2020
DOI: 10.48550/arxiv.2011.04726
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TrimTuner: Efficient Optimization of Machine Learning Jobs in the Cloud via Sub-Sampling

Abstract: 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 tech… Show more

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