English

Mechanised Hypersafety Proofs about Structured Data: Extended Version

Programming Languages 2024-04-10 v1 Logic in Computer Science

Abstract

Arrays are a fundamental abstraction to represent collections of data. It is often possible to exploit structural properties of the data stored in an array (e.g., repetition or sparsity) to develop a specialised representation optimised for space efficiency. Formally reasoning about correctness of manipulations with such structured data is challenging, as they are often composed of multiple loops with non-trivial invariants. In this work, we observe that specifications for structured data manipulations can be phrased as hypersafety properties, i.e., predicates that relate traces of kk programs. To turn this observation into an effective verification methodology, we developed the Logic for Graceful Tensor Manipulation (LGTM), a new Hoare-style relational separation logic for specifying and verifying computations over structured data. The key enabling idea of LGTM is that of parametrised hypersafety specifications that allow the number kk of the program components to depend on the program variables. We implemented LGTM as a foundational embedding into Coq, mechanising its rules, meta-theory, and the proof of soundness. Furthermore, we developed a library of domain-specific tactics that automate computer-aided hypersafety reasoning, resulting in pleasantly short proof scripts that enjoy a high degree of reuse. We argue for the effectiveness of relational reasoning about structured data in LGTM by specifying and mechanically proving correctness of 13 case studies including computations on compressed arrays and efficient operations over multiple kinds of sparse tensors.

Keywords

Cite

@article{arxiv.2404.06477,
  title  = {Mechanised Hypersafety Proofs about Structured Data: Extended Version},
  author = {Vladimir Gladshtein and Qiyuan Zhao and Willow Ahrens and Saman Amarasinghe and Ilya Sergey},
  journal= {arXiv preprint arXiv:2404.06477},
  year   = {2024}
}

Comments

Extended version of the paper accepted at PLDI'24

R2 v1 2026-06-28T15:49:05.081Z