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arxiv: 2205.11739 · v1 · pith:IZYEM7ZR · submitted 2022-05-24 · cs.SE · cs.AI

Deep Learning Meets Software Engineering: A Survey on Pre-Trained Models of Source Code

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classification cs.SE cs.AI
keywords codedeepengineeringlearningmodelspre-trainedresearchsoftware
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Recent years have seen the successful application of deep learning to software engineering (SE). In particular, the development and use of pre-trained models of source code has enabled state-of-the-art results to be achieved on a wide variety of SE tasks. This paper provides an overview of this rapidly advancing field of research and reflects on future research directions.

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