What language is pycharm made in?
PyCharm is an integrated development environment (IDE) developed in Python language, mainly used for Python programming. PyCharm's development tools include PyCharm Community Edition (free and open source) and PyCharm Professional Edition (paid, providing more advanced features). JetBrains uses Python as the primary programming language to develop and maintain PyCharm because Python is easy to learn, has a wide range of libraries and frameworks, and supports cross-platform operation.
Which language is PyCharm developed in?
PyCharm is an integrated development environment (IDE) developed by JetBrains, mainly used for Python programming. Therefore, PyCharm itself is developed in Python language.
Details of PyCharm development tools:
PyCharm development tools include:
- PyCharm Community Edition: Free and open source version, providing basic Python development capabilities.
- PyCharm Professional Edition: Paid version that provides advanced features such as database tools, remote development and code review.
To create and maintain PyCharm, JetBrains uses Python as the primary programming language. This is because Python is a powerful, versatile language that offers the following advantages:
- Easy to read and write:Python's syntax is similar to English, even for novice programmers It is also easy for members to understand.
- Extensive libraries and frameworks:Python has a wide range of libraries and frameworks that enable developers to build applications quickly.
- Cross-platform support: Python can run on multiple platforms including Windows, macOS, and Linux.
By developing PyCharm with Python, JetBrains was able to create a powerful and user-friendly IDE that provides Python developers with a smooth and efficient programming experience.
The above is the detailed content of What language is pycharm made in?. For more information, please follow other related articles on the PHP Chinese website!

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