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HomeBackend DevelopmentPython TutorialHere are a few title options, emphasizing the question format: * **STATIC_FILES_DIR, STATIC_ROOT, and MEDIA_ROOT: What\'s the Difference and When Do I Use Each?** * **Django Deployment: Why Are STATI

Here are a few title options, emphasizing the question format:

* **STATIC_FILES_DIR, STATIC_ROOT, and MEDIA_ROOT: What's the Difference and When Do I Use Each?**
* **Django Deployment: Why Are STATIC_ROOT and STATICFILES_DIRS So Important?**
* **Underst

Differences between STATIC_FILES_DIR, STATIC_ROOT and MEDIA_ROOT

Development vs. Deployment

In development, STATIC_ROOT is effectively useless, as Django automatically serves static files from each app's directory. During deployment, STATIC_ROOT becomes crucial for Nginx to locate and serve static content.

Purpose of STATIC_ROOT

STATIC_ROOT specifies the location where Django will collect and output all static files after you run manage.py collectstatic. This location should be accessible by the web server (e.g., Nginx) serving your website.

Additional Directories: STATICFILES_DIRS

STATICFILES_DIRS is an optional setting that allows you to include additional directories for collectstatic to search for static files. This is useful if you have static files outside of the default app directories.

Understanding the Issue

Based on the code you provided, it appears that you were initially having issues because the JS file was not found in the location specified by STATIC_ROOT. This is because admin.py looks for files in the admin/ subdirectory of STATICFILES_DIRS, not STATIC_ROOT.

By changing to STATICFILES_DIRS, you were able to resolve this issue because it includes the path where the JS file is located.

Summary

Setting Purpose Deployment
STATIC_FILES_DIR Additional directories for static files n/a
STATIC_ROOT Location where static files are collected Required
MEDIA_ROOT Location for user-uploaded files n/a

The above is the detailed content of Here are a few title options, emphasizing the question format: * **STATIC_FILES_DIR, STATIC_ROOT, and MEDIA_ROOT: What\'s the Difference and When Do I Use Each?** * **Django Deployment: Why Are STATI. For more information, please follow other related articles on the PHP Chinese website!

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