Finding Faster Configurations using FLASH
January 07, 2018 Β· Declared Dead Β· π IEEE Transactions on Software Engineering
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Authors
Vivek Nair, Zhe Yu, Tim Menzies, Norbert Siegmund, Sven Apel
arXiv ID
1801.02175
Category
cs.SE: Software Engineering
Citations
136
Venue
IEEE Transactions on Software Engineering
Last Checked
4 months ago
Abstract
Finding good configurations for a software system is often challenging since the number of configuration options can be large. Software engineers often make poor choices about configuration or, even worse, they usually use a sub-optimal configuration in production, which leads to inadequate performance. To assist engineers in finding the (near) optimal configuration, this paper introduces FLASH, a sequential model-based method, which sequentially explores the configuration space by reflecting on the configurations evaluated so far to determine the next best configuration to explore. FLASH scales up to software systems that defeat the prior state of the art model-based methods in this area. FLASH runs much faster than existing methods and can solve both single-objective and multi-objective optimization problems. The central insight of this paper is to use the prior knowledge (gained from prior runs) to choose the next promising configuration. This strategy reduces the effort (i.e., number of measurements) required to find the (near) optimal configuration. We evaluate FLASH using 30 scenarios based on 7 software systems to demonstrate that FLASH saves effort in 100% and 80% of cases in single-objective and multi-objective problems respectively by up to several orders of magnitude compared to the state of the art techniques.
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