IsoPredict: Dynamic Predictive Analysis for Detecting Unserializable Behaviors in Weakly Isolated Data Store Applications

April 06, 2024 Β· Declared Dead Β· πŸ› Proc. ACM Program. Lang.

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Authors Chujun Geng, Spyros Blanas, Michael D. Bond, Yang Wang arXiv ID 2404.04621 Category cs.PL: Programming Languages Cross-listed cs.DB Citations 2 Venue Proc. ACM Program. Lang. Last Checked 4 months ago
Abstract
This paper presents the first dynamic predictive analysis for data store applications under weak isolation levels, called Isopredict. Given an observed serializable execution of a data store application, Isopredict generates and solves SMT constraints to find an unserializable execution that is a feasible execution of the application. Isopredict introduces novel techniques that handle divergent application behavior; solve mutually recursive sets of constraints; and balance coverage, precision, and performance. An evaluation on four transactional data store benchmarks shows that Isopredict often predicts unserializable behaviors, 99% of which are feasible.
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