Benchmarking Symbolic Execution Using Constraint Problems - Initial Results

Sahil Verma, R. Yap
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引用次数: 1

Abstract

Symbolic execution is a powerful technique for bug finding and program testing. It is successful in finding bugs in real-world code. The core reasoning techniques use constraint solving, path exploration, and search, which are also the same techniques used in solving combinatorial problems, e.g., finite-domain constraint satisfaction problems (CSPs). We propose CSP instances as more challenging benchmarks to evaluate the effectiveness of the core techniques in symbolic execution. We transform CSP benchmarks into C programs suitable for testing the reasoning capabilities of symbolic execution tools. From a single CSP P, we transform P depending on transformation choice into different C programs. Preliminary testing with the KLEE, Tracer-X, and LLBMC tools show substantial runtime differences from transformation and solver choice. Our C benchmarks are effective in showing the limitations of existing symbolic execution tools. The motivation for this work is we believe that benchmarks of this form can spur the development and engineering of improved core reasoning in symbolic execution engines.
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使用约束问题对符号执行进行基准测试-初步结果
符号执行对于bug查找和程序测试来说是一种强大的技术。它在查找真实代码中的bug方面是成功的。核心推理技术使用约束求解、路径探索和搜索,这也是用于解决组合问题的相同技术,例如有限域约束满足问题(csp)。我们建议将CSP实例作为更具挑战性的基准来评估符号执行中核心技术的有效性。我们将CSP基准转换为适合于测试符号执行工具推理能力的C程序。从单个CSP P,根据变换选择将P变换成不同的C程序。使用KLEE、Tracer-X和LLBMC工具进行的初步测试显示,转换和求解器的选择在运行时存在很大差异。我们的C基准测试有效地展示了现有符号执行工具的局限性。这项工作的动机是我们相信这种形式的基准测试可以刺激符号执行引擎中改进的核心推理的开发和工程。
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