How to change pycharm to Chinese 2018
Changing PyCharm 2018 to Chinese requires the following steps: Download the Chinese language pack. Install language pack. Restart PyCharm. Change language settings. Verify that PyCharm is displayed in Chinese.
How to change PyCharm 2018 to Chinese
Step 1: Download the language pack
- Go to the PyCharm official website: https://www.jetbrains.com/pycharm/download/
- Select the PyCharm version (2018) you are using.
- Click "Download Language Pack" and select your desired language (for example, Chinese).
Step 2: Install the language pack
- Open PyCharm.
- Click "File" > "Settings".
- In the left column, select "Plugins."
- Click the "Install Language Pack" button.
- Select the language pack file you downloaded and click "Install".
Step 3: Restart PyCharm
After the installation is complete, you will be prompted to restart PyCharm. Click Restart Now to complete the installation.
Step 4: Change language settings
After restarting PyCharm:
- Click File > Settings.
- In the left column, select Appearance & Behavior >Language & Fonts.
- Under "User Interface Language", select the Chinese language you installed.
- Click Apply and OK.
Step 5: Verify
PyCharm should now appear in Chinese. To verify, look at menus, toolbars, and other user interface elements. All text and prompts should have been translated into Chinese.
The above is the detailed content of How to change pycharm to Chinese 2018. For more information, please follow other related articles on the PHP Chinese website!

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