English

A Thread-Local Semantics and Efficient Static Analyses for Race Free Programs

Programming Languages 2020-09-08 v1

Abstract

Data race free (DRF) programs constitute an important class of concurrent programs. In this paper we provide a framework for designing and proving the correctness of data flow analyses that target this class of programs. These analyses are in the same spirit as the "sync-CFG" analysis proposed in earlier literature. To achieve this, we first propose a novel concrete semantics for DRF programs, called L-DRF, that is thread-local in nature---each thread operates on its own copy of the data state. We show that abstractions of our semantics allow us to reduce the analysis of DRF programs to a sequential analysis. This aids in rapidly porting existing sequential analyses to sound and scalable analyses for DRF programs. Next, we parameterize L-DRF with a partitioning of the program variables into "regions" which are accessed atomically. Abstractions of the region-parameterized semantics yield more precise analyses for "region-race" free concurrent programs. We instantiate these abstractions to devise efficient relational analyses for race free programs, which we have implemented in a prototype tool called RATCOP. On the benchmarks, RATCOP was able to prove up to 65% of the assertions, in comparison to 25% proved by our baseline. Moreover, in a comparative study with a recent concurrent static analyzer, RATCOP was up to 5 orders of magnitude faster.

Keywords

Cite

@article{arxiv.2009.02775,
  title  = {A Thread-Local Semantics and Efficient Static Analyses for Race Free Programs},
  author = {Suvam Mukherjee and Oded Padon and Sharon Shoham and Deepak D'Souza and Noam Rinetzky},
  journal= {arXiv preprint arXiv:2009.02775},
  year   = {2020}
}
R2 v1 2026-06-23T18:20:46.960Z