Abstract
While the demand for machine learning (ML) applications is booming, there is a scarcity of data scientists capable of building such models. Automatic machine learning (AutoML) approaches have been proposed that help with this problem by synthesizing end-toend ML data processing pipelines. However, these follow a besteffort approach and a user in the loop is necessary to curate and refine the derived pipelines. Since domain experts often have little or no expertise in machine learning, easy-to-use interactive interfaces that guide them throughout the model building process are necessary. In this paper, we present Visus, a system designed to support the model building process and curation of ML data processing pipelines generated by AutoML systems. We describe the framework used to ground our design choices and a usage scenario enabled by Visus. Finally, we discuss the feedback received in user testing sessions with domain experts.
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CITATION STYLE
Santos, A., Castelo, S., Felix, C., Ono, J. P., Yu, B., Hong, S., … Freire, J. (2019). Visus: An interactive system for automatic machine learning model building and curation. In Proceedings of the ACM SIGMOD International Conference on Management of Data. Association for Computing Machinery. https://doi.org/10.1145/3328519.3329134
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