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Poster
in
Workshop: NeurIPS 2024 Workshop: Machine Learning and the Physical Sciences

The State of Julia for Scientific Machine Learning

Edward Berman · Jacob Ginesin


Abstract:

Julia has been heralded as a potential successor to Python for scientific machine learning and numerical computing, boasting ergonomic and performance improvements. Since Julia's inception of 2012 and declaration of language goals in 2017, its ecosystem and language level features have grown tremendously. In this paper, we take a modern look at Julia's features and ecosystem, assess the current state of the language, and discuss its viability and pitfalls as a replacement for Python as the de-facto scientific machine learning language.

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