TrimTuner:通过子采样在云端高效优化机器学习作业

Pedro Mendes, Maria Casimiro, P. Romano, D. Garlan
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引用次数: 13

摘要

这项工作介绍了TrimTuner,这是第一个优化云中的机器学习作业的系统,利用子采样技术来降低优化过程的成本,同时考虑到用户指定的约束。TrimTuner联合优化了云和应用程序特定的参数,与云优化的最新技术不同,TrimTuner避免了每次采样新配置时都需要使用完整的训练集来训练模型。事实上,通过利用子采样技术和比原始数据小60倍的数据集,我们发现TrimTuner可以将优化过程的成本降低50倍。此外,与使用子采样技术的超参数优化技术相比,TrimTuner将推荐过程的速度提高了65倍。这种改进的原因是双重的:i)一种新的特定于领域的启发式方法,减少了需要评估获取函数的配置数量;Ii)采用决策树集合,使推荐过程的速度提高一个额外的数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TrimTuner: Efficient Optimization of Machine Learning Jobs in the Cloud via Sub-Sampling
This work introduces TrimTuner, the first system for optimizing machine learning jobs in the cloud to exploit sub-sampling techniques to reduce the cost of the optimization process, while keeping into account user-specified constraints. TrimTuner jointly optimizes the cloud and application-specific parameters and, unlike state of the art works for cloud optimization, eschews the need to train the model with the full training set every time a new configuration is sampled. Indeed, by leveraging sub-sampling techniques and data-sets that are up to 60 x smaller than the original one, we show that TrimTuner can reduce the cost of the optimization process by up to 50 x. Further, TrimTuner speeds-up the recommendation process by 65 x with respect to state of the art techniques for hyperparameter optimization that use sub-sampling techniques. The reasons for this improvement are twofold: i) a novel domain specific heuristic that reduces the number of configurations for which the acquisition function has to be evaluated; ii) the adoption of an ensemble of decision trees that enables boosting the speed of the recommendation process by one additional order of magnitude.
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