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arxiv: 1705.07538 · v2 · pith:PMEP4U36new · submitted 2017-05-22 · 💻 cs.LG · cs.DB· stat.ML

Infrastructure for Usable Machine Learning: The Stanford DAWN Project

classification 💻 cs.LG cs.DBstat.ML
keywords learningmachineapplicationsdatadawnend-to-endinfrastructureproject
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Despite incredible recent advances in machine learning, building machine learning applications remains prohibitively time-consuming and expensive for all but the best-trained, best-funded engineering organizations. This expense comes not from a need for new and improved statistical models but instead from a lack of systems and tools for supporting end-to-end machine learning application development, from data preparation and labeling to productionization and monitoring. In this document, we outline opportunities for infrastructure supporting usable, end-to-end machine learning applications in the context of the nascent DAWN (Data Analytics for What's Next) project at Stanford.

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