DNLSAT:非线性实数运算的动态变量排序 MCSAT 框架

Zhonghan Wang
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引用次数: 0

摘要

可满足性模态非线性实数理论(SMT(NRA))求解在程序验证、程序合成和软件测试等多个应用领域都至关重要。在此背景下,最近发明了模型构造可满足性微积分(MCSAT)来直接搜索理论空间中的模型。尽管随后的论文讨论了 MCSAT 的实用方向和最新进展,但较少关注其具体实现。在本文中,我们提出了 MCSAT 动态变量排序的高效实现,称为 dnlsat。我们展示了精心设计的数据结构和有前途的机制,如分支启发式、重启和lemma管理。此外,我们还对动态变量排序带来的潜在影响进行了理论研究。实验评估表明,与其他最先进的 SMT 求解器相比,dnlsat 加快了求解速度,求解出了更多可满足的实例。演示视频:https://youtu.be/T2Z0gZQjnPw 代码:https://github.com/yogurt-shadow/dnlsat/tree/master/code 基准 https://zenodo.org/records/10607722/files/QF_NRA.tar.zst?download=1
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DNLSAT: A Dynamic Variable Ordering MCSAT Framework for Nonlinear Real Arithmetic
Satisfiability modulo nonlinear real arithmetic theory (SMT(NRA)) solving is essential to multiple applications, including program verification, program synthesis and software testing. In this context, recently model constructing satisfiability calculus (MCSAT) has been invented to directly search for models in the theory space. Although following papers discussed practical directions and updates on MCSAT, less attention has been paid to the detailed implementation. In this paper, we present an efficient implementation of dynamic variable orderings of MCSAT, called dnlsat. We show carefully designed data structures and promising mechanisms, such as branching heuristic, restart, and lemma management. Besides, we also give a theoretical study of potential influences brought by the dynamic variablr ordering. The experimental evaluation shows that dnlsat accelerates the solving speed and solves more satisfiable instances than other state-of-the-art SMT solvers. Demonstration Video: https://youtu.be/T2Z0gZQjnPw Code: https://github.com/yogurt-shadow/dnlsat/tree/master/code Benchmark https://zenodo.org/records/10607722/files/QF_NRA.tar.zst?download=1
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