Data Civilizer 2.0: a holistic framework for data preparation and analytics
Author(s)
Rezig, El Kindi; Cao, Lei; Stonebraker, Michael; Simonini, Giovanni; Tao, Wenbo; Madden, Samuel R; Ouzzani, Mourad; Tang, Nan; Elmagarmid, Ahmed K; ... Show more Show less
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© 2019 VLDB Endowment. Data scientists spend over 80% of their time (1) parameter-tuning machine learning models and (2) iterating between data cleaning and machine learning model execution. While there are existing efforts to support the first requirement, there is currently no integrated workflow system that couples data cleaning and machine learning development. The previous version of Data Civilizer was geared towards data cleaning and discovery using a set of pre-defined tools. In this paper, we introduce Data Civilizer 2.0, an end-to-end workflow system satisfying both requirements. In addition, this system also supports a sophisticated data debugger and a workflow visualization system. In this demo, we will show how we used Data Civilizer 2.0 to help scientists at the Massachusetts General Hospital build their cleaning and machine learning pipeline on their 30TB brain activity dataset.
Date issued
2019Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory; Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
Proceedings of the VLDB Endowment
Publisher
VLDB Endowment
Citation
Rezig, El Kindi, Cao, Lei, Stonebraker, Michael, Simonini, Giovanni, Tao, Wenbo et al. 2019. "Data Civilizer 2.0: a holistic framework for data preparation and analytics." Proceedings of the VLDB Endowment, 12 (12).
Version: Final published version