin Hsu, Subhajit Roy

2022Proceedings of the ACM on Programming Languages16 citationsDOIOpen Access PDF

Abstract

We propose a symbolic execution method for programs that can draw random samples. In contrast to existing work, our method can verify randomized programs with unknown inputs and can prove probabilistic properties that universally quantify over all possible inputs. Our technique augments standard symbolic execution with a new class of probabilistic symbolic variables , which represent the results of random draws, and computes symbolic expressions representing the probability of taking individual paths. We implement our method on top of the KLEE symbolic execution engine alongside multiple optimizations and use it to prove properties about probabilities and expected values for a range of challenging case studies written in C++, including Freivalds’ algorithm, randomized quicksort, and a randomized property-testing algorithm for monotonicity. We evaluate our method against Psi, an exact probabilistic symbolic inference engine, and Storm, a probabilistic model checker, and show that our method significantly outperforms both tools.

Topics & Concepts

Symbolic executionComputer scienceProbabilistic logicRandomized algorithmConcolic testingMonotonic functionRange (aeronautics)Theoretical computer scienceAlgorithmMathematicsProgramming languageArtificial intelligenceMaterials scienceComposite materialSoftwareMathematical analysisSoftware Testing and Debugging TechniquesSoftware Engineering ResearchFormal Methods in Verification