(Un)Solvable Loop Analysis
June 02, 2023 Β· Declared Dead Β· π Formal methods in system design
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Authors
Daneshvar Amrollahi, Ezio Bartocci, George Kenison, Laura KovΓ‘cs, Marcel Moosbrugger, Miroslav StankoviΔ
arXiv ID
2306.01597
Category
cs.PL: Programming Languages
Citations
5
Venue
Formal methods in system design
Last Checked
3 months ago
Abstract
Automatically generating invariants, key to computer-aided analysis of probabilistic and deterministic programs and compiler optimisation, is a challenging open problem. Whilst the problem is in general undecidable, the goal is settled for restricted classes of loops. For the class of solvable loops, introduced by Kapur and RodrΓguez-Carbonell in 2004, one can automatically compute invariants from closed-form solutions of recurrence equations that model the loop behaviour. In this paper we establish a technique for invariant synthesis for loops that are not solvable, termed unsolvable loops. Our approach automatically partitions the program variables and identifies the so-called defective variables that characterise unsolvability. Herein we consider the following two applications. First, we present a novel technique that automatically synthesises polynomials from defective monomials, that admit closed-form solutions and thus lead to polynomial loop invariants. Second, given an unsolvable loop, we synthesise solvable loops with the following property: the invariant polynomials of the solvable loops are all invariants of the given unsolvable loop. Our implementation and experiments demonstrate both the feasibility and applicability of our approach to both deterministic and probabilistic programs.
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