Invariant Synthesis for Incomplete Verification Engines

15 Dec 2017Daniel NeiderPranav GargP. MadhusudanShambwaditya SahaDaejun Park

We propose a framework for synthesizing inductive invariants for incomplete verification engines, which soundly reduce logical problems in undecidable theories to decidable theories. Our framework is based on the counter-example guided inductive synthesis principle (CEGIS) and allows verification engines to communicate non-provability information to guide invariant synthesis... (read more)

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