From Programs to Deep Models – Part 2 | SIGPLAN Blog

From Programs to Deep Models – Part 2 | SIGPLAN Blog

The wealth of code now available on-line is fertile ground to enable machine learning to be applied to programming tasks. This post is the second in a series on this topic, focusing on the tasks of…

3 mentions: @michael_w_hicks@yahave@sigplan
Date: 2020/02/12 13:58

Referring Tweets

@michael_w_hicks Now on PL Perspectives: The next post in @yahave 's series about deep learning-based techniques to automate programming tasks. Today he focuses on automatic code labeling and captioning. #programming #MachineLearning t.co/em0patLcRd
@sigplan Today on PL Perspectives, @yahave presents Part 2 of his series on "From Programs to Deep Models", showing how ML methods can produce semantic labeling of code and code captioning. t.co/i0xL3Z92Yf t.co/n6OrH8YNYS

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