What development tools are used for python?
What development tools are used for python? The following article will give you some Python development tools, I hope it will be helpful to you.
python development tools
1, PyCharm
PyCharm is a Python IDE developed by JetBrains. PyCharm is used for the functions that general IDEs have, such as debugging, syntax highlighting, project management, code jumps, smart prompts, automatic completion, unit testing, version control... In addition, PyCharm also provides some good functions. Developed in Django, it also supports Google App Engine. What’s even cooler is that PyCharm supports IronPython!
2. Visual Studio PTVS
As we all know, Visual Studio is a powerful tool for developing Windows platform products and is the preferred IDE for C#, ASP.NET, etc. development. In fact, Visual Studio can also be used as a Python IDE. You only need to install the PTVS (Python Tools for Vistul Studio) plug-in on the basis of Visual Studio to quickly turn Visual Studio into a Python IDE for use.
3. Eclipse PyDev
Relying on the powerful eclipse, PyDev is particularly dazzling. Powerful debugging functions and a comfortable editing environment make PyDev win the favor of many people. However, eclipse is a resource hog, and PyDev has nothing to do about it. But now computers are very fast, and running eclipse is simply a small case, so you don’t have to worry too much.
In addition to its powerful debugging functions, PyDev's code reading capabilities, relying on eclipse, are unmatched by any other IDE. For example, holding down the CTRL key and clicking on a class will automatically jump to the definition of the class. This Very useful for reading code. Now the PyDev extension is also open source, so some (I don't know) advanced functions have also been integrated into PyDev.
4. Sublime Text
Sublime Text is one of the most popular editors among developers. It has multiple functions, supports multiple languages, and is very popular in the developer community. popular. Sublime has its own package manager that developers can use to install components, plugins, and additional styles, all of which improve your coding experience. Sublime can also be used with plug-ins to easily create a convenient IDE-like python debugging environment.
5. Spyder
Spyder (originally known as Pydee) is a powerful interactive Python language development environment, which is part of python(x,y). The complete python(x,y) has more than 400M and integrates python third-party libraries commonly used in scientific accounting. Provides advanced code editing, interactive testing, debugging and other features, supporting Windows, Linux and OS X systems.
6. Ulipad
Ulipad is a professional Python editor written by limodou, a Chinese. It is based on the GUI (graphical interface) developed by wxpython. It was formerly NewEdit. The automatic completion function is very convenient, but it does not integrate the interface designer wxGlade. Open source, you can use SVN to download the latest source code, relying on wxPython. Light, compact and powerful, it is very suitable for beginners.
The above is the detailed content of What development tools are used for python?. For more information, please follow other related articles on the PHP Chinese website!

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