通过随机抽样在产品线中找到接近最优的配置

Jeho Oh, D. Batory, Margaret Myers, Norbert Siegmund
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引用次数: 123

摘要

软件产品线(SPLs)是高度可配置的系统。这就提出了为预期工作负载找到最佳性能配置的挑战。由于SPL配置空间很大,对所有配置进行基准测试以找到最优配置是不可行的。先前的工作集中在建立性能模型来预测和优化SPL配置。相反,我们直接对配置空间进行随机抽样和递归搜索,以找到接近最优的配置,而无需构建预测模型。我们的算法更简单,具有更高的精度和效率。
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Finding near-optimal configurations in product lines by random sampling
Software Product Lines (SPLs) are highly configurable systems. This raises the challenge to find optimal performing configurations for an anticipated workload. As SPL configuration spaces are huge, it is infeasible to benchmark all configurations to find an optimal one. Prior work focused on building performance models to predict and optimize SPL configurations. Instead, we randomly sample and recursively search a configuration space directly to find near-optimal configurations without constructing a prediction model. Our algorithms are simpler and have higher accuracy and efficiency.
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