Configure the run configuration in PyCharm: Create a run configuration: In the "Run/Debug Configurations" dialog box, select the "Python" template. Specify script and parameters: Specify the script path and command line parameters to be run. Set the running environment: select the Python interpreter and modify the environment variables. Debug Settings: Enable/disable debugging features and specify the debugger port. Deployment options: Set remote deployment options, such as deploying scripts to the server. Name and save the configuration: Enter a name for the configuration and save it.
Configuration of run configuration in PyCharm
PyCharm is a popular Python integrated development environment (IDE). Provides flexible run configuration options to enable developers to efficiently execute and debug Python code. This article will guide you through configuring run configurations in PyCharm.
Step 1: Create a run configuration
- Open PyCharm, select "Run" (Run) > "Edit Configurations" (Edit Configurations) in the menu bar )
- In the "Run/Debug Configurations" dialog box, click the " " button
- Select the "Python" template from the drop-down list
Step 2: Specify script and parameters
- In the Script path field, specify the absolute path to the Python script you want to run.
- In the Arguments field, enter any command line arguments you want to pass to the script.
Step 3: Set up the running environment
- In the Interpreter tab, select the Python you want to use to run the script interpreter.
- In the "Environment" tab, you can set environment variables or modify the execution environment of the script.
Step 4: Debugging Settings
- In the Debugger tab, enable or disable debugging.
- Specify the debugger port and host address.
Step 5: Specify deployment options
- In the Deployment tab, you can set remote deployment options, such as Deploy the script to the server.
Step 6: Name and save the configuration
- In the Name field, enter a name for the configuration.
- Click the "OK" button to save the configuration.
Run Configuration
After creating the run configuration, you can run the script by:
- In "Run" ( Select the saved configuration in the Run) menu
- Use the keyboard shortcut (e.g. Ctrl R)
- Click the green "Run" button on the project toolbar
Other options
PyCharm also provides other run configuration options, including:
- Debug mode: Set breakpoints for the script and step through it implement.
- Profiling: Profil the performance of your script and identify bottlenecks.
- Unittests: Run unit tests and report test results.
The above is the detailed content of How to adjust pycharm running configuration. For more information, please follow other related articles on the PHP Chinese website!

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