GraphCodeBERT: Pre-training Code Representations with Data Flow
Daya Guo(Sun Yat-sen University), Ming Zhou(Langdon Hospital), Colin B. Clement(Microsoft Research (United Kingdom)), Shuo Ren, Jian Yin(Sun Yat-sen University), Michele Tufano, Sheng‐Yu Fu(University of North Carolina at Charlotte), Nan Duan(Microsoft Research Asia (China)), Dawn Drain, Daxin Jiang(Jiangsu University), Neel Sundaresan, Shujie Liu(Shijiazhuang University), A. Svyatkovskiy(Google (United States)), Long Zhou, Duyu Tang(Microsoft Research Asia (China)), Shao Kun Deng, Shuai Lu, Zhangyin Feng(Harbin Institute of Technology)
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