Data-Driven Inference of Representation Invariants

Anders Miltner,  Saswat PadhiTodd MillsteinDavid Walker

⟬   ACM SIGPLAN Distinguished Paper ⟭  
[artifact acm_available] [artifact acm_functional] [artifact acm_reusable]

Proceedings of the 41 st ACM SIGPLAN Conference on Programming Language Design and Implementation, 2020
⟨ PLDI 2020 ⟩

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Abstract

A representation invariant is a property that holds of all values of abstract type produced by a module. Representation invariants play important roles in software engineering and program verification. In this paper, we develop a counterexample-driven algorithm for inferring a representation invariant that is sufficient to imply a desired specification for a module. The key novelty is a type-directed notion of visible inductiveness, which ensures that the algorithm makes progress toward its goal as it alternates between weakening and strengthening candidate invariants. The algorithm is parameterized by an example-based synthesis engine and a verifier, and we prove that it is sound and complete for first-order modules over finite types, assuming that the synthesizer and verifier are as well. We implement these ideas in a tool called Hanoi, which synthesizes representation invariants for recursive data types. Hanoi not only handles invariants for first-order code, but higher-order code as well. In its back end, Hanoi uses an enumerative synthesizer called Myth and an enumerative testing tool as a verifier. Because Hanoi uses testing for verification, it is not sound, though our empirical evaluation shows that it is successful on the benchmarks we investigated.

BibTeX Citation
@inproceedings{pldi20/miltner/hanoi,
  title     = {Data-Driven Inference of Representation Invariants},
  author    = {Anders Miltner and
               Saswat Padhi and
               Todd D. Millstein and
               David Walker},
  booktitle = {Proceedings of the 41st {ACM} {SIGPLAN} Conference on Programming
               Language Design and Implementation, {PLDI} 2020, London, UK,
               June 15-20, 2020},
  publisher = {ACM},
  year      = {2020},
  url       = {https://doi.org/10.1145/3385412.3385967},
  doi       = {10.1145/3385412.3385967}
}