Can pycharm run java code?
Can PyCharm run Java code? Can. PyCharm supports multiple programming languages, including Java, so developers can use PyCharm to create, edit, run and debug Java code.
Can pycharm run java code?
Answer: Yes.
Detailed introduction:
PyCharm is a cross-platform IDE (integrated development environment) that supports multiple programming languages, including Python, Java, JavaScript, HTML/CSS and SQL. Therefore, PyCharm can be used to create, edit, run and debug Java code.
PyCharm provides the following features for Java development:
- Java compiler and runtime environment: PyCharm comes with a Java compiler and runtime environment, so Java code can be compiled and run.
- Code auto-completion: PyCharm provides Java code auto-completion to speed up development and improve code quality.
- Code Refactoring: PyCharm supports Java code refactoring such as renaming variables, extracting methods, and changing class hierarchies.
- Debugger: PyCharm has a powerful debugger that can be used to debug Java code and identify errors.
- Integrated testing tools: PyCharm can be integrated with testing frameworks such as JUnit and TestNG to simplify the testing process.
In short, PyCharm is not only an excellent Python IDE, but also provides a comprehensive Java development environment. Therefore, developers can use PyCharm to create, edit, run and debug Java code.
The above is the detailed content of Can pycharm run java code?. For more information, please follow other related articles on the PHP Chinese website!

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