2024
DOI: 10.4108/eetsis.4764
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MFRLMO: Model-free reinforcement learning for multi-objective optimization of apache spark

Muhammed Maruf Öztürk

Abstract: Hyperparameter optimization (HO) is a must to figure out to what extent can a specific configuration of hyperparameters contribute to the performance of a machine learning task. The hardware and MLlib library of Apache Spark have the potential to improve big data processing performance when a tuning operation is combined with the exploitation of hyperparameters. To the best of our knowledge, the most of existing studies employ a black-box approach that results in misleading results due to ignoring the interior… Show more

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