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Facebook Research - Unsupervised Translation of Programming Languages

Machine Learning Street Talk (MLST)

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Scaling Language Models and Code Innovation

This chapter examines the debate around scaling language models, focusing on the impact of complexity on performance and the challenges of overfitting. The discussion also covers the open sourcing of code for model evaluation, innovative applications in code completion, and the potential advancements in programming language translation. Additionally, it explores the interplay between data size and model effectiveness, while addressing the historical challenges of automated theorem proving and how machine learning could offer new solutions.

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