To get the most out of this tutorial you should be familiar with programming - Python and pandas specifically. (Among R users, R Studio tends to be a more popular choice). You can download the software on its own, or as part of the Anaconda data science toolkit.Īlthough it is possible to use many different programming languages in Jupyter Notebooks, this article will focus on Python, as it is the most common use case. If your goal is to work with data, using a Notebook will speed up your workflow and make it easier to communicate and share your results.īest of all, as part of the open source Project Jupyter, Jupyter Notebooks are completely free. Using Notebooks is now a major part of the data science workflow at companies across the globe. In other words: it’s a single document where you can run code, display the output, and also add explanations, formulas, charts, and make your work more transparent, understandable, repeatable, and shareable. This article will walk you through how to use Jupyter Notebooks for data science projects and how to set it up on your local machine.Ī notebook integrates code and its output into a single document that combines visualizations, narrative text, mathematical equations, and other rich media. The Jupyter Notebook is an incredibly powerful tool for interactively developing and presenting data science projects. AugHow to Use Jupyter Notebook: A Beginner’s Tutorial What is Jupyter Notebook?
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |