Using machine learning clustering to find large coverage holes
Raviv Gal, Giora Simchoni, et al.
MLCAD 2020
We present AS-CDG, a novel automatic scalable system for data-driven coverage-directed generation. The goal of AS-CDG is to find the test templates that maximize the probability of hitting uncovered events. The system contains two phases, one for a coarse-grained search that finds relevant parameters and the other for a fine-grained search for the settings of these parameters. To overcome the lack of evidence in the search, we replace the real target with an approximated target induced by neighboring events, for which we have evidence. Usage results on real-life units of high-end processors illustrate the ability of the proposed system to automatically find the desired test-templates and hit the previously uncovered target events.
Raviv Gal, Giora Simchoni, et al.
MLCAD 2020
Eldad Haber, Brian Irwin, et al.
ICML 2023
Raviv Gal, Haim Kermany, et al.
DAC 2020
Raviv Gal, Eldad Haber, et al.
Optimization and Engineering