Adaptation to Industry 4.0 Using Machine Learning and Cloud Computing to Improve the Conventional Method of Deburring in Aerospace Manufacturing Industry
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Wahyu Caesarendra | Bobby K. Pappachan | Tomi Wijaya | Tegoeh Tjahjowidodo | B. K. Pappachan | T. Tjahjowidodo | W. Caesarendra | Tomi Wijaya
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