March 2, 2022, 2 p.m. | Sabri Bolkar

InfoQ - AI, ML & Data Engineering www.infoq.com

AlphaCode study brings promising results for goal-oriented code synthesis using deep sequence-to-sequence models. It extends the previous networks and releases a new dataset named CodeContests to contribute to future research benchmarks.

By Sabri Bolkar

ai alphacode code deep learning learning machine learning ml & data engineering natural language processing news

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