Stateless model checking concurrent programs with maximal causality reduction

Jeff Huang
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引用次数: 88

Abstract

We present maximal causality reduction (MCR), a new technique for stateless model checking. MCR systematically explores the state-space of concurrent programs with a provably minimal number of executions. Each execution corresponds to a distinct maximal causal model extracted from a given execution trace, which captures the largest possible set of causally equivalent executions. Moreover, MCR is embarrassingly parallel by shifting the runtime exploration cost to offline analysis. We have designed and implemented MCR using a constraint-based approach and compared with iterative context bounding (ICB) and dynamic partial order reduction (DPOR) on both benchmarks and real-world programs. MCR reduces the number of executions explored by ICB and ICB+DPOR by orders of magnitude, and significantly improves the scalability, efficiency, and effectiveness of the state-of-the-art for both state-space exploration and bug finding. In our experiments, MCR has also revealed several new data races and null pointer dereference errors in frequently studied real-world programs.
无状态模型检查最大因果约简并发程序
提出了一种新的无状态模型检验技术——最大因果约简(MCR)。MCR系统地探索并发程序的状态空间,可以证明执行的次数最少。每次执行都对应于从给定的执行跟踪中提取的不同的最大因果模型,该模型捕获最大可能的因果等效执行集。此外,MCR通过将运行时探索成本转移到离线分析上,实现了令人尴尬的并行。我们使用基于约束的方法设计和实现了MCR,并在基准测试和实际程序中与迭代上下文边界(ICB)和动态偏序约简(DPOR)进行了比较。MCR在数量级上减少了ICB和ICB+DPOR探索的执行次数,并在状态空间探索和bug发现方面显著提高了最新技术的可伸缩性、效率和有效性。在我们的实验中,MCR还在经常研究的实际程序中揭示了一些新的数据竞争和空指针解引用错误。
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