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NTIS 바로가기AORN journal, v.104 no.4, 2016년, pp.286 - 292
Westra, B.L. , Peterson, J.J.
Big data are large volumes of digital data that can be collected from disparate sources and are challenging to analyze. These data are often described with the five ''Vs'': volume, velocity, variety, veracity, and value. Perioperative nurses contribute to big data through documentation in the electr...
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