Learn how to use Julia to enable your data-intensive scientific research.
It can be a challenge to know where to start when developing a scalable and reproducible workflow for your data-intensive computations. The Julia programming language is notable for enabling researchers and analysts in diverse domains to get a handle on this challenge. Use this lesson to learn how to start implementing effective scientific computing workflows using Julia.
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Current maintainers of this lesson are
- James Foster: (@jd-foster)
A list of contributors to the lesson can be found in AUTHORS
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