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NTIS 바로가기응용통계연구 = The Korean journal of applied statistics, v.34 no.1, 2021년, pp.99 - 114
남현우 (가천대학교 응용통계학과)
With the Fourth Industrial Revolution based on new technology, the semiconductor manufacturing industry researches various analysis methods such as detecting process abnormalities and predicting yield based on equipment sensor data generated in the manufacturing process. The semiconductor manufactur...
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