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PHP compression error when migrating installatron application from one server to another

I am trying to migrate a Yourls installation from server 1 to server 2. Plesk Obsidian is installed on both servers as is the Installatron Plesk plugin. I'm using SSH from server 2 to server 1 and the connection is made correctly but then i get this error when Installatron tries to install the application...

Importing: Error: Compression failed: [1] -: php: command not found

I've checked the server Apache settings and deflate and brotli are both installed. Now I am stuck. There is nothing in the web about this.

The reason I am using Installatron to perform the migration is because the original application on server 1 was installed using it. I've successfully transferred an application from a CPanel server to a Plesk server in the past using the same method.



source https://stackoverflow.com/questions/69002799/php-compression-error-when-migrating-installatron-application-from-one-server-to

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