Directed Incremental Symbolic Execution

Author:

Yang Guowei1,Person Suzette2,Rungta Neha3,Khurshid Sarfraz4

Affiliation:

1. Texas State University, San Marcos, TX

2. NASA Langley Research Center, Hampton, VA

3. NASA Ames Research Center, Moffett Field, CA

4. University of Texas at Austin, Austin, TX

Abstract

The last few years have seen a resurgence of interest in the use of symbolic execution—a program analysis technique developed more than three decades ago to analyze program execution paths. Scaling symbolic execution to real systems remains challenging despite recent algorithmic and technological advances. An effective approach to address scalability is to reduce the scope of the analysis. For example, in regression analysis, differences between two related program versions are used to guide the analysis. While such an approach is intuitive, finding efficient and precise ways to identify program differences, and characterize their impact on how the program executes has proved challenging in practice. In this article, we present Directed Incremental Symbolic Execution (DiSE), a novel technique for detecting and characterizing the impact of program changes to scale symbolic execution. The novelty of DiSE is to combine the efficiencies of static analysis techniques to compute program difference information with the precision of symbolic execution to explore program execution paths and generate path conditions affected by the differences. DiSE complements other reduction and bounding techniques for improving symbolic execution. Furthermore, DiSE does not require analysis results to be carried forward as the software evolves—only the source code for two related program versions is required. An experimental evaluation using our implementation of DiSE illustrates its effectiveness at detecting and characterizing the effects of program changes.

Funder

Division of Information and Intelligent Systems

Division of Computing and Communication Foundations

Air Force Office of Scientific Research

Division of Computer and Network Systems

Publisher

Association for Computing Machinery (ACM)

Subject

Software

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2. Compatible Branch Coverage Driven Symbolic Execution for Efficient Bug Finding;Proceedings of the ACM on Programming Languages;2024-06-20

3. SSRD: Shapes and Summaries for Race Detection in Concurrent Data Structures;Proceedings of the 2024 ACM SIGPLAN International Symposium on Memory Management;2024-06-20

4. Change‐aware model checking for evolving concurrent programs based on Program Dependence Net;Journal of Software: Evolution and Process;2023-11-09

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