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How can i use firebase cloud storage to handle static files

I am building a a Practice blog with django, after hosting it on heroku, i discovered that any images i upload using image field or fetch disappear after a while.

Now i started using firebase cloud storage via django-storage gloud backend and it is working fine since then , but when i tried hosting my staticfiles storage from there is get this error

cross origin request blocked the same-origin policy disallows reading the remote resource at?

how do i fix this?



source https://stackoverflow.com/questions/72453697/how-can-i-use-firebase-cloud-storage-to-handle-static-files

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