Automating code review activities by large-scale pre-training
Zhiyu Li(Peking University), Neel Sundaresan, Sheng‐Yu Fu(University of North Carolina at Charlotte), Nan Duan(Microsoft Research Asia (China)), Grant Jenks(LinkedIn (United States)), Jared Green(LinkedIn (United States)), Daya Guo(Sun Yat-sen University), A. Svyatkovskiy(Google (United States)), Deep Majumder(LinkedIn (United States)), Shuai Lu, Shailesh Jannu(LinkedIn (United States))
Proceedings of the 30th ACM Joint European Software Engineering Conference and Symposium on the Foundations of Software Engineering
November 7, 2022
Cited by 167
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