How to start programming with pycharm
Steps to start programming with PyCharm: Install PyCharm. Create a Python project. Create a script file and write Python code, such as "hello.py". Run the script and view the output. Use debugging features to find errors. Take advantage of PyCharm's handy features like autocompletion and refactoring. Extend PyCharm by installing plugins. Keep practicing and exploring to improve your programming efficiency.
How to start programming in PyCharm
PyCharm is a powerful Python integrated development environment (IDE) , which provides various tools and features to write and debug Python code. Here are the steps to start programming with PyCharm:
1. Install PyCharm
Download and install PyCharm from the PyCharm official website.
2. Create a new project
Start PyCharm and click "New Project" to create a new Python project. Select a project location and click Create.
3. Create the script file
Right-click the project folder and select "New" > "Python File". Name the file and click OK.
4. Write Python code
In the script file, start writing Python code. For example, create the following "hello.py" script:
print("Hello, world!")
5. Run the script
Click the "Run" button in the run bar or press Shift F10 to run script. PyCharm will display the output of the script in a terminal window.
6. Debugging code
If there is a problem with the script, you can use PyCharm's debugging feature to find and fix the error. Click the Debug tab and press F9 to enter debug mode. You can step through code and check the values of variables.
7. Use convenient functions
PyCharm provides many convenient functions, such as code auto-completion, error checking, refactoring tools, etc. Take advantage of these features to increase your programming efficiency.
8. Extending PyCharm
You can extend the functionality of PyCharm by installing third-party plug-ins. There are many plugins to choose from such as syntax highlighting, code navigation, unit testing, and more.
Tip:
- Take the time to familiarize yourself with PyCharm’s interface and tools.
- Practice writing and running Python code to become familiar with the syntax and structure.
- Leverage PyCharm’s debugging features to resolve errors and improve code quality.
- Explore the community forums and documentation to get support and learn more features.
The above is the detailed content of How to start programming with pycharm. For more information, please follow other related articles on the PHP Chinese website!

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