Julia

Julia is a high-level, multi-paradigm, dynamic programming language. Unlike Python, Julia was initially designed with high-performance capabilities in mind and has, on various occasions, been used for implementing robust algorithms designed to run in supercomputers.

This section will discuss how and why Julia was built, its installation & configuration, some of its most relevant characteristics, the most relevant packages for Data Science, Computer Science & Machine Learning, implementation of various algorithms, scientific & mathematical computing, performance comparisons vs. other similar languages, and more.

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Julia is a reasonably new, open-source, high-level, dynamically-typed programming language. It’s a multi-platform language supported on Linux, macOS, Windows and FreeBSD….

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