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HomeBackend DevelopmentPython TutorialHow to restore deleted code in pycharm

How to restore deleted code in pycharm

Apr 18, 2024 am 03:24 AM
gitpycharm

Recover deleted code in PyCharm: If using a version control system (such as Git), restore from historical commits; 2. If there is no version control, check local history or temporary files; cannot be restored by the above method , data recovery software can be used (but may not be successful).

How to restore deleted code in pycharm

How to restore deleted code in PyCharm

Recovering deleted code in PyCharm is a relatively simple The process can be completed by the following steps:

1. Access the version control system

If you use a version control system (such as Git), you can access the version control system from historical commits Restore deleted code. Open PyCharm's version control panel (VCS > Git) and select the commit whose code you want to revert.

2. Find deleted files

In the version control panel, find the deleted files. It will be marked red with a delete icon.

3. Recover Files

Right-click the deleted file and select "Check Out". This will restore the file from the selected commit.

4. If you don’t have a version control system

If you don’t use a version control system, there are other ways to recover deleted code:

  • Check local history: PyCharm will keep a backup of recent changes. Go to File >Local History, find the deleted file, and recover it.
  • Using temporary files: PyCharm creates temporary files during an editing session. Sometimes these files may contain deleted code. Check directory C:\Users\[username]\AppData\Local\JetBrains\PyCharm\[version]\system\temp for the code you want to restore.
  • Use data recovery software: If you are unable to recover the code through other methods, you can use data recovery software to scan your hard drive. However, this approach does not always guarantee success.

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