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SDM 2023 Workshop Proposal

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[“DS2-MH Workshop at SDM23 on April 27 2023 at Minneapolis”]

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[“Data Science for Smart Manufacturing and Healthcare Workshop”]

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updated

2026-03-01 05:21:47

raw text

SDM 2023 Workshop Proposal | [“Data Science for Smart Manufacturing and Healthcare Workshop”] Data Science for Smart Manufacturing and Healthcare Workshop DS2-MH Workshop at SDM23 on April 27 2023 at Minneapolis Workshop Desciption In the era of the Internet of things (IoT), with the rapid development of advanced sensing, data storage, and high-performance computing technologies, both manufacturing industries and healthcare systems are experiencing a data‑driven revolution. However, the unique characteristics of manufacturing and healthcare systems prevent the direct application of existing data-driven methods. Their characteristics include (1) systematic physical principles; (2) high demand for interpretability, robustness, and trustworthiness; and (3) limited computation resources and the need for instant decision-making. These characteristics raised pressing needs to develop domain-aware machine learning for critical tasks in manufacturing and healthcare systems, such as ...

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