With that being said, lets highlight the benefits of P圜harm: Code is for the long-haul ( not like Jupyter, which is trial and error focused)Īs you can see, the main differences are in that P圜harm is used for the code that is usually the final product, whereas Jupyter is more for research-based coding and visualizing.Use in production (not usually research).To make these points more clear, here is when you can and should use P圜harm: So, pretending that we are using the community version ( the free one) of P圜harm, we will highlight that product instead of the integrated one with Jupyter Notebook. With that being said, if you are using that version then a lot of the benefits and when to use, would also apply to P圜harm - however, I still think it is easier to have them separated - as the UI gets a little wonky when it is shown in P圜harm. It even has Jupyter Notebook support - however, it is just available in the paid, professional version. P圜harm is a similar tool that organizes code and helps to run the data science process. SQL adaptabliiy ( username/password/host/port/database name setup).Text editing ( general code commenting, markdown, code prettify, collapsible headings, highlighter, spellchecker, scratchpad).Visualization display ( user interface).Easy start-up, just type juptyer notebook in your terminal.With that being said, let’s highlight the benefits of the Jupyter Notebook: The reason these steps are preferred in the researching step of data science is that it is simply just easier - however, this statement may not be true for everyone, since it is ultimately up to preference. To make these points more clear, here is when you can and should use Jupyter Notebook: In addition to model deployment, you may want to do these main data science steps in the next tool we will discuss below, but when you are first starting off, I think it is easier to preprocess and train data in your notebook, without having to worry about production parts. You can even do most of the ‘ end-to-end’ data science process in your notebook, except for one major step ( however, there are platforms that are incorporating notebooks with more machine learning operation steps), which is the deployment, which you will usually do in conjunction with another platform like AWS for example. When starting a data science project, you can use Jupyter Notebook to import your data, analyze it, choose specific features as well as create new features, create models and compare them, as well as visualize most of the steps as you go. The time to use it is usually at the beginning of the project where your code is not set in stone, and you are focusing on research rather than the end product. This tool is incredibly useful for data scientists in an educational setting, as well as a professional setting. NBextensions tab (this is an add-on that is very useful).
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