Verifying Solutions to Semantics-Guided Synthesis Problems
August 28, 2024 Β· Declared Dead Β· π Proc. ACM Program. Lang.
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Authors
Charlie Murphy, Keith Johnson, Thomas Reps, Loris D'Antoni
arXiv ID
2408.15475
Category
cs.PL: Programming Languages
Cross-listed
cs.LO
Citations
1
Venue
Proc. ACM Program. Lang.
Last Checked
4 months ago
Abstract
Semantics-Guided Synthesis (SemGuS) provides a framework to specify synthesis problems in a solver-agnostic and domain-agnostic way, by allowing a user to provide both the syntax and semantics of the language in which the desired program should be synthesized. Because synthesis and verification are closely intertwined, the SemGuS framework raises the problem of how to verify programs in a solver and domain-agnostic way. We prove that the problem of verifying whether a program is a valid solution to a SemGuS problem can be reduced to proving validity of a query in the `CLP calculus, a fixed-point logic that generalizes Constrained Horn Clauses and co-Constrained Horn Clauses. Our encoding into `CLP allows us to further classify the SemGuS verification problems into ones that are reducible to validity of (i) first-order-logic formulas, (ii) Constrained Horn Clauses, (iii) co-Constrained Horn Clauses, and (iv) `CLP queries. Furthermore, our encoding shines light on some limitations of the SemGuS framework, such as its inability to model nondeterminism and reactive synthesis. We thus propose a modification to SemGuS that makes it more expressive, and for which verifying solutions is exactly equivalent to proving validity of a query in the `CLP calculus. Our implementation of SemGuS verifiers based on the above encoding can verify instances that were not even encodable in previous work. Furthermore, we use our SemGuS verifiers within an enumeration-based SemGuS solver to correctly synthesize solutions to SemGuS problems that no previous SemGuS synthesizer could solve.
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