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arxiv: 2009.08525 · v1 · pith:66DCH2WL · submitted 2020-09-17 · cs.SE · cs.AI· cs.LG

Deep Learning & Software Engineering: State of Research and Future Directions

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classification cs.SE cs.AIcs.LG
keywords researchareasengineeringfuturesoftwareworkshopdeepdirections
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Given the current transformative potential of research that sits at the intersection of Deep Learning (DL) and Software Engineering (SE), an NSF-sponsored community workshop was conducted in co-location with the 34th IEEE/ACM International Conference on Automated Software Engineering (ASE'19) in San Diego, California. The goal of this workshop was to outline high priority areas for cross-cutting research. While a multitude of exciting directions for future work were identified, this report provides a general summary of the research areas representing the areas of highest priority which were discussed at the workshop. The intent of this report is to serve as a potential roadmap to guide future work that sits at the intersection of SE & DL.

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