Nov. 11, 2022, 2:12 a.m. | Nabeel Seedat, Fergus Imrie, Mihaela van der Schaar

cs.LG updates on arXiv.org arxiv.org

While there have been a number of remarkable breakthroughs in machine
learning (ML), much of the focus has been placed on model development. However,
to truly realize the potential of machine learning in real-world settings,
additional aspects must be considered across the ML pipeline. Data-centric AI
is emerging as a unifying paradigm that could enable such reliable end-to-end
pipelines. However, this remains a nascent area with no standardized framework
to guide practitioners to the necessary data-centric considerations or to
communicate …

arxiv checklist data data-centric development guide machine machine learning systems

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