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Can't upload files to server [closed]

All my users on my Centos7 server suddenly can't upload files through php in various of apps (Wordpress, OctoberCMS or Laravel).

This is the second time this happened. They get messages like uploading is failed or no file request send depending on the app they use. These messages are from the app it self, but don't give more information and are unrelated to the issue. It's a server issue.

I can't find any log on the server. which is related to this issue ánd my storage space is more than enough. After rebooting the server it all works again, but I don't know why or what happened.

I think something related to the /tmp storage. Can this get full? I Hope some of you can help me find the issue or point me where to look.



source https://stackoverflow.com/questions/68561501/cant-upload-files-to-server

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