用图表学习代码(主题演讲)

Marc Brockschmidt
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引用次数: 0

摘要

在过去的几年中,从大型源代码语料库(“大代码”)中学习的兴趣越来越大。第一波工作的重点是利用其他机器学习领域的现成方法,如自然语言处理。虽然这些技术已经成功地展示了从代码中学习的可行性,并导致了一些最初的实用解决方案,但它们放弃了对已知程序语义的显式使用。在最近的一系列工作中,我们试图通过将深度学习技术与图中的程序分析方法集成来解决这个问题。图是一种方便的、通用的形式,可以对实体及其关系进行建模,机器学习研究人员对它的兴趣也越来越大。在这次演讲中,我介绍了基于图的学习在理解和生成程序方面的两种应用,并讨论了基于这项工作成功的一系列未来工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from code with graphs (keynote)
Learning from large corpora of source code ("Big Code") has seen increasing interest over the past few years. A first wave of work has focused on leveraging off-the-shelf methods from other machine learning fields such as natural language processing. While these techniques have succeeded in showing the feasibility of learning from code, and led to some initial practical solutions, they forego explicit use of known program semantics. In a range of recent work, we have tried to solve this issue by integrating deep learning techniques with program analysis methods in graphs. Graphs are a convenient, general formalism to model entities and their relationships, and are seeing increasing interest from machine learning researchers as well. In this talk, I present two applications of graph-based learning to understanding and generating programs and discuss a range of future work building on the success of this work.
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