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Branding Options in Gladinet Cloud

Resellers usually prefer to have their logo and product name on the same Gladinet Cloud web portal, when they refer customers to Gladinet Cloud Team Edition. Now this is a simple form to fill out in Gladinet Cloud.

In Gladinet Cloud web portal, click on the “Management Console”, on the right hand side, click the “Advanced” section. Inside, there is a tab page, on the branding tab, you will see a list of items that you can brand.

branding

Branding Result

After the branding form is filled out, the reseller can direct his users to his page and the customer will see the product name and logo changed to the reseller’s name and logo.

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Reseller Direct Login Page

Reseller can have a direct link for the login page which is bearing the reseller’s logo and product name.

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More Stories By Jerry Huang

Jerry Huang, an engineer and entrepreneur, founded Gladinet with his close friends and is pursuing interests in the cloud computing. He has published articles on the company blog as well as following up on the company twitter activities. He graduated from the University of Michigan in 1998 and has lived in West Palm Beach, Florida since.

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