Choosing the right integrated development environment or data science notebook solution is key to increasing productivity and streamlining the research or development process for maximum efficiency. Jupyter Notebook and PyCharm are two popular choices that offer their own specific benefits in different areas of data science and software development.

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What is Jupyter Notebook?

The Jupyter Notebook logo.
Image: Jupyter Notebook

Jupyter is a browser-based, open-source data science notebook tool that supports Python, Julia, and other dynamic programming languages such as R, Scilab and Octane. Focused on scripts and accompanying documentation, Jupyter is ideal for data scientists who need a way to create quick data visualizations. However, source code is stored as HTML and readable by Jupyter rather than Python.

What is PyCharm?

pycharm logo
Image: PyCharm

PyCharm is a dedicated IDE tool focused on providing a complete solution for creating full-fledged packages and software in Python, including classes and graphical user interfaces. It also excels in complex environments where multiple scripts interact with each other and need to be managed.

PyCharm’s most popular features include a built-in debugger and smart autocomplete, as well as DevOps tools such as version control, which makes it ideal for developers and software engineers.

Jupyter Notebook vs. PyCharm: Comparison table

Jupyter Notebook and PyCharm have distinct features, which make each of these data science tools better for specific applications. For instance, Jupyter’s features are more suited to data analysts and research applications, whereas PyCharm’s features are designed for developers and software engineering.

FeaturesJupyter NotebookPyCharm
Smart auto-completeNoYes
Inline code execution using blocksYesNo
Single line graphing supportYesNo
Intelligent code analysisNoYes
Integration with popular toolsYesYes
Starting priceFree$249 per user, billed annually

Jupyter Notebook and PyCharm pricing

Jupyter Notebook offers a 100% open-source solution released under the liberal terms of the modified BSD license. It is free to access and use, making it an excellent option for companies seeking to economize on software expenses.

By comparison, organizations must pay to use PyCharm. The solution starts at $249.00 per user for the first year of use. The price then falls to $199.00 per user during the second year and finally to $149.00 for the third year and onwards.

Feature comparison: Jupyter Notebook vs. PyCharm

Code execution

Both Jupyter and PyCharm allow you to execute your code in place and offer ways to analyze or determine where errors are originating. That said, Jupyter is more flexible in this regard, as it allows for single line executions, which saves time in finding coding errors and makes the platform ideal for trial-and-error coding or experimentation (Figure A).

Figure A

Jupyter Notebook interface displaying figures and text
Jupyter Notebook’s single line executions let you test features as you code, with support for over 40 programming languages. Image: Jupyter Notebook

With PyCharm, you would need to complete or change the entire snippet of code in order to run it and observe the output. As a result, testing or experimenting with code is slower, and finding coding errors is a much more meticulous task compared to Jupyter.

Coding features

PyCharm’s autocomplete feature really facilitates faster development and workflow, and it is something that Jupyter does not offer (Figure B). This smart editing feature is why PyCharm is clearly the choice for developers and software engineers, especially those working exclusively in Python.

Figure B

PyCharm code editor interface in dark mode
PyCharm’s intuitive coding interface with intelligent code completion. Image: PyCharm

Jupyter has unique coding features as well, but they are mostly aimed at visualization. This includes the ability to graph or visualize individual lines of code or data, which is something PyCharm does not offer. This is a handy tool for data science or research applications, where the intended audience of the output is non-technical.

Integrations

Both of these tools offer a host of built-in integrations for frameworks and other developer productivity tools. Although they share some of the same integrations, there are some tools that are not shared.

Some key integrations for Jupyter that PyCharm does not offer are GitHub, Dropbox, Scala and TensorFlow. PyCharm offers integration with Django, Kite, Wakatime and Pytest.

Jupyter Notebook pros and cons

Pros

  • Users can utilize markdown language for comprehensive documentation.
  • Jupyter offers a contemporary, user-friendly and engaging interface.
  • Users can work with diverse programming languages, such as Python, R and Julia, with ease.
  • Jupyter allows for seamless sharing of images, code and text in a unified, interactive environment.

Cons

  • Utilizing version control tools like Git for tracking changes and collaboration may be complex due to the JSON file storage of notebooks.
  • Reviewers have reported occasional slowness or crashes when dealing with large datasets or performing intricate calculations in the software.

PyCharm pros and cons

Pros

  • Quick and simple installation process.
  • The solution is user-friendly and intuitive.
  • PyCharm offers a multitude of efficient shortcuts.
  • Users can benefit from community support.

Cons

  • The premium version of the software can be expensive.
  • The solution demands substantial resources, i.e., significant memory and storage space requirements.

Review methodology

This is a technical review using compiled literature researched from relevant databases. The information provided within this article is gathered from vendor websites or based on an aggregate of user feedback to ensure a high-quality review.

Should your organization use Jupyter Notebook or PyCharm?

When considering an integrated development environment, the decision is often based on personal preference as well as the platforms’ respective applications.

Jupyter is more of a data science notebook, and the tools and features are geared to research or data science projects that require sharing and visualizing data. The ability to graph inline as well as add text, HTML and other features alongside the code all work towards this goal.

PyCharm is aimed at developers looking to make complex software, complete with GUIs and other features. The smart editing, intelligence analysis and auto completion all are geared towards streamlined developer efficiency. PyCharm also has much-needed features for developers like version control, safe refactoring and other tools.

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