2018
DOI: 10.14778/3229863.3236234
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H elix

Abstract: Data application developers and data scientists spend an inordinate amount of time iterating on machine learning (ML) workflowsby modifying the data pre-processing, model training, and postprocessing steps-via trial-and-error to achieve the desired model performance. Existing work on accelerating machine learning focuses on speeding up one-shot execution of workflows, failing to address the incremental and dynamic nature of typical ML development. We propose HELIX, a declarative machine learning system that ac… Show more

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Cited by 14 publications
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