Adversarial Query Synthesis via Bayesian Optimization
Jeffrey Tao
Yimeng Zeng
Haydn Thomas Jones
Natalie Maus
Osbert Bastani
Jacob R. Gardner
Ryan Marcus
- AAML
Main:4 Pages
2 Figures
Bibliography:2 Pages
Abstract
Benchmark workloads are extremely important to the database management research community, especially as more machine learning components are integrated into database systems. Here, we propose a Bayesian optimization technique to automatically search for difficult benchmark queries, significantly reducing the amount of manual effort usually required. In preliminary experiments, we show that our approach can generate queries with more than double the optimization headroom compared to existing benchmarks.
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